Department of Epidemiology and Biostatistics, Arnold School of Public Health, University of South Carolina, 800 Sumter Street, Columbia, SC 29208, USA.
Stat Med. 2010 Jan 30;29(2):309-17. doi: 10.1002/sim.3781.
When research interest lies in continuous outcome variables that take on values within a known range (e.g. a visual analog scale for pain within 0 and 100 mm), the traditional statistical methods, such as least-squares regression, mixed-effects models, and even classic nonparametric methods such as the Wilcoxon's test, may prove inadequate. Frequency distributions of bounded outcomes are often unimodal, U-shaped, and J-shaped. To the best of our knowledge, in the biomedical and epidemiological literature bounded outcomes have seldom been analyzed by appropriate methods that, for one, correctly constrain inference to lie within the feasible range of values. In many respects, continuous bounded outcomes can be likened to probabilities or propensities. Yet, what has long been heeded when modeling the probability of binary outcomes with the widespread use of logistic and probit regression, so far appears to have been overlooked with continuous bounded outcomes with consequences at times disastrous. Logistic quantile regression constitutes an effective method to fill this gap.
当研究兴趣集中在连续的结果变量上,这些变量的值在已知范围内(例如疼痛的视觉模拟量表在 0 到 100 毫米之间)时,传统的统计方法,如最小二乘法回归、混合效应模型,甚至经典的非参数方法,如 Wilcoxon 检验,可能就不够了。有界结果的频率分布通常是单峰的、U 形的和 J 形的。据我们所知,在生物医学和流行病学文献中,有界结果很少被适当的方法分析,这些方法首先正确地将推断限制在可行的数值范围内。在许多方面,连续有界结果可以与概率或倾向相媲美。然而,在使用广泛的逻辑回归和概率回归来模拟二项结果的概率时,长期以来一直被重视的方法,到目前为止,在处理连续有界结果时似乎被忽视了,有时后果是灾难性的。逻辑分位数回归是填补这一空白的有效方法。