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预测术后 BMI 并优化减重手术的预测模型的建立:单中心初步研究。

Development of predictive model for predicting postoperative BMI and optimize bariatric surgery: a single center pilot study.

机构信息

Department of Biomedical Engineering, Faculty of Medicine, University of Basel, Allschwil, Switzerland.

Department of Surgery, GZO-Hospital, Wetzikon, Switzerland.

出版信息

Surg Obes Relat Dis. 2024 Dec;20(12):1234-1243. doi: 10.1016/j.soard.2024.06.012. Epub 2024 Jul 8.

Abstract

BACKGROUND

The pilot study addresses the challenge of predicting postoperative outcomes, particularly body mass index (BMI) trajectories, following bariatric surgery. The complexity of this task makes preoperative personalized obesity treatment challenging.

OBJECTIVES

To develop and validate sophisticated machine learning (ML) algorithms capable of accurately forecasting BMI reductions up to 5 years following bariatric surgery aiming to enhance planning and postoperative care. The secondary goal involves the creation of an accessible web-based calculator for healthcare professionals. This is the first article that compares these methods in BMI prediction.

SETTING

The study was carried out from January 2012 to December 2021 at GZOAdipositas Surgery Center, Switzerland. Preoperatively, data for 1004 patients were available. Six months postoperatively, data for 1098 patients were available. For the time points 12 months, 18 months, 2 years, 3 years, 4 years, and 5 years the following number of follow-ups were available: 971, 898, 829, 693, 589, and 453.

METHODS

We conducted a comprehensive retrospective review of adult patients who underwent bariatric surgery (Roux-en-Y gastric bypass or sleeve gastrectomy), focusing on individuals with preoperative and postoperative data. Patients with certain preoperative conditions and those lacking complete data sets were excluded. Additional exclusion criteria were patients with incomplete data or follow-up, pregnancy during the follow-up period, or preoperative BMI ≤30 kg/m.

RESULTS

This study analyzed 1104 patients, with 883 used for model training and 221 for final evaluation, the study achieved reliable predictive capabilities, as measured by root mean square error (RMSE). The RMSE values for three tasks were 2.17 (predicting next BMI value), 1.71 (predicting BMI at any future time point), and 3.49 (predicting the 5-year postoperative BMI curve). These results were showcased through a web application, enhancing clinical accessibility and decision-making.

CONCLUSION

This study highlights the potential of ML to significantly improve bariatric surgical outcomes and overall healthcare efficiency through precise BMI predictions and personalized intervention strategies.

摘要

背景

这项初步研究旨在解决预测术后结果(尤其是体重指数(BMI)轨迹)的难题,所针对的对象是接受过减重手术的患者。这一任务十分复杂,因此术前对肥胖症进行个性化治疗颇具挑战。

目的

开发并验证复杂的机器学习(ML)算法,以准确预测减重手术后长达 5 年的 BMI 降低情况,旨在增强规划并改善术后护理。次要目标是为医疗保健专业人员创建一个易于访问的在线计算器。这是第一篇比较这些方法在 BMI 预测方面的文章。

设置

该研究于 2012 年 1 月至 2021 年 12 月在瑞士的 GZOAdipositas 手术中心进行。术前,1004 名患者的数据可用。术后 6 个月,1098 名患者的数据可用。对于术后 12 个月、18 个月、2 年、3 年、4 年和 5 年的时间点,可获得以下随访次数:971、898、829、693、589 和 453。

方法

我们对接受过减重手术(Roux-en-Y 胃旁路术或袖状胃切除术)的成年患者进行了全面的回顾性研究,重点关注具有术前和术后数据的患者。排除了具有某些术前条件和数据不完整的患者。其他排除标准包括数据不完整或随访期间怀孕、随访期间 BMI≤30kg/m 的患者。

结果

本研究共分析了 1104 名患者,其中 883 名用于模型训练,221 名用于最终评估。研究取得了可靠的预测能力,这一点可以通过均方根误差(RMSE)来衡量。三项任务的 RMSE 值分别为 2.17(预测下一个 BMI 值)、1.71(预测任何未来时间点的 BMI 值)和 3.49(预测 5 年后的术后 BMI 曲线)。通过网络应用程序展示了这些结果,增强了临床可访问性和决策能力。

结论

本研究强调了机器学习通过精确的 BMI 预测和个性化干预策略,显著改善减重手术结果和整体医疗保健效率的潜力。

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