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Clustering and prediction of long-term functional recovery patterns in first-time stroke patients

Authors
 Seyoung Shin  ;  Won Hyuk Chang  ;  Deog Young Kim  ;  Jongmin Lee  ;  Min Kyun Sohn  ;  Min-Keun Song  ;  Yong-Il Shin  ;  Yang-Soo Lee  ;  Min Cheol Joo  ;  So Young Lee  ;  Junhee Han  ;  Jeonghoon Ahn  ;  Gyung-Jae Oh  ;  Young-Taek Kim  ;  Kwangsu Kim  ;  Yun-Hee Kim 
Citation
 FRONTIERS IN NEUROLOGY, Vol.14 : 1130236, 2023-03 
Journal Title
FRONTIERS IN NEUROLOGY
Issue Date
2023-03
Keywords
artificial intelligence ; clustering ; functional recovery ; machine learning ; prediction ; stroke
Abstract
Objectives: The purpose of this study was to cluster long-term multifaceted functional recovery patterns and to establish prediction models for functional outcome in first-time stroke patients using unsupervised machine learning. Methods: This study is an interim analysis of the dataset from the Korean Stroke Cohort for Functioning and Rehabilitation (KOSCO), a long-term, prospective, multicenter cohort study of first-time stroke patients. The KOSCO screened 10,636 first-time stroke patients admitted to nine representative hospitals in Korea during a three-year recruitment period, and 7,858 patients agreed to enroll. Early clinical and demographic features of stroke patients and six multifaceted functional assessment scores measured from 7 days to 24 months after stroke onset were used as input variables. K-means clustering analysis was performed, and prediction models were generated and validated using machine learning. Results: A total of 5,534 stroke patients (4,388 ischemic and 1,146 hemorrhagic; mean age 63·31 ± 12·86; 3,253 [58.78%] male) completed functional assessments 24 months after stroke onset. Through K-means clustering, ischemic stroke (IS) patients were clustered into five groups and hemorrhagic stroke (HS) patients into four groups. Each cluster had distinct clinical characteristics and functional recovery patterns. The final prediction models for IS and HS patients achieved relatively high prediction accuracies of 0.926 and 0.887, respectively. Conclusions: The longitudinal, multi-dimensional, functional assessment data of first-time stroke patients were successfully clustered, and the prediction models showed relatively good accuracies. Early identification and prediction of long-term functional outcomes will help clinicians develop customized treatment strategies. Copyright © 2023 Shin, Chang, Kim, Lee, Sohn, Song, Shin, Lee, Joo, Lee, Han, Ahn, Oh, Kim, Kim and Kim.
Files in This Item:
T202302078.pdf Download
DOI
10.3389/fneur.2023.1130236
Appears in Collections:
1. College of Medicine (의과대학) > Dept. of Rehabilitation Medicine (재활의학교실) > 1. Journal Papers
Yonsei Authors
Kim, Deog Young(김덕용) ORCID logo https://orcid.org/0000-0001-7622-6311
URI
https://ir.ymlib.yonsei.ac.kr/handle/22282913/194099
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