Multimodal Data Fusion Framework for Early Prediction of Autism Spectrum Disorder

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Mohemmed Sha, Hussein Al-Dossary, Mohamudha Parveen Rahamathulla
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引用次数: 0

Abstract

Autism spectrum disorder (ASD) is a condition that impacts a person’s emotional, cognitive, social, and physical well-being. Symptoms include challenges in communicating, struggles with social interactions, fixation, and repetitive actions. It is crucial to detect ASD in young children to minimize the impact of the disorder through various therapies focused on behavior, education, and family. The application of artificial intelligence has been important in detecting ASD in children. Previous studies have proposed different methods for identifying ASD, mainly using either demographic information or visual characteristics separately, without effectively combining both approaches. Our study presents a new approach to detecting ASD that takes into account both demographic and visual information. Therefore, a framework was suggested to assess different deep learning models for the early identification of ASD. The proposed framework consists of four modules such as stacked bidirectional long short-term memory (SBiLSTM) using attention mechanism for representing text/numerical features, multilevel 2D-convolutional neural network–gated recurrent units (ABM-2D-CNN–GRUs) using attention mechanism for extracting facial features, and multimodal factorized bilinear (MFB) pooling for combining the features. Moreover, the conditional probability approach calculates a distinct weight for each class based on specific features, leading to enhanced system performance. In conclusion, the AlexNet CNN has been proposed for prediction and its performance was assessed using the multiactivation function (MAF) framework. In this study, we examined the dataset for screening ASD and the dataset for children with autism. It is crucial to detect ASD at an early stage. We have identified features that can differentiate children with ASD from those without ASD. The suggested system achieves a higher accuracy rate of 99.2% compared to current systems. This outcome indicates that our system is better at predicting ASD compared to other advanced methods.

Abstract Image

自闭症谱系障碍早期预测的多模态数据融合框架
自闭症谱系障碍(ASD)是一种影响一个人的情感、认知、社交和身体健康的疾病。症状包括沟通困难、社会交往困难、固定和重复动作。通过行为、教育和家庭方面的各种治疗方法,对幼儿进行ASD检测,将其影响降到最低,这一点至关重要。人工智能在儿童ASD诊断中的应用具有重要意义。以前的研究提出了不同的识别ASD的方法,主要是单独使用人口统计学信息或视觉特征,而没有有效地将两者结合起来。我们的研究提出了一种检测ASD的新方法,该方法同时考虑了人口统计学和视觉信息。因此,我们提出了一个框架来评估不同的深度学习模型对ASD的早期识别。该框架由四个模块组成,即利用注意力机制表示文本/数字特征的堆叠双向长短期记忆(SBiLSTM)、利用注意力机制提取面部特征的多层2d -卷积神经网络门控循环单元(abm - 2d - cnn - gru)和用于组合特征的多模态分解双线性(MFB)池。此外,条件概率方法根据特定的特征为每个类计算不同的权重,从而提高系统性能。总之,AlexNet CNN已经被提出用于预测,并使用多激活函数(MAF)框架评估其性能。在这项研究中,我们检查了筛查ASD的数据集和自闭症儿童的数据集。在早期发现ASD是至关重要的。我们已经确定了可以区分自闭症儿童和非自闭症儿童的特征。与现有系统相比,该系统的准确率达到了99.2%。这一结果表明,与其他先进的方法相比,我们的系统在预测ASD方面做得更好。
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来源期刊
Human Behavior and Emerging Technologies
Human Behavior and Emerging Technologies Social Sciences-Social Sciences (all)
CiteScore
17.20
自引率
8.70%
发文量
73
期刊介绍: Human Behavior and Emerging Technologies is an interdisciplinary journal dedicated to publishing high-impact research that enhances understanding of the complex interactions between diverse human behavior and emerging digital technologies.
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