医学
肝移植
外科
吻合
回顾性队列研究
腹腔镜检查
原位肝移植
血栓形成
移植
动脉
门静脉血栓形成
活体肝移植
单中心
开放手术
侵入性外科
生存分析
存活率
作者
Jinsoo Rhu,Jong Man Kim,Namkee Oh,Justin Sangwook Ko,Gaab Soo Kim,Gyu-Seong Choi
标识
DOI:10.1097/lvt.0000000000000750
摘要
Living donor liver transplantation has evolved with minimal invasive donor hepatectomy, now widely adopted at leading centers. The next frontier is a recipient-side minimally invasive approach, yet data remains scarce. We report our center's experience with totally laparoscopic living-donor liver transplantation (TLLT) compared with conventional open techniques. We conducted a retrospective analysis of adult living donor liver transplantations performed at Samsung Medical Center between January 2022 and June 2024. Open approaches were compared with minimal invasive approaches. Further analysis was performed by comparing open anastomosis to laparoscopic anastomosis. The minimal invasive approach (n=16) comprised 5 hybrid procedures and 11 intended TLLTs; 2 TLLTs required open conversion. Baseline characteristics were similar, except for a lower median MELD score in the minimal invasive group (9 vs. 13; p =0.01). Minimal invasive approach yielded longer cold ischemic time (148 vs. 77 min; p <0.001), warm ischemic time (45 vs. 33 min; p =0.03), and total operation time (411 vs. 343 min; p =0.01), with no significant differences in hepatic artery complications (12.5% vs. 4.5%; p =0.18), graft failure (12.5% vs. 4.8%; p =0.20), mortality (6.3% vs. 10.2%; p =0.99), or hospital stay (15.5 vs. 18 d; p =0.10). Within TLLT, 2 cases of hepatic artery thrombosis and 3 biliary complications were managed successfully. Long-term graft and patient survival were comparable to open liver transplantation. TLLT in adults is feasible and safe, achieving outcomes equivalent to open recipient surgery despite longer ischemic and operative times. Careful patient selection and technical refinements-potentially augmented by robotic assistance-may further optimize minimal invasive surgery for the recipient.
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