性危险行为的差异效应:有限混合回归的应用。

Stephanie T Lanza, Kari C Kugler, Charu Mathur
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引用次数: 16

摘要

了解导致个体发生性危险行为的多重因素对于制定有效的干预方案至关重要。基于回归的方法通常用于估计风险因素的平均影响,但这种结果可能难以转化为个人层面的预防影响。虽然在一定程度上可以通过包括相互作用项来检查差异效应,但随着风险因素和调节因子被添加到模型中,解释可能变得困难。目前的研究提出了有限混合回归作为一种替代方法,其中根据多种危险因素与性危险行为之间的关联模式确定人口亚群。来自全国青少年健康纵向研究参与者的数据被用来探索五种青少年风险因素(过早的性行为、大量的间歇性饮酒、学校联系、性行为的积极后果和性行为的消极后果)对成年期性伴侣总数的影响。在泊松回归参数估计的基础上,确定了四个潜在类别。性别、种族和年级作为潜在班级成员的预测因子。结果表明,专注于调节这些特定风险因素的预防方案可能对那些以后从事危险性行为的风险较低的青少年最有效;然而,对于那些拥有最多性伴侣的青少年群体来说,证据不那么确凿,值得进一步研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Differential Effects for Sexual Risk Behavior: An Application of Finite Mixture Regression.

Differential Effects for Sexual Risk Behavior: An Application of Finite Mixture Regression.

Understanding the multiple factors that place individuals at risk for sexual risk behavior is critical for developing effective intervention programs. Regression-based methods are commonly used to estimate the average effects of risk factors, however such results can be difficult to translate to prevention implications at the individual level. Although differential effects can be examined to some extent by including interaction terms, as risk factors and moderators are added to the model interpretation can become difficult. The current study presents finite mixture regression as an alternative approach, where population subgroups are identified based on the pattern of associations between multiple risk factors and sexual risk behavior. Data from participants in the National Longitudinal Study on Adolescent Health were used to explore the effects of five adolescent risk factors (early sexual debut, heavy episodic drinking, school connectedness, positive consequences of having sex, and negative consequences of having sex) on the total number of sexual partners in adulthood. Four latent classes were identified on the basis of the Poisson regression parameter estimates. Gender, race, and grade were included as predictors of latent class membership. Results suggest that prevention programs focused on mediating these particular risk factors may be most effective for adolescents who are at lower risk for later engaging in risky sexual behaviour; however, for the subgroup of adolescents who go on to have the most sexual partners, the evidence is less conclusive and warrants further study.

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