基于视觉变换的标准肝脏切片自动识别

Jiansong Zhang, Yongjian Chen, Peizhong Liu
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引用次数: 0

摘要

超声标准视图的获取是进行超声诊断的先决条件。为解决成人肝脏标准切片长期受医师主观经验制约的临床影像学难题,本文收集福建医科大学第二医院12张常见肝脏超声标准切片,探讨基于视觉变换(Vision-Transformer, ViT)的深度学习自动识别方法在肝脏超声标准切片中的适应性。通过对肝脏超声图像进行区域像素集分割操作,我们发现当基本分割模块为16*16,深度为12时,ViT模型在现有超声数据集中的识别准确率达到92.9%。我们还比较了基于卷积神经网络的其他主流深度学习框架,在视觉注意机制的特征指导下,ViT模型优于所有其他方法。本文的工作为基于视觉注意机制的肝脏超声深度学习提供了丰富的研究基础,并在一定程度上规范了基于超声手段的成人肝脏医学检查。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Recognition of Standard Liver Sections Based on Vision-Transformer
Acquisition of ultrasound standard views is a prerequisite for performing ultrasound diagnosis. With the aim of solving the clinical imaging challenge that adult liver standard sections have long been constrained by physicians' subjective experience, this paper collects 12 common liver ultrasound standard sections from the Second Hospital of Fujian Medical University and investigates and discusses the adaptability of the Vision-Transformer(ViT)-based deep learning automatic recognition method in liver ultrasound standard sections. Using a regional pixel set segmentation operation on liver ultrasound images, we found that the ViT model achieved recognition accuracy of 92.9% in the available ultrasound dataset when the basic segmentation module was 16*16 and the depth was 12. We also compared other mainstream deep learning frameworks based on convolutional neural networks, and the ViT model outperformed all other methods, guided by the features of the visual attention mechanism. The work in this paper provides a rich research base for deep learning of liver ultrasound based on the visual attention mechanism, and to a certain extent standardises the medical examination of the liver in adults by ultrasound-based means.
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