Prediction of the autism spectrum disorder diagnosis with linear discriminant analysis classifier and K-nearest neighbor in children

Osman Altay, M. Ulaş
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引用次数: 60

Abstract

Autism Spectrum Disorder (ASD) negatively affects the whole life of people. The main indications of ASD are seen as lack of social interaction and communication, repetitive patterns of behavior, fixed interests and activities. It is very important that ASD is diagnosed at an early age. In this study, the classification method for ASD diagnosis was used in children aged 4–11 years. The Linear Discriminant Analysis (LDA) and The K-Nearest Neighbor (KNN) algorithms are used for classification. To test the algorithms, 30 percent of the data set was selected as test data and 70 percent as training data. As a result of the work done; In the LDA algorithm, the accuracy is 90.8%, whereas the accuracy of the KNN algorithm is 88.5%. For the LDA algorithm, sensitivity and specificity values are calculated as 0.9524 and .08667, respectively. For KNN algorithm, these values are calculated as 0.9762 and 0.80. F-measure values are calculated as 0.9091 for the LDA algorithm and 0.8913 for the KNN algorithm.
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线性判别分析分类器和k近邻对儿童自闭症谱系障碍诊断的预测
自闭症谱系障碍(ASD)会对人的一生产生负面影响。ASD的主要症状被认为是缺乏社会互动和沟通,行为模式重复,兴趣和活动固定。ASD在早期得到诊断是非常重要的。本研究采用分类方法对4-11岁儿童进行ASD诊断。使用线性判别分析(LDA)和k近邻(KNN)算法进行分类。为了测试算法,选择了30%的数据集作为测试数据,70%作为训练数据。作为工作的结果;LDA算法的准确率为90.8%,而KNN算法的准确率为88.5%。LDA算法的灵敏度和特异度分别为0.9524和0.08667。对于KNN算法,这些值计算为0.9762和0.80。对于LDA算法,f测量值计算为0.9091,对于KNN算法,f测量值计算为0.8913。
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