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Enhanced secondary analysis of survival data: reconstructing the data from published Kaplan-Meier survival curves

机译:增强的生存数据二次分析:从已发布的Kaplan-Meier生存曲线重建数据

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Background The results of Randomized Controlled Trials (RCTs) on time-to-event outcomes that are usually reported are median time to events and Cox Hazard Ratio. These do not constitute the sufficient statistics required for meta-analysis or cost-effectiveness analysis, and their use in secondary analyses requires strong assumptions that may not have been adequately tested. In order to enhance the quality of secondary data analyses, we propose a method which derives from the published Kaplan Meier survival curves a close approximation to the original individual patient time-to-event data from which they were generated. Methods We develop an algorithm that maps from digitised curves back to KM data by finding numerical solutions to the inverted KM equations, using where available information on number of events and numbers at risk. The reproducibility and accuracy of survival probabilities, median survival times and hazard ratios based on reconstructed KM data was assessed by comparing published statistics (survival probabilities, medians and hazard ratios) with statistics based on repeated reconstructions by multiple observers. Results The validation exercise established there was no material systematic error and that there was a high degree of reproducibility for all statistics. Accuracy was excellent for survival probabilities and medians, for hazard ratios reasonable accuracy can only be obtained if at least numbers at risk or total number of events are reported. Conclusion The algorithm is a reliable tool for meta-analysis and cost-effectiveness analyses of RCTs reporting time-to-event data. It is recommended that all RCTs should report information on numbers at risk and total number of events alongside KM curves.
机译:背景技术关于事件发生时间的随机对照试验(RCT)结果通常被报告为事件发生中位数和Cox危险比。这些并不能构成荟萃分析或成本效益分析所需的足够统计数据,并且它们在二级分析中的使用需要强有力的假设,而这些假设可能尚未经过充分测试。为了提高辅助数据分析的质量,我们提出了一种方法,该方法从已发布的Kaplan Meier生存曲线中得出与原始个体患者事件发生时间数据相近的近似值。方法我们开发了一种算法,该算法可以通过使用反向事件KM方程的数值解来找到从数字化曲线到KM数据的映射,并使用事件数量和风险数量的可用信息。通过将已发布的统计数据(生存概率,中位数和危险比)与多个观察者基于重复重建的统计数据进行比较,评估了基于重建的KM数据的生存概率,中位生存时间和危险比的重现性和准确性。结果验证工作表明,没有实质性的系统错误,并且所有统计数据均具有高度可重复性。对于生存概率和中位数而言,准确性非常好,对于危险比,只有在至少报告了风险数目或事件总数的情况下,才能获得合理的准确性。结论该算法是对报告事件时间数据的RCT进行荟萃分析和成本效益分析的可靠工具。建议所有RCT都应报告风险编号和事件总数以及KM曲线的信息。

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