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Detection of Tumour Based on Breast TissueCategorization

机译:基于乳房组织分类的肿瘤检测

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Background: Despite the benefits of Computer Aided Detection (CAD), false detection of breast tumour is still a challenging issue with oncologist. A mammography is a non-invasive screening tool that uses low energy X-rays to show the pathology structure of breast tissue. Interpreting mammogram visually is a time consuming process and requires a great deal of skill and experience. Earlier Computer Aided Techniques emphasis detection of tumour in breast tissues rather than categorization of breast into Breast Imaging Report and Data System (BI-RADS) which is the medically understandable method of reporting.Aim: The work centred on developing a CAD system which is capable of not only detecting but also categorizing breast tissue in line with BI-RADS scale.Methodology: The acquired images were pre-processed to remove unwanted contents. Two stage medical procedural approach was designed to categorize the tissue in breast images into low dense (fatty) and high dense. Tumours in the low dense breasts were segmented, and then classified as normal, benign and malignant. The developed system was evaluated using sensitivity, specificity, false positive reduction, false negative reduction and overall performance.Results: The developed CAD achieved 90.65% sensitivity, 73.59% specificity, 0.02 positive reduction, 0.04 false negative reduction and 85.71% overall performance.Conclusion: The false positive reduction result obtained shows that false detection has been minimized as a result of categorization procedure of the breast tissue in mammograms.
机译:背景:尽管有计算机辅助检测(CAD)的好处,但对肿瘤科医生的错误检测仍然是一个具有挑战性的问题。乳腺摄影是一种非侵入性的筛查工具,它使用低能X射线显示乳房组织的病理结构。视觉上解释乳房X光照片是一个耗时的过程,需要大量的技能和经验。早期的计算机辅助技术着重于检测乳房组织中的肿瘤,而不是将乳房归类为医学上可以理解的报告方法-乳房成像报告和数据系统(BI-RADS)目的:这项工作的重点是开发能够不仅可以检测到乳房组织,还可以根据BI-RADS尺度对乳房组织进行分类。方法:对获取的图像进行预处理,以去除不需要的内容。设计了两阶段医学程序方法,将乳房图像中的组织分为低密度(脂肪)和高密度。将低密度乳腺中的肿瘤切开,然后分为正常,良性和恶性。通过敏感性,特异性,假阳性减少率,假阴性减少率和总体性能对开发的系统进行了评估。结果:开发的CAD达到了90.65%的敏感性,73.59%的特异性,0.02个阳性减少率,0.04个假阴性的减少率和85.71%的总体性能。 :获得的假阳性减少结果表明,由于乳房组织在乳房X线照片中的分类程序,错误检测已被最小化。

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