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Using deep autoencoders to identify abnormal brain structural patterns in neuropsychiatric disorders: A large‐scale multi‐sample study

机译:使用深度自动编码器识别神经精神疾病中异常的大脑结构模式:一项大规模的多样本研究

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摘要

Machine learning is becoming an increasingly popular approach for investigating spatially distributed and subtle neuroanatomical alterations in brain‐based disorders. However, some machine learning models have been criticized for requiring a large number of cases in each experimental group, and for resembling a “black box” that provides little or no insight into the nature of the data. In this article, we propose an alternative conceptual and practical approach for investigating brain‐based disorders which aim to overcome these limitations. We used an artificial neural network known as “deep autoencoder” to create a normative model using structural magnetic resonance imaging data from 1,113 healthy people. We then used this model to estimate total and regional neuroanatomical deviation in individual patients with schizophrenia and autism spectrum disorder using two independent data sets (n = 263). We report that the model was able to generate different values of total neuroanatomical deviation for each disease under investigation relative to their control group (p < .005). Furthermore, the model revealed distinct patterns of neuroanatomical deviations for the two diseases, consistent with the existing neuroimaging literature. We conclude that the deep autoencoder provides a flexible and promising framework for assessing total and regional neuroanatomical deviations in neuropsychiatric populations.
机译:机器学习正在成为研究基于脑部疾病的空间分布和微妙的神经解剖学改变的一种越来越流行的方法。但是,一些机器学习模型因在每个实验组中需要大量案例,并且类似于“黑匣子”而受到批评,该“黑匣子”对数据的本质了解甚少或根本没有见识。在本文中,我们提出了一种替代的概念和实践方法来研究基于脑的疾病,旨在克服这些局限性。我们使用一种称为“深度自动编码器”的人工神经网络,使用来自1,113名健康人的结构磁共振成像数据来创建规范模型。然后,我们使用该模型通过两个独立的数据集(n = 263)估计患有精神分裂症和自闭症谱系障碍的个体患者的总和局部神经解剖学偏差。我们报告说,相对于对照组,该模型能够针对所研究的每种疾病生成不同的总神经解剖学偏离值(p <.005)。此外,该模型揭示了两种疾病神经解剖学差异的独特模式,与现有的神经影像学文献一致。我们得出的结论是,深层自动编码器为评估神经精神病人群的总体和局部神经解剖学差异提供了灵活而有前途的框架。

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