基于纹理描述符的热图自动分割与分析用于乳腺癌检测

T. Mejía, María G. Pérez, V. Andaluz, A. Conci
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引用次数: 24

摘要

在发展中国家,乳腺癌是造成年轻妇女高死亡率的主要原因之一。在拉丁美洲,这是一个重要的健康问题,例如在巴西和厄瓜多尔,这是35岁左右妇女患癌症的主要原因。目前,乳房x光检查被用作筛查乳腺癌的金标准。然而,对于年轻女性,不建议进行乳房x光检查,因为它在致密乳房上显示的对比度较低,因此必须考虑其他替代技术。世界卫生组织表示,筛查项目是对抗这种疾病更有效的方法。因此,解决早期检测的新研究是至关重要的,这些研究既具有成本效益,又比目前的方法(基于自我检查和乳房x光检查)有优势。早期发现可提高预后和生存率。本文建议采用一种基于热成像的低成本、无创诊断技术。纹理分析(通过使用统计描述符自动检测乳房热图中的异常)被考虑用于特征以及从热图的ROI(感兴趣区域)计算的统计度量。这些特征提供给最近邻分类器,其中异常乳房被识别的准确率为94.44%。研究结果表明,使用简单的纹理描述符,适当的过滤和增强技术,可以在任何年龄,任何密度或大小的乳房,甚至孕妇中检测到早期发生的乳房肿瘤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Segmentation and Analysis of Thermograms Using Texture Descriptors for Breast Cancer Detection
Breast cancer is one of the leading causes for high mortality rates among young women, in the developing countries. In Latin American this is an important health problem, for instance in Brazil and Ecuador this is the leading cause of cancer among women around 35 years old. Currently mammography is used as the gold standard for screening breast cancer. However, for young women mammograms are not recommended due the low contrast it presents on dense breasts and alternative techniques must be considered for this purpose. The World Health Organization states that screening programs are the more efficient way to combat this disease. Therefore it is fundamental to address new researches on early detection that are cost-effective and present advantages over the current method (based on the self-examination and mammography). The identification of such disease in early stage increases the prognosis and the survival rate. This article proposes to incorporate a low-cost and non-invasive diagnostic technique based on the use of thermal imaging. A textural analysis (by using statistical descriptors for automatic detection of abnormality in breast thermo grams) is considered for features as well as statistics measures computed from thermo grams' ROI (region of interest). Theses features feed a Nearest Neighbors classifier, where abnormal breasts are was identified with an accuracy of 94.44 %. The results of the study show that using simple textures descriptors, appropriate filtering and enhancement techniques it is possible to detected early onset of breast tumor in women of any age, with breasts of any density or size and even in pregnant women.
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