利用深度学习框架分析无线胶囊内窥镜图像分类不同胃肠道疾病

Rupesh Kumar Dey, Muhammad Ehsan Rana, Vazeerudeen Abdul Hameed
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引用次数: 1

摘要

胃肠道相关疾病是当今社会最常见的疾病之一。研究表明,持续监测、早期发现和治疗这些疾病对于提高患者的康复率至关重要。无线胶囊内窥镜(WCE)是一种创新的成像技术,可以对胃肠道进行侵入性成像。卷积神经网络(CNN)和图像处理在为许多医疗应用开发计算机辅助诊断(CAD)系统的过程中已经成为非常受欢迎的解决方案。本研究旨在通过分析WCE不同胃肠道内壁病变的胃肠道图像,设计并开发一种通用的多类CNN分类算法,用于CAD系统中对各种胃肠道疾病的诊断。提出了包含多种网络架构、图像处理增强技术和数据增强方法的基于CNN分类的解决方案框架。介绍了三种基于直方图拉伸的增强技术,在进行分类之前增强原始图像的质量。还进行了数据扩充。开发了自主开发的不同网络架构、迁移学习特征提取、微调和模型集成。对结果进行了分析,重点强调了所开发解的泛化能力。结果表明,图像处理增强提高了CNN模型进行准确分类的能力。就单个网络架构而言,与其他架构相比,迁移学习微调模型的性能更好。在增强数据集上训练的CNN网络比在非增强数据集上训练的CNN网络更一般化。最终提出的胃肠道CAD CNN网络解决方案是集成模型,经过测试,与其他提出的架构相比,在结果分析的4个阶段,集成模型的总体准确率达到了97.03%。
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Analysing Wireless Capsule Endoscopy Images Using Deep Learning Frameworks to Classify Different GI Tract Diseases
GI Tract related diseases are one of the most prevalent in today's society. Studies have shown that continuous monitoring, early detection, and treatment of these diseases are imperative in improving patients' recovery rate. Wireless Capsule Endoscopy (WCE) is an innovative imaging technology that enables invasive imaging of the GI Tract. Convolutional Neural Networks (CNN) and Image Processing have become very sought-after solutions in the process of developing a Computer Aided Diagnosis (CAD) system for many medical applications. The study aims to design and develop a generalized multiclass CNN classification algorithm to be used in CAD system for diagnosis of various GI tract diseases by analyzing WCE GI tract images with varying tract lining lesions. CNN classification-based solution framework encompassing various network architectures, image processing enhancement techniques and data augmentation methods are proposed. Three histogram stretching based enhancement techniques were introduced to enhance the quality of the raw image prior to performing classification. Data augmentation was performed as well. Different network architectures of self-developed architectures, transfer learning feature extraction, fine tuning and an ensemble of models were developed. The results were analyzed, putting emphasis on the generalization capability of the developed solutions. Results showed that image processing enhancement improved the CNN models' capability in performing accurate classification. In terms of individual network architectures, the transfer learning fine tuning models performed better as compared to the rest of the architectures. CNN networks trained on the dataset with augmentation are more generalized as compared to CNN networks trained on non-augmented data. The final proposed solution for GI tract CAD CNN network is the ensemble model which managed to achieve an overall accuracy of 97.03% when tested and compared to other proposed architectures across 4 phases of result analysis.
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