Personalized predictions to identify individuals most likely to achieve 10% weight loss with a lifestyle intervention

IF 4.2 2区 医学 Q1 ENDOCRINOLOGY & METABOLISM
Obesity Pub Date : 2025-03-12 DOI:10.1002/oby.24258
Alena Kuhlemeier, David J. Van Horn, Thomas Jaki, Dawn K. Wilson, Ken Resnicow, Elizabeth Y. Jimenez, M. Lee Van Horn
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引用次数: 0

Abstract

Objective

The objective of this study is to generate an algorithm for making predictions about individual treatment responses to a lifestyle intervention for weight loss to maximize treatment effectiveness and public health impact.

Methods

Using data from Action for Health in Diabetes (Look AHEAD), a national, multisite clinical trial that ran from 2001 to 2012, and machine-learning techniques, we generated predicted individual treatment effects for each participant. We tested for heterogeneity in treatment response and computed the degree to which treatment effects could be improved by targeting individuals most likely to benefit.

Results

We found significant individual differences in effects of the Look AHEAD intervention. Based on these predictions, two-thirds of the sample was predicted to experience a treatment effect within ±2% weight loss from the average treatment effect. If the treatment was targeted to the 69% of patients expected to meet a 7% weight-loss target at 1-year follow-up, the average treatment effect increases, with 10% average observed weight loss in the intervention group.

Conclusions

The Look AHEAD intervention would achieve a 10% average weight reduction if targeted to those most likely to benefit. Future research must seek external validation of these predictions. We make this algorithm available with instructions for use to demonstrate its potential capacity to inform shared decision-making and patient-centered care.

个性化预测,以确定最有可能通过生活方式干预实现10%体重减轻的个体。
目的:本研究的目的是生成一种算法,用于预测减肥生活方式干预的个体治疗反应,以最大限度地提高治疗效果和公共卫生影响。方法:利用2001年至2012年开展的全国性多地点临床试验“展望糖尿病健康行动”(Look AHEAD)的数据和机器学习技术,我们为每位参与者生成了预测的个体治疗效果。我们测试了治疗反应的异质性,并计算了通过针对最有可能受益的个体来改善治疗效果的程度。结果:我们发现前瞻性干预的效果存在显著的个体差异。根据这些预测,预计三分之二的样本的治疗效果与平均治疗效果相差±2%。如果治疗的目标是69%的患者在1年随访时预期达到7%的减肥目标,则平均治疗效果增加,干预组平均观察到体重减轻10%。结论:如果针对那些最有可能受益的人群,“向前看”干预将实现10%的平均体重减轻。未来的研究必须寻求这些预测的外部验证。我们将该算法与使用说明一起提供,以展示其为共享决策和以患者为中心的护理提供信息的潜在能力。
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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来源期刊
Obesity
Obesity 医学-内分泌学与代谢
CiteScore
11.70
自引率
1.40%
发文量
261
审稿时长
2-4 weeks
期刊介绍: Obesity is the official journal of The Obesity Society and is the premier source of information for increasing knowledge, fostering translational research from basic to population science, and promoting better treatment for people with obesity. Obesity publishes important peer-reviewed research and cutting-edge reviews, commentaries, and public health and medical developments.
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