Meeting the information and communication needs of health disparate populations.
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac164
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocac164
Plain language in medicine has long been advocated as a way to improve patient understanding and engagement. As the field of Natural Language Processing has progressed, increasingly sophisticated methods have been explored for the automatic simplification of existing biomedical text for consumers. We survey the literature in this area with the goals of characterizing approaches and applications, summarizing existing resources, and identifying remaining challenges.
Author(s): Ondov, Brian, Attal, Kush, Demner-Fushman, Dina
DOI: 10.1093/jamia/ocac149
To identify common medication route-related causes of clinical decision support (CDS) malfunctions and best practices for avoiding them.
Author(s): Wright, Adam, Nelson, Scott, Rubins, David, Schreiber, Richard, Sittig, Dean F
DOI: 10.1093/jamia/ocac150
Prediction models can be useful tools for monitoring patient status and personalizing treatment in health care. The goal of this study was to compare the relative strengths and weaknesses of 2 different approaches for predicting functional recovery after knee arthroplasty: a neighbors-based "people-like-me" (PLM) approach and a linear mixed model (LMM) approach.
Author(s): Graber, Jeremy, Kittelson, Andrew, Juarez-Colunga, Elizabeth, Jin, Xin, Bade, Michael, Stevens-Lapsley, Jennifer
DOI: 10.1093/jamia/ocac123
This study aimed is to: (1) extend the Integrating the Biology and the Bedside (i2b2) data and application models to include medical imaging appropriate use criteria, enabling it to serve as a platform to monitor local impact of the Protecting Access to Medicare Act's (PAMA) imaging clinical decision support (CDS) requirements, and (2) validate the i2b2 extension using data from the Medicare Imaging Demonstration (MID) CDS implementation.
Author(s): Valtchinov, Vladimir I, Murphy, Shawn N, Lacson, Ronilda, Ikonomov, Nikolay, Zhai, Bingxue K, Andriole, Katherine, Rousseau, Justin, Hanson, Dick, Kohane, Isaac S, Khorasani, Ramin
DOI: 10.1093/jamia/ocac132
As the informatics community grows in its ability to address health disparities, there is an opportunity to expand our impact by focusing on the disability community as a health disparity population. Although informaticians have primarily catered design efforts to one disability at a time, digital health technologies can be enhanced by approaching disability from a more holistic framework, simultaneously accounting for multiple forms of disability and the ways disability intersects [...]
Author(s): Valdez, Rupa S, Lyon, Sophie E, Wellbeloved-Stone, Claire, Collins, Mary, Rogers, Courtney C, Cantin-Garside, Kristine D, Gonclaves Fortes, Diogo, Kim, Chung, Desai, Shaalini S, Keim-Malpass, Jessica, Kushalnagar, Raja
DOI: 10.1093/jamia/ocac136
Occupational injuries (OIs) cause an immense burden on the US population. Prediction models help focus resources on those at greatest risk of a delayed return to work (RTW). RTW depends on factors that develop over time; however, existing methods only utilize information collected at the time of injury. We investigate the performance benefits of dynamically estimating RTW, using longitudinal observations of diagnoses and treatments collected beyond the time of initial [...]
Author(s): Ötleş, Erkin, Seymour, Jon, Wang, Haozhu, Denton, Brian T
DOI: 10.1093/jamia/ocac130
Visual timelines of patient-reported outcomes (PRO) can help prostate cancer survivors manage longitudinal data, compare with population averages, and consider future trajectories. PRO visualizations are most effective when designed with deliberate consideration of users. Yet, graph literacy is often overlooked as a design constraint, particularly when users with limited graph literacy are not engaged in their development. We conducted user testing to assess comprehension, utility, and preference of longitudinal PRO [...]
Author(s): Snyder, Lauren E, Phan, Daniel F, Williams, Kristen C, Piqueiras, Eduardo, Connor, Sarah E, George, Sheba, Kwan, Lorna, Villatoro Chavez, Jefersson, Tandel, Megha D, Frencher, Stanley K, Litwin, Mark S, Gore, John L, Hartzler, Andrea L
DOI: 10.1093/jamia/ocac148
To develop a usability checklist for public health dashboards.
Author(s): Ansari, Bahareh, Martin, Erika G
DOI: 10.1093/jamia/ocac140
Synthetic data are increasingly relied upon to share electronic health record (EHR) data while maintaining patient privacy. Current simulation methods can generate longitudinal data, but the results are unreliable for several reasons. First, the synthetic data drifts from the real data distribution over time. Second, the typical approach to quality assessment, which is based on the extent to which real records can be distinguished from synthetic records using a critic [...]
Author(s): Zhang, Ziqi, Yan, Chao, Malin, Bradley A
DOI: 10.1093/jamia/ocac131