van Diepen Merel, Schroijen Marielle A, Dekkers Olaf M, Rotmans Joris I, Krediet Raymond T, Boeschoten Elisabeth W, Dekker Friedo W
Department of Clinical Epidemiology, Leiden University Medical Center, Leiden, the Netherlands.
Department of Clinical Epidemiology, Leiden University Medical Center, Leiden, the Netherlands; Department of Endocrinology and Metabolic Diseases, Leiden University Medical Center, Leiden, the Netherlands.
PLoS One. 2014 Mar 4;9(3):e89744. doi: 10.1371/journal.pone.0089744. eCollection 2014.
While some prediction models have been developed for diabetic populations, prediction rules for mortality in diabetic dialysis patients are still lacking. Therefore, the objective of this study was to identify predictors for 1-year mortality in diabetic dialysis patients and use these results to develop a prediction model.
Data were used from the Netherlands Cooperative Study on the Adequacy of Dialysis (NECOSAD), a multicenter, prospective cohort study in which incident patients with end stage renal disease (ESRD) were monitored until transplantation or death. For the present analysis, patients with DM at baseline were included. A prediction algorithm for 1-year all-cause mortality was developed through multivariate logistic regression. Candidate predictors were selected based on literature and clinical expertise. The final model was constructed through backward selection. The model's predictive performance, measured by calibration and discrimination, was assessed and internally validated through bootstrapping.
A total of 394 patients were available for statistical analysis; 82 (21%) patients died within one year after baseline (3 months after starting dialysis therapy). The final prediction model contained seven predictors; age, smoking, history of macrovascular complications, duration of diabetes mellitus, Karnofsky scale, serum albumin and hemoglobin level. Predictive performance was good, as shown by the c-statistic of 0.810. Internal validation showed a slightly lower, but still adequate performance. Sensitivity analyses showed stability of results.
A prediction model containing seven predictors has been identified in order to predict 1-year mortality for diabetic incident dialysis patients. Predictive performance of the model was good. Before implementing the model in clinical practice, for example for counseling patients regarding their prognosis, external validation is necessary.
虽然已经为糖尿病患者群体开发了一些预测模型,但糖尿病透析患者死亡率的预测规则仍然缺乏。因此,本研究的目的是确定糖尿病透析患者1年死亡率的预测因素,并利用这些结果开发一个预测模型。
使用来自荷兰透析充分性合作研究(NECOSAD)的数据,这是一项多中心前瞻性队列研究,对终末期肾病(ESRD)的新发病患者进行患者进行监测,直至移植或死亡。对于本分析,纳入了基线时患有糖尿病的患者。通过多变量逻辑回归开发了1年全因死亡率的预测算法。根据文献和临床专业知识选择候选预测因素。通过向后选择构建最终模型。通过校准和辨别来衡量模型的预测性能,并通过自举法进行内部验证。
共有394例患者可用于统计分析;82例(21%)患者在基线后1年内(开始透析治疗3个月后)死亡。最终的预测模型包含七个预测因素:年龄、吸烟、大血管并发症史、糖尿病病程、卡诺夫斯基量表、血清白蛋白和血红蛋白水平。预测性能良好,c统计量为0.810。内部验证显示性能略低,但仍足够。敏感性分析显示结果具有稳定性。
已确定一个包含七个预测因素的预测模型,以预测糖尿病新发病透析患者的1年死亡率。该模型的预测性能良好。在临床实践中应用该模型之前,例如为患者提供预后咨询时,有必要进行外部验证。