GestroNet:一个基于显著性估计和最优深度学习特征的胃肠道疾病检测与分类框架。

IF 3.3
Muhammad Attique Khan, Naveera Sahar, Wazir Zada Khan, Majed Alhaisoni, Usman Tariq, Muhammad H Zayyan, Ye Jin Kim, Byoungchol Chang
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引用次数: 9

摘要

在过去的几年里,人工智能在医学领域对人类感染的诊断和分类显示出了很大的希望。一些基于人工智能(AI)的计算机技术已经被引入到胃肠道(GIT)疾病的文献中,如溃疡、出血、息肉和其他一些疾病。人工诊断这些感染既耗时又昂贵,而且总是需要专家。因此,在诊所中,作为第二意见的辅助医生的计算机化方法被广泛需要。计算机化技术的关键挑战是准确分割感染区域,因为每个感染区域都有形状和位置的变化。此外,不准确的分割会影响准确的特征提取,进而影响分类精度。在本文中,我们提出了一个基于深度显著性图和贝叶斯最优深度学习特征选择的GIT疾病分割和分类自动化框架。该框架由几个关键步骤组成,从预处理到分类。采用本文提出的对比度增强技术对原始图像进行预处理。在接下来的步骤中,我们提出了一个深度显著性图来分割感染区域。然后,这些分割的区域被用来训练一个预先训练好的微调模型,称为MobileNet-V2,使用迁移学习。采用贝叶斯优化方法对模型的超参数进行初始化。然后使用平均池化层提取特征。然而,在分析阶段发现了一些冗余的特性,必须删除。因此,我们提出了一种混合鲸鱼优化算法来选择最佳特征。最后,使用极限学习机分类器对选择的特征进行分类。实验在Kvasir 1、Kvasir 2和CUI Wah三个数据集上进行。所提出的框架在这三个数据集上的准确率分别为98.20、98.02和99.61%。与其他方法相比,所提框架的精度有所提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

GestroNet: A Framework of Saliency Estimation and Optimal Deep Learning Features Based Gastrointestinal Diseases Detection and Classification.

GestroNet: A Framework of Saliency Estimation and Optimal Deep Learning Features Based Gastrointestinal Diseases Detection and Classification.

GestroNet: A Framework of Saliency Estimation and Optimal Deep Learning Features Based Gastrointestinal Diseases Detection and Classification.

GestroNet: A Framework of Saliency Estimation and Optimal Deep Learning Features Based Gastrointestinal Diseases Detection and Classification.

In the last few years, artificial intelligence has shown a lot of promise in the medical domain for the diagnosis and classification of human infections. Several computerized techniques based on artificial intelligence (AI) have been introduced in the literature for gastrointestinal (GIT) diseases such as ulcer, bleeding, polyp, and a few others. Manual diagnosis of these infections is time consuming, expensive, and always requires an expert. As a result, computerized methods that can assist doctors as a second opinion in clinics are widely required. The key challenges of a computerized technique are accurate infected region segmentation because each infected region has a change of shape and location. Moreover, the inaccurate segmentation affects the accurate feature extraction that later impacts the classification accuracy. In this paper, we proposed an automated framework for GIT disease segmentation and classification based on deep saliency maps and Bayesian optimal deep learning feature selection. The proposed framework is made up of a few key steps, from preprocessing to classification. Original images are improved in the preprocessing step by employing a proposed contrast enhancement technique. In the following step, we proposed a deep saliency map for segmenting infected regions. The segmented regions are then used to train a pre-trained fine-tuned model called MobileNet-V2 using transfer learning. The fine-tuned model's hyperparameters were initialized using Bayesian optimization (BO). The average pooling layer is then used to extract features. However, several redundant features are discovered during the analysis phase and must be removed. As a result, we proposed a hybrid whale optimization algorithm for selecting the best features. Finally, the selected features are classified using an extreme learning machine classifier. The experiment was carried out on three datasets: Kvasir 1, Kvasir 2, and CUI Wah. The proposed framework achieved accuracy of 98.20, 98.02, and 99.61% on these three datasets, respectively. When compared to other methods, the proposed framework shows an improvement in accuracy.

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