Kimmel Cancer Center, Thomas Jefferson University, Philadelphia, Pennsylvania, USA.
J Am Med Inform Assoc. 2013 Dec;20(e2):e260-6. doi: 10.1136/amiajnl-2013-001846. Epub 2013 Jul 14.
Many cancer interventional clinical trials are not completed because the required number of eligible patients are not enrolled.
To assess the value of using a research data mart (RDM) during the design of cancer clinical trials as a predictor of potential patient accrual, so that less trials fail to meet enrollment requirements.
The eligibility criteria for 90 interventional cancer trials were translated into i2b2 RDM queries and cohort sizes obtained for the 2 years prior to the trial initiation. These RDM cohort numbers were compared to the trial accrual requirements, generating predictions of accrual success. These predictions were then compared to the actual accrual performance to evaluate the ability of this methodology to predict the trials' likelihood of enrolling sufficient patients.
Our methodology predicted successful accrual (specificity) with 0.969 (=31/32 trials) accuracy (95% CI 0.908 to 1) and predicted failed accrual (sensitivity) with 0.397 (=23/58 trials) accuracy (95% CI 0.271 to 0.522). The positive predictive value, or precision rate, is 0.958 (=23/24) (95% CI 0.878 to 1).
A prediction of 'failed accrual' by this methodology is very reliable, whereas a prediction of accrual success is less so, as causes of accrual failure other than an insufficient eligible patient pool are not considered.
The application of this methodology to cancer clinical design would significantly improve cancer clinical research by reducing the costly efforts expended initiating trials that predictably will fail to meet accrual requirements.
许多癌症介入临床试验未能完成,因为未招募到足够数量的合格患者。
评估在癌症临床试验设计中使用研究数据集市(RDM)作为潜在患者入组预测指标的价值,以减少试验因无法满足入组要求而失败。
将 90 项介入性癌症试验的纳入标准翻译成 i2b2 RDM 查询,并获取试验启动前 2 年内的队列大小。将这些 RDM 队列数量与试验入组要求进行比较,预测入组成功率。然后将这些预测与实际入组表现进行比较,以评估该方法预测试验是否有足够患者入组的能力。
我们的方法预测成功入组(特异性)的准确率为 0.969(=31/32 项试验)(95%CI 0.908 至 1),预测入组失败(敏感性)的准确率为 0.397(=23/58 项试验)(95%CI 0.271 至 0.522)。阳性预测值(或精度率)为 0.958(=23/24)(95%CI 0.878 至 1)。
该方法预测“入组失败”非常可靠,而预测入组成功的准确性则较低,因为未考虑入组失败的其他原因,如合格患者人数不足。
将该方法应用于癌症临床设计将通过减少启动可预见无法满足入组要求的试验所花费的昂贵努力,显著改善癌症临床研究。