揭示自闭症的模式:深度动态Levenberg-Marquardt方法

IF 4.3 Q1 PSYCHOLOGY, MULTIDISCIPLINARY
Mohemmed Sha, Abdullah Alqahtani, Shtwai Alsubai, Ashit Kumar Dutta
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引用次数: 0

摘要

ASD(自闭症谱系障碍)是一种影响人们社会交往、学习和沟通技能的神经发育障碍。它是一种行为独特的综合征,并伴有几种未知和已知的疾病。症状包括睡眠障碍、癫痫发作、胃肠道症状、焦虑、徘徊、多动/注意力缺陷障碍和肥胖。因此,早期发现ASD是非常重要的。然而,临床标准化筛查试验被认为延长了诊断时间,容易出现错误,也导致医疗费用上升。因此,为了减少诊断所需的时间并提高模型的精度,使用AI(人工智能)(机器学习(ML))技术来补充其他传统方法。因此,本研究提出了一种改进的深度动态Levenberg-Marquardt (DDLM)优化方法,提高了对ASD儿童和非ASD儿童进行二元分类的准确性和分类器的精度,解决了早期发现的问题。该过程首先使用标签编码和特征缩放技术对数据进行预处理,以消除不相关和有噪声的数据,然后使用改进的DDLM模型进行分类。该模型中使用的数据集是ASD meta-abundance和GSE113690_Autism_16S_rRNA数据集的合并。此外,将分类器与三种基于ml的算法MLP(多层感知器)、NB (naïve Bayes)和XGBoost(极端梯度增强)进行了比较,以分析所提出的系统在ASD二值分类中的有效性。使用特异性、精密度、f1评分、准确度和召回率等性能因素来评估所提出系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Unveiling Autism’s Patterns: The Deep Dynamic Levenberg–Marquardt Approach

Unveiling Autism’s Patterns: The Deep Dynamic Levenberg–Marquardt Approach

ASD (autism spectrum disorder) is a neurodevelopmental disorder affecting people’s social interaction, learning, and communication skills worldwide. It is a behaviorally distinct syndrome that is combined with several unknown and known disorders. The symptoms include sleep disorders, seizures, gastrointestinal tract symptoms, anxiety, wandering, hyperactivity/attention-deficit disorder, and obesity. Hence, early detection of ASD is significant. However, clinically standardized screening tests are considered a prolonged diagnostic time, which is prone to errors and also leads to a rise in medical costs. Therefore, to decrease the time required for diagnosis and improve the precision of the model, AI (artificial intelligence) (machine learning (ML)) techniques are used to complement other traditional methods. Hence, this study has proposed a modified deep dynamic Levenberg–Marquardt (DDLM) optimized approach, which enhances the accuracy and classifier’s precision for implementing binary classification of children with ASD and children without ASD and tackles the issues in early detection. The process starts by preprocessing the data using label encoding and feature scaling techniques for eradicating irrelevant and noisy data, and then classification proceeds by utilizing the modified DDLM model. The dataset used in the proposed model is an amalgamation of datasets, which are ASD meta-abundance and GSE113690_Autism_16S_rRNA. Additionally, a comparison of classifiers with three ML-based algorithms, namely, MLP (multilayer perceptron), NB (naïve Bayes), and XGBoost (extreme gradient boost), is performed to analyze the effectiveness of the proposed system in the binary classification of ASD. The efficacy of the proposed system is evaluated using performance factors such as specificity, precision, F1-score, accuracy, and recall.

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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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