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Promises Pitfalls and Basic Guidelines for Applying Machine Learning Classifiers to Psychiatric Imaging Data with Autism as an Example

机译:将机器学习分类器应用于精神病学影像数据的承诺陷阱和基本准则以自闭症为例

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摘要

Most psychiatric disorders are associated with subtle alterations in brain function and are subject to large interindividual differences. Typically, the diagnosis of these disorders requires time-consuming behavioral assessments administered by a multidisciplinary team with extensive experience. While the application of Machine Learning classification methods (ML classifiers) to neuroimaging data has the potential to speed and simplify diagnosis of psychiatric disorders, the methods, assumptions, and analytical steps are currently opaque and not accessible to researchers and clinicians outside the field. In this paper, we describe potential classification pipelines for autism spectrum disorder, as an example of a psychiatric disorder. The analyses are based on resting-state fMRI data derived from a multisite data repository (ABIDE). We compare several popular ML classifiers such as support vector machines, neural networks, and regression approaches, among others. In a tutorial style, written to be equally accessible for researchers and clinicians, we explain the rationale of each classification approach, clarify the underlying assumptions, and discuss possible pitfalls and challenges. We also provide the data as well as the MATLAB code we used to achieve our results. We show that out-of-the-box ML classifiers can yield classification accuracies of about 60–70%. Finally, we discuss how classification accuracy can be further improved, and we mention methodological developments that are needed to pave the way for the use of ML classifiers in clinical practice.
机译:大多数精神疾病与脑功能的细微变化有关,并且个体差异较大。通常,这些疾病的诊断需要由具有丰富经验的多学科团队进行耗时的行为评估。虽然将机器学习分类方法(ML分类器)应用于神经影像数据有可能加快和简化精神疾病的诊断,但该方法,假设和分析步骤目前尚不透明,并且对于现场以外的研究人员和临床医生而言是无法访问的。在本文中,我们描述自闭症谱系障碍的潜在分类管道,作为精神病学障碍的一个示例。该分析基于从多站点数据库(ABIDE)获得的静止状态fMRI数据。我们比较了几种流行的ML分类器,例如支持向量机,神经网络和回归方法。在编写指南时,我们将为研究人员和临床医生提供同样的便利,我们将解释每种分类方法的原理,阐明基本假设,并讨论可能的陷阱和挑战。我们还提供了数据以及用于获得结果的MATLAB代码。我们显示,开箱即用的ML分类器可产生约60-70%的分类精度。最后,我们讨论了如何进一步提高分类准确性,并提到了方法学的发展,这些方法为在临床实践中使用ML分类器铺平了道路。

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