37 results on '"Poncel-Falcó A"'
Search Results
2. Identifying multimorbidity profiles associated with COVID-19 severity in chronic patients using network analysis in the PRECOVID Study
- Author
-
Jonás Carmona-Pírez, Antonio Gimeno-Miguel, Kevin Bliek-Bueno, Beatriz Poblador-Plou, Jesús Díez-Manglano, Ignatios Ioakeim-Skoufa, Francisca González-Rubio, Antonio Poncel-Falcó, Alexandra Prados-Torres, Luis A. Gimeno-Feliu, and on behalf of the PRECOVID Group
- Subjects
Medicine ,Science - Abstract
Abstract A major risk factor of COVID-19 severity is the patient's health status at the time of the infection. Numerous studies focused on specific chronic diseases and identified conditions, mainly cardiovascular ones, associated with poor prognosis. However, chronic diseases tend to cluster into patterns, each with its particular repercussions on the clinical outcome of infected patients. Network analysis in our population revealed that not all cardiovascular patterns have the same risk of COVID-19 hospitalization or mortality and that this risk depends on the pattern of multimorbidity, besides age and sex. We evidenced that negative outcomes were strongly related to patterns in which diabetes and obesity stood out in older women and men, respectively. In younger adults, anxiety was another disease that increased the risk of severity, most notably when combined with menstrual disorders in women or atopic dermatitis in men. These results have relevant implications for organizational, preventive, and clinical actions to help meet the needs of COVID-19 patients.
- Published
- 2022
- Full Text
- View/download PDF
3. FAIR4Health: Findable, Accessible, Interoperable and Reusable data to foster Health Research [version 2; peer review: 1 approved, 2 approved with reservations]
- Author
-
Christian Lovis, Christophe Gaudet-Blavignac, Miriam Quintero, Patrick Weber, Kevin Ashley, Manuel M. Perez-Perez, Carlos Luis Parra Calderón, Laurence Horton, Celia Alvarez-Romero, A. Anil Sinaci, Alicia Martínez-García, Eva Méndez, Mert Gencturk, Rosa Liperoti, Tony Hernández-Pérez, Matthias Löbe, Carmen Angioletti, Thomas M. Deserno, Nagarajan Ganapathy, Elisio Costa, Marta Almada, Giorgio Cangioli, Catherine Chronaki, Beatriz Poblador-Plou, Ronald Cornet, Antonio Gimeno-Miguel, Jonás Carmona-Pírez, Alexandra Prados-Torres, Antonio Poncel-Falcó, Bojan Zaric, Tomi Kovacevic, Sanja Hromis, Darijo Bokan, Carlos Rapallo Fernández, Jelena Djekic Malbasa, Jessica Rochat, and Teresa Velázquez Fernández
- Subjects
FAIR principles ,health research data management ,HL7 FHIR ,health data ,data sharing ,data reuse ,eng ,Science ,Social Sciences - Abstract
Due to the nature of health data, its sharing and reuse for research are limited by ethical, legal and technical barriers. The FAIR4Health project facilitated and promoted the application of FAIR principles in health research data, derived from the publicly funded health research initiatives to make them Findable, Accessible, Interoperable, and Reusable (FAIR). To confirm the feasibility of the FAIR4Health solution, we performed two pathfinder case studies to carry out federated machine learning algorithms on FAIRified datasets from five health research organizations. The case studies demonstrated the potential impact of the developed FAIR4Health solution on health outcomes and social care research. Finally, we promoted the FAIRified data to share and reuse in the European Union Health Research community, defining an effective EU-wide strategy for the use of FAIR principles in health research and preparing the ground for a roadmap for health research institutions. This scientific report presents a general overview of the FAIR4Health solution: from the FAIRification workflow design to translate raw data/metadata to FAIR data/metadata in the health research domain to the FAIR4Health demonstrators’ performance.
- Published
- 2022
- Full Text
- View/download PDF
4. Chronic diseases associated with increased likelihood of hospitalization and mortality in 68,913 COVID-19 confirmed cases in Spain: A population-based cohort study
- Author
-
Antonio Gimeno-Miguel, Kevin Bliek-Bueno, Beatriz Poblador-Plou, Jonás Carmona-Pírez, Antonio Poncel-Falcó, Francisca González-Rubio, Ignatios Ioakeim-Skoufa, Victoria Pico-Soler, Mercedes Aza-Pascual-Salcedo, Alexandra Prados-Torres, Luis Andrés Gimeno-Feliu, and on behalf of the PRECOVID Group
- Subjects
Medicine ,Science - Abstract
Background Clinical outcomes among COVID-19 patients vary greatly with age and underlying comorbidities. We aimed to determine the demographic and clinical factors, particularly baseline chronic conditions, associated with an increased risk of severity in COVID-19 patients from a population-based perspective and using data from electronic health records (EHR). Methods Retrospective, observational study in an open cohort analyzing all 68,913 individuals (mean age 44.4 years, 53.2% women) with SARS-CoV-2 infection between 15 June and 19 December 2020 using exhaustive electronic health registries. Patients were followed for 30 days from inclusion or until the date of death within that period. We performed multivariate logistic regression to analyze the association between each chronic disease and severe infection, based on hospitalization and all-cause mortality. Results 5885 (8.5%) individuals showed severe infection and old age was the most influencing factor. Congestive heart failure (odds ratio -OR- men: 1.28, OR women: 1.39), diabetes (1.37, 1.24), chronic renal failure (1.31, 1.22) and obesity (1.21, 1.26) increased the likelihood of severe infection in both sexes. Chronic skin ulcers (1.32), acute cerebrovascular disease (1.34), chronic obstructive pulmonary disease (1.21), urinary incontinence (1.17) and neoplasms (1.26) in men, and infertility (1.87), obstructive sleep apnea (1.43), hepatic steatosis (1.43), rheumatoid arthritis (1.39) and menstrual disorders (1.18) in women were also associated with more severe outcomes. Conclusions Age and specific cardiovascular and metabolic diseases increased the risk of severe SARS-CoV-2 infections in men and women, whereas the effects of certain comorbidities are sex specific. Future studies in different settings are encouraged to analyze which profiles of chronic patients are at higher risk of poor prognosis and should therefore be the targets of prevention and shielding strategies.
- Published
- 2021
5. FAIR4Health: Findable, Accessible, Interoperable and Reusable data to foster Health Research
- Author
-
Celia Alvarez-Romero, Alicia Martínez-García, A. Anil Sinaci, Mert Gencturk, Eva Méndez, Tony Hernández-Pérez, Rosa Liperoti, Carmen Angioletti, Matthias Löbe, Nagarajan Ganapathy, Thomas M. Deserno, Marta Almada, Elisio Costa, Catherine Chronaki, Giorgio Cangioli, Ronald Cornet, Beatriz Poblador-Plou, Jonás Carmona-Pírez, Antonio Gimeno-Miguel, Antonio Poncel-Falcó, Alexandra Prados-Torres, Tomi Kovacevic, Bojan Zaric, Darijo Bokan, Sanja Hromis, Jelena Djekic Malbasa, Carlos Rapallo Fernández, Teresa Velázquez Fernández, Jessica Rochat, Christophe Gaudet-Blavignac, Christian Lovis, Patrick Weber, Miriam Quintero, Manuel M. Perez-Perez, Kevin Ashley, Laurence Horton, Carlos Luis Parra Calderón, European Commission, Instituto de Salud Carlos III, Álvarez-Romero, Celia, Sinaci, A. Anil, Gencturk, Mert, Méndez-Rodríguez, Eva, Hernández-Pérez, Tony, Angioletti, Carmen, Löbe, Matthias, Ganapathy, Nagarajan, Almada, Marta, Costa, Elisio, Chronaki, Catherine, Cornet, Ronald0000-0002-1704-5980, Poblador-Plou, Beatriz0000-0002-5119-5093, Carmona-Pírez, Jonás0000-0002-6268-8803, Gaudet-Blavignac, Christophe, Lovis, Christian, Ashley, Kevin, Horton, Laurence, Parra-Calderón, Carlos Luis, Medical Informatics, APH - Global Health, APH - Methodology, APH - Digital Health, and APH - Quality of Care
- Subjects
FAIR principles ,Brief Report ,data sharing ,health research data management ,health data ,data reuse ,General Medicine ,Articles ,health research ,Machine learning ,open science ,privacy-preserving computing ,HL7 FHIR ,machine learning - Abstract
Due to the nature of health data, its sharing and reuse for research are limited by ethical, legal and technical barriers. The FAIR4Health project facilitated and promoted the application of FAIR principles in health research data, derived from the publicly funded health research initiatives to make them Findable, Accessible, Interoperable, and Reusable (FAIR). To confirm the feasibility of the FAIR4Health solution, we performed two pathfinder case studies to carry out federated machine learning algorithms on FAIRified datasets from five health research organizations. The case studies demonstrated the potential impact of the developed FAIR4Health solution on health outcomes and social care research. Finally, we promoted the FAIRified data to share and reuse in the European Union Health Research community, defining an effective EU-wide strategy for the use of FAIR principles in health research and preparing the ground for a roadmap for health research institutions. This scientific report presents a general overview of the FAIR4Health solution: from the FAIRification workflow design to translate raw data/metadata to FAIR data/metadata in the health research domain to the FAIR4Health demonstrators' performance., This research was financially supported by the European Union’s Horizon 2020 research and innovation programme under the grant agreement No 824666 (project FAIR4Health). Also, this research has been co-supported by the Carlos III National Institute of Health, through the IMPaCT Data project (code IMP/00019), and through the Platform for Dynamization and Innovation of the Spanish National Health System industrial capacities and their effective transfer to the productive sector (code PT20/00088), both co-funded by European Regional Development Fund (FEDER) ‘A way of making Europe’.
- Published
- 2022
6. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and Their Association with Mortality through a Frequent Pattern Growth Association Algorithm
- Author
-
Carmona-Pírez, Joná, Poblador-Plou, Beatriz, Poncel-Falcó, Antonio, Rochat, Jessica, Alvarez-Romero, Celia, Martínez-García, Alicia, Angioletti, Carmen, Almada, Marta, Gencturk, Mert, Sinaci, A Anil, Ternero-Vega, Jara Eloisa, Gaudet-Blavignac, Christophe, Lovis, Christian, Liperoti, Rosa, Costa, Elisio, Parra-Calderón, Carlos Lui, Moreno-Juste, Aida, Gimeno-Miguel, Antonio, Prados-Torres, Alexandra, Liperoti, Rosa (ORCID:0000-0003-3740-1687), Carmona-Pírez, Joná, Poblador-Plou, Beatriz, Poncel-Falcó, Antonio, Rochat, Jessica, Alvarez-Romero, Celia, Martínez-García, Alicia, Angioletti, Carmen, Almada, Marta, Gencturk, Mert, Sinaci, A Anil, Ternero-Vega, Jara Eloisa, Gaudet-Blavignac, Christophe, Lovis, Christian, Liperoti, Rosa, Costa, Elisio, Parra-Calderón, Carlos Lui, Moreno-Juste, Aida, Gimeno-Miguel, Antonio, Prados-Torres, Alexandra, and Liperoti, Rosa (ORCID:0000-0003-3740-1687)
- Abstract
The current availability of electronic health records represents an excellent research opportunity on multimorbidity, one of the most relevant public health problems nowadays. However, it also poses a methodological challenge due to the current lack of tools to access, harmonize and reuse research datasets. In FAIR4Health, a European Horizon 2020 project, a workflow to implement the FAIR (findability, accessibility, interoperability and reusability) principles on health datasets was developed, as well as two tools aimed at facilitating the transformation of raw datasets into FAIR ones and the preservation of data privacy. As part of this project, we conducted a multicentric retrospective observational study to apply the aforementioned FAIR implementation workflow and tools to five European health datasets for research on multimorbidity. We applied a federated frequent pattern growth association algorithm to identify the most frequent combinations of chronic diseases and their association with mortality risk. We identified several multimorbidity patterns clinically plausible and consistent with the bibliography, some of which were strongly associated with mortality. Our results show the usefulness of the solution developed in FAIR4Health to overcome the difficulties in data management and highlight the importance of implementing a FAIR data policy to accelerate responsible health research.
- Published
- 2022
7. FAIR4Health: Findable, Accessible, Interoperable and Reusable data to foster Health Research
- Author
-
European Commission, Instituto de Salud Carlos III, Álvarez-Romero, Celia [0000-0001-8647-9515], Sinaci, A. Anil [0000-0003-4397-3382], Gencturk, Mert [0000-0003-2697-5722], Méndez-Rodríguez, Eva [0000-0002-5337-4722], Hernández-Pérez, Tony [0000-0001-8404-9247], Angioletti, Carmen [0000-0002-0341-1679], Löbe, Matthias [0000-0002-2344-0426], Ganapathy, Nagarajan [0000-0002-3743-5388], Almada, Marta [0000-0001-6575-1698], Costa, Elisio [0000-0003-1158-1480], Chronaki, Catherine [0000-0001-6638-8448], Cornet, Ronald0000-0002-1704-5980, Poblador-Plou, Beatriz0000-0002-5119-5093, Carmona-Pírez, Jonás0000-0002-6268-8803, Gaudet-Blavignac, Christophe [0000-0001-6527-5898], Lovis, Christian [0000-0002-2681-8076], Ashley, Kevin [0000-0001-7546-5978], Horton, Laurence [0000-0003-2742-6434], Parra-Calderón, Carlos Luis [0000-0003-2609-575X], Álvarez-Romero, Celia, Martínez-García, Alicia, Sinaci, A. Anil, Gencturk, Mert, Méndez-Rodríguez, Eva, Hernández-Pérez, Tony, Liperoti, Rosa, Angioletti, Carmen, Löbe, Matthias, Ganapathy, Nagarajan, Deserno, Thomas, Almada, Marta, Costa, Elisio, Chronaki, Catherine, Cangioli, Giorgio, Cornet, Ronald, Poblador-Plou, Beatriz, Carmona-Pírez, Jonás, Gimeno-Miguel, Antonio, Poncel-Falcó, Antonio, Prados-Torres, Alexandra, Kovacevic, Tomi, Zaric, Bojan, Bokan, Darijo, Hromis, Sanja, Djekic Malbasa, Jelena, Rapallo Fernández, Carlos, Velázquez Fernández, Teresa, Rochat, Jessica, Gaudet-Blavignac, Christophe, Lovis, Christian, Weber, Patrick, Quintero, Miriam, Pérez-Pérez, Manuel M., Ashley, Kevin, Horton, Laurence, Parra-Calderón, Carlos Luis, European Commission, Instituto de Salud Carlos III, Álvarez-Romero, Celia [0000-0001-8647-9515], Sinaci, A. Anil [0000-0003-4397-3382], Gencturk, Mert [0000-0003-2697-5722], Méndez-Rodríguez, Eva [0000-0002-5337-4722], Hernández-Pérez, Tony [0000-0001-8404-9247], Angioletti, Carmen [0000-0002-0341-1679], Löbe, Matthias [0000-0002-2344-0426], Ganapathy, Nagarajan [0000-0002-3743-5388], Almada, Marta [0000-0001-6575-1698], Costa, Elisio [0000-0003-1158-1480], Chronaki, Catherine [0000-0001-6638-8448], Cornet, Ronald0000-0002-1704-5980, Poblador-Plou, Beatriz0000-0002-5119-5093, Carmona-Pírez, Jonás0000-0002-6268-8803, Gaudet-Blavignac, Christophe [0000-0001-6527-5898], Lovis, Christian [0000-0002-2681-8076], Ashley, Kevin [0000-0001-7546-5978], Horton, Laurence [0000-0003-2742-6434], Parra-Calderón, Carlos Luis [0000-0003-2609-575X], Álvarez-Romero, Celia, Martínez-García, Alicia, Sinaci, A. Anil, Gencturk, Mert, Méndez-Rodríguez, Eva, Hernández-Pérez, Tony, Liperoti, Rosa, Angioletti, Carmen, Löbe, Matthias, Ganapathy, Nagarajan, Deserno, Thomas, Almada, Marta, Costa, Elisio, Chronaki, Catherine, Cangioli, Giorgio, Cornet, Ronald, Poblador-Plou, Beatriz, Carmona-Pírez, Jonás, Gimeno-Miguel, Antonio, Poncel-Falcó, Antonio, Prados-Torres, Alexandra, Kovacevic, Tomi, Zaric, Bojan, Bokan, Darijo, Hromis, Sanja, Djekic Malbasa, Jelena, Rapallo Fernández, Carlos, Velázquez Fernández, Teresa, Rochat, Jessica, Gaudet-Blavignac, Christophe, Lovis, Christian, Weber, Patrick, Quintero, Miriam, Pérez-Pérez, Manuel M., Ashley, Kevin, Horton, Laurence, and Parra-Calderón, Carlos Luis
- Abstract
Due to the nature of health data, its sharing and reuse for research are limited by ethical, legal and technical barriers. The FAIR4Health project facilitated and promoted the application of FAIR principles in health research data, derived from the publicly funded health research initiatives to make them Findable, Accessible, Interoperable, and Reusable (FAIR). To confirm the feasibility of the FAIR4Health solution, we performed two pathfinder case studies to carry out federated machine learning algorithms on FAIRified datasets from five health research organizations. The case studies demonstrated the potential impact of the developed FAIR4Health solution on health outcomes and social care research. Finally, we promoted the FAIRified data to share and reuse in the European Union Health Research community, defining an effective EU-wide strategy for the use of FAIR principles in health research and preparing the ground for a roadmap for health research institutions. This scientific report presents a general overview of the FAIR4Health solution: from the FAIRification workflow design to translate raw data/metadata to FAIR data/metadata in the health research domain to the FAIR4Health demonstrators' performance.
- Published
- 2022
8. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and Their Association with Mortality through a Frequent Pattern Growth Association Algorithm
- Author
-
European Commission, Instituto de Salud Carlos III, Red de Investigación en Servicios de Salud en Enfermedades Crónicas (España), Red de Investigación en Comunicación Comunitaria, Alternativa y Participativa (España), Instituto de Investigación Sanitaria Aragón, Carmona-Pírez, Jonás, Poblador-Plou, Beatriz, Poncel-Falcó, Antonio, Rochat, Jessica, Álvarez-Romero, Celia, Martínez-García, Alicia, Angioletti, Carmen, Almada, Marta, Gencturk, Mert, Sinaci, A. Anil, Ternero Vega, Jara Eloísa, Gaudet-Blavignac, Christophe, Lovis, Christian, Liperoti, Rosa, Costa, Elisio, Parra-Calderón, Carlos Luis, Moreno-Juste, Aida, Gimeno-Miguel, Antonio, Prados-Torres, Alexandra, European Commission, Instituto de Salud Carlos III, Red de Investigación en Servicios de Salud en Enfermedades Crónicas (España), Red de Investigación en Comunicación Comunitaria, Alternativa y Participativa (España), Instituto de Investigación Sanitaria Aragón, Carmona-Pírez, Jonás, Poblador-Plou, Beatriz, Poncel-Falcó, Antonio, Rochat, Jessica, Álvarez-Romero, Celia, Martínez-García, Alicia, Angioletti, Carmen, Almada, Marta, Gencturk, Mert, Sinaci, A. Anil, Ternero Vega, Jara Eloísa, Gaudet-Blavignac, Christophe, Lovis, Christian, Liperoti, Rosa, Costa, Elisio, Parra-Calderón, Carlos Luis, Moreno-Juste, Aida, Gimeno-Miguel, Antonio, and Prados-Torres, Alexandra
- Abstract
The current availability of electronic health records represents an excellent research opportunity on multimorbidity, one of the most relevant public health problems nowadays. However, it also poses a methodological challenge due to the current lack of tools to access, harmonize and reuse research datasets. In FAIR4Health, a European Horizon 2020 project, a workflow to implement the FAIR (findability, accessibility, interoperability and reusability) principles on health datasets was developed, as well as two tools aimed at facilitating the transformation of raw datasets into FAIR ones and the preservation of data privacy. As part of this project, we conducted a multicentric retrospective observational study to apply the aforementioned FAIR implementation workflow and tools to five European health datasets for research on multimorbidity. We applied a federated frequent pattern growth association algorithm to identify the most frequent combinations of chronic diseases and their association with mortality risk. We identified several multimorbidity patterns clinically plausible and consistent with the bibliography, some of which were strongly associated with mortality. Our results show the usefulness of the solution developed in FAIR4Health to overcome the difficulties in data management and highlight the importance of implementing a FAIR data policy to accelerate responsible health research.
- Published
- 2022
9. FAIR4Health: Findable, Accessible, Interoperable and Reusable data to foster Health Research
- Author
-
Alvarez-Romero, Celia, primary, Martínez-García, Alicia, additional, Sinaci, A. Anil, additional, Gencturk, Mert, additional, Méndez, Eva, additional, Hernández-Pérez, Tony, additional, Liperoti, Rosa, additional, Angioletti, Carmen, additional, Löbe, Matthias, additional, Ganapathy, Nagarajan, additional, Deserno, Thomas M., additional, Almada, Marta, additional, Costa, Elisio, additional, Chronaki, Catherine, additional, Cangioli, Giorgio, additional, Cornet, Ronald, additional, Poblador-Plou, Beatriz, additional, Carmona-Pírez, Jonás, additional, Gimeno-Miguel, Antonio, additional, Poncel-Falcó, Antonio, additional, Prados-Torres, Alexandra, additional, Kovacevic, Tomi, additional, Zaric, Bojan, additional, Bokan, Darijo, additional, Hromis, Sanja, additional, Djekic Malbasa, Jelena, additional, Rapallo Fernández, Carlos, additional, Velázquez Fernández, Teresa, additional, Rochat, Jessica, additional, Gaudet-Blavignac, Christophe, additional, Lovis, Christian, additional, Weber, Patrick, additional, Quintero, Miriam, additional, Perez-Perez, Manuel M., additional, Ashley, Kevin, additional, Horton, Laurence, additional, and Parra Calderón, Carlos Luis, additional
- Published
- 2022
- Full Text
- View/download PDF
10. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and Their Association with Mortality through a Frequent Pattern Growth Association Algorithm
- Author
-
Jonás Carmona-Pírez, Beatriz Poblador-Plou, Antonio Poncel-Falcó, Jessica Rochat, Celia Alvarez-Romero, Alicia Martínez-García, Carmen Angioletti, Marta Almada, Mert Gencturk, A. Anil Sinaci, Jara Eloisa Ternero-Vega, Christophe Gaudet-Blavignac, Christian Lovis, Rosa Liperoti, Elisio Costa, Carlos Luis Parra-Calderón, Aida Moreno-Juste, Antonio Gimeno-Miguel, Alexandra Prados-Torres, European Commission, Instituto de Salud Carlos III, Red de Investigación en Servicios de Salud en Enfermedades Crónicas (España), Red de Investigación en Comunicación Comunitaria, Alternativa y Participativa (España), and Instituto de Investigación Sanitaria Aragón
- Subjects
Pathfinder case study ,FAIR principles ,multimorbidity ,mortality ,research data management ,pathfinder case study ,privacy-preserving distributed data mining ,Health, Toxicology and Mutagenesis ,Settore MED/09 - MEDICINA INTERNA ,Public Health, Environmental and Occupational Health ,Multimorbidity ,Research data management ,Privacy-preserving distributed data mining ,general_medical_research ,Privacy ,Electronic Health Records ,Mortality ,Algorithms ,Data Management - Abstract
This article belongs to the Special Issue Addressing the Growing Burden of Chronic Diseases and Multimorbidity: Characterization and Interventions, The current availability of electronic health records represents an excellent research opportunity on multimorbidity, one of the most relevant public health problems nowadays. However, it also poses a methodological challenge due to the current lack of tools to access, harmonize and reuse research datasets. In FAIR4Health, a European Horizon 2020 project, a workflow to implement the FAIR (findability, accessibility, interoperability and reusability) principles on health datasets was developed, as well as two tools aimed at facilitating the transformation of raw datasets into FAIR ones and the preservation of data privacy. As part of this project, we conducted a multicentric retrospective observational study to apply the aforementioned FAIR implementation workflow and tools to five European health datasets for research on multimorbidity. We applied a federated frequent pattern growth association algorithm to identify the most frequent combinations of chronic diseases and their association with mortality risk. We identified several multimorbidity patterns clinically plausible and consistent with the bibliography, some of which were strongly associated with mortality. Our results show the usefulness of the solution developed in FAIR4Health to overcome the difficulties in data management and highlight the importance of implementing a FAIR data policy to accelerate responsible health research., This study was performed in the framework of FAIR4Health, a project that has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement number 824666. Also, this research has been co-supported by the Carlos III National Institute of Health, through the IMPaCT Data project (code IMP/00019), and through the Platform for Dynamization and Innovation of the Spanish National Health System industrial capacities and their effective transfer to the productive sector (code PT20/00088), both co-funded by European Regional Development Fund (FEDER) ‘A way of making Europe’, and by REDISSEC (RD16/0001/0005) and RICAPPS (RD21/0016/0019) from Carlos III National Institute of Health. This work was also supported by Instituto de Investigación Sanitaria Aragón and Carlos III National Institute of Health [Río Hortega Program, grant number CM19/00164].
- Published
- 2022
11. Identifying multimorbidity profiles associated with COVID-19 severity in chronic patients using network analysis in the PRECOVID Study; 35181720
- Author
-
Carmona-Pírez, J., Gimeno-Miguel, A., Bliek-Bueno, K., Poblador-Plou, B., Díez-Manglano, J., Ioakeim-Skoufa, I., González-Rubio, F., Poncel-Falcó, A., Prados-Torres, A., Gimeno-Feliu, L., Moreno-Juste, A., Cano-del-Pozo, M., Bandrés-Liso, A. C., Pico-Soler, V., Aza-Pascual-Salcedo, M., Ara-Bardají, P., and on behalf of the, PRECOVID Group
- Abstract
A major risk factor of COVID-19 severity is the patient''s health status at the time of the infection. Numerous studies focused on specific chronic diseases and identified conditions, mainly cardiovascular ones, associated with poor prognosis. However, chronic diseases tend to cluster into patterns, each with its particular repercussions on the clinical outcome of infected patients. Network analysis in our population revealed that not all cardiovascular patterns have the same risk of COVID-19 hospitalization or mortality and that this risk depends on the pattern of multimorbidity, besides age and sex. We evidenced that negative outcomes were strongly related to patterns in which diabetes and obesity stood out in older women and men, respectively. In younger adults, anxiety was another disease that increased the risk of severity, most notably when combined with menstrual disorders in women or atopic dermatitis in men. These results have relevant implications for organizational, preventive, and clinical actions to help meet the needs of COVID-19 patients. © 2022, The Author(s).
- Published
- 2022
12. Identifying multimorbidity profiles associated with COVID-19 severity in chronic patients using network analysis in the PRECOVID Study
- Author
-
Jonás, Carmona-Pírez, Antonio, Gimeno-Miguel, Kevin, Bliek-Bueno, Beatriz, Poblador-Plou, Jesús, Díez-Manglano, Ignatios, Ioakeim-Skoufa, Francisca, González-Rubio, Antonio, Poncel-Falcó, Alexandra, Prados-Torres, Luis A, Gimeno-Feliu, and Paula, Ara-Bardají
- Subjects
Adult ,Aged, 80 and over ,Male ,Multidisciplinary ,Adolescent ,COVID-19 ,Multimorbidity ,Middle Aged ,Young Adult ,Spain ,Humans ,Female ,Aged ,Retrospective Studies - Abstract
A major risk factor of COVID-19 severity is the patient's health status at the time of the infection. Numerous studies focused on specific chronic diseases and identified conditions, mainly cardiovascular ones, associated with poor prognosis. However, chronic diseases tend to cluster into patterns, each with its particular repercussions on the clinical outcome of infected patients. Network analysis in our population revealed that not all cardiovascular patterns have the same risk of COVID-19 hospitalization or mortality and that this risk depends on the pattern of multimorbidity, besides age and sex. We evidenced that negative outcomes were strongly related to patterns in which diabetes and obesity stood out in older women and men, respectively. In younger adults, anxiety was another disease that increased the risk of severity, most notably when combined with menstrual disorders in women or atopic dermatitis in men. These results have relevant implications for organizational, preventive, and clinical actions to help meet the needs of COVID-19 patients.
- Published
- 2022
13. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and Their Association with Mortality through a Frequent Pattern Growth Association Algorithm
- Author
-
Carmona-Pírez, Jonás, primary, Poblador-Plou, Beatriz, additional, Poncel-Falcó, Antonio, additional, Rochat, Jessica, additional, Alvarez-Romero, Celia, additional, Martínez-García, Alicia, additional, Angioletti, Carmen, additional, Almada, Marta, additional, Gencturk, Mert, additional, Sinaci, A. Anil, additional, Ternero-Vega, Jara Eloisa, additional, Gaudet-Blavignac, Christophe, additional, Lovis, Christian, additional, Liperoti, Rosa, additional, Costa, Elisio, additional, Parra-Calderón, Carlos Luis, additional, Moreno-Juste, Aida, additional, Gimeno-Miguel, Antonio, additional, and Prados-Torres, Alexandra, additional
- Published
- 2022
- Full Text
- View/download PDF
14. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and their Association with Mortality through a Frequent Pattern Growth Association Algorithm: Validation Study. (Preprint)
- Author
-
Jonás Carmona-Pírez, Beatriz Poblador-Plou, Antonio Poncel-Falcó, Jessica Rochat, Celia Alvarez-Romero, Alicia Martínez-García, Carmen Angioletti, Marta Almada, Mert Gencturk, Anil Sinaci, Jara Eloisa Ternero-Vega, Christophe Gaudet-Blavignac, Christian Lovis, Rosa Liperoti, Elisio Costa, Carlos Luis Parra-Calderón, Antonio Gimeno-Miguel, and Alexandra Prados-Torres
- Abstract
BACKGROUND Chronic diseases are responsible for most health problems in older people. We know that chronic conditions tend to cluster in the form of patterns, also known as multimorbidity patterns. However, health systems and professionals are generally organized and trained to respond to specific diseases independently, negatively impacting patients and health systems. Different initiatives are trying to respond to these problems. In this context, the current availability of electronic health records and other types of health research data represents an excellent research opportunity. However, there are also some relevant limitations and challenges related to a current lack of tools that allow us to access, harmonize, integrate and reuse datasets technically, legally, ethically, and respectfully to patients and society. In this sense, the FAIR (Findability, Accessibility, Interoperability, and Reusability) principles can help us to guide scientific data management and stewardship and drive scientific discovery to a new paradigm. FAIR4Health is a European Commission supported project that applies FAIR principles on publicly-funded research datasets. OBJECTIVE To present the FAIR4Health pathfinder case study designed to validate and evaluate the FAIR4Health solution with the aim of identifying multimorbidity patterns and their association with mortality in older adults from different health organizations databases of four European countries. METHODS To apply the FAIR principles in five European cohorts from different healthcare settings (i.e., primary care, hospitals, and nursing homes) and institutions (i.e., University of Geneva from Switzerland, Università Cattolica del Sacro Cuore from Italy, University of Porto from Portugal, Instituto Aragonés de Ciencias de la Salud from Spain, and Andalusian Health Service also from Spain), a multicentric retrospective observational study (N = 11,034) was performed. In FAIR4Health, a workflow was designed to implement the FAIR principles on health datasets, and two tools were developed, a Data Curation Tool to transform the raw datasets into FAIR datasets and a Data Privacy Tool to preserve data privacy. On top of these, the FAIR4Health Platform was implemented to provide an interface for researchers, and enable the usage of federated machine learning algorithms on FAIR datasets. In this study, we applied a federated frequent pattern growth association algorithm to identify the most frequent disease patterns among a set of variables. RESULTS We applied the FAIR principles in the health research datasets from different organizations, and we were able to reuse and integrate heterogeneous datasets, increasing the variability of data compared to the studies not applying those principles. We identified and described high-frequent multimorbidity patterns consistent with the literature and observed a strong association with polypharmacy and mortality. CONCLUSIONS Our results highlight the importance of implementing the FAIR data policy to overcome the difficulties in data management and accelerate responsible health research with patients and society.
- Published
- 2021
15. Applying the FAIR4Health Solution to Identify Multimorbidity Patterns and their Association with Mortality through a Frequent Pattern Growth Association Algorithm: Validation Study. (Preprint)
- Author
-
Carmona-Pírez, Jonás, primary, Poblador-Plou, Beatriz, additional, Poncel-Falcó, Antonio, additional, Rochat, Jessica, additional, Alvarez-Romero, Celia, additional, Martínez-García, Alicia, additional, Angioletti, Carmen, additional, Almada, Marta, additional, Gencturk, Mert, additional, Sinaci, Anil, additional, Ternero-Vega, Jara Eloisa, additional, Gaudet-Blavignac, Christophe, additional, Lovis, Christian, additional, Liperoti, Rosa, additional, Costa, Elisio, additional, Parra-Calderón, Carlos Luis, additional, Gimeno-Miguel, Antonio, additional, and Prados-Torres, Alexandra, additional
- Published
- 2021
- Full Text
- View/download PDF
16. Chronic diseases associated with increased likelihood of hospitalization and mortality in 68,913 COVID-19 confirmed cases in Spain: A population-based cohort study
- Author
-
Gimeno-Miguel, A., Bliek-Bueno, K., Poblador-Plou, B., Carmona-Pírez, J., Poncel-Falcó, A., González-Rubio, F., Ioakeim-Skoufa, I., Pico-Soler, V., Aza-Pascual-Salcedo, M., Prados-Torres, A., Gimeno-Feliu, L.A., Moreno-Juste, A., Cano-Del-Pozo, M., Bandrés-Liso, A.C., Díez-Manglano, J., Ara-Bardají, P., and the PRECOVID Group
- Subjects
Male ,Viral Diseases ,Pulmonology ,Epidemiology ,Electronic Medical Records ,Urinary incontinence ,Comorbidity ,Cardiovascular Medicine ,Logistic regression ,Cohort Studies ,Pulmonary Disease, Chronic Obstructive ,Medical Conditions ,Endocrinology ,Risk Factors ,Medicine and Health Sciences ,Multidisciplinary ,Cancer Risk Factors ,Middle Aged ,Hospitals ,Hospitalization ,Infectious Diseases ,Oncology ,Cardiovascular Diseases ,Cohort ,Medicine ,Female ,medicine.symptom ,Information Technology ,Research Article ,Adult ,Computer and Information Sciences ,medicine.medical_specialty ,Endocrine Disorders ,Chronic Obstructive Pulmonary Disease ,Science ,Cardiology ,Respiratory Disorders ,Internal medicine ,Diabetes mellitus ,Diabetes Mellitus ,medicine ,Humans ,Aged ,business.industry ,SARS-CoV-2 ,COVID-19 ,Covid 19 ,Health Information Technology ,Odds ratio ,Cardiovascular Disease Risk ,medicine.disease ,Obesity ,Health Care ,Obstructive sleep apnea ,Logistic Models ,Health Care Facilities ,Spain ,Medical Risk Factors ,Metabolic Disorders ,Heart failure ,Respiratory Infections ,Chronic Disease ,business - Abstract
Background Clinical outcomes among COVID-19 patients vary greatly with age and underlying comorbidities. We aimed to determine the demographic and clinical factors, particularly baseline chronic conditions, associated with an increased risk of severity in COVID-19 patients from a population-based perspective and using data from electronic health records (EHR). Methods Retrospective, observational study in an open cohort analyzing all 68,913 individuals (mean age 44.4 years, 53.2% women) with SARS-CoV-2 infection between 15 June and 19 December 2020 using exhaustive electronic health registries. Patients were followed for 30 days from inclusion or until the date of death within that period. We performed multivariate logistic regression to analyze the association between each chronic disease and severe infection, based on hospitalization and all-cause mortality. Results 5885 (8.5%) individuals showed severe infection and old age was the most influencing factor. Congestive heart failure (odds ratio -OR- men: 1.28, OR women: 1.39), diabetes (1.37, 1.24), chronic renal failure (1.31, 1.22) and obesity (1.21, 1.26) increased the likelihood of severe infection in both sexes. Chronic skin ulcers (1.32), acute cerebrovascular disease (1.34), chronic obstructive pulmonary disease (1.21), urinary incontinence (1.17) and neoplasms (1.26) in men, and infertility (1.87), obstructive sleep apnea (1.43), hepatic steatosis (1.43), rheumatoid arthritis (1.39) and menstrual disorders (1.18) in women were also associated with more severe outcomes. Conclusions Age and specific cardiovascular and metabolic diseases increased the risk of severe SARS-CoV-2 infections in men and women, whereas the effects of certain comorbidities are sex specific. Future studies in different settings are encouraged to analyze which profiles of chronic patients are at higher risk of poor prognosis and should therefore be the targets of prevention and shielding strategies.
- Published
- 2021
17. Polypharmacy patterns: unravelling systematic associations between prescribed medications.
- Author
-
Amaia Calderón-Larrañaga, Luis A Gimeno-Feliu, Francisca González-Rubio, Beatriz Poblador-Plou, María Lairla-San José, José M Abad-Díez, Antonio Poncel-Falcó, and Alexandra Prados-Torres
- Subjects
Medicine ,Science - Abstract
ObjectivesThe aim of this study was to demonstrate the existence of systematic associations in drug prescription that lead to the establishment of patterns of polypharmacy, and the clinical interpretation of the associations found in each pattern.MethodsA cross-sectional study was conducted based on information obtained from electronic medical records and the primary care pharmacy database in 2008. An exploratory factor analysis of drug dispensing information regarding 79,089 adult patients was performed to identify the patterns of polypharmacy. The analysis was stratified by age and sex.ResultsSeven patterns of polypharmacy were identified, which may be classified depending on the type of disease they are intended to treat: cardiovascular, depression-anxiety, acute respiratory infection (ARI), chronic obstructive pulmonary disease (COPD), rhinitis-asthma, pain, and menopause. Some of these patterns revealed a clear clinical consistency and included drugs that are prescribed together for the same clinical indication (i.e., ARI and COPD patterns). Other patterns were more complex but also clinically consistent: in the cardiovascular pattern, drugs for the treatment of known risk factors-such as hypertension or dyslipidemia-were combined with other medications for the treatment of diabetes or established cardiovascular pathology (e.g., antiplatelet agents). Almost all of the patterns included drugs for preventing or treating potential side effects of other drugs in the same pattern.ConclusionsThe present study demonstrated the existence of non-random associations in drug prescription, resulting in patterns of polypharmacy that are sound from the pharmacological and clinical viewpoints and that exist in a significant proportion of the population. This finding necessitates future longitudinal studies to confirm some of the proposed causal associations. The information discovered would further the development and/or adaptation of clinical patient guidelines to patients with multimorbidity who are taking multiple drugs.
- Published
- 2013
- Full Text
- View/download PDF
18. Correction: Multimorbidity Patterns in Primary Care: Interactions among Chronic Diseases Using Factor Analysis.
- Author
-
Alexandra Prados-Torres, Beatriz Poblador-Plou, Amaia Calderón-Larrañaga, Luis Andrés Gimeno-Feliu, Francisca González-Rubio, Antonio Poncel-Falcó, Antoni Sicras-Mainar, and José Tomás Alcalá-Nalvaiz
- Subjects
Medicine ,Science - Published
- 2013
- Full Text
- View/download PDF
19. Baseline chronic comorbidity and mortality in laboratory-confirmed COVID-19 cases: Results from the PRECOVID study in Spain
- Author
-
Poblador-Plou, B., Carmona-Pírez, J., Ioakeim-Skoufa, I., Poncel-Falcó, A., Bliek-Bueno, K., Cano-Del Pozo, M., Gimeno-Feliú, L.A., González-Rubio, F., Aza-Pascual-salcedo, M., Bandrés-Liso, A.C., Díez-Manglano, J., Marta-Moreno, J., Mucherino, S., Gimeno-Miguel, A., Prados-Torres, A., Clerencia-Sierra, M., Coscollar-Santaliestra, C., de Alba, I.G.F., Moreno-Juste, A., Pico-Soler, V., Ara-Bardají, P., and EpiChron, Group
- Abstract
We aimed to analyze baseline socio-demographic and clinical factors associated with an increased likelihood of mortality in men and women with coronavirus disease (COVID-19). We conducted a retrospective cohort study (PRECOVID Study) on all 4412 individuals with laboratory-confirmed COVID-19 in Aragon, Spain, and followed them for at least 30 days from cohort entry. We described the socio-demographic and clinical characteristics of all patients of the cohort. Age-adjusted logistic regressions models were performed to analyze the likelihood of mortality based on demographic and clinical variables. All analyses were stratified by sex. Old age, specific diseases such as diabetes, acute myocardial infarction, or congestive heart failure, and dispensation of drugs like vasodilators, antipsychotics, and potassium-sparing agents were associated with an increased likelihood of mortality. Our findings suggest that specific comorbidities, mainly of cardiovascular nature, and medications at the time of infection could explain around one quarter of the mortality in COVID-19 disease, and that women and men probably share similar but not identical risk factors. Nonetheless, the great part of mortality seems to be explained by other patient-and/or health-system-related factors. More research is needed in this field to provide the necessary evidence for the development of early identification strategies for patients at higher risk of adverse outcomes.
- Published
- 2020
20. Baseline Chronic Comorbidity and Mortality in Laboratory-Confirmed COVID-19 Cases: Results from the PRECOVID Study in Spain
- Author
-
Jonás Carmona-Pírez, Mercedes Aza-Pascual-Salcedo, Jesús Díez-Manglano, Ignatios Ioakeim-Skoufa, Kevin Bliek-Bueno, Antonio Poncel-Falcó, Antonio Gimeno-Miguel, Beatriz Poblador-Plou, Sara Mucherino, Alexandra Prados-Torres, Mabel Cano-Del Pozo, Javier Marta-Moreno, Luis Andrés Gimeno-Feliu, Ana Cristina Bandrés-Liso, and Francisca González-Rubio
- Subjects
Male ,medicine.medical_specialty ,multimorbidity ,Health, Toxicology and Mutagenesis ,Pneumonia, Viral ,lcsh:Medicine ,Disease ,030204 cardiovascular system & hematology ,Logistic regression ,Risk Assessment ,Article ,drugs ,Cohort Studies ,chronic diseases ,Betacoronavirus ,03 medical and health sciences ,0302 clinical medicine ,Risk Factors ,Internal medicine ,Diabetes mellitus ,medicine ,gender ,Humans ,030212 general & internal medicine ,Myocardial infarction ,Pandemics ,Aged ,Retrospective Studies ,SARS-CoV-2 ,business.industry ,lcsh:R ,Public Health, Environmental and Occupational Health ,COVID-19 ,Retrospective cohort study ,cohort ,Middle Aged ,medicine.disease ,Comorbidity ,mortality ,comorbidity ,Spain ,Heart failure ,Chronic Disease ,Cohort ,Female ,Coronavirus Infections ,Laboratories ,business - Abstract
We aimed to analyze baseline socio-demographic and clinical factors associated with an increased likelihood of mortality in men and women with coronavirus disease (COVID-19). We conducted a retrospective cohort study (PRECOVID Study) on all 4412 individuals with laboratory-confirmed COVID-19 in Aragon, Spain, and followed them for at least 30 days from cohort entry. We described the socio-demographic and clinical characteristics of all patients of the cohort. Age-adjusted logistic regressions models were performed to analyze the likelihood of mortality based on demographic and clinical variables. All analyses were stratified by sex. Old age, specific diseases such as diabetes, acute myocardial infarction, or congestive heart failure, and dispensation of drugs like vasodilators, antipsychotics, and potassium-sparing agents were associated with an increased likelihood of mortality. Our findings suggest that specific comorbidities, mainly of cardiovascular nature, and medications at the time of infection could explain around one quarter of the mortality in COVID-19 disease, and that women and men probably share similar but not identical risk factors. Nonetheless, the great part of mortality seems to be explained by other patient- and/or health-system-related factors. More research is needed in this field to provide the necessary evidence for the development of early identification strategies for patients at higher risk of adverse outcomes.
- Published
- 2020
- Full Text
- View/download PDF
21. Multimorbidity patterns in primary care: interactions among chronic diseases using factor analysis.
- Author
-
Alexandra Prados-Torres, Beatriz Poblador-Plou, Amaia Calderón-Larrañaga, Luis Andrés Gimeno-Feliu, Francisca González-Rubio, Antonio Poncel-Falcó, Antoni Sicras-Mainar, and José Tomás Alcalá-Nalvaiz
- Subjects
Medicine ,Science - Abstract
ObjectivesThe primary objective of this study was to identify the existence of chronic disease multimorbidity patterns in the primary care population, describing their clinical components and analysing how these patterns change and evolve over time both in women and men. The secondary objective of this study was to generate evidence regarding the pathophysiological processes underlying multimorbidity and to understand the interactions and synergies among the various diseases.MethodsThis observational, retrospective, multicentre study utilised information from the electronic medical records of 19 primary care centres from 2008. To identify multimorbidity patterns, an exploratory factor analysis was carried out based on the tetra-choric correlations between the diagnostic information of 275,682 patients who were over 14 years of age. The analysis was stratified by age group and sex.ResultsMultimorbidity was found in all age groups, and its prevalence ranged from 13% in the 15 to 44 year age group to 67% in those 65 years of age or older. Goodness-of-fit indicators revealed sample values between 0.50 and 0.71. We identified five patterns of multimorbidity: cardio-metabolic, psychiatric-substance abuse, mechanical-obesity-thyroidal, psychogeriatric and depressive. Some of these patterns were found to evolve with age, and there were differences between men and women.ConclusionsNon-random associations between chronic diseases result in clinically consistent multimorbidity patterns affecting a significant proportion of the population. Underlying pathophysiological phenomena were observed upon which action can be taken both from a clinical, individual-level perspective and from a public health or population-level perspective.
- Published
- 2012
- Full Text
- View/download PDF
22. Chronic diseases associated with increased likelihood of hospitalization and mortality in 68,913 COVID-19 confirmed cases in Spain: A population-based cohort study.
- Author
-
Gimeno-Miguel, Antonio, Bliek-Bueno, Kevin, Poblador-Plou, Beatriz, Carmona-Pírez, Jonás, Poncel-Falcó, Antonio, González-Rubio, Francisca, Ioakeim-Skoufa, Ignatios, Pico-Soler, Victoria, Aza-Pascual-Salcedo, Mercedes, Prados-Torres, Alexandra, and Gimeno-Feliu, Luis Andrés
- Subjects
COVID-19 pandemic ,COVID-19 ,COMORBIDITY ,SLEEP apnea syndromes ,CARDIOVASCULAR diseases risk factors ,CHRONIC kidney failure ,CHRONIC diseases ,MENSTRUATION - Abstract
Background: Clinical outcomes among COVID-19 patients vary greatly with age and underlying comorbidities. We aimed to determine the demographic and clinical factors, particularly baseline chronic conditions, associated with an increased risk of severity in COVID-19 patients from a population-based perspective and using data from electronic health records (EHR). Methods: Retrospective, observational study in an open cohort analyzing all 68,913 individuals (mean age 44.4 years, 53.2% women) with SARS-CoV-2 infection between 15 June and 19 December 2020 using exhaustive electronic health registries. Patients were followed for 30 days from inclusion or until the date of death within that period. We performed multivariate logistic regression to analyze the association between each chronic disease and severe infection, based on hospitalization and all-cause mortality. Results: 5885 (8.5%) individuals showed severe infection and old age was the most influencing factor. Congestive heart failure (odds ratio -OR- men: 1.28, OR women: 1.39), diabetes (1.37, 1.24), chronic renal failure (1.31, 1.22) and obesity (1.21, 1.26) increased the likelihood of severe infection in both sexes. Chronic skin ulcers (1.32), acute cerebrovascular disease (1.34), chronic obstructive pulmonary disease (1.21), urinary incontinence (1.17) and neoplasms (1.26) in men, and infertility (1.87), obstructive sleep apnea (1.43), hepatic steatosis (1.43), rheumatoid arthritis (1.39) and menstrual disorders (1.18) in women were also associated with more severe outcomes. Conclusions: Age and specific cardiovascular and metabolic diseases increased the risk of severe SARS-CoV-2 infections in men and women, whereas the effects of certain comorbidities are sex specific. Future studies in different settings are encouraged to analyze which profiles of chronic patients are at higher risk of poor prognosis and should therefore be the targets of prevention and shielding strategies. [ABSTRACT FROM AUTHOR]
- Published
- 2021
- Full Text
- View/download PDF
23. Cohort Profile: The epidemiology of chronic diseases and multimorbidity. The EpiChron cohort study
- Author
-
José María Abad-Díez, Antonio Poncel-Falcó, C. Coscollar-Santaliestra, Mercedes Aza-Pascual-Salcedo, Victoria Pico-Soler, Amaia Calderón-Larrañaga, Javier Marta-Moreno, Mercedes Clerencia-Sierra, Beatriz Poblador-Plou, Antonio Gimeno-Miguel, Alexandra Prados-Torres, Francisca González-Rubio, Luis Andrés Gimeno-Feliu, Clara Laguna-Berna, and A. C. Bandres-Liso
- Subjects
Adult ,Male ,medicine.medical_specialty ,Pediatrics ,Adolescent ,Epidemiology ,MEDLINE ,030204 cardiovascular system & hematology ,Cohort Studies ,Young Adult ,03 medical and health sciences ,Age Distribution ,0302 clinical medicine ,Prevalence ,Humans ,Medicine ,Multimorbidity ,030212 general & internal medicine ,Sex Distribution ,Young adult ,Child ,Cohort Profiles ,Aged ,Aged, 80 and over ,business.industry ,Infant, Newborn ,Infant ,General Medicine ,Middle Aged ,Spain ,Child, Preschool ,Chronic Disease ,Cohort ,Female ,Age distribution ,business ,Cohort study - Abstract
Why was the cohort set up? Greater life expectancy in Europe over the past few decades has been translated into an increasing burden of chronic diseases that accumulate as the population ages, whereas acute infectious diseases have been progressively pushed into the background. The incidence of conditions such as hypertension, obesity and asthma has increased dramatically worldwide, and cancer, diabetes and respiratory and cardiovascular diseases are responsible for almost 70% of global deaths. Concurrently, the prevalence of multimorbidity (as of people affected by more than one chronic disorder) is also increasing and appears as the most common chronic condition at present. Multimorbidity affects almost 3 in 4 individuals aged 65 years and older, although it represents a problem not only for the elderly but also for adult and even young populations, at whom prevention strategies should aim. People affected by multimorbidity often experience fragmentation of care, greater and inadequate use of health services and polypharmacy, which in turn may increase the risk of low adherence and adverse drug reactions. All of this leads to individuals’ quality of life deterioration and higher risk of mortality. Besides, handling patients with multimorbidity represents a daily challenge for physicians and health systems...
- Published
- 2018
24. Effectiveness of an intervention for improving drug prescription in primary care patients with multimorbidity and polypharmacy: study protocol of a cluster randomized clinical trial (Multi-PAP project)
- Author
-
Prados Torres, Alexandra, del Cura González, Isabel, Prados Torres, Daniel, López Rodríguez, Juan A., Leiva Fernández, Francisca, Calderón Larrañaga, Amaia, López Verde, Fernando, Gimeno Feliu, Luis A., Escortell Mayor, Esperanza, Pico Soler, Victoria, Sanz Cuesta, Teresa, Bujalance Zafra, M. Josefa, Morey Montalvo, Mariel, Boxó Cifuentes, José Ramón, Poblador Plou, Beatriz, Fernández Arquero, José Manuel, González Rubio, Francisca, Ramiro González, María D., Coscollar Santaliestra, Carlos, Martín Fernández, Jesús, Barnestein Fonseca, M. Pilar, Valderas Martínez, José María, Marengoni, Alessandra, Muth, Christiane, Aza Pascual Salcedo, Mercedes, Poncel Falcó, Antonio, Bandrés Liso, Ana Cristina, Alcaraz Borrajo, Marta, Ruiz San Basilio, José Ma, Mataix San Juan, Ángel, López León, Ana Ma, Mateos Sancho, Carmina, Gimeno Miguel, Antonio, Hernández Santiago, Virginia, García de Blas, Francisca, García Agua, Nuria, Rodríguez Barrientos, Ricardo, Vázquez Alarcón, Rubén, Laguna Berna, Clara, Márquez Chamizo, Maria Isabel, Marta Moreno, Javier, Azcoaga Lorenzo, Amaya, Abad Díez, José María, Sánchez Perruca, Luis, Polentinos Castro, Elena, Clerencia Sierra, Mercedes, Ariza Cardiel, Gloria, González González, Ana Isabel, Rico Blázquez, Milagros, Rogero Blanco, Marisa, Tello Bernabé, Ma Eugenia, álvarez Villalba, Mar, Rumayor Zarzuelo, Mercedes, del Pozo, Carmen Sánchez Celaya, Garrido, José Ignacio Torrente, Aranda, Concepción García, Lafuente, Marina Pinilla, Ma Teresa Delgado Marroquín, Null, Molina, Ma José Gracia, Bernal, Javier Cuartero, Martín, Ma Victoria Asín, Domínguez, Susana García, Gorbea, Carlos Bolea, Negre, Antonio Luis Oto, Royo, Eugenio Galve, Taira, Ma Begoña Abadía, Gutiérrez, José Fernando Tomás, Quintana, José Porta, Miguel, Valentina Martín, de las Heras, Esther Mateo, Algora, Carmen Esteban, de Letosa, Ma Teresa Martín Nasarre, Elena Gascón del Prim, Null, Delgado, Noelia Sorinas, Ma Rosario Sanjuan Cortés, Null, Sánchez, Teodoro Corrales, Lucas, Eustaquio Dendarieta, Mínguez Sorio, Ma del Pilar, Marzal, Adolfo Cajal, García, Eduardo Díaz, Álvarez, Juan Carlos García, De Blas González, Francisca García, Pérez, Cristina Guisado, Franco, Alberto López García, Beneitez, Ma Elisa Viñuela, Ana Ballarín González, Null, Zapata, Ma Isabel Ferrer, Suarez, Esther Gómez, Ortiz, Fernanda Morales, Laguno, Lourdes Carolina Peláez, Gómez, José Luis Quintana, Pascual, Enrique Revilla, López, Francisco Ramón Abellán, Álvaro, Carlos Casado, González, Paulino Cubero, Hamalainen, Santiago Manuel Machín, Fernández, Raquel Mateo, Blanco, Ma Eloisa Rogero, Arce, Cesar Sánchez, Wiesman, Elisa Ceresuela, Galindo, Jorge Olmedo, Marcos, Claudia López, Borda, Soledad Lorenzo, Fernández, Juan Carlos Moreno, Gómez, Belén Muñoz, De Mingo, Enrique Rodríguez, Pascual, Juan Pedro Calvo, Barroso, Margarita Gómez, Serrano, Beatriz López, Peláez, Ma Paloma Morso, González, Fernando Perales, Salvador, Julio Sánchez, Yépez, Jeannet Dolores Sánchez, Alonso, Ana Sosa, Villalba, Ma del Mar Álvarez, Tapia, Purificación Magán, Alcántara, Ma Angelica Fajardo, Alonso, Ma Canto De Hoyos, González, Rosario Iglesias, Antón, Ma Aránzazu Murciano, Pérez, Manuel Antonio Alonso, Lorenzo, Amaya Azcoaga, Medina, Ricardo De Felipe, Laguna, Amaya Nuria López, De Rivera, Eva Martínez Cid, Flores, Iliana Serrano, Rodríguez, Ma Jesús Sousa, Isabel, Ma Soledad Núñez, Sánchez, Jesús Ma Redondo, Llanos, Pedro Sánchez, Campillo, Lourdes Visedo, Izquierdo, Javier Martín, Sainz, Macarena Toro, Jiménez, Ma José Fernández, García, Esperanza Mora, Navarro Jiménez, José Manuel, Gómez, Deborah Gil, Mendoza, Leovigildo Ginel, Luz Pilar de la Mota Ybancos, Null, Genafo, Jaime Sasporte, Rodríguez, Ma José Alcaide, Garach, Elena Barceló, Arteaga, Beatriz Caffarena de, Parrilla, Ma Dolores Gallego, Catalina Sánchez Morales, Null, Chasco, Ma del Mar Loubet, Ríos, Irene Martínez, Delgado, Elena Mateo, Aurioles, Esther Martín, Ruiz, Sylvia Hazañas, Escalante, Nieves Muñoz, Salido, Enrique Leonés, Torres, Ma Antonia Máximo, Rodríguez, Ma Luisa Moya, Gálvez, Encarnación Peláez, Torres, José Manuel Ramírez, Fernández, Cristóbal Trillo, Cañavate, Ma Dolores García Martínez, Mellado, Ma del Mar Gil, Pradilla, Ma Victoria Muñoz, Peña, Ma José Clavijo, Fernández, José Leiva, Romero, Virginia Castillo, Maqueda, Rafael Ángel, Valdés, Gloria Aycart, Santaella, Miguel Domínguez, Vargas, Ana Ma Fernández, García, Irene García, Rodríguez, Antonia González, Mendaño, Ma Carmen Molina, Naranjo, Juana Morales, Torres, Catalina Moreno, Guerra, Francisco Serrano, University of St Andrews. School of Medicine, and Multi-PAP Group
- Subjects
Male ,law.invention ,Health administration ,Study Protocol ,0302 clinical medicine ,Medication appropriateness index ,Randomized controlled trial ,law ,Patient-Centered Care ,Health care ,Outcome Assessment, Health Care ,Medicine ,030212 general & internal medicine ,Medicine(all) ,Aged, 80 and over ,lcsh:R5-920 ,education.field_of_study ,Massive Online Open Course ,Medicine (all) ,Health Policy ,Health services research ,General Medicine ,T-DAS ,Female ,Public Health ,lcsh:Medicine (General) ,Medication Appropriateness Index ,medicine.medical_specialty ,RM ,Population ,Primary Care Health Centre ,Health Informatics ,Drug Prescriptions ,03 medical and health sciences ,Outcome Assessment (Health Care) ,Quality of life (healthcare) ,SDG 3 - Good Health and Well-being ,Family Physician ,Humans ,ddc:610 ,Medical prescription ,education ,Aged ,Polypharmacy ,Primary care health centre ,Primary Health Care ,business.industry ,Family physician ,Environmental and Occupational Health ,Public Health, Environmental and Occupational Health ,Multimorbidity ,Spanish National Health System ,RM Therapeutics. Pharmacology ,Massive online open course ,Spain ,Family medicine ,Chronic Disease ,business ,030217 neurology & neurosurgery - Abstract
This study was funded by the Fondo de Investigaciones Sanitarias ISCIII (Grant Numbers PI15/00276, PI15/00572, PI15/00996), REDISSEC (Project Numbers RD12/0001/0012, RD16/0001/0005), and the European Regional Development Fund ("A way to build Europe"). Background: Multimorbidity is associated with negative effects both on people's health and on healthcare systems. A key problem linked to multimorbidity is polypharmacy, which in turn is associated with increased risk of partly preventable adverse effects, including mortality. The Ariadne principles describe a model of care based on a thorough assessment of diseases, treatments (and potential interactions), clinical status, context and preferences of patients with multimorbidity, with the aim of prioritizing and sharing realistic treatment goals that guide an individualized management. The aim of this study is to evaluate the effectiveness of a complex intervention that implements the Ariadne principles in a population of young-old patients with multimorbidity and polypharmacy. The intervention seeks to improve the appropriateness of prescribing in primary care (PC), as measured by the medication appropriateness index (MAI) score at 6 and 12months, as compared with usual care. Methods/Design: Design:pragmatic cluster randomized clinical trial. Unit of randomization: family physician (FP). Unit of analysis: patient. Scope: PC health centres in three autonomous communities: Aragon, Madrid, and Andalusia (Spain). Population: patients aged 65-74years with multimorbidity (≥3 chronic diseases) and polypharmacy (≥5 drugs prescribed in ≥3months). Sample size: n=400 (200 per study arm). Intervention: complex intervention based on the implementation of the Ariadne principles with two components: (1) FP training and (2) FP-patient interview. Outcomes: MAI score, health services use, quality of life (Euroqol 5D-5L), pharmacotherapy and adherence to treatment (Morisky-Green, Haynes-Sackett), and clinical and socio-demographic variables. Statistical analysis: primary outcome is the difference in MAI score between T0 and T1 and corresponding 95% confidence interval. Adjustment for confounding factors will be performed by multilevel analysis. All analyses will be carried out in accordance with the intention-to-treat principle. Discussion: It is essential to provide evidence concerning interventions on PC patients with polypharmacy and multimorbidity, conducted in the context of routine clinical practice, and involving young-old patients with significant potential for preventing negative health outcomes. Trial registration: Clinicaltrials.gov, NCT02866799 Publisher PDF
- Published
- 2017
25. Cohort Profile: The Epidemiology of Chronic Diseases and Multimorbidity. The EpiChron Cohort Study
- Author
-
Prados-Torres, A, primary, Poblador-Plou, B, additional, Gimeno-Miguel, A, additional, Calderón-Larrañaga, A, additional, Poncel-Falcó, A, additional, Gimeno-Feliú, L A, additional, González-Rubio, F, additional, Laguna-Berna, C, additional, Marta-Moreno, J, additional, Clerencia-Sierra, M, additional, Aza-Pascual-Salcedo, M, additional, Bandrés-Liso, A C, additional, Coscollar-Santaliestra, C, additional, Pico-Soler, V, additional, and Abad-Díez, J M, additional
- Published
- 2018
- Full Text
- View/download PDF
26. Age and gender differences in the prevalence and patterns of multimorbidity in the older population
- Author
-
A Sicras-Mainar, Beatriz Poblador-Plou, Alexandra Prados-Torres, Amaia Calderón-Larrañaga, Antonio Poncel-Falcó, José María Abad-Díez, Mercedes Clerencia-Sierra, and José Manuel Calderón-Meza
- Subjects
Male ,Gerontology ,Aging ,Comorbidity ,Chronic disease ,Health care ,Prevalence ,Humans ,Medicine ,Primary health care ,Aged ,Retrospective Studies ,Aged, 80 and over ,Sex Characteristics ,business.industry ,Mental Disorders ,Medical record ,Age Factors ,Multimorbidity ,Retrospective cohort study ,medicine.disease ,Frail elderly ,Cardiovascular Diseases ,Spain ,Population Surveillance ,Life expectancy ,Female ,Observational study ,Geriatrics and Gerontology ,business ,Developed country ,Research Article ,Demography ,Sex characteristics - Abstract
Background The coexistence of several chronic diseases in one same individual, known as multimorbidity, is an important challenge facing health care systems in developed countries. Recent studies have revealed the existence of multimorbidity patterns clustering systematically associated distinct clinical entities. We sought to describe age and gender differences in the prevalence and patterns of multimorbidity in men and women over 65 years. Methods Observational retrospective multicentre study based on diagnostic information gathered from electronic medical records of 19 primary care centres in Aragon and Catalonia. Multimorbidity patterns were identified through exploratory factor analysis. We performed a descriptive analysis of previously obtained patterns (i.e. cardiometabolic (CM), mechanical (MEC) and psychogeriatric (PG)) and the diseases included in the patterns stratifying by sex and age group. Results 67.5% of the aged population suffered two or more chronic diseases. 32.2% of men and 45.3% of women were assigned to at least one specific pattern of multimorbidity, and 4.6% of men and 8% of women presented more than one pattern simultaneously. Among women over 65 years the most frequent pattern was the MEC pattern (33.3%), whereas among men it was the CM pattern (21.2%). While the prevalence of the CM and MEC patterns decreased with age, the PG pattern showed a higher prevalence in the older age groups. Conclusions Significant gender differences were observed in the prevalence of multimorbidity patterns, women showing a higher prevalence of the MEC and PG patterns, as well as a higher degree of pattern overlapping, probably due to a higher life expectancy and/or worse health. Future studies on multimorbidity patterns should take into account these differences and, therefore, the study of multimorbidity and its impact should be stratified by age and sex.
- Published
- 2014
27. Correction: Multimorbidity Patterns in Primary Care: Interactions among Chronic Diseases Using Factor Analysis
- Author
-
Francisca González-Rubio, Beatriz Poblador-Plou, Alexandra Prados-Torres, A Sicras-Mainar, Antonio Poncel-Falcó, Luis Andrés Gimeno-Feliu, Amaia Calderón-Larrañaga, and José Tomás Alcalá-Nalvaiz
- Subjects
medicine.medical_specialty ,Multidisciplinary ,business.industry ,Science ,lcsh:R ,Correction ,lcsh:Medicine ,ComputerApplications_COMPUTERSINOTHERSYSTEMS ,Primary care ,Family medicine ,Factor (programming language) ,medicine ,Medicine ,Multimorbidity ,Table (database) ,lcsh:Q ,lcsh:Science ,business ,computer ,computer.programming_language - Abstract
In Table 10, some of the prevalence numbers are incorrect. The correct version of Table 10 can be viewed here
- Published
- 2013
28. [Estimation of chronic co-morbidity on health costs in elderly patients with neurological disorders]
- Author
-
Antoni, Sicras-Mainar, Ruth, Navarro-Artieda, Amador, Ruíz-Torrejón, Alexandra, Prados-Torres, and Antonio, Poncel-Falcó
- Subjects
Male ,Chronic Disease ,Humans ,Female ,Health Care Costs ,Nervous System Diseases ,Aged - Published
- 2011
29. Morbidity and costs associated with neurological disorders
- Author
-
A, Sicras-Mainar, R, Navarro-Artieda, A, Ruíz-Torrejón, A, Prados-Torres, and Antonio, Poncel-Falcó
- Subjects
Male ,Logistic Models ,Costs and Cost Analysis ,Humans ,Female ,Comorbidity ,Nervous System Diseases ,Aged - Published
- 2011
30. Global health care use by patients with type-2 diabetes: Does the type of comorbidity matter?
- Author
-
Calderón-Larrañaga, A., primary, Abad-Díez, J.M., additional, Gimeno-Feliu, L.A., additional, Marta-Moreno, J., additional, González-Rubio, F., additional, Clerencia-Sierra, M., additional, Poblador-Plou, B., additional, Poncel-Falcó, A., additional, and Prados-Torres, A., additional
- Published
- 2015
- Full Text
- View/download PDF
31. Age and gender differences in the prevalence and patterns of multimorbidity in the older population
- Author
-
Abad-Díez, José María, primary, Calderón-Larrañaga, Amaia, additional, Poncel-Falcó, Antonio, additional, Poblador-Plou, Beatriz, additional, Calderón-Meza, José Manuel, additional, Sicras-Mainar, Antoni, additional, Clerencia-Sierra, Mercedes, additional, and Prados-Torres, Alexandra, additional
- Published
- 2014
- Full Text
- View/download PDF
32. Polypharmacy Patterns: Unravelling Systematic Associations between Prescribed Medications
- Author
-
Calderón-Larrañaga, Amaia, primary, Gimeno-Feliu, Luis A., additional, González-Rubio, Francisca, additional, Poblador-Plou, Beatriz, additional, Lairla-San José, María, additional, Abad-Díez, José M., additional, Poncel-Falcó, Antonio, additional, and Prados-Torres, Alexandra, additional
- Published
- 2013
- Full Text
- View/download PDF
33. Polypharmacy Patterns: Unravelling Systematic Associations between Prescribed Medications
- Author
-
José María Abad-Díez, Beatriz Poblador-Plou, Amaia Calderón-Larrañaga, Francisca González-Rubio, Alexandra Prados-Torres, María Lairla-San José, Luis Andrés Gimeno-Feliu, and Antonio Poncel-Falcó
- Subjects
Adult ,Male ,medicine.medical_specialty ,Adolescent ,Cross-sectional study ,Science ,Population ,Pharmacy ,Disease ,Pharmacology ,Sex Factors ,Internal medicine ,Prevalence ,medicine ,Electronic Health Records ,Humans ,Practice Patterns, Physicians' ,Medical prescription ,education ,Aged ,Polypharmacy ,education.field_of_study ,Multidisciplinary ,business.industry ,Medical record ,Age Factors ,Respiratory infection ,Middle Aged ,Cross-Sectional Studies ,Spain ,Medicine ,Female ,Factor Analysis, Statistical ,business ,Research Article - Abstract
ObjectivesThe aim of this study was to demonstrate the existence of systematic associations in drug prescription that lead to the establishment of patterns of polypharmacy, and the clinical interpretation of the associations found in each pattern.MethodsA cross-sectional study was conducted based on information obtained from electronic medical records and the primary care pharmacy database in 2008. An exploratory factor analysis of drug dispensing information regarding 79,089 adult patients was performed to identify the patterns of polypharmacy. The analysis was stratified by age and sex.ResultsSeven patterns of polypharmacy were identified, which may be classified depending on the type of disease they are intended to treat: cardiovascular, depression-anxiety, acute respiratory infection (ARI), chronic obstructive pulmonary disease (COPD), rhinitis-asthma, pain, and menopause. Some of these patterns revealed a clear clinical consistency and included drugs that are prescribed together for the same clinical indication (i.e., ARI and COPD patterns). Other patterns were more complex but also clinically consistent: in the cardiovascular pattern, drugs for the treatment of known risk factors-such as hypertension or dyslipidemia-were combined with other medications for the treatment of diabetes or established cardiovascular pathology (e.g., antiplatelet agents). Almost all of the patterns included drugs for preventing or treating potential side effects of other drugs in the same pattern.ConclusionsThe present study demonstrated the existence of non-random associations in drug prescription, resulting in patterns of polypharmacy that are sound from the pharmacological and clinical viewpoints and that exist in a significant proportion of the population. This finding necessitates future longitudinal studies to confirm some of the proposed causal associations. The information discovered would further the development and/or adaptation of clinical patient guidelines to patients with multimorbidity who are taking multiple drugs.
- Published
- 2013
34. Multimorbidity Patterns in Primary Care: Interactions among Chronic Diseases Using Factor Analysis
- Author
-
Prados-Torres, Alexandra, primary, Poblador-Plou, Beatriz, additional, Calderón-Larrañaga, Amaia, additional, Gimeno-Feliu, Luis Andrés, additional, González-Rubio, Francisca, additional, Poncel-Falcó, Antonio, additional, Sicras-Mainar, Antoni, additional, and Alcalá-Nalvaiz, José Tomás, additional
- Published
- 2012
- Full Text
- View/download PDF
35. Multimorbidity Patterns in Primary Care: Interactions among Chronic Diseases Using Factor Analysis
- Author
-
Beatriz Poblador-Plou, Alexandra Prados-Torres, Luis Andrés Gimeno-Feliu, A Sicras-Mainar, Amaia Calderón-Larrañaga, Francisca González-Rubio, José Tomás Alcalá-Nalvaiz, and Antonio Poncel-Falcó
- Subjects
Adult ,Male ,medicine.medical_specialty ,Adolescent ,Medical Records Systems, Computerized ,Clinical Research Design ,Epidemiology ,Science ,Population ,Sex Factors ,medicine ,Humans ,Multimorbidity ,education ,Psychiatry ,Primary Care ,Depression (differential diagnoses) ,Aged ,Retrospective Studies ,education.field_of_study ,Multidisciplinary ,Primary Health Care ,business.industry ,Public health ,Medical record ,Age Factors ,Middle Aged ,medicine.disease ,Obesity ,Exploratory factor analysis ,Research Design ,Spain ,Chronic Disease ,Medicine ,Female ,Observational study ,Public Health ,Morbidity ,Factor Analysis, Statistical ,business ,Research Article ,Demography - Abstract
ObjectivesThe primary objective of this study was to identify the existence of chronic disease multimorbidity patterns in the primary care population, describing their clinical components and analysing how these patterns change and evolve over time both in women and men. The secondary objective of this study was to generate evidence regarding the pathophysiological processes underlying multimorbidity and to understand the interactions and synergies among the various diseases.MethodsThis observational, retrospective, multicentre study utilised information from the electronic medical records of 19 primary care centres from 2008. To identify multimorbidity patterns, an exploratory factor analysis was carried out based on the tetra-choric correlations between the diagnostic information of 275,682 patients who were over 14 years of age. The analysis was stratified by age group and sex.ResultsMultimorbidity was found in all age groups, and its prevalence ranged from 13% in the 15 to 44 year age group to 67% in those 65 years of age or older. Goodness-of-fit indicators revealed sample values between 0.50 and 0.71. We identified five patterns of multimorbidity: cardio-metabolic, psychiatric-substance abuse, mechanical-obesity-thyroidal, psychogeriatric and depressive. Some of these patterns were found to evolve with age, and there were differences between men and women.ConclusionsNon-random associations between chronic diseases result in clinically consistent multimorbidity patterns affecting a significant proportion of the population. Underlying pathophysiological phenomena were observed upon which action can be taken both from a clinical, individual-level perspective and from a public health or population-level perspective.
- Published
- 2012
36. Baseline Chronic Comorbidity and Mortality in Laboratory-Confirmed COVID-19 Cases: Results from the PRECOVID Study in Spain.
- Author
-
Poblador-Plou, Beatriz, Carmona-Pírez, Jonás, Ioakeim-Skoufa, Ignatios, Poncel-Falcó, Antonio, Bliek-Bueno, Kevin, Cano-del Pozo, Mabel, Gimeno-Feliú, Luis Andrés, González-Rubio, Francisca, Aza-Pascual-Salcedo, Mercedes, Bandrés-Liso, Ana Cristina, Díez-Manglano, Jesús, Marta-Moreno, Javier, Mucherino, Sara, Gimeno-Miguel, Antonio, and Prados-Torres, Alexandra
- Published
- 2020
- Full Text
- View/download PDF
37. Correction: Multimorbidity Patterns in Primary Care: Interactions among Chronic Diseases Using Factor Analysis
- Author
-
Prados-Torres A, Poblador-Plou B, Amaia Calderón-Larrañaga, La, Gimeno-Feliu, González-Rubio F, Poncel-Falcó A, Sicras-Mainar A, and Jt, Alcalá-Nalvaiz
Catalog
Discovery Service for Jio Institute Digital Library
For full access to our library's resources, please sign in.