Correction to: Evaluation of crowdsourced mortality prediction models as a framework for assessing artificial intelligence in medicine.
Author(s):
DOI: 10.1093/jamia/ocae219
Author(s):
DOI: 10.1093/jamia/ocae219
Patients with chronic illnesses, including kidney disease, consider their sense of normalcy when evaluating their health. Although this concept is a key indicator of their self-determined well-being, they struggle to understand if their experience is typical. To address this challenge, we set out to explore how to design personal health visualizations that aid participants in better understanding their experiences post-transplant, identifying barriers to normalcy, and achieving their desired medical outcomes.
Author(s): Jeffs, Lily V, Dunbar, Julia C, Syed, Sanaa, Ng, Chelsea, Pollack, Ari H
DOI: 10.1093/jamia/ocae206
To understand the landscape of privacy preserving record linkage (PPRL) applications in public health, assess estimates of PPRL accuracy and privacy, and evaluate factors for PPRL adoption.
Author(s): Pathak, Aditi, Serrer, Laina, Zapata, Daniela, King, Raymond, Mirel, Lisa B, Sukalac, Thomas, Srinivasan, Arunkumar, Baier, Patrick, Bhalla, Meera, David-Ferdon, Corinne, Luxenberg, Steven, Gundlapalli, Adi V
DOI: 10.1093/jamia/ocae196
Artificial intelligence (AI) models trained using medical images for clinical tasks often exhibit bias in the form of subgroup performance disparities. However, since not all sources of bias in real-world medical imaging data are easily identifiable, it is challenging to comprehensively assess their impacts. In this article, we introduce an analysis framework for systematically and objectively investigating the impact of biases in medical images on AI models.
Author(s): Stanley, Emma A M, Souza, Raissa, Winder, Anthony J, Gulve, Vedant, Amador, Kimberly, Wilms, Matthias, Forkert, Nils D
DOI: 10.1093/jamia/ocae165
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
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
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
Well-designed electronic health records (EHRs) training programs for clinical practice are known to be valuable. Training programs should be role-specific and there is a need to identify key implementation factors of EHR training programs for nurses. This scoping review (1) characterizes the EHR training programs used and (2) identifies their implementation facilitators and barriers.
Author(s): Nguyen, Oliver T, Vo, Steven D, Lee, Taeheon, Cato, Kenrick D, Cho, Hwayoung
DOI: 10.1093/jamia/ocae228
In acupuncture therapy, the accurate location of acupoints is essential for its effectiveness. The advanced language understanding capabilities of large language models (LLMs) like Generative Pre-trained Transformers (GPTs) and Llama present a significant opportunity for extracting relations related to acupoint locations from textual knowledge sources. This study aims to explore the performance of LLMs in extracting acupoint-related location relations and assess the impact of fine-tuning on GPT's performance.
Author(s): Li, Yiming, Peng, Xueqing, Li, Jianfu, Zuo, Xu, Peng, Suyuan, Pei, Donghong, Tao, Cui, Xu, Hua, Hong, Na
DOI: 10.1093/jamia/ocae233
Conventional physical activity (PA) metrics derived from wearable sensors may not capture the cumulative, transitions from sedentary to active, and multidimensional patterns of PA, limiting the ability to predict physical function impairment (PFI) in older adults. This study aims to identify unique temporal patterns and develop novel digital biomarkers from wrist accelerometer data for predicting PFI and its subtypes using explainable artificial intelligence techniques.
Author(s): Fan, Lingjie, Zhao, Junhan, Hu, Yao, Zhang, Junjie, Wang, Xiyue, Wang, Fengyi, Wu, Mengyi, Lin, Tao
DOI: 10.1093/jamia/ocae224