Correction to: Research Data Warehouse Best Practices: Catalyzing National Data Sharing through Informatics Innovation.
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DOI: 10.1093/jamia/ocac075
Author(s):
DOI: 10.1093/jamia/ocac075
Recent technological development along with the constraints imposed by the coronavirus disease 2019 (COVID-19) pandemic have led to increased availability of patient-generated health data. However, it is not well understood how to effectively integrate this new technology into large health systems. This article seeks to identify interventions to increase utilization of electronic blood glucose monitoring for patients with diabetes.
Author(s): Root, Allyson, Connolly, Christopher, Majors, Season, Ahmed, Hassan, Toma, Mattie
DOI: 10.1093/jamia/ocac069
People are increasingly encouraged to self-manage their chronic conditions; however, many struggle to practise it effectively. Most studies that investigate patient work (ie, tasks involved in self-management and contexts influencing such tasks) rely on self-reports, which are subject to recall and other biases. Few studies use wearable cameras and deep learning to capture and classify patient work activities automatically.
Author(s): Xiong, Hao, Phan, Hoai Nam, Yin, Kathleen, Berkovsky, Shlomo, Jung, Joshua, Lau, Annie Y S
DOI: 10.1093/jamia/ocac071
To develop a lossless distributed algorithm for generalized linear mixed model (GLMM) with application to privacy-preserving hospital profiling.
Author(s): Luo, Chongliang, Islam, Md Nazmul, Sheils, Natalie E, Buresh, John, Schuemie, Martijn J, Doshi, Jalpa A, Werner, Rachel M, Asch, David A, Chen, Yong
DOI: 10.1093/jamia/ocac067
A discussion and debate on the American Medical Informatics Association's (AMIA) Ethical, Legal, and Social Issues (ELSI) Working Group listserv in 2021 raised important issues related to a forthcoming conference in Texas. Texas had recently enacted a restrictive abortion law and restricted voting rights. Several AMIA members advocated for a boycott of the state and the scheduled conference. The discussion led the AMIA Board of Directors to request that the [...]
Author(s): Lehmann, Christoph U, Fultz Hollis, Kate, Petersen, Carolyn, DeMuro, Paul R, Subbian, Vignesh, Koppel, Ross, Solomonides, Anthony E, Berner, Eta S, Pan, Eric C, Adler-Milstein, Julia, Goodman, Kenneth W
DOI: 10.1093/jamia/ocac073
Health care providers increasingly rely upon predictive algorithms when making important treatment decisions, however, evidence indicates that these tools can lead to inequitable outcomes across racial and socio-economic groups. In this study, we introduce a bias evaluation checklist that allows model developers and health care providers a means to systematically appraise a model's potential to introduce bias.
Author(s): Wang, H Echo, Landers, Matthew, Adams, Roy, Subbaswamy, Adarsh, Kharrazi, Hadi, Gaskin, Darrell J, Saria, Suchi
DOI: 10.1093/jamia/ocac065
We developed a comprehensive, medication-related clinical decision support (CDS) software prototype for use in the operating room. The purpose of this study was to compare the usability of the CDS software to the current standard electronic health record (EHR) medication administration and documentation workflow.
Author(s): Nanji, Karen C, Garabedian, Pamela M, Langlieb, Marin E, Rui, Angela, Tabayoyong, Leo L, Sampson, Michael, Deng, Hao, Boxwala, Aziz, Minehart, Rebecca D, Bates, David W
DOI: 10.1093/jamia/ocac035
This study sought both to support evidence-based patient identity policy development by illustrating an approach for formally evaluating operational matching methods, and also to characterize the performance of both referential and probabilistic patient matching algorithms using real-world demographic data.
Author(s): Grannis, Shaun J, Williams, Jennifer L, Kasthuri, Suranga, Murray, Molly, Xu, Huiping
DOI: 10.1093/jamia/ocac068
The increasing translation of artificial intelligence (AI)/machine learning (ML) models into clinical practice brings an increased risk of direct harm from modeling bias; however, bias remains incompletely measured in many medical AI applications. This article aims to provide a framework for objective evaluation of medical AI from multiple aspects, focusing on binary classification models.
Author(s): Estiri, Hossein, Strasser, Zachary H, Rashidian, Sina, Klann, Jeffrey G, Wagholikar, Kavishwar B, McCoy, Thomas H, Murphy, Shawn N
DOI: 10.1093/jamia/ocac070
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac074