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Addressing artificial intelligence gaps in transplant medecine: a machine learning solution

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dc.contributor.author Scevenels, Laura
dc.contributor.author Bogdanov, Alan
dc.contributor.author Topor, Boris
dc.date.accessioned 2025-05-05T13:13:48Z
dc.date.available 2025-05-05T13:13:48Z
dc.date.issued 2025
dc.identifier.citation SCEVENELS, Laura; Alan BOGDANOV and Boris TOPOR. Addressing artificial intelligence gaps in transplant medecine: a machine learning solution. In: Cells and tissues transplantation. Actualities and perspectives. The 3rd edition : The Materials of the National Scientific Conference with international participation dedicated to the 80th anniversary of the founding of Nicolae Testemitanu State University of Medicine and Pharmacy. Chisinau, March 21-22, 2025: [abstracts]. Chişinău: CEP Medicina, 2025, p. 48. ISBN 978-9975-82-413-2. en_US
dc.identifier.isbn 978-9975-82-413-2
dc.identifier.uri http://repository.usmf.md/handle/20.500.12710/30468
dc.description.abstract Introduction: Artificial intelligence (AI) shows promise in transplant medicine, particularly in organ matching and rejection prediction. However, gaps remain in personalized immunosuppression, including optimal drug dosing, patient-specific data integration, and clinical implementation. This study identifies these gaps and proposes a machine learning model to optimize immunosuppressive therapy. Material and Methods: A systematic review was conducted using PubMed, Scopus, and Web of Science from 2010 to 2024 with keywords: "Artificial Intelligence," "Transplant Medicine," "Rejection Prediction," and "Patient Care Optimization." Studies discussing AI applications in rejection prediction or patient care in organ transplantation were included. Data on study design, AI methods, outcomes, and limitations were extracted. Findings show most AI models rely on static predictors and fail to adapt to real-time changes like infections and inflammation. Multi-omics data, crucial for drug metabolism and immune response, are rarely integrated, reducing accuracy. Generalizability is also limited, as most models are trained on small, single-center datasets further reducing accuracy. To address these gaps, we propose a machine learning model using longitudinal transplant data. It will integrate electronic health records, pharmacokinetics, genomics, and biomarkers to predict individualized dosing. Recurrent neural networks or transformer-based architectures will update recommendations based on patient-specific responses. Model performance will be validated using real-world clinical data and benchmarked against traditional dosing protocols. Results: The review included 68 articles, with 14 meeting inclusion criteria. While AI has been applied to organ matching and rejection prediction, no existing models provide real-time, patient-specific immunosuppression adjustments, impacting patient outcomes. The proposed model aims to bridge this gap, potentially reducing rejection rates and improving outcomes. Conclusions: This study identifies deficiencies in AI-driven immunosuppression management, particularly in real-time dose adjustments, multi-omics integration, and model generalizability. The proposed machine learning framework seeks to create an adaptive, personalized dosing system to enhance transplant outcomes and minimize rejection risks. en_US
dc.language.iso en en_US
dc.publisher CEP Medicina en_US
dc.relation.ispartof Cells and tissues transplantation. Actualities and perspectives. The 3-rd edition. Chisinau, March 21-22, 2025 en_US
dc.subject artificial intelligence en_US
dc.subject transplant medicine en_US
dc.subject personalized immunosuppression en_US
dc.subject machine learning en_US
dc.subject multi-omics data en_US
dc.title Addressing artificial intelligence gaps in transplant medecine: a machine learning solution en_US
dc.type Other en_US


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