Measuring and Maximizing Undivided Attention in the Context of Electronic Health Records.
Author(s): Chen, You, Adler-Milstein, Julia, Sinsky, Christine A
DOI: 10.1055/a-1892-1437
Author(s): Chen, You, Adler-Milstein, Julia, Sinsky, Christine A
DOI: 10.1055/a-1892-1437
Tobacco use/smoking for epidemiologic studies is often derived from electronic health record (EHR) data, which may be inaccurate. We previously compared smoking from the United States Veterans Health Administration (VHA) EHR clinical reminder data with survey data and found excellent agreement. However, the smoking clinical reminder items changed October 1, 2018. We sought to use the biomarker salivary cotinine (cotinine ≥30) to validate current smoking from multiple sources.
Author(s): McGinnis, Kathleen A, Skanderson, Melissa, Justice, Amy C, Tindle, Hilary A, Akgün, Kathleen M, Wrona, Aleksandra, Freiberg, Matthew S, Goetz, Matthew Bidwell, Rodriguez-Barradas, Maria C, Brown, Sheldon T, Crothers, Kristina A
DOI: 10.1093/jamiaopen/ooac040
To improve timely access to quality HIV research data, the Rakai Health Sciences Program (RHSP) Data Mart was developed to store cohort study data from a legacy database platform in a modernized system using standard data management processes. The RHSP Data Mart was developed on a Microsoft SQL Server platform using Microsoft SQL Server Integration Services with custom data mappings and queries. The data mart stores 20+ years of longitudinal [...]
Author(s): Ndyanabo, Anthony, Footer, Kevin, Ahmed, Tanvir, Glogowski, Alex, Whalen, Christopher, Ssekasanvu, Joseph, Ssentongo, Lloyd, Lutalo, Tom, Nalugoda, Fred, Ha, Grace K, Rosenthal, Alex
DOI: 10.1093/jamiaopen/ooac032
Evaluate an initiative to distribute video-enabled tablets and cell phones to individuals enrolled in Veterans Health Affairs supportive housing program during the COVID-19 pandemic.
Author(s): Wray, Charlie M, Van Campen, James, Hu, Jiaqi, Slightam, Cindie, Heyworth, Leonie, Zulman, Donna M
DOI: 10.1093/jamiaopen/ooac027
Opioid Overdose Network is an effort to generalize and adapt an existing research data network, the Accrual to Clinical Trials (ACT) Network, to support design of trials for survivors of opioid overdoses presenting to emergency departments (ED). Four institutions (Medical University of South Carolina [MUSC], Dartmouth Medical School [DMS], University of Kentucky [UK], and University of California San Diego [UCSD]) worked to adapt the ACT network. The approach that was [...]
Author(s): Lenert, Leslie A, Zhu, Vivienne, Jennings, Lindsey, McCauley, Jenna L, Obeid, Jihad S, Ward, Ralph, Hassanpour, Saeed, Marsch, Lisa A, Hogarth, Michael, Shipman, Perry, Harris, Daniel R, Talbert, Jeffery C
DOI: 10.1093/jamiaopen/ooac055
Machine learning has the potential to improve identification of patients for appropriate diagnostic testing and treatment, including those who have rare diseases for which effective treatments are available, such as acute hepatic porphyria (AHP). We trained a machine learning model on 205 571 complete electronic health records from a single medical center based on 30 known cases to identify 22 patients with classic symptoms of AHP that had neither been diagnosed [...]
Author(s): Hersh, William R, Cohen, Aaron M, Nguyen, Michelle M, Bensching, Katherine L, Deloughery, Thomas G
DOI: 10.1093/jamiaopen/ooac053
The purpose of this project was to improve ease and speed of physician comprehension when interpreting daily laboratory data for patients admitted within the Military Healthcare System (MHS).
Author(s): Peterson, Jacob E
DOI: 10.1093/jamiaopen/ooac051
The International Classification of Childhood Cancer (ICCC) facilitates the effective classification of a heterogeneous group of cancers in the important pediatric population. However, there has been no development of machine learning models for the ICCC classification. We developed deep learning-based information extraction models from cancer pathology reports based on the ICD-O-3 coding standard. In this article, we describe extending the models to perform ICCC classification.
Author(s): Yoon, Hong-Jun, Peluso, Alina, Durbin, Eric B, Wu, Xiao-Cheng, Stroup, Antoinette, Doherty, Jennifer, Schwartz, Stephen, Wiggins, Charles, Coyle, Linda, Penberthy, Lynne
DOI: 10.1093/jamiaopen/ooac049
Early and accurate prediction of patients at risk of readmission is key to reducing costs and improving outcomes. LACE is a widely used score to predict 30-day readmissions. We examine whether adding social determinants of health (SDOH) to LACE can improve its predictive performance.
Author(s): Belouali, Anas, Bai, Haibin, Raja, Kanimozhi, Liu, Star, Ding, Xiyu, Kharrazi, Hadi
DOI: 10.1093/jamiaopen/ooac046
New York City (NYC) experienced a large first wave of coronavirus disease 2019 (COVID-19) in the spring of 2020, but the Health Department lacked tools to easily visualize and analyze incoming surveillance data to inform response activities. To streamline ongoing surveillance, a group of infectious disease epidemiologists built an interactive dashboard using open-source software to monitor demographic, spatial, and temporal trends in COVID-19 epidemiology in NYC in near real-time for [...]
Author(s): Ngai, Stephanie, Sell, Jessica, Baig, Samia, Iqbal, Maryam, Eddy, Meredith, Culp, Gretchen, Montesano, Matthew, McGibbon, Emily, Johnson, Kimberly, Devinney, Katelynn, Baumgartner, Jennifer, Huynh, Mary, Mathes, Robert, Van Wye, Gretchen, Fine, Annie D, Thompson, Corinne N
DOI: 10.1093/jamiaopen/ooac029