基于深度迁移学习和可解释人工智能的早期食管恶性肿瘤检测

Priti Shaw, Suresh Sankaranarayanan, P. Lorenz
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引用次数: 0

摘要

食道恶性肿瘤是一种罕见的癌症,它起源于食道,并扩散到身体的其他部位,对肝脏、肺、淋巴结和胃有严重的影响。研究表明,食管癌是导致癌症死亡的最普遍原因之一。2020年,有604100人被诊断出患有这种致命疾病。每年都有很多关于这个主题的医学研究。类似的焦点也被赋予了基于人工智能的恶性肿瘤分类的深度学习模型。但挑战在于,人工智能模型都很复杂,缺乏透明度。没有可用的信息来解释这种模型的不透明性。当基于人工智能的医学研究寻求可靠性时,引入可解释性就变得非常重要。因此,通过这项研究,我们使用了名为LIME的可解释人工智能(XAI)来创建基于信任的模型,用于食管恶性肿瘤的早期检测。在这项研究中,我们使用了一个简单的CNN模型和几个基于迁移学习的模型。我们从Kvasir-v2数据集中获取了实际的内窥镜图像,其准确率为88.75%。首先使用DenseNet-201模型,然后使用可解释的AI模型Lime对分类的图像进行解释。深度学习模型与可解释的人工智能相结合,有助于在没有领域专家干预的情况下,清楚地了解有助于恶性肿瘤预测的区域,并提高对模型的信心。
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Early Esophageal Malignancy Detection Using Deep Transfer Learning and Explainable AI
Esophageal malignancy is a rare form of cancer that starts in the esophagus and spreads to the other parts of the body, impacting a severe risk on the liver, lungs, lymph nodes, and stomach. Studies have shown that esophageal cancer is one of the most prevalent causes of cancer mortality. In 2020, 604100 individuals have been diagnosed with this deadly disease. There are a good number of medical studies, carried out on this topic, every year. A similar focus is also imparted on the AI-based deep learning models for the classification of malignancy. But the challenge is that the AI models are all complex and lack transparency. There is no available information to explain the opacity of such models. And as AI-based medical research seeks reliability, it becomes very important to bring in explainability. So we, through this research, have used Explainable AI(XAI) entitled LIME for creating trust-based models for the early detection of esophageal malignancy. We have used a simple CNN model and several transfer learning-based models, for this study. We have taken the actual endoscopic images from the Kvasir-v2 dataset resulting in an accuracy of 88.75%. with the DenseNet-201 model followed by the usage of an Explainable AI model, Lime, for giving an explanation for the images classified. The deep learning model, combined with explainable AI, helps in getting a clear picture of the regions contributing toward the malignancy prediction and promotes confidence in the model, without the intervention of a domain expert.
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