UMIB - Unit for Multidisciplinary Research in Biomedicine, ICBAS - School of Medicine and Biomedical Sciences, University of Porto, Rua Jorge Viterbo Ferreira 228, 4050-313, Porto, Portugal.
ITR - Laboratory of Integrative and Translocation Research in Population Health, Rua das Taipas 135, 4050-600, Porto, Portugal.
Rev Endocr Metab Disord. 2023 Oct;24(5):961-977. doi: 10.1007/s11154-023-09801-9. Epub 2023 May 2.
Obesity is a complex, multifactorial and chronic disease. Bariatric surgery is a safe and effective treatment intervention for obesity and obesity-related diseases. However, weight loss after surgery can be highly heterogeneous and is not entirely predictable, particularly in the long-term after intervention. In this review, we present and discuss the available data on patient-related and procedure-related factors that were previously appointed as putative predictors of bariatric surgery outcomes. In addition, we present a critical appraisal of the available evidence on which factors could be taken into account when recommending and deciding which bariatric procedure to perform. Several patient-related features were identified as having a potential impact on weight loss after bariatric surgery, including age, gender, anthropometrics, obesity co-morbidities, eating behavior, genetic background, circulating biomarkers (microRNAs, metabolites and hormones), psychological and socioeconomic factors. However, none of these factors are sufficiently robust to be used as predictive factors. Overall, there is no doubt that before we long for precision medicine, there is the unmet need for a better understanding of the socio-biological drivers of weight gain, weight loss failure and weight-regain after bariatric interventions. Machine learning models targeting preoperative factors and effectiveness measurements of specific bariatric surgery interventions, would enable a more precise identification of the causal links between determinants of weight gain and weight loss. Artificial intelligence algorithms to be used in clinical practice to predict the response to bariatric surgery interventions could then be created, which would ultimately allow to move forward into precision medicine in bariatric surgery prescription.
肥胖是一种复杂的、多因素的、慢性疾病。减重手术是肥胖和肥胖相关疾病的一种安全有效的治疗干预手段。然而,手术后的体重减轻可能高度异质,并且不完全可预测,尤其是在干预后的长期。在这篇综述中,我们介绍并讨论了先前被指定为减重手术结果的假定预测因子的与患者相关和与手术程序相关的因素的现有数据。此外,我们对可用证据进行了批判性评估,这些证据可以在推荐和决定进行哪种减重手术时考虑到哪些因素。已经确定了一些与患者相关的特征,这些特征可能对减重手术后的体重减轻有潜在影响,包括年龄、性别、人体测量学、肥胖合并症、饮食行为、遗传背景、循环生物标志物(microRNAs、代谢物和激素)、心理和社会经济因素。然而,这些因素都没有强大到足以作为预测因素。总的来说,毫无疑问,在我们渴望精准医学之前,需要更好地了解肥胖干预后体重增加、体重减轻失败和体重反弹的社会生物学驱动因素。针对术前因素的机器学习模型和特定减重手术干预措施的有效性测量,可以更准确地确定体重增加和体重减轻的决定因素之间的因果关系。然后可以创建用于临床实践的人工智能算法来预测对减重手术干预的反应,这最终将使我们能够在减重手术处方中迈向精准医学。