Sarina Levy-Mendelovich, Benjamin S Glicksberg, Shelly Soffer, Moran Gendler, Orly Efros, Eyal Klang
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Artificial Intelligence in Hemophilia Management: Revolutionizing Patient Care and Future Directions.
Recent advancements in artificial intelligence (AI) hold significant promise for transforming hemophilia care. This review explores AI's impact on critical aspects of hemophilia management, including bleeding risk prediction, biomarker identification, personalized treatment strategies, and patient education. We discuss the application of machine learning models in predicting bleeding risks among children with hemophilia engaging in physical activities, the use of AI in analyzing factor VIII protein structures to determine disease severity, and the development of AI-powered chatbots and digital platforms for patient education and self-management, particularly in resource-limited settings. Furthermore, we address the challenges inherent in implementing AI technologies in clinical practice, such as data privacy concerns, model interpretability, and the need for robust validation. By highlighting current advancements and future directions, we underscore AI's potential to enhance personalized care and improve outcomes for individuals with hemophilia.
期刊介绍:
''Acta Haematologica'' is a well-established and internationally recognized clinically-oriented journal featuring balanced, wide-ranging coverage of current hematology research. A wealth of information on such problems as anemia, leukemia, lymphoma, multiple myeloma, hereditary disorders, blood coagulation, growth factors, hematopoiesis and differentiation is contained in first-rate basic and clinical papers some of which are accompanied by editorial comments by eminent experts. These are supplemented by short state-of-the-art communications, reviews and correspondence as well as occasional special issues devoted to ‘hot topics’ in hematology. These will keep the practicing hematologist well informed of the new developments in the field.