Celebrating Eta Berner and her influence on biomedical and health informatics.
Author(s): Bakken, Suzanne, Cimino, James J, Feldman, Sue, Lorenzi, Nancy M
DOI: 10.1093/jamia/ocae011
Author(s): Bakken, Suzanne, Cimino, James J, Feldman, Sue, Lorenzi, Nancy M
DOI: 10.1093/jamia/ocae011
The Observational Health Data Sciences and Informatics (OHDSI) is the largest distributed data network in the world encompassing more than 331 data sources with 2.1 billion patient records across 34 countries. It enables large-scale observational research through standardizing the data into a common data model (CDM) (Observational Medical Outcomes Partnership [OMOP] CDM) and requires a comprehensive, efficient, and reliable ontology system to support data harmonization.
Author(s): Reich, Christian, Ostropolets, Anna, Ryan, Patrick, Rijnbeek, Peter, Schuemie, Martijn, Davydov, Alexander, Dymshyts, Dmitry, Hripcsak, George
DOI: 10.1093/jamia/ocad247
Author(s): Tugaoen, Julian, Becker, Alana, Guo, Chenmeinian, Parasidis, Efthimios, Venkatakrishnan, Shaileshh Bojja, Otero, José Javier
DOI: 10.1093/jamia/ocad227
Electronic health record (EHR) data may facilitate the identification of rare diseases in patients, such as aromatic l-amino acid decarboxylase deficiency (AADCd), an autosomal recessive disease caused by pathogenic variants in the dopa decarboxylase gene. Deficiency of the AADC enzyme results in combined severe reductions in monoamine neurotransmitters: dopamine, serotonin, epinephrine, and norepinephrine. This leads to widespread neurological complications affecting motor, behavioral, and autonomic function. The goal of this study [...]
Author(s): Cohen, Aaron M, Kaner, Jolie, Miller, Ryan, Kopesky, Jeffrey W, Hersh, William
DOI: 10.1093/jamia/ocad244
Research on how people interact with electronic health records (EHRs) increasingly involves the analysis of metadata on EHR use. These metadata can be recorded unobtrusively and capture EHR use at a scale unattainable through direct observation or self-reports. However, there is substantial variation in how metadata on EHR use are recorded, analyzed and described, limiting understanding, replication, and synthesis across studies.
Author(s): Rule, Adam, Kannampallil, Thomas, Hribar, Michelle R, Dziorny, Adam C, Thombley, Robert, Apathy, Nate C, Adler-Milstein, Julia
DOI: 10.1093/jamia/ocad254
Automated phenotyping algorithms can reduce development time and operator dependence compared to manually developed algorithms. One such approach, PheNorm, has performed well for identifying chronic health conditions, but its performance for acute conditions is largely unknown. Herein, we implement and evaluate PheNorm applied to symptomatic COVID-19 disease to investigate its potential feasibility for rapid phenotyping of acute health conditions.
Author(s): Smith, Joshua C, Williamson, Brian D, Cronkite, David J, Park, Daniel, Whitaker, Jill M, McLemore, Michael F, Osmanski, Joshua T, Winter, Robert, Ramaprasan, Arvind, Kelley, Ann, Shea, Mary, Wittayanukorn, Saranrat, Stojanovic, Danijela, Zhao, Yueqin, Toh, Sengwee, Johnson, Kevin B, Aronoff, David M, Carrell, David S
DOI: 10.1093/jamia/ocad241
Hospital costs continue to rise unsustainably. Up to 20% of care is wasteful including low value care (LVC). This study aimed to understand whether electronic medical record (EMR) alerts are effective at reducing pediatric LVC and measure the impact on hospital costs.
Author(s): Lawrence, Joanna, South, Mike, Hiscock, Harriet, Capurro, Daniel, Sharma, Anurag, Ride, Jemimah
DOI: 10.1093/jamia/ocad239
This study explores the feasibility of using machine learning to predict accurate versus inaccurate diagnoses made by pathologists based on their spatiotemporal viewing behavior when evaluating digital breast biopsy images.
Author(s): Brunyé, Tad T, Booth, Kelsey, Hendel, Dalit, Kerr, Kathleen F, Shucard, Hannah, Weaver, Donald L, Elmore, Joann G
DOI: 10.1093/jamia/ocad232
The HIV epidemic remains a significant public health issue in the United States. HIV risk prediction models could be beneficial for reducing HIV transmission by helping clinicians identify patients at high risk for infection and refer them for testing. This would facilitate initiation on treatment for those unaware of their status and pre-exposure prophylaxis for those uninfected but at high risk. Existing HIV risk prediction algorithms rely on manual construction [...]
Author(s): May, Sarah B, Giordano, Thomas P, Gottlieb, Assaf
DOI: 10.1093/jamia/ocad217
To provide a scoping review of studies on empathy recognition in text using natural language processing (NLP) that can inform an approach to identifying physician empathic communication over patient portal messages.
Author(s): Shetty, Vishal Anand, Durbin, Shauna, Weyrich, Meghan S, Martínez, Airín Denise, Qian, Jing, Chin, David L
DOI: 10.1093/jamia/ocad229