The Graduate Institute for Advanced Studies, The Graduate University for Advanced Studies (SOKENDAI), Tokyo, Japan.
Data Science, Astellas Pharma Inc., Tokyo, Japan.
Biom J. 2024 Oct;66(7):e202400004. doi: 10.1002/bimj.202400004.
The modified Poisson and least-squares regression analyses for binary outcomes have been widely used as effective multivariable analysis methods to provide risk ratio and risk difference estimates in clinical and epidemiological studies. However, there is no certain evidence that assessed their operating characteristics under small and sparse data settings and no effective methods have been proposed for these regression analyses to address this issue. In this article, we show that the modified Poisson regression provides seriously biased estimates under small and sparse data settings. In addition, the modified least-squares regression provides unbiased estimates under these settings. We further show that the ordinary robust variance estimators for both of the methods have certain biases under situations that involve small or moderate sample sizes. To address these issues, we propose the Firth-type penalized methods for the modified Poisson and least-squares regressions. The adjustment methods lead to a more accurate and stable risk ratio estimator under small and sparse data settings, although the risk difference estimator is not invariant. In addition, to improve the inferences of the effect measures, we provide an improved robust variance estimator for these regression analyses. We conducted extensive simulation studies to assess the performances of the proposed methods under real-world conditions and found that the accuracies of the point and interval estimations were markedly improved by the proposed methods. We illustrate the effectiveness of these methods by applying them to a clinical study of epilepsy.
修正泊松和最小二乘回归分析常用于二元结局,是临床和流行病学研究中提供风险比和风险差估计的有效多变量分析方法。然而,目前还没有确定的证据来评估它们在小样本和稀疏数据情况下的表现特征,也没有提出有效的方法来解决这些回归分析中的问题。本文表明,在小样本和稀疏数据情况下,修正泊松回归会产生严重的有偏估计。此外,在这些情况下,修正最小二乘回归会提供无偏估计。我们进一步表明,这两种方法的普通稳健方差估计在涉及小样本或中等样本量的情况下存在一定的偏差。为了解决这些问题,我们提出了修正泊松回归和修正最小二乘回归的 Firth 型惩罚方法。在小样本和稀疏数据环境下,调整方法导致更准确和稳定的风险比估计,尽管风险差估计是不可变的。此外,为了改善效应度量的推断,我们为这些回归分析提供了改进的稳健方差估计。我们进行了广泛的模拟研究,以评估所提出方法在实际情况下的性能,并发现所提出的方法显著提高了点估计和区间估计的准确性。我们通过将这些方法应用于癫痫的临床研究来说明这些方法的有效性。