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Predicting death: an empirical evaluation of predictive tools for mortality.

机译:预测死亡:一个实证评价死亡率的预测工具。

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BACKGROUND: The ability to predict death is crucial in medicine, and many relevant prognostic tools have been developed for application in diverse settings. We aimed to evaluate the discriminating performance of predictive tools for death and the variability in this performance across different clinical conditions and studies. METHODS: We used Medline to identify studies published in 2009 that assessed the accuracy (based on the area under the receiver operating characteristic curve [AUC]) of validated tools for predicting all-cause mortality. For tools where accuracy was reported in 4 or more assessments, we calculated summary accuracy measures. Characteristics of studies of the predictive tools were evaluated to determine if they were associated with the reported accuracy of the tool. RESULTS: A total of 94 eligible studies provided data on 240 assessments of 118 predictive tools. The AUC ranged from 0.43 to 0.98 (median [interquartile range], 0.77 [0.71-0.83]), with only 23 of the assessments reporting excellent discrimination (10%) (AUC, >0.90). For 10 tools, accuracy was reported in 4 or more assessments; only 1 tool had a summary AUC exceeding 0.80. Established tools showed large heterogeneity in their performance across different cohorts (I(2) range, 68%-95%). Reported AUC was higher for tools published in journals with lower impact factor (P = .01), with larger sample size (P = .01), and for those that aimed to predict mortality among the highest-risk patients (P = .002) and among children (P < .001). CONCLUSIONS: Most tools designed to predict mortality have only modest accuracy, and there is large variability across various diseases and populations. Most proposed tools do not have documented clinical utility.
机译:背景:预测死亡的能力医学的关键,许多相关的预后工具已经开发了应用程序不同的设置。识别的性能预测工具死亡和可变性的性能在不同的临床和研究条件。方法:我们利用Medline识别研究在2009年出版的,评估的准确性(基于接收机操作下的面积验证工具的特性曲线(AUC))为预测全因死亡率。准确性被报道在4或更多评估,我们总结计算精度措施。预测工具进行评估来确定他们与报告的准确性的工具。研究118年240年评估提供数据预测工具。0.98(中位数(四分位范围),0.77[0.71 - -0.83]),只有23岁的评估报告的歧视(10%)(AUC,> 0.90)。或更多的评估;AUC超过0.80。大型异构性的表现不同的人群(我(2)范围内,68% - -95%)。发表在期刊AUC是更高的工具影响因子较低(P = . 01),与大样本大小(P = . 01),对于那些目的高危预测死亡率儿童患者(P = .002)和(P <措施)。预测死亡率只有温和的准确性,以及有大的可变性不同疾病和人口。没有记录的临床效用。

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