利用纹理特征进行乳房x线照片分类

Sri Frenzilino Mahayyu Akbarisena, Ema Rachmawati, D. Q. Utama
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引用次数: 0

摘要

癌症是身体的组织细胞继续生长超出正常和失控,使癌细胞推动正常细胞,并导致正常细胞死亡。其中一种癌症是侵袭乳腺组织的癌症,被称为乳腺癌。乳腺癌越早被发现,患者存活的机会就越大。早期发现乳腺癌的技术之一是乳房x光检查。为了尽量减少检查乳房x光检查结果的人为错误,需要一个CAD系统来检查乳房x光检查结果。因此,本研究建立了一个可以将乳房x光片上的乳腺组织分为正常、良性、恶性三种类型的系统。系统的性能达到F1-Score 74.02%, Recall 76.15%, Precision 74.02%。该系统通过将统一局部二值模式和GLCM特征与随机森林分类方法相结合来实现这一性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Leveraging Textural Features for Mammogram Classification
Cancer is the body' s tissue cells that continue to grow beyond normal and out of control so that cancer cells push normal cells and cause death in normal cells. One type of cancer is cancer that attacks breast tissue or is called breast cancer. The sooner breast cancer is detected, it will increase the chance the patient will survive. One of the techniques in the early detection of breast cancer is mammography screening. To minimize human error in checking the results of mammography, a CAD system is needed in checking the results of mammography. Therefore, in this research, a system that can classify breast tissue from mammogram into three classes, namely normal, benign, and malignant has been built. The performance of the system reaches F1-Score 74.02%, Recall 76.15% and Precision 74.02%. The system achieves this performance by combining the Uniform Local Binary Pattern and GLCM features and the Random Forest classification method.
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