Multi-Modal Data Fusion for Classification of Autism Spectrum Disorder Using Phenotypic and Neuroimaging Data

Sumaira Kausar, None Adnan Younas, None Muhammad Yousuf Kamal, Samabia Tehsin
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Abstract

Autism Spectrum Disorder (ASD) is a neurodevelopmental disorder that causes disrupted social behaviors and interactions of individuals. Hence, it can adversely affect the social functioning of individuals. Each autistic individual is said to have a sort of unique behavioral pattern. ASD has three major sub-categories, namely autism, Asperger, and pervasive developmental disorder, not otherwise specified. The term spectrum indicates that ASD possesses a large variety of symptoms of severity. Practitioners need to have a vast experience and expertise for the accurate analysis of the symptoms of ASD. These symptoms need to be acquired from a range of modalities. An accurate diagnosis requires the analysis of brain scan and phenotypic data. These aspects present a multifold challenge for computer-aided ASD diagnosis. Most of the existing computer aided ASD diagnosis systems are capable of diagnosing only whether an individual is affected with ASD or not. A detailed categorization into the subcategories of ASD in such diagnosis is missing. Another aspect that is missing in the existing techniques is that symptoms are observed from a single modality. This can adversely affect the accuracy of diagnosis, since different modalities focus on different aspects of symptoms. These challenges and gaps provided the motivation to present a method that covers the variety exhibited in ASD, while considering the dire need of acquiring symptoms from a variety of data sources. The proposed method showed rather encouraging results. Moreover, the achieved results are evident of the efficacy of the proposed method.
使用表型和神经影像学数据进行自闭症谱系障碍分类的多模态数据融合
自闭症谱系障碍(ASD)是一种导致个体社会行为和互动中断的神经发育障碍。因此,它会对个人的社会功能产生不利影响。据说每个自闭症患者都有一种独特的行为模式。ASD有三个主要的子类别,即自闭症、亚斯伯格症和广泛性发育障碍,没有特别说明。术语谱表明自闭症谱系障碍具有多种严重程度的症状。从业人员需要有丰富的经验和专业知识来准确分析自闭症谱系障碍的症状。这些症状需要通过一系列方式获得。准确的诊断需要分析脑部扫描和表型数据。这些方面对计算机辅助ASD诊断提出了多重挑战。大多数现有的计算机辅助ASD诊断系统只能诊断个体是否患有ASD。在这种诊断中,对ASD的亚类别的详细分类是缺失的。现有技术缺少的另一个方面是从单一模态观察症状。这可能会对诊断的准确性产生不利影响,因为不同的模式侧重于症状的不同方面。这些挑战和差距为提出一种涵盖ASD中表现的多样性的方法提供了动力,同时考虑到从各种数据源获取症状的迫切需要。所提出的方法显示出相当令人鼓舞的结果。此外,所取得的结果表明了所提出方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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