Issues to consider with electronic consultations.
Author(s): Winchester, David E
DOI: 10.1093/jamia/ocaa043
Author(s): Winchester, David E
DOI: 10.1093/jamia/ocaa043
The goal of this study was to explore whether features of recorded and transcribed audio communication data extracted by machine learning algorithms can be used to train a classifier for anxiety.
Author(s): Demiris, George, Corey Magan, Kristin L, Parker Oliver, Debra, Washington, Karla T, Chadwick, Chad, Voigt, Jeffrey D, Brotherton, Sam, Naylor, Mary D
DOI: 10.1093/jamia/ocaa049
The use of real-world evidence for health care research and evaluation is growing. Mobile health apps have often-overlooked potential to contribute valuable real-world data that are not captured by other sources and could provide data that are more cost-effective and generalizable than can randomized controlled trials. However, there are several challenges that must be overcome to realize the potential value of patient-used mobile health app real-world data, including data quality [...]
Author(s): Milne-Ives, Madison, van Velthoven, Michelle Helena, Meinert, Edward
DOI: 10.1093/jamia/ocaa036
Natural language processing (NLP) plays a vital role in modern medical informatics. It converts narrative text or unstructured data into knowledge by analyzing and extracting concepts. A comprehensive lexical system is the foundation to the success of NLP applications and an essential component at the beginning of the NLP pipeline. The SPECIALIST Lexicon and Lexical Tools, distributed by the National Library of Medicine as one of the Unified Medical Language [...]
Author(s): Lu, Chris J, Payne, Amanda, Mork, James G
DOI: 10.1093/jamia/ocaa056
Author(s): Bakken, Suzanne, Alexander, Gregory
DOI: 10.1093/jamia/ocaa046
Accurate documentation in the medical record is essential for quality care; extensive documentation is required for reimbursement. At times, these 2 imperatives conflict. We explored the concordance of information documented in the medical record with a gold standard measure.
Author(s): Weiner, Saul J, Wang, Shiyuan, Kelly, Brendan, Sharma, Gunjan, Schwartz, Alan
DOI: 10.1093/jamia/ocaa027
Computerized clinical decision support systems (CCDSSs) promise improvements in care quality; however, uptake is often suboptimal. We sought to characterize system use, its predictors, and user feedback for the Electronic Asthma Management System (eAMS)-an electronic medical record system-integrated, point-of-care CCDSS for asthma-and applied the GUIDES checklist as a framework to identify areas for improvement.
Author(s): Lam Shin Cheung, Jeffrey, Paolucci, Natalie, Price, Courtney, Sykes, Jenna, Gupta, Samir, ,
DOI: 10.1093/jamia/ocaa019
While electronic health record (EHR) systems store copious amounts of patient data, aggregating those data across patients can be challenging. Visual analytic tools that integrate with EHR systems allow clinicians to gain better insight and understanding into clinical care and management. We report on our experience building Tableau-based visualizations and integrating them into our EHR system.
Author(s): Stirling, Andrew, Tubb, Tracy, Reiff, Emily S, Grotegut, Chad A, Gagnon, Jennifer, Li, Weiyi, Bradley, Gail, Poon, Eric G, Goldstein, Benjamin A
DOI: 10.1093/jamia/ocaa016
The purpose of this study was to examine the use of multiple mobile health technologies to generate and transmit data from diverse patients with type 2 diabetes mellitus (T2DM) in between clinic visits. We examined the data to identify patterns that describe characteristics of patients for clinical insights.
Author(s): Shaw, Ryan J, Yang, Q, Barnes, A, Hatch, D, Crowley, M J, Vorderstrasse, A, Vaughn, J, Diane, A, Lewinski, A A, Jiang, M, Stevenson, J, Steinberg, D
DOI: 10.1093/jamia/ocaa007
Patients increasingly use patient-reported outcomes (PROs) to self-monitor their health status. Visualizing PROs longitudinally (over time) could help patients interpret and contextualize their PROs. The study sought to assess hospitalized patients' objective comprehension (primary outcome) of text-only, non-graph, and graph visualizations that display longitudinal PROs.
Author(s): Reading Turchioe, Meghan, Grossman, Lisa V, Myers, Annie C, Baik, Dawon, Goyal, Parag, Masterson Creber, Ruth M
DOI: 10.1093/jamia/ocz217