Development and validation of a machine learning-based risk prediction model for post-stroke cognitive impairment

Author:

Zhong Xia1,Li Jing1,Lv Shunxin2,Zhang Mengdi3,Qu Ying3,Wang Rui2,Jiao Huachen4

Affiliation:

1. Peking University

2. Institute of College of Traditional Chinese Medicine,Shandong University of Traditional Chinese Medicine

3. Institute of First Clinical Medical College, Shandong University of Traditional Chinese Medicine

4. Affiliated Hospital of Shandong University of Traditional Chinese Medicine

Abstract

Abstract Background Machine learning (ML) risk prediction models for post-stroke cognitive impairment (PSCI) are still far from optimal. This study aims to generate a reliable predictive model for predicting PSCI in Chinese individuals using ML algorithms. Methods We collected data on 494 individuals who were diagnosed with acute ischemic stroke (AIS) and hospitalized for this condition from January 2022 to November 2023 at a Chinese medical institution. All of the observed samples were divided into a training set (70%) and a validation set (30%) at random. Logistic regression combined with the least absolute shrinkage and selection operator (LASSO) regression was utilized to efficiently screen the optimal predictive features of PSCI. We utilized seven different ML models (LR, XGBoost, LightGBM, AdaBoost, GNB, MLP, and SVM) and compared their performance for the resulting variables. We used five-fold cross-validation to measure the model's area under the curve (AUC), sensitivity, specificity, accuracy, F1 score and PR values. SHAP analysis provides a comprehensive and detailed explanation of our optimized model's performance. Results PSCI was identified in 58.50% of the 494 eligible AIS patients. The most predictive features of PSCI are HAMD-24, FBG, age, PSQI, and paraventricular lesion. The XGBoost model, among the 7 ML prediction models for PSCI developed based on the best predictive features, demonstrates superior performance, as indicated by its AUC (0.961), sensitivity (0.931), specificity (0.889), accuracy (0.911), F1 score (0.926), and AP value (0.967). Conclusion The XGBoost model developed on HAMD-24, FBG, age, PSQI, and paraventricular lesion performance is exceptional in predicting the risk of PSCI. It provide clinicians with a reliable tool for early screening of patients with cognitive impairment and effective treatment decisions in stroke patients.

Publisher

Research Square Platform LLC

Reference57 articles.

1. Cognitive impair ment evaluated with Vascular Cognitive Impairment Harmonization Standards in a multicenter prospective stroke cohort in Korea;Yu KH;Stroke,2013

2. Post-stroke cognitive impairment: epidemiology, mechanisms and management;Sun JH;Ann Transl Med,2014

3. Poststroke dementia;Leys D;Lancet Neurol,2005

4. New progress in the study of cognitive dysfunction after stroke;Zuo LJ;Chin J Stroke,2017

5. Cognitive Impairment After Ischemic and Hemorrhagic Stroke: A Scientific Statement From the American Heart Association/American Stroke Association;Husseini N;Stroke,2023

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