BREAST CANCER DETECTION AND CLASSIFICATION USING HISTOPATHOLOGICAL IMAGES BASED ON OPTIMIZATION-ENABLED DEEP LEARNING

Samla Salim, R. Sarath
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Abstract

Cancer is the second cause of mortality worldwide and it has been identified as a perilous disease. Among all types of cancers, Breast Cancer (BC) is a substantial research subject in the medical imaging area, because it is a serious disease and primary reason for death in women. Proper diagnosis helps patients to get adequate treatment, enhancing the probability of surviving. Because of the poor contrast and unclear structure of tumor cells in the images, automatic segmenting of breast tumors remains a difficult task. However, the identification and interpretation of breast lesions is challenging even for expert radiologists. To address these limitations, an efficient mechanism for BC detection and classification using histopathological images is proposed, which employs a DenseNet-based Chronological Circle Inspired Optimization Algorithm (CCIOA). Deep Learning (DL) approaches are used in the suggested BC classification scheme to precisely segment and identify the BC. The segmentation is done using ResuNet++, and an efficient optimization method called Invasive Water Ebola Optimization (IWEO) is used to fine-tune the DL network’s parameters. Furthermore, DenseNet is utilized for BC detection, while CCIOA is used for DenseNet training. The CCIOA-DenseNet is evaluated using the metrics of accuracy, True Positive Rate (TPR), and True Negative Rate (TNR). Experiment results show that the CCIOA-DenseNet attained better accuracy of 0.971, TPR of 0.966, and TNR of 0.954.
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基于优化深度学习的组织病理学图像的乳腺癌检测和分类
癌症是全球第二大死亡原因,已被确定为一种危险疾病。在所有类型的癌症中,乳腺癌(BC)是医学成像领域的一个重要研究课题,因为它是一种严重的疾病,也是妇女死亡的主要原因。正确的诊断有助于患者得到适当的治疗,提高生存的可能性。由于图像中肿瘤细胞的对比度差、结构不清晰,乳腺肿瘤的自动分割一直是一个难点。然而,即使对放射科专家来说,乳腺病变的识别和解释也是具有挑战性的。为了解决这些限制,我们提出了一种利用组织病理学图像检测和分类BC的有效机制,该机制采用了基于densenet的时间圈启发优化算法(CCIOA)。在建议的BC分类方案中使用深度学习(DL)方法来精确地分割和识别BC。使用ResuNet++完成分割,并使用一种称为入侵式水埃博拉优化(IWEO)的高效优化方法来微调DL网络的参数。此外,DenseNet用于BC检测,CCIOA用于DenseNet训练。CCIOA-DenseNet使用准确性、真阳性率(TPR)和真阴性率(TNR)等指标进行评估。实验结果表明,CCIOA-DenseNet的准确率为0.971,TPR为0.966,TNR为0.954。
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来源期刊
Biomedical Engineering: Applications, Basis and Communications
Biomedical Engineering: Applications, Basis and Communications Biochemistry, Genetics and Molecular Biology-Biophysics
CiteScore
1.50
自引率
11.10%
发文量
36
审稿时长
4 months
期刊介绍: Biomedical Engineering: Applications, Basis and Communications is an international, interdisciplinary journal aiming at publishing up-to-date contributions on original clinical and basic research in the biomedical engineering. Research of biomedical engineering has grown tremendously in the past few decades. Meanwhile, several outstanding journals in the field have emerged, with different emphases and objectives. We hope this journal will serve as a new forum for both scientists and clinicians to share their ideas and the results of their studies. Biomedical Engineering: Applications, Basis and Communications explores all facets of biomedical engineering, with emphasis on both the clinical and scientific aspects of the study. It covers the fields of bioelectronics, biomaterials, biomechanics, bioinformatics, nano-biological sciences and clinical engineering. The journal fulfils this aim by publishing regular research / clinical articles, short communications, technical notes and review papers. Papers from both basic research and clinical investigations will be considered.
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