基于组织病理学图像的子宫内膜疾病分类的迁移学习优化。

IF 2.1 3区 工程技术 Q2 ANATOMY & MORPHOLOGY
Sudhagar Dhandapani, Ravikumar Subburam, Pretty Diana Cyril Cyriloose, Santhosh Kumar Balan
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引用次数: 0

摘要

子宫癌又称子宫内膜癌,它对女性生殖器官有显著影响。早期诊断可以提高子宫内膜癌的生存率,同时也可以防止子宫内膜癌的进展,因此,提出了一种基于迁移学习的基于亚当淘金热优化的卷积神经网络(TL-CNN_AdGRO),利用组织病理图像对子宫内膜癌进行分类。将组织病理图像送入预处理阶段,预处理阶段使用自适应加权平均滤波器(AWMF)。接下来,利用定向连接网络(DConn-Net)对子宫内膜癌进行分割。在分割之后,进行特征挖掘,包括局部边界求和模式(LBSP)和局部Gaber二值模式直方图序列特征(LGBPHS)。最后,通过使用Xception模型的超参数,使用TL-CNN实现子宫内膜癌的分类。这里TL-CNN是由AdGRO算法训练的,AdGRO算法是Adam Optimizer和Gold Rush Optimization的结合。与现有模型相比,该模型在K-sample 8上的准确率为91.876%,真阳性率(True Positive Rate, TPR)为93.987%,真阴性率(True Negative Rate, TNR)为89.876%。结果证实了TL-CNN_AdGRO算法的有效性,并且表现出较强的性能,保证了鲁棒性,提高了子宫内膜癌的早期发现,使其成为一种有前景的组织病理图像分析方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Transfer Learning With Adam Gold Rush Optimization for Endometrial Disease Classification Using Histopathological Image

Transfer Learning With Adam Gold Rush Optimization for Endometrial Disease Classification Using Histopathological Image

Uterine cancer also referred to as endometrial cancer, which significantly impacts the female reproductive organs. The early diagnosis increases the survival rates and also prevents the progression of endometrial cancer thereby, the novel Transfer Learning based Convolution Neural Network with Adam Gold Rush Optimization (TL-CNN_AdGRO) is proposed to classify endometrial cancer using histopathological images. The histopathological image is fed to the preprocessing phase, which uses an Adaptive Weighted Mean Filter (AWMF). Next, the segmentation of endometrial cancer is utilized by the Directional Connectivity Network (DConn-Net). Following segmentation, feature mining is carried out, which includes Local Boundary Summation Pattern (LBSP) and Local Gaber Binary Pattern Histogram Sequence Features (LGBPHS). Finally, the endometrial cancer classification is achieved using TL-CNN by employing hyperparameters from the Xception model. Here TL-CNN is trained by AdGRO algorithm, which is the combination of Adam Optimizer and Gold Rush Optimization. Compared to existing models, the proposed model achieves superior performance with an accuracy of 91.876%, a True Positive Rate (TPR) of 93.987%, and a True Negative Rate (TNR) of 89.876% for K-sample 8. The results confirm the effectiveness of TL-CNN_AdGRO, also it demonstrates strong performance, ensures robustness, improves the early detection of endometrial cancer, and making it a promising approach for histopathological image analysis.

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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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