IEEE Trans Pattern Anal Mach Intell. 2024 Mar;46(3):1819-1835. doi: 10.1109/TPAMI.2021.3125686. Epub 2024 Feb 6.
Early screening is essential for effective intervention and treatment of individuals with mental disorders. Functional magnetic resonance imaging (fMRI) is a noninvasive tool for depicting neural activity and has demonstrated strong potential as a technique for identifying mental disorders. Due to the difficulty in data collection and diagnosis, imaging data from patients are rare at a single site, whereas abundant healthy control data are available from public datasets. However, joint use of these data from multiple sites for classification model training is hindered by cross-domain distribution discrepancy and diverse label spaces. Herein, we propose few-shot domain-adaptive anomaly detection (FAAD) to achieve cross-site anomaly detection of brain images based on only a few labeled samples. We introduce domain adaptation to mitigate cross-domain distribution discrepancy and jointly align the general and conditional feature distributions of imaging data across multiple sites. We utilize fMRI data of healthy subjects in the Human Connectome Project (HCP) as the source domain and fMRI images from six independent sites, including patients with mental disorders and demographically matched healthy controls, as target domains. Experiments showed the superiority of the proposed method compared with binary classification, traditional anomaly detection methods, and several recognized domain adaptation methods.
早期筛查对于有效干预和治疗精神障碍患者至关重要。功能磁共振成像(fMRI)是一种用于描绘神经活动的非侵入性工具,已被证明具有识别精神障碍的强大潜力。由于数据收集和诊断困难,单个站点的患者成像数据很少,而公共数据集则提供了丰富的健康对照数据。然而,由于跨域分布差异和不同的标签空间,联合使用来自多个站点的这些数据进行分类模型训练受到阻碍。在此,我们提出了基于少量标记样本的基于 few-shot 领域自适应异常检测(FAAD)的跨站点脑图像异常检测方法。我们引入领域自适应来减轻跨域分布差异,并联合对齐来自多个站点的成像数据的一般和条件特征分布。我们利用人类连接组计划(HCP)中的健康受试者的 fMRI 数据作为源域,以及来自六个独立站点的 fMRI 图像,包括患有精神障碍的患者和人口统计学匹配的健康对照者,作为目标域。实验表明,与二进制分类、传统异常检测方法和几种公认的领域自适应方法相比,该方法具有优越性。