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Mild Dehydration Identification Using Machine Learning to Assess Autonomic Responses to Cognitive Stress

机译:使用机器学习进行轻度脱水识别以评估对认知压力的自主反应

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摘要

The feasibility of detecting mild dehydration by using autonomic responses to cognitive stress was studied. To induce cognitive stress, subjects ( = 17) performed the Stroop task, which comprised four minutes of rest and four minutes of test. Nine indices of autonomic control based on electrodermal activity (EDA) and pulse rate variability (PRV) were obtained during both the rest and test stages of the Stroop task. Measurements were taken on three consecutive days in which subjects were “wet” (not dehydrated) and “dry” (experiencing mild dehydration caused by fluid restriction). Nine approaches were tested for classification of “wet” and “dry” conditions: (1) linear (LDA) and (2) quadratic discriminant analysis (QDA), (3) logistic regression, (4) support vector machines (SVM) with cubic, (5) fine Gaussian kernel, (6) medium Gaussian kernel, (7) a k-nearest neighbor (KNN) classifier, (8) decision trees, and (9) subspace ensemble of KNN classifiers (SE-KNN). The classification models were tested for all possible combinations of the nine indices of autonomic nervous system control, and their performance was assessed by using leave-one-subject-out cross-validation. An overall accuracy of mild dehydration detection was 91.2% when using the cubic SE-KNN and indices obtained only at rest, and the accuracy was 91.2% when using the cubic SVM classifiers and indices obtained only at test. Accuracy was 86.8% when rest-to-test increments in the autonomic indices were used along with the KNN and QDA classifiers. In summary, measures of autonomic function based on EDA and PRV are suitable for detecting mild dehydration and could potentially be used for the noninvasive testing of dehydration.
机译:研究了利用对认知压力的自主反应检测轻度脱水的可行性。为了引起认知压力,受试者(= 17)执行了Stroop任务,包括四分钟的休息和四分钟的测试。在Stroop任务的其余阶段和测试阶段均获得了基于皮肤电活动(EDA)和脉率变异性(PRV)的九项自主控制指标。在连续三天进行测量,其中受试者“湿”(未脱水)和“干”(由于体液限制引起轻度脱水)。测试了九种方法对“湿”和“干”条件的分类:(1)线性(LDA)和(2)二次判别分析(QDA),(3)Logistic回归,(4)支持向量机(SVM)三次,(5)精细高斯核,(6)中高斯核,(7)k近邻(KNN)分类器,(8)决策树和(9)KNN分类器(SE-KNN)的子空间集合。测试了分类模型中自主神经系统控制的9个指标的所有可能组合,并使用留一法则交叉验证对它们的性能进行了评估。当使用立方SE-KNN和仅在静止时获得的指标时,轻度脱水检测的总体准确性为91.2%,而使用立方SVM分类器和仅在测试中获得的指标时的整体准确性为91.2%。当将自主指标的静息测试增量与KNN和QDA分类器一起使用时,准确性为86.8%。综上所述,基于EDA和PRV的自主功能测量方法适用于检测轻度脱水,并且有可能用于无创性脱水测试。

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