论文标题

在解释基于深度学习的计算机辅助诊断系统方面的成就和挑战

Achievements and Challenges in Explaining Deep Learning based Computer-Aided Diagnosis Systems

论文作者

Lucieri, Adriano, Bajwa, Muhammad Naseer, Dengel, Andreas, Ahmed, Sheraz

论文摘要

基于现代图像的AI方法以及对其在关键决策过程中的应用产生兴趣的杰出成功,导致了使这种智能系统透明和可解释的努力激增。对AI的必要性不仅源于道德和道德上的理由,而且还源于全世界更严格的立法,要求对AI做出或协助的任何决定明确,合理地解释。特别是在计算机辅助诊断可以直接影响患者的治疗和福祉的医学环境中,对于从实验室研究到现实世界临床实践的安全过渡至关重要。本文概述了当前在解释和解释医学研究和疾病诊断应用中基于深度学习的算法的最新概述。我们讨论了可解释AI的早期成就,用于验证已知疾病标准,探索新的潜在生物标志物以及随后校正AI模型的方法。各种解释方法(如视觉,文本,事后,事前,局部和全局)进行了彻底和严格的分析。随后,我们还重点介绍了AI作为临床决策支持工具实际应用的剩余挑战,并为未来研究的方向提供了建议。

Remarkable success of modern image-based AI methods and the resulting interest in their applications in critical decision-making processes has led to a surge in efforts to make such intelligent systems transparent and explainable. The need for explainable AI does not stem only from ethical and moral grounds but also from stricter legislation around the world mandating clear and justifiable explanations of any decision taken or assisted by AI. Especially in the medical context where Computer-Aided Diagnosis can have a direct influence on the treatment and well-being of patients, transparency is of utmost importance for safe transition from lab research to real world clinical practice. This paper provides a comprehensive overview of current state-of-the-art in explaining and interpreting Deep Learning based algorithms in applications of medical research and diagnosis of diseases. We discuss early achievements in development of explainable AI for validation of known disease criteria, exploration of new potential biomarkers, as well as methods for the subsequent correction of AI models. Various explanation methods like visual, textual, post-hoc, ante-hoc, local and global have been thoroughly and critically analyzed. Subsequently, we also highlight some of the remaining challenges that stand in the way of practical applications of AI as a clinical decision support tool and provide recommendations for the direction of future research.

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