EBMonFHIR-based tools and initiatives to support clinical research.
Author(s): Alper, Brian S
DOI: 10.1093/jamia/ocac193
Author(s): Alper, Brian S
DOI: 10.1093/jamia/ocac193
The coronavirus disease 2019 (COVID-19) pandemic has demonstrated the value of real-world data for public health research. International federated analyses are crucial for informing policy makers. Common data models (CDMs) are critical for enabling these studies to be performed efficiently. Our objective was to convert the UK Biobank, a study of 500 000 participants with rich genetic and phenotypic data to the Observational Medical Outcomes Partnership (OMOP) CDM.
Author(s): Papez, Vaclav, Moinat, Maxim, Voss, Erica A, Bazakou, Sofia, Van Winzum, Anne, Peviani, Alessia, Payralbe, Stefan, Kallfelz, Michael, Asselbergs, Folkert W, Prieto-Alhambra, Daniel, Dobson, Richard J B, Denaxas, Spiros
DOI: 10.1093/jamia/ocac203
Electronic health record audit logs capture a time-sequenced record of clinician activities while using the system. Audit log data therefore facilitate unobtrusive measurement at scale of clinical work activities and workflow as well as derivative, behavioral proxies (eg, teamwork). Given its considerable research potential, studies leveraging these data have burgeoned. As the field has matured, the challenges of using the data to answer significant research questions have come into focus [...]
Author(s): Kannampallil, Thomas, Adler-Milstein, Julia
DOI: 10.1093/jamia/ocac173
How to deliver best care in various clinical settings remains a vexing problem. All pertinent healthcare-related questions have not, cannot, and will not be addressable with costly time- and resource-consuming controlled clinical trials. At present, evidence-based guidelines can address only a small fraction of the types of care that clinicians deliver. Furthermore, underserved areas rarely can access state-of-the-art evidence-based guidelines in real-time, and often lack the wherewithal to implement advanced [...]
Author(s): Morris, Alan H, Horvat, Christopher, Stagg, Brian, Grainger, David W, Lanspa, Michael, Orme, James, Clemmer, Terry P, Weaver, Lindell K, Thomas, Frank O, Grissom, Colin K, Hirshberg, Ellie, East, Thomas D, Wallace, Carrie Jane, Young, Michael P, Sittig, Dean F, Suchyta, Mary, Pearl, James E, Pesenti, Antinio, Bombino, Michela, Beck, Eduardo, Sward, Katherine A, Weir, Charlene, Phansalkar, Shobha, Bernard, Gordon R, Thompson, B Taylor, Brower, Roy, Truwit, Jonathon, Steingrub, Jay, Hiten, R Duncan, Willson, Douglas F, Zimmerman, Jerry J, Nadkarni, Vinay, Randolph, Adrienne G, Curley, Martha A Q, Newth, Christopher J L, Lacroix, Jacques, Agus, Michael S D, Lee, Kang Hoe, deBoisblanc, Bennett P, Moore, Frederick Alan, Evans, R Scott, Sorenson, Dean K, Wong, Anthony, Boland, Michael V, Dere, Willard H, Crandall, Alan, Facelli, Julio, Huff, Stanley M, Haug, Peter J, Pielmeier, Ulrike, Rees, Stephen E, Karbing, Dan S, Andreassen, Steen, Fan, Eddy, Goldring, Roberta M, Berger, Kenneth I, Oppenheimer, Beno W, Ely, E Wesley, Pickering, Brian W, Schoenfeld, David A, Tocino, Irena, Gonnering, Russell S, Pronovost, Peter J, Savitz, Lucy A, Dreyfuss, Didier, Slutsky, Arthur S, Crapo, James D, Pinsky, Michael R, James, Brent, Berwick, Donald M
DOI: 10.1093/jamia/ocac143
To develop and test an accurate deep learning model for predicting new onset delirium in hospitalized adult patients.
Author(s): Liu, Siru, Schlesinger, Joseph J, McCoy, Allison B, Reese, Thomas J, Steitz, Bryan, Russo, Elise, Koh, Brian, Wright, Adam
DOI: 10.1093/jamia/ocac210
Distributed learning avoids problems associated with central data collection by training models locally at each site. This can be achieved by federated learning (FL) aggregating multiple models that were trained in parallel or training a single model visiting sites sequentially, the traveling model (TM). While both approaches have been applied to medical imaging tasks, their performance in limited local data scenarios remains unknown. In this study, we specifically analyze FL [...]
Author(s): Souza, Raissa, Mouches, Pauline, Wilms, Matthias, Tuladhar, Anup, Langner, Sönke, Forkert, Nils D
DOI: 10.1093/jamia/ocac204
Examine whether distribution of tablets to patients with access barriers influences their adoption and use of patient portals.
Author(s): Griffin, Ashley C, Troszak, Lara K, Van Campen, James, Midboe, Amanda M, Zulman, Donna M
DOI: 10.1093/jamia/ocac195
To evaluate and understand pregnant patients' perspectives on the implementation of artificial intelligence (AI) in clinical care with a focus on opportunities to improve healthcare technologies and healthcare delivery.
Author(s): Armero, William, Gray, Kathryn J, Fields, Kara G, Cole, Naida M, Bates, David W, Kovacheva, Vesela P
DOI: 10.1093/jamia/ocac200
Clinical informatics remains underappreciated among medical students in part due to a lack of integration into undergraduate medical education (UME). New developments in the study and practice of medicine are traditionally introduced via formal integration into undergraduate medical curricula. While this path has certain advantages, curricular changes are slow and may fail to showcase the breadth of clinical informatics activities. Less formal and more flexible approaches can circumvent these drawbacks [...]
Author(s): Quach, William T, Le, Chi H, Clark, Michael G, McArthur, Evonne, Ancker, Jessica S, Gadd, Cynthia S, Johnson, Kevin B
DOI: 10.1093/jamia/ocac189
Author(s): Petersen, Carolyn, Berner, Eta S, Cardillo, Anthony, Fultz Hollis, Kate, Goodman, Kenneth W, Koppel, Ross, Korngiebel, Diane M, Lehmann, Christoph U, Solomonides, Anthony E, Subbian, Vignesh
DOI: 10.1093/jamia/ocac192