Department of HPB Surgery and Liver Transplantation, AP-HP Hôpital Beaujon, Clichy, France.
Nanophysics Department, Istituto Italiano di Tecnologia, Genoa, Italy.
Liver Transpl. 2020 Oct;26(10):1224-1232. doi: 10.1002/lt.25801.
The worldwide implementation of a liver graft pool using marginal livers (ie, grafts with a high risk of technical complications and impaired function or with a risk of transmitting infection or malignancy to the recipient) has led to a growing interest in developing methods for accurate evaluation of graft quality. Liver steatosis is associated with a higher risk of primary nonfunction, early graft dysfunction, and poor graft survival rate. The present study aimed to analyze the value of artificial intelligence (AI) in the assessment of liver steatosis during procurement compared with liver biopsy evaluation. A total of 117 consecutive liver grafts from brain-dead donors were included and classified into 2 cohorts: ≥30 versus <30% hepatic steatosis. AI analysis required the presence of an intraoperative smartphone liver picture as well as a graft biopsy and donor data. First, a new algorithm arising from current visual recognition methods was developed, trained, and validated to obtain automatic liver graft segmentation from smartphone images. Second, a fully automated texture analysis and classification of the liver graft was performed by machine-learning algorithms. Automatic liver graft segmentation from smartphone images achieved an accuracy (Acc) of 98%, whereas the analysis of the liver graft features (cropped picture and donor data) showed an Acc of 89% in graft classification (≥30 versus <30%). This study demonstrates that AI has the potential to assess steatosis in a handy and noninvasive way to reliably identify potential nontransplantable liver grafts and to avoid improper graft utilization.
全球范围内使用边缘供肝(即存在较高技术并发症和功能障碍风险,或存在向受者传播感染或恶性肿瘤风险的供肝)进行肝移植的做法,促使人们越来越关注开发准确评估供肝质量的方法。肝脂肪变性与原发性无功能、早期移植物功能障碍和较差的移植物存活率增加有关。本研究旨在分析人工智能(AI)在评估获取供肝时肝脂肪变性方面与肝活检评估的价值。共纳入 117 例脑死亡供者的连续肝移植,并分为 2 个队列:肝脂肪变性≥30%与<30%。AI 分析需要术中智能手机供肝图像以及供肝活检和供者数据。首先,开发了一种源自当前视觉识别方法的新算法,并对其进行了训练和验证,以从智能手机图像中自动分割供肝。其次,通过机器学习算法对供肝的纹理进行全自动分析和分类。从智能手机图像自动分割供肝的准确性(Acc)为 98%,而对供肝特征(裁剪图像和供者数据)的分析表明,在供肝分类(≥30%与<30%)中,Acc 为 89%。本研究表明,AI 有可能以简便、非侵入的方式评估肝脂肪变性,从而可靠地识别潜在的不可移植供肝,并避免不当利用供肝。