Department of Surgery, University of Pittsburgh Medical Center, Pittsburgh, PA.
Department of Surgery, Rutgers University, New Jersey Medical School, Newark, NJ.
Transplantation. 2019 Oct;103(10):e297-e307. doi: 10.1097/TP.0000000000002810.
There are no instruments that can identify patients at an increased risk of poor outcomes after liver transplantation (LT) based only on their preoperative characteristics. The primary aim of this study was to develop such a scoring system. Secondary outcomes were to assess the discriminative performance of the predictive model for 90-day mortality, 1-year mortality, and 5-year patient survival.
The study population was represented by 30 458 adults who underwent LT in the United States between January 2002 and June 2013. Machine learning techniques identified recipient age, Model for End-Stage Liver Disease score, body mass index, diabetes, and dialysis before LT as the strongest predictors for 90-day postoperative mortality. A weighted scoring system (minimum of 0 to a maximum of 6 points) was subsequently developed.
Recipients with 0, 1, 2, 3, 4, 5, and 6 points had an observed 90-day mortality of 6.0%, 8.7%, 10.4%, 11.9%, 15.7%, 16.0%, and 19.7%, respectively (P ≤ 0.001). One-year mortality was 9.8%, 13.4%, 15.8%, 17.2%, 23.0%, 25.2%, and 35.8% (P ≤ 0.001) and five-year survival was 78%, 73%, 72%, 71%, 65%, 59%, and 48%, respectively (P = 0.001). The mean 90-day mortality for the cohort was 9%. The area under the curve of the model was 0.952 for the discrimination of patients with 90-day mortality risk ≥10%.
Short- and long-term outcomes of patients undergoing cadaveric LT can be predicted using a scoring system based on recipients' preoperative characteristics. This tool could assist clinicians and researchers in identifying patients at increased risks of postoperative death.
目前尚无工具可仅基于患者术前特征,识别肝移植(LT)后预后不良风险增加的患者。本研究的主要目的是开发这样一种评分系统。次要结局是评估预测模型对 90 天死亡率、1 年死亡率和 5 年患者生存率的区分性能。
本研究人群为 2002 年 1 月至 2013 年 6 月期间在美国接受 LT 的 30458 例成年人。机器学习技术确定受体年龄、终末期肝病模型评分、体重指数、糖尿病和 LT 前透析是术后 90 天死亡率的最强预测因子。随后开发了一个加权评分系统(最低 0 分,最高 6 分)。
0、1、2、3、4、5 和 6 分的受者术后 90 天死亡率分别为 6.0%、8.7%、10.4%、11.9%、15.7%、16.0%和 19.7%(P≤0.001)。1 年死亡率分别为 9.8%、13.4%、15.8%、17.2%、23.0%、25.2%和 35.8%(P≤0.001),5 年生存率分别为 78%、73%、72%、71%、65%、59%和 48%(P=0.001)。队列的平均 90 天死亡率为 9%。该模型对 90 天死亡率风险≥10%的患者的区分曲线下面积为 0.952。
可基于受体术前特征使用评分系统预测接受尸体 LT 的患者的短期和长期结局。该工具可帮助临床医生和研究人员识别术后死亡风险增加的患者。