Edinburgh Pathology, Institute of Genetics and Cancer, University of Edinburgh, Edinburgh, UK.
Centre for Genomic & Experimental Medicine, Institute of Genetics and Cancer, University of Edinburgh, Edinburgh, UK.
J Pathol. 2022 Jul;257(4):391-402. doi: 10.1002/path.5921. Epub 2022 May 23.
The potential to use quantitative image analysis and artificial intelligence is one of the driving forces behind digital pathology. However, despite novel image analysis methods for pathology being described across many publications, few become widely adopted and many are not applied in more than a single study. The explanation is often straightforward: software implementing the method is simply not available, or is too complex, incomplete, or dataset-dependent for others to use. The result is a disconnect between what seems already possible in digital pathology based upon the literature, and what actually is possible for anyone wishing to apply it using currently available software. This review begins by introducing the main approaches and techniques involved in analysing pathology images. I then examine the practical challenges inherent in taking algorithms beyond proof-of-concept, from both a user and developer perspective. I describe the need for a collaborative and multidisciplinary approach to developing and validating meaningful new algorithms, and argue that openness, implementation, and usability deserve more attention among digital pathology researchers. The review ends with a discussion about how digital pathology could benefit from interacting with and learning from the wider bioimage analysis community, particularly with regard to sharing data, software, and ideas. © 2022 The Author. The Journal of Pathology published by John Wiley & Sons Ltd on behalf of The Pathological Society of Great Britain and Ireland.
定量图像分析和人工智能的应用潜力是数字病理学发展的驱动力之一。然而,尽管许多出版物都描述了用于病理学的新型图像分析方法,但很少有方法得到广泛应用,许多方法在超过一项研究中都没有应用。原因通常很简单:实施该方法的软件不可用,或者过于复杂、不完整或依赖于数据集,其他人无法使用。这导致文献中似乎已经可以在数字病理学中实现的内容与实际上任何人都希望使用当前可用软件应用它的可能性之间存在脱节。这篇综述首先介绍了分析病理图像所涉及的主要方法和技术。然后,我从用户和开发人员的角度检查了将算法从概念验证阶段推进所固有的实际挑战。我描述了开发和验证有意义的新算法需要协作和多学科方法的必要性,并认为开放性、实施和可用性在数字病理学研究人员中应该得到更多关注。最后,讨论了数字病理学如何从与更广泛的生物图像分析社区的互动和学习中受益,特别是在数据、软件和思想共享方面。© 2022 作者。病理学杂志由 John Wiley & Sons Ltd 代表英国和爱尔兰的病理学会出版。