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Prognosticating global functional outcome in the recurrent ischemic stroke using baseline clinical and pre-clinical features: A machine learning study.
Dao, Tran Nhat Phong; Dang, Hien Nguyen Thanh; Pham, My Thi Kim; Nguyen, Hien Thi; Tran Chi, Cuong; Le, Minh Van.
Afiliação
  • Dao TNP; Faculty of Traditional Medicine, Can Tho University of Medicine and Pharmacy, Can Tho, Vietnam.
  • Dang HNT; Can Tho Traditional Medicine Hospital, Can Tho, Vietnam.
  • Pham MTK; Department of Cardiology, Hoan My Cuu Long General Hospital, Can Tho, Vietnam.
  • Nguyen HT; Department of Cardiac Surgery, Can Tho Central General Hospital, Can Tho, Vietnam.
  • Tran Chi C; Department of Nutrition and Food Safety, Faculty of Public Health, Can Tho University of Medicine and Pharmacy, Can Tho, Vietnam.
  • Le MV; Can Tho Stroke International Services (S.I.S) General Hospital, Can Tho, Vietnam.
J Eval Clin Pract ; 2024 Jul 19.
Article em En | MEDLINE | ID: mdl-39031001
ABSTRACT
BACKGROUND AND

PURPOSE:

Recurrent ischemic stroke (RIS) induces additional functional limitations in patients. Prognosticating globally functional outcome (GFO) in RIS patients is thereby important to plan a suitable rehabilitation programme. This study sought to investigate the ability of baseline features for classifying the patients with and without improving GFO (task 1) and identifying patients with poor GFO (task 2) at the third month after discharging from RIS.

METHODS:

A total of 86 RIS patients were recruited and divided into the training set and testing set (5050). The clinical and pre-clinical data were recorded. The outcome was the changes in Modified Rankin Scale (mRS) (task 1) and the mRS score at the third month (mRS 0-2 good GFO, mRS >2 poor GFO) (task 2). The permutation importance ranking method selected features. Four algorithms were trained on the training set with five-fold cross-validation. The best model was tested on the testing set.

RESULTS:

In task 1, the support vector machine (SVM) model outperformed the other models, with the high performance matrix on the training set (sensitivity = 0.80; specificity = 1.00) and the testing set (sensitivity = 0.80; specificity = 0.95). In task 2, the SVM model with selected features also performed well on both datasets (training set sensitivity = 0.76; specificity = 0.92; testing set sensitivity = 0.72; specificity = 0.88).

CONCLUSION:

A machine learning model could be used to classify GFO responses to treatment and identify the third-month poor GFO in RIS patients, supporting physicians in clinical practice.
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Texto completo: 1 Bases de dados: MEDLINE Idioma: En Revista: J Eval Clin Pract Assunto da revista: PESQUISA EM SERVICOS DE SAUDE Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Vietnã

Texto completo: 1 Bases de dados: MEDLINE Idioma: En Revista: J Eval Clin Pract Assunto da revista: PESQUISA EM SERVICOS DE SAUDE Ano de publicação: 2024 Tipo de documento: Article País de afiliação: Vietnã