基于注意力自适应加权rnn的肺癌和结肠癌组织病理图像检测框架三最优特征提取模型的开发

IF 0.8 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
MD Azam Pasha, M. Narayana
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引用次数: 0

摘要

由于遗传疾病以及各种生物医学异常的结合,导致了一种名为癌症的致命疾病。结肠癌和肺癌被认为是导致残疾和死亡的两种主要疾病。证明最佳治疗方案的最重要的组成部分是这种恶性肿瘤的组织病理学鉴定。因此,为了最大限度地减少癌症造成的死亡率,有必要在这两个方面及早发现营养。在这种情况下,深度学习和机器学习技术都被用来加快癌症的检测过程,这也可以帮助研究人员在短时间内研究大量的患者,减少损失。因此,设计一种基于深度学习方法的新的肺和结肠检测模型是非常必要的。首先,从基准资源中收集一组不同的组织病理学图像以进行有效的分析。然后,通过视觉几何组(VGG16)和残差神经网络(ResNet),将采集到的图像提供给扩展网络获取深度图像特征,以获得第一组特征。此外,第二组特征是通过以下过程获得的。在这里,采集到的图像进入预处理阶段,利用对比度有限的自适应直方图均衡化(CLAHE)和滤波技术对图像进行预处理。然后,通过自适应二值阈值将预处理后的图像提供给分割阶段,并提供给包含VGG16和ResNet的扩展网络,获得第二组特征。采用沙猫群优化(SCO)和JAya (SC-JAO)相结合的沙猫群JAya优化方法(SC-JAO)对自适应二值阈值的参数进行了调整。最后,将图像提交到预处理阶段,得到第三组特征。然后,将预处理后的图像提供给分割阶段,图像即为分割阶段,并通过开发的SC-JAO对特征进行调整。在此基础上,利用分割特征得到灰度共生矩阵(GLCM)和局部韦伯模式(LWP)等纹理特征,得到第三组特征。然后,将得到的三种不同的特征集赋给最优加权特征阶段,其中的参数通过SC-JAO算法进行优化,然后赋给疾病预测阶段。本研究利用基于注意力的自适应加权递归神经网络(AAW-RNN)进行疾病预测,并通过开发的SC-JAO对其参数进行调整。因此,在多个实验分析中,开发的模型比传统方法获得了有效的肺和结肠检出率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of Trio Optimal Feature Extraction Model for Attention-Based Adaptive Weighted RNN-Based Lung and Colon Cancer Detection Framework Using Histopathological Images
Due to the combination of genetic diseases as well as a variety of biomedical abnormalities, the fatal disease named cancer is caused. Colon and lung cancer are regarded as the two leading diseases for disability and death. The most significant component for demonstrating the best course of action is the histopathological identification of such malignancies. So, in order to minimize the mortality rate caused by cancer, there is a need for early detection of the aliment on both fronts accordingly. In this case, both the deep and machine learning techniques have been utilized to speed up the detection process of cancer which may also help the researchers to study a huge amount of patients over a short period and less loss. Hence, it is highly essential to design a new lung and colon detection model based on deep learning approaches. Initially, a different set of histopathological images is collected from benchmark resources to perform effective analysis. Then, to attain the first set of features, the collected image is offered to the dilated net for attaining deep image features with the help of the Visual Geometry Group (VGG16) and Residual Neural Network (ResNet). Further, the second set of features is attained by the below process. Here, the collected image is given to pre-processing phase and the image is pre–pre-processed with the help of Contrast-limited Adaptive Histogram Equalization (CLAHE) and filter technique. Then, the pre-processed image is offered to the segmentation phase with the help of adaptive binary thresholding and offered to a dilated network that holds VGG16 and ResNet and attained the second set of features. The parameters of adaptive binary thresholding are tuned with the help of a developed hybrid approach called Sand Cat swarm JAya Optimization (SC-JAO) via Sand Cat swarm Optimization (SCO) and JAYA (SC-JAO). Finally, the third set of features is attained by offering the image to pre-processing phase. Then, the pre-processed image is offered to the segmentation phase and the image is a segmented phase and features are tuned by developed SC-JAO. Further, the segmented features are offered to attain the textural features like Gray-Level Co-Occurrence Matrix (GLCM) and Local Weber Pattern (LWP) and attained the third set of features. Then, the attained three different sets of features are given to the optimal weighted feature phase, where the parameters are optimized by the SC-JAO algorithm and then given to the disease prediction phase. Here, disease prediction is made with the help of Attention-based Adaptive Weighted Recurrent Neural Networks (AAW-RNN), and their parameters are tuned by developed SC-JAO. Thus, the developed model achieved an effective lung and colon detection rate over conventional approaches over multiple experimental analyses.
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来源期刊
International Journal of Image and Graphics
International Journal of Image and Graphics COMPUTER SCIENCE, SOFTWARE ENGINEERING-
CiteScore
2.40
自引率
18.80%
发文量
67
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