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作 者:Mayara Machry Luis Fernando Ferreira Angelica Maria Lucchese Antonio Nocchi Kalil Flavia Heinz Feier
机构地区:[1]Department of Hepato-Biliary-Pancreatic Surgery and Liver Transplantation,Irmandade Santa Casa de Misericórdia de Porto Alegre,Porto Alegre 90020-090,Brazil [2]Postgraduation Program in Medicine:Hepatology,Federal University of Health Sciences of Porto Alegre,Porto Alegre 90050-170,Brazil
出 处:《World Journal of Transplantation》2023年第6期290-298,共9页世界移植杂志
基 金:Supported by Part by The Coordenação de Aperfeiçoamento de Pessoal de Nível Superior–Brasil(CAPES).
摘 要:The shortage of deceased donor organs has prompted the development of alternative liver grafts for transplantation.Living-donor liver transplantation(LDLT)has emerged as a viable option,expanding the donor pool and enabling timely transplantation with favorable graft function and improved long-term outcomes.An accurate evaluation of the donor liver’s volumetry(LV)and anatomical study is crucial to ensure adequate future liver remnant,graft volume and precise liver resection.Thus,ensuring donor safety and an appropriate graftto-recipient weight ratio.Manual LV(MLV)using computed tomography has traditionally been considered the gold standard for assessing liver volume.However,the method has been limited by cost,subjectivity,and variability.Automated LV techniques employing advanced segmentation algorithms offer improved reproducibility,reduced variability,and enhanced efficiency compared to manual measurements.However,the accuracy of automated LV requires further investigation.The study provides a comprehensive review of traditional and emerging LV methods,including semi-automated image processing,automated LV techniques,and machine learning-based approaches.Additionally,the study discusses the respective strengths and weaknesses of each of the aforementioned techniques.The use of artificial intelligence(AI)technologies,including machine learning and deep learning,is expected to become a routine part of surgical planning in the near future.The implementation of AI is expected to enable faster and more accurate image study interpretations,improve workflow efficiency,and enhance the safety,speed,and cost-effectiveness of the procedures.Accurate preoperative assessment of the liver plays a crucial role in ensuring safe donor selection and improved outcomes in LDLT.MLV has inherent limitations that have led to the adoption of semi-automated and automated software solutions.Moreover,AI has tremendous potential for LV and segmentation;however,its widespread use is hindered by cost and availability.Therefore,the integra
关 键 词:Liver transplantation Living-donor Diagnostic imaging Artificial intelligence Machine learning Deep learning
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