Building the evidence base on health information technology-related clinician burnout: a response to impact of health information technology on burnout remains unknown-for now.
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocz078
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocz078
The study sought to identify barriers to and facilitators of point-of-care information seeking and use of knowledge resources.
Author(s): Aakre, Christopher A, Maggio, Lauren A, Fiol, Guilherme Del, Cook, David A
DOI: 10.1093/jamia/ocz065
Clinical decision support systems (CDSS) implementing clinical practice guidelines (CPGs) have 2 main limitations: they target only patients for whom CPGs provide explicit recommendations, and their rationale may be difficult to understand. These 2 limitations result in poor CDSS adoption. We designed AntibioHelp® as a CDSS for antibiotic treatment. It displays the recommended and nonrecommended antibiotics, together with their properties, weighted by degree of importance as outlined in the CPGs [...]
Author(s): Tsopra, Rosy, Sedki, Karima, Courtine, Mélanie, Falcoff, Hector, De Beco, Antoine, Madar, Ronni, Mechaï, Frédéric, Lamy, Jean-Baptiste
DOI: 10.1093/jamia/ocz057
This study aimed to develop a novel, regulatory-compliant approach for openly exposing integrated clinical and environmental exposures data: the Integrated Clinical and Environmental Exposures Service (ICEES).
Author(s): Fecho, Karamarie, Pfaff, Emily, Xu, Hao, Champion, James, Cox, Steve, Stillwell, Lisa, Peden, David B, Bizon, Chris, Krishnamurthy, Ashok, Tropsha, Alexander, Ahalt, Stanley C
DOI: 10.1093/jamia/ocz042
We assess working relationships and collaborations within and between diabetes health care provider teams using social network analysis and a multi-scale community detection.
Author(s): Ostovari, Mina, Steele-Morris, Charlotte-Joy, Griffin, Paul M, Yu, Denny
DOI: 10.1093/jamia/ocz022
Identifying drug discontinuation (DDC) events and understanding their reasons are important for medication management and drug safety surveillance. Structured data resources are often incomplete and lack reason information. In this article, we assessed the ability of natural language processing (NLP) systems to unlock DDC information from clinical narratives automatically.
Author(s): Liu, Feifan, Pradhan, Richeek, Druhl, Emily, Freund, Elaine, Liu, Weisong, Sauer, Brian C, Cunningham, Fran, Gordon, Adam J, Peters, Celena B, Yu, Hong
DOI: 10.1093/jamia/ocz048
The objective of this study was to assess the potential of combining graph learning methods with latent variable estimation methods for mining clinically useful information from observational clinical data sets.
Author(s): Kummerfeld, Erich, Rix, Alexander, Anker, Justin J, Kushner, Matt G
DOI: 10.1093/jamia/ocz034
To assess measurement practice in clinical decision support evaluation studies.
Author(s): Scott, Philip J, Brown, Angela W, Adedeji, Taiwo, Wyatt, Jeremy C, Georgiou, Andrew, Eisenstein, Eric L, Friedman, Charles P
DOI: 10.1093/jamia/ocz035
The study sought to develop a criteria-based scoring tool for assessing drug-disease knowledge base content and creation of a subset and to implement the subset across multiple Kaiser Permanente (KP) regions.
Author(s): Bubp, Jeff L, Park, Michelle A, Kapusnik-Uner, Joan, Dang, Thong, Matuszewski, Karl, Ly, Don, Chiang, Kevin, Shia, Sek, Hoberman, Brian
DOI: 10.1093/jamia/ocz020
Author-centric analyses of fast-growing biomedical reference databases are challenging due to author ambiguity. This problem has been mainly addressed through author disambiguation using supervised machine-learning algorithms. Such algorithms, however, require adequately designed gold standards that reflect the reference database properly. In this study we used MEDLINE to build the first unbiased gold standard in a reference database and improve over the existing state of the art in author disambiguation.
Author(s): Vishnyakova, Dina, Rodriguez-Esteban, Raul, Rinaldi, Fabio
DOI: 10.1093/jamia/ocz028