Yao Xingchen, Li Chenglong, Wang Jinwei, Lu Lanlan, Yang Chao, Zhang Luxia
Renal Division, Department of Medicine, Peking University First Hospital, Peking University Institute of Nephrology, Beijing, China.
Research Units of Diagnosis and Treatment of Immune-Mediated Kidney Diseases, Chinese Academy of Medical Sciences, Beijing, China.
Ren Fail. 2025 Dec;47(1):2556301. doi: 10.1080/0886022X.2025.2556301. Epub 2025 Sep 9.
The Grams model, designed to predict adverse event risks in advanced chronic kidney disease (CKD) patients, was evaluated in a Chinese cohort of 1,333 patients with eGFR below 30 mL/min/1.73 m. The model demonstrated moderate to good discrimination across outcomes, performing well in predicting kidney replacement therapy (KRT) but overestimating the risks of cardiovascular disease (CVD) and mortality. Calibration for KRT was accurate, while other outcomes required recalibration to improve alignment with observed data. Although recalibration enhanced calibration, it did not improve the model's discrimination. Importantly, the study identified key predictors, such as albumin levels, that were not included in the original Grams model but significantly improved prognostic accuracy when incorporated. These findings suggest that while the Grams model has moderate applicability to the Chinese CKD population, its predictive performance can be improved by including additional critical variables. Further efforts are needed to improve the Grams model prior to application in the Chinese CKD population, such as the inclusion of novel valuable predictors.
旨在预测晚期慢性肾脏病(CKD)患者不良事件风险的Grams模型,在一个由1333例估算肾小球滤过率(eGFR)低于30 mL/min/1.73 m²的中国患者组成的队列中进行了评估。该模型在各项结局指标上显示出中等至良好的区分度,在预测肾脏替代治疗(KRT)方面表现良好,但高估了心血管疾病(CVD)和死亡风险。KRT的校准是准确的,而其他结局指标则需要重新校准以提高与观察数据的一致性。尽管重新校准增强了校准效果,但并未改善模型的区分度。重要的是,该研究确定了关键预测因素,如白蛋白水平,这些因素未包含在原始的Grams模型中,但纳入后显著提高了预后准确性。这些发现表明,虽然Grams模型对中国CKD人群有一定适用性,但通过纳入其他关键变量可提高其预测性能。在中国CKD人群中应用之前,需要进一步努力改进Grams模型,如纳入新的有价值的预测因素。