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Toward Probabilistic Diagnosis and Understanding of Depression Based on Functional MRI Data Analysis with Logistic Group LASSO

机译:基于Logistic组LASSO的功能性MRI数据分析对抑郁症的概率诊断和理解

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摘要

Diagnosis of psychiatric disorders based on brain imaging data is highly desirable in clinical applications. However, a common problem in applying machine learning algorithms is that the number of imaging data dimensions often greatly exceeds the number of available training samples. Furthermore, interpretability of the learned classifier with respect to brain function and anatomy is an important, but non-trivial issue. We propose the use of logistic regression with a least absolute shrinkage and selection operator (LASSO) to capture the most critical input features. In particular, we consider application of group LASSO to select brain areas relevant to diagnosis. An additional advantage of LASSO is its probabilistic output, which allows evaluation of diagnosis certainty. To verify our approach, we obtained semantic and phonological verbal fluency fMRI data from 31 depression patients and 31 control subjects, and compared the performances of group LASSO (gLASSO), and sparse group LASSO (sgLASSO) to those of standard LASSO (sLASSO), Support Vector Machine (SVM), and Random Forest. Over 90% classification accuracy was achieved with gLASSO, sgLASSO, as well as SVM; however, in contrast to SVM, LASSO approaches allow for identification of the most discriminative weights and estimation of prediction reliability. Semantic task data revealed contributions to the classification from left precuneus, left precentral gyrus, left inferior frontal cortex (pars triangularis), and left cerebellum (c rus1). Weights for the phonological task indicated contributions from left inferior frontal operculum, left post central gyrus, left insula, left middle frontal cortex, bilateral middle temporal cortices, bilateral precuneus, left inferior frontal cortex (pars triangularis), and left precentral gyrus. The distribution of normalized odds ratios further showed, that predictions with absolute odds ratios higher than 0.2 could be regarded as certain.
机译:在临床应用中,非常需要基于脑成像数据的精神病诊断。但是,应用机器学习算法的一个常见问题是成像数据维数通常大大超过可用训练样本的数量。此外,关于脑功能和解剖学的学习分类器的可解释性是一个重要的但非平凡的问题。我们建议使用具有最小绝对收缩和选择算子(LASSO)的逻辑回归来捕获最关键的输入特征。特别是,我们考虑将LASSO组用于选择与诊断相关的脑区域。 LASSO的另一个优点是它的概率输出,可以评估诊断的确定性。为了验证我们的方法,我们从31例抑郁症患者和31例对照受试者中获得了语义和语音的口语流利性fMRI数据,并将LASSO组(gLASSO)和稀疏组LASSO(sgLASSO)与标准LASSO(sLASSO)的性能进行了比较,支持向量机(SVM)和随机森林。使用gLASSO,sgLASSO和SVM可以达到90%以上的分类精度;但是,与SVM相比,LASSO方法可以识别最有区别的权重并估计预测的可靠性。语义任务数据显示,左足前突,左前中枢回,左下额叶皮层(pars triangleis)和左小脑(c rus1)对分类有贡献。语音任务的权重表明来自左下额,左后中央回,左岛,左中岛,左中额皮层,双侧颞中叶,双侧前突,左下额叶皮层(pars triangleis)和左中前回。归一化比值比的分布进一步表明,绝对比值比高于0.2的预测可以认为是确定的。

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