Development and validation of an interpretable machine learning model—Predicting mild cognitive impairment in a high-risk stroke population

Yan, Feng-Juan and Chen, Xie-Hui and Quan, Xiao-Qing and Wang, Li-Li and Wei, Xin-Yi and Zhu, Jia-Liang (2023) Development and validation of an interpretable machine learning model—Predicting mild cognitive impairment in a high-risk stroke population. Frontiers in Aging Neuroscience, 15. ISSN 1663-4365

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Abstract

Background: Mild cognitive impairment (MCI) is considered a preclinical stage of Alzheimer’s disease (AD). People with MCI have a higher risk of developing dementia than healthy people. As one of the risk factors for MCI, stroke has been actively treated and intervened. Therefore, selecting the high-risk population of stroke as the research object and discovering the risk factors of MCI as early as possible can prevent the occurrence of MCI more effectively.

Methods: The Boruta algorithm was used to screen variables, and eight machine learning models were established and evaluated. The best performing models were used to assess variable importance and build an online risk calculator. Shapley additive explanation is used to explain the model.

Results: A total of 199 patients were included in the study, 99 of whom were male. Transient ischemic attack (TIA), homocysteine, education, hematocrit (HCT), diabetes, hemoglobin, red blood cells (RBC), hypertension, prothrombin time (PT) were selected by Boruta algorithm. Logistic regression (AUC = 0.8595) was the best model for predicting MCI in high-risk groups of stroke, followed by elastic network (ENET) (AUC = 0.8312), multilayer perceptron (MLP) (AUC = 0.7908), extreme gradient boosting (XGBoost) (AUC = 0.7691), and support vector machine (SVM) (AUC = 0.7527), random forest (RF) (AUC = 0.7451), K-nearest neighbors (KNN) (AUC = 0.7380), decision tree (DT) (AUC = 0.6972). The importance of variables suggests that TIA, diabetes, education, and hypertension are the top four variables of importance.

Conclusion: Transient ischemic attack (TIA), diabetes, education, and hypertension are the most important risk factors for MCI in high-risk groups of stroke, and early intervention should be performed to reduce the occurrence of MCI.

Introduction

Item Type: Article
Subjects: STM Digital Library > Medical Science
Depositing User: Unnamed user with email support@stmdigitallib.com
Date Deposited: 13 Jul 2023 04:12
Last Modified: 30 May 2024 07:06
URI: http://archive.scholarstm.com/id/eprint/1696

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