Microcalcification Detection in Mammograms Using Deep Learning

IF 0.2 4区 医学 Q4 RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING Iranian Journal of Radiology Pub Date : 2022-04-25 DOI:10.5812/iranjradiol-120758
Mahmoud Shiri Kahnouei, M. Giti, M. Akhaee, A. Ameri
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引用次数: 2

Abstract

Background: Mammography is the most reliable and popular method in the clinical diagnosis of breast cancer. Calcifications are subtle lesions in mammograms that can be cancerous and difficult to detect for radiologists. Computer-aided detection (CAD) can help radiologists identify malignant lesions. Objectives: This study aimed to propose a deep learning based CAD system for detecting calcifications in mammograms. Patients and Methods: A total of 815 in-house mammograms were collected from 204 women undergoing screening mammography. Calcifications in the mammograms were annotated by specialists. Each mammogram was divided into patches of fixed size, and then, patches containing calcifications were extracted, along with the same number of normal patches. A ResNet-50 Convolutional Neural Network (CNN) was trained for classification of patches into normal and calcification groups using training data and then the performance of the trained CNN was tested with new test data. Results: The proposed patch learning approach (PLA) showed a classification accuracy of 96.7% in the binary classification of patches. Therefore, it could detect calcification regions in a given mammogram. The PLA achieved sensitivity and specificity of 96.7% and 96.7%, respectively, with an area under the curve of 98.8%. Conclusion: The present results highlighted the efficacy of the proposed PLA, especially for limited training data. Direct comparison with previous studies is not possible due to differences in datasets. Nevertheless, the PLA accuracy in detecting calcifications was higher than that of deep learning based CAD systems in previous studies. The effective performance of PLA may be attributed to the manual removal of uninformative patches, as they were not used in the training set.
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利用深度学习检测乳房x线照片中的微钙化
背景:乳腺x线摄影是临床上诊断乳腺癌最可靠、最流行的方法。钙化是乳房x光检查中细微的病变,可能是癌变,对放射科医生来说很难发现。计算机辅助检测(CAD)可以帮助放射科医生识别恶性病变。目的:本研究旨在提出一种基于深度学习的CAD系统,用于检测乳房x线照片中的钙化。患者和方法:共收集了204名接受筛查性乳房x光检查的妇女的815张内部乳房x光片。乳房x光片上的钙化由专家注释。每张乳房x光片被分割成固定大小的斑块,然后,包含钙化的斑块与相同数量的正常斑块一起被提取出来。使用训练数据训练ResNet-50卷积神经网络(CNN)将斑块分为正常组和钙化组,然后使用新的测试数据对训练后的CNN进行性能测试。结果:提出的斑块学习方法(PLA)在斑块二值分类中准确率达96.7%。因此,它可以在给定的乳房x光片中检测到钙化区域。PLA的灵敏度和特异度分别为96.7%和96.7%,曲线下面积为98.8%。结论:目前的结果强调了所提出的PLA的有效性,特别是对于有限的训练数据。由于数据集的差异,无法与以前的研究进行直接比较。然而,PLA在检测钙化方面的准确性高于先前研究中基于深度学习的CAD系统。PLA的有效性能可能归因于人工去除无信息的补丁,因为它们没有在训练集中使用。
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来源期刊
Iranian Journal of Radiology
Iranian Journal of Radiology RADIOLOGY, NUCLEAR MEDICINE & MEDICAL IMAGING-
CiteScore
0.50
自引率
0.00%
发文量
33
审稿时长
>12 weeks
期刊介绍: The Iranian Journal of Radiology is the official journal of Tehran University of Medical Sciences and the Iranian Society of Radiology. It is a scientific forum dedicated primarily to the topics relevant to radiology and allied sciences of the developing countries, which have been neglected or have received little attention in the Western medical literature. This journal particularly welcomes manuscripts which deal with radiology and imaging from geographic regions wherein problems regarding economic, social, ethnic and cultural parameters affecting prevalence and course of the illness are taken into consideration. The Iranian Journal of Radiology has been launched in order to interchange information in the field of radiology and other related scientific spheres. In accordance with the objective of developing the scientific ability of the radiological population and other related scientific fields, this journal publishes research articles, evidence-based review articles, and case reports focused on regional tropics. Iranian Journal of Radiology operates in agreement with the below principles in compliance with continuous quality improvement: 1-Increasing the satisfaction of the readers, authors, staff, and co-workers. 2-Improving the scientific content and appearance of the journal. 3-Advancing the scientific validity of the journal both nationally and internationally. Such basics are accomplished only by aggregative effort and reciprocity of the radiological population and related sciences, authorities, and staff of the journal.
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