Qian Shirui, Cao Bingxin, Li Ping, Dong Nianguo
Department of Cardiovascular Surgery, Union Hospital, Tongji Medical College, Huazhong University of Science and Technology, Wuhan, China.
Key Laboratory of Organ Transplantation, Ministry of Education NHC, Chinese Academy of Medical Sciences, Wuhan, China.
Front Cardiovasc Med. 2024 Feb 26;11:1346202. doi: 10.3389/fcvm.2024.1346202. eCollection 2024.
We sought to develop and validate a mortality prediction model for heart transplantation (HT) using nutrition-related indicators, which clinicians could use to identify patients at high risk of death after HT.
The model was developed for and validated in adult participants in China who received HT between 1 January 2015 and 31 December 2020. 428 subjects were enrolled in the study and randomly divided into derivation and validation cohorts at a ratio of 7:3. The likelihood-ratio test based on Akaike information was used to select indicators and develop the prediction model. The performance of models was assessed and validated by area under the curve (AUC), C-index, calibration curves, net reclassification index, and integrated discrimination improvement.
The mean (SD) age was 48.67 (12.33) years and mean (SD) nutritional risk index (NRI) was 100.47 (11.89) in the derivation cohort. Mortality after HT developed in 66 of 299 patients in the derivation cohort and 28 of 129 in the validation cohort. Age, NRI, serum creatine, and triglyceride were included in the full model. The AUC of this model was 0.76 and the C statistics was 0.72 (95% CI, 0.67-0.78) in the derivation cohort and 0.71 (95% CI, 0.62-0.81) in the validation cohort. The multivariable model improved integrated discrimination compared with the reduced model that included age and NRI (6.9%; 95% CI, 1.8%-15.1%) and the model which only included variable NRI (14.7%; 95% CI, 7.4%-26.2%) in the derivation cohort. Compared with the model that only included variable NRI, the full model improved categorical net reclassification index both in the derivation cohort (41.8%; 95% CI, 9.9%-58.8%) and validation cohort (60.7%; 95% CI, 9.0%-100.5%).
The proposed model was able to predict mortality after HT and estimate individualized risk of postoperative death. Clinicians could use this model to identify patients at high risk of postoperative death before HT surgery, which would help with targeted preventative therapy to reduce the mortality risk.
我们试图开发并验证一种使用营养相关指标的心脏移植(HT)死亡率预测模型,临床医生可利用该模型识别HT术后死亡风险高的患者。
该模型在中国2015年1月1日至2020年12月31日期间接受HT的成年参与者中开发并验证。428名受试者纳入研究,并按7:3的比例随机分为推导队列和验证队列。基于赤池信息的似然比检验用于选择指标并开发预测模型。通过曲线下面积(AUC)、C指数、校准曲线、净重新分类指数和综合判别改善来评估和验证模型的性能。
推导队列中,平均(标准差)年龄为48.67(12.33)岁,平均(标准差)营养风险指数(NRI)为100.47(11.89)。推导队列的299例患者中有66例发生HT术后死亡,验证队列的129例中有28例。完整模型纳入了年龄、NRI、血清肌酐和甘油三酯。该模型在推导队列中的AUC为0.76,C统计量为0.72(95%CI,0.67 - 0.78),在验证队列中为0.71(95%CI,0.62 - 0.81)。与包含年龄和NRI的简化模型相比,多变量模型在推导队列中改善了综合判别(6.9%;95%CI,1.8% - 15.1%),与仅包含变量NRI的模型相比也有改善(14.7%;95%CI,7.4% - 26.2%)。与仅包含变量NRI的模型相比,完整模型在推导队列(41.8%;95%CI,9.9% - 58.8%)和验证队列(60.7%;95%CI,9.0% - 100.5%)中均改善了分类净重新分类指数。
所提出的模型能够预测HT术后死亡率并估计个体化的术后死亡风险。临床医生可在HT手术前使用该模型识别术后死亡风险高的患者,这将有助于采取针对性的预防治疗以降低死亡风险。