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使用新的特征选择算法预测年轻女性的认知能力。

Predicting the Cognitive Ability of Young Women Using a New Feature Selection Algorithm.

机构信息

Department of Medical Informatics, Faculty of Medicine, Mashhad University of Medical Sciences, Mashhad, Iran.

Biomedical Engineering Department, Semnan University, Semnan, Iran.

出版信息

J Mol Neurosci. 2023 Aug;73(7-8):678-691. doi: 10.1007/s12031-023-02145-8. Epub 2023 Aug 15.

Abstract

Cognitive abilities are the capabilities to perform mental processes that include executive function, comprehension, decision-making, work performance, and educational attainment. This study aimed to investigate the relationship between several biomarkers and individuals' cognitive ability using various machine learning methods. A total of 144 young women aged between 18 and 24 years old were recruited into the study. Cognitive performance was assessed using a standard questionnaire. A panel of biochemical, hematological, inflammatory, and oxidative stress biomarkers in serum and urine was measured for all participants. A novel combination of feature selection and feature scoring techniques within a hierarchical ensemble structure has been proposed to identify the most effective features in recognizing the importance of various biomarker signatures in cognitive abilities classification. Multiple feature selection methods were employed in conjunction with different classifiers to construct this model. In this manner, using three filter methods, the scores of each feature were considered. The combination of high-scoring features for each filter method was stored as the primary feature subset. A high-accuracy feature subset was selected by using a wrapper method. The collection of highly scored features from each filter method formed the primary feature subset. A wrapper method was also employed to select a feature subset with high accuracy. To ensure robustness and minimize random variations in the feature subset search process, a repeative tenfold cross-validation was conducted. The most frequently recurring features were determined. This iterative step facilitated the identification of an optimal feature subset, effectively reducing the dimensionality of features while maintaining accuracy. Among the 47 extracted factors, serum level of NOx (nitrite ± nitrate), alkaline phosphatase (ALP), and phosphate as well as blood platelet count (PLT) was entered into the model of cognitive abilities with the highest accuracy of approximately 70.9% using a decision tree classifier. Therefore, the serum levels of NOx, ALP, phosphate, and blood PLT count may be important markers of the cognitive abilities in apparently healthy young women. These factors my provide a simple procedure to identify mental abilities and earlier cognitive decline in healthy adults.

摘要

认知能力是指执行功能、理解、决策、工作表现和教育程度等心理过程的能力。本研究旨在使用各种机器学习方法,研究几种生物标志物与个体认知能力之间的关系。共招募了 144 名年龄在 18 至 24 岁之间的年轻女性参加这项研究。使用标准问卷评估认知表现。对所有参与者的血清和尿液中的生化、血液学、炎症和氧化应激生物标志物进行了检测。在分层集成结构内提出了一种新的特征选择和特征评分技术组合,用于识别在认知能力分类中识别各种生物标志物特征的重要性的最有效特征。结合不同的分类器,使用了多种特征选择方法来构建这个模型。通过这种方式,使用三种过滤方法,考虑了每个特征的分数。每个过滤方法的高分特征组合存储为主要特征子集。使用包装器方法选择高精度特征子集。从每个过滤方法中选择高得分特征的集合形成主要特征子集。包装器方法也用于选择具有高精度的特征子集。为了确保稳健性并最小化特征子集搜索过程中的随机变化,进行了重复的十折交叉验证。确定了最常出现的特征。这个迭代步骤有助于确定最佳特征子集,有效地降低特征的维度,同时保持准确性。在提取的 47 个因素中,血清中一氧化氮合酶(硝酸盐+亚硝酸盐)、碱性磷酸酶(ALP)和磷酸盐以及血小板计数(PLT)的水平被输入到使用决策树分类器的认知能力模型中,其准确率约为 70.9%。因此,血清中一氧化氮合酶、ALP、磷酸盐和血小板计数可能是年轻健康女性认知能力的重要标志物。这些因素可能提供一种简单的程序,以识别健康成年人的智力和早期认知能力下降。

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