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Performance comparison of machine learning algorithms and number of independent components used in fMRI decoding of belief vs. disbelief.

机译:机器学习算法的性能比较和用于信念与怀疑的fMRI解码的独立组件数量。

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Machine learning (ML) has become a popular tool for mining functional neuroimaging data, and there are now hopes of performing such analyses efficiently in real-time. Towards this goal, we compared accuracy of six different ML algorithms applied to neuroimaging data of persons engaged in a bivariate task, asserting their belief or disbelief of a variety of propositional statements. We performed unsupervised dimension reduction and automated feature extraction using independent component (IC) analysis and extracted IC time courses. Optimization of classification hyperparameters across each classifier occurred prior to assessment. Maximum accuracy was achieved at 92% for Random Forest, followed by 91% for AdaBoost, 89% for Naive Bayes, 87% for a J48 decision tree, 86% for K*, and 84% for support vector machine. For real-time decoding applications, finding a parsimonious subset of diagnostic ICs might be useful. We used a forward search technique to sequentially add ranked ICs to the feature subspace. For the current data set, we determined that approximately six ICs represented a meaningful basis set for classification. We then projected these six IC spatial maps forward onto a later scanning session within subject. We then applied the optimized ML algorithms to these new data instances, and found that classification accuracy results were reproducible. Additionally, we compared our classification method to our previously published general linear model results on this same data set. The highest ranked IC spatial maps show similarity to brain regions associated with contrasts for belief > disbelief, and disbelief < belief.
机译:机器学习(ML)已成为用于挖掘功能性神经影像数据的流行工具,现在希望能够实时有效地执行此类分析。为了实现这一目标,我们比较了应用于双变量任务的人的神经影像数据的六种不同ML算法的准确性,从而断言了他们对各种命题陈述的信念或信念。我们使用独立分量(IC)分析并提取了IC时间过程,进行了无监督的降维和自动特征提取。在评估之前,对每个分类器进行分类超参数优化。随机森林的最大精度达到92%,AdaBoost达到91%,朴素贝叶斯达到89%,J48决策树达到87%,K *达到86%,支持向量机达到84%。对于实时解码应用,找到诊断IC的简化子集可能很有​​用。我们使用了正向搜索技术来将排名靠后的IC顺序添加到特征子空间。对于当前数据集,我们确定大约有六个IC代表了有意义的分类基础。然后,我们将这六个IC空间图向前投影到对象内的后续扫描会话中。然后,我们将优化的ML算法应用于这些新的数据实例,发现分类准确性结果是可重现的。此外,我们在相同的数据集上将分类方法与先前发布的一般线性模型结果进行了比较。排名最高的IC空间图显示与大脑区域的相似性,这与信念>怀疑和怀疑<信念的对比相关。

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