基于ROI池CNN的转移驱动集成学习方法增强乳腺癌诊断

P. P, Yogapriya J, N. L, Madanachitran R
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引用次数: 1

摘要

癌症是人体细胞异常增殖引起的主要死亡原因,包括乳腺癌。它对全球人民的安全和健康构成重大威胁。有几种成像方法,如乳房x线照相术、CT扫描、核磁共振成像、超声波和活组织检查,可以帮助检测乳腺癌。活组织检查通常在组织病理学中进行,以检查图像并协助诊断乳腺癌。然而,由于预处理阶段、特征提取区域、分割过程和其他传统机器学习阶段的复杂性,准确识别适当的感兴趣区域(ROI)仍然具有挑战性。这降低了系统的效率和准确性。为了减少观众之间存在的差异,这项工作的目的是建立卓越的深度学习阶段算法。本研究介绍了一种无需人工干预即可同时检测和分类图像的分类器。它采用了一种迁移驱动的集成学习方法,其中框架包括两个主要阶段:伪彩色图像的产生和检测,以及基于ROI Pooling CNN的分割,然后将其输出提供给集成模型,如Efficientnet、ResNet101和VGG19。在特征提取过程之前,数据增强是必要的,包括随机裁剪、水平翻转和色彩空间增强等微小调整。对所提出的任何决策框架实施和模拟所提出的分割和分类算法,可以降低错误诊断的频率,提高分类精度。这可以帮助病理学家获得第二意见,促进疾病的早期识别。该方法的预测准确率为98.3%,比单个预训练模型(Efficientnet、ResNet101、VGG16和VGG19)分别提高2.3%、1.71%、2.01%和1.47%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transfer Driven Ensemble Learning Approach using ROI Pooling CNN For Enhanced Breast Cancer Diagnosis
Cancer is a major cause of death that is brought on by the body's abnormal cell proliferation, including breast cancer. It poses a significant threat to the safety and health of people globally. Several imaging methods, such as mammography, CT scans, MRI, ultrasound, and biopsies, can help detect breast cancer. A biopsy is commonly done in histopathology to examine an image and assist in diagnosing breast cancer. However, accurately identifying the appropriate Region of Interest (ROI) remains challenging due to the complex nature of pre-processing phases, feature extracting regions, segmenting process and other conventional machine learning phases. This reduces the system's efficiency and accuracy. In order to reduce the variance that exists among viewers, the aim of this work is to build superior deep-learning phases algorithms. This research introduces a classifier that can detect and classify images simultaneously, without any human involvement. It employs a transfer-driven ensemble learning approach, where the framework comprises two main phases: production and detection of pseudo-color images and segmentation based on ROI Pooling CNN, which then feeds its output to ensemble models such as Efficientnet, ResNet101, and VGG19. Before the feature extraction process, data augmentation is necessary, involving minor adjustments like random cropping, horizontal flipping, and color space augmentations. Implementing and simulating the proposed segmentation and classification algorithms for any decision-making framework suggested could decrease the frequency of incorrect diagnoses and enhance classification accuracy. This could aid pathologists in obtaining a second opinion and facilitate the early identification of diseases. With a prediction accuracy of 98.3%, the proposed method outperforms the individual pre-trained models, namely Efficientnet, ResNet101, VGG16, and VGG19, by 2.3%, 1.71%, 2.01%, and 1.47%, respectively.
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