Nazha Aziz, Elemento Olivier, Ahuja Sanjay, Lam Barbara D, Miles Moses, Shouval Roni, McWeeney Shannon K, Sirhan Shireen, Srisuwananukorn Andrew, Haferlach Torsten
Thomas Jefferson University, Cherry Hill, New Jersey, United States.
Weill Cornell Medical College, New York, New York, United States.
Blood. 2025 Aug 22. doi: 10.1182/blood.2025029876.
Artificial intelligence (AI) and its sub-discipline, machine learning (ML), have the potential to revolutionize healthcare, including hematology. The diagnosis and treatment of hematologic disorders depend on the integration of diverse data sources, such as imaging, pathology, omics, and laboratory parameters. The increasing volume and complexity of patient data have made clinical decision-making more challenging. AI/ML hold significant potential for enhancing diagnostic accuracy, risk stratification, and treatment response prediction through advanced modeling techniques. Generative AI, a recent advancement within the broader field of AI, is poised to have a profound impact on healthcare and hematology. Generative AI can enhance the development of novel therapeutic strategies, improve diagnostic workflows by generating high-fidelity images or pathology reports, and facilitate more personalized approaches to patient management. Its ability to augment clinical decision-making and streamline research represents a significant leap forward in the field. However, despite this potential, few AI/ML tools have been fully implemented in clinical practice due to challenges related to data quality, equity, advanced infrastructure, and the establishment of robust evaluation metrics. Despite its promise, AI implementation in hematology faces critical challenges, including bias, data quality issues, and a lack of regulatory frameworks and safety standards that keep pace with rapid technological advancements. In this review, we provide an overview of the current state of AI/ML in hematology as of 2025, identify existing gaps, and offer insights into future developments.
人工智能(AI)及其子学科机器学习(ML)有潜力彻底改变包括血液学在内的医疗保健领域。血液系统疾病的诊断和治疗依赖于多种数据源的整合,如图像、病理学、组学和实验室参数。患者数据量的不断增加和复杂性使得临床决策变得更具挑战性。人工智能/机器学习通过先进的建模技术在提高诊断准确性、风险分层和治疗反应预测方面具有巨大潜力。生成式人工智能是人工智能更广泛领域内的一项最新进展,有望对医疗保健和血液学产生深远影响。生成式人工智能可以促进新型治疗策略的开发,通过生成高保真图像或病理报告改善诊断流程,并促进更个性化的患者管理方法。它增强临床决策和简化研究的能力代表了该领域的重大飞跃。然而,尽管有这种潜力,但由于与数据质量、公平性、先进基础设施以及建立强大评估指标相关的挑战,很少有人工智能/机器学习工具在临床实践中得到全面应用。尽管前景广阔,但人工智能在血液学中的应用面临着关键挑战,包括偏差、数据质量问题以及缺乏与快速技术进步同步的监管框架和安全标准。在本综述中,我们概述了截至2025年人工智能/机器学习在血液学中的现状,识别现有差距,并对未来发展提供见解。