Li Ruipeng, Huang Yueqi, Wang Yanbin, Song Chen, Lai Xiaobo
Third People's Hospital of Hangzhou, Hangzhou, 310010, China.
Seventh People's Hospital of Hangzhou, Hangzhou, 310013, China.
Psychiatry Res Neuroimaging. 2024 Dec;345:111907. doi: 10.1016/j.pscychresns.2024.111907. Epub 2024 Sep 25.
Mood disorders, particularly bipolar disorder (BD) and major depressive disorder (MDD), manifest changes in brain structure that can be detected using structural magnetic resonance imaging (MRI). Although structural MRI is a promising diagnostic tool, prevailing diagnostic criteria for BD and MDD are predominantly subjective, sometimes leading to misdiagnosis. This challenge is compounded by a limited understanding of the underlying causes of these disorders. In response, we present SE-ResNet, a Residual Network (ResNet)-based framework designed to discriminate between BD, MDD, and healthy controls (HC) using structural MRI data. Our approach extends the traditional Squeeze-and-Excitation (SE) layer by incorporating a dedicated branch for spatial attention map generation, equipped with soft-pooling, a 7 × 7 convolution, and a sigmoid function, intended to detect complex spatial patterns. The fusion of channel and spatial attention maps through element-wise addition aims to enhance the model's ability to discriminate features. Unlike conventional methods that use max-pooling for downsampling, our methodology employs soft-pooling, which aims to preserve a richer representation of input features and reduce data loss. When evaluated on a proprietary dataset comprising 303 subjects, the SE-ResNet achieved an accuracy of 85.8 %, a recall of 85.7 %, a precision of 85.9 %, and an F1 score of 85.8 %. These performance metrics suggest that the SE-ResNet framework has potential as a tool for detecting psychiatric disorders using structural MRI data.
情绪障碍,尤其是双相情感障碍(BD)和重度抑郁症(MDD),会表现出大脑结构的变化,这些变化可以通过结构磁共振成像(MRI)检测到。尽管结构MRI是一种很有前景的诊断工具,但目前BD和MDD的诊断标准主要是主观的,有时会导致误诊。对这些疾病潜在病因的了解有限,使这一挑战更加复杂。作为回应,我们提出了SE-ResNet,这是一个基于残差网络(ResNet)的框架,旨在使用结构MRI数据区分BD、MDD和健康对照(HC)。我们的方法通过合并一个用于生成空间注意力图的专用分支来扩展传统的挤压与激励(SE)层,该分支配备了软池化、7×7卷积和一个Sigmoid函数,旨在检测复杂的空间模式。通过逐元素相加融合通道和空间注意力图,旨在增强模型区分特征的能力。与使用最大池化进行下采样的传统方法不同,我们的方法采用软池化,其目的是保留输入特征更丰富的表示并减少数据丢失。在一个包含303名受试者的专有数据集上进行评估时,SE-ResNet的准确率达到了85.8%,召回率为85.7%,精确率为85.9%,F1分数为85.8%。这些性能指标表明,SE-ResNet框架有潜力作为一种使用结构MRI数据检测精神疾病的工具。