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Pellegrini AM, Huang EJ, Staples PC, Hart KL, Lorme JM, Brown HE, Perlis RH, Onnela JJ. Estimating longitudinal depressive symptoms from smartphone data in a transdiagnostic cohort. Brain Behav 2022; 12:e02077. [PMID: 35076166 PMCID: PMC8865149 DOI: 10.1002/brb3.2077] [Citation(s) in RCA: 4] [Impact Index Per Article: 2.0] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 07/27/2020] [Revised: 01/31/2021] [Accepted: 02/05/2021] [Indexed: 11/26/2022] Open
Abstract
BACKGROUND Passive measures collected using smartphones have been suggested to represent efficient proxies for depression severity, but the performance of such measures across diagnoses has not been studied. METHODS We enrolled a cohort of 45 individuals (11 with major depressive disorder, 11 with bipolar disorder, 11 with schizophrenia or schizoaffective disorder, and 12 individuals with no axis I psychiatric disorder). During the 8-week study period, participants were evaluated with a rater-administered Montgomery-Åsberg Depression Rating Scale (MADRS) biweekly, completed self-report PHQ-8 measures weekly on their smartphone, and consented to collection of smartphone-based GPS and accelerometer data in order to learn about their behaviors. We utilized linear mixed models to predict depression severity on the basis of phone-based PHQ-8 and passive measures. RESULTS Among the 45 individuals, 38 (84%) completed the 8-week study. The average root-mean-squared error (RMSE) in predicting the MADRS score (scale 0-60) was 4.72 using passive data alone, 4.27 using self-report measures alone, and 4.30 using both. CONCLUSIONS While passive measures did not improve MADRS score prediction in our cross-disorder study, they may capture behavioral phenotypes that cannot be measured objectively, granularly, or over long-term via self-report.
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Affiliation(s)
| | - Emily J. Huang
- Department of Mathematics and StatisticsWake Forest UniversityWinston‐SalemNCUSA
| | - Patrick C. Staples
- Department of BiostatisticsHarvard T.H. Chan School of Public HealthBostonMAUSA
| | - Kamber L. Hart
- Center for Quantitative HealthMassachusetts General HospitalBostonMAUSA
| | - Jeanette M. Lorme
- Department of BiostatisticsHarvard T.H. Chan School of Public HealthBostonMAUSA
| | | | - Roy H. Perlis
- Center for Quantitative HealthMassachusetts General HospitalBostonMAUSA
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Davidson BI. The crossroads of digital phenotyping. Gen Hosp Psychiatry 2022; 74:126-132. [PMID: 33653612 DOI: 10.1016/j.genhosppsych.2020.11.009] [Citation(s) in RCA: 7] [Impact Index Per Article: 3.5] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Received: 08/07/2020] [Revised: 11/11/2020] [Accepted: 11/11/2020] [Indexed: 12/26/2022]
Abstract
The term 'Digital Phenotyping' has started to appear with increasing regularity in medical research, especially within psychiatry. This aims to bring together digital traces (e.g., from smartphones), medical data (e.g., electronic health records), and lived experiences (e.g., daily activity, location, social contact), to better monitor, intervene, and diagnose various psychiatric conditions. However, is this notion any different from digital traces or the quantified self? While digital phenotyping has the potential to transform and revolutionize medicine as we know it; there are a number of challenges that must be addressed if research is to blossom. At present, these issues include; (1) methodological issues, for example, the lack of clear theoretical links between digital markers (e.g., battery life, interactions with smartphones) and condition relapses, (2) the current tools being employed, where they typically have a number of security or privacy issues, and are invasive by nature, (3) analytical methods and approaches, where I question whether research should start in larger-scale epidemiological scale or in smaller (and potentially highly vulnerable) patient populations as is the current norm, (4) the current lack of security and privacy regulation adherence of apps used, and finally, (5) how do such technologies become integrated into various healthcare systems? This aims to provide deep insight into how the Digital Phenotyping could provide huge promise if we critically reflect now and gather clinical insights with a number of other disciplines such as epidemiology, computer- and the social sciences to move forward.
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Affiliation(s)
- Brittany I Davidson
- Information, Decisions, and Operations Division, School of Management, University of Bath, United Kingdom; Department of Computer Science, University of Bristol, United Kingdom.
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3
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Clapp MA, McCoy TH. The potential of big data for obstetrics discovery. Curr Opin Endocrinol Diabetes Obes 2021; 28:553-557. [PMID: 34709211 DOI: 10.1097/med.0000000000000679] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [Abstract] [MESH Headings] [Track Full Text] [Journal Information] [Submit a Manuscript] [Subscribe] [Scholar Register] [Indexed: 10/20/2022]
Abstract
PURPOSE OF REVIEW The purpose of this article is to introduce the concept of 'Big Data' and review its potential to advance scientific discovery in obstetrics. RECENT FINDINGS Big Data is now ubiquitous in medicine, being used in many specialties to understand the pathophysiology, risk factors, and treatment for many diseases. Big Data analyses often employ machine learning methods to understand the complex relationships that may exist within these sources. We review the basic principles of supervised and unsupervised machine learning methods, including deep learning. We highlight how these methods have been used to study genetic risk factors for preterm birth, interpreting electronic fetal heart rate tracings, and predict adverse maternal and neonatal outcomes during pregnancy and delivery. Despite its promise, there are challenges with using Big Data, including data integrity, generalizability (namely the concerns about perpetuating inequalities), and confidentiality. SUMMARY The combination of new data and enhanced methods present a synergistic opportunity to explore the complex relationships common to human illness and medical practice, including obstetrics. With prediction as a primary objective instead of the more familiar goals of hypothesis testing, these analytic methods can capture multifaceted, rare, and nuanced relationships between exposures and outcomes that exist within these large data sets.
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Affiliation(s)
- Mark A Clapp
- Department of Obstetrics and Gynecology
- Center for Quantitative Health, Massachusetts General Hospital
- Harvard Medical School, Boston, Massachusetts, USA
| | - Thomas H McCoy
- Center for Quantitative Health, Massachusetts General Hospital
- Harvard Medical School, Boston, Massachusetts, USA
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4
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Procurement 4.0 to the rescue: catalysing its adoption by modelling the challenges. BENCHMARKING-AN INTERNATIONAL JOURNAL 2021. [DOI: 10.1108/bij-01-2021-0030] [Citation(s) in RCA: 9] [Impact Index Per Article: 3.0] [Reference Citation Analysis] [Abstract] [Track Full Text] [Subscribe] [Scholar Register] [Indexed: 12/23/2022]
Abstract
PurposeThe pandemic crisis has resulted in global chaos that had caused massive disruption to the supply chain. The pharmaceutical industry, in particular, has been working tirelessly to ensure that they can cater to the people who need them. With restrictions being imposed to prevent the spread of the COVID-19 virus, the movement of raw materials required has been affected, thus creating the need for the procurement function to be innovative. This study proposes the application of Industry 4.0 concepts into the procurement activities of an organization to make it more resilient and efficient.Design/methodology/approachTo study the intensity of the challenges, Total Interpretive Structural Modelling is used alongside the “Matrice des Impacts Croises Multiplication Appliquee a un Classement” (MICMAC) technique.FindingsResilience can be achieved through the collaboration between the organization and its network of suppliers. This is however easier said than done. High and unclear investments have been identified as the challenge that is taking a toll on all technological investments in the pandemic era. The study also shows that organizational inertia which is present in established and structured firms are a deterrent as well.Originality/valueThis study is based on the application of procurement 4.0 to ensure that pharmaceutical supply chains stay least affected since they are essentials. This study using a multi-criteria decision-making approach to prioritize the challenges. This will help practitioners make decisions faster.
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5
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Zhang J, Oh YJ, Lange P, Yu Z, Fukuoka Y. Artificial Intelligence Chatbot Behavior Change Model for Designing Artificial Intelligence Chatbots to Promote Physical Activity and a Healthy Diet: Viewpoint. J Med Internet Res 2020; 22:e22845. [PMID: 32996892 PMCID: PMC7557439 DOI: 10.2196/22845] [Citation(s) in RCA: 69] [Impact Index Per Article: 17.3] [Reference Citation Analysis] [Abstract] [Key Words] [MESH Headings] [Grants] [Track Full Text] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 07/27/2020] [Revised: 09/03/2020] [Accepted: 09/17/2020] [Indexed: 12/11/2022] Open
Abstract
BACKGROUND Chatbots empowered by artificial intelligence (AI) can increasingly engage in natural conversations and build relationships with users. Applying AI chatbots to lifestyle modification programs is one of the promising areas to develop cost-effective and feasible behavior interventions to promote physical activity and a healthy diet. OBJECTIVE The purposes of this perspective paper are to present a brief literature review of chatbot use in promoting physical activity and a healthy diet, describe the AI chatbot behavior change model our research team developed based on extensive interdisciplinary research, and discuss ethical principles and considerations. METHODS We conducted a preliminary search of studies reporting chatbots for improving physical activity and/or diet in four databases in July 2020. We summarized the characteristics of the chatbot studies and reviewed recent developments in human-AI communication research and innovations in natural language processing. Based on the identified gaps and opportunities, as well as our own clinical and research experience and findings, we propose an AI chatbot behavior change model. RESULTS Our review found a lack of understanding around theoretical guidance and practical recommendations on designing AI chatbots for lifestyle modification programs. The proposed AI chatbot behavior change model consists of the following four components to provide such guidance: (1) designing chatbot characteristics and understanding user background; (2) building relational capacity; (3) building persuasive conversational capacity; and (4) evaluating mechanisms and outcomes. The rationale and evidence supporting the design and evaluation choices for this model are presented in this paper. CONCLUSIONS As AI chatbots become increasingly integrated into various digital communications, our proposed theoretical framework is the first step to conceptualize the scope of utilization in health behavior change domains and to synthesize all possible dimensions of chatbot features to inform intervention design and evaluation. There is a need for more interdisciplinary work to continue developing AI techniques to improve a chatbot's relational and persuasive capacities to change physical activity and diet behaviors with strong ethical principles.
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Affiliation(s)
- Jingwen Zhang
- Department of Communication, University of California, Davis, Davis, CA, United States
- Department of Public Health Sciences, University of California, Davis, Davis, CA, United States
| | - Yoo Jung Oh
- Department of Communication, University of California, Davis, Davis, CA, United States
| | - Patrick Lange
- Department of Computer Science, University of California, Davis, Davis, CA, United States
| | - Zhou Yu
- Department of Computer Science, University of California, Davis, Davis, CA, United States
| | - Yoshimi Fukuoka
- Department of Physiological Nursing, University of California, San Francisco, San Francisco, CA, United States
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6
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Adans-Dester CP, Bamberg S, Bertacchi FP, Caulfield B, Chappie K, Demarchi D, Erb MK, Estrada J, Fabara EE, Freni M, Friedl KE, Ghaffari R, Gill G, Greenberg MS, Hoyt RW, Jovanov E, Kanzler CM, Katabi D, Kernan M, Kigin C, Lee SI, Leonhardt S, Lovell NH, Mantilla J, McCoy TH, Luo NM, Miller GA, Moore J, O'Keeffe D, Palmer J, Parisi F, Patel S, Po J, Pugliese BL, Quatieri T, Rahman T, Ramasarma N, Rogers JA, Ruiz-Esparza GU, Sapienza S, Schiurring G, Schwamm L, Shafiee H, Kelly Silacci S, Sims NM, Talkar T, Tharion WJ, Toombs JA, Uschnig C, Vergara-Diaz GP, Wacnik P, Wang MD, Welch J, Williamson L, Zafonte R, Zai A, Zhang YT, Tearney GJ, Ahmad R, Walt DR, Bonato P. Can mHealth Technology Help Mitigate the Effects of the COVID-19 Pandemic? IEEE OPEN JOURNAL OF ENGINEERING IN MEDICINE AND BIOLOGY 2020; 1:243-248. [PMID: 34192282 PMCID: PMC8023427 DOI: 10.1109/ojemb.2020.3015141] [Citation(s) in RCA: 36] [Impact Index Per Article: 9.0] [Reference Citation Analysis] [Abstract] [Key Words] [Track Full Text] [Download PDF] [Figures] [Journal Information] [Subscribe] [Scholar Register] [Received: 06/28/2020] [Accepted: 07/19/2020] [Indexed: 01/08/2023] Open
Abstract
Goal: The aim of the study herein reported was to review mobile health (mHealth) technologies and explore their use to monitor and mitigate the effects of the COVID-19 pandemic. Methods: A Task Force was assembled by recruiting individuals with expertise in electronic Patient-Reported Outcomes (ePRO), wearable sensors, and digital contact tracing technologies. Its members collected and discussed available information and summarized it in a series of reports. Results: The Task Force identified technologies that could be deployed in response to the COVID-19 pandemic and would likely be suitable for future pandemics. Criteria for their evaluation were agreed upon and applied to these systems. Conclusions: mHealth technologies are viable options to monitor COVID-19 patients and be used to predict symptom escalation for earlier intervention. These technologies could also be utilized to monitor individuals who are presumed non-infected and enable prediction of exposure to SARS-CoV-2, thus facilitating the prioritization of diagnostic testing.
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Affiliation(s)
- Catherine P Adans-Dester
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Stacy Bamberg
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Francesco P Bertacchi
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Brian Caulfield
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Kara Chappie
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Danilo Demarchi
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - M Kelley Erb
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Juan Estrada
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Eric E Fabara
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Michael Freni
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Karl E Friedl
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Roozbeh Ghaffari
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Geoffrey Gill
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Mark S Greenberg
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Reed W Hoyt
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Emil Jovanov
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Christoph M Kanzler
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Dina Katabi
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Meredith Kernan
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Colleen Kigin
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Sunghoon I Lee
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Steffen Leonhardt
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Nigel H Lovell
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Jose Mantilla
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Thomas H McCoy
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Nell Meosky Luo
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Glenn A Miller
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - John Moore
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Derek O'Keeffe
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Jeffrey Palmer
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Federico Parisi
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Shyamal Patel
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Jack Po
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Benito L Pugliese
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Thomas Quatieri
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Tauhidur Rahman
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Nathan Ramasarma
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - John A Rogers
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Guillermo U Ruiz-Esparza
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Stefano Sapienza
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Gregory Schiurring
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Lee Schwamm
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Hadi Shafiee
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Sara Kelly Silacci
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Nathaniel M Sims
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Tanya Talkar
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - William J Tharion
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - James A Toombs
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Christopher Uschnig
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Gloria P Vergara-Diaz
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Paul Wacnik
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - May D Wang
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - James Welch
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Lina Williamson
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Ross Zafonte
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Adrian Zai
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Yuan-Ting Zhang
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Guillermo J Tearney
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Rushdy Ahmad
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - David R Walt
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
| | - Paolo Bonato
- Paolo Bonato is with the Department of Physical Medicine and RehabilitationHarvard Medical School at Spaulding Rehabilitation HospitalBostonMA02129USA.,Wyss InstituteHarvard UniversityCambridgeMA02138USA
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7
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Abstract
OBJECTIVES Clinical Research Informatics (CRI) declares its scope in its name, but its content, both in terms of the clinical research it supports-and sometimes initiates-and the methods it has developed over time, reach much further than the name suggests. The goal of this review is to celebrate the extraordinary diversity of activity and of results, not as a prize-giving pageant, but in recognition of the field, the community that both serves and is sustained by it, and of its interdisciplinarity and its international dimension. METHODS Beyond personal awareness of a range of work commensurate with the author's own research, it is clear that, even with a thorough literature search, a comprehensive review is impossible. Moreover, the field has grown and subdivided to an extent that makes it very hard for one individual to be familiar with every branch or with more than a few branches in any depth. A literature survey was conducted that focused on informatics-related terms in the general biomedical and healthcare literature, and specific concerns ("artificial intelligence", "data models", "analytics", etc.) in the biomedical informatics (BMI) literature. In addition to a selection from the results from these searches, suggestive references within them were also considered. RESULTS The substantive sections of the paper-Artificial Intelligence, Machine Learning, and "Big Data" Analytics; Common Data Models, Data Quality, and Standards; Phenotyping and Cohort Discovery; Privacy: Deidentification, Distributed Computation, Blockchain; Causal Inference and Real-World Evidence-provide broad coverage of these active research areas, with, no doubt, a bias towards this reviewer's interests and preferences, landing on a number of papers that stood out in one way or another, or, alternatively, exemplified a particular line of work. CONCLUSIONS CRI is thriving, not only in the familiar major centers of research, but more widely, throughout the world. This is not to pretend that the distribution is uniform, but to highlight the potential for this domain to play a prominent role in supporting progress in medicine, healthcare, and wellbeing everywhere. We conclude with the observation that CRI and its practitioners would make apt stewards of the new medical knowledge that their methods will bring forward.
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Affiliation(s)
- Anthony Solomonides
- Outcomes Research Network, Research Institute, NorthShore University HealthSystem, Evanston, IL, USA
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8
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Caulfield T, Murdoch B, Ogbogu U. Research, Digital Health Information and Promises of Privacy: Revisiting the Issue of Consent. CANADIAN JOURNAL OF BIOETHICS 2020. [DOI: 10.7202/1070237ar] [Citation(s) in RCA: 2] [Impact Index Per Article: 0.5] [Reference Citation Analysis] [Abstract] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Indexed: 11/17/2022] Open
Abstract
The obligation to maintain the privacy of patients and research participants is foundational to biomedical research. But there is growing concern about the challenges of keeping participant information private and confidential. A number of recent studies have highlighted how emerging computational strategies can be used to identify or reidentify individuals in health data repositories managed by public or private institutions. Some commentators have suggested the entire concept of privacy and anonymity is “dead”, and this raises legal and ethical questions about the consent process and safeguards relating to health privacy. Members of the public and research participants value privacy highly, and inability to ensure it could affect participation. Canadian common law and legislation require a full and comprehensive disclosure of risks during informed consent, including anything a reasonable person in the participant or patient’s position would want to know. Research ethics policies require similar disclosures, as well as full descriptions of privacy related risks and mitigation strategies at the time of consent. In addition, the right to withdraw from research gives rise to a need for ongoing consent, and material information about changes in privacy risk must be disclosed. Given the research ethics concept of “non-identifiability” is increasingly questionable, policies based around it may be rendered untenable. Indeed, the potential inability to ensure anonymity could have significant ramifications for the research enterprise.
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Affiliation(s)
- Timothy Caulfield
- Health Law Institute, Faculty of Law, University of Alberta, Edmonton, Alberta, Canada
| | - Blake Murdoch
- Health Law Institute, Faculty of Law, University of Alberta, Edmonton, Alberta, Canada
| | - Ubaka Ogbogu
- Health Law Institute, Faculty of Law, University of Alberta, Edmonton, Alberta, Canada
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9
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Iglesias-Puzas Á, Conde-Taboada A, Boixeda P, López-Bran E. [Electronic health records. New technologies to protect patient privacy]. J Healthc Qual Res 2020; 35:123-124. [PMID: 32241727 DOI: 10.1016/j.jhqr.2020.01.004] [Citation(s) in RCA: 0] [Impact Index Per Article: 0] [Reference Citation Analysis] [MESH Headings] [Track Full Text] [Journal Information] [Subscribe] [Scholar Register] [Received: 01/18/2020] [Accepted: 01/24/2020] [Indexed: 06/11/2023]
Affiliation(s)
- Á Iglesias-Puzas
- Servicio de Dermatología, Hospital Universitario Clínico San Carlos, Madrid, España.
| | - A Conde-Taboada
- Servicio de Dermatología, Hospital Universitario Clínico San Carlos, Madrid, España
| | - P Boixeda
- Servicio de Dermatología, Hospital Universitario Ramón y Cajal, Madrid, España
| | - E López-Bran
- Servicio de Dermatología, Hospital Universitario Clínico San Carlos, Madrid, España
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