Tehran University of Medical Sciences

Science Communicator Platform

Stay connected! Follow us on X network (Twitter):
Share By
Application of Artificial Intelligence in Chronic Myeloid Leukemia (Cml) Disease Prediction and Management: A Scoping Review Publisher Pubmed



Ram M1 ; Afrash MR2 ; Moulaei K3 ; Parvin M4 ; Esmaeeli E5 ; Karbasi Z6 ; Heydari S5 ; Sabahi A7
Authors

Source: BMC Cancer Published:2024


Abstract

Background: Navigating the complexity of chronic myeloid leukemia (CML) diagnosis and management poses significant challenges, including the need for accurate prediction of disease progression and response to treatment. Artificial intelligence (AI) presents a transformative approach that enables the development of sophisticated predictive models and personalized treatment strategies that enhance early detection and improve therapeutic interventions for better patient outcomes. Methods: An extensive search was conducted to retrieve relevant articles from PubMed, Scopus, and Web of Science databases up to April 24, 2023. Data were collected using a standardized extraction form, and the results are presented in tables and graphs, showing frequencies and percentages. The authors adhered to the PRISMA-ScR checklist to ensure transparent reporting of the study. Results: Of the 176 articles initially identified, 12 were selected for our study after removing duplicates and applying the inclusion and exclusion criteria. AI’s primary applications of AI in managing CML included tumor diagnosis/classification (n = 9, 75%), prediction/prognosis (n = 2, 17%), and treatment (n = 1, 8%). For tumor diagnosis, AI is categorized into blood smear image-based (n = 5), clinical parameter-based (n = 2), and gene profiling-based (n = 2) approaches. The most commonly employed AI models include Support Vector Machine (SVM) (n = 5), eXtreme Gradient Boosting (XGBoost) (n = 4), and various neural network methods, such as Artificial Neural Network (ANN) (n = 3). Furthermore, Hybrid Convolutional Neural Network with Interactive Autodidactic School (HCNN-IAS) achieved 100% accuracy and sensitivity in organizing leukemia data types, whereas MayGAN attained 99.8% accuracy and high performance in diagnosing CML from blood smear images. Conclusions: AI offers groundbreaking insights and tools for enhancing prediction, prognosis, and personalized treatment in chronic myeloid leukemia. Integrated AI systems empower healthcare practitioners with advanced analytics, optimizing patient care and improving clinical outcomes in CML management. © The Author(s) 2024.
Other Related Docs
12. A Single Center Study of Prescribing and Treatment Outcomes of Patients With Chronic Myeloid Leukemia, International Journal of Hematology-Oncology and Stem Cell Research (2020)
16. Imatinib Efficacy, Safety and Resistance in Iranian Patients With Chronic Myeloid Leukemia: A Review of Literature, International Journal of Hematology-Oncology and Stem Cell Research (2021)