| Literature DB >> 33936416 |
Fatemeh Fahimi1, Yang Guo1, Shao Chuen Tong2, Angela Ng2, Sharon Ong Yu Bing2, Bryan Choo2, Huang Weiliang2, Sheldon Lee2, Savitha Ramasamy1, Wai Leng Chow2, Oh Hong Choon2, Pavitra Krishnaswamy1.
Abstract
Heart failure (HF) is a leading cause of hospital readmissions. There is great interest in approaches to efficiently predict emerging HF-readmissions in the community setting. We investigate the possibility of leveraging streaming telemonitored vital signs data alongside readily accessible patient profile information for predicting evolving 30-day HF-related readmission risk. We acquired data within a non-randomized controlled study that enrolled 150 HF patients over a 1-year post-discharge telemonitoring and telesupport programme. Using the sequential data and associated ground truth readmission outcomes, we developed a recurrent neural network model for dynamic risk prediction. The model detects emerging readmissions with sensitivity > 71%, specificity > 75%, AUROC ~80%. We characterize model performance in relation to telesupport based nurse assessments, and demonstrate strong sensitivity improvements. Our approach enables early stratification of high-risk patients and could enable adaptive targeting of care resources for managing patients with the most urgent needs at any given time. ©2020 AMIA - All rights reserved.Entities:
Year: 2021 PMID: 33936416 PMCID: PMC8075426
Source DB: PubMed Journal: AMIA Annu Symp Proc ISSN: 1559-4076