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Classification and adaptive behavior prediction of children with autism spectrum disorder based upon multivariate data analysis of markers of oxidative stress and DNA methylation

机译:基于氧化应激和DNA甲基化标志物的多元数据分析对自闭症谱系障碍儿童的分类和适应行为预测

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摘要

The number of diagnosed cases of Autism Spectrum Disorders (ASD) has increased dramatically over the last four decades; however, there is still considerable debate regarding the underlying pathophysiology of ASD. This lack of biological knowledge restricts diagnoses to be made based on behavioral observations and psychometric tools. However, physiological measurements should support these behavioral diagnoses in the future in order to enable earlier and more accurate diagnoses. Stepping towards this goal of incorporating biochemical data into ASD diagnosis, this paper analyzes measurements of metabolite concentrations of the folate-dependent one-carbon metabolism and transulfuration pathways taken from blood samples of 83 participants with ASD and 76 age-matched neurotypical peers. Fisher Discriminant Analysis enables multivariate classification of the participants as on the spectrum or neurotypical which results in 96.1% of all neurotypical participants being correctly identified as such while still correctly identifying 97.6% of the ASD cohort. Furthermore, kernel partial least squares is used to predict adaptive behavior, as measured by the Vineland Adaptive Behavior Composite score, where measurement of five metabolites of the pathways was sufficient to predict the Vineland score with an R2 of 0.45 after cross-validation. This level of accuracy for classification as well as severity prediction far exceeds any other approach in this field and is a strong indicator that the metabolites under consideration are strongly correlated with an ASD diagnosis but also that the statistical analysis used here offers tremendous potential for extracting important information from complex biochemical data sets.
机译:在过去的40年中,自闭症谱系障碍(ASD)的诊断病例​​数急剧增加。然而,关于ASD的潜在病理生理学仍然存在很多争论。由于缺乏生物学知识,因此只能根据行为观察和心理测验工具进行诊断。但是,生理测量值将来应该支持这些行为诊断,以便能够进行更早,更准确的诊断。朝着将生化数据纳入ASD诊断的目标迈进,本文分析了83名ASD参与者和76名年龄相仿的神经型同龄人的血样中叶酸依赖的一碳代谢和转硫途径的代谢物浓度测量结果。 Fisher判别分析可对参与者进行频谱或神经典型的多变量分类,从而可以正确识别96.1%的所有神经典型参与者,同时仍可以正确识别97.6%的ASD队列。此外,内核部分最小二乘用来预测适应性行为,这是通过Vineland适应性行为综合评分来衡量的,其中对5种途径代谢产物的测量足以预测Vineland评分,R 2 为交叉验证后为0.45。这种准确的分类以及严重程度预测的水平远远超过了该领域的任何其他方法,这是一个强有力的指标,表明所考虑的代谢产物与ASD诊断密切相关,而且这里使用的统计分析为提取重要的代谢物提供了巨大的潜力。来自复杂生化数据集的信息。

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