论文标题
XAI在数字病理学中的调查
Survey of XAI in digital pathology
论文作者
论文摘要
人工智能(AI)对诊断成像评估表现出了巨大的希望。但是,AI在临床常规中支持医学诊断的应用带来了许多挑战。该算法应具有很高的预测准确性,但也应透明,可理解和可靠。因此,可解释的人工智能(XAI)与该领域高度相关。我们在数字病理学中介绍了有关XAI的调查,这是一种具有特定特征和需求的医学成像子学科。评论包括几项贡献。首先,我们详细概述了当前的XAI技术与病理成像中深度学习方法的潜在相关性,并从三个不同方面对其进行分类。在此过程中,我们将不确定性估计方法纳入了XAI景观的组成部分。我们还将技术方法与数字病理学的具体先决条件联系起来,并提出发现以指导未来的研究工作。该调查旨在针对技术研究人员和医学专业人员,目的之一是为跨学科讨论建立共同点。
Artificial intelligence (AI) has shown great promise for diagnostic imaging assessments. However, the application of AI to support medical diagnostics in clinical routine comes with many challenges. The algorithms should have high prediction accuracy but also be transparent, understandable and reliable. Thus, explainable artificial intelligence (XAI) is highly relevant for this domain. We present a survey on XAI within digital pathology, a medical imaging sub-discipline with particular characteristics and needs. The review includes several contributions. Firstly, we give a thorough overview of current XAI techniques of potential relevance for deep learning methods in pathology imaging, and categorise them from three different aspects. In doing so, we incorporate uncertainty estimation methods as an integral part of the XAI landscape. We also connect the technical methods to the specific prerequisites in digital pathology and present findings to guide future research efforts. The survey is intended for both technical researchers and medical professionals, one of the objectives being to establish a common ground for cross-disciplinary discussions.