15 results on '"Big Data supply & distribution"'
Search Results
2. An echo from the past: Building a Doppler repository for big data in diving research.
- Author
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Papadopoulou V and Lindholm P
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- Humans, Big Data supply & distribution, Decompression Sickness diagnostic imaging, Diving statistics & numerical data, Embolism, Air diagnostic imaging, Registries standards, Ultrasonography, Doppler statistics & numerical data
- Abstract
Decompression sickness (DCS) remains a major operational concern for diving operations, submarine escape and high-altitude jumps. Aside from DCS symptoms, venous gas emboli (VGE) detected with ultrasound post-dive are often used as a marker of decompression stress in humans, with a specificity of 100% even though the sensitivity is poor [1]. Being non-invasive, portable and non-ionizing, ultrasound is particularly suited to regular and repeated monitoring. It could help elucidate inter- and intra-subject variability in VGE and DCS susceptibility, but analyzing these recordings remains a cumbersome task [2]., Competing Interests: The authors of this paper declare no conflicts of interest exist with this submission., (Copyright© Undersea and Hyperbaric Medical Society.)
- Published
- 2021
- Full Text
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3. Shaping a data-driven era in dementia care pathway through computational neurology approaches.
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Wong-Lin K, McClean PL, McCombe N, Kaur D, Sanchez-Bornot JM, Gillespie P, Todd S, Finn DP, Joshi A, Kane J, and McGuinness B
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- Big Data supply & distribution, Comorbidity, Computational Biology methods, Computational Biology organization & administration, Data Science methods, Data Science organization & administration, Data Science trends, Dementia epidemiology, Humans, Neurology methods, Neurology organization & administration, Computational Biology trends, Critical Pathways organization & administration, Critical Pathways standards, Critical Pathways statistics & numerical data, Databases, Factual supply & distribution, Dementia therapy, Neurology trends
- Abstract
Background: Dementia is caused by a variety of neurodegenerative diseases and is associated with a decline in memory and other cognitive abilities, while inflicting an enormous socioeconomic burden. The complexity of dementia and its associated comorbidities presents immense challenges for dementia research and care, particularly in clinical decision-making., Main Body: Despite the lack of disease-modifying therapies, there is an increasing and urgent need to make timely and accurate clinical decisions in dementia diagnosis and prognosis to allow appropriate care and treatment. However, the dementia care pathway is currently suboptimal. We propose that through computational approaches, understanding of dementia aetiology could be improved, and dementia assessments could be more standardised, objective and efficient. In particular, we suggest that these will involve appropriate data infrastructure, the use of data-driven computational neurology approaches and the development of practical clinical decision support systems. We also discuss the technical, structural, economic, political and policy-making challenges that accompany such implementations., Conclusion: The data-driven era for dementia research has arrived with the potential to transform the healthcare system, creating a more efficient, transparent and personalised service for dementia.
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- 2020
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4. The intersection of genomics and big data with public health: Opportunities for precision public health.
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Khoury MJ, Armstrong GL, Bunnell RE, Cyril J, and Iademarco MF
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- Genomics methods, Humans, Big Data supply & distribution, Precision Medicine methods, Public Health methods
- Abstract
Muin Khoury and co-authors discuss anticipated contributions of genomics and other forms of large-scale data in public health., Competing Interests: The authors have declared that no competing interests exist.
- Published
- 2020
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5. Big Data in Ophthalmology.
- Author
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Cheng CY, Soh ZD, Majithia S, Thakur S, Rim TH, Tham YC, and Wong TY
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- Delivery of Health Care, Electronic Health Records, Humans, Artificial Intelligence trends, Big Data supply & distribution, Databases, Factual, Ophthalmology trends
- Abstract
Big data is the fuel of mankind's fourth industrial revolution. Coupled with new technology such as artificial intelligence and deep learning, the potential of big data is poised to be harnessed to its maximal in years to come. In ophthalmology, given the data-intensive nature of this specialty, big data will similarly play an important role. Electronic medical records, administrative and health insurance databases, mega national biobanks, crowd source data from mobile applications and social media, and international epidemiology consortia are emerging forms of "big data" in ophthalmology. In this review, we discuss the characteristics of big data, its potential applications in ophthalmology, and the challenges in leveraging and using these data. Importantly, in the next phase of work, it will be pertinent to further translate "big data" findings into real-world applications, to improve quality of eye care, and cost-effectiveness and efficiency of health services in ophthalmology.
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- 2020
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6. [What place for French morbidity registries in the era of big data?]
- Author
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Francis F, Terroba C, Persoz C, Gagliolo JM, and Alla F
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- Databases, Factual standards, Databases, Factual supply & distribution, Electronic Health Records organization & administration, Electronic Health Records standards, Electronic Health Records trends, France epidemiology, Health Information Management organization & administration, Health Information Management standards, Health Information Management trends, Humans, Information Dissemination methods, Models, Organizational, Professional Practice organization & administration, Professional Practice standards, Professional Practice trends, Professional Role, Public Health statistics & numerical data, Big Data supply & distribution, Databases, Factual trends, Morbidity, Public Health trends, Registries standards, Registries statistics & numerical data
- Abstract
The recent opening of massive health databases, as well as the development of methods and tools adapted to their data processing, questions the French model of "morbidity registry". In France in 2019, nearly 61 health registries were operating. As defined by law, these registries identify exhaustively all patients with a given disease in a given territory. Established several decades ago, these registries are part of the French surveillance system that is used for research and evaluation purposes. Since the advent of recent technological progress, large-scale databases are made available to researchers and it is possible with these databases to answer questions initially assigned to the registries. What is the place of such registries in this new context: are they obsolete or still useful? Should they be opposed to the new tools or are they complementary to them, and if so, what is their place in the new French public health ecosystem? The objective of this work was to assess the roles and missions of existing registries and to reflect on their positioning in this new environment. The French model of registry is sometimes questioned because of the complexity of its circuits, requiring a significant amount of human resources. However, the data that constitute them, validated by cross-checking information from several sources, are of very high quality, and make it possible to validate the data in the new databases (National Health Data System (NSDS) or Hospital Data Warehouses). Registries and new databases are in fact complementary, and far from jeopardizing this model, the recent opening of these databases represents an opportunity for registries to modernize their operations and respond to new missions., (Copyright © 2019 Elsevier Masson SAS. All rights reserved.)
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- 2020
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7. [Internal Medicine 3.0].
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Galland J
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- Big Data supply & distribution, Genetics trends, Humans, Internal Medicine methods, Internal Medicine organization & administration, Inventions trends, Self Care, Smartphone trends, Telemedicine organization & administration, Telemedicine standards, Telemedicine trends, Artificial Intelligence, Internal Medicine trends, Social Media organization & administration, Social Media trends
- Published
- 2020
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8. Medical Big Data Is Not Yet Available: Why We Need Realism Rather than Exaggeration.
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Kim HS, Kim DJ, and Yoon KH
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- Humans, Artificial Intelligence, Big Data supply & distribution, Machine Learning, Medical Informatics organization & administration, Quality of Health Care organization & administration
- Abstract
Most people are now familiar with the concepts of big data, deep learning, machine learning, and artificial intelligence (AI) and have a vague expectation that AI using medical big data can be used to improve the quality of medical care. However, the expectation that big data could change the field of medicine is inconsistent with the current reality. The clinical meaningfulness of the results of research using medical big data needs to be examined. Medical staff needs to be clear about the purpose of AI that utilizes medical big data and to focus on the quality of this data, rather than the quantity. Further, medical professionals should understand the necessary precautions for using medical big data, as well as its advantages. No doubt that someday, medical big data will play an essential role in healthcare; however, at present, it seems too early to actively use it in clinical practice. The field continues to work toward developing medical big data and making it appropriate for healthcare. Researchers should continue to engage in empirical research to ensure that appropriate processes are in place to empirically evaluate the results of its use in healthcare., Competing Interests: No potential conflict of interest relevant to this article was reported., (Copyright © 2019 Korean Endocrine Society.)
- Published
- 2019
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9. Digital diabetes: Perspectives for diabetes prevention, management and research.
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Fagherazzi G and Ravaud P
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- Big Data supply & distribution, Biomedical Research methods, Data Interpretation, Statistical, Humans, Internet, Monitoring, Physiologic instrumentation, Monitoring, Physiologic methods, Monitoring, Physiologic trends, Telemedicine instrumentation, Telemedicine methods, Telemedicine trends, Artificial Intelligence trends, Biomedical Research trends, Diabetes Mellitus epidemiology, Diabetes Mellitus etiology, Diabetes Mellitus therapy, Inventions trends
- Abstract
Digital medicine, digital research and artificial intelligence (AI) have the power to transform the field of diabetes with continuous and no-burden remote monitoring of patients' symptoms, physiological data, behaviours, and social and environmental contexts through the use of wearables, sensors and smartphone technologies. Moreover, data generated online and by digital technologies - which the authors suggest be grouped under the term 'digitosome' - constitute, through the quantity and variety of information they represent, a powerful potential for identifying new digital markers and patterns of risk that, ultimately, when combined with clinical data, can improve diabetes management and quality of life, and also prevent diabetes-related complications. Moving from a world in which patients are characterized by only a few recent measurements of fasting glucose levels and glycated haemoglobin to a world where patients, healthcare professionals and research scientists can consider various key parameters at thousands of time points simultaneously will profoundly change the way diabetes is prevented, managed and characterized in patients living with diabetes, as well as how it is scientifically researched. Indeed, the present review looks at how the digitization of diabetes can impact all fields of diabetes - its prevention, management, technology and research - and how it can complement, but not replace, what is usually done in traditional clinical settings. Such a profound shift is a genuine game changer that should be embraced by all, as it can provide solid research results transferable to patients, improve general health literacy, and provide tools to facilitate the everyday decision-making process by both healthcare professionals and patients living with diabetes., (Copyright © 2018 Elsevier Masson SAS. All rights reserved.)
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- 2019
- Full Text
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10. Beyond the hype of big data and artificial intelligence: building foundations for knowledge and wisdom.
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Car J, Sheikh A, Wicks P, and Williams MS
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- Algorithms, Biomedical Research ethics, Biomedical Research methods, Biomedical Research trends, Delivery of Health Care ethics, Delivery of Health Care trends, Electronic Health Records ethics, Electronic Health Records supply & distribution, Electronic Health Records trends, Genomics trends, Humans, Information Dissemination methods, Knowledge, Artificial Intelligence ethics, Artificial Intelligence supply & distribution, Artificial Intelligence trends, Big Data supply & distribution, Bioethics education, Bioethics trends, Health Knowledge, Attitudes, Practice
- Abstract
Big data, coupled with the use of advanced analytical approaches, such as artificial intelligence (AI), have the potential to improve medical outcomes and population health. Data that are routinely generated from, for example, electronic medical records and smart devices have become progressively easier and cheaper to collect, process, and analyze. In recent decades, this has prompted a substantial increase in biomedical research efforts outside traditional clinical trial settings. Despite the apparent enthusiasm of researchers, funders, and the media, evidence is scarce for successful implementation of products, algorithms, and services arising that make a real difference to clinical care. This article collection provides concrete examples of how "big data" can be used to advance healthcare and discusses some of the limitations and challenges encountered with this type of research. It primarily focuses on real-world data, such as electronic medical records and genomic medicine, considers new developments in AI and digital health, and discusses ethical considerations and issues related to data sharing. Overall, we remain positive that big data studies and associated new technologies will continue to guide novel, exciting research that will ultimately improve healthcare and medicine-but we are also realistic that concerns remain about privacy, equity, security, and benefit to all.
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- 2019
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11. UK Biobank, big data, and the consequences of non-representativeness.
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Keyes KM and Westreich D
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- Biological Specimen Banks statistics & numerical data, Health Information Systems supply & distribution, Health Resources supply & distribution, Humans, United Kingdom epidemiology, Volunteers statistics & numerical data, Big Data supply & distribution, Biological Specimen Banks organization & administration, Environmental Exposure statistics & numerical data
- Published
- 2019
- Full Text
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12. Dear Reader: Data citation in changing times.
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Glatzel M and Love S
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- Animals, Editorial Policies, Humans, Big Data supply & distribution, Data Science methods
- Published
- 2019
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13. Medical Device Connectivity Challenges Outline the Technical Requirements and Standards For Promoting Big Data Research and Personalized Medicine in Neurocritical Care.
- Author
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Rodriguez A, Smielewski P, Rosenthal E, and Moberg D
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- Big Data supply & distribution, Brain Injuries therapy, Critical Care methods, Critical Care trends, Humans, Monitoring, Physiologic instrumentation, Monitoring, Physiologic methods, Precision Medicine instrumentation, Precision Medicine methods, Reference Standards, United States, Equipment and Supplies standards, Internet Access trends
- Abstract
Brain injuries are complicated medical problems and their management requires data from disparate sources to extract actionable information. In neurocritical care, interoperability is lacking despite the perceived benefits. Several efforts have been underway, but none have been widely adopted, underscoring the difficulty of achieving this goal. We have identified the current pain points of data collection and integration based on the experience with two large multi-site clinical studies: Transforming Research And Clinical Knowledge in Traumatic Brain Injury (TRACK-TBI) in the United States and Collaborative European Neuro Trauma Effectiveness Research in Traumatic Brain Injury (CENTER-TBI) in Europe. The variability of measurements across sites remains a barrier to uniform data collection. We found a need for annotation standards and for a standardized archive format for high-resolution data. Overall, the hidden cost for successful data collection was initially underestimated.Although the use of bedside data integration solutions, such as the Moberg's Component Neuromonitoring System (Moberg Research, Inc., Ambler, PA, USA) or ICM+ software (Cambridge Enterprise, Cambridge, UK), facilitated the homogenous collection of synchronized data, there remain issues that need to be addressed by the neurocritical care community. To this end, we have organized a Working Group on Neurocritical Care Informatics, whose next step is to create an overarching informatics framework that takes advantage of the collected information to answer scientific questions and to accelerate the translation of trial results to actions benefitting military medicine.
- Published
- 2018
- Full Text
- View/download PDF
14. Single-case cognitive neuropsychology in the age of big data.
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Medina J and Fischer-Baum S
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- Humans, Big Data supply & distribution, Cognition physiology, Neuropsychology methods
- Abstract
Historically, single-case studies of brain-damaged individuals have contributed substantially to our understanding of cognitive processes. However, the role of single-case cognitive neuropsychology has diminished with the proliferation of techniques that measure neural activity in humans. Instead, large-scale informatics approaches in which data are gathered from hundreds of neuroimaging studies have become popular. It has been claimed that utilizing these informatics approaches can address problems found in single imaging studies. We first discuss reasons for why cognitive neuropsychology is thought to be in decline. Next, we note how these informatics approaches, while having benefits, are not particularly suited for understanding functional architectures. We propose that the single-case cognitive neuropsychological approach, which is focused on developing models of cognitive processing, addresses several of the weaknesses inherent in informatics approaches. Furthermore, we discuss how using neural data from brain-damaged individuals provides data that can inform both cognitive and neural models of cognitive processing.
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- 2017
- Full Text
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15. Foreword: Big Data and Its Application in Health Disparities Research.
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Onukwugha E, Duru OK, and Peprah E
- Subjects
- Humans, Big Data supply & distribution, Biomedical Research statistics & numerical data, Healthcare Disparities statistics & numerical data
- Abstract
The articles presented in this special issue advance the conversation by describing the current efforts, findings and concerns related to Big Data and health disparities. They offer important recommendations and perspectives to consider when designing systems that can usefully leverage Big Data to reduce health disparities. We hope that ongoing Big Data efforts can build on these contributions to advance the conversation, address our embedded assumptions, and identify levers for action to reduce health care disparities., Competing Interests: Competing Interests: None declared.
- Published
- 2017
- Full Text
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