Cole B F, Gelber R D, Anderson K M
Department of Biostatistics, Harvard School of Public Health, Boston, Massachusetts 02115.
Biometrics. 1994 Sep;50(3):621-31.
We present a parametric methodology for performing quality-of-life-adjusted survival analysis using multivariate censored survival data. It represents a generalization of the nonparametric Q-TWiST method (Quality-adjusted Time without Symptoms and Toxicity). The event times correspond to transitions between states of health that differ in terms of quality of life. Each transition is governed by a competing risks model where the health states are the competing risks. Overall survival is the sum of the amount of time spent in each health state. The first step of the proposed methodology consists of defining a quality function that assigns a "score" to a life having given health state transitions. It is a composite measure of both quantity and quality of life. In general, the quality function assigns a small value to a short life with poor quality and a high value to a long life with good quality. In the second step, parametric survival models are fit to the data. This is done by repeatedly modeling the conditional cause-specific hazard functions given the previous transitions. Covariates are incorporated by accelerated failure time regression, and the model parameters are estimated by maximum likelihood. Lastly, the modeling results are used to estimate the expectation of quality functions. Standard errors and confidence intervals are computed using the bootstrap and delta methods. The results are useful for simultaneously evaluating treatments in terms of quantity and quality of life. To demonstrate the proposed methods, we perform an analysis of data from the International Breast Cancer Study Group Trial V, which compared short-duration chemotherapy versus long-duration chemotherapy in the treatment of node-positive breast cancer. The events studied are: (1) the end of treatment toxicity, (2) disease recurrence, and (3) overall survival.
我们提出了一种参数化方法,用于使用多变量删失生存数据进行生活质量调整的生存分析。它是对非参数Q-TWiST方法(无症状和毒性的质量调整时间)的推广。事件时间对应于生活质量不同的健康状态之间的转变。每次转变都由一个竞争风险模型控制,其中健康状态就是竞争风险。总生存时间是在每个健康状态所花费时间的总和。所提出方法的第一步包括定义一个质量函数,该函数为具有给定健康状态转变的生命赋予一个“分数”。它是生活数量和质量的综合度量。一般来说,质量函数会给质量差的短寿命赋予一个小值,给质量好的长寿命赋予一个高值。第二步,将参数化生存模型拟合到数据上。这是通过在给定先前转变的情况下反复对条件特定病因风险函数进行建模来完成的。协变量通过加速失效时间回归纳入,模型参数通过最大似然估计。最后,使用建模结果来估计质量函数的期望值。标准误差和置信区间使用自助法和德尔塔法计算。这些结果对于同时从生活数量和质量方面评估治疗方法很有用。为了演示所提出的方法,我们对国际乳腺癌研究组试验V的数据进行了分析,该试验比较了短期化疗与长期化疗在治疗淋巴结阳性乳腺癌中的效果。所研究的事件包括:(1)治疗毒性结束,(2)疾病复发,以及(3)总生存。