学习用图条件变分自编码器合成皮层形态变化。

Yaqiong Chai, Mengting Liu, Ben A Duffy, Hosung Kim
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引用次数: 1

摘要

脑形态学的变化,如皮层变薄,对理解脑老化和各种神经退行性疾病的轨迹具有重要价值。在这项工作中,我们采用了一种以年龄为条件的生成式神经网络变分自编码器(VAE),它能够在给定输入皮层厚度图的情况下生成不同年龄的皮层厚度图。考虑到模型中的网格拓扑结构,我们提出了一个基于加权邻接的损失函数,将定义为边缘连接的表面形貌与映射为顶点的皮质厚度进行整合。与不使用表面拓扑信息的传统条件VAE相比,我们的方法更好地预测了“未来”皮层厚度图,特别是当年龄差距变得更大时。我们的模型有潜力预测与衰老和神经退行性疾病相关的个体皮层形态的独特时空模式。
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LEARNING TO SYNTHESIZE CORTICAL MORPHOLOGICAL CHANGES USING GRAPH CONDITIONAL VARIATIONAL AUTOENCODER.

Changes in brain morphology, such as cortical thinning are of great value for understanding the trajectory of brain aging and various neurodegenerative diseases. In this work, we employed a generative neural network variational autoencoder (VAE) that is conditional on age and is able to generate cortical thickness maps at various ages given an input cortical thickness map. To take into account the mesh topology in the model, we proposed a loss function based on weighted adjacency to integrate the surface topography defined as edge connections with the cortical thickness mapped as vertices. Compared to traditional conditional VAE that did not use the surface topological information, our method better predicted "future" cortical thickness maps, especially when the age gap became wider. Our model has the potential to predict the distinctive temporospatial pattern of individual cortical morphology in relation to aging and neurodegenerative diseases.

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