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通过小儿肾移植后移植失败风险识别亚组:生存树模型在ESPN/ERA-EDTA登记处的应用

Identification of subgroups by risk of graft failure after paediatric renal transplantation: application of survival tree models on the ESPN/ERA-EDTA Registry.

作者信息

Lofaro Danilo, Jager Kitty J, Abu-Hanna Ameen, Groothoff Jaap W, Arikoski Pekka, Hoecker Britta, Roussey-Kesler Gwenaelle, Spasojević Brankica, Verrina Enrico, Schaefer Franz, van Stralen Karlijn J

机构信息

Department of Nephrology, Dialysis and Transplantation, "Kidney and Transplantation" Research Centre, Annunziata Hospital, Cosenza, Italy de-Health Lab, DIMEG, University of Calabria, Rende, Italy.

Department of Medical Informatics, ERA-EDTA Registry, Academic Medical Center, University of Amsterdam, Amsterdam, The Netherlands Department of Medical Informatics, ESPN/ERA-EDTA Registry, Academic Medical Center, University of Amsterdam, Amsterdam, The Netherlands Department of Medical Informatics, Academic Medical Center, University of Amsterdam, Amsterdam, The Netherlands.

出版信息

Nephrol Dial Transplant. 2016 Feb;31(2):317-24. doi: 10.1093/ndt/gfv313. Epub 2015 Aug 27.

Abstract

BACKGROUND

Identification of patient groups by risk of renal graft loss might be helpful for accurate patient counselling and clinical decision-making. Survival tree models are an alternative statistical approach to identify subgroups, offering cut-off points for covariates and an easy-to-interpret representation.

METHODS

Within the European Society of Pediatric Nephrology/European Renal Association-European Dialysis and Transplant Association (ESPN/ERA-EDTA) Registry data we identified paediatric patient groups with specific profiles for 5-year renal graft survival. Two analyses were performed, including (i) parameters known at time of transplantation and (ii) additional clinical measurements obtained early after transplantation. The identified subgroups were added as covariates in two survival models. The prognostic performance of the models was tested and compared with conventional Cox regression analyses.

RESULTS

The first analysis included 5275 paediatric renal transplants. The best 5-year graft survival (90.4%) was found among patients who received a renal graft as a pre-emptive transplantation or after short-term dialysis (<45 days), whereas graft survival was poorest (51.7%) in adolescents transplanted after long-term dialysis (>2.2 years). The Cox model including both pre-transplant factors and tree subgroups had a significantly better predictive performance than conventional Cox regression (P < 0.001). In the analysis including clinical factors, graft survival ranged from 97.3% [younger patients with estimated glomerular filtration rate (eGFR) >30 mL/min/1.73 m(2) and dialysis <20 months] to 34.7% (adolescents with eGFR <60 mL/min/1.73 m(2) and dialysis >20 months). Also in this case combining tree findings and clinical factors improved the predictive performance as compared with conventional Cox model models (P < 0.0001).

CONCLUSIONS

In conclusion, we demonstrated the tree model to be an accurate and attractive tool to predict graft failure for patients with specific characteristics. This may aid the evaluation of individual graft prognosis and thereby the design of measures to improve graft survival in the poor prognosis groups.

摘要

背景

根据肾移植丢失风险对患者群体进行识别,可能有助于进行准确的患者咨询和临床决策。生存树模型是一种用于识别亚组的替代性统计方法,它能提供协变量的截断点并给出易于解释的呈现方式。

方法

在欧洲儿科肾脏病学会/欧洲肾脏协会 - 欧洲透析与移植协会(ESPN/ERA - EDTA)登记数据中,我们识别出具有特定5年肾移植存活特征的儿科患者群体。进行了两项分析,包括(i)移植时已知的参数,以及(ii)移植后早期获得的额外临床测量值。将识别出的亚组作为协变量添加到两个生存模型中。对模型的预后性能进行了测试,并与传统的Cox回归分析进行比较。

结果

第一项分析纳入了5275例儿科肾移植病例。在接受抢先移植或短期透析(<45天)后接受肾移植的患者中,5年移植存活率最高(90.4%),而在长期透析(>2.2年)后接受移植的青少年中,移植存活率最低(51.7%)。包含移植前因素和树状亚组的Cox模型比传统的Cox回归具有显著更好的预测性能(P < 0.001)。在包含临床因素的分析中,移植存活率范围从97.3%[估计肾小球滤过率(eGFR)>30 mL/min/1.73 m²且透析<20个月的年轻患者]到34.7%(eGFR<60 mL/min/1.73 m²且透析>20个月的青少年)。同样在这种情况下,与传统的Cox模型相比,将树状分析结果与临床因素相结合提高了预测性能(P < 0.0001)。

结论

总之,我们证明了树状模型是预测特定特征患者移植失败的准确且有吸引力的工具。这可能有助于评估个体移植预后,从而有助于设计改善预后较差群体移植存活率的措施。

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