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Proceedings Paper

Deep Learning-Based Leukemia Diagnosis from Bone Marrow Images

Publicated to:Communications in Computer and Information Science. 2273 CCIS 71-85 - 2025-01-01 2273 CCIS(), DOI: 10.1007/978-3-031-75431-9_5

Authors: Zhinin-Vera L; Moya A; Pretel E; Astudillo J; Jiménez-Ruescas J

Affiliations

Universidad de Castilla-La Mancha - Author
Universidad de Castilla-La Mancha; Yachay University for Experimental Technology and Research (Yachay Tech); MIND Research Group - Model Intelligent Networks Development - Author
Yachay University for Experimental Technology and Research (Yachay Tech) - Author

Abstract

Identifying and classifying features in Bone Marrow Aspirate Smear (BMAS) images is essential for diagnosing various leukemias, such as Acute Myeloid Leukemia. The complexity of microscopy image analysis necessitates a computational tool to automate this process, reducing the workload on hematologists. Our study introduces a Deep Learning-based method designed to efficiently detect and classify cell characteristics in BMAS images. Current systems struggle with cell and nucleus segmentation due to variations in cell size, appearance, texture, and overlapping cells, often influenced by different microscopy conditions. We addressed these challenges by experimenting with the Munich AML Morphology Dataset and a custom dataset from Hospital 12 de Octubre in Madrid. The proposed system achieved over 90% accuracy and 92% precision in identifying and classifying leukemia cells, marking a substantial advancement in supporting clinical specialists in their decision-making processes when traditional analysis methods are insufficient.

Keywords
Bone marrow aspirate smearDeep learningImage classificationLeukemia cells

Quality index

Bibliometric impact. Analysis of the contribution and dissemination channel

The work has been published in the journal Communications in Computer and Information Science, Q4 Agency Scopus (SJR), its regional focus and specialization in Computer Science (Miscellaneous), give it significant recognition in a specific niche of scientific knowledge at an international level.

Impact and social visibility

From the perspective of influence or social adoption, and based on metrics associated with mentions and interactions provided by agencies specializing in calculating the so-called "Alternative or Social Metrics," we can highlight as of 2025-05-07:

  • The use of this contribution in bookmarks, code forks, additions to favorite lists for recurrent reading, as well as general views, indicates that someone is using the publication as a basis for their current work. This may be a notable indicator of future more formal and academic citations. This claim is supported by the result of the "Capture" indicator, which yields a total of: 3 (PlumX).