利用卷积神经网络(CNN)通过 CT 扫描进行乳腺癌分类

Anita Loi, Ruth N Panjaitan, S. Siregar, Allwin M. Simarmata
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引用次数: 0

摘要

乳腺癌是印度尼西亚妇女的常见病。及早发现乳腺癌对最大限度地减少负面影响和增加乳腺癌患者的康复机会非常重要。乳腺癌检测工作采用 CT 扫描图像技术。CT 扫描图像可提供乳房内部结构的详细图像,可识别可能是乳腺癌早期征兆的病理变化。本研究的目的是利用 CNN 算法对 CT 扫描图像进行乳腺癌分类。使用的数据集包括三个标签,即良性肿瘤、恶性肿瘤和正常。三个数据集由 1096 个数据组成。CNN 是人工智能领域的一种算法,已在图像数据的模式识别方面取得了成功。收集的乳腺 CT 扫描图像数据集包括乳腺癌和非乳腺癌病例。这些数据用于训练和测试 CNN 模型。此外,还通过应用 CNN 方法对 CT 扫描图像进行了乳腺癌分类。研究结果表明,准确率为 97.26%。在良性分类中,精确度为 0.99(99%),召回率为 0.96(96%),f1-score 为 0.98(98%),支持度为 186;然后是恶性分类,精确度为 93% 或 0.93,召回率为 98%,支持度为 0.98,f1-score 为 96%,支持度为 202。最后是正常分类,精确度为 99%(0.99 分),召回率为 97%(0.97 分),f1 分数为 98%(0.93 分),支持率为 269。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Breast Cancer Classification Through CT Scan Using Convolutional Neural Network (CNN)
A common disease suffered by Indonesian women is breast cancer. Early awareness of breast cancer is very important to minimize the negative impact and increase the chances of recovery for breast cancer patients. Breast cancer detection efforts using CT scan image technology. CT scan images provide a detailed picture of the internal structure of the breast, allowing the identification of pathological changes that may be early signs of breast cancer. The purpose of the study is to utilize CNN algorithm for breast cancer classification using CT scan images. The dataset used consists of three labels namely benign cancer, malignant cancer, normal. The three data sets consist of 1096 data. CNN is a type of algorithm in the field of artificial intelligence that has proven successful in pattern recognition on image data. The collected breast CT scan image dataset includes breast cancer and non-breast cancer cases. The data is used to train and test the CNN model. Furthermore, breast cancer classification through CT scans is carried out by applying the CNN method. The results of the research conducted obtained an accuracy of 97.26%. In Benign classification with precision 0.99 (99%), recall 0.96 (96%), f1-score 0.98 (98%), support 186, then Malignant classification with precision 93% or with points 0.93, recall 98% with points 0.98, and f1-score 96% with points 0.96, and support 202. The last is the normal classification with 99% precision with 0.99 points, 97% recall with 0.97 points, 98% f1-score with 0.93 points, and 269 support.
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