Improving Patient Care Using the Johnson-Neyman Analysis of Heterogeneity of Treatment Effects According to Individuals' Baseline Characteristics.

Ann A Lazar, Stuart A Gansky, Donald D Halstead, Anthony Slajs, Jane A Weintraub
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Abstract

Objective: Because each patient's baseline (pre-treatment) characteristics differ (e.g., age, sex, socioeconomic status, ethnicity/race, biomarkers), treatments do not work the same for every patient-some can even cause detrimental effects. To improve patient care, it is critical to identify such heterogeneity of treatment effects. But the standard analytic approach dichotomizes baseline characteristics (low vs. high) which often leads to a loss of critical patient-care information and power to detect heterogeneity, as the results may depend strongly on the cut-points chosen. A more powerful analytic approach is to analyze baseline characteristics (i.e., covariates) measured on a continuous scale that retains all of the information available for the covariate.

Methods: In this article, we show how the Johnson-Neyman (J-N) method can be used to identify the prognostic and predictive value of baseline covariates measured on a continuous scale - findings that often cannot be determined using the traditional dichotomized approach. As an example, we used the J-N method to explore treatment effects for varying levels of the biomarker salivary mutans streptococci (MS) in a randomized clinical prevention trial comparing fluoride varnish with no fluoride varnish for 376 initially caries-free high-risk children, all of whom received oral health counseling.

Results: The J-N analysis showed that children with higher baseline MS values who were randomized to receive fluoride varnish had the poorest dental caries prognosis and may have benefitted most from the preventive agent.

Conclusion: Such methods are likely to be an important tool in the field of personalized oral health care.

Abstract Image

Abstract Image

基于个体基线特征的治疗效果异质性的Johnson-Neyman分析改善患者护理。
目的:由于每个患者的基线(治疗前)特征不同(例如,年龄、性别、社会经济地位、种族/种族、生物标志物),治疗对每个患者的效果并不相同,有些甚至会造成有害影响。为了改善患者护理,识别这种治疗效果的异质性是至关重要的。但是,标准的分析方法将基线特征(低与高)进行了二分类,这通常会导致关键的患者护理信息和检测异质性的能力的丧失,因为结果可能强烈依赖于所选择的切割点。一种更强大的分析方法是分析在连续尺度上测量的基线特征(即协变量),该尺度保留了协变量的所有可用信息。方法:在本文中,我们展示了如何使用Johnson-Neyman (J-N)方法来识别连续尺度上测量的基线协变量的预后和预测价值-这些发现通常无法使用传统的二分类方法确定。作为一个例子,我们使用J-N方法在一项随机临床预防试验中探讨了对不同水平的生物标志物唾液变形链球菌(MS)的治疗效果,该试验比较了376名最初没有龋齿的高危儿童使用氟化清漆和不使用氟化清漆,所有这些儿童都接受了口腔健康咨询。结果:J-N分析显示,随机接受氟化物清漆的基线MS值较高的儿童龋齿预后最差,可能从预防剂中获益最多。结论:该方法有望成为个性化口腔保健领域的重要工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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