MLL Munich Leukemia Laboratory, Munich, Germany.
Oncogene. 2021 Jun;40(25):4271-4280. doi: 10.1038/s41388-021-01861-y. Epub 2021 Jun 8.
Artificial intelligence (AI) is about to make itself indispensable in the health care sector. Examples of successful applications or promising approaches range from the application of pattern recognition software to pre-process and analyze digital medical images, to deep learning algorithms for subtype or disease classification, and digital twin technology and in silico clinical trials. Moreover, machine-learning techniques are used to identify patterns and anomalies in electronic health records and to perform ad-hoc evaluations of gathered data from wearable health tracking devices for deep longitudinal phenotyping. In the last years, substantial progress has been made in automated image classification, reaching even superhuman level in some instances. Despite the increasing awareness of the importance of the genetic context, the diagnosis in hematology is still mainly based on the evaluation of the phenotype. Either by the analysis of microscopic images of cells in cytomorphology or by the analysis of cell populations in bidimensional plots obtained by flow cytometry. Here, AI algorithms not only spot details that might escape the human eye, but might also identify entirely new ways of interpreting these images. With the introduction of high-throughput next-generation sequencing in molecular genetics, the amount of available information is increasing exponentially, priming the field for the application of machine learning approaches. The goal of all the approaches is to allow personalized and informed interventions, to enhance treatment success, to improve the timeliness and accuracy of diagnoses, and to minimize technically induced misclassifications. The potential of AI-based applications is virtually endless but where do we stand in hematology and how far can we go?
人工智能(AI)即将在医疗保健领域变得不可或缺。成功应用或有前途的方法的例子包括应用模式识别软件对数字医疗图像进行预处理和分析、深度学习算法对亚型或疾病进行分类、数字孪生技术和计算机临床试验。此外,机器学习技术用于识别电子健康记录中的模式和异常,并对可穿戴健康跟踪设备收集的数据进行临时评估,以进行深度纵向表型分析。在过去的几年中,自动化图像分类取得了实质性进展,在某些情况下甚至达到了超人的水平。尽管人们越来越意识到遗传背景的重要性,但血液学的诊断仍然主要基于表型的评估。无论是通过细胞形态学中细胞的显微镜图像分析,还是通过流式细胞术获得的二维图中细胞群体的分析。在这里,人工智能算法不仅可以发现可能逃过人类眼睛的细节,还可以识别出全新的解释这些图像的方法。随着高通量下一代测序在分子遗传学中的引入,可用信息量呈指数级增长,为机器学习方法的应用奠定了基础。所有方法的目标都是允许个性化和知情干预,提高治疗成功率,提高诊断的及时性和准确性,并最大限度地减少技术诱导的分类错误。基于人工智能的应用的潜力几乎是无限的,但我们在血液学方面的现状如何,我们能走多远?