Author
Listed:
- Tiago Fernandes Machado
- Francisco das Chagas Barros Neto
- Marilda de Souza Gonçalves
- Cynara Gomes Barbosa
- Marcos Ennes Barreto
Abstract
This systematic review explores the application of machine learning (ML) algorithms in sickle cell disease (SCD), focusing on diagnosis and several clinical characteristics, such as early detection of organ failure, identification of drug dosage, and classification of pain intensity. A comprehensive analysis of recent studies reveals promising results in using ML techniques for diagnosing and monitoring SCD. The review covers various ML algorithms, including Multilayer Perceptron, Support Vector Machine, Random Forest, Logistic Regression, Long short-term memory, Extreme Learning Machines, Convolutional Neural Networks, and Transfer Learning methods. Despite significant advances, challenges such as limited dataset sizes, interpretability concerns, and risks of overfitting are identified in studies. Future research directions entail addressing these limitations by harnessing larger and more representative datasets, enhancing model interpretability, and exploring advanced ML techniques like deep learning. Overall, this review underscores the transformative potential of ML in increasing the diagnosis, monitoring and define prognosis of sickle cell disease while also highlighting the need for further investigation in the field.
Suggested Citation
Tiago Fernandes Machado & Francisco das Chagas Barros Neto & Marilda de Souza Gonçalves & Cynara Gomes Barbosa & Marcos Ennes Barreto, 2024.
"Exploring machine learning algorithms in sickle cell disease patient data: A systematic review,"
PLOS ONE, Public Library of Science, vol. 19(11), pages 1-17, November.
Handle:
RePEc:plo:pone00:0313315
DOI: 10.1371/journal.pone.0313315
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