Reflections on interactive visualization of electronic health records: past, present, future.
Author(s): Arleo, Alessio, Chen, Annie T, Gotz, David, Kandaswamy, Swaminathan, Bernard, Jürgen
DOI: 10.1093/jamia/ocae249
Author(s): Arleo, Alessio, Chen, Annie T, Gotz, David, Kandaswamy, Swaminathan, Bernard, Jürgen
DOI: 10.1093/jamia/ocae249
To reflect on the achievements of the Agency for Healthcare Research and Quality's (AHRQ) Digital Healthcare Research Program over the past 20 years, evaluate its impact on US healthcare quality and safety, and outline current and future priorities for digital healthcare research and innovation.
Author(s): Valdez, R Burciaga, Dymek, Christine, Chaney, Kevin, Lomotan, Edwin A
DOI: 10.1093/jamia/ocae251
This article describes the design and evaluation of MS Pattern Explorer, a novel visual tool that uses interactive machine learning to analyze fitness wearables' data. Applied to a clinical study of multiple sclerosis (MS) patients, the tool addresses key challenges: managing activity signals, accelerating insight generation, and rapidly contextualizing identified patterns. By analyzing sensor measurements, it aims to enhance understanding of MS symptomatology and improve the broader problem of clinical [...]
Author(s): Morgenshtern, Gabriela, Rutishauser, Yves, Haag, Christina, von Wyl, Viktor, Bernard, Jürgen
DOI: 10.1093/jamia/ocae230
Integrating artificial intelligence (AI) in healthcare settings has the potential to benefit clinical decision-making. Addressing challenges such as ensuring trustworthiness, mitigating bias, and maintaining safety is paramount. The lack of established methodologies for pre- and post-deployment evaluation of AI tools regarding crucial attributes such as transparency, performance monitoring, and adverse event reporting makes this situation challenging.
Author(s): Labkoff, Steven, Oladimeji, Bilikis, Kannry, Joseph, Solomonides, Anthony, Leftwich, Russell, Koski, Eileen, Joseph, Amanda L, Lopez-Gonzalez, Monica, Fleisher, Lee A, Nolen, Kimberly, Dutta, Sayon, Levy, Deborah R, Price, Amy, Barr, Paul J, Hron, Jonathan D, Lin, Baihan, Srivastava, Gyana, Pastor, Nuria, Luque, Unai Sanchez, Bui, Tien Thi Thuy, Singh, Reva, Williams, Tayler, Weiner, Mark G, Naumann, Tristan, Sittig, Dean F, Jackson, Gretchen Purcell, Quintana, Yuri
DOI: 10.1093/jamia/ocae209
Recently, deep learning medical image analysis in orthopedics has become highly active. However, progress has been restricted by the absence of large-scale and standardized ground-truth images. To the best of our knowledge, this study is the first to propose an innovative solution, namely a deep few-shot image augmentation pipeline, that addresses this challenge by synthetically generating knee radiographs for training downstream tasks, with a specific focus on knee osteoarthritis Kellgren-Lawrence [...]
Author(s): Littlefield, Nickolas, Amirian, Soheyla, Biehl, Jacob, Andrews, Edward G, Kann, Michael, Myers, Nicole, Reid, Leah, Yates, Adolph J, McGrory, Brian J, Parmanto, Bambang, Seyler, Thorsten M, Plate, Johannes F, Rashidi, Hooman H, Tafti, Ahmad P
DOI: 10.1093/jamia/ocae246
To explore home healthcare (HHC) clinicians' needs for Clinical Decision Support Systems (CDSS) information delivery for early risk warning within HHC workflows.
Author(s): Xu, Zidu, Evans, Lauren, Song, Jiyoun, Chae, Sena, Davoudi, Anahita, Bowles, Kathryn H, McDonald, Margaret V, Topaz, Maxim
DOI: 10.1093/jamia/ocae247
Unplanned readmissions following a hospitalization remain common despite significant efforts to curtail these. Wearable devices may offer help identify patients at high risk for an unplanned readmission.
Author(s): Nagarajan, Vishal, Shashikumar, Supreeth Prajwal, Malhotra, Atul, Nemati, Shamim, Wardi, Gabriel
DOI: 10.1093/jamia/ocae242
Accurate record linkage (RL) enables consolidation and de-duplication of data from disparate datasets, resulting in more comprehensive and complete patient data. However, conducting RL with low quality or unfit data can waste institutional resources on poor linkage results. We aim to evaluate data linkability to enhance the effectiveness of record linkage.
Author(s): Ong, Toan C, Hill, Andrew, Kahn, Michael G, Lembcke, Lauren R, Schilling, Lisa M, Grannis, Shaun J
DOI: 10.1093/jamia/ocae248
Clinical Data Warehouses (CDW) are the designated infrastructures to enable access and analysis of large quantities of electronic health record data. Building and managing such systems implies extensive "data work" and coordination between multiple stakeholders. Our study focuses on the challenges these stakeholders face when designing, operating, and ensuring the durability of CDWs for research.
Author(s): Priou, Sonia, Kempf, Emmanuelle, Jankovic, Marija, Lamé, Guillaume
DOI: 10.1093/jamia/ocae244
The objective of our research is to conduct a comprehensive review that aims to systematically map, describe, and summarize the current utilization of artificial intelligence (AI) in the recruitment and retention of participants in clinical trials.
Author(s): Lu, Xiaoran, Yang, Chen, Liang, Lu, Hu, Guanyu, Zhong, Ziyi, Jiang, Zihao
DOI: 10.1093/jamia/ocae243