Addressing Consequential Public Health Problems Through Informatics and Data Science.
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocab294
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocab294
The novel coronavirus disease 2019 (COVID-19) has heterogenous clinical courses, indicating that there might be distinct subphenotypes in critically ill patients. Although prior research has identified these subphenotypes, the temporal pattern of multiple clinical features has not been considered in cluster models. We aimed to identify temporal subphenotypes in critically ill patients with COVID-19 using a novel sequence cluster analysis and associate them with clinically relevant outcomes.
Author(s): Oh, Wonsuk, Jayaraman, Pushkala, Sawant, Ashwin S, Chan, Lili, Levin, Matthew A, Charney, Alexander W, Kovatch, Patricia, Glicksberg, Benjamin S, Nadkarni, Girish N
DOI: 10.1093/jamia/ocab252
Child abuse and neglect are public health issues impacting communities throughout the United States. The broad adoption of electronic health records (EHR) in health care supports the development of machine learning-based models to help identify child abuse and neglect. Employing EHR data for child abuse and neglect detection raises several critical ethical considerations. This article applied a phenomenological approach to discuss and provide recommendations for key ethical issues related to [...]
Author(s): Landau, Aviv Y, Ferrarello, Susi, Blanchard, Ashley, Cato, Kenrick, Atkins, Nia, Salazar, Stephanie, Patton, Desmond U, Topaz, Maxim
DOI: 10.1093/jamia/ocab286
The study provides considerations for generating a phenotype of child abuse and neglect in Emergency Departments (ED) using secondary data from electronic health records (EHR). Implications will be provided for racial bias reduction and the development of further decision support tools to assist in identifying child abuse and neglect.
Author(s): Landau, Aviv Y, Blanchard, Ashley, Cato, Kenrick, Atkins, Nia, Salazar, Stephanie, Patton, Desmond U, Topaz, Maxim
DOI: 10.1093/jamia/ocab275
The proliferation of m-health interventions has led to a growing research area of app analysis. We derived RACE (Review, Assess, Classify, and Evaluate) framework through the integration of existing methodologies for the purpose of analyzing m-health apps, and applied it to study opioid apps.
Author(s): Varshney, Upkar, Singh, Neetu, Bourgeois, Anu G, Dube, Shanta R
DOI: 10.1093/jamia/ocab277
The Global Digital Exemplar (GDE) Programme is a national initiative to promote digitally enabled transformation in English provider organizations. The Programme applied benefits realization management techniques to promote and demonstrate transformative outcomes. This work was part of an independent national evaluation of the GDE Programme.
Author(s): Cresswell, Kathrin, Sheikh, Aziz, Franklin, Bryony Dean, Hinder, Susan, Nguyen, Hung The, Krasuska, Marta, Lane, Wendy, Mozaffar, Hajar, Mason, Kathy, Eason, Sally, Potts, Henry W W, Williams, Robin
DOI: 10.1093/jamia/ocab283
To analyze gender bias in clinical trials, to design an algorithm that mitigates the effects of biases of gender representation on natural-language (NLP) systems trained on text drawn from clinical trials, and to evaluate its performance.
Author(s): Agmon, Shunit, Gillis, Plia, Horvitz, Eric, Radinsky, Kira
DOI: 10.1093/jamia/ocab279
Early identification of chronic diseases is a pillar of precision medicine as it can lead to improved outcomes, reduction of disease burden, and lower healthcare costs. Predictions of a patient's health trajectory have been improved through the application of machine learning approaches to electronic health records (EHRs). However, these methods have traditionally relied on "black box" algorithms that can process large amounts of data but are unable to incorporate domain [...]
Author(s): Nelson, Charlotte A, Bove, Riley, Butte, Atul J, Baranzini, Sergio E
DOI: 10.1093/jamia/ocab270
This study aimed to understand the association between primary care physician (PCP) proficiency with the electronic health record (EHR) system and time spent interacting with the EHR.
Author(s): Nguyen, Oliver T, Turner, Kea, Apathy, Nate C, Magoc, Tanja, Hanna, Karim, Merlo, Lisa J, Harle, Christopher A, Thompson, Lindsay A, Berner, Eta S, Feldman, Sue S
DOI: 10.1093/jamia/ocab272
To determine the effects of using unstructured clinical text in machine learning (ML) for prediction, early detection, and identification of sepsis.
Author(s): Yan, Melissa Y, Gustad, Lise Tuset, Nytrø, Øystein
DOI: 10.1093/jamia/ocab236