基于深度学习技术的胸部恶性疾病(癌症)识别

Timmana Hari Krishna, C. Rajabhushnam
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引用次数: 5

摘要

最近观察到,与乳房有关的疾病影响着全球各地的妇女,它已成为世界上第二大常见疾病。2012年有12%的癌症患者其中25%是乳腺癌患者。在传统的治疗方法中,乳腺癌是恶性肿瘤。大多数的医生都是手工推断乳房的恶性生长区域。各种检查表明,本手册假定需要更多的时间,这取决于操作和机器。因此,有必要设计一个完善的算法来识别胸部疾病。在本报告中,我们开发了一种自动识别乳腺癌患者的算法。该算法可以通过观察活检图像自动检测出乳腺癌的肿瘤。此外,计算必须非常精确,因为个人的生命处于危险之中。所有的性能操作都是在显微镜图片上完成的,并为显微镜图片设计了数据集,用于对图片进行聚类分析。实验结果表明,该方案的准确率为98.3%,精密度为0.65,召回率为0.95,F1得分为0.77,ROC - AUC为0.692。
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Bosom Malignant Diseases (Cancer) Identification by using Deep Learning Technique
In recently observed that breast related diseases affects women present all over the globe, where it emerges as the second most common disease in the world. In 2012, 12 % cancer patients were present and from these patients 25 % are breast cancer patients. In the traditional method to cure the breast cancer is malignant tumor. Most of the doctors manually presumed the bosom malignant growth region. Various examinations have referred that this manual presumed requires more time and it relies upon the operation and machine. Therefore, it is necessary to design a perfect algorithm for the identification of bosom diseases. In this report, we have developed an algorithm to identify the breast cancer patient automatically. This algorithm can automatically detect the tumor of breast cancer by observing the biopsy pictures. Also, the calculation must be very precise, as the lives of individuals are at risk. All the performance operations are done on the microscopy pictures and the data set for this microscopy pictures is designed for the clustering analysis of a picture. The experimental results of the proposed scheme show accuracy 98.3 %, precision 0.65, Recall 0.95, F1 score 0.77 and ROC - AUC 0.692.
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