arXiv Open Access 2024

Automated Immunophenotyping Assessment for Diagnosing Childhood Acute Leukemia using Set-Transformers

Elpiniki Maria Lygizou Michael Reiter Margarita Maurer-Granofszky Michael Dworzak Radu Grosu
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Abstrak

Acute Leukemia is the most common hematologic malignancy in children and adolescents. A key methodology in the diagnostic evaluation of this malignancy is immunophenotyping based on Multiparameter Flow Cytometry (FCM). However, this approach is manual, and thus time-consuming and subjective. To alleviate this situation, we propose in this paper the FCM-Former, a machine learning, self-attention based FCM-diagnostic tool, automating the immunophenotyping assessment in Childhood Acute Leukemia. The FCM-Former is trained in a supervised manner, by directly using flow cytometric data. Our FCM-Former achieves an accuracy of 96.5% assigning lineage to each sample among 960 cases of either acute B-cell, T-cell lymphoblastic, and acute myeloid leukemia (B-ALL, T-ALL, AML). To the best of our knowledge, the FCM-Former is the first work that automates the immunophenotyping assessment with FCM data in diagnosing pediatric Acute Leukemia.

Topik & Kata Kunci

Penulis (5)

E

Elpiniki Maria Lygizou

M

Michael Reiter

M

Margarita Maurer-Granofszky

M

Michael Dworzak

R

Radu Grosu

Format Sitasi

Lygizou, E.M., Reiter, M., Maurer-Granofszky, M., Dworzak, M., Grosu, R. (2024). Automated Immunophenotyping Assessment for Diagnosing Childhood Acute Leukemia using Set-Transformers. https://arxiv.org/abs/2406.18309

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Tahun Terbit
2024
Bahasa
en
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arXiv
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Open Access ✓