医学解剖分割的动态条卷积和自适应形态学感知插件

Guyue Hu;Yukun Kang;Gangming Zhao;Zhe Jin;Chenglong Li;Jin Tang
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摘要

医学解剖分割是医学图像计算机辅助诊断和病灶定位的关键。例如,分割单个肋骨有助于定位肺部病变,并为生成医疗报告提供重要的医学测量(如肋骨间距)。现有方法用相同的网络结构分割形状不同的解剖结构(如条纹肋骨、粗大肺和角形肩胛骨),严重忽视了形态学的异质性。虽然已经引入了一些形状感知算子,如变形卷积和动态蛇卷积,以适应特定的物体形态,但它们仍然难以处理方向变化的条形结构,如24根肋骨和2根锁骨。本文提出了一种新的用于医学解剖分割的卷积插件(DSC-AMP),该插件由动态条卷积(DSC)算子和自适应形态感知(AMP)策略组成。具体而言,动态条纹卷积为每个局部区域定制逐渐变化的方向和偏移量,实现动态条纹接受场。此外,自适应形态感知策略结合了来自各种形状感知卷积核的见解,使模型能够识别和整合对应于异质解剖结构的关键表征。在两个大规模数据集上的大量实验证明了该方法在处理异构医学解剖分割方面的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Strip Convolution and Adaptive Morphology Perception Plugin for Medical Anatomy Segmentation
Medical anatomy segmentation is essential for computer-aided diagnosis and lesion localization in medical images. For example, segmenting individual ribs benefits localizing the lung lesions and providing vital medical measurements (such as rib spacing) for generating medical reports. Existing methods segment shape-different anatomies (such as striped ribs, bulky lungs, and angular scapula) with the same network architecture, the morphology heterogeneity is heavily overlooked. Although some shape-aware operators like deformable convolution and dynamic snake convolution have been introduced to cater to specific object morphology, they still struggle with orientation-varying strip structures, such as 24 ribs and 2 clavicles. In this paper, we propose a novel convolution plugin (DSC-AMP) for medical anatomy segmentation, which is comprised of a dynamic strip convolution (DSC) operator and an adaptive morphology perception (AMP) strategy. Specifically, the dynamic strip convolution customizes gradually varying directions and offsets for each local region, achieving dynamic striped receptive fields. Additionally, the adaptive morphology perception strategy incorporates insights from various shape-aware convolutional kernels, enabling the model to discern and integrate crucial representations corresponding to heterogeneous anatomies. Extensive experiments on two large-scale datasets demonstrate the effectiveness and superiority of the proposed approach for tackling heterogeneous medical anatomy segmentation.
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