Telehealth: Simply a pandemic response or here to stay?
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocaa132
Author(s): Bakken, Suzanne
DOI: 10.1093/jamia/ocaa132
COVID-19 has demanded unprecedented actions in the delivery of outpatient psychiatric services, including the rapid shift of services from in-person to telehealth in response to public health physical distancing guidelines. One such shift was to convert group-level intensive outpatient psychiatric (IOP) interventions to telehealth. Historically, telehealth in psychiatric care has been studied in provider-patient interactions, but has not been as well studied for group telehealth service delivery. During the COVID-19 [...]
Author(s): Childs, Amber W, Unger, Adam, Li, Luming
DOI: 10.1093/jamia/ocaa138
The genetic testing for hereditary breast cancer that is most helpful in high-risk women is underused. Our objective was to quantify the risk factors for heritable breast and ovarian cancer contained in the electronic health record (EHR), to determine how many women meet national guidelines for referral to a cancer genetics professional but have no record of a referral.
Author(s): Payne, Thomas H, Zhao, Lue Ping, Le, Calvin, Wilcox, Peter, Yi, Troy, Hinshaw, Jesse, Hussey, Duncan, Kostrinsky-Thomas, Alex, Hale, Malika, Brimm, John, Hisama, Fuki M
DOI: 10.1093/jamia/ocaa152
We sought to predict if patients with type 2 diabetes mellitus (DM2) would develop 10 selected complications. Accurate prediction of complications could help with more targeted measures that would prevent or slow down their development.
Author(s): Ljubic, Branimir, Hai, Ameen Abdel, Stanojevic, Marija, Diaz, Wilson, Polimac, Daniel, Pavlovski, Martin, Obradovic, Zoran
DOI: 10.1093/jamia/ocaa120
Public health needs up-to-date information for surveillance and response. As healthcare application programming interfaces become widely available, a novel data gathering mechanism could provide public health with critical information in a timely fashion to respond to a fast-moving epidemic. In this article, we extrapolate from our experiences using a Fast Healthcare Interoperability Resource-based architecture for infectious disease surveillance for sexually transmitted diseases to its application to gather case information for [...]
Author(s): Mishra, Ninad K, Duke, Jon, Lenert, Leslie, Karki, Saugat
DOI: 10.1093/jamia/ocaa059
Much has been invested in big data analytics to improve health and reduce costs. However, it is unknown whether these investments have achieved the desired goals. We performed a scoping review to determine the health and economic impact of big data analytics for clinical decision-making.
Author(s): Bakker, Lytske, Aarts, Jos, Uyl-de Groot, Carin, Redekop, William
DOI: 10.1093/jamia/ocaa102
The goal of this study is to develop a robust Time Event Ontology (TEO), which can formally represent and reason both structured and unstructured temporal information.
Author(s): Li, Fang, Du, Jingcheng, He, Yongqun, Song, Hsing-Yi, Madkour, Mohcine, Rao, Guozheng, Xiang, Yang, Luo, Yi, Chen, Henry W, Liu, Sijia, Wang, Liwei, Liu, Hongfang, Xu, Hua, Tao, Cui
DOI: 10.1093/jamia/ocaa058
The COVID-19 pandemic has led to the rapid expansion of telehealth services as healthcare organizations aim to mitigate community transmission while providing safe patient care. As technology adoption rapidly increases, operational telehealth teams must maintain awareness of critical information, such as patient volumes and wait times, patient and provider experience, and telehealth platform performance. Using a model of situation awareness as a conceptual foundation and a user-centered design approach we [...]
Author(s): Dixit, Ram A, Hurst, Stephen, Adams, Katharine T, Boxley, Christian, Lysen-Hendershot, Kristi, Bennett, Sonita S, Booker, Ethan, Ratwani, Raj M
DOI: 10.1093/jamia/ocaa161
The study sought to synthesize published literature on direct care nurses' use of workarounds related to the electronic health record.
Author(s): Fraczkowski, Dan, Matson, Jeffrey, Lopez, Karen Dunn
DOI: 10.1093/jamia/ocaa050
The development of predictive models for clinical application requires the availability of electronic health record (EHR) data, which is complicated by patient privacy concerns. We showcase the "Model to Data" (MTD) approach as a new mechanism to make private clinical data available for the development of predictive models. Under this framework, we eliminate researchers' direct interaction with patient data by delivering containerized models to the EHR data.
Author(s): Bergquist, Timothy, Yan, Yao, Schaffter, Thomas, Yu, Thomas, Pejaver, Vikas, Hammarlund, Noah, Prosser, Justin, Guinney, Justin, Mooney, Sean
DOI: 10.1093/jamia/ocaa083