Faculty of Engineering and Computing Science, University of Huddersfield , Huddersfield, UK.
Faculty of Communication, Arts and Sciences, Canadian University Dubai , Dubai, UAE.
Inform Health Soc Care. 2020 Sep;45(3):309-326. doi: 10.1080/17538157.2019.1687482. Epub 2020 Feb 3.
Machine learning (ML) techniques can be utilized by physicians, clinicians, as well as other users, to discover Autism Spectrum Disorder (ASD) symptoms based on historical cases and controls to enhance autism screening efficiency and accuracy. The aim of this study is to improve the performance of detecting ASD traits by reducing data dimensionality and eliminating redundancy in the autism dataset. To achieve this, a new semi-supervised ML framework approach called Clustering-based Autistic Trait Classification (CATC) is proposed that uses a clustering technique and that validates classifiers using classification techniques. The proposed method identifies potential autism cases based on their similarity traits as opposed to a scoring function used by many ASD screening tools. Empirical results on different datasets involving children, adolescents, and adults were verified and compared to other common machine learning classification techniques. The results showed that CATC offers classifiers with higher predictive accuracy, sensitivity, and specificity rates than those of other intelligent classification approaches such as Artificial Neural Network (ANN), Random Forest, Random Trees, and Rule Induction. These classifiers are useful as they are exploited by diagnosticians and other stakeholders involved in ASD screening.
机器学习(ML)技术可以被医生、临床医生以及其他用户利用,根据历史病例和对照组发现自闭症谱系障碍(ASD)症状,以提高自闭症筛查的效率和准确性。本研究的目的是通过减少自闭症数据集的数据维度和消除冗余,提高检测 ASD 特征的性能。为此,提出了一种称为基于聚类的自闭症特征分类(CATC)的新的半监督 ML 框架方法,该方法使用聚类技术和分类技术验证分类器。该方法根据潜在自闭症患者的相似特征来识别他们,而不是像许多 ASD 筛查工具那样使用评分函数。在涉及儿童、青少年和成年人的不同数据集上进行了实证验证,并与其他常见的机器学习分类技术进行了比较。结果表明,CATC 为分类器提供了比其他智能分类方法(如人工神经网络(ANN)、随机森林、随机树和规则归纳)更高的预测准确性、敏感性和特异性率。这些分类器很有用,因为它们被参与 ASD 筛查的诊断医生和其他利益相关者利用。