Automated kidney morphology measurements from ultrasound images using texture and edge analysis

Hariharan Ravishankar, Pavan Annangi, M. Washburn, Justin D. Lanning
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引用次数: 6

Abstract

In a typical ultrasound scan, a sonographer measures Kidney morphology to assess renal abnormalities. Kidney morphology can also help to discriminate between chronic and acute kidney failure. The caliper placements and volume measurements are often time consuming and an automated solution will help to improve accuracy, repeatability and throughput. In this work, we developed an automated Kidney morphology measurement solution from long axis Ultrasound scans. Automated kidney segmentation is challenging due to wide variability in kidney shape, size, weak contrast of the kidney boundaries and presence of strong edges like diaphragm, fat layers. To address the challenges and be able to accurately localize and detect kidney regions, we present a two-step algorithm that makes use of edge and texture information in combination with anatomical cues. First, we use an edge analysis technique to localize kidney region by matching the edge map with predefined templates. To accurately estimate the kidney morphology, we use textural information in a machine learning algorithm framework using Haar features and Gradient boosting classifier. We have tested the algorithm on 45 unseen cases and the performance against ground truth is measured by computing Dice overlap, % error in major and minor axis of kidney. The algorithm shows successful performance on 80% cases.
利用纹理和边缘分析从超声图像中自动测量肾脏形态
在典型的超声扫描中,超声医师测量肾脏形态以评估肾脏异常。肾脏形态也可以帮助区分慢性和急性肾功能衰竭。卡钳的位置和体积测量通常非常耗时,自动化解决方案将有助于提高精度、可重复性和吞吐量。在这项工作中,我们开发了一种自动肾脏形态学测量解决方案,从长轴超声扫描。由于肾脏形状、大小的差异很大,肾脏边界的对比度较弱,并且存在隔膜、脂肪层等强边缘,因此自动肾脏分割具有挑战性。为了解决这些挑战并能够准确地定位和检测肾脏区域,我们提出了一种利用边缘和纹理信息结合解剖线索的两步算法。首先,我们使用边缘分析技术通过将边缘图与预定义模板匹配来定位肾脏区域。为了准确估计肾脏形态,我们在使用Haar特征和梯度增强分类器的机器学习算法框架中使用纹理信息。我们已经在45个未见的情况下测试了该算法,并通过计算骰子重叠,肾的长、小轴的%误差来衡量该算法对地面真实的性能。该算法在80%的情况下显示出成功的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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