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巴利阿里群岛手术替代和营养(BASUN)人群:肥胖预测因素的数据分析探索。

The BAriatic surgery SUbstitution and nutrition (BASUN) population: a data-driven exploration of predictors for obesity.

机构信息

Institute of Medicine, Sahlgrenska Academy, University of Gothenburg, Gothenburg, Sweden.

Department of Medicine, Sahlgrenska University Hospital, 413 45, Gothenburg, Sweden.

出版信息

BMC Endocr Disord. 2021 Sep 10;21(1):183. doi: 10.1186/s12902-021-00849-9.

Abstract

BACKGROUND

The development of obesity is most likely due to a combination of biological and environmental factors some of which might still be unidentified. We used a machine learning technique to examine the relative importance of more than 100 clinical variables as predictors for BMI.

METHODS

BASUN is a prospective non-randomized cohort study of 971 individuals that received medical or surgical treatment (treatment choice was based on patient's preferences and clinical criteria, not randomization) for obesity in the Västra Götaland county in Sweden between 2015 and 2017 with planned follow-up for 10 years. This study includes demographic data, BMI, blood tests, and questionnaires before obesity treatment that cover three main areas: gastrointestinal symptoms and eating habits, physical activity and quality of life, and psychological health. We used random forest, with conditional variable importance, to study the relative importance of roughly 100 predictors of BMI, covering 15 domains. We quantified the predictive value of each individual predictor, as well as each domain.

RESULTS

The participants received medical (n = 382) or surgical treatment for obesity (Roux-en-Y gastric bypass, n = 388; sleeve gastrectomy, n = 201). There were minor differences between these groups before treatment with regard to anthropometrics, laboratory measures and results from questionnaires. The 10 individual variables with the strongest predictive value, in order of decreasing strength, were country of birth, marital status, sex, calcium levels, age, levels of TSH and HbA1c, AUDIT score, BE tendencies according to QEWPR, and TG levels. The strongest domains predicting BMI were: Socioeconomic status, Demographics, Biomarkers (notably TSH), Lifestyle/habits, Biomarkers for cardiovascular disease and diabetes, and Potential anxiety and depression.

CONCLUSIONS

Lifestyle, habits, age, sex and socioeconomic status are some of the strongest predictors for BMI levels. Potential anxiety and / or depression and other characteristics captured using questionnaires have strong predictive value. These results confirm previously suggested associations and advocate prospective studies to examine the value of better characterization of patients eligible for obesity treatment, and consequently to evaluate the treatment effects in groups of patients.

TRIAL REGISTRATION

March 03, 2015; NCT03152617 .

摘要

背景

肥胖的发展很可能是由于生物和环境因素的综合作用造成的,其中一些因素可能尚未被发现。我们使用机器学习技术来检查 100 多个临床变量作为 BMI 预测因子的相对重要性。

方法

BASUN 是一项前瞻性、非随机队列研究,纳入了 2015 年至 2017 年在瑞典西约塔兰地区因肥胖接受医学或手术治疗(治疗选择基于患者的偏好和临床标准,而非随机)的 971 名个体,计划随访 10 年。本研究包括人口统计学数据、BMI、血液检查和肥胖治疗前的问卷,涵盖三个主要领域:胃肠道症状和饮食习惯、身体活动和生活质量以及心理健康。我们使用随机森林和条件变量重要性来研究 BMI 的大约 100 个预测因子的相对重要性,这些预测因子涵盖 15 个领域。我们量化了每个个体预测因子以及每个领域的预测价值。

结果

参与者接受了肥胖的医学治疗(n=382)或手术治疗(胃旁路手术,n=388;袖状胃切除术,n=201)。在治疗前,这些组之间在人体测量、实验室测量和问卷结果方面存在微小差异。预测能力从强到弱排名前 10 的个体变量依次为:出生地、婚姻状况、性别、钙水平、年龄、TSH 和 HbA1c 水平、AUDIT 评分、根据 QEWPR 评估的 BE 趋势和 TG 水平。预测 BMI 最强的领域是:社会经济地位、人口统计学、生物标志物(尤其是 TSH)、生活方式/习惯、心血管疾病和糖尿病的生物标志物、潜在的焦虑和抑郁。

结论

生活方式、习惯、年龄、性别和社会经济地位是 BMI 水平的一些最强预测因子。使用问卷获得的潜在焦虑和/或抑郁和其他特征具有很强的预测价值。这些结果证实了先前提出的关联,并提倡前瞻性研究以检查更好地描述有资格接受肥胖治疗的患者的价值,并评估不同患者群体的治疗效果。

试验注册

2015 年 3 月 3 日;NCT03152617。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/ccbd/8431862/d07aec18fe84/12902_2021_849_Fig1_HTML.jpg

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