For many psychiatric disorders, neuroimaging offers a potential for revolutionizing diagnosis, and potentially treatment, by providing access to preverbal mental processes. In their study "Machine learning of neural representations of suicide and emotion concepts identifies suicidal youth."1, Just and colleagues report that a Naive Bayes classifier, trained on voxelwise fMRI responses in human participants during the presentation of words and concepts related to mortality, can predict whether an individual had reported having suicidal ideations with a classification accuracy of 91%. Here we report a reappraisal of the methods employed by the authors, including re-analysis of the same data set, that calls into question the accuracy of the authors findings. The analysis is a case study in the dangers of overfitting in machine learning.
翻译:对于许多精神失常者来说,神经成像通过提供预言性精神过程,为诊断和潜在治疗提供了革命性的可能性。在他们的研究中,“了解自杀和情感概念的神经反应的医学发现会发现自杀青年。” 1 仅与同事一起报告说,在提出与死亡有关的言词和概念时,接受过人体参与者对恶性病毒/艾滋病/病毒/病毒反应反应的培训的Nive Bayes分类师可以预测一个人是否报告过具有分类精确度为91%的自杀想法。我们在这里报告了对作者所用方法的重新评价,包括对同一数据集的重新分析,这使人质疑作者调查结果的准确性。该分析是对机器学习过度的危险的案例研究。