Correction to: De-black-boxing health AI: demonstrating reproducible machine learning computable phenotypes using the N3C-RECOVER Long COVID model in the All of Us data repository.
Author(s):
DOI: 10.1093/jamia/ocae154
Author(s):
DOI: 10.1093/jamia/ocae154
Clinical decision support systems (CDSSs) are computer applications, which can be applied to give guidance to practitioners in antimicrobial stewardship (AS) activities; however, further information is needed for their optimal use.
Author(s): Amor-García, Miguel Ángel, Chamorro-de-Vega, Esther, Rodríguez-González, Carmen Guadalupe, Iglesias-Peinado, Irene, Moreno-Díaz, Raquel
DOI: 10.1055/a-2341-8823
Author(s): Yan, Adam P, Yarahuan, Julia, Hron, Jonathan D
DOI: 10.1055/a-2340-7142
To present a general framework providing high-level guidance to developers of computable algorithms for identifying patients with specific clinical conditions (phenotypes) through a variety of approaches, including but not limited to machine learning and natural language processing methods to incorporate rich electronic health record data.
Author(s): Carrell, David S, Floyd, James S, Gruber, Susan, Hazlehurst, Brian L, Heagerty, Patrick J, Nelson, Jennifer C, Williamson, Brian D, Ball, Robert
DOI: 10.1093/jamia/ocae121
To use workflow execution models to highlight new considerations for patient-centered clinical decision support policies (PC CDS), processes, procedures, technology, and expertise required to support new workflows.
Author(s): Sittig, Dean F, Boxwala, Aziz, Wright, Adam, Zott, Courtney, Gauthreaux, Nicole A, Swiger, James, Lomotan, Edwin A, Dullabh, Prashila
DOI: 10.1093/jamia/ocae138
The current medical paradigm of evidence-based medicine relies on clinical guidelines derived from randomized clinical trials (RCTs), but these guidelines often overlook individual variations in treatment effects. Approaches have been proposed to develop models predicting the effects of individualized management, such as predictive allocation, individualizing treatment allocation. It is currently unknown whether widespread implementation of predictive allocation could result in better population-level outcomes over guideline-based therapy. We sought to simulate [...]
Author(s): Jacquemyn, Xander, Van den Eynde, Jef, Chinni, Bhargava K, Danford, David M, Kutty, Shelby, Manlhiot, Cedric
DOI: 10.1093/jamia/ocae136
Develop a novel technique to identify an optimal number of regression units corresponding to a single risk point, while creating risk scoring systems from logistic regression-based disease predictive models. The optimal value of this hyperparameter balances simplicity and accuracy, yielding risk scores of small scale and high accuracy for patient risk stratification.
Author(s): Lu, Yajun, Duong, Thanh, Miao, Zhuqi, Thieu, Thanh, Lamichhane, Jivan, Ahmed, Abdulaziz, Delen, Dursun
DOI: 10.1093/jamia/ocae140
To identify impacts of different survey methodologies assessing primary care physicians' (PCPs') experiences with electronic health records (EHRs), we compared three surveys: the 2022 Continuous Certification Questionnaire (CCQ) from the American Board of Family Medicine, the 2022 University of California San Francisco (UCSF) Physician Health IT Survey, and the 2021 National Electronic Health Records Survey (NEHRS).
Author(s): Hendrix, Nathaniel, Maisel, Natalya, Everson, Jordan, Patel, Vaishali, Bazemore, Andrew, Rotenstein, Lisa S, Holmgren, A Jay, Krist, Alex H, Adler-Milstein, Julia, Phillips, Robert L
DOI: 10.1093/jamia/ocae148
Over the past 30 years, the American Medical Informatics Association (AMIA) has played a pivotal role in fostering a collaborative community for professionals in biomedical and health informatics. As an interdisciplinary association, AMIA brings together individuals with clinical, research, and computer expertise and emphasizes the use of data to enhance biomedical research and clinical work. The need for a recognition program within AMIA, acknowledging applied informatics skills by members, led [...]
Author(s): Heermann Langford, Laura, Fultz Hollis, Kate, Edmunds, Margo, McCoy, Allison B, Hall, Eric S, Nielson, Jeffrey A, Rosetti, Sarah Collins
DOI: 10.1055/s-0044-1788658
Millions of Americans manage their health care with the help of a trusted individual. Shared access to a patient's online patient portal is one tool that can assist their care partner(s) in gaining access to the patient's health information and allow for easy exchange with the patient's care team. Shared access provides care partners with a validated and secure method for accessing the patient's portal account using their own login [...]
Author(s): Wachenheim, Deborah, Hurwitz, Isabel, Dukhanin, Vadim, Wolff, Jennifer L, DesRoches, Catherine M
DOI: 10.1055/a-2370-2220