Zhang Wenjing, Wang Lituan, Wu Xusha, Yao Li, Yi Zhang, Yin Hong, Zhang Lei, Lui Su, Gong Qiyong
Department of Radiology, and Functional and Molecular Imaging Key Laboratory of Sichuan Province, West China Hospital, Sichuan University, Chengdu, China.
Huaxi MR Research Center (HMRRC), West China Hospital, Sichuan University, Chengdu, China.
Neuropsychopharmacology. 2025 Feb;50(3):531-539. doi: 10.1038/s41386-024-02021-y. Epub 2024 Nov 6.
Brain alterations associated with illness severity in schizophrenia remain poorly understood. Establishing linkages between imaging biomarkers and symptom expression may enhance mechanistic understanding of acute psychotic illness. Constructing models using MRI and clinical features together to maximize model validity may be particularly useful for these purposes. A multi-task deep learning model for standard case/control recognition incorporated with psychosis symptom severity regression was constructed with anatomic MRI collected from 286 patients with drug-naïve first-episode schizophrenia and 330 healthy controls from two datasets, and validated with an independent dataset including 40 first-episode schizophrenia. To evaluate the contribution of regression to the case/control recognition, a single-task classification model was constructed. Performance of unprocessed anatomical images and of predefined imaging features obtained using voxel-based morphometry (VBM) and surface-based morphometry (SBM), were examined and compared. Brain regions contributing to the symptom severity regression and illness identification were identified. Models developed with unprocessed images achieved greater group separation than either VBM or SBM measurements, differentiating schizophrenia patients from healthy controls with a balanced accuracy of 83.0% with sensitivity = 76.1% and specificity = 89.0%. The multi-task model also showed superior performance to single-task classification model without considering clinical symptoms. These findings showed high replication in the site-split validation and external validation analyses. Measurements in parietal, occipital and medial frontal cortex and bilateral cerebellum had the greatest contribution to the multi-task model. Incorporating illness severity regression in pattern recognition algorithms, our study developed an MRI-based model that was of high diagnostic value in acutely ill schizophrenia patients, highlighting clinical relevance of the model.
精神分裂症中与疾病严重程度相关的大脑改变仍未得到充分理解。建立成像生物标志物与症状表达之间的联系可能会增强对急性精神病性疾病的机制理解。将MRI和临床特征结合起来构建模型以最大化模型有效性,对于这些目的可能特别有用。利用从两个数据集中收集的286例未服用过药物的首发精神分裂症患者和330名健康对照的解剖MRI,构建了一个用于标准病例/对照识别并结合精神病症状严重程度回归的多任务深度学习模型,并使用包括40例首发精神分裂症患者的独立数据集进行了验证。为了评估回归对病例/对照识别的贡献,构建了一个单任务分类模型。对未处理的解剖图像以及使用基于体素的形态计量学(VBM)和基于表面的形态计量学(SBM)获得的预定义成像特征的性能进行了检查和比较。确定了对症状严重程度回归和疾病识别有贡献的脑区。使用未处理图像开发的模型比VBM或SBM测量实现了更大的组间分离,以76.1%的敏感性和89.0%的特异性,83.0% 的平衡准确率区分精神分裂症患者和健康对照。在不考虑临床症状的情况下,多任务模型也显示出优于单任务分类模型的性能。这些发现在位点分割验证和外部验证分析中具有高度重复性。顶叶、枕叶和内侧额叶皮质以及双侧小脑的测量对多任务模型贡献最大。通过在模式识别算法中纳入疾病严重程度回归,我们的研究开发了一种基于MRI的模型,该模型对急性病精神分裂症患者具有高诊断价值,突出了该模型的临床相关性。