胃肠疾病分类与GI-Net模型分析

Animesh Malviya, M. Dutta
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引用次数: 0

摘要

准确检测胃肠道疾病对于癌症的早期发现和治疗至关重要。尽管如此,人工分析是耗时的,需要胃肠道的帮助。提出了一种高效、鲁棒的多类别胃肠道疾病筛查框架。开发了胃肠道GI-Net神经网络,用于提取内窥镜设备拍摄的正常和病变图像的特征。为了实现最优的分类网络,使用了多种优化技术。为了使分类网络更有效,该框架可以处理数据集中存在的挑战。使用看不见的内窥镜图像进行诊断的准确率为88%。与其他深度学习网络相比,所开发的架构是非常高效的。与其他网络相比,在有限的计算环境下,所提出的网络可能会表现得更好。
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Gastrointestinal Disease Classification And Analysis Using GI-Net Model
Detecting gastrointestinal illnesses accurately is crucial to early cancer detection and treatment. In spite of this, manual analysis is time-consuming, requiring the assistance of a gastrointestinal. A multi-class classification framework for screening gastrointestinal diseases is proposed that is efficient and robust. A neural network known as gastrointestinal GI-Net was developed to extract features that could differentiate between normal and diseased images taken by endoscopy device. In order to achieve the most optimal classification network, a variety of optimization techniques are used. For the classification network to be more effective, the framework can handle the challenges present in the dataset. It is 88% accurate in diagnosing using unseen endoscopy images. In comparison with other deep learning networks, the developed architecture is highly effective. Compared to other networks, in limited computation environments, the proposed network is likely to perform better.
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