Corrigendum to: Pharmacogenomic clinical decision support design and multi-site process outcomes analysis in the eMERGE Network.
Author(s):
DOI: 10.1093/jamia/ocz017
Author(s):
DOI: 10.1093/jamia/ocz017
This article reports results from a systematic literature review related to the evaluation of data visualizations and visual analytics technologies within the health informatics domain. The review aims to (1) characterize the variety of evaluation methods used within the health informatics community and (2) identify best practices.
Author(s): Wu, Danny T Y, Chen, Annie T, Manning, John D, Levy-Fix, Gal, Backonja, Uba, Borland, David, Caban, Jesus J, Dowding, Dawn W, Hochheiser, Harry, Kagan, Vadim, Kandaswamy, Swaminathan, Kumar, Manish, Nunez, Alexis, Pan, Eric, Gotz, David
DOI: 10.1093/jamia/ocy190
The study sought to describe patient-entered supplemental information on symptomatic adverse events (AEs) in cancer clinical research reported via a National Cancer Institute software system and examine the feasibility of mapping these entries to established terminologies.
Author(s): Chung, Arlene E, Shoenbill, Kimberly, Mitchell, Sandra A, Dueck, Amylou C, Schrag, Deborah, Bruner, Deborah W, Minasian, Lori M, St Germain, Diane, O'Mara, Ann M, Baumgartner, Paul, Rogak, Lauren J, Abernethy, Amy P, Griffin, Ashley C, Basch, Ethan M
DOI: 10.1093/jamia/ocy169
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocz016
Health information technology (HIT) interventions include electronic patient records, prescribing, and ordering systems. Clinical pathways are multidisciplinary plans of care that enable the delivery of evidence-based healthcare. Our objective was to systematically review the effects of implementing HIT-supported clinical pathways.
Author(s): Neame, Matthew T, Chacko, Jerry, Surace, Anna E, Sinha, Ian P, Hawcutt, Daniel B
DOI: 10.1093/jamia/ocy176
Existing approaches to managing genetic and genomic test results from external laboratories typically include filing of text reports within the electronic health record, making them unavailable in many cases for clinical decision support. Even when structured computable results are available, the lack of adopted standards requires considerations for processing the results into actionable knowledge, in addition to storage and management of the data. Here, we describe the design and implementation [...]
Author(s): Rasmussen, Luke V, Smith, Maureen E, Almaraz, Federico, Persell, Stephen D, Rasmussen-Torvik, Laura J, Pacheco, Jennifer A, Chisholm, Rex L, Christensen, Carl, Herr, Timothy M, Wehbe, Firas H, Starren, Justin B
DOI: 10.1093/jamia/ocy187
The study sought to review recent literature regarding use of speech recognition (SR) technology for clinical documentation and to understand the impact of SR on document accuracy, provider efficiency, institutional cost, and more.
Author(s): Blackley, Suzanne V, Huynh, Jessica, Wang, Liqin, Korach, Zfania, Zhou, Li
DOI: 10.1093/jamia/ocy179
Cohort definition is a bottleneck for conducting clinical research and depends on subjective decisions by domain experts. Data-driven cohort definition is appealing but requires substantial knowledge of terminologies and clinical data models. Criteria2Query is a natural language interface that facilitates human-computer collaboration for cohort definition and execution using clinical databases.
Author(s): Yuan, Chi, Ryan, Patrick B, Ta, Casey, Guo, Yixuan, Li, Ziran, Hardin, Jill, Makadia, Rupa, Jin, Peng, Shang, Ning, Kang, Tian, Weng, Chunhua
DOI: 10.1093/jamia/ocy178
Natural language processing (NLP) of symptoms from electronic health records (EHRs) could contribute to the advancement of symptom science. We aim to synthesize the literature on the use of NLP to process or analyze symptom information documented in EHR free-text narratives.
Author(s): Koleck, Theresa A, Dreisbach, Caitlin, Bourne, Philip E, Bakken, Suzanne
DOI: 10.1093/jamia/ocy173
Clinical research data warehouses are largely populated from information extracted from electronic health records (EHRs). While these data provide information about a patient's medications, laboratory results, diagnoses, and history, her social, economic, and environmental determinants of health are also major contributing factors in readmission, morbidity, and mortality and are often absent or unstructured in the EHR. Details about a patient's socioeconomic status may be found in the U.S. census. To [...]
Author(s): Gardner, Bret J, Pedersen, Jay G, Campbell, Mary E, McClay, James C
DOI: 10.1093/jamia/ocy172