增量深度学习训练方法用于乳腺钼靶病变检测和分类

Q3 Physics and Astronomy Cybernetics and Physics Pub Date : 2022-12-30 DOI:10.35470/2226-4116-2022-11-4-234-245
Siavash Salemi, Hamed Behzadi-Khormouji, H. Rostami, Ahmad Keshavarz, Yaser Keshavarz, Yahya Tabesh
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引用次数: 0

摘要

最近,深度卷积神经网络(DCNN)已经在各种医学图像处理实践中开辟了道路,例如计算机辅助诊断(CAD)系统。尽管基于深度模型的CAD系统有了重大发展,但设计一个有效的模型以及训练策略来应对医学图像的短缺仍有待解决。为了应对当前的挑战,本文提出了一种包括混合DCNN的模型,该模型利用了不同深度模型的各种特征图和增量训练算法。此外,还提出了一种加权测试时间增强策略。此外,该工作开发了Mask RCNN,不仅可以检测乳房X光摄影图像中的肿块和钙化,还可以对正常图像进行分类。此外,这项工作旨在从放射学专家那里获益,与所提出的方法的性能进行比较。说明感兴趣的区域以解释模型是如何做出决策的,这项研究的另一个目的是涵盖最先进的研究作品中存在的挑战。广泛的定量和定性实验表明,所提出的方法可以将INbreast数据集的乳腺X射线图像分为正常、肿块和钙化。
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Incremental deep learning training approach for lesion detection and classification in mammograms
Recently, Deep Convolutional Neural Networks (DCNNs) have opened their ways into various medical image processing practices such as Computer-Aided Diagnosis (CAD) systems. Despite significant developments in CAD systems based on deep models, designing an efficient model, as well as a training strategy to cope with the shortage of medical images have yet to be addressed. To address current challenges, this paper presents a model including a hybrid DCNN, which takes advantage of various feature maps of different deep models and an incremental training algorithm. Also, a weighting Test Time Augmentation strategy is presented. Besides, the proposed work develops the Mask-RCNN to not only detect mass and calcification in mammography images, but also to classify normal images. Moreover, this work aims to benefit from a radiology specialist to compare with the performance of the proposed method. Illustrating the region of interest to explain how the model makes decisions is the other aim of the study to cover existing challenges among the stateof-the-art research works. The wide range of conducted quantitative and qualitative experiments suggest that the proposed method can classify breast X-ray images of the INbreast dataset to normal, mass, and calcification.
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来源期刊
Cybernetics and Physics
Cybernetics and Physics Chemical Engineering-Fluid Flow and Transfer Processes
CiteScore
1.70
自引率
0.00%
发文量
17
审稿时长
10 weeks
期刊介绍: The scope of the journal includes: -Nonlinear dynamics and control -Complexity and self-organization -Control of oscillations -Control of chaos and bifurcations -Control in thermodynamics -Control of flows and turbulence -Information Physics -Cyber-physical systems -Modeling and identification of physical systems -Quantum information and control -Analysis and control of complex networks -Synchronization of systems and networks -Control of mechanical and micromechanical systems -Dynamics and control of plasma, beams, lasers, nanostructures -Applications of cybernetic methods in chemistry, biology, other natural sciences The papers in cybernetics with physical flavor as well as the papers in physics with cybernetic flavor are welcome. Cybernetics is assumed to include, in addition to control, such areas as estimation, filtering, optimization, identification, information theory, pattern recognition and other related areas.
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