N. Vinutha, Sonu Sharma, P. D. Shenoy, K. Venugopal
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引用次数: 3
摘要
神经心理学评分是对人类大脑认知领域的测量,被认为是区分健康受试者与患有轻度认知障碍(MCI)受试者的重要特征。大约5542例,4次访问的实例从国家阿尔茨海默病协调中心(National Alzheimer 's Coordinating Center, NACC)数据库中收集的总实例中分离出来。对所选数据的分析表明,在66-75岁和76-85岁年龄组中确定了大量的受试者。遗传算法(GA)应用于基线访问时的神经心理学分数,选择临床诊断所需分数的最佳子集,并通过以曲线下面积(AUC),准确度和均方误差(MSE)为度量的逻辑回归模型对这些分数进行评估。仿真结果表明,将临床痴呆总体分期评分(CDRGLOB)、老年抑郁量表(GDS)、逻辑记忆延迟(MEMUNITS)、数字跨距前向长度(DIGIFLEN) 4个神经心理学评分组合在一起,分类准确率最高为0.9427,AUC为0.9713,错误率为0.041。这些分数主要是由GA在许多次运行中选择的,因此在基线访问时筛选MCI受试者具有重要作用。
Optimization of Neuropsychological Scores at the Baseline Visit Using Evolutionary Technique
The neuropsychological battery of scores, are the measures of cognitive domains of human brain, that are considered as important features to distinguish healthy subjects from the subjects, suffering from Mild Cognitive Impairment (MCI). The instances of about 5542, with four time visits are separated from the total collected instances of the National Alzheimer’s Coordinating Center (NACC) database. The analysis of the selected data shows that the large number of subjects is identified for 66–75 and 76–85 age groups. The Genetic Algorithms (GA) applied on the neuropsychological scores at the baseline visit, selects the best subset of scores required for the clinical diagnosis, and these scores are evaluated by the logistic regression model using Area Under Curve (AUC), accuracy and Mean Squared Error (MSE) as the metric. Simulations result show that a highest classification accuracy of 0.9427, AUC of 0.9713 and less error rate of 0.041 is achieved for the combination of four neuropsychological scores Global Staging of Clinical Dementia Rating (CDRGLOB), Geriatric Depression Scale (GDS), Logical Memory Delayed (MEMUNITS), Digit Span Forward Length (DIGIFLEN). These scores are predominantly selected by the GA across many runs and thus have significant role for screening MCI subjects at the baseline visit.