肺实质自适应阈值

Xin-Yue Li, Fan Xu, Xiao Hu, Shao-Hu Peng, H. Nam, Jin-Ming Zhao
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引用次数: 4

摘要

肺实质的分割是计算机辅助诊断(CAD)系统的关键步骤。肺实质分割的准确性对CAD系统的后续步骤,如肺结节检测和特征提取有很大的影响。在分割之前,应该进行预处理以去除胸腔外的参考。预处理后,采用肺实质面积阈值进行分割。然而,目前的分割方法主要基于固定的区域阈值,存在分割错误和分割失败率高的问题。本文提出了一种新的自适应阈值分割方法,实现了全自动分割,并保持了较高的准确率。首先,基于最小二乘法构造多项式拟合,拟合肺实质面积曲线;其次,建立代表所有患者肺实质变化趋势的金标准。最后对黄金标准进行相应调整,实现分割的完全自适应和自动化。实验结果表明,该方法具有较高的分割准确率和分割精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Self-adapting threshold of pulmonary parenchyma
Segmentation for pulmonary parenchyma is a crucial step for computer aided diagnosis (CAD) systems. The accuracy of pulmonary parenchyma segmentation can have a great impact on further steps of CAD systems, such as pulmonary nodule detection and feature extraction. Before segmentation, preprocessing should be done to remove references outside the thorax. After preprocessing, pulmonary parenchyma area threshold will be employed to realize segmentation. However, current segmentation approaches are mainly based on a fixed area threshold, which confronts problem of mis-segmentation and high segmentation failure rate. This article proposed a novel self-adapting threshold segmentation approach, which realized fully automatic segmentation and held considerable accuracy rate. First, fitting of polynomials based on the least square law is constructed to fit curves of pulmonary parenchyma areas. Secondly, a golden standard is created to represent change trend of pulmonary parenchyma for all patients. Finally, the golden standard is adjusted accordingly to realize full adaption and automation of segmentation. Experimental results indicated that the proposed approach achieved excellent accuracy rate and precise segmentation.
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