利用深度学习检测乳腺癌并定位肿块区域

Md. Mijanur Rahman, Md. Zihad Bin Jahangir, Anisur Rahman, Moni Akter, Md Abdullah Al Nasim, Kishor Datta Gupta, Roy George
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引用次数: 0

摘要

乳腺癌是一种严重的健康障碍,因为它是最常见的侵袭性癌症,也是导致妇女死亡的第二大原因。及时发现是有效干预的关键,因此乳腺癌筛查是医疗保健的重要组成部分。虽然乳房 X 射线照相术经常被用于筛查目的,但病理学家进行的人工诊断既费力又容易出错。遗憾的是,大多数研究都将肿块分类置于肿块定位之上,导致关注度分布不均。针对这一问题,我们提出了一种开创性的方法,旨在从乳房 X 射线照相图片中识别并精确定位癌症。这将使医学专家能够更快、更精确地识别肿瘤。本文介绍了一种复杂的深度卷积神经网络设计,其中融合了 U-Net 和 YOLO 等先进的深度学习技术。其目的是实现乳腺 X 射线照片中乳腺病变的自动检测和定位。为了评估我们模型的有效性,我们进行了全面的审查,其中包括一系列性能标准。我们使用公开的 MIAS 数据集对准确度、精确度、召回率、F1 分数、ROC 曲线和 R 平方误差进行了具体评估。我们的模型表现非常出色,检测任务的准确率为 93.0%,AUC(曲线下面积)为 98.6%。此外,在定位任务中,我们的模型取得了 97% 的显著高 R 平方值。这些发现突出表明,深度学习可以提高乳腺癌诊断的效率和准确性。我们所提出的方法可以实现乳腺病变检测和分类的自动化,具有很大的优势。它减轻了病理学家的工作量,有助于加快准确的乳腺癌筛查过程。因此,我们提出的方法有望改善医疗效果,提高乳腺癌检测和诊断的整体效率。
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 Detection and Localizing the Mass Area Using Deep Learning
Breast cancer presents a substantial health obstacle since it is the most widespread invasive cancer and the second most common cause of death in women. Prompt identification is essential for effective intervention, rendering breast cancer screening a critical component of healthcare. Although mammography is frequently employed for screening purposes, the manual diagnosis performed by pathologists can be laborious and susceptible to mistakes. Regrettably, the majority of research prioritizes mass classification over mass localization, resulting in an uneven distribution of attention. In response to this problem, we suggest a groundbreaking approach that seeks to identify and pinpoint cancers in breast mammography pictures. This will allow medical experts to identify tumors more quickly and with greater precision. This paper presents a complex deep convolutional neural network design that incorporates advanced deep learning techniques such as U-Net and YOLO. The objective is to enable automatic detection and localization of breast lesions in mammography pictures. To assess the effectiveness of our model, we carried out a thorough review that included a range of performance criteria. We specifically evaluated the accuracy, precision, recall, F1-score, ROC curve, and R-squared error using the publicly available MIAS dataset. Our model performed exceptionally well, with an accuracy rate of 93.0% and an AUC (area under the curve) of 98.6% for the detection job. Moreover, for the localization task, our model achieved a remarkably high R-squared value of 97%. These findings highlight that deep learning can boost the efficiency and accuracy of diagnosing breast cancer. The automation of breast lesion detection and classification offered by our proposed method bears substantial benefits. By alleviating the workload burden on pathologists, it facilitates expedited and accurate breast cancer screening processes. As a result, the proposed approach holds promise for improving healthcare outcomes and bolstering the overall effectiveness of breast cancer detection and diagnosis.
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