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Evaluation of machine learning algorithms and structural features for optimal MRI-based diagnostic prediction in psychosis

机译:评估基于机器学习算法和结构特征的基于MRI的最佳精神病学诊断预测

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摘要

A relatively large number of studies have investigated the power of structural magnetic resonance imaging (sMRI) data to discriminate patients with schizophrenia from healthy controls. However, very few of them have also included patients with bipolar disorder, allowing the clinically relevant discrimination between both psychotic diagnostics. To assess the efficacy of sMRI data for diagnostic prediction in psychosis we objectively evaluated the discriminative power of a wide range of commonly used machine learning algorithms (ridge, lasso, elastic net and L0 norm regularized logistic regressions, a support vector classifier, regularized discriminant analysis, random forests and a Gaussian process classifier) on main sMRI features including grey and white matter voxel-based morphometry (VBM), vertex-based cortical thickness and volume, region of interest volumetric measures and wavelet-based morphometry (WBM) maps. All possible combinations of algorithms and data features were considered in pairwise classifications of matched samples of healthy controls (N = 127), patients with schizophrenia (N = 128) and patients with bipolar disorder (N = 128). Results show that the selection of feature type is important, with grey matter VBM (without data reduction) delivering the best diagnostic prediction rates (averaging over classifiers: schizophrenia vs. healthy 75%, bipolar disorder vs. healthy 63% and schizophrenia vs. bipolar disorder 62%) whereas algorithms usually yielded very similar results. Indeed, those grey matter VBM accuracy rates were not even improved by combining all feature types in a single prediction model. Further multi-class classifications considering the three groups simultaneously made evident a lack of predictive power for the bipolar group, probably due to its intermediate anatomical features, located between those observed in healthy controls and those found in patients with schizophrenia. Finally, we provide MRIPredict (), a free tool for SPM, FSL and R, to easily carry out voxelwise predictions based on VBM images.
机译:相对大量的研究已经研究了结构磁共振成像(sMRI)数据将精神分裂症患者与健康对照区分开的能力。但是,他们中也很少有患有躁郁症的患者,因此可以在两种精神病学诊断方法之间进行临床相关的区分。为了评估sMRI数据在精神病诊断预测中的功效,我们客观地评估了各种常用机器学习算法(岭,套索,弹性网和L0范数正则化逻辑回归,支持向量分类器,正则化判别分析)的判别能力,随机森林和高斯过程分类器),包括主要的sMRI特征,包括基于灰白素的基于体素的形态测量(VBM),基于顶点的皮质厚度和体积,感兴趣区域的体积度量以及基于小波的形态测量(WBM)图。在健康对照(N = 127),精神分裂症患者(N = 128)和双相情感障碍(N = 128)患者的匹配样本的成对分类中考虑了算法和数据特征的所有可能组合。结果表明,特征类型的选择非常重要,其中灰质VBM(不减少数据)可提供最佳的诊断预测率(平均分类器:精神分裂症对健康的75%,双相情感障碍对健康的63%和精神分裂症对双相情感性障碍62%),而算法通常会产生非常相似的结果。实际上,通过将所有特征类型组合到一个预测模型中,甚至无法提高这些灰质VBM准确率。考虑到三组同时进行的进一步多类别分类,显然证明了双极型人群缺乏预测能力,这可能是由于其中间的解剖特征位于健康对照者和精神分裂症患者之间。最后,我们提供了MRIPredict(),这是SPM,FSL和R的免费工具,可以轻松地基于VBM图像进行体素化预测。

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