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Metabolic health during a randomized controlled lifestyle intervention in women with PCOS.

European journal of endocrinology, 2021

Dietz de Loos A, Jiskoot G, Beerthuizen A, Busschbach J, Laven J.

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Abstract

CONTEXT: Women with polycystic ovary syndrome (PCOS) have an increased risk of metabolic syndrome (MetS). Both PCOS and MetS are associated with excess weight. OBJECTIVE: To examine the effect of a three-component lifestyle intervention (LSI) with or without short message service (SMS+ or SMS-, respectively) on the prevalence and severity of MetS and metabolic parameters, compared to care as usual (CAU). DESIGN: Randomized controlled trial. METHODS: Women diagnosed with PCOS and a BMI >25 kg/m2 (n = 183) were either assigned to a 1-year three-component (cognitive behavioural therapy, diet, and exercise) LSI, with or without SMS support, or to CAU which provided weight-loss advice only. Main outcome measures included changes in the prevalence of MetS, the continuous MetS severity z-score (cMetS z-score), metabolic parameters, and the impact of weight loss. RESULTS: After 1 year, the decrease in the cMetS z-score was greater in the SMS+ group than the CAU group (-0.39, P = 0.015). The prevalence of MetS changed with -21.6% (P = 0.037), -16.5% (P = 0.190), and +7.0% (P = 0.509) in both LSI groups and CAU group, respectively. A post hoc analysis for both LSI groups combined vs CAU resulted in a MetS difference of -25.9% (P = 0.046). Moreover, weight loss per se resulted in significantly favourable effects on all metabolic parameters. CONCLUSIONS: This three-component LSI was more successful in improving metabolic health compared to CAU. Therefore, we recommend this intervention to women with PCOS and excess weight, provided that a clinically relevant weight loss is being pursued.

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