Identification of Dementia & Mild Cognitive Impairment in Chinese Elderly Using Machine Learning.

Tong-Tong Ying, Li-Ying Zhuang, Shan-Hu Xu, Shu-Feng Zhang, Li-Jun Huang, Wei-Wei Gao, Lu Liu, Qi-Lun Lai, Yue Lou, Xiao-Li Liu
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Abstract

Objective: To assess the role of Machine Learning (ML) in identification critical factors of dementia and mild cognitive impairment.

Methods: 371 elderly individuals were ultimately included in the ML analysis. Demographic information (including gender, age, parity, visual acuity, auditory function, mobility, and medication history) and 35 features from 10 assessment scales were used for modeling. Five machine learning classifiers were used for evaluation, employing a procedure involving feature extraction, selection, model training, and performance assessment to identify key indicative factors.

Results: The Random Forest model, after data preprocessing, Information Gain, and Meta-analysis, utilized three training features and four meta-features, achieving an area under the curve of 0.961 and a accuracy of 0.894, showcasing exceptional accuracy for the identification of dementia and mild cognitive impairment.

Conclusions: ML serves as a identification tool for dementia and mild cognitive impairment. Using Information Gain and Meta-feature analysis, Clinical Dementia Rating (CDR) and Neuropsychiatric Inventory (NPI) scale information emerged as crucial for training the Random Forest model.

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利用机器学习识别中国老年人的痴呆症和轻度认知障碍。
目的:评估机器学习(ML)在识别痴呆症和轻度认知障碍关键因素中的作用:评估机器学习(ML)在识别痴呆症和轻度认知障碍关键因素中的作用。人口统计学信息(包括性别、年龄、胎次、视力、听觉功能、活动能力和用药史)和来自 10 个评估量表的 35 个特征被用于建模。评估使用了五个机器学习分类器,包括特征提取、选择、模型训练和性能评估,以确定关键的指示因素:结果:经过数据预处理、信息增益和元分析后,随机森林模型利用三个训练特征和四个元特征,达到了 0.961 的曲线下面积和 0.894 的准确率,在识别痴呆症和轻度认知障碍方面显示出卓越的准确性:结论:ML 可作为痴呆症和轻度认知障碍的识别工具。通过信息增益和元特征分析,临床痴呆评级(CDR)和神经精神量表(NPI)信息成为训练随机森林模型的关键。
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