基于高效轻量级多头关注塘鹅卷积神经网络的乳房x线照片分类

Ramkumar Muthukrishnan, Ashok Balasubramaniam, Vijaipriya Krishnasamy, Sarath Kumar Ravichandran
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引用次数: 0

摘要

本研究旨在使用深度学习来创建自动化系统,以便更好地在乳房x光照片中进行乳腺癌检测和分类,帮助医疗专业人员克服诸如耗时,特征提取问题和有限的训练模型等挑战。方法采用轻量级多头注意塘鹅卷积神经网络(LMGCNN)对乳腺x线图像进行有效分类。采用维纳滤波、非锐化掩蔽和自适应直方图均衡化对图像进行增强和去噪,然后采用灰度共生矩阵(GLCM)进行特征提取。采用人工蜂群自适应量子平衡优化器进行理想特征选择。结果本研究在CBIS-DDSM和MIAS两个数据集上进行了评估,准确率分别达到了98.2%和99.9%,突出了LMGCNN模型在准确检测乳腺癌方面的优势。结论该方法有助于早期和准确的乳腺癌检测,可能会改善患者的预后。
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An Efficient Lightweight Multi Head Attention Gannet Convolutional Neural Network Based Mammograms Classification

Background

This research aims to use deep learning to create automated systems for better breast cancer detection and categorisation in mammogram images, helping medical professionals overcome challenges such as time consumption, feature extraction issues and limited training models.

Methods

This research introduced a Lightweight Multihead attention Gannet Convolutional Neural Network (LMGCNN) to classify mammogram images effectively. It used wiener filtering, unsharp masking, and adaptive histogram equalisation to enhance images and remove noise, followed by Grey-Level Co-occurrence Matrix (GLCM) for feature extraction. Ideal feature selection is done by a self-adaptive quantum equilibrium optimiser with artificial bee colony.

Results

The research assessed on two datasets, CBIS-DDSM and MIAS, achieving impressive accuracy rates of 98.2% and 99.9%, respectively, which highlight the superior performance of the LMGCNN model while accurately detecting breast cancer compared to previous models.

Conclusion

This method illustrates potential in aiding initial and accurate breast cancer detection, possibly leading to improved patient outcomes.

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来源期刊
CiteScore
4.50
自引率
12.00%
发文量
131
审稿时长
6-12 weeks
期刊介绍: The International Journal of Medical Robotics and Computer Assisted Surgery provides a cross-disciplinary platform for presenting the latest developments in robotics and computer assisted technologies for medical applications. The journal publishes cutting-edge papers and expert reviews, complemented by commentaries, correspondence and conference highlights that stimulate discussion and exchange of ideas. Areas of interest include robotic surgery aids and systems, operative planning tools, medical imaging and visualisation, simulation and navigation, virtual reality, intuitive command and control systems, haptics and sensor technologies. In addition to research and surgical planning studies, the journal welcomes papers detailing clinical trials and applications of computer-assisted workflows and robotic systems in neurosurgery, urology, paediatric, orthopaedic, craniofacial, cardiovascular, thoraco-abdominal, musculoskeletal and visceral surgery. Articles providing critical analysis of clinical trials, assessment of the benefits and risks of the application of these technologies, commenting on ease of use, or addressing surgical education and training issues are also encouraged. The journal aims to foster a community that encompasses medical practitioners, researchers, and engineers and computer scientists developing robotic systems and computational tools in academic and commercial environments, with the intention of promoting and developing these exciting areas of medical technology.
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