150 results on '"Knight, Gwenan M"'
Search Results
102. A Case-Control Study to Identify Community Venues Associated with Genetically-clustered, Multidrug-resistant Tuberculosis Disease in Lima, Peru
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Bui, David P, primary, Oren, Eyal, primary, Roe, Denise J, primary, Brown, Heidi E, primary, Harris, Robin B, primary, Knight, Gwenan M, primary, Gilman, Robert H, primary, and Grandjean, Louis, primary
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- 2018
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103. Methods for estimating the burden of antimicrobial resistance: a systematic literature review protocol
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Naylor, Nichola R., Silva, Sachin, Kulasabanathan, Kavian, Atun, Rifat, Zhu, Nina, Knight, Gwenan M., and Robotham, Julie
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Cross Infection ,Cost-Benefit Analysis ,lcsh:R ,lcsh:Medicine ,Microbial Sensitivity Tests ,Burden ,Antimicrobial resistance ,Anti-Bacterial Agents ,Risk Factors ,Drug Resistance, Multiple, Bacterial ,Practice Guidelines as Topic ,Public Health Practice ,Protocol ,Methods ,Systematic review ,Humans ,Public Health ,Systematic Reviews as Topic - Abstract
Background Estimates of the burden of antimicrobial resistance (AMR) are needed to ascertain AMR impact, to evaluate interventions, and to allocate resources efficiently. Recent studies have estimated health, cost, and economic burden relating to AMR, with outcomes of interest ranging from drug-bug resistance impact on mortality in a hospital setting to total economic impact of AMR on the global economy. However, recent collation of this information has been largely informal, with no formal quality assessment of the current evidence base (e.g. with predefined checklists). This review therefore aims to establish what perspectives and resulting methodologies have been used in establishing the burden of AMR, whilst also ascertaining the quality of these studies. Methods The literature review will identify relevant literature using a systematic review methodology. MEDLINE, EMBASE, Scopus and EconLit will be searched utilising a predefined search string. Grey literature will be identified by searching within a predefined list of organisational websites. Independent screening of retrievals will be performed in a two-stage process (abstracts and full texts), utilising a pre-defined inclusion and exclusion criteria. Data will be extracted into a data extraction table and descriptive examination will be performed. Study quality will be assessed using the Newcastle-Ottawa scales and the Philips checklists where appropriate. A narrative synthesis of the results will be presented. Discussion This review will provide an overview of previous health, cost and economic definitions of burden and the resultant impact of these different definitions on the burden of AMR estimated. The review will also explore the methods that have been used to calculate this burden and discuss resulting study quality. This review can therefore act as a guide to methods for future research in this area. Systematic review registration PROSPERO CRD42016037510 Electronic supplementary material The online version of this article (doi:10.1186/s13643-016-0364-8) contains supplementary material, which is available to authorized users.
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- 2016
104. The relative fitness of drug resistant Mycobacterium tuberculosis: a modelling study of household transmission in Peru
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Knight, Gwenan M., primary, Zimic, Mirko, additional, Funk, Sebastian, additional, Gilman, Robert H., additional, Friedland, Jon S., additional, and Grandjean, Louis, additional
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- 2017
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105. Addressing the Unknowns of Antimicrobial Resistance: Quantifying and Mapping the Drivers of Burden
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Knight, Gwenan M, primary, Costelloe, Ceire, additional, Murray, Kris A, additional, Robotham, Julie V, additional, Atun, Rifat, additional, and Holmes, Alison H, additional
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- 2017
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106. Using Data from Macaques To Predict Gamma Interferon Responses after Mycobacterium bovis BCG Vaccination in Humans: a Proof-of-Concept Study of Immunostimulation/Immunodynamic Modeling Methods
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Rhodes, Sophie J., primary, Sarfas, Charlotte, additional, Knight, Gwenan M., additional, White, Andrew, additional, Pathan, Ansar A., additional, McShane, Helen, additional, Evans, Thomas G., additional, Fletcher, Helen, additional, Sharpe, Sally, additional, and White, Richard G., additional
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- 2017
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107. The TB vaccine H56+IC31 dose-response curve is peaked not saturating: Data generation for new mathematical modelling methods to inform vaccine dose decisions
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Rhodes, Sophie J., primary, Zelmer, Andrea, additional, Knight, Gwenan M., additional, Prabowo, Satria Arief, additional, Stockdale, Lisa, additional, Evans, Thomas G., additional, Lindenstrøm, Thomas, additional, White, Richard G., additional, and Fletcher, Helen, additional
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- 2016
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108. A Case-Control Study to Identify Community Venues Associated with Genetically-clustered, Multidrug-resistant Tuberculosis Disease in Lima, Peru.
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Bui, David P, Oren, Eyal, Roe, Denise J, Brown, Heidi E, Harris, Robin B, Knight, Gwenan M, Gilman, Robert H, and Grandjean, Louis
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COMMUNITIES ,COMPARATIVE studies ,HEALTH facilities ,INTERVIEWING ,MOTION pictures ,SCHOOLS ,SOCIAL networks ,TIME ,TRANSPORTATION ,LOGISTIC regression analysis ,ENVIRONMENTAL exposure ,COMMUNITY-acquired infections ,CASE-control method ,DESCRIPTIVE statistics ,SEQUENCE analysis ,ODDS ratio - Abstract
Background The majority of tuberculosis transmission occurs in community settings. Our primary aim in this study was to assess the association between exposure to community venues and multidrug-resistant (MDR) tuberculosis. Our secondary aim was to describe the social networks of MDR tuberculosis cases and controls. Methods We recruited laboratory-confirmed MDR tuberculosis cases and community controls that were matched on age and sex. Whole-genome sequencing was used to identify genetically clustered cases. Venue tracing interviews (nonblinded) were conducted to enumerate community venues frequented by participants. Logistic regression was used to assess the association between MDR tuberculosis and person-time spent in community venues. A location-based social network was constructed, with respondents connected if they reported frequenting the same venue, and an exponential random graph model (ERGM) was fitted to model the network. Results We enrolled 59 cases and 65 controls. Participants reported 729 unique venues. The mean number of venues reported was similar in both groups (P =.92). Person-time in healthcare venues (adjusted odds ratio [aOR] = 1.67, P =.01), schools (aOR = 1.53, P <.01), and transportation venues (aOR = 1.25, P =.03) was associated with MDR tuberculosis. Healthcare venues, markets, cinemas, and transportation venues were commonly shared among clustered cases. The ERGM indicated significant community segregation between cases and controls. Case networks were more densely connected. Conclusions Exposure to healthcare venues, schools, and transportation venues was associated with MDR tuberculosis. Intervention across the segregated network of case venues may be necessary to effectively stem transmission. [ABSTRACT FROM AUTHOR]
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- 2019
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109. Correction for Leclerc et al., “Growth-Dependent Predation and Generalized Transduction of Antimicrobial Resistance by Bacteriophage”.
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Leclerc, Quentin J., Wildfire, Jacob, Gupta, Arya, Lindsay, Jodi A., and Knight, Gwenan M.
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- 2022
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110. Systematic review of mathematical models exploring the epidemiological impact of future TB vaccines
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Harris, Rebecca C., primary, Sumner, Tom, additional, Knight, Gwenan M., additional, and White, Richard G., additional
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- 2016
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111. Ebola: the hidden toll of tuberculosis
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Knight, Gwenan M., primary, Houben, Rein M. G. J., additional, Lalli, Marek, additional, and White, Richard G., additional
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- 2016
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112. The transmission of Mycobacterium tuberculosis in high burden settings
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Yates, Tom A, primary, Khan, Palwasha Y, additional, Knight, Gwenan M, additional, Taylor, Jonathon G, additional, McHugh, Timothy D, additional, Lipman, Marc, additional, White, Richard G, additional, Cohen, Ted, additional, Cobelens, Frank G, additional, Wood, Robin, additional, Moore, David A J, additional, and Abubakar, Ibrahim, additional
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- 2016
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113. Bridging the gap between evidence and policy for infectious diseases: How models can aid public health decision-making
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Knight, Gwenan M., primary, Dharan, Nila J., additional, Fox, Gregory J., additional, Stennis, Natalie, additional, Zwerling, Alice, additional, Khurana, Renuka, additional, and Dowdy, David W., additional
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- 2016
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114. The Impact and Cost-Effectiveness of a Four-Month Regimen for First-Line Treatment of Active Tuberculosis in South Africa
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Knight, Gwenan M., primary, Gomez, Gabriela B., additional, Dodd, Peter J., additional, Dowdy, David, additional, Zwerling, Alice, additional, Wells, William A., additional, Cobelens, Frank, additional, Vassall, Anna, additional, and White, Richard G., additional
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- 2015
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115. Tuberculosis Prevention in South Africa
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Knight, Gwenan M., primary, Dodd, Peter J., additional, Grant, Alison D., additional, Fielding, Katherine L., additional, Churchyard, Gavin J., additional, and White, Richard G., additional
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- 2015
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116. Population-Level Impact of Shorter-Course Regimens for Tuberculosis: A Model-Based Analysis
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Fofana, Mariam O., primary, Knight, Gwenan M., additional, Gomez, Gabriela B., additional, White, Richard G., additional, and Dowdy, David W., additional
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- 2014
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117. Drivers and Trajectories of Resistance to New First-Line Drug Regimens for Tuberculosis
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Shrestha, Sourya, primary, Knight, Gwenan M., additional, Fofana, Mariam, additional, Cohen, Ted, additional, White, Richard G., additional, Cobelens, Frank, additional, and Dowdy, David W., additional
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- 2014
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118. Correction: Predicting the Long-Term Impact of Antiretroviral Therapy Scale-Up on Population Incidence of Tuberculosis
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Dodd, Peter J., primary, Knight, Gwenan M., additional, Lawn, Stephen D., additional, Corbett, Elizabeth L., additional, and White, Richard G., additional
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- 2013
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119. Predicting the Long-Term Impact of Antiretroviral Therapy Scale-Up on Population Incidence of Tuberculosis
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Dodd, Peter J., primary, Knight, Gwenan M., additional, Lawn, Stephen D., additional, Corbett, Elizabeth L., additional, and White, Richard G., additional
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- 2013
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120. Large mobile genetic elements carrying resistance genes that do not confer a fitness burden in healthcare-associated meticillin-resistant Staphylococcus aureus
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Knight, Gwenan M., primary, Budd, Emma L., additional, and Lindsay, Jodi A., additional
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- 2013
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121. Metformin reduces airway glucose permeability and hyperglycaemia-inducedStaphylococcus aureusload independently of effects on blood glucose
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Garnett, James P, primary, Baker, Emma H, additional, Naik, Sonam, additional, Lindsay, Jodi A, additional, Knight, Gwenan M, additional, Gill, Simren, additional, Tregoning, John S, additional, and Baines, Deborah L, additional
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- 2013
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122. Shuffling of mobile genetic elements (MGEs) in successful healthcare-associated MRSA (HA-MRSA)
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Lindsay, Jodi A., primary, Knight, Gwenan M., additional, Budd, Emma L., additional, and McCarthy, Alex J., additional
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- 2012
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123. The impact of COVID-19 control measures on social contacts and transmission in Kenyan informal settlements.
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Quaife, Matthew, van Zandvoort, Kevin, Gimma, Amy, Shah, Kashvi, McCreesh, Nicky, Prem, Kiesha, Barasa, Edwine, Mwanga, Daniel, Kangwana, Beth, Pinchoff, Jessie, CMMID COVID-19 Working Group, Bosse, Nikos I., Medley, Graham, O'Reilly, Kathleen, Leclerc, Quentin J., Jit, Mark, Lowe, Rachel, Davies, Nicholas G., Deol, Arminder K., and Knight, Gwenan M.
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COVID-19 ,SOCIAL contact ,SOCIAL control ,BASIC reproduction number ,SOCIAL surveys - Abstract
Background: Many low- and middle-income countries have implemented control measures against coronavirus disease 2019 (COVID-19). However, it is not clear to what extent these measures explain the low numbers of recorded COVID-19 cases and deaths in Africa. One of the main aims of control measures is to reduce respiratory pathogen transmission through direct contact with others. In this study, we collect contact data from residents of informal settlements around Nairobi, Kenya, to assess if control measures have changed contact patterns, and estimate the impact of changes on the basic reproduction number (R0).Methods: We conducted a social contact survey with 213 residents of five informal settlements around Nairobi in early May 2020, 4 weeks after the Kenyan government introduced enhanced physical distancing measures and a curfew between 7 pm and 5 am. Respondents were asked to report all direct physical and non-physical contacts made the previous day, alongside a questionnaire asking about the social and economic impact of COVID-19 and control measures. We examined contact patterns by demographic factors, including socioeconomic status. We described the impact of COVID-19 and control measures on income and food security. We compared contact patterns during control measures to patterns from non-pandemic periods to estimate the change in R0.Results: We estimate that control measures reduced physical contacts by 62% and non-physical contacts by either 63% or 67%, depending on the pre-COVID-19 comparison matrix used. Masks were worn by at least one person in 92% of contacts. Respondents in the poorest socioeconomic quintile reported 1.5 times more contacts than those in the richest. Eighty-six percent of respondents reported a total or partial loss of income due to COVID-19, and 74% reported eating less or skipping meals due to having too little money for food.Conclusion: COVID-19 control measures have had a large impact on direct contacts and therefore transmission, but have also caused considerable economic and food insecurity. Reductions in R0 are consistent with the comparatively low epidemic growth in Kenya and other sub-Saharan African countries that implemented similar, early control measures. However, negative and inequitable impacts on economic and food security may mean control measures are not sustainable in the longer term. [ABSTRACT FROM AUTHOR]- Published
- 2020
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124. Modelling the implementation of narrow versus broader spectrum antibiotics in the empiric treatment of E. coli bacteraemia.
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Khurana, Mark P., Curran-Sebastian, Jacob, Bhatt, Samir, and Knight, Gwenan M.
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ESCHERICHIA coli , *BACTEREMIA , *ANTIBIOTICS , *BACTERIAL diseases , *ANTIMICROBIAL stewardship , *DRUG resistance in microorganisms - Abstract
The implementation of new antimicrobial resistance stewardship programs is crucial in optimizing antibiotic use. However, prescription choices can be difficult during empiric therapy; clinicians must balance the survival benefits of broader spectrum antibiotics with associated increases in resistance. The aim of this study was to evaluate the overall feasibility of switching to narrow spectrum antibiotics during the empiric treatment of E. coli bacteraemia by quantifying changes in resistance rates, antibiotic usage, and mortality using a deterministic state-transition model. Three unique model scenarios (A, B, and C), each representing a progressively broader spectrum empiric treatment regimen, were used to compare outcomes at 5 years. We show that the empiric use of the narrowest spectrum (first-line) antibiotics can lead to reductions in resistance to second-line antibiotics and the use of third-line antibiotics, but they also lead to increases in resistance to first-line therapy and higher mortality. Crucially, we find that shortening the duration of empiric and overall treatment, as well as reducing the baseline mortality rate, are important for increasing the feasibility of switching to narrow spectrum antibiotics in the empiric treatment of E. coli bacteraemia. We provide a flexible model design to investigate optimal treatment approaches for other bacterial infections. [ABSTRACT FROM AUTHOR]
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- 2024
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125. Importance of patient bed pathways and length of stay differences in predicting COVID-19 hospital bed occupancy in England
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Leclerc, Quentin J, Fuller, Naomi M, Keogh, Ruth H, Diaz-Ordaz, Karla, Sekula, Richard, Semple, Malcolm G, ISARIC4C Investigators, CMMID COVID-19 Working Group, Atkins, Katherine E, Procter, Simon R, and Knight, Gwenan M
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England ,SARS-CoV-2 ,Hospitalisation ,Bed pathway ,COVID-19 ,Length of stay ,Humans ,Bed occupancy ,3. Good health - Abstract
BACKGROUND: Predicting bed occupancy for hospitalised patients with COVID-19 requires understanding of length of stay (LoS) in particular bed types. LoS can vary depending on the patient's "bed pathway" - the sequence of transfers of individual patients between bed types during a hospital stay. In this study, we characterise these pathways, and their impact on predicted hospital bed occupancy. METHODS: We obtained data from University College Hospital (UCH) and the ISARIC4C COVID-19 Clinical Information Network (CO-CIN) on hospitalised patients with COVID-19 who required care in general ward or critical care (CC) beds to determine possible bed pathways and LoS. We developed a discrete-time model to examine the implications of using either bed pathways or only average LoS by bed type to forecast bed occupancy. We compared model-predicted bed occupancy to publicly available bed occupancy data on COVID-19 in England between March and August 2020. RESULTS: In both the UCH and CO-CIN datasets, 82% of hospitalised patients with COVID-19 only received care in general ward beds. We identified four other bed pathways, present in both datasets: "Ward, CC, Ward", "Ward, CC", "CC" and "CC, Ward". Mean LoS varied by bed type, pathway, and dataset, between 1.78 and 13.53 days. For UCH, we found that using bed pathways improved the accuracy of bed occupancy predictions, while only using an average LoS for each bed type underestimated true bed occupancy. However, using the CO-CIN LoS dataset we were not able to replicate past data on bed occupancy in England, suggesting regional LoS heterogeneities. CONCLUSIONS: We identified five bed pathways, with substantial variation in LoS by bed type, pathway, and geography. This might be caused by local differences in patient characteristics, clinical care strategies, or resource availability, and suggests that national LoS averages may not be appropriate for local forecasts of bed occupancy for COVID-19. TRIAL REGISTRATION: The ISARIC WHO CCP-UK study ISRCTN66726260 was retrospectively registered on 21/04/2020 and designated an Urgent Public Health Research Study by NIHR.
126. Modelling the medium-term dynamics of SARS-CoV-2 transmission in England in the Omicron era
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Barnard, Rosanna C., Davies, Nicholas G., Munday, James D., Lowe, Rachel, Knight, Gwenan M., Leclerc, Quentin J., Tully, Damien C., Hodgson, David, Pung, Rachael, Hellewell, Joel, Koltai, Mihaly, Simons, David, Abbas, Kaja, Kucharski, Adam J., Procter, Simon R., Sandmann, Frank G., Pearson, Carl A. B., Prem, Kiesha, Showering, Alicia, Meakin, Sophie R., O’Reilly, Kathleen, McCarthy, Ciara V., Quaife, Matthew, Wong, Kerry L. M., Jafari, Yalda, Deol, Arminder K., Houben, Rein M. G. J., Diamond, Charlie, Jombart, Thibaut, Villabona-Arenas, C. Julian, Waites, William, Eggo, Rosalind M., Endo, Akira, Gibbs, Hamish P., Klepac, Petra, Williams, Jack, Quilty, Billy J., Brady, Oliver, Emery, Jon C., Atkins, Katherine E., Chapman, Lloyd A. C., Sherratt, Katharine, Abbott, Sam, Bosse, Nikos I., Mee, Paul, Funk, Sebastian, Lei, Jiayao, Liu, Yang, Flasche, Stefan, Rudge, James W., Sun, Fiona Yueqian, Medley, Graham, Russell, Timothy W., Gimma, Amy, Hué, Stéphane, Jarvis, Christopher I., Finch, Emilie, Clifford, Samuel, Jit, Mark, and Edmunds, W. John
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Multidisciplinary ,General Physics and Astronomy ,General Chemistry ,General Biochemistry, Genetics and Molecular Biology - Abstract
England has experienced a heavy burden of COVID-19, with multiple waves of SARS-CoV-2 transmission since early 2020 and high infection levels following the emergence and spread of Omicron variants since late 2021. In response to rising Omicron cases, booster vaccinations were accelerated and offered to all adults in England. Using a model fitted to more than 2 years of epidemiological data, we project potential dynamics of SARS-CoV-2 infections, hospital admissions and deaths in England to December 2022. We consider key uncertainties including future behavioural change and waning immunity and assess the effectiveness of booster vaccinations in mitigating SARS-CoV-2 disease burden between October 2021 and December 2022. If no new variants emerge, SARS-CoV-2 transmission is expected to decline, with low levels remaining in the coming months. The extent to which projected SARS-CoV-2 transmission resurges later in 2022 depends largely on assumptions around waning immunity and to some extent, behaviour, and seasonality.
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127. Mathematical models of drug-resistant tuberculosis lack bacterial heterogeneity: A systematic review.
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Fuller, Naomi M., McQuaid, Christopher F., Harker, Martin J., Weerasuriya, Chathika K., McHugh, Timothy D., and Knight, Gwenan M.
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ANTIBIOTIC residues , *DRUG resistance in bacteria , *MATHEMATICAL models , *HETEROGENEITY , *TUBERCULOSIS , *MYCOBACTERIUM tuberculosis - Abstract
Drug-resistant tuberculosis (DR-TB) threatens progress in the control of TB. Mathematical models are increasingly being used to guide public health decisions on managing both antimicrobial resistance (AMR) and TB. It is important to consider bacterial heterogeneity in models as it can have consequences for predictions of resistance prevalence, which may affect decision-making. We conducted a systematic review of published mathematical models to determine the modelling landscape and to explore methods for including bacterial heterogeneity. Our first objective was to identify and analyse the general characteristics of mathematical models of DR-mycobacteria, including M. tuberculosis. The second objective was to analyse methods of including bacterial heterogeneity in these models. We had different definitions of heterogeneity depending on the model level. For between-host models of mycobacterium, heterogeneity was defined as any model where bacteria of the same resistance level were further differentiated. For bacterial population models, heterogeneity was defined as having multiple distinct resistant populations. The search was conducted following PRISMA guidelines in five databases, with studies included if they were mechanistic or simulation models of DR-mycobacteria. We identified 195 studies modelling DR-mycobacteria, with most being dynamic transmission models of non-treatment intervention impact in M. tuberculosis (n = 58). Studies were set in a limited number of specific countries, and 44% of models (n = 85) included only a single level of "multidrug-resistance (MDR)". Only 23 models (8 between-host) included any bacterial heterogeneity. Most of these also captured multiple antibiotic-resistant classes (n = 17), but six models included heterogeneity in bacterial populations resistant to a single antibiotic. Heterogeneity was usually represented by different fitness values for bacteria resistant to the same antibiotic (61%, n = 14). A large and growing body of mathematical models of DR-mycobacterium is being used to explore intervention impact to support policy as well as theoretical explorations of resistance dynamics. However, the majority lack bacterial heterogeneity, suggesting that important evolutionary effects may be missed. Author summary: The emergence of drug-resistant tuberculosis (DR-TB), where the causative bacterium Mycobacterium tuberculosis is resistant to key antibiotics such as rifampicin and isoniazid, poses a significant threat to TB control efforts. To gain a broader understanding of the challenges surrounding DR-TB, mathematical models are increasingly being employed to estimate the impact of interventions, effectiveness of treatment, and to predict the evolution of drug-resistance. However, pragmaticism surrounding model construction often means that important aspects, such as bacterial heterogeneity, are overlooked. We undertook a systematic review of the existing DR-mycobacterium modelling literature, with the specific aim of capturing methods for including bacterial heterogeneity. Our analysis revealed that most models of drug-resistance in mycobacteria primarily focus on intervention strategies and cost-effectiveness analyses, with minimal attention to bacterial heterogeneity. Where heterogeneity is included it mostly consisted of different fitness costs for resistance. [ABSTRACT FROM AUTHOR]
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- 2024
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128. Using Data from Macaques To Predict Gamma Interferon Responses after Mycobacterium bovisBCG Vaccination in Humans: a Proof-of-Concept Study of Immunostimulation/Immunodynamic Modeling Methods
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Rhodes, Sophie J., Sarfas, Charlotte, Knight, Gwenan M., White, Andrew, Pathan, Ansar A., McShane, Helen, Evans, Thomas G., Fletcher, Helen, Sharpe, Sally, and White, Richard G.
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ABSTRACTMacaques play a central role in the development of human tuberculosis (TB) vaccines. Immune and challenge responses differ across macaque and human subpopulations. We used novel immunostimulation/immunodynamic modeling methods in a proof-of-concept study to determine which macaque subpopulations best predicted immune responses in different human subpopulations. Data on gamma interferon (IFN-?)-secreting CD4+T cells over time after recent Mycobacterium bovisBCG vaccination were available for 55 humans and 81 macaques. Human population covariates were baseline BCG vaccination status, time since BCG vaccination, gender, and the monocyte/lymphocyte cell count ratio. The macaque population covariate was the colony of origin. A two-compartment mathematical model describing the dynamics of the IFN-? T cell response after BCG vaccination was calibrated to these data using nonlinear mixed-effects methods. The model was calibrated to macaque and human data separately. The association between subpopulations and the BCG immune response in each species was assessed. The macaque subpopulations that best predicted immune responses in different human subpopulations were identified using Bayesian information criteria. We found that the macaque colony and the human baseline BCG status were significantly (P< 0.05) associated with the BCG-induced immune response. For humans who were BCG naïve at baseline, Indonesian cynomolgus macaques and Indian rhesus macaques best predicted the immune response. For humans who had already been BCG vaccinated at baseline, Mauritian cynomolgus macaques best predicted the immune response. This work suggests that the immune responses of different human populations may be best modeled by different macaque colonies, and it demonstrates the potential utility of immunostimulation/immunodynamic modeling to accelerate TB vaccine development.
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- 2016
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129. Impact of non-pharmaceutical interventions on SARS-CoV-2 outbreaks in English care homes: a modelling study.
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Rosello, Alicia, Barnard, Rosanna C., Smith, David R. M., Evans, Stephanie, Grimm, Fiona, Davies, Nicholas G., Deeny, Sarah R., Knight, Gwenan M., Edmunds, W. John, and Centre for Mathematical Modelling of Infectious Diseases COVID-19 Modelling Working Group
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Background: COVID-19 outbreaks still occur in English care homes despite the interventions in place.Methods: We developed a stochastic compartmental model to simulate the spread of SARS-CoV-2 within an English care home. We quantified the outbreak risk with baseline non-pharmaceutical interventions (NPIs) already in place, the role of community prevalence in driving outbreaks, and the relative contribution of all importation routes into a fully susceptible care home. We also considered the potential impact of additional control measures in care homes with and without immunity, namely: increasing staff and resident testing frequency, using lateral flow antigen testing (LFD) tests instead of polymerase chain reaction (PCR), enhancing infection prevention and control (IPC), increasing the proportion of residents isolated, shortening the delay to isolation, improving the effectiveness of isolation, restricting visitors and limiting staff to working in one care home. We additionally present a Shiny application for users to apply this model to their facility of interest, specifying care home, outbreak and intervention characteristics.Results: The model suggests that importation of SARS-CoV-2 by staff, from the community, is the main driver of outbreaks, that importation by visitors or from hospitals is rare, and that the past testing strategy (monthly testing of residents and daily testing of staff by PCR) likely provides negligible benefit in preventing outbreaks. Daily staff testing by LFD was 39% (95% 18-55%) effective in preventing outbreaks at 30 days compared to no testing.Conclusions: Increasing the frequency of testing in staff and enhancing IPC are important to preventing importations to the care home. Further work is needed to understand the impact of vaccination in this population, which is likely to be very effective in preventing outbreaks. [ABSTRACT FROM AUTHOR]- Published
- 2022
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130. Community transmission of multidrug-resistant tuberculosis is associated with activity space overlap in Lima, Peru.
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Bui, David P., Chandran, Shruthi S., Oren, Eyal, Brown, Heidi E., Harris, Robin B., Knight, Gwenan M., and Grandjean, Louis
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INFECTIOUS disease transmission , *MULTIDRUG-resistant tuberculosis - Abstract
Background: Transmission of multidrug-resistant tuberculosis (MDRTB) requires spatial proximity between infectious cases and susceptible persons. We assess activity space overlap among MDRTB cases and community controls to identify potential areas of transmission.Methods: We enrolled 35 MDRTB cases and 64 TB-free community controls in Lima, Peru. Cases were whole genome sequenced and strain clustering was used as a proxy for transmission. GPS data were gathered from participants over seven days. Kernel density estimation methods were used to construct activity spaces from GPS locations and the utilization distribution overlap index (UDOI) was used to quantify activity space overlap.Results: Activity spaces of controls (median = 35.6 km2, IQR = 25.1-54) were larger than cases (median = 21.3 km2, IQR = 17.9-48.6) (P = 0.02). Activity space overlap was greatest among genetically clustered cases (mean UDOI = 0.63, sd = 0.67) and lowest between cases and controls (mean UDOI = 0.13, sd = 0.28). UDOI was positively associated with genetic similarity of MDRTB strains between case pairs (P < 0.001). The odds of two cases being genetically clustered increased by 22% per 0.10 increase in UDOI (OR = 1.22, CI = 1.09-1.36, P < 0.001).Conclusions: Activity space overlap is associated with MDRTB clustering. MDRTB transmission may be occurring in small, overlapping activity spaces in community settings. GPS studies may be useful in identifying new areas of MDRTB transmission. [ABSTRACT FROM AUTHOR]- Published
- 2021
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131. Why local antibiotic resistance data matters - Informing empiric prescribing through local data collation, app design and engagement in Zambia.
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Fwoloshi S, Chola U, Nakazwe R, Tatila T, Mateele T, Kabaso M, Muzyamba T, Mutwale I, Jones ASC, Islam J, Chikatula E, Mweemba A, Mbewe W, Mulenga L, Aiken AM, Anitha Menon J, Bailey SL, and Knight GM
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- Adult, Humans, Zambia epidemiology, Drug Resistance, Microbial, Anti-Bacterial Agents pharmacology, Anti-Bacterial Agents therapeutic use, Health Personnel, Mobile Applications
- Abstract
Background: Control of antimicrobial resistance (AMR) relies on local knowledge and local intervention implementation. Effective antibiotic stewardship requires locally-suitable prescribing guidelines. We aimed to use a novel digital tool (the ZARIApp) and a participatory approach to help develop locally-relevant empiric antibiotic prescribing guidelines for two hospitals in Lusaka, Zambia., Methods: We produced an AMR report using samples collected locally and routinely from adults within the prior two years (April 2020 - April 2022). We developed the ZARIApp, which provides prescribing recommendations based on local resistance data and antibiotic prescribing practices. We used qualitative evaluation of focus group discussions among healthcare professionals to assess the feasibility and acceptability of using the ZARIApp and identify the barriers to and enablers of this stewardship approach., Results: Resistance prevalence was high for many key pathogens: for example, 73% of 41 Escherichia coli isolates were resistant to ceftriaxone. We identified that high resistance rates were likely due to low levels of requesting and processing of microbiology samples from patients leading to insufficient and unrepresentative microbiology data. This emerged as the major barrier to generating locally-relevant guidelines. Through active stakeholder engagement, we modified the ZARIApp to better support users to generate empirical antibiotic guidelines within this context of unrepresentative microbiology data. Qualitative evaluation of focus group discussions suggested that the resulting ZARIApp was useful and easy to use. New antibiotic guidelines for key syndromes are now in place in the two study hospitals, but these have substantial residual uncertainty., Conclusions: Tools such as the free online ZARIApp can empower local settings to better understand and optimise how sampling and prescribing can help to improve patient care and reduce future AMR. However, the usability of the ZARIApp is severely limited by unrepresentative microbiology data; improved routine microbiology surveillance is vitally needed., Competing Interests: Declaration of Competing Interest The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper., (Copyright © 2023. Published by Elsevier Ltd.)
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- 2023
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132. Guiding pragmatic treatment choices for rifampicin-resistant tuberculosis in the absence of second-line drug susceptibility testing.
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Achar J, Seddon JA, Knight GM, Dodd PJ, Esmail H, Hughes J, and McQuaid CF
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- Humans, Rifampin therapeutic use, Microbial Sensitivity Tests, Isoniazid therapeutic use, Antitubercular Agents therapeutic use, Antitubercular Agents pharmacology, Drug Resistance, Bacterial, Mycobacterium tuberculosis, Tuberculosis, Multidrug-Resistant drug therapy
- Abstract
Competing Interests: Conflict of interest: J. Achar reports grants from the Swedish Research Council (2020-02336), outside the submitted work. H. Esmail has participated on advisory boards for Cepheid on the subject of novel molecular diagnostics with no financial or other form of compensation received. C.F. McQuaid reports grants from Bill and Melinda Gates Foundation, and the Unitaid Adherence Support Coalition to End TB (ASCENT) project, outside the submitted work. All other authors have no potential conflicts of interest to disclose.
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- 2023
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133. The burden and dynamics of hospital-acquired SARS-CoV-2 in England.
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Cooper BS, Evans S, Jafari Y, Pham TM, Mo Y, Lim C, Pritchard MG, Pople D, Hall V, Stimson J, Eyre DW, Read JM, Donnelly CA, Horby P, Watson C, Funk S, Robotham JV, and Knight GM
- Subjects
- Humans, Communicable Disease Control, England epidemiology, Hospitals, Quarantine statistics & numerical data, SARS-CoV-2, COVID-19 epidemiology, COVID-19 transmission, Cross Infection epidemiology, Cross Infection prevention & control, Cross Infection transmission, Disease Transmission, Infectious prevention & control, Disease Transmission, Infectious statistics & numerical data, Inpatients, Pandemics prevention & control, Pandemics statistics & numerical data
- Abstract
Hospital-based transmission had a dominant role in Middle East respiratory syndrome coronavirus (MERS-CoV) and severe acute respiratory syndrome coronavirus (SARS-CoV) epidemics
1,2 , but large-scale studies of its role in the SARS-CoV-2 pandemic are lacking. Such transmission risks spreading the virus to the most vulnerable individuals and can have wider-scale impacts through hospital-community interactions. Using data from acute hospitals in England, we quantify within-hospital transmission, evaluate likely pathways of spread and factors associated with heightened transmission risk, and explore the wider dynamical consequences. We estimate that between June 2020 and March 2021 between 95,000 and 167,000 inpatients acquired SARS-CoV-2 in hospitals (1% to 2% of all hospital admissions in this period). Analysis of time series data provided evidence that patients who themselves acquired SARS-CoV-2 infection in hospital were the main sources of transmission to other patients. Increased transmission to inpatients was associated with hospitals having fewer single rooms and lower heated volume per bed. Moreover, we show that reducing hospital transmission could substantially enhance the efficiency of punctuated lockdown measures in suppressing community transmission. These findings reveal the previously unrecognized scale of hospital transmission, have direct implications for targeting of hospital control measures and highlight the need to design hospitals better equipped to limit the transmission of future high-consequence pathogens., (© 2023. The Author(s).)- Published
- 2023
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134. Global burden of disease due to rifampicin-resistant tuberculosis: a mathematical modeling analysis.
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Menzies NA, Allwood BW, Dean AS, Dodd PJ, Houben RMGJ, James LP, Knight GM, Meghji J, Nguyen LN, Rachow A, Schumacher SG, Mirzayev F, and Cohen T
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- Humans, Rifampin pharmacology, Rifampin therapeutic use, Global Burden of Disease, Models, Theoretical, Antitubercular Agents pharmacology, Antitubercular Agents therapeutic use, Tuberculosis, Multidrug-Resistant drug therapy, Tuberculosis, Multidrug-Resistant epidemiology, Tuberculosis drug therapy, Tuberculosis epidemiology, Tuberculosis prevention & control
- Abstract
In 2020, almost half a million individuals developed rifampicin-resistant tuberculosis (RR-TB). We estimated the global burden of RR-TB over the lifetime of affected individuals. We synthesized data on incidence, case detection, and treatment outcomes in 192 countries (99.99% of global tuberculosis). Using a mathematical model, we projected disability-adjusted life years (DALYs) over the lifetime for individuals developing tuberculosis in 2020 stratified by country, age, sex, HIV, and rifampicin resistance. Here we show that incident RR-TB in 2020 was responsible for an estimated 6.9 (95% uncertainty interval: 5.5, 8.5) million DALYs, 44% (31, 54) of which accrued among TB survivors. We estimated an average of 17 (14, 21) DALYs per person developing RR-TB, 34% (12, 56) greater than for rifampicin-susceptible tuberculosis. RR-TB burden per 100,000 was highest in former Soviet Union countries and southern African countries. While RR-TB causes substantial short-term morbidity and mortality, nearly half of the overall disease burden of RR-TB accrues among tuberculosis survivors. The substantial long-term health impacts among those surviving RR-TB disease suggest the need for improved post-treatment care and further justify increased health expenditures to prevent RR-TB transmission., (© 2023. Springer Nature Limited.)
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- 2023
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135. AHHME: A model for estimating the holistic cost-effectiveness of antimicrobial resistance interventions in food animal production.
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Emes ET, Waage J, Knight GM, and Naylor NR
- Abstract
Antimicrobial resistance (AMR) is considered a global priority for human health, and reducing antimicrobial use in food animals has been suggested as a key area for interventions aiming to reduce resistant infections in humans. In addition to the effect on human health, such interventions may have effects across food animal productivity, healthcare sector costs, and the broader macroeconomy, but these effects are rarely captured in the AMR health economic literature. Without being able to estimate these effects, it is difficult to understand the true cost-effectiveness of antimicrobial stewardship interventions in food animal production, or to correctly design and prioritise such interventions. We explore and demonstrate the potential use of a novel compartment-based mathematical model to estimate the holistic cost-effectiveness of AMR-related interventions in food animal production from a One Health perspective. The Agriculture Human Health Micro-Economic model (AHHME) uses Markov state transition models to model the movement of humans and food animals between health states. It assigns values to these health states utilising empiric approaches, from the perspectives of human health, food animal productivity, labour productivity and healthcare sector costs. Providing AHHME open-source code and interactive online modelling tools allow for capacity building in AMR intervention modelling. This model represents a useful framework for capturing the cost-effectiveness of AMR-related interventions in food animal production in a more holistic way: it can allow us to capture the often-overlooked benefits of such interventions in like terms while considering distributional concerns. It also demonstrates that methodological assumptions such as willingness-to-pay thresholds and discount rates can be just as important to health decision models as epidemiological parameters, and allows these assumptions to be altered. We provide example outputs, and encourage researchers and policymakers to use and adapt our code to explore, design, and prioritise AMR-related interventions in their own country contexts., Competing Interests: The authors declare no conflicts of interest, (Crown Copyright © 2023 Published by Elsevier B.V.)
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- 2023
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136. Markers of epidemiological success of methicillin-resistant Staphylococcus aureus isolates in European populations.
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Baede VO, Gupta A, Knight GM, Schouls LM, Laing K, Tavakol M, Barray A, de Vlas SJ, de Vos AS, Hendrickx APA, Khan M, Kretzschmar ME, van Wamel WJB, Lina G, Vandenesch F, Vos MC, Witney AA, Rasigade JP, and Lindsay JA
- Subjects
- Humans, Phylogeny, Anti-Bacterial Agents pharmacology, Anti-Bacterial Agents therapeutic use, Fluoroquinolones, Microbial Sensitivity Tests, Methicillin-Resistant Staphylococcus aureus, Staphylococcal Infections microbiology
- Abstract
Objectives: Methicillin-resistant Staphylococcus aureus (MRSA) infections impose a considerable burden on health systems, yet there is remarkable variation in the global incidence and epidemiology of MRSA. The MACOTRA consortium aimed to identify bacterial markers of epidemic success of MRSA isolates in Europe using a representative MRSA collection originating from France, the Netherlands and the United Kingdom., Methods: Operational definitions of success were defined in consortium meetings to compose a balanced strain collection of successful and sporadic MRSA isolates. Isolates were subjected to antimicrobial susceptibility testing and whole-genome sequencing; genes were identified and phylogenetic trees constructed. Markers of epidemiological success were identified using genome-based time-scaled haplotypic density analysis and linear regression. Antimicrobial usage data from ESAC-Net was compared with national MRSA incidence data., Results: Heterogeneity of MRSA isolate collections across countries hampered the use of a unified operational definition of success; therefore, country-specific approaches were used to establish the MACOTRA strain collection. Phenotypic antimicrobial resistance varied within related MRSA populations and across countries. In time-scaled haplotypic density analysis, fluoroquinolone, macrolide and mupirocin resistance were associated with MRSA success, whereas gentamicin, rifampicin and trimethoprim resistance were associated with sporadicity. Usage of antimicrobials across 29 European countries varied substantially, and β-lactam, fluoroquinolone, macrolide and aminoglycoside use correlated with MRSA incidence., Discussion: Our results are the strongest yet to associate MRSA antibiotic resistance profiles and antibiotic usage with the incidence of infection and successful clonal spread, which varied by country. Harmonized isolate collection, typing, resistance profiling and alignment with antimicrobial usage over time will aid comparisons and further support country-specific interventions to reduce MRSA burden., (Copyright © 2023 The Author(s). Published by Elsevier Ltd.. All rights reserved.)
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- 2023
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137. Quantifying patient- and hospital-level antimicrobial resistance dynamics in Staphylococcus aureus from routinely collected data.
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Leclerc Q, Clements A, Dunn H, Hatcher J, Lindsay JA, Grandjean L, and Knight GM
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- Child, Humans, Staphylococcus aureus genetics, Methicillin, Routinely Collected Health Data, Drug Resistance, Bacterial, Hospitals, Pediatric, Anti-Bacterial Agents pharmacology, Anti-Bacterial Agents therapeutic use, Staphylococcal Infections epidemiology
- Abstract
Introduction. Antimicrobial resistance (AMR) to all antibiotic classes has been found in the pathogen Staphylococcus aureus . The reported prevalence of these resistances varies, driven by within-host AMR evolution at the patient level, and between-host transmission at the hospital level. Without dense longitudinal sampling, pragmatic analysis of AMR dynamics at multiple levels using routine surveillance data is essential to inform control measures. Gap Statement. The value and limitations of routinely collected hospital data to gain insight into AMR dynamics at the hospital and individual levels simultaneously are unclear. Methodology. We explored S. aureus AMR diversity in 70 000 isolates from a UK paediatric hospital between 2000-2021, using electronic datasets containing multiple routinely collected isolates per patient with phenotypic antibiograms and information on hospitalization and antibiotic consumption. Results. At the hospital level, the proportion of isolates that were meticillin-resistant (MRSA) increased between 2014-2020 from 25-50 %, before sharply decreasing to 30%, likely due to a change in inpatient demographics. Temporal trends in the proportion of isolates resistant to different antibiotics were often correlated in MRSA, but independent in meticillin-susceptible S. aureus . Ciprofloxacin resistance in MRSA decreased from 70-40 % of tested isolates between 2007-2020, likely linked to a national policy to reduce fluoroquinolone usage in 2007. At the patient level, we identified frequent AMR diversity, with 4 % of patients ever positive for S. aureus simultaneously carrying, at some point, multiple isolates with different resistances. We detected changes over time in AMR diversity in 3 % of patients ever positive for S. aureus . These changes equally represented gain and loss of resistance. Conclusion. Within this routinely collected dataset, we found that 65 % of changes in resistance within a patient's S. aureus population could not be explained by antibiotic exposure or between-patient transmission of bacteria, suggesting that within-host evolution via frequent gain and loss of AMR genes may be responsible for these changing AMR profiles. Our study highlights the value of exploring existing routine surveillance data to determine underlying mechanisms of AMR. These insights may substantially improve our understanding of the importance of antibiotic exposure variation, and the success of single S. aureus clones.
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- 2023
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138. The contribution of hospital-acquired infections to the COVID-19 epidemic in England in the first half of 2020.
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Knight GM, Pham TM, Stimson J, Funk S, Jafari Y, Pople D, Evans S, Yin M, Brown CS, Bhattacharya A, Hope R, Semple MG, Read JM, Cooper BS, and Robotham JV
- Subjects
- Hospitalization, Hospitals, Humans, SARS-CoV-2, COVID-19 epidemiology, Cross Infection epidemiology
- Abstract
Background: SARS-CoV-2 is known to transmit in hospital settings, but the contribution of infections acquired in hospitals to the epidemic at a national scale is unknown., Methods: We used comprehensive national English datasets to determine the number of COVID-19 patients with identified hospital-acquired infections (with symptom onset > 7 days after admission and before discharge) in acute English hospitals up to August 2020. As patients may leave the hospital prior to detection of infection or have rapid symptom onset, we combined measures of the length of stay and the incubation period distribution to estimate how many hospital-acquired infections may have been missed. We used simulations to estimate the total number (identified and unidentified) of symptomatic hospital-acquired infections, as well as infections due to onward community transmission from missed hospital-acquired infections, to 31st July 2020., Results: In our dataset of hospitalised COVID-19 patients in acute English hospitals with a recorded symptom onset date (n = 65,028), 7% were classified as hospital-acquired. We estimated that only 30% (range across weeks and 200 simulations: 20-41%) of symptomatic hospital-acquired infections would be identified, with up to 15% (mean, 95% range over 200 simulations: 14.1-15.8%) of cases currently classified as community-acquired COVID-19 potentially linked to hospital transmission. We estimated that 26,600 (25,900 to 27,700) individuals acquired a symptomatic SARS-CoV-2 infection in an acute Trust in England before 31st July 2020, resulting in 15,900 (15,200-16,400) or 20.1% (19.2-20.7%) of all identified hospitalised COVID-19 cases., Conclusions: Transmission of SARS-CoV-2 to hospitalised patients likely caused approximately a fifth of identified cases of hospitalised COVID-19 in the "first wave" in England, but less than 1% of all infections in England. Using time to symptom onset from admission for inpatients as a detection method likely misses a substantial proportion (> 60%) of hospital-acquired infections., (© 2022. The Author(s).)
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- 2022
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139. Effectiveness of infection prevention and control interventions, excluding personal protective equipment, to prevent nosocomial transmission of SARS-CoV-2: a systematic review and call for action.
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Jafari Y, Yin M, Lim C, Pople D, Evans S, Stimson J, Pham TM, Read JM, Robotham JV, Cooper BS, and Knight GM
- Abstract
Many infection prevention and control (IPC) interventions have been adopted by hospitals to limit nosocomial transmission of SARS-CoV-2. The aim of this systematic review is to identify evidence on the effectiveness of these interventions. We conducted a literature search of five databases (OVID MEDLINE, Embase, CENTRAL, COVID-19 Portfolio (pre-print), Web of Science). SWIFT ActiveScreener software was used to screen English titles and abstracts published between 1st January 2020 and 6th April 2021. Intervention studies, defined by Cochrane Effective Practice and Organisation of Care, that evaluated IPC interventions with an outcome of SARS-CoV-2 infection in either patients or healthcare workers were included. Personal protective equipment (PPE) was excluded as this intervention had been previously reviewed. Risks of bias were assessed using the Cochrane tool for randomised trials (RoB2) and non-randomized studies of interventions (ROBINS-I). From 23,156 screened articles, we identified seven articles that met the inclusion criteria, all of which evaluated interventions to prevent infections in healthcare workers and the majority of which were focused on effectiveness of prophylaxes. Due to heterogeneity in interventions, we did not conduct a meta-analysis. All agents used for prophylaxes have little to no evidence of effectiveness against SARS-CoV-2 infections. We did not find any studies evaluating the effectiveness of interventions including but not limited to screening, isolation and improved ventilation. There is limited evidence from interventional studies, excluding PPE, evaluating IPC measures for SARS-CoV-2. This review calls for urgent action to implement such studies to inform policies to protect our most vulnerable populations and healthcare workers., (© 2021 The Authors.)
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- 2022
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140. Understanding MRSA clonal competition within a UK hospital; the possible importance of density dependence.
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de Vos AS, de Vlas SJ, Lindsay JA, Kretzschmar MEE, and Knight GM
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- Anti-Bacterial Agents pharmacology, Anti-Bacterial Agents therapeutic use, Hospitals, Humans, Microbial Sensitivity Tests, United Kingdom epidemiology, Methicillin-Resistant Staphylococcus aureus genetics, Staphylococcal Infections drug therapy, Staphylococcal Infections epidemiology
- Abstract
Background: Methicillin resistant Staphylococcus aureus (MRSA) bacteria cause serious, often healthcare-associated infections and are frequently highly resistant to diverse antibiotics. Multiple MRSA clonal complexes (CCs) have evolved independently and countries have different prevalent CCs. It is unclear when and why the dominant CC in a region may switch., Methods: We developed a mathematical deterministic model of MRSA CC competing for limited resource. The model distinguishes 'standard MRSA' and multidrug resistant sub-populations within each CC, allowing for resistance loss and transfer between same CC bacteria. We first analysed how dynamics of this system depend on growth-rate and resistance-potential differences between CCs, and on their resistance gene accumulation. We then fit the model to capture the longitudinal CC dynamics observed at a single UK hospital, which exemplified the UK-wide switch from mainly CC30 to mainly CC22., Results: We find that within a CC, gain and loss of resistance can allow for co-existence of sensitive and resistant sub-populations. Due to more efficient transfer of resistance at higher CC density, more drug resistance can accumulate in the population of a more prevalent CC. We show how this process of density dependent competition, together with prevalence disruption, could explain the relatively sudden switch from mainly CC30 to mainly CC22 in the UK hospital setting. Alternatively, the observed hospital dynamics could be reproduced by assuming that multidrug resistant CC22 evolved only around 2004., Conclusions: We showed how higher prevalence may advantage a CC by allowing it to acquire antimicrobial resistances more easily. Due to this density dependence in competition, dominance in an area can depend on historic contingencies; the MRSA CC that happened to be first could stay dominant because of its high prevalence advantage. This then could help explain the stability, despite frequent stochastic introductions across borders, of geographic differences in MRSA CC., (Copyright © 2021 The Authors. Published by Elsevier B.V. All rights reserved.)
- Published
- 2021
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141. Importance of patient bed pathways and length of stay differences in predicting COVID-19 hospital bed occupancy in England.
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Leclerc QJ, Fuller NM, Keogh RH, Diaz-Ordaz K, Sekula R, Semple MG, Atkins KE, Procter SR, and Knight GM
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- England, Humans, Length of Stay, SARS-CoV-2, Bed Occupancy, COVID-19
- Abstract
Background: Predicting bed occupancy for hospitalised patients with COVID-19 requires understanding of length of stay (LoS) in particular bed types. LoS can vary depending on the patient's "bed pathway" - the sequence of transfers of individual patients between bed types during a hospital stay. In this study, we characterise these pathways, and their impact on predicted hospital bed occupancy., Methods: We obtained data from University College Hospital (UCH) and the ISARIC4C COVID-19 Clinical Information Network (CO-CIN) on hospitalised patients with COVID-19 who required care in general ward or critical care (CC) beds to determine possible bed pathways and LoS. We developed a discrete-time model to examine the implications of using either bed pathways or only average LoS by bed type to forecast bed occupancy. We compared model-predicted bed occupancy to publicly available bed occupancy data on COVID-19 in England between March and August 2020., Results: In both the UCH and CO-CIN datasets, 82% of hospitalised patients with COVID-19 only received care in general ward beds. We identified four other bed pathways, present in both datasets: "Ward, CC, Ward", "Ward, CC", "CC" and "CC, Ward". Mean LoS varied by bed type, pathway, and dataset, between 1.78 and 13.53 days. For UCH, we found that using bed pathways improved the accuracy of bed occupancy predictions, while only using an average LoS for each bed type underestimated true bed occupancy. However, using the CO-CIN LoS dataset we were not able to replicate past data on bed occupancy in England, suggesting regional LoS heterogeneities., Conclusions: We identified five bed pathways, with substantial variation in LoS by bed type, pathway, and geography. This might be caused by local differences in patient characteristics, clinical care strategies, or resource availability, and suggests that national LoS averages may not be appropriate for local forecasts of bed occupancy for COVID-19., Trial Registration: The ISARIC WHO CCP-UK study ISRCTN66726260 was retrospectively registered on 21/04/2020 and designated an Urgent Public Health Research Study by NIHR.
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- 2021
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142. Implication of backward contact tracing in the presence of overdispersed transmission in COVID-19 outbreaks.
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Endo A, Leclerc QJ, Knight GM, Medley GF, Atkins KE, Funk S, and Kucharski AJ
- Abstract
Introduction: Contact tracing has the potential to control outbreaks without the need for stringent physical distancing policies, e.g. civil lockdowns. Unlike forward contact tracing, backward contact tracing identifies the source of newly detected cases. This approach is particularly valuable when there is high individual-level variation in the number of secondary transmissions (overdispersion). Methods: By using a simple branching process model, we explored the potential of combining backward contact tracing with more conventional forward contact tracing for control of COVID-19. We estimated the typical size of clusters that can be reached by backward tracing and simulated the incremental effectiveness of combining backward tracing with conventional forward tracing. Results: Across ranges of parameter values consistent with dynamics of SARS-CoV-2, backward tracing is expected to identify a primary case generating 3-10 times more infections than a randomly chosen case, typically increasing the proportion of subsequent cases averted by a factor of 2-3. The estimated number of cases averted by backward tracing became greater with a higher degree of overdispersion. Conclusion: Backward contact tracing can be an effective tool for outbreak control, especially in the presence of overdispersion as is observed with SARS-CoV-2., Competing Interests: Competing interests: AE received a research grant from Taisho Pharmaceutical Co., Ltd., (Copyright: © 2021 Endo A et al.)
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- 2021
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143. Ongoing challenges to understanding multidrug- and rifampicin-resistant tuberculosis in children versus adults.
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McQuaid CF, Cohen T, Dean AS, Houben RMGJ, Knight GM, Zignol M, and White RG
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- Adolescent, Adult, Antitubercular Agents therapeutic use, Child, Europe, Finland, Germany, Humans, Peru, Poland, Rifampin therapeutic use, United Kingdom, Mycobacterium tuberculosis, Tuberculosis, Multidrug-Resistant drug therapy, Tuberculosis, Multidrug-Resistant epidemiology
- Abstract
Previous analyses suggest that children with tuberculosis (TB) are no more or no less likely to have multidrug (MDR)- or rifampicin-resistant (RR)-TB than adults. However, the availability of new data, particularly for high MDR/RR-TB burden countries, suggest updates of country-specific estimates are warranted.We used data from population-representative surveys and surveillance collected between 2000 and 2018 to compare the odds ratio of MDR/RR-TB among children (aged <15 years) with TB, compared to the odds of MDR/RR-TB among adults (aged ≥15 years) with TB.In most settings (45 out of 55 countries), and globally as a whole, there is no evidence that age is associated with odds of MDR/RR-TB. However, in some settings, such as former Soviet Union countries in general, and Georgia, Kazakhstan, Lithuania, Tajikistan and Uzbekistan in particular, as well as Peru, MDR/RR-TB is positively associated with age ≥15 years. Meanwhile, in Western Europe in general, and the United Kingdom, Poland, Finland and Luxembourg in particular, MDR/RR-TB is positively associated with age <15 years. 16 countries had sufficient data to compare over time between 2000-2011 and 2012-2018, with evidence for decreases in the odds ratio in children compared to adults in Germany, Kazakhstan and the United States of America.Our results support findings that in most settings a child with TB is as likely as an adult with TB to have MDR/RR-TB. However, setting-specific heterogeneity requires further investigation. Furthermore, the odds ratio for MDR/RR-TB in children compared to adults is generally either stable or decreasing. There are important gaps in detection, recording and reporting of drug resistance among paediatric TB cases, limiting our understanding of transmission risks and measures needed to combat the global TB epidemic., Competing Interests: Conflict of interest: C.F. McQuaid has nothing to disclose. Conflict of interest: T. Cohen has nothing to disclose. Conflict of interest: A.S. Dean has nothing to disclose. Conflict of interest: R.M.G.J. Houben has nothing to disclose. Conflict of interest: G.M. Knight has nothing to disclose. Conflict of interest: M. Zignol has nothing to disclose. Conflict of interest: R.G. White has nothing to disclose., (Copyright ©ERS 2021.)
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- 2021
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144. Definition of a genetic relatedness cutoff to exclude recent transmission of meticillin-resistant Staphylococcus aureus : a genomic epidemiology analysis.
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Coll F, Raven KE, Knight GM, Blane B, Harrison EM, Leek D, Enoch DA, Brown NM, Parkhill J, and Peacock SJ
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- Genomics, Humans, Methicillin, Retrospective Studies, Staphylococcus aureus genetics, Methicillin-Resistant Staphylococcus aureus genetics, Staphylococcal Infections epidemiology
- Abstract
Background: Whole-genome sequencing (WGS) can be used in genomic epidemiology investigations to confirm or refute outbreaks of bacterial pathogens, and to support targeted and efficient infection control interventions. We aimed to define a genetic relatedness cutoff, quantified as a number of single-nucleotide polymorphisms (SNP), for meticillin-resistant Staphylococcus aureus (MRSA), above which recent (ie, within 6 months) patient-to-patient transmission could be ruled out., Methods: We did a retrospective genomic and epidemiological analysis of MRSA data from two prospective observational cohort studies in the UK to establish SNP cutoffs for genetic relatedness, above which recent transmission was unlikely. We used three separate approaches to calculate these thresholds. First, we applied a linear mixed model to estimate the S aureus substitution rate and 95th percentile within-host diversity in a cohort in which multiple isolates were sequenced per individual. Second, we applied a simulated transmission model to this same genomic dataset. Finally, in a second cohort, we determined the genetic distance (ie, the number of SNPs) that would capture 95% of epidemiologically linked cases. We applied the three approaches to both whole-genome and core-genome sequences., Findings: In the linear mixed model, the estimated substitution rate was roughly 5 whole-genome SNPs (wgSNPs) or 3 core-genome SNPs (cgSNPs) per genome per year, and the 95th percentile within-host diversity was 19 wgSNPs or 10 cgSNPs. The combined SNP cutoffs for detection of MRSA transmission within 6 months per this model were thus 24 wgSNPs or 13 cgSNPs. The simulated transmission model suggested that cutoffs of 17 wgSNPs or 12 cgSNPs would detect 95% of MRSA transmission events within the same timeframe. Finally, in the second cohort, cutoffs of 22 wgSNPs or 11 cgSNPs captured 95% of epidemiologically linked cases within 6 months., Interpretation: On the basis of our results, we propose conservative cutoffs of 25 wgSNPs or 15 cgSNPS above which transmission of MRSA within the previous 6 months can be ruled out. These cutoffs could potentially be used as part of a genomic sequencing approach to the management of outbreaks of MRSA in conjunction with traditional epidemiological techniques., Funding: UK Department of Health, Wellcome Trust, UK National Institute for Health Research., (© 2020 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license.)
- Published
- 2020
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145. Implication of backward contact tracing in the presence of overdispersed transmission in COVID-19 outbreaks.
- Author
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Endo A, Leclerc QJ, Knight GM, Medley GF, Atkins KE, Funk S, and Kucharski AJ
- Abstract
Introduction: Contact tracing has the potential to control outbreaks without the need for stringent physical distancing policies, e.g. civil lockdowns. Unlike forward contact tracing, backward contact tracing identifies the source of newly detected cases. This approach is particularly valuable when there is high individual-level variation in the number of secondary transmissions (overdispersion). Methods: By using a simple branching process model, we explored the potential of combining backward contact tracing with more conventional forward contact tracing for control of COVID-19. We estimated the typical size of clusters that can be reached by backward tracing and simulated the incremental effectiveness of combining backward tracing with conventional forward tracing. Results: Across ranges of parameter values consistent with dynamics of SARS-CoV-2, backward tracing is expected to identify a primary case generating 3-10 times more infections than average, typically increasing the proportion of subsequent cases averted by a factor of 2-3. The estimated number of cases averted by backward tracing became greater with a higher degree of overdispersion. Conclusion: Backward contact tracing can be an effective tool for outbreak control, especially in the presence of overdispersion as was observed with SARS-CoV-2., Competing Interests: Competing interests: AE received a research grant from Taisho Pharmaceutical Co., Ltd., (Copyright: © 2020 Endo A et al.)
- Published
- 2020
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146. What settings have been linked to SARS-CoV-2 transmission clusters?
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Leclerc QJ, Fuller NM, Knight LE, Funk S, and Knight GM
- Abstract
Background : Concern about the health impact of novel coronavirus SARS-CoV-2 has resulted in widespread enforced reductions in people's movement ("lockdowns"). However, there are increasing concerns about the severe economic and wider societal consequences of these measures. Some countries have begun to lift some of the rules on physical distancing in a stepwise manner, with differences in what these "exit strategies" entail and their timeframes. The aim of this work was to inform such exit strategies by exploring the types of indoor and outdoor settings where transmission of SARS-CoV-2 has been reported to occur and result in clusters of cases. Identifying potential settings that result in transmission clusters allows these to be kept under close surveillance and/or to remain closed as part of strategies that aim to avoid a resurgence in transmission following the lifting of lockdown measures. Methods : We performed a systematic review of available literature and media reports to find settings reported in peer reviewed articles and media with these characteristics. These sources are curated and made available in an editable online database. Results : We found many examples of SARS-CoV-2 clusters linked to a wide range of mostly indoor settings. Few reports came from schools, many from households, and an increasing number were reported in hospitals and elderly care settings across Europe. Conclusions: We identified possible places that are linked to clusters of COVID-19 cases and could be closely monitored and/or remain closed in the first instance following the progressive removal of lockdown restrictions. However, in part due to the limits in surveillance capacities in many settings, the gathering of information such as cluster sizes and attack rates is limited in several ways: inherent recall bias, biased media reporting and missing data., Competing Interests: No competing interests were disclosed., (Copyright: © 2020 Leclerc QJ et al.)
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- 2020
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147. Global burden of latent multidrug-resistant tuberculosis: trends and estimates based on mathematical modelling.
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Knight GM, McQuaid CF, Dodd PJ, and Houben RMGJ
- Subjects
- Adolescent, Adult, Child, Child, Preschool, Female, Global Health, Humans, Infant, Latent Tuberculosis drug therapy, Male, Middle Aged, Mycobacterium tuberculosis isolation & purification, Population Surveillance, Prevalence, Tuberculosis, Multidrug-Resistant drug therapy, Global Burden of Disease statistics & numerical data, Global Burden of Disease trends, Latent Tuberculosis epidemiology, Models, Theoretical, Tuberculosis, Multidrug-Resistant epidemiology
- Abstract
Background: To end the global tuberculosis epidemic, latent tuberculosis infection needs to be addressed. All standard treatments for latent tuberculosis contain drugs to which multidrug-resistant (MDR) Mycobacterium tuberculosis is resistant. We aimed to estimate the global burden of multidrug-resistant latent tuberculosis infection to inform tuberculosis elimination policy., Methods: By fitting a flexible statistical model to tuberculosis drug resistance surveillance and survey data collated by WHO, we estimated national trends in the proportion of new tuberculosis cases that were caused by MDR strains. We used these data as a proxy for the proportion of new infections caused by MDR M tuberculosis and multiplied trends in annual risk of infection from previous estimates of the burden of latent tuberculosis to generate trends in the annual risk of infection with MDR M tuberculosis. These estimates were used in a cohort model to estimate changes in the global and national prevalence of latent infection with MDR M tuberculosis. We also estimated recent infection levels (ie, in 2013 and 2014) and made predictions for the future burden of MDR tuberculosis in 2035 and 2050., Findings: 19·1 million (95% uncertainty interval [UI] 16·4 million-21·7 million) people were latently infected with MDR tuberculosis in 2014-a global prevalence of 0·3% (95% UI 0·2-0·3). MDR strains accounted for 1·2% (95% UI 1·0-1·4) of the total latent tuberculosis burden overall, but for 2·9% (95% UI 2·6-3·1) of the burden among children younger than 15 years (risk ratio for those younger than 15 years vs those aged 15 years or older 2·65 [95% UI 2·11-3·25]). Recent latent infection with MDR M tuberculosis meant that 1·9 million (95% UI 1·7 million-2·3 million) people globally were at high risk of active MDR tuberculosis in 2015., Interpretation: We estimate that three in every 1000 people globally carry latent MDR tuberculosis infection, and prevalence is around ten times higher among those younger than 15 years. If current trends continue, the proportion of latent tuberculosis caused by MDR strains will increase, which will pose serious challenges for management of latent tuberculosis-a cornerstone of tuberculosis elimination strategies., Funding: UK Medical Research Council, Bill & Melinda Gates Foundation, and European Research Council., (Copyright © 2019 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license. Published by Elsevier Ltd.. All rights reserved.)
- Published
- 2019
- Full Text
- View/download PDF
148. Age-targeted tuberculosis vaccination in China and implications for vaccine development: a modelling study.
- Author
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Harris RC, Sumner T, Knight GM, Evans T, Cardenas V, Chen C, and White RG
- Subjects
- Adolescent, Age Distribution, Age Factors, China epidemiology, Computer Simulation, Female, Humans, Incidence, Male, Middle Aged, Tuberculosis epidemiology, Tuberculosis transmission, Young Adult, Drug Development, Latent Tuberculosis epidemiology, Tuberculosis prevention & control, Tuberculosis Vaccines therapeutic use
- Abstract
Background: Tuberculosis is the leading single-pathogen cause of death worldwide, and China has the third largest number of cases worldwide. New tools, such as new vaccines, are needed to meet WHO tuberculosis goals. Tuberculosis vaccine development strategies mostly target infants or adolescents, but given China's ageing epidemic, vaccinating older people might be important. We modelled the potential impact of new tuberculosis vaccines in China targeting adolescents (15-19 years) or older adults (60-64 years) with varying vaccine characteristics to inform strategic vaccine development., Methods: A Mycobacterium tuberculosis transmission model was calibrated to age-stratified demographic and epidemiological data from China. Varying scenarios of vaccine implementation (age targeting [adolescents or older adults] and coverage [30% or 70%]) and characteristics (efficacy [40%, 60%, or 80%], duration of protection [10 years or 20 years], and host infection status required for efficacy [pre-infection, post-infection in latency, post-infection in latency or recovered, or pre-infection and post-infection]) were assessed. Primary outcomes were tuberculosis incidence and mortality rate reduction in 2050 in each vaccine scenario compared with the baseline (no new vaccine) scenario and cumulative number needed to vaccinate (NNV) per case or death averted, 2025-50., Findings: By 2050, results suggest that 74·5% (uncertainty interval [UI] 70·2-78·6) of incident tuberculosis cases in China would occur in people aged 65 years or older, and 75·1% (66·8-80·7) of all cases would be due to reactivation, rather than new infection. All vaccine profiles delivered to older adults had higher population-level impact (reduction of incidence and mortality rates) and lower NNV per case and per death averted than if delivered to adolescents. For an intermediate vaccine scenario of 60% efficacy, 10-year protection, and 70% coverage, the reduction of tuberculosis incidence rates with older adult vaccination was 1·9 times (UI 1·5-2·6) to 157·5 times (119·3-225·6) greater than with adolescent vaccination, and the NNV was 0·011 times (0·008-0·014) to 0·796 times (0·632-0·970) lower. Furthermore, with older adult vaccination, post-infection vaccines provided substantially greater mortality and incidence rate reductions than pre-infection vaccines., Interpretation: Adolescent-targeted tuberculosis vaccines, the focus of many development plans, would have only a small impact in ageing, reactivation-driven epidemics such as those in China. Instead, an efficacious post-infection vaccine delivered to older adults will be crucial to maximise population-level impact in this setting and would provide an important contribution towards achieving WHO goals. Older adults should be included in tuberculosis vaccine clinical development and implementation planning., Funding: Aeras and UK MRC., (Copyright © 2019 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license. Published by Elsevier Ltd.. All rights reserved.)
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- 2019
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149. Potential impact of influenza vaccine roll-out on antibiotic use in Africa.
- Author
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Knight GM, Clarkson M, and de Silva TI
- Subjects
- Africa epidemiology, Aged, Aged, 80 and over, Child, Preschool, Female, Humans, Incidence, Infant, Infant, Newborn, Male, Pregnancy, Anti-Bacterial Agents therapeutic use, Drug Utilization statistics & numerical data, Influenza Vaccines administration & dosage, Influenza, Human epidemiology, Influenza, Human prevention & control
- Abstract
Background: Influenza infections result in both inappropriate and appropriate antibiotic prescribing. There is a huge burden of both influenza and infections caused by antimicrobial-resistant pathogens in Africa. Influenza vaccines have the potential to reduce appropriate antibiotic use, through reduction of secondary bacterial infections, as well as to reduce levels of influenza misdiagnosed and treated as a bacterial infection (inappropriate)., Objectives: To estimate potential reductions in antibiotic use that are achievable by introducing an influenza vaccine into various African settings., Methods: Influenza incidence was combined with population size, vaccine and health system characteristics., Results: We estimated that the direct impact of vaccination could avert more than 390 prescriptions per 100 000 population per year if a 50% efficacious influenza vaccine at 30% coverage was introduced to adults >65 years old in South Africa or children 2-5 years old in Senegal. Across Africa, purely through reducing the number of severe acute respiratory infections, the same vaccine characteristics could avert at least 24 000 antibiotic prescriptions per year if given to children <5 years old., Conclusions: The introduction of an influenza vaccine into multiple African settings could have a dramatic indirect impact on antibiotic usage. Our values are limited underestimates, capturing only the direct impact of vaccination in a few settings and risk groups. This is owing to the huge lack of epidemiological information on antibiotic use and influenza in Africa. However, it is likely that influenza vaccination in Africa could substantially impact antibiotic usage in addition to influenza-related mortality and morbidity.
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- 2018
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150. Addressing the Unknowns of Antimicrobial Resistance: Quantifying and Mapping the Drivers of Burden.
- Author
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Knight GM, Costelloe C, Murray KA, Robotham JV, Atun R, and Holmes AH
- Subjects
- Humans, Models, Theoretical, Anti-Bacterial Agents pharmacology, Bacteria drug effects, Drug Resistance, Bacterial, Global Health
- Abstract
The global threat of antimicrobial resistance (AMR) has arisen through a network of complex interacting factors. Many different sources and transmission pathways contribute to the ever-growing burden of AMR in our clinical settings. The lack of data on these mechanisms and the relative importance of different factors causing the emergence and spread of AMR hampers our global efforts to effectively manage the risks. Importantly, we have little quantitative knowledge on the relative contributions of these sources and are likely to be targeting our interventions suboptimally as a result. Here we propose a systems mapping approach to address the urgent need for reliable and timely data to strengthen the response to AMR., (© The Author(s) 2017. Published by Oxford University Press for the Infectious Diseases Society of America. All rights reserved. For permissions, e-mail: journals.permissions@oup.com.)
- Published
- 2018
- Full Text
- View/download PDF
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