%0 Journal Article
%T 基于极坐标拉伸的CT胃癌关键特征增广方法
Enhancing Key Features of Gastric Cancer in CT Modality Using Polar Coordinate Stretching
%A 张贻钦
%A 陈庆奎
%A 黄陈
%A 张正杰
%A 陈美玲
%A 付直兵
%J Modeling and Simulation
%P 736-748
%@ 2324-870X
%D 2025
%I Hans Publishing
%R 10.12677/mos.2025.144325
%X 目的:缓解CT影像的切面空间定义域与神经网络特征提取范围不匹配的问题。资料与方法:在临床中收集了7年跨度内被诊断为胃癌的病人在诊疗过程中生成的895例CT影像资料,清洗出689个高质量序列,由第一名医师确定最大癌症负载横断面并进行标注,并由另一名医师进行审核,组建实验数据集。引入一种基于拉伸的图像增广方法,对齐CT横断面定义域与神经网络特征提取范围,最大化利用CT影像序列的定义域外空间进行数据增广,提高训练效率。结果:在使用所提出的增广方法后,神经元前向响应与反向梯度的均匀度得到提升。同等复杂度下,更少的迭代轮次即能达到更优的效果。结论:所提出的增强方法可以提高神经网络在CT模态上的计算效率,在临床识别任务中有一定应用潜力。
Purpose: To address the mismatch between the slice spatial domain of CT images and the feature extraction range of neural networks. Materials and Methods: A total of 895 CT imaging scans from patients diagnosed with gastric cancer over a span of 7 years were collected in clinical practice. After data cleaning, 689 high-quality sequences were obtained. The maximum cancer load slice was determined and annotated by the first physician and reviewed by another physician to form the experimental dataset. A stretching-based image augmentation method was introduced to align the slice domain of CT with the feature extraction range of neural networks, maximizing the use of the extra-domain space of CT image sequences for augmentation and improving training efficiency. Results: After applying the proposed augmentation method, the uniformity of neuronal forward responses and backward gradients was enhanced. Under the same complexity, fewer iterations were required to achieve better results. Conclusion: The proposed augmentation method can improve the computational efficiency of neural networks on CT modality and has potential for application in clinical cancer detection tasks.
%K 数据增广,
%K 胃癌成像,
%K 神经网络,
%K 数据效率
Data Preprocessing
%K Gastric Cancer Imaging
%K Neural Networks
%K Data Efficiency
%U http://www.hanspub.org/journal/PaperInformation.aspx?PaperID=112475