首页> 外文会议>International Workshop on Machine Learning in Medical Imaging;International Conference on Medical Image Computing and Computer-Assisted Intervention >LDGAN: Longitudinal-Diagnostic Generative Adversarial Network for Disease Progression Prediction with Missing Structural MRI
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LDGAN: Longitudinal-Diagnostic Generative Adversarial Network for Disease Progression Prediction with Missing Structural MRI

机译:LDGAN:纵向诊断生成对抗疾病进展预测与缺失结构MRI的预测

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Predicting future progression of brain disorders is fundamental for effective intervention of pathological cognitive decline. Structural MRI provides a non-invasive solution to examine brain pathology and has been widely used for longitudinal analysis of brain disorders. Previous studies typically use only complete baseline MRI scans to predict future disease status due to the lack of MRI data at one or more future time points. Since temporal changes of each brain MRI are ignored, these methods would result in sub-optimal performance. To this end, we propose a longitudinal-diagnostic generative adversarial network (LDGAN) to predict multiple clinical scores at future time points using incomplete longitudinal MRI data. Specifically, LDGAN imputes MR images by learning a bi-directional mapping between MRIs of two adjacent time points and performing clinical score prediction jointly, thereby explicitly encouraging task-oriented image synthesis. The proposed LDGAN is further armed with a temporal constraint and an output constraint to model the temporal regularity of MRIs at adjacent time points and encourage the diagnostic consistency, respectively. We also design a weighted loss function to make use of those subjects without ground-truth scores at certain time points. The major advantage of the proposed LDGAN is that it can impute those missing scans in a task-oriented manner and can explicitly capture the temporal characteristics of brain changes for accurate prediction. Experimental results on both ADNI-1 and ADNI-2 datasets demonstrate that, compared with the state-of-the-art methods, LDGAN can generate more reasonable MRI scans and efficiently predict longitudinal clinical measures.
机译:预测脑疾病的未来进展是病理认知下降的有效干预的基础。结构MRI提供了一种非侵入性的解决方案来检查脑病理学,并已广泛用于脑疾病的纵向分析。以前的研究通常仅使用完整的基线MRI扫描来预测由于一个或多个未来时间点的MRI数据缺乏。由于忽略了每个脑MRI的时间变化,因此这些方法将导致次优性能。为此,我们提出了一种纵向诊断生成的对抗网络(LDGAN)来预测使用不完整的纵向MRI数据的未来时间点的多个临床评分。具体地,LDGAN通过在两个相邻时间点的MRIS之间学习双向映射并共同执行临床评分预测来赋予MR图像,从而显着促进面向任务的图像合成。所提出的LDGAN进一步武装有时间约束和输出约束,以分别在相邻时间点模拟MRI的时间规律性,并鼓励诊断一致性。我们还设计了一个在某些时间点的地面真实分数的那些受试者使用这些受试者。拟议的LDGAN的主要优势在于它可以以任务为导向的方式赋予那些缺失的扫描,并且可以明确地捕获大脑变化的时间特征以获得准确的预测。 ADNI-1和ADNI-2数据集的实验结果表明,与最先进的方法相比,LDGAN可以产生更合理的MRI扫描,有效地预测纵向临床措施。

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