Correction to: Research Data Warehouse Best Practices: Catalyzing National Data Sharing through Informatics Innovation.
Author(s):
DOI: 10.1093/jamia/ocac075
Author(s):
DOI: 10.1093/jamia/ocac075
We aim to investigate the application and accuracy of artificial intelligence (AI) methods for automated medical literature screening for systematic reviews.
Author(s): Feng, Yunying, Liang, Siyu, Zhang, Yuelun, Chen, Shi, Wang, Qing, Huang, Tianze, Sun, Feng, Liu, Xiaoqing, Zhu, Huijuan, Pan, Hui
DOI: 10.1093/jamia/ocac066
Delirium occurrence is common and preventive strategies are resource intensive. Screening tools can prioritize patients at risk. Using machine learning, we can capture time and treatment effects that pose a challenge to delirium prediction. We aim to develop a delirium prediction model that can be used as a screening tool.
Author(s): Bhattacharyya, Anirban, Sheikhalishahi, Seyedmostafa, Torbic, Heather, Yeung, Wesley, Wang, Tiffany, Birst, Jennifer, Duggal, Abhijit, Celi, Leo Anthony, Osmani, Venet
DOI: 10.1093/jamiaopen/ooac048
To support development of a robust postmarket device evaluation system using real-world data (RWD) from electronic health records (EHRs) and other sources, employing unique device identifiers (UDIs) to link to device information.
Author(s): Drozda, Joseph P, Graham, Jove, Muhlestein, Joseph B, Tcheng, James E, Roach, James, Forsyth, Tom, Knight, Stacey, McKinnon, Andrew, May, Heidi, Wilson, Natalia A, Berlin, Jesse A, Simard, Edgar P
DOI: 10.1093/jamiaopen/ooac035
As electronic medical record (EMR) data are increasingly used in HIV clinical and epidemiologic research, accurately identifying people with HIV (PWH) from EMR data is paramount. We sought to evaluate EMR data types and compare EMR algorithms for identifying PWH in a multicenter EMR database.
Author(s): Ridgway, Jessica P, Mason, Joseph A, Friedman, Eleanor E, Devlin, Samantha, Zhou, Junlan, Meltzer, David, Schneider, John
DOI: 10.1093/jamiaopen/ooac033
The coronavirus disease 2019 (COVID-19) pandemic impacts not only patients but also healthcare providers. This study seeks to investigate whether a telemedicine system reduces physical contact in addressing the COVID-19 pandemic and mitigates nurses' distress and depression.
Author(s): Kagiyama, Nobuyuki, Komatsu, Takayuki, Nishikawa, Masanori, Hiki, Makoto, Kobayashi, Mariko, Matsuzawa, Wataru, Daida, Hiroyuki, Minamino, Tohru, Naito, Toshio, Sugita, Manabu, Miyazaki, Kunihisa, Anan, Hideaki, Kasai, Takatoshi
DOI: 10.1093/jamiaopen/ooac037
Computer-aided decision tools may speed recognition of acute respiratory distress syndrome (ARDS) and promote consistent, timely treatment using lung-protective ventilation (LPV). This study evaluated implementation and service (process) outcomes with deployment and use of a clinical decision support (CDS) synchronous alert tool associated with existing computerized ventilator protocols and targeted patients with possible ARDS not receiving LPV.
Author(s): Knighton, Andrew J, Kuttler, Kathryn G, Ranade-Kharkar, Pallavi, Allen, Lauren, Throne, Taylor, Jacobs, Jason R, Carpenter, Lori, Winberg, Carrie, Johnson, Kyle, Shrestha, Neer, Ferraro, Jeffrey P, Wolfe, Doug, Peltan, Ithan D, Srivastava, Rajendu, Grissom, Colin K
DOI: 10.1093/jamiaopen/ooac050
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