Salvador Raymond, Canales-Rodríguez Erick, Guerrero-Pedraza Amalia, Sarró Salvador, Tordesillas-Gutiérrez Diana, Maristany Teresa, Crespo-Facorro Benedicto, McKenna Peter, Pomarol-Clotet Edith
FIDMAG Hermanas Hospitalarias Research Foundation, Barcelona, Spain.
Centro de Investigación Biomédica en Red de Salud Mental, Madrid, Spain.
Front Neurosci. 2019 Nov 7;13:1203. doi: 10.3389/fnins.2019.01203. eCollection 2019.
Magnetic resonance imaging (MRI) has been proposed as a source of information for automatic prediction of individual diagnosis in schizophrenia. Optimal integration of data from different MRI modalities is an active area of research aimed at increasing diagnostic accuracy. Based on a sample of 96 patients with schizophrenia and a matched sample of 115 healthy controls that had undergone a single multimodal MRI session, we generated individual brain maps of gray matter vbm, 1back, and 2back levels of activation (back fMRI), maps of amplitude of low-frequency fluctuations (resting-state fMRI), and maps of weighted global brain connectivity (resting-state fMRI). Four unimodal classifiers (Ridge, Lasso, Random Forests, and Gradient boosting) were applied to these maps to evaluate their classification accuracies. Based on the assignments made by the algorithms on test individuals, we quantified the amount of predictive information shared between maps (what we call redundancy analysis). Finally, we explored the added accuracy provided by a set of multimodal strategies that included post-classification integration based on probabilities, two-step sequential integration, and voxel-level multimodal integration through one-dimensional-convolutional neural networks (1D-CNNs). All four unimodal classifiers showed the highest test accuracies with the 2back maps (80% on average) achieving a maximum of 84% with the Lasso. Redundancy levels between brain maps were generally low (overall mean redundancy score of 0.14 in a 0-1 range), indicating that each brain map contained differential predictive information. The highest multimodal accuracy was delivered by the two-step Ridge classifier (87%) followed by the Ridge maximum and mean probability classifiers (both with 85% accuracy) and by the 1D-CNN, which achieved the same accuracy as the best unimodal classifier (84%). From these results, we conclude that from all MRI modalities evaluated task-based fMRI may be the best unimodal diagnostic option in schizophrenia. Low redundancy values point to ample potential for accuracy improvements through multimodal integration, with the two-step Ridge emerging as a suitable strategy.
磁共振成像(MRI)已被提议作为一种信息来源,用于自动预测精神分裂症的个体诊断。来自不同MRI模态的数据的最佳整合是一个活跃的研究领域,旨在提高诊断准确性。基于96名精神分裂症患者的样本以及115名健康对照的匹配样本,这些对照都接受了一次多模态MRI检查,我们生成了灰质体素形态学测量(vbm)、1-back和2-back激活水平(回波平面功能磁共振成像)的个体脑图谱、低频波动幅度图谱(静息态功能磁共振成像)以及加权全脑连通性图谱(静息态功能磁共振成像)。将四个单模态分类器(岭回归、套索回归、随机森林和梯度提升)应用于这些图谱,以评估它们的分类准确性。基于算法对测试个体的分类结果,我们量化了图谱之间共享的预测信息量(我们称之为冗余分析)。最后,我们探索了一组多模态策略所提供的额外准确性,这些策略包括基于概率的分类后整合、两步顺序整合以及通过一维卷积神经网络(1D-CNN)进行的体素级多模态整合。所有四个单模态分类器在2-back图谱上显示出最高的测试准确性(平均80%),套索回归达到了最高的84%。脑图谱之间的冗余水平通常较低(在0到1的范围内,总体平均冗余分数为0.14),这表明每个脑图谱都包含不同的预测信息。两步岭回归分类器提供了最高的多模态准确性(87%),其次是岭回归最大概率和平均概率分类器(两者准确率均为85%)以及1D-CNN,其达到了与最佳单模态分类器相同的准确性(84%)。从这些结果中,我们得出结论,在所评估的所有MRI模态中,基于任务的功能磁共振成像可能是精神分裂症中最佳的单模态诊断选项。低冗余值表明通过多模态整合有很大的提高准确性的潜力,两步岭回归成为一种合适的策略。