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Enhancing Diagnosis of Autism With Optimized Machine Learning Models and Personal Characteristic Data

机译:通过优化的机器学习模型和个人特征数据增强自闭症的诊断

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摘要

Autism spectrum disorder (ASD) is a developmental disorder, affecting about 1% of the global population. Currently, the only clinical method for diagnosing ASD are standardized ASD tests which require prolonged diagnostic time and increased medical costs. Our objective was to explore the predictive power of personal characteristic data (PCD) from a large well-characterized dataset to improve upon prior diagnostic models of ASD. We extracted six personal characteristics (age, sex, handedness, and three individual measures of IQ) from 851 subjects in the Autism Brain Imaging Data Exchange (ABIDE) database. ABIDE is an international collaborative project that collected data from a large number of ASD patients and typical non-ASD controls from 17 research and clinical institutes. We employed this publicly available database to test nine supervised machine learning models. We implemented a cross-validation strategy to train and test those machine learning models for classification between typical non-ASD controls and ASD patients. We assessed classification performance using accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC). Of the nine models we tested using six personal characteristics, the neural network model performed the best with a mean AUC (SD) of 0.646 (0.005), followed by k-nearest neighbor with a mean AUC (SD) of 0.641 (0.004). This study established an optimal ASD classification performance with PCD as features. With additional discriminative features (e.g., neuroimaging), machine learning models may ultimately enable automated clinical diagnosis of autism.
机译:自闭症谱系障碍(ASD)是一种发育障碍,影响全球约1%的人口。当前,诊断ASD的唯一临床方法是标准化ASD测试,这需要延长诊断时间并增加医疗费用。我们的目标是从功能强大的大型数据集中探索个人特征数据(PCD)的预测能力,以改善先前的ASD诊断模型。我们从自闭症脑成像数据交换(ABIDE)数据库中的851位受试者中提取了六个个人特征(年龄,性别,上手习惯和三个智商单独量度)。 ABIDE是一个国际合作项目,收集了来自17个研究和临床机构的大量ASD患者和典型的非ASD对照的数据。我们使用了这个公共可用的数据库来测试九种监督的机器学习模型。我们实施了交叉验证策略来训练和测试那些机器学习模型,以在典型的非ASD控件和ASD患者之间进行分类。我们使用准确性,敏感性,特异性和受体工作特征曲线(AUC)下的面积评估了分类性能。在我们使用六个个人特征测试的九个模型中,神经网络模型表现最佳,平均AUC(SD)为0.646(0.005),其次是k近邻,平均AUC(SD)为0.641(0.004)。这项研究建立了以PCD为特征的最佳ASD分类性能。机器学习模型具有额外的区分功能(例如神经影像学),最终可以实现自闭症的自动临床诊断。

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