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利用 fMRI 数据集和多层感知机(MLP)解析自闭症谱系障碍(ASD)的大脑拓扑结构。

Resolving autism spectrum disorder (ASD) through brain topologies using fMRI dataset with multi-layer perceptron (MLP).

机构信息

Electrical & Instrumentation Engineering Department, Thapar Institute of Engineering & Technology, Patiala, India.

Electrical & Instrumentation Engineering Department, Thapar Institute of Engineering & Technology, Patiala, India.

出版信息

Psychiatry Res Neuroimaging. 2024 Sep;343:111858. doi: 10.1016/j.pscychresns.2024.111858. Epub 2024 Jul 6.

Abstract

Autism is a neurodevelopmental disorder that manifests in individuals during childhood and has enduring consequences for their social interactions and communication. The prediction of Autism Spectrum Disorder (ASD) in individuals based on the differences in brain networks and activities have been studied extensively in the recent past, however, with lower accuracies. Therefore in this research, identification at the early stage through computer-aided algorithms to differentiate between ASD and TD patients is proposed. In order to identify features, a Multi-Layer Perceptron (MLP) model is developed which utilizes logistic regression on characteristics extracted from connectivity matrices of subjects derived from fMRI images. The features that significantly contribute to the classification of individuals as having Autism Spectrum Disorder (ASD) or typically developing (TD) are identified by the logistic regression model. To enhance emphasis on essential attributes, an AND operation is integrated. This involves selecting features demonstrating statistical significance across diverse logistic regression analyses conducted on various random distributions. The iterative approach contributes to a comprehensive understanding of relevant features for accurate classification. By implementing this methodology, the estimation of feature importance became more dependable, and the potential for overfitting is moderated through the evaluation of model performance on various subsets of data. It is observed from the experimentation that the highly correlated Left Lateral Occipital Cortex and Right Lateral Occipital Cortex ROIs are only found in ASD. Also, it is noticed that the highly correlated Left Cerebellum Tonsil and Right Cerebellum Tonsil are only found in TD participants. Among the MLP classifier, a recall of 82.61 % is achieved followed by Logistic Regression with an accuracy of 72.46 %. MLP also stands out with a commendable accuracy of 83.57 % and AUC of 0.978.

摘要

自闭症是一种神经发育障碍,在儿童时期表现出来,并对他们的社交互动和沟通能力产生持久影响。基于大脑网络和活动的差异,对个体的自闭症谱系障碍(ASD)进行预测,在最近的研究中已经得到了广泛的研究,但准确率较低。因此,本研究提出了通过计算机辅助算法在早期识别 ASD 和 TD 患者。为了识别特征,开发了一个多层感知器(MLP)模型,该模型利用逻辑回归对从 fMRI 图像中受试者的连通性矩阵中提取的特征进行处理。逻辑回归模型确定了对个体进行分类的特征,这些特征显著有助于将个体分类为自闭症谱系障碍(ASD)或典型发育(TD)。为了强调重要属性,集成了 AND 操作。这涉及选择在对各种随机分布进行的各种逻辑回归分析中表现出统计显着性的特征。迭代方法有助于全面了解相关特征,从而实现准确分类。通过实施这种方法,特征重要性的估计变得更加可靠,并且通过在不同数据子集上评估模型性能,可以适度减少过拟合的可能性。从实验中观察到,高度相关的左侧枕叶皮质和右侧枕叶皮质 ROI 仅在 ASD 中发现。此外,还注意到高度相关的左侧小脑扁桃体和右侧小脑扁桃体仅在 TD 参与者中发现。在 MLP 分类器中,实现了 82.61%的召回率,随后是准确率为 72.46%的逻辑回归。MLP 还以 83.57%的出色准确率和 0.978 的 AUC 脱颖而出。

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