Clinical Epidemiology Program, Ottawa Hospital Research Institute, 1053 Carling Avenue, Ottawa, K1Y 4E9, Canada.
BMC Health Serv Res. 2011 Jul 21;11:171. doi: 10.1186/1472-6963-11-171.
Clinicians informally assess changes in patients' status over time to prognosticate their outcomes. The incorporation of trends in patient status into regression models could improve their ability to predict outcomes. In this study, we used a unique approach to measure trends in patient hospital death risk and determined whether the incorporation of these trend measures into a survival model improved the accuracy of its risk predictions.
We included all adult inpatient hospitalizations between 1 April 2004 and 31 March 2009 at our institution. We used the daily mortality risk scores from an existing time-dependent survival model to create five trend indicators: absolute and relative percent change in the risk score from the previous day; absolute and relative percent change in the risk score from the start of the trend; and number of days with a trend in the risk score. In the derivation set, we determined which trend indicators were associated with time to death in hospital, independent of the existing covariates. In the validation set, we compared the predictive performance of the existing model with and without the trend indicators.
Three trend indicators were independently associated with time to hospital mortality: the absolute change in the risk score from the previous day; the absolute change in the risk score from the start of the trend; and the number of consecutive days with a trend in the risk score. However, adding these trend indicators to the existing model resulted in only small improvements in model discrimination and calibration.
We produced several indicators of trend in patient risk that were significantly associated with time to hospital death independent of the model used to create them. In other survival models, our approach of incorporating risk trends could be explored to improve their performance without the collection of additional data.
临床医生会根据患者病情的变化来非正式地评估其预后。将患者病情的趋势纳入回归模型中可能会提高其预测结果的能力。在这项研究中,我们使用了一种独特的方法来衡量患者住院死亡风险的趋势,并确定将这些趋势衡量标准纳入生存模型是否可以提高其风险预测的准确性。
我们纳入了 2004 年 4 月 1 日至 2009 年 3 月 31 日期间我院所有成年住院患者。我们使用现有时间依赖性生存模型的每日死亡率风险评分来创建五个趋势指标:前一天风险评分的绝对和相对百分比变化;趋势开始时风险评分的绝对和相对百分比变化;以及风险评分趋势的天数。在推导集中,我们确定了哪些趋势指标与住院死亡时间相关,且与现有协变量无关。在验证集中,我们比较了有无趋势指标的现有模型的预测性能。
三个趋势指标与住院死亡率的时间独立相关:前一天风险评分的绝对变化;趋势开始时风险评分的绝对变化;以及风险评分趋势的连续天数。然而,将这些趋势指标添加到现有模型中仅略微提高了模型的区分度和校准度。
我们生成了几个与患者风险趋势相关的指标,这些指标与创建它们的模型无关,与住院死亡时间独立相关。在其他生存模型中,可以探索我们这种纳入风险趋势的方法,在不收集额外数据的情况下提高其性能。