Application of machine learning in the management of acute myeloid leukemia: current practice and future prospects

Author:

Eckardt Jan-Niklas1ORCID,Bornhäuser Martin123,Wendt Karsten4ORCID,Middeke Jan Moritz1

Affiliation:

1. Department of Internal Medicine I, University Hospital Carl Gustav Carus, Dresden, Germany;

2. National Center for Tumor Diseases, Dresden (NCT/UCC), Dresden, Germany;

3. German Consortium for Translational Cancer Research, DKFZ, Heidelberg, Germany; and

4. Institute of Circuits and Systems, Technical University Dresden, Dresden, Germany

Abstract

Abstract Machine learning (ML) is rapidly emerging in several fields of cancer research. ML algorithms can deal with vast amounts of medical data and provide a better understanding of malignant disease. Its ability to process information from different diagnostic modalities and functions to predict prognosis and suggest therapeutic strategies indicates that ML is a promising tool for the future management of hematologic malignancies; acute myeloid leukemia (AML) is a model disease of various recent studies. An integration of these ML techniques into various applications in AML management can assure fast and accurate diagnosis as well as precise risk stratification and optimal therapy. Nevertheless, these techniques come with various pitfalls and need a strict regulatory framework to ensure safe use of ML. This comprehensive review highlights and discusses recent advances in ML techniques in the management of AML as a model disease of hematologic neoplasms, enabling researchers and clinicians alike to critically evaluate this upcoming, potentially practice-changing technology.

Publisher

American Society of Hematology

Subject

Hematology

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