Alert acceptance: are all acceptance rates the same?
Author(s): Kannry, Joseph
DOI: 10.1093/jamia/ocad151
Author(s): Kannry, Joseph
DOI: 10.1093/jamia/ocad151
Patient-clinician communication provides valuable explicit and implicit information that may indicate adverse medical conditions and outcomes. However, practical and analytical approaches for audio-recording and analyzing this data stream remain underexplored. This study aimed to 1) analyze patients' and nurses' speech in audio-recorded verbal communication, and 2) develop machine learning (ML) classifiers to effectively differentiate between patient and nurse language.
Author(s): Zolnoori, Maryam, Vergez, Sasha, Sridharan, Sridevi, Zolnour, Ali, Bowles, Kathryn, Kostic, Zoran, Topaz, Maxim
DOI: 10.1093/jamia/ocad139
Alzheimer's disease (AD) is a progressive neurological disorder with no specific curative medications. Sophisticated clinical skills are crucial to optimize treatment regimens given the multiple coexisting comorbidities in the patient population.
Author(s): Bhattarai, Kritib, Rajaganapathy, Sivaraman, Das, Trisha, Kim, Yejin, Chen, Yongbin, , , , , Dai, Qiying, Li, Xiaoyang, Jiang, Xiaoqian, Zong, Nansu
DOI: 10.1093/jamia/ocad135
To assess large language models on their ability to accurately infer cancer disease response from free-text radiology reports.
Author(s): Tan, Ryan Shea Ying Cong, Lin, Qian, Low, Guat Hwa, Lin, Ruixi, Goh, Tzer Chew, Chang, Christopher Chu En, Lee, Fung Fung, Chan, Wei Yin, Tan, Wei Chong, Tey, Han Jieh, Leong, Fun Loon, Tan, Hong Qi, Nei, Wen Long, Chay, Wen Yee, Tai, David Wai Meng, Lai, Gillianne Geet Yi, Cheng, Lionel Tim-Ee, Wong, Fuh Yong, Chua, Matthew Chin Heng, Chua, Melvin Lee Kiang, Tan, Daniel Shao Weng, Thng, Choon Hua, Tan, Iain Bee Huat, Ng, Hwee Tou
DOI: 10.1093/jamia/ocad133
The COVID-19 pandemic was associated with significant changes to the delivery of ambulatory care, including a dramatic increase in patient messages to physicians. While asynchronous messaging is a valuable communication modality for patients, a greater volume of patient messages is associated with burnout and decreased well-being for physicians. Given that women physicians experienced greater electronic health record (EHR) burden and received more patient messages pre-pandemic, there is concern that COVID [...]
Author(s): Rotenstein, Lisa, Jay Holmgren, A
DOI: 10.1093/jamia/ocad141
Incorporating artificial intelligence (AI) into clinics brings the risk of automation bias, which potentially misleads the clinician's decision-making. The purpose of this study was to propose a potential strategy to mitigate automation bias.
Author(s): Wang, Ding-Yu, Ding, Jia, Sun, An-Lan, Liu, Shang-Gui, Jiang, Dong, Li, Nan, Yu, Jia-Kuo
DOI: 10.1093/jamia/ocad118
Author(s): McCoy, Allison B, Russo, Elise M, Wright, Adam
DOI: 10.1093/jamia/ocad150
This article reports on the alignment between the foundational domains and the delineation of practice (DoP) for health informatics, both developed by the American Medical Informatics Association (AMIA). Whereas the foundational domains guide graduate-level curriculum development and accreditation assessment, providing an educational pathway to the minimum competencies needed as a health informatician, the DoP defines the domains, tasks, knowledge, and skills that a professional needs to competently perform in the [...]
Author(s): Johnson, Todd R, Berner, Eta S, Feldman, Sue S, Jones, Josette, Valenta, Annette L, Borbolla, Damian, Deckard, Gloria, Manos, LaVerne
DOI: 10.1093/jamia/ocad146
Physicians of all specialties experienced unprecedented stressors during the COVID-19 pandemic, exacerbating preexisting burnout. We examine burnout's association with perceived and actionable electronic health record (EHR) workload factors and personal, professional, and organizational characteristics with the goal of identifying levers that can be targeted to address burnout.
Author(s): Tai-Seale, Ming, Baxter, Sally, Millen, Marlene, Cheung, Michael, Zisook, Sidney, Çelebi, Julie, Polston, Gregory, Sun, Bryan, Gross, Erin, Helsten, Teresa, Rosen, Rebecca, Clay, Brian, Sinsky, Christine, Ziedonis, Douglas M, Longhurst, Christopher A, Savides, Thomas J
DOI: 10.1093/jamia/ocad136
Little is known about proactive risk assessment concerning emergency department (ED) visits and hospitalizations in patients with heart failure (HF) who receive home healthcare (HHC) services. This study developed a time series risk model for predicting ED visits and hospitalizations in patients with HF using longitudinal electronic health record data. We also explored which data sources yield the best-performing models over various time windows.
Author(s): Chae, Sena, Davoudi, Anahita, Song, Jiyoun, Evans, Lauren, Hobensack, Mollie, Bowles, Kathryn H, McDonald, Margaret V, Barrón, Yolanda, Rossetti, Sarah Collins, Cato, Kenrick, Sridharan, Sridevi, Topaz, Maxim
DOI: 10.1093/jamia/ocad129