功能多样性应用于基于数字乳房x线摄影的乳腺组织假阳性降低

William Torres, Antonio Oseas, A. Sousa, Francisco Airton Silva
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引用次数: 3

摘要

乳腺癌目前是女性患者中最常见的疾病,也是死亡率第二高的疾病。这些令人震惊的统计数据近年来不断增加,其主要责任仍然是外部风险因素,如过度消费酒精、烟草、加工食品、久坐不动的生活方式、肥胖或任何与不平衡的生活方式有关的项目。此外,另一个主要影响因素与晚期诊断和治疗有关。因此,正在开发一些机制,例如CAD系统,以协助专家进行快速和早期诊断。这项工作提出了一种减少误报的方法。为了评估和验证所提出的方法,使用CAD系统从DDSM数据库中提取区域。该方法采用基于功能多样性指数的纹理描述符提取特征,然后对质量和非质量感兴趣的区域进行分类。结果令人满意,准确率为92.29%,灵敏度为90.15%,特异性为95.65%,kappa指数为0.841,ROC曲线下面积为0.939。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Functional Diversity applied to the false positive reduction in breast tissues based on digital mammography
Breast cancer is currently the most common in female patients and the second with the highest mortality rate. The primary responsibility for these alarming statistical data, which has been growing in recent years, are still factors of external risks such as excessive consumption of alcohol, tobacco, processed foods, sedentary lifestyle, obesity or any item associated with an unbalanced lifestyle. Also, another major impact factor is related to late diagnosis and treatment. With this, several mechanisms, such as CAD systems, are being developed to assist specialists in rapid and early diagnosis. This work proposes an approach to reduce false positives. To evaluate and validate the proposed methodology regions extracted from the DDSM database using a CAD system were used. In the proposed methodology used texture descriptors based on functional diversity indexes for the extraction of characteristics, followed by the classification of regions of interest in mass and non-mass. The results were promising, reaching rates of accuracy, sensitivity, specificity, kappa index and area under the ROC curve of 92.29%, 90.15%, 95.65%, 0.841 and 0.939, respectively.
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