Erratum to: GraphSynergy: a network-inspired deep learning model for anticancer drug combination prediction.
Author(s): Yang, Jiannan, Xu, Zhongzhi, Wu, William Ka Kei, Chu, Qian, Zhang, Qingpeng
DOI: 10.1093/jamia/ocab214
Author(s): Yang, Jiannan, Xu, Zhongzhi, Wu, William Ka Kei, Chu, Qian, Zhang, Qingpeng
DOI: 10.1093/jamia/ocab214
Chatbots are software applications to simulate a conversation with a person. The effectiveness of chatbots in facilitating the recruitment of study participants in research, specifically among racial and ethnic minorities, is unknown. The objective of this study is to compare a chatbot versus telephone-based recruitment in enrolling research participants from a predominantly minority patient population at an urban institution. We randomly allocated adults to receive either chatbot or telephone-based outreach [...]
Author(s): Kim, Yoo Jin, DeLisa, Julie A, Chung, Yu-Che, Shapiro, Nancy L, Kolar Rajanna, Subhash K, Barbour, Edward, Loeb, Jeffrey A, Turner, Justin, Daley, Susan, Skowlund, John, Krishnan, Jerry A
DOI: 10.1093/jamia/ocab240
Author(s): Alexander, Gregory L, Powell, Kimberly R, Deroche, Chelsea B
DOI: 10.1093/jamia/ocab241
We conducted a systematic review to assess the effect of natural language processing (NLP) systems in improving the accuracy and efficiency of eligibility prescreening during the clinical research recruitment process.
Author(s): Idnay, Betina, Dreisbach, Caitlin, Weng, Chunhua, Schnall, Rebecca
DOI: 10.1093/jamia/ocab228
Digital Diabetes Prevention Programs (dDPP) are novel mHealth applications that leverage digital features such as tracking and messaging to support behavior change for diabetes prevention. Despite their clinical effectiveness, long-term engagement to these programs remains a challenge, creating barriers to adherence and meaningful health outcomes. We partnered with a dDPP vendor to develop a personalized automatic message system (PAMS) to promote user engagement to the dDPP platform by sending messages [...]
Author(s): Rodriguez, Danissa V, Lawrence, Katharine, Luu, Son, Yu, Jonathan L, Feldthouse, Dawn M, Gonzalez, Javier, Mann, Devin
DOI: 10.1093/jamia/ocab206
This work examined the secondary use of clinical data from the electronic health record (EHR) for screening our healthcare worker (HCW) population for potential exposures to patients with coronavirus disease 2019 (COVID-19).
Author(s): Hong, Peter, Herigon, Joshua C, Uptegraft, Colby, Samuel, Bassem, Brown, D Levin, Bickel, Jonathan, Hron, Jonathan D
DOI: 10.1093/jamia/ocab231
The study sought to build predictive models of next menstrual cycle start date based on mobile health self-tracked cycle data. Because app users may skip tracking, disentangling physiological patterns of menstruation from tracking behaviors is necessary for the development of predictive models.
Author(s): Li, Kathy, Urteaga, Iñigo, Shea, Amanda, Vitzthum, Virginia J, Wiggins, Chris H, Elhadad, Noémie
DOI: 10.1093/jamia/ocab182
To evaluate the International Classification of Health Interventions (ICHI) in the clinical and statistical use cases.
Author(s): Fung, Kin Wah, Xu, Julia, Ameye, Filip, Burelle, Lisa, MacNeil, Janice
DOI: 10.1093/jamia/ocab220
During the coronavirus disease 2019 (COVID-19) pandemic, federally qualified health centers rapidly mobilized to provide SARS-CoV-2 testing, COVID-19 care, and vaccination to populations at increased risk for COVID-19 morbidity and mortality. We describe the development of a reusable public health data analytics system for reuse of clinical data to evaluate the health burden, disparities, and impact of COVID-19 on populations served by health centers.
Author(s): Romero, Lisa, Carneiro, Pedro B, Riley, Catharine, Clark, Hollie, Uy, Raymonde, Park, Michael, Mawokomatanda, Tebitha, Bombard, Jennifer M, Hinckley, Alison, Skapik, Julia
DOI: 10.1093/jamia/ocab233
To develop and validate algorithms for predicting 30-day fatal and nonfatal opioid-related overdose using statewide data sources including prescription drug monitoring program data, Hospital Discharge Data System data, and Tennessee (TN) vital records. Current overdose prevention efforts in TN rely on descriptive and retrospective analyses without prognostication.
Author(s): Ripperger, Michael, Lotspeich, Sarah C, Wilimitis, Drew, Fry, Carrie E, Roberts, Allison, Lenert, Matthew, Cherry, Charlotte, Latham, Sanura, Robinson, Katelyn, Chen, Qingxia, McPheeters, Melissa L, Tyndall, Ben, Walsh, Colin G
DOI: 10.1093/jamia/ocab218