通过提取特征来早期发现自闭症:孟加拉国的一个案例研究

Md. Shahriare Satu, Farha Farida Sathi, Md. Sadrul Arifen, Md. Hanif Ali, M. Moni
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引用次数: 24

摘要

自闭症谱系障碍(ASD)是一种神经行为障碍,始于儿童时期,并持续一生。这项工作的目的是探索正常和自闭症在孟加拉国分区地区的显著特征。我们在孟加拉国的Savar通过网络和实地调查,从他们的父母那里收集了16到30个月大的孩子的个体样本,这些孩子来自不同的居民,使用自闭症Barta应用程序。然后,我们对数据进行预处理,并根据其各自的区域对频繁特征进行分类。分析了J48、Logistic模型树、随机森林、减少误差剪枝树和决策树桩等基于树的分类方法,找出了它们的最佳分类器。在这些分类器中,J48比其他分类器显示出最好的结果。我们从J48决策树中提取了9条规则和相关条件,并从提取的规则的数据中收集了频繁的实例。最后,需要23个特征中的8个特征来对孟加拉国个别地区的正常和自闭症进行分类。此外,从决策树中提取出9条(16条)规则,其中4条(10条)规则为正常规则,5条(12条)规则为自闭症规则。这一结果有助于我们发现孟加拉国自闭症的显著特征。我们希望我们的工作将有助于改善他们的状况,使他们过上正常的生活。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Early Detection of Autism by Extracting Features: A Case Study in Bangladesh
Autism Spectrum Disorder (ASD) is a neurobehavioral disorder that begins at childhood and exists this whole life. The objective of this work is that to explore significant features of normal and autism of divisional regions in Bangladesh. We collected individual samples of various children from their parents between 16 to 30 months of different residents using Autism Barta apps by web and fieldwork at Savar, Bangladesh. Then, we preprocessed our data and categorized frequent features based on their individual regions. Different tree based techniques such as J48, Logistic Model Tree, Random Forest, Reduced Error Pruned Tree, and Decision Stump were analyzed to find out the best classifier of them. From these classifiers, J48 showed the best outcomes than other classifiers. We extracted 9 rules and associated conditions from J48 decision tree and gathered frequent instances from our data for extracted rules. Finally, 8 within 23 features were required to classify normal and autism of individual regions in Bangladesh. Besides, 4 rules (10 Conditions) for normal and 5 (12 Conditions) rules for autism out of 9 (16 Conditions) rules were extracted from decision tree. This outcomes assist us to find out significant features of autism in Bangladesh. We expect that our work will be helpful things to improve their condition that leads them to a normal life.
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