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Joint Neuroimage Synthesis and Representation Learning for Conversion Prediction of Subjective Cognitive Decline

机译:主观认知下降转换预测的联合神经影像综合与代表学习

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Predicting the progression of preclinical Alzheimer's disease (AD) such as subjective cognitive decline (SCD) is fundamental for the effective intervention of pathological cognitive decline. Even though mul-timodal neuroimaging has been widely used in automated AD diagnosis, there are few studies dedicated to SCD progression prediction, due to challenges of incomplete and limited data. To this end, we propose a Joint neuroimage Synthesis and Representation Learning (JSRL) framework with transfer learning for SCD conversion prediction using incomplete multimodal neuroimaging data. Specifically, JSRL consists of two major components: 1) a generative adversarial network for synthesizing missing neuroimaging data, and 2) a classification network for learning neuroimage representations and predicting the progression of SCD. These two subnetworks share the same feature encoding module, encouraging that the to-be-generated representations are prediction-oriented and also the underlying association among multimodal images can be effectively modeled for accurate prediction. To handle the limited data problem, we further leverage both image synthesis and prediction models learned from a large-scale ADNI database (with MRI and PET acquired from 863 subjects) to a small-scale SCD database (with only MRI acquired from 113 subjects) in a transfer learning manner. Experimental results show that the proposed JSRL can synthesize reasonable PET scans and is superior to several state-of-the-art methods in SCD conversion prediction.
机译:预测临床前阿尔茨海默病(AD)的进展,如主观认知下降(SCD)是病理认知下降的有效干预的基础。尽管Mul-Timodal神经影像已经广泛用于自动化广告诊断,但由于数据不完整和数据有限的挑战,很少有专用于SCD进展预测的研究。为此,我们提出了一种联合神经视线综合合成和表示学习(JSRL)框架,使用不完整的多模式神经影像数据进行SCD转换预测的转移学习。具体而言,JSRL由两个主要组成部分组成:1)一种用于合成缺失的神经影像数据的生成的对抗网络,以及2)用于学习神经视觉图表示和预测SCD进展的分类网络。这两个子网共享相同的特征编码模块,鼓励待生成的表示导向,并且可以有效地建模多模式图像之间的基础关联以用于精确预测。为了处理有限的数据问题,我们进一步利用了从大规模ADNI数据库(带有来自863个科目的MRI和PET)到一个小型SCD数据库的图像合成和预测模型(只有来自113个科目的MRI)以转移学习方式。实验结果表明,所提出的JSRL可以合成合理的PET扫描,优于SCD转换预测中的几种最先进的方法。

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