Correction to: Transforming and evaluating the UK Biobank to the OMOP Common Data Model for COVID-19 research and beyond.
Author(s):
DOI: 10.1093/jamia/ocad032
Author(s):
DOI: 10.1093/jamia/ocad032
Identifying ethical concerns with ML applications to healthcare (ML-HCA) before problems arise is now a stated goal of ML design oversight groups and regulatory agencies. Lack of accepted standard methodology for ethical analysis, however, presents challenges. In this case study, we evaluate use of a stakeholder "values-collision" approach to identify consequential ethical challenges associated with an ML-HCA for advanced care planning (ACP). Identification of ethical challenges could guide revision and [...]
Author(s): Cagliero, Diana, Deuitch, Natalie, Shah, Nigam, Feudtner, Chris, Char, Danton
DOI: 10.1093/jamia/ocad022
Vaccines are crucial components of pandemic responses. Over 12 billion coronavirus disease 2019 (COVID-19) vaccines were administered at the time of writing. However, public perceptions of vaccines have been complex. We integrated social media and surveillance data to unravel the evolving perceptions of COVID-19 vaccines.
Author(s): Wang, Hanyin, Li, Yikuan, Hutch, Meghan R, Kline, Adrienne S, Otero, Sebastian, Mithal, Leena B, Miller, Emily S, Naidech, Andrew, Luo, Yuan
DOI: 10.1093/jamia/ocad029
Prior authorization (PA) may be a necessary evil within the healthcare system, contributing to physician burnout and delaying necessary care, but also allowing payers to prevent wasting resources on redundant, expensive, and/or ineffective care. PA has become an "informatics issue" with the rise of automated methods for PA review, championed in the Health Level 7 International's (HL7's) DaVinci Project. DaVinci proposes using rule-based methods to automate PA, a time-tested strategy [...]
Author(s): Lenert, Leslie A, Lane, Steven, Wehbe, Ramsey
DOI: 10.1093/jamia/ocad016
To improve problem list documentation and care quality.
Author(s): Wright, Adam, Schreiber, Richard, Bates, David W, Aaron, Skye, Ai, Angela, Cholan, Raja Arul, Desai, Akshay, Divo, Miguel, Dorr, David A, Hickman, Thu-Trang, Hussain, Salman, Just, Shari, Koh, Brian, Lipsitz, Stuart, Mcevoy, Dustin, Rosenbloom, Trent, Russo, Elise, Ting, David Yut-Chee, Weitkamp, Asli, Sittig, Dean F
DOI: 10.1093/jamia/ocad020
We evaluated nursing-related free-text communication orders to identify potential safety hazards and describe patterns and scope of care domains addressed that may reveal preventable workarounds and potential gaps in electronic health record (EHR) functionality.
Author(s): Staes, Catherine, Yusuf, Saldi, Hambly, Medalit, Phengphoo, Saifon, Guo, Jia-Wen
DOI: 10.1093/jamia/ocad018
Estimating the deterioration paths of chronic hepatitis B (CHB) patients is critical for physicians' decisions and patient management. A novel, hierarchical multilabel graph attention-based method aims to predict patient deterioration paths more effectively. Applied to a CHB patient data set, it offers strong predictive utilities and clinical value.
Author(s): Wu, Zejian Eric, Xu, Da, Hu, Paul Jen-Hwa, Huang, Ting-Shuo
DOI: 10.1093/jamia/ocad008
Increased social risk data collection in health care settings presents new opportunities to apply this information to improve patient outcomes. Clinical decision support (CDS) tools can support these applications. We conducted a participatory engagement process to develop electronic health record (EHR)-based CDS tools to facilitate social risk-informed care plan adjustments in community health centers (CHCs).
Author(s): Gunn, Rose, Pisciotta, Maura, Gold, Rachel, Bunce, Arwen, Dambrun, Katie, Cottrell, Erika K, Hessler, Danielle, Middendorf, Mary, Alvarez, Miguel, Giles, Lydia, Gottlieb, Laura M
DOI: 10.1093/jamia/ocad010
Collider bias is a common threat to internal validity in clinical research but is rarely mentioned in informatics education or literature. Conditioning on a collider, which is a variable that is the shared causal descendant of an exposure and outcome, may result in spurious associations between the exposure and outcome. Our objective is to introduce readers to collider bias and its corollaries in the retrospective analysis of electronic health record [...]
Author(s): Weiskopf, Nicole G, Dorr, David A, Jackson, Christie, Lehmann, Harold P, Thompson, Caroline A
DOI: 10.1093/jamia/ocad013
Studies examining the effects of computerized order entry (CPOE) on medication ordering errors demonstrate that CPOE does not consistently prevent these errors as intended. We used the Agency for Healthcare Research and Quality (AHRQ) Network of Patient Safety Databases (NPSD) to investigate the frequency and degree of harm of reported events that occurred at the ordering stage, characterized by error type.
Author(s): Grauer, Anne, Rosen, Amanda, Applebaum, Jo R, Carter, Danielle, Reddy, Pooja, Dal Col, Alexis, Kumaraiah, Deepa, Barchi, Daniel J, Classen, David C, Adelman, Jason S
DOI: 10.1093/jamia/ocad007