Guo Shuixia, Huang Chu-Chung, Zhao Wei, Yang Albert C, Lin Ching-Po, Nichols Thomas, Tsai Shih-Jen
College of Mathematics and Computer Science, Key Laboratory of High Performance Computing and Stochastic Information Processing (Ministry of Education of China), Hunan Normal University, Changsha, P. R. China.
Aging and Health Research Center, National Yang-Ming University, Taipei, Taiwan.
PLoS One. 2018 Feb 1;13(2):e0191202. doi: 10.1371/journal.pone.0191202. eCollection 2018.
Identification of imaging biomarkers for schizophrenia is an important but still challenging problem. Even though considerable efforts have been made over the past decades, quantitative alterations between patients and healthy subjects have not yet provided a diagnostic measure with sufficient high sensitivity and specificity. One of the most important reasons is the lack of consistent findings, which is in part due to single-mode study, which only detects single dimensional information by each modality, and thus misses the most crucial differences between groups. Here, we hypothesize that multimodal integration of functional MRI (fMRI), structural MRI (sMRI), and diffusion tensor imaging (DTI) might yield more power for the diagnosis of schizophrenia. A novel multivariate data fusion method for combining these modalities is introduced without reducing the dimension or using the priors from 161 schizophrenia patients and 168 matched healthy controls. The multi-index feature for each ROI is constructed and summarized with Wilk's lambda by performing multivariate analysis of variance to calculate the significant difference between different groups. Our results show that, among these modalities, fMRI has the most significant featureby calculating the Jaccard similarity coefficient (0.7416) and Kappa index (0.4833). Furthermore, fusion of these modalities provides the most plentiful information and the highest predictive accuracy of 86.52%. This work indicates that multimodal integration can improve the ability of distinguishing differences between groups and might be assisting in further diagnosis of schizophrenia.
识别精神分裂症的影像学生物标志物是一个重要但仍具挑战性的问题。尽管在过去几十年里已经付出了相当大的努力,但患者与健康受试者之间的定量差异尚未提供一种具有足够高灵敏度和特异性的诊断方法。最重要的原因之一是缺乏一致的研究结果,部分原因是单模态研究,即每种模态仅检测单维信息,从而遗漏了组间最关键的差异。在此,我们假设功能磁共振成像(fMRI)、结构磁共振成像(sMRI)和扩散张量成像(DTI)的多模态整合可能为精神分裂症的诊断提供更强的能力。我们引入了一种新颖的多变量数据融合方法来结合这些模态,该方法不降低维度或使用先验信息,研究对象为161例精神分裂症患者和168例匹配的健康对照。通过进行多变量方差分析来计算不同组之间的显著差异,为每个感兴趣区域(ROI)构建多指标特征并用威尔克斯 lambda 进行总结。我们的结果表明,在这些模态中,通过计算杰卡德相似系数(0.7416)和卡帕指数(0.4833),fMRI 具有最显著的特征。此外,这些模态的融合提供了最丰富的信息和最高的预测准确率,为86.52%。这项工作表明多模态整合可以提高区分组间差异的能力,可能有助于精神分裂症的进一步诊断。