利用磁共振成像数据的深度学习预测阿尔茨海默病和量化海马不对称变性。

Xi Liu, Hongming Li, Yong Fan
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引用次数: 0

摘要

为了量化海马侧不对称变性以早期预测阿尔茨海默病(AD),我们开发了一个深度学习(DL)模型,从海马磁共振成像(MRI)数据中学习信息特征,以在时间-事件预测模型框架中预测AD转换。DL模型使用基于自动编码器的正则化子在单侧海马数据上进行训练,有助于量化AD转换的海马预测能力的横向不对称性,并确定整合双侧海马MRI数据预测AD的最佳策略。1307名受试者(817名用于训练,490名用于验证)的MRI扫描实验结果表明,与其他预测建模策略相比,左侧海马体比右侧海马体能够更好地预测AD,并且将双侧海马体数据与基于实例的DL方法相结合改进了AD预测。
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Predicting Alzheimer's Disease and Quantifying Asymmetric Degeneration of the Hippocampus Using Deep Learning of Magnetic Resonance Imaging Data.

In order to quantify lateral asymmetric degeneration of the hippocampus for early predicting Alzheimer's disease (AD), we develop a deep learning (DL) model to learn informative features from the hippocampal magnetic resonance imaging (MRI) data for predicting AD conversion in a time-to-event prediction modeling framework. The DL model is trained on unilateral hippocampal data with an autoencoder based regularizer, facilitating quantification of lateral asymmetry in the hippocampal prediction power of AD conversion and identification of the optimal strategy to integrate the bilateral hippocampal MRI data for predicting AD. Experimental results on MRI scans of 1307 subjects (817 for training and 490 for validation) have demonstrated that the left hippocampus can better predict AD than the right hippocampus, and an integration of the bilateral hippocampal data with the instance based DL method improved AD prediction, compared with alternative predictive modeling strategies.

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