Design of an integrated model for diagnosis and classification of pediatric acute leukemia using machine learning

Applying artificial intelligence techniques for diagnosing diseases in hospitals often provides advanced medical services to patients such as the diagnosis of leukemia. On the other hand, surgery and bone marrow sampling, especially in the diagnosis of childhood leukemia, are even more complex and d...

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Veröffentlicht in:Proceedings of the Institution of Mechanical Engineers. Part H, Journal of engineering in medicine Journal of engineering in medicine, 2020-10, Vol.234 (10), p.1051-1069
Hauptverfasser: Fathi, Ehsan, Rezaee, Mustafa Jahangoshai, Tavakkoli-Moghaddam, Reza, Alizadeh, Azra, Montazer, Aynaz
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container_issue 10
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container_title Proceedings of the Institution of Mechanical Engineers. Part H, Journal of engineering in medicine
container_volume 234
creator Fathi, Ehsan
Rezaee, Mustafa Jahangoshai
Tavakkoli-Moghaddam, Reza
Alizadeh, Azra
Montazer, Aynaz
description Applying artificial intelligence techniques for diagnosing diseases in hospitals often provides advanced medical services to patients such as the diagnosis of leukemia. On the other hand, surgery and bone marrow sampling, especially in the diagnosis of childhood leukemia, are even more complex and difficult, resulting in increased human error and procedure time decreased patient satisfaction and increased costs. This study investigates the use of neuro-fuzzy and group method of data handling, for the diagnosis of acute leukemia in children based on the complete blood count test. Furthermore, a principal component analysis is applied to increase the accuracy of the diagnosis. The results show that distinguishing between patient and non-patient individuals can easily be done with adaptive neuro-fuzzy inference system, whereas for classifying between the types of diseases themselves, more pre-processing operations such as reduction of features may be needed. The proposed approach may help to distinguish between two types of leukemia including acute lymphoblastic leukemia and acute myeloid leukemia. Based on the sensitivity of the diagnosis, experts can use the proposed algorithm to help identify the disease earlier and lessen the cost.
doi_str_mv 10.1177/0954411920938567
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subjects Acute lymphoblastic leukemia
Acute myeloid leukemia
Adaptive systems
Algorithms
Artificial intelligence
Artificial neural networks
Bone marrow
Bone surgery
Children
Classification
Diagnosis
Fuzzy logic
Group method of data handling
Human error
Learning algorithms
Leukemia
Lymphatic leukemia
Machine learning
Myeloid leukemia
Patient satisfaction
Patients
Principal components analysis
title Design of an integrated model for diagnosis and classification of pediatric acute leukemia using machine learning
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