Published in

MDPI, Diagnostics, 9(13), p. 1551, 2023

DOI: 10.3390/diagnostics13091551

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Applications of Artificial Intelligence in Thalassemia: A Comprehensive Review

This paper is made freely available by the publisher.
This paper is made freely available by the publisher.

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Abstract

Thalassemia is an autosomal recessive genetic disorder that affects the beta or alpha subunits of the hemoglobin structure. Thalassemia is classified as a hypochromic microcytic anemia and a definitive diagnosis of thalassemia is made by genetic testing of the alpha and beta genes. Thalassemia carries similar features to the other diseases that lead to microcytic hypochromic anemia, particularly iron deficiency anemia (IDA). Therefore, distinguishing between thalassemia and other causes of microcytic anemia is important to help in the treatment of the patients. Different indices and algorithms are used based on the complete blood count (CBC) parameters to diagnose thalassemia. In this article, we review how effective artificial intelligence is in aiding in the diagnosis and classification of thalassemia.