多学科方法
鉴定(生物学)
医学物理学
细胞仪
计算机科学
人工智能
数据科学
流式细胞术
医学
免疫学
社会科学
植物
社会学
生物
作者
David P. Ng,Paul D. Simonson,Attila Tárnok,Fabienne Lucas,Wolfgang Kern,Nina Rolf,Goce Bogdanoski,Cherie Green,Ryan R. Brinkman,Kamila Czechowska
摘要
Flow cytometry is a key clinical tool in the diagnosis of many hematologic malignancies and traditionally requires close inspection of digital data by hematopathologists with expert domain knowledge. Advances in artificial intelligence (AI) are transferable to flow cytometry and have the potential to improve efficiency and prioritization of cases, reduce errors, and highlight fundamental, previously unrecognized associations with underlying biological processes. As a multidisciplinary group of stakeholders, we review a range of critical considerations for appropriately applying AI to clinical flow cytometry, including use case identification, low and high risk use cases, validation, revalidation, computational considerations, and the present regulatory frameworks surrounding AI in clinical medicine. In particular, we provide practical guidance for the development, implementation, and suggestions for potential regulation of AI-based methods in the clinical flow cytometry laboratory. We expect these recommendations to be a helpful initial framework of reference, which will also require additional updates as the field matures.
科研通智能强力驱动
Strongly Powered by AbleSci AI