Optimized Transfer Learning With Hybrid Feature Extraction for Uterine Tissue Classification Using Histopathological Images

IF 2.1 3区 工程技术 Q2 ANATOMY & MORPHOLOGY Microscopy Research and Technique Pub Date : 2025-01-27 DOI:10.1002/jemt.24787
Veena I. Patil, Shobha R. Patil
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Abstract

Endometrial cancer, termed uterine cancer, seriously affects female reproductive organs, and the analysis of histopathological images formed a golden standard for diagnosing this cancer. Sometimes, early detection of this disease is difficult because of the limited capability of modeling complicated relationships among histopathological images and their interpretations. Moreover, many previous methods do not effectively handle the cell appearance variations. Hence, this study develops a novel classification technique called transfer learning convolution neural network with artificial bald eagle optimization (TL-CNN with ABEO) for the classification of uterine tissue. Here, preprocessing is done by the median filter, followed by image enhancement by the multiple identities representation network (MIRNet). Moreover, pelican crow search optimization (PCSO) is used for adapting weights in MIRNet, where PCSO is generated by combining the crow search algorithm (CSA) and pelican optimization algorithm (POA). Then, segmentation quality assessment (SQA) helps in tissue segmentation, and deep convolutional neural network (DCNN) helps in parameter selection that is trained by fractional PCSO (FPCSO). Furthermore, feature extraction is done and, finally, cell classification is done by TL with CNN, which is trained by the proposed ABEO algorithm. Here, ABEO is newly developed by the integration of the bald eagle search (BES) algorithm and artificial hummingbird algorithm (AHA). Furthermore, ABEO + TL-CNN achieved a high accuracy of 89.59%, a sensitivity of 90.25%, and a specificity of 89.89% by utilizing the cancer image archive dataset.

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使用混合特征提取优化迁移学习,利用组织病理学图像进行子宫组织分类
子宫内膜癌,称为子宫癌,严重影响女性生殖器官,组织病理学图像分析形成了诊断这种癌症的黄金标准。有时,早期发现这种疾病是困难的,因为有限的能力,模拟复杂的关系之间的组织病理图像和他们的解释。此外,许多以前的方法不能有效地处理细胞的外观变化。因此,本研究开发了一种新的子宫组织分类技术,称为人工秃鹰优化迁移学习卷积神经网络(TL-CNN with ABEO)。在这里,预处理由中值滤波器完成,然后通过多身份表示网络(MIRNet)进行图像增强。在MIRNet中,采用鹈鹕乌鸦搜索优化算法(PCSO)自适应权值,将乌鸦搜索算法(CSA)和鹈鹕优化算法(POA)结合生成PCSO。然后,分割质量评估(SQA)用于组织分割,深度卷积神经网络(DCNN)用于分数阶PCSO (FPCSO)训练的参数选择。在此基础上进行特征提取,最后利用基于ABEO算法训练的CNN进行细胞分类。其中,ABEO是将秃鹰搜索(BES)算法与人工蜂鸟算法(AHA)相结合而开发的新算法。利用肿瘤影像档案数据集,ABEO + TL-CNN的准确率为89.59%,灵敏度为90.25%,特异性为89.89%。
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来源期刊
Microscopy Research and Technique
Microscopy Research and Technique 医学-解剖学与形态学
CiteScore
5.30
自引率
20.00%
发文量
233
审稿时长
4.7 months
期刊介绍: Microscopy Research and Technique (MRT) publishes articles on all aspects of advanced microscopy original architecture and methodologies with applications in the biological, clinical, chemical, and materials sciences. Original basic and applied research as well as technical papers dealing with the various subsets of microscopy are encouraged. MRT is the right form for those developing new microscopy methods or using the microscope to answer key questions in basic and applied research.
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