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基于可解释机器学习的预测减重手术后 5 年体重轨迹计算器的开发和验证:一项多中心回顾性队列 SOPHIA 研究。

Development and validation of an interpretable machine learning-based calculator for predicting 5-year weight trajectories after bariatric surgery: a multinational retrospective cohort SOPHIA study.

机构信息

Université de Lille, Inria, CNRS, Centrale Lille, UMR 9189 - CRIStAL, France.

Université de Lille, Inserm, CHU Lille, Institut Pasteur de Lille, U1190-EGID, Lille, France.

出版信息

Lancet Digit Health. 2023 Oct;5(10):e692-e702. doi: 10.1016/S2589-7500(23)00135-8. Epub 2023 Aug 29.

DOI:10.1016/S2589-7500(23)00135-8
PMID:37652841
Abstract

BACKGROUND

Weight loss trajectories after bariatric surgery vary widely between individuals, and predicting weight loss before the operation remains challenging. We aimed to develop a model using machine learning to provide individual preoperative prediction of 5-year weight loss trajectories after surgery.

METHODS

In this multinational retrospective observational study we enrolled adult participants (aged ≥18 years) from ten prospective cohorts (including ABOS [NCT01129297], BAREVAL [NCT02310178], the Swedish Obese Subjects study, and a large cohort from the Dutch Obesity Clinic [Nederlandse Obesitas Kliniek]) and two randomised trials (SleevePass [NCT00793143] and SM-BOSS [NCT00356213]) in Europe, the Americas, and Asia, with a 5 year follow-up after Roux-en-Y gastric bypass, sleeve gastrectomy, or gastric band. Patients with a previous history of bariatric surgery or large delays between scheduled and actual visits were excluded. The training cohort comprised patients from two centres in France (ABOS and BAREVAL). The primary outcome was BMI at 5 years. A model was developed using least absolute shrinkage and selection operator to select variables and the classification and regression trees algorithm to build interpretable regression trees. The performances of the model were assessed through the median absolute deviation (MAD) and root mean squared error (RMSE) of BMI.

FINDINGS

10 231 patients from 12 centres in ten countries were included in the analysis, corresponding to 30 602 patient-years. Among participants in all 12 cohorts, 7701 (75·3%) were female, 2530 (24·7%) were male. Among 434 baseline attributes available in the training cohort, seven variables were selected: height, weight, intervention type, age, diabetes status, diabetes duration, and smoking status. At 5 years, across external testing cohorts the overall mean MAD BMI was 2·8 kg/m (95% CI 2·6-3·0) and mean RMSE BMI was 4·7 kg/m (4·4-5·0), and the mean difference between predicted and observed BMI was -0·3 kg/m (SD 4·7). This model is incorporated in an easy to use and interpretable web-based prediction tool to help inform clinical decision before surgery.

INTERPRETATION

We developed a machine learning-based model, which is internationally validated, for predicting individual 5-year weight loss trajectories after three common bariatric interventions.

FUNDING

SOPHIA Innovative Medicines Initiative 2 Joint Undertaking, supported by the EU's Horizon 2020 research and innovation programme, the European Federation of Pharmaceutical Industries and Associations, Type 1 Diabetes Exchange, and the Juvenile Diabetes Research Foundation and Obesity Action Coalition; Métropole Européenne de Lille; Agence Nationale de la Recherche; Institut national de recherche en sciences et technologies du numérique through the Artificial Intelligence chair Apprenf; Université de Lille Nord Europe's I-SITE EXPAND as part of the Bandits For Health project; Laboratoire d'excellence European Genomic Institute for Diabetes; Soutien aux Travaux Interdisciplinaires, Multi-établissements et Exploratoires programme by Conseil Régional Hauts-de-France (volet partenarial phase 2, project PERSO-SURG).

摘要

背景

减重手术后的体重减轻轨迹在个体之间差异很大,术前预测体重减轻仍然具有挑战性。我们的目的是使用机器学习建立模型,为术后 5 年的体重减轻轨迹提供个体化的术前预测。

方法

本研究为多中心回顾性观察性研究,纳入了来自十个前瞻性队列(包括 ABOS [NCT01129297]、BAREVAL [NCT02310178]、瑞典肥胖受试者研究和荷兰肥胖诊所的大型队列 [Nederlandse Obesitas Kliniek])和两项随机试验(SleevePass [NCT00793143]和 SM-BOSS [NCT00356213])的 10 个国家/地区的 12 个中心的成年参与者(年龄≥18 岁),这些参与者在 Roux-en-Y 胃旁路术、袖状胃切除术或胃带手术后进行了 5 年随访。排除了既往有减重手术史或计划就诊和实际就诊之间有较大延迟的患者。训练队列由法国的两个中心(ABOS 和 BAREVAL)的患者组成。主要结局是术后 5 年的 BMI。使用最小绝对收缩和选择算子选择变量,使用分类回归树算法构建可解释的回归树来建立模型。通过 BMI 的中位数绝对偏差(MAD)和均方根误差(RMSE)来评估模型的性能。

结果

纳入了来自十个国家/地区的 12 个中心的 10 231 名患者,共 30 602 患者-年。在所有 12 个队列的参与者中,7701 名(75.3%)为女性,2530 名(24.7%)为男性。在训练队列中可获得的 434 个基线属性中,选择了 7 个变量:身高、体重、干预类型、年龄、糖尿病状态、糖尿病持续时间和吸烟状况。在外部测试队列中,5 年后的总体平均 MAD BMI 为 2.8 kg/m(95%CI 2.6-3.0),平均 RMSE BMI 为 4.7 kg/m(4.4-5.0),预测 BMI 与观察 BMI 之间的平均差异为-0.3 kg/m(SD 4.7)。该模型已整合到一个易于使用和解释的在线预测工具中,以帮助在手术前提供临床决策信息。

解释

我们开发了一种基于机器学习的模型,该模型经过国际验证,可预测三种常见减重干预措施后 5 年的个体体重减轻轨迹。

资助

SOPHIA 创新药物倡议 2 联合承诺,由欧盟地平线 2020 研究和创新计划、欧洲制药工业和协会联合会、1 型糖尿病交流组织、青少年糖尿病研究基金会和肥胖行动联盟、里尔欧洲大都市、法国国家研究署、国家数字科学研究所通过人工智能椅子 Apprenf、里尔北欧大学 I-SITE EXPAND 作为 Bandits For Health 项目的一部分、卓越实验室欧洲基因组学糖尿病研究所、支持跨学科、多机构和探索性工作的项目,由上法兰西大区理事会(第 2 阶段合作部分,PERSO-SURG 项目)提供。

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