Automated Breast Cancer Diagnosis Using Deep Learning and Region of Interest Detection (BC-DROID)

Richard Platania, Shayan Shams, Seungwon Yang, Jian Zhang, Kisung Lee, Seung-Jong Park
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引用次数: 53

Abstract

Detection of suspicious regions in mammogram images and the subsequent diagnosis of these regions remains a challenging problem in the medical world. There still exists an alarming rate of misdiagnosis of breast cancer. This results in both over treatment through incorrect positive diagnosis of cancer and under treatment through overlooked cancerous masses. Convolutional neural networks have shown strong applicability to various image datasets, enabling detailed features to be learned from the data and, as a result, the ability to classify these images at extremely low error rates. In order to overcome the difficulty in diagnosing breast cancer from mammogram images, we propose our framework for automated breast cancer detection and diagnosis, called BC-DROID, which provides automated region of interest detection and diagnosis using convolutional neural networks. BC-DROID first pretrains based on physician-defined regions of interest in mammogram images. It then trains based on the full mammogram image. The resulting network is able to detect and classify regions of interest as cancerous or benign in one step. We demonstrate the accuracy of our framework's ability to both locate the regions of interest as well as diagnose them. Our framework achieves a detection accuracy of up to 90% and a classification accuracy of 93.5% (AUC of 92.315%). To the best of our knowledge, this is the first work enabling both automated detection and diagnosis of these areas in one step from full mammogram images. Using our framework's website, a user can upload a single mammogram image, visualize suspicious regions, and receive the automated diagnoses of these regions.
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基于深度学习和感兴趣区域检测的乳腺癌自动诊断(BC-DROID)
乳房x光图像中可疑区域的检测和随后对这些区域的诊断仍然是医学界的一个具有挑战性的问题。乳腺癌的误诊率仍然高得惊人。这就导致了由于错误的癌症阳性诊断而导致的过度治疗和由于忽视癌性肿块而导致的治疗不足。卷积神经网络已经显示出对各种图像数据集的强大适用性,能够从数据中学习详细的特征,因此能够以极低的错误率对这些图像进行分类。为了克服从乳房x线照片中诊断乳腺癌的困难,我们提出了我们的自动化乳腺癌检测和诊断框架,称为BC-DROID,它使用卷积神经网络提供自动化感兴趣区域检测和诊断。BC-DROID首先基于医生定义的乳房x光图像感兴趣区域进行预训练。然后,它根据乳房x光片的完整图像进行训练。由此产生的网络能够在一步中检测并将感兴趣的区域分类为癌变或良性。我们证明了我们的框架定位感兴趣区域和诊断它们的能力的准确性。我们的框架实现了高达90%的检测精度和93.5%的分类精度(AUC为92.315%)。据我们所知,这是第一次从全乳房x光照片一步实现这些区域的自动检测和诊断。使用我们的框架网站,用户可以上传单个乳房x光照片,可视化可疑区域,并接收这些区域的自动诊断。
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