HNAS Reg:用于可变形医学图像配准的分层神经结构搜索。

Jiong Wu, Yong Fan
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引用次数: 0

摘要

卷积神经网络(CNNs)已被广泛用于建立用于医学图像配准的深度学习模型,但手动设计的网络架构并不一定是最优的。本文提出了一种由卷积运算搜索和网络拓扑搜索组成的分层NAS框架(HNAS-Reg),以确定用于可变形医学图像配准的最佳网络架构。为了减轻计算开销和内存限制,在不损失优化质量的情况下使用了部分信道策略。在由636张T1加权磁共振图像(MRI)组成的三个数据集上进行的实验表明,与最先进的图像配准方法(包括一种具有代表性的传统方法和两种基于无监督学习的方法)相比,该方法可以建立一个深度学习模型,提高图像配准精度,缩小模型大小。
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HNAS-Reg: Hierarchical Neural Architecture Search for Deformable Medical Image Registration.

Convolutional neural networks (CNNs) have been widely used to build deep learning models for medical image registration, but manually designed network architectures are not necessarily optimal. This paper presents a hierarchical NAS framework (HNAS-Reg), consisting of both convolutional operation search and network topology search, to identify the optimal network architecture for deformable medical image registration. To mitigate the computational overhead and memory constraints, a partial channel strategy is utilized without losing optimization quality. Experiments on three datasets, consisting of 636 T1-weighted magnetic resonance images (MRIs), have demonstrated that the proposal method can build a deep learning model with improved image registration accuracy and reduced model size, compared with state-of-the-art image registration approaches, including one representative traditional approach and two unsupervised learning-based approaches.

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