CNR-IBIM, Clinical Epidemiology and Physiopathology of Renal Diseases and Hypertension, Reggio Calabria, Italy.
Nephrol Dial Transplant. 2010 May;25(5):1402-5. doi: 10.1093/ndt/gfq046. Epub 2010 Feb 18.
Calibration is the ability of a prognostic model to correctly estimate the probability of a given event across the whole range of prognostic estimates (for example, 30% probability of death, 40% probability of myocardial infarction, etc.). The key difference between calibration and discrimination is that the latter reflects the ability of a given prognostic biomarker to distinguish a status (died/survived, event/non-event), while calibration measures how much the prognostic estimation of a predictive model matches the real outcome probability (that is, the observed proportion of the event). Re-classification is another measure of prognostic accuracy and it reflects how much a new prognostic biomarker increases the proportion of individuals correctly re-classified as having or not having a given event compared to a previous classification based on an existing prognostic biomarker or predictive model.
校准是预后模型在整个预后估计范围内正确估计给定事件概率的能力(例如,30%的死亡概率、40%的心肌梗死概率等)。校准和区分的关键区别在于,后者反映了给定预后生物标志物区分一种状态(死亡/存活、事件/非事件)的能力,而校准则衡量预测模型的预后估计与实际结果概率的匹配程度(即观察到的事件比例)。再分类是另一种预后准确性的衡量标准,它反映了与基于现有预后生物标志物或预测模型的先前分类相比,新的预后生物标志物使多少个体正确地重新分类为具有或不具有给定事件的比例增加。