Construction of Multi-resolution Multi-organ Shape Model Based on Stacked Autoencoder Neural Network

Zhonghua Chen, Hongkai Wang, F. Cong, Lauri Kettunen
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Abstract

The construction of statistical shape models (SSMs) is an important method in the field of medical image segmentation. Most SSMs are constructed by using traditional modeling methods based on principal component analysis (PCA), which cannot fully present the true deformation ability of models. To solve the insufficient deformation ability of SSMs, we propose a stacked autoencoder (SAE) neural network to construct a multi-resolution multi-organ shape model based on mouse micro-CT images, which can express more linear and non-linear deformations than SSMs based on PCA. The main advantage of this method is that the SAE neural network is simple and flexible and it can learn more deformation modes from training data. We have quantitatively compared the modeling performance of this method with the constructed SSMs based on PCA in terms of model generalization and specificity.
基于堆叠自编码器神经网络的多分辨率多器官形状模型构建
统计形状模型的构建是医学图像分割领域的一种重要方法。大多数ssm是采用基于主成分分析(PCA)的传统建模方法构建的,不能完全反映模型的真实变形能力。为了解决ssm变形能力不足的问题,我们提出了一种堆叠自编码器(SAE)神经网络,构建了基于小鼠微ct图像的多分辨率多器官形状模型,该模型比基于PCA的ssm能表达更多的线性和非线性变形。该方法的主要优点是SAE神经网络简单灵活,可以从训练数据中学习到更多的变形模式。我们在模型泛化和特异性方面定量比较了该方法与基于PCA构建的ssm的建模性能。
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