Erratum to: The complex case of EHRs: examining the factors impacting the EHR user experience.
Author(s): Tutty, Michael A, Carlasare, Lindsey E, Lloyd, Stacy, Sinsky, Christine A
DOI: 10.1093/jamia/ocz129
Author(s): Tutty, Michael A, Carlasare, Lindsey E, Lloyd, Stacy, Sinsky, Christine A
DOI: 10.1093/jamia/ocz129
Active Learning (AL) attempts to reduce annotation cost (ie, time) by selecting the most informative examples for annotation. Most approaches tacitly (and unrealistically) assume that the cost for annotating each sample is identical. This study introduces a cost-aware AL method, which simultaneously models both the annotation cost and the informativeness of the samples and evaluates both via simulation and user studies.
Author(s): Wei, Qiang, Chen, Yukun, Salimi, Mandana, Denny, Joshua C, Mei, Qiaozhu, Lasko, Thomas A, Chen, Qingxia, Wu, Stephen, Franklin, Amy, Cohen, Trevor, Xu, Hua
DOI: 10.1093/jamia/ocz102
Clinical genome sequencing laboratories return reports containing clinical testing results, signed by a board-certified clinical geneticist, to the ordering physician. This report is often a PDF, but can also be a paper copy or a structured data file. The reports are frequently modified and reissued due to changes in variant interpretation or clinical attributes.
Author(s): Venner, Eric, Murugan, Mullai, Hale, Walker, Jones, Jordan M, Lu, Shan, Yi, Victoria, Gibbs, Richard A
DOI: 10.1093/jamia/ocz107
HIV infection risk can be estimated based on not only individual features but also social network information. However, there have been insufficient studies using n machine learning methods that can maximize the utility of such information. Leveraging a state-of-the-art network topology modeling method, graph convolutional networks (GCN), our main objective was to include network information for the task of detecting previously unknown HIV infections.
Author(s): Xiang, Yang, Fujimoto, Kayo, Schneider, John, Jia, Yuxi, Zhi, Degui, Tao, Cui
DOI: 10.1093/jamia/ocz070
The study sought to present the findings of a systematic review of studies involving secondary analyses of data coded with standardized nursing terminologies (SNTs) retrieved from electronic health records (EHRs).
Author(s): Macieira, Tamara G R, Chianca, Tania C M, Smith, Madison B, Yao, Yingwei, Bian, Jiang, Wilkie, Diana J, Dunn Lopez, Karen, Keenan, Gail M
DOI: 10.1093/jamia/ocz086
Clinical trials, prospective research studies on human participants carried out by a distributed team of clinical investigators, play a crucial role in the development of new treatments in health care. This is a complex and expensive process where investigators aim to enroll volunteers with predetermined characteristics, administer treatment(s), and collect safety and efficacy data. Therefore, choosing top-enrolling investigators is essential for efficient clinical trial execution and is 1 of the [...]
Author(s): Gligorijevic, Jelena, Gligorijevic, Djordje, Pavlovski, Martin, Milkovits, Elizabeth, Glass, Lucas, Grier, Kevin, Vankireddy, Praveen, Obradovic, Zoran
DOI: 10.1093/jamia/ocz064
Natural language processing (NLP) engines such as the clinical Text Analysis and Knowledge Extraction System are a solution for processing notes for research, but optimizing their performance for a clinical data warehouse remains a challenge. We aim to develop a high throughput NLP architecture using the clinical Text Analysis and Knowledge Extraction System and present a predictive model use case.
Author(s): Afshar, Majid, Dligach, Dmitriy, Sharma, Brihat, Cai, Xiaoyuan, Boyda, Jason, Birch, Steven, Valdez, Daniel, Zelisko, Suzan, Joyce, Cara, Modave, François, Price, Ron
DOI: 10.1093/jamia/ocz068
Author(s): Gardner, Dr Rebekah L, Cooper, Emily, Haskell, Jacqueline, Harris, Daniel A, Poplau, Sara, Kroth, Philip J, Linzer, Mark
DOI: 10.1093/jamia/ocz077
Identifying patients who meet selection criteria for clinical trials is typically challenging and time-consuming. In this article, we describe our clinical natural language processing (NLP) system to automatically assess patients' eligibility based on their longitudinal medical records. This work was part of the 2018 National NLP Clinical Challenges (n2c2) Shared-Task and Workshop on Cohort Selection for Clinical Trials.
Author(s): Chen, Long, Gu, Yu, Ji, Xin, Lou, Chao, Sun, Zhiyong, Li, Haodan, Gao, Yuan, Huang, Yang
DOI: 10.1093/jamia/ocz109
Neural network-based representations ("embeddings") have dramatically advanced natural language processing (NLP) tasks, including clinical NLP tasks such as concept extraction. Recently, however, more advanced embedding methods and representations (eg, ELMo, BERT) have further pushed the state of the art in NLP, yet there are no common best practices for how to integrate these representations into clinical tasks. The purpose of this study, then, is to explore the space of possible [...]
Author(s): Si, Yuqi, Wang, Jingqi, Xu, Hua, Roberts, Kirk
DOI: 10.1093/jamia/ocz096