Corrigendum to: Real world evidence in cardiovascular medicine: assuring data validity in electronic health record-based studies.
Author(s):
DOI: 10.1093/jamia/ocz184
Author(s):
DOI: 10.1093/jamia/ocz184
Enhanced Recovery after Surgery (ERAS) pathways have been shown to reduce length of stay, but there have been limited evaluations of novel electronic health record (EHR)-based pathways. Compliance with ERAS in real-world settings has been problematic.
Author(s): Austrian, Jonathan S, Volpicelli, Frank, Jones, Simon, Bernstein, Mitchell A, Padikkala, Jane, Bagheri, Ashley, Blecker, Saul
DOI: 10.1055/s-0039-1701004
Availability of patient-specific image data, gathered from preoperatively conducted studies, like computed tomography scans and magnetic resonance imaging studies, during a surgical procedure is a key factor for surgical success and patient safety. Several alternative input methods, including recognition of hand gestures, have been proposed for surgeons to interact with medical image viewers during an operation. Previous studies pointed out the need for usability evaluation of these systems.
Author(s): Bockhacker, Markus, Syrek, Hannah, Elstermann von Elster, Max, Schmitt, Sebastian, Roehl, Henning
DOI: 10.1055/s-0039-1701003
This article aims to evaluate adult type 1 diabetes mellitus (T1DM) self-management behaviors (SMBs) related to exercise and alcohol on a survey versus a smartphone app to compare self-reported and self-tracked SMBs, and examine inter- and intrapatient variability.
Author(s): Karway, George, Grando, Maria Adela, Grimm, Kevin, Groat, Danielle, Cook, Curtiss, Thompson, Bithika
DOI: 10.1055/s-0039-1701002
Preventable adverse events continue to be a threat to hospitalized patients. Clinical decision support in the form of dashboards may improve compliance with evidence-based safety practices. However, limited research describes providers' experiences with dashboards integrated into vendor electronic health record (EHR) systems.
Author(s): Bersani, Kerrin, Fuller, Theresa E, Garabedian, Pamela, Espares, Jenzel, Mlaver, Eli, Businger, Alexandra, Chang, Frank, Boxer, Robert B, Schnock, Kumiko O, Rozenblum, Ronen, Dykes, Patricia C, Dalal, Anuj K, Benneyan, James C, Lehmann, Lisa S, Gershanik, Esteban F, Bates, David W, Schnipper, Jeffrey L
DOI: 10.1055/s-0039-3402756
Electronic health record (EHR) alert fatigue, while widely recognized as a concern nationally, lacks a corresponding comprehensive mitigation plan.
Author(s): McGreevey, John D, Mallozzi, Colleen P, Perkins, Randa M, Shelov, Eric, Schreiber, Richard
DOI: 10.1055/s-0039-3402715
Phenotyping patients using electronic health record (EHR) data conventionally requires labeled cases and controls. Assigning labels requires manual medical chart review and therefore is labor intensive. For some phenotypes, identifying gold-standard controls is prohibitive. We developed an accurate EHR phenotyping approach that does not require labeled controls.
Author(s): Zhang, Lingjiao, Ding, Xiruo, Ma, Yanyuan, Muthu, Naveen, Ajmal, Imran, Moore, Jason H, Herman, Daniel S, Chen, Jinbo
DOI: 10.1093/jamia/ocz170
An adverse drug event (ADE) refers to an injury resulting from medical intervention related to a drug including harm caused by drugs or from the usage of drugs. Extracting ADEs from clinical records can help physicians associate adverse events to targeted drugs.
Author(s): Dai, Hong-Jie, Su, Chu-Hsien, Wu, Chi-Shin
DOI: 10.1093/jamia/ocz120
This article describes an ensembling system to automatically extract adverse drug events and drug related entities from clinical narratives, which was developed for the 2018 n2c2 Shared Task Track 2.
Author(s): Ju, Meizhi, Nguyen, Nhung T H, Miwa, Makoto, Ananiadou, Sophia
DOI: 10.1093/jamia/ocz075
Accurate and complete information about medications and related information is crucial for effective clinical decision support and precise health care. Recognition and reduction of adverse drug events is also central to effective patient care. The goal of this research is the development of a natural language processing (NLP) system to automatically extract medication and adverse drug event information from electronic health records. This effort was part of the 2018 n2c2 [...]
Author(s): Kim, Youngjun, Meystre, Stéphane M
DOI: 10.1093/jamia/ocz100