Hemato (Sep 2024)

The Role of Machine Learning in the Most Common Hematological Malignancies: A Narrative Review

  • Teresa Perillo,
  • Marco de Giorgi,
  • Claudia Giorgio,
  • Carmine Frasca,
  • Renato Cuocolo,
  • Antonio Pinto

DOI
https://doi.org/10.3390/hemato5040027
Journal volume & issue
Vol. 5, no. 4
pp. 380 – 387

Abstract

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Background: Hematologic malignancies are a group of heterogeneous neoplasms which originate from hematopoietic cells. The most common among them are leukemia, lymphoma, and multiple myeloma. Machine learning (ML) is a subfield of artificial intelligence that enables the analysis of large amounts of data, possibly finding hidden patterns. Methods: We performed a narrative review about recent applications of ML in the most common hematological malignancies. We focused on the most recent scientific literature about this topic. Results: ML tools have proved useful in the most common hematological malignancies, in particular to enhance diagnostic work-up and guide treatment. Conclusions: Although ML has multiple possible applications in this field, there are some issue that have to be fixed before they can be used in daily clinical practice.

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