论文标题

基于可解释的人工智能和深度学习的组织病理学图像中旁结核病的诊断

Diagnosis of Paratuberculosis in Histopathological Images Based on Explainable Artificial Intelligence and Deep Learning

论文作者

Yiğit, Tuncay, Şengöz, Nilgün, Özmen, Özlem, Hemanth, Jude, Işık, Ali Hakan

论文摘要

人工智能在医学成像,尤其是组织病理学成像方面具有巨大的希望。但是,人工智能算法无法在决策过程中充分解释思想过程。这种情况带来了解释性的问题,即黑匣子问题,人工智能应用程序的议程:算法只是在没有说明给定图像的原因的情况下做出响应。为了克服问题并提高解释性,可解释的人工智能(XAI)脱颖而出,并激发了许多研究人员的利益。在此背景下,本研究使用深度学习算法检查了一个新的原始数据集,并使用梯度加权类激活映射(Grad-CAM)(XAI应用程序之一)可视化输出。之后,对这些图像的病理学家进行了详细的问卷调查。决策过程和解释都已验证,并测试了输出的准确性。该研究结果极大地帮助病理学家诊断旁核。

Artificial intelligence holds great promise in medical imaging, especially histopathological imaging. However, artificial intelligence algorithms cannot fully explain the thought processes during decision-making. This situation has brought the problem of explainability, i.e., the black box problem, of artificial intelligence applications to the agenda: an algorithm simply responds without stating the reasons for the given images. To overcome the problem and improve the explainability, explainable artificial intelligence (XAI) has come to the fore, and piqued the interest of many researchers. Against this backdrop, this study examines a new and original dataset using the deep learning algorithm, and visualizes the output with gradient-weighted class activation mapping (Grad-CAM), one of the XAI applications. Afterwards, a detailed questionnaire survey was conducted with the pathologists on these images. Both the decision-making processes and the explanations were verified, and the accuracy of the output was tested. The research results greatly help pathologists in the diagnosis of paratuberculosis.

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