Ultrasonography Image Analysis for Detection and Classification of Chronic Kidney Disease

C. Ho, Tun-Wen Pai, Yuan-Chi Peng, Chien-Hung Lee, Yun-Chih Chen, Yang-Ting Chen, Kuo-Su Chen
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引用次数: 21

Abstract

More than 5% of adults suffer from different types of kidney disease, and millions of people die prematurely from cardiovascular diseases associated with chronic kidney disease (CKD) in each year. The best way to reduce death caused by kidney disease is early prophylaxis and treatment, and which could be achieved through accurate and reliable diagnoses at the early stage. Among various diagnostic methods, ultrasonographic diagnosis is a low-cost, convenient, non-invasive, and timeliness method. Most importantly, this type inspection would not cause extra burden for patients who suffer kidney diseases. This paper presents a computer-aided diagnosis tool based on analyzing ultrasonography images, and the developed system could detect and classify different stages of CKD. The image processing techniques focus on detecting the atrophy of kidney and the proportion of fibrosis conditions within kidney tissues. The system includes image in painting, noise filtering, contour detection, local contrast enhancement, tissue clustering, and quantitative indicator measuring for distinguishing various stages of CKD. This study has collected thousands of ultrasonic images from patients with kidney diseases, and the selected representative CKD images were applied to be pre-analyzed and trained for comparison. The calculated transition locations as reference indicators could provide physicians an auxiliary and objective computer-aid diagnosis tool for CKD identification and classification.
超声图像分析对慢性肾脏疾病的诊断和分类
超过5%的成年人患有不同类型的肾脏疾病,每年有数百万人过早死于与慢性肾脏疾病(CKD)相关的心血管疾病。减少肾脏疾病造成的死亡的最好方法是早期预防和治疗,这可以通过早期准确可靠的诊断来实现。在多种诊断方法中,超声诊断是一种成本低、方便、无创、及时性好的方法。最重要的是,这种类型检查不会给患有肾病的患者带来额外的负担。本文提出了一种基于超声图像分析的计算机辅助诊断工具,该系统可以对CKD的不同阶段进行检测和分类。图像处理技术的重点是检测肾脏萎缩和肾脏组织内纤维化状况的比例。该系统包括图像绘制、噪声滤波、轮廓检测、局部对比度增强、组织聚类和定量指标测量,用于区分CKD的不同阶段。本研究收集了数千张肾脏疾病患者的超声图像,选取具有代表性的CKD图像进行预分析和训练进行比较。计算出的过渡位置作为参考指标,可为医生提供辅助、客观的计算机辅助诊断工具,用于CKD的识别和分类。
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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