B Ganesh, R Swaminathan, A Mathew, R Sankaranarayanan, M Hakama
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引用次数: 0
摘要
本章介绍了在方法上调整损失的公式,并给出了在没有这种调整的情况下描述生存估计偏差程度的例子。Loss-adjusted survival是在loss - to -随访患者与已知随访时间且初次入组时不同预后因素特征相似的患者的生存相同的假设下估计的。在此基础上,将观察到的后续行动损失数重新计算为预计的死亡和幸存者数。然后将标准方法(如精算方法)应用于观察到的和预期结果事件的总和。来自孟买的336个医院系列治疗的新乳腺癌病例中,24%的患者失去了随访,结果显示,3年生存率的显著偏差为7%,估计有(54%)和没有(61%)损失调整。逐步调整损失证实,增加预后因素的数量可以更好地解释偏倚。基于人群的系列研究包括来自金奈的13371例排名靠前的癌症,随访损失范围为7-24%,显示出可忽略不计的偏差,通过损失调整方法对不同癌症的5年生存率为0-2%。数据来源似乎会影响损失调整的需要,当使用低资源或中等资源国家的基于医院的癌症登记数据来评估癌症患者的结果时,建议采用损失调整方法。
Loss-adjusted hospital and population-based survival of cancer patients.
This chapter presents formulae that methodologically adjust for losses, and gives examples describing magnitude of bias in survival estimates without such adjustment. Loss-adjusted survival is estimated under the assumption that survival of patients Lost to follow-up is the same as that for patients with known follow-up time and similar characteristics of different prognostic factors at first entry. The observed number of Losses to follow-up is then relocated into expected numbers of death and survivors on this basis. Standard methods, such as the actuarial one, are then applied with the sum of observed and expected outcome events. A total of 336 hospital series of treated new breast cancer cases from Mumbai with 24% lost to follow-up revealed a substantial bias of 7 per cent units for 3-year survival estimated with (54%) and without (61%) loss-adjustment. Stepwise adjustment of losses established that increasing the number of prognostic factors explained the bias better. Population-based series comprising 13 371 cases of top ranking cancers from Chennai, with loss to follow-up ranging from 7-24%, revealed negligible bias, ranging from 0-2% in 5-year survival by the loss-adjusted approach for different cancers. Data source seems to affect the need for loss-adjustment, and the loss-adjusted approach is recommended when hospital-based cancer registry data of a low- or medium-resource country are used to evaluate the outcome of cancer patients.