论文标题
由体外受精产生的混合,多级,顺序结局的多元预测
Multivariate prediction of mixed, multilevel, sequential outcomes arising from in vitro fertilisation
论文作者
论文摘要
体外受精(IVF)包括一系列与胚胎的创造和培养有关的干预措施,然后将其转移到患者的子宫中。尽管临床上重要的终点是出生,但对治疗的每个阶段的反应都包含有关成功或失败原因的其他信息。因此,不仅可以预测周期的总体结果,而且可以预测特定于阶段的反应的能力。这可以通过为每个响应变量开发单独的模型来完成,但是最近的工作表明,使用多元方法同时建模所有结果可能是有利的。在这里,定义在两个级别(患者和胚胎)的混合结局类型对顺序响应的联合分析变得复杂。进一步的考虑是,是否以及如何在模型中的每个阶段中合并有关响应的信息以进行后续阶段。我们使用常规从大型生殖医学单元中收集的数据开发了一个案例研究,以研究IVF中多元预测的可行性和潜在效用。我们考虑两种可能的情况。首先,应在治疗开始之前预测特定于阶段的反应。在第二个中,使用先前阶段的结果作为预测因素,动态预测响应。在这两种情况下,与为每个响应变量拟合单独的回归模型相比,我们都无法观察到联合建模方法的益处。
In vitro fertilization (IVF) comprises a sequence of interventions concerned with the creation and culture of embryos which are then transferred to the patient's uterus. While the clinically important endpoint is birth, the responses to each stage of treatment contain additional information about the reasons for success or failure. As such, the ability to predict not only the overall outcome of the cycle, but also the stage-specific responses, can be useful. This could be done by developing separate models for each response variable, but recent work has suggested that it may be advantageous to use a multivariate approach to model all outcomes simultaneously. Here, joint analysis of the sequential responses is complicated by mixed outcome types defined at two levels (patient and embryo). A further consideration is whether and how to incorporate information about the response at each stage in models for subsequent stages. We develop a case study using routinely collected data from a large reproductive medicine unit in order to investigate the feasibility and potential utility of multivariate prediction in IVF. We consider two possible scenarios. In the first, stage-specific responses are to be predicted prior to treatment commencement. In the second, responses are predicted dynamically, using the outcomes of previous stages as predictors. In both scenarios, we fail to observe benefits of joint modelling approaches compared to fitting separate regression models for each response variable.