Psychiatry Unit, Department of Health Sciences, University of Florence, viale della Maternità, Padiglione 8b, AOU Careggi, Firenze, Florence, FI, 50134, Italy.
Department of Brain and Behavioral Sciences, University of Pavia, Pavia, PV, Italy.
Brain Imaging Behav. 2022 Jun;16(3):977-990. doi: 10.1007/s11682-021-00584-8. Epub 2021 Oct 24.
Several systematic reviews have highlighted the role of multiple sources in the investigation of psychiatric illness. For what concerns fMRI, the focus of recent literature preferentially lies on three lines of research, namely: functional connectivity, network analysis and spectral analysis. Data was gathered from the UCLA Consortium for Neuropsychiatric Phenomics. The sample was composed by 130 neurotypicals, 50 participants diagnosed with Schizophrenia, 49 with Bipolar disorder and 43 with ADHD. Single fMRI scans were reduced in their dimensionality by a novel method (i-ECO) averaging results per Region of Interest and through an additive color method (RGB): local connectivity values (Regional Homogeneity), network centrality measures (Eigenvector Centrality), spectral dimensions (fractional Amplitude of Low-Frequency Fluctuations). Average images per diagnostic group were plotted and described. The discriminative power of this novel method for visualizing and analyzing fMRI results in an integrative manner was explored through the usage of convolutional neural networks. The new methodology of i-ECO showed between-groups differences that could be easily appreciated by the human eye. The precision-recall Area Under the Curve (PR-AUC) of our models was > 84.5% for each diagnostic group as evaluated on the test-set - 80/20 split. In conclusion, this study provides evidence for an integrative and easy-to-understand approach in the analysis and visualization of fMRI results. A high discriminative power for psychiatric conditions was reached. This proof-of-work study may serve to investigate further developments over more extensive datasets covering a wider range of psychiatric diagnoses.
几项系统评价强调了多种来源在精神疾病研究中的作用。就 fMRI 而言,最近文献的焦点主要集中在三条研究线,即:功能连接、网络分析和频谱分析。数据来自加州大学洛杉矶分校神经精神表型联盟。该样本由 130 名神经典型个体、50 名精神分裂症患者、49 名双相情感障碍患者和 43 名注意力缺陷多动障碍患者组成。通过一种新的方法(i-ECO)对单个 fMRI 扫描进行降维,该方法按每个感兴趣区域平均结果,并通过加色法(RGB)对数据进行处理:局部连接值(区域同质性)、网络中心性度量(特征向量中心性)、频谱维度(低频波动的分数振幅)。绘制并描述了每个诊断组的平均图像。通过使用卷积神经网络,探索了这种新方法以综合方式可视化和分析 fMRI 结果的判别能力。i-ECO 的新方法显示了组间差异,通过肉眼可以很容易地观察到这些差异。我们的模型在测试集(80/20 分割)上对每个诊断组的精度-召回曲线下面积(PR-AUC)均超过 84.5%。总之,这项研究为 fMRI 结果的分析和可视化提供了一种综合且易于理解的方法。对于精神疾病具有较高的判别能力。这项初步研究可以进一步探讨在更广泛的数据集上的进一步发展,涵盖更广泛的精神诊断范围。