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Early Implications for Solid Organ Transplantation With the Use of Artificial Intelligence From a Bibliometric Perspective

2026·0 Zitationen·Mayo Clinic Proceedings Digital HealthOpen Access
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0

Zitationen

5

Autoren

2026

Jahr

Abstract

Artificial intelligence (AI) is increasingly transforming healthcare, particularly in solid organ transplantation (SOT), where it addresses complex challenges such as organ allocation, graft rejection prediction, and immunosuppressive management.This bibliometric analysis evaluated the scientific impact and evolution of AI applications in kidney, liver, heart, and lung transplantation.A comprehensive search across PubMed, Scopus, and Web of Science identified 2,384 publications from 1989 to 2025, of which 815 met inclusion criteria after double-blind screening with Rayyan AI.Coauthorship, keyword co-occurrence, and collaboration networks were analyzed using VOSviewer and Bibliometrix.The United States led in publications, citations, and collaboration strength, with Mayo Clinic emerging as the most productive institution, followed by China.Machine Learning, Expert Systems, and Deep Learning were the most frequently applied AI techniques, while kidney and liver transplantation were the most extensively studied.Thematic clusters included rejection prediction, patient survival, organ allocation, postoperative monitoring, and immunosuppression personalization.AI-driven models integrate clinical, immunological, histological, and imaging data to enhance predictive accuracy, support clinical decision-making, and improve graft and patient outcomes.Although many of these models remain under validation, early findings indicate strong potential to optimize patient care and surgical outcomes.This study highlights global research trends and emphasizes the need for interdisciplinary collaboration to develop context-specific AI tools.Moreover, promoting bibliometric literacy among healthcare professionals may strengthen evidence-based research and accelerate the responsible integration of AI into transplant medicine.

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