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Novel Four Stages Classification of Breast Cancer Using Infrared Thermal Imaging and a Deep Learning Model

机译:使用红外热成像和深度学习模型对乳腺癌进行新的四个阶段分类

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According to a recent study conducted in 2016, 2.8 million women worldwide had already been diagnosed with breast cancer; moreover, the medical care of a patient with breast cancer is costly and, given the cost and value of the preservation of the health of the citizen, the prevention of breast cancer has become a priority in public health. We have seen the apparition of several techniques during the past 60 years, such as mammography, which is frequently used for breast cancer diagnosis. However, false positives of mammography can occur in which the patient is diagnosed positive by another technique. Also, the potential side effects of using mammography may encourage patients and physicians to look for other diagnostic methods. This article, present a Novel technique based on an inceptionV3 couples to k-Nearest Neighbors (InceptionV3-KNN) and a particular module that we named: "StageCancer." These techniques succeed to classify breast cancer in four stages (Tl: non-invasive breast cancer, T2: the tumor measures up to 2 cm, T3: the tumor is larger than 5 cm and T4: the full breast is cover by cancer).
机译:根据2016年进行的一项最新研究,全世界已经有280万妇女被诊断出患有乳腺癌。此外,乳腺癌患者的医疗护理是昂贵的,并且考虑到维护公民健康的成本和价值,预防乳腺癌已经成为公共卫生中的优先事项。在过去的60年中,我们已经看到了多种技术的应用,例如乳腺X线照相术,该技术常用于乳腺癌的诊断。但是,可能会发生乳房X线检查的假阳性,其中通过另一种技术将患者诊断为阳性。同样,使用乳腺X射线摄影术的潜在副作用可能会鼓励患者和医生寻找其他诊断方法。本文介绍了一种基于inceptionV3耦合到k最近邻居(InceptionV3-KNN)的新颖技术,以及一个名为“ StageCancer”的特定模块。这些技术成功地将乳腺癌分为四个阶段(T1:非侵入性乳腺癌,T2:肿瘤长至2 cm,T3:肿瘤大于5 cm,T4:整个乳房被癌症覆盖)。

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