Efficacy of behavioral interventions in managing gestational weight gain (GWG): A component network meta‐analysis

心理干预 荟萃分析 医学 体重增加 干预(咨询) 组分(热力学) 物理疗法 内科学 精神科 体重 物理 热力学
作者
Sanjeeva Ranasinha,Briony Hill,Helena Teede,Joanne Enticott,Rui Wang,Cheryce L. Harrison
出处
期刊:Obesity Reviews [Wiley]
卷期号:23 (4) 被引量:10
标识
DOI:10.1111/obr.13406
摘要

Summary Objective To identify the most effective behavioral components within lifestyle interventions to optimize gestational weight gain (GWG) to inform guidelines, policy and translation into healthcare. Methods Behavioral components were identified from study level data of randomized antenatal lifestyle interventions using a behavioral taxonomy framework and analyzed using component network meta‐analysis (NMA). The NMA ranked behavioral combinations hierarchically by efficacy of optimizing GWG. Direct and estimated indirect comparisons between study arms (i.e., control and intervention) and between different component combinations were estimated to evaluate component combinations associated with greater efficacy. Results Overall, 32 studies with 11,066 participants were included. Each intervention contained between 3 and 7 behavioral components with 26 different behavioral combinations identified. The majority ( n = 24) of combinations were associated with optimizing GWG, with standard mean differences (SMD) ranging from −1.01 kg (95% CI −1.64 to −0.37) and −0.07 kg (−0.38 to 0.24), compared with controls. The behavioral cluster identified as most effective, included components of goals, feedback and monitoring, natural consequences, comparison of outcomes, and shaping knowledge (SMD −1.01 kg [95% CI −1.64 to −0.37]). Conclusion Findings support the application of goal setting, feedback and monitoring, natural consequences, comparison of outcomes, and shaping knowledge as essential, core components within lifestyle interventions to optimize gestational weight gain.

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