用于多模态乳腺癌检测的增强型多尺度深度卷积果园胶囊神经网络

Sangeeta Parshionikar , Debnath Bhattacharyya
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引用次数: 0

摘要

乳腺癌是女性癌症死亡的第二大原因。乳腺细胞发展成恶性肿瘤肿块是乳腺癌的最初征兆。当传统医学方法无法发现乳腺癌时,自动诊断系统就能发现乳腺癌。通过自动筛查和诊断技术发现的早期乳腺癌通常是可以治疗的。本研究提出了一种增强型多尺度深度卷积胶囊神经网络(CapsNet),利用奥查德优化算法进行优化,用于乳腺癌检测。该系统包括预处理、特征提取、分割和分类过程。首先采集两幅输入图像:乳腺癌组织病理学图像数据集和红外热图像数据集。对采集到的数据进行质量改进,并去除不需要的噪音。提取特征后,对图像进行分割,得出感兴趣区域,从而有效分割受影响区域。最后,对组织病理学图像进行良性/恶性分类,对热图像进行健康/癌症分类。所提出的 CapsNet 是用 Python 实现的,运行了 200 个历时,并与现有方法的评估指标进行了比较。结果表明,在乳腺癌组织病理学图像数据集上,所提出的 CapsNet 的准确率达到 99.74%,二元熵损失为 0.0482;在红外热图像数据集上,准确率达到 97%,二元熵损失为 0.2081。
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An enhanced multi-scale deep convolutional orchard capsule neural network for multi-modal breast cancer detection

Breast cancer is the second-leading cause of cancer death in women. Breast cells develop into malignant, cancerous lumps, the first signs of breast cancer. Breast cancer can be discovered by the automated diagnostic system when it is still too little to be found by conventional medical methods. Early breast cancers identified with automated screening and diagnosis technologies are generally treatable. This study proposes an enhanced multi-scale deep Convolutional Capsule Neural Network (CapsNet) optimized with Orchard Optimization Algorithm for breast cancer detection. The proposed system consists of preprocessing, feature extraction, segmentation, and classification process. Two input images are taken initially: the Breast Cancer Histopathology Images dataset and the Infrared Thermal Images dataset. The quality of the collected data is improved, and unwanted noises are removed. The features are extracted to segment the image to derive a Region of Interest for effectively segmenting the affected region. Finally, the images are classified as benign/malignant for histopathology images and healthy/cancer for thermal images. The proposed CapsNet is implemented in Python, run for 200 epochs, and compared with existing methods in terms of evaluation metrics. The result shows that the proposed CapsNet attained 99.74 % accuracy, 0.0482 binary entropy loss on the Breast Cancer Histopathology Image dataset and 97 % accuracy, 0.2081 binary entropy loss on the Infrared Thermal Images dataset while incrementing the epochs at each level.

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来源期刊
Healthcare analytics (New York, N.Y.)
Healthcare analytics (New York, N.Y.) Applied Mathematics, Modelling and Simulation, Nursing and Health Professions (General)
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
79 days
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