| Literature DB >> 33807882 |
Dong-Woo Seo1,2, Hahn Yi3, Hyun-Jin Bae4, Youn-Jung Kim1, Chang-Hwan Sohn1, Shin Ahn1, Kyoung-Soo Lim1, Namkug Kim4,5, Won-Young Kim1.
Abstract
Current multimodal approaches for the prognostication of out-of-hospital cardiac arrest (OHCA) are based mainly on the prediction of poor neurological outcomes; however, it is challenging to identify patients expected to have a favorable outcome, especially before the return of spontaneous circulation (ROSC). We developed and validated a machine learning-based system to predict good outcome in OHCA patients before ROSC. This prospective, multicenter, registry-based study analyzed non-traumatic OHCA data collected between October 2015 and June 2017. We used information available before ROSC as predictor variables, and the primary outcome was neurologically intact survival at discharge, defined as cerebral performance category 1 or 2. The developed models' robustness were evaluated and compared with various score metrics to confirm their performance. The model using a voting classifier had the best performance in predicting good neurological outcome (area under the curve = 0.926). We confirmed that the six top-weighted variables predicting neurological outcomes, such as several duration variables after the instant of OHCA and several electrocardiogram variables in the voting classifier model, showed significant differences between the two neurological outcome groups. These findings demonstrate the potential utility of a machine learning model to predict good neurological outcome of OHCA patients before ROSC.Entities:
Keywords: emergency departments; machine learning; out-of-hospital cardiac arrest; outcomes; resuscitation; targeted temperature management
Year: 2021 PMID: 33807882 PMCID: PMC7961400 DOI: 10.3390/jcm10051089
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.241