学习通过肝包膜和肝实质联合超声图像特征诊断肝硬化

Shuohong Wang, Xiang Liu, Jingwen Zhao, J. Song, J. Zhang, Y. Chen
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引用次数: 4

摘要

本文提出了一种新的肝硬化诊断方法,利用高频超声成像不仅可以诊断肝硬化,而且可以确定其分期。我们提出结合肝包膜和实质纹理的特征提取,以避免只考虑一个方面造成的偏差。采用多尺度、多目标优化方法对肝包膜进行定位,并提出了衡量包膜平滑度和连续性的指标。采用高斯混合模型(GMM)对薄壁组织纹理进行建模,采用尺度空间缺陷检测算法对薄壁组织中的病变进行检测。肝脏的病理改变程度通过描述包膜形态和实质病变的7个特征来定量评估。然后训练SVM分类器将样本划分为不同的肝硬化阶段。实验结果证明了该方法的有效性,优于其他4种最先进的方法以及仅使用胶囊或薄壁纹理特征的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning to diagnose cirrhosis via combined liver capsule and parenchyma ultrasound image features
This paper proposes a novel cirrhosis diagnosis method using high-frequency ultrasound imaging that is able to not only diagnose cirrhosis, but also determine its stage. We propose combined features extracted from both liver capsule and parenchyma texture to avoid the bias caused by considering only one aspect. The liver capsule is localized using a multi-scale, multi-objective optimization method and indices are proposed to measure the smoothness and continuity of the capsule. The parenchyma texture is modeled with Gaussian mixture model (GMM), and the lesions in the parenchyma are detected by a scale-space defect detection algorithm. The degree of pathological changes of the liver is quantitatively evaluated by 7 features describing morphology of the capsule and lesions in the parenchyma. Then SVM classifiers are trained to classify the samples into different cirrhosis stages. Experiment results demonstrate the effectiveness of the proposed method, which outperforms other 4 state-of-the-art methods and the proposed method that solely uses capsule or parenchyma texture features.
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