Response to "Impact of HIT on burnout remains unknown - for now".
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
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
Automated clinical phenotyping is challenging because word-based features quickly turn it into a high-dimensional problem, in which the small, privacy-restricted, training datasets might lead to overfitting. Pretrained embeddings might solve this issue by reusing input representation schemes trained on a larger dataset. We sought to evaluate shallow and deep learning text classifiers and the impact of pretrained embeddings in a small clinical dataset.
Author(s): Oleynik, Michel, Kugic, Amila, Kasáč, Zdenko, Kreuzthaler, Markus
DOI: 10.1093/jamia/ocz149
Electronic health records linked with biorepositories are a powerful platform for translational studies. A major bottleneck exists in the ability to phenotype patients accurately and efficiently. The objective of this study was to develop an automated high-throughput phenotyping method integrating International Classification of Diseases (ICD) codes and narrative data extracted using natural language processing (NLP).
Author(s): Liao, Katherine P, Sun, Jiehuan, Cai, Tianrun A, Link, Nicholas, Hong, Chuan, Huang, Jie, Huffman, Jennifer E, Gronsbell, Jessica, Zhang, Yichi, Ho, Yuk-Lam, Castro, Victor, Gainer, Vivian, Murphy, Shawn N, O'Donnell, Christopher J, Gaziano, J Michael, Cho, Kelly, Szolovits, Peter, Kohane, Isaac S, Yu, Sheng, Cai, Tianxi
DOI: 10.1093/jamia/ocz066
Track 1 of the 2018 National NLP Clinical Challenges shared tasks focused on identifying which patients in a corpus of longitudinal medical records meet and do not meet identified selection criteria.
Author(s): Stubbs, Amber, Filannino, Michele, Soysal, Ergin, Henry, Samuel, Uzuner, Özlem
DOI: 10.1093/jamia/ocz163
The goal of the 2018 n2c2 shared task on cohort selection for clinical trials (track 1) is to identify which patients meet the selection criteria for clinical trials. Cohort selection is a particularly demanding task to which natural language processing and deep learning can make a valuable contribution. Our goal is to evaluate several deep learning architectures to deal with this task.
Author(s): Segura-Bedmar, Isabel, Raez, Pablo
DOI: 10.1093/jamia/ocz139
We sought to investigate the experiences of general practitioners (GPs) with an electronic decision support tool to reduce inappropriate polypharmacy in older patients (the PRIMA-eDS [Polypharmacy in chronic diseases: Reduction of Inappropriate Medication and Adverse drug events in older populations by electronic Decision Support] tool) in a multinational sample of GPs and to quantify the findings from a prior qualitative study on the PRIMA-eDS-tool.
Author(s): Rieckert, Anja, Teichmann, Anne-Lisa, Drewelow, Eva, Kriechmayr, Celine, Piccoliori, Giuliano, Woodham, Adrine, Sönnichsen, Andreas
DOI: 10.1093/jamia/ocz104
Prospective enrollment of research subjects in the fast-paced emergency department (ED) is challenging. We sought to develop a software application to increase real-time clinical trial enrollment during an ED visit. The Prospective Intelligence System for Clinical Emergency Services (PISCES) scans the electronic health record during ED encounters for preselected clinical characteristics of potentially eligible study participants and notifies the treating physician via mobile phone text alerts. PISCES alerts began 3 [...]
Author(s): Simon, Laura E, Rauchwerger, Adina S, Chettipally, Uli K, Babakhanian, Leon, Vinson, David R, Warton, E Margaret, Reed, Mary E, Kharbanda, Anupam B, Kharbanda, Elyse O, Ballard, Dustin W
DOI: 10.1093/jamia/ocz118
With growing availability of digital health data and technology, health-related studies are increasingly augmented or implemented using real world data (RWD). Recent federal initiatives promote the use of RWD to make clinical assertions that influence regulatory decision-making. Our objective was to determine whether traditional real world evidence (RWE) techniques in cardiovascular medicine achieve accuracy sufficient for credible clinical assertions, also known as "regulatory-grade" RWE.
Author(s): Hernandez-Boussard, Tina, Monda, Keri L, Crespo, Blai Coll, Riskin, Dan
DOI: 10.1093/jamia/ocz119
Complaints about electronic health records, including information overload, note bloat, and alert fatigue, are frequent topics of discussion. Despite substantial effort by researchers and industry, complaints continue noting serious adverse effects on patient safety and clinician quality of life. I believe solutions are possible if we can add information to the record that explains the "why" of a patient's care, such as relationships between symptoms, physical findings, diagnostic results, differential [...]
Author(s): Cimino, James J
DOI: 10.1093/jamia/ocz125
In this era of digitized health records, there has been a marked interest in using de-identified patient records for conducting various health related surveys. To assist in this research effort, we developed a novel clinical data representation model entitled medical knowledge-infused convolutional neural network (MKCNN), which is used for learning the clinical trial criteria eligibility status of patients to participate in cohort studies.
Author(s): Chen, Chi-Jen, Warikoo, Neha, Chang, Yung-Chun, Chen, Jin-Hua, Hsu, Wen-Lian
DOI: 10.1093/jamia/ocz128