Centre Intégré de l'Obésité Rhône-Alpes; Fédération Hospitalo-Universitaire DO-iT, Service Endocrinologie Diabète et Nutrition, Groupement Hospitalier Sud, Hospices Civils de Lyon, 165 chemin du Grand Revoyet, 69310, Pierre-Bénite, France.
Laboratoire CarMeN, Centre de Recherche en Nutrition Humaine Rhône-Alpes (CRNH-RA); Centre Européen Nutrition et Santé (CENS); Unité INSERM U1060 - INRA 1235 - INSA-Lyon, Université Claude Bernard Lyon 1, Université de Lyon, 165 chemin du Grand Revoyet, 69310, Pierre-Bénite, France.
Eat Weight Disord. 2021 Oct;26(7):2381-2385. doi: 10.1007/s40519-020-01076-2. Epub 2021 Jan 2.
In people with obesity, food addiction (FA) tends to be associated with poorer outcomes. Its diagnosis can be challenging in primary care. Based on the SCOFF example, we aim to determine whether a quicker and simpler screening tool for FA in people with obesity could be developed, using artificial intelligence (machine learning).
The first step was to look for the most discriminating items, among 152 different ones, to differentiate between FA-positive and FA-negative populations of patients with obesity. Items were ranked using the Fast Correlation-Based Filter (FCBF). Retained items were used to test the performance of nine different predictive algorithms. Then, the construction of a graphic tool was proposed.
Data were available for 176 patients. Only three items had a FCBF score > 0.1: "I eat to forget my problems"; "I eat more when I'm alone"; and "I eat sweets or comfort foods". Naive Bayes classification obtained best predictive performance. Then, we created a 3-item nomogram to predict a positive scoring on the YFAS.
A simple and fast screening tool for detecting high-disordered eating risk is proposed. The next step will be a validation study of the FAST nomogram to ensure its relevance for emotional eating diagnosis.
Level V, cross-sectional descriptive study.
NCT02857179 at clinicaltrials.gov.
在肥胖人群中,食物成瘾(FA)往往与较差的结果相关。在初级保健中,其诊断具有挑战性。基于 SCOFF 示例,我们旨在使用人工智能(机器学习)确定是否可以开发出一种针对肥胖人群中 FA 的更快速和更简单的筛查工具。
第一步是寻找最具区分力的项目,从 152 个不同项目中区分出肥胖人群中的 FA 阳性和 FA 阴性人群。项目使用快速相关过滤(FCBF)进行排名。保留的项目用于测试九种不同预测算法的性能。然后,提出了一种图形工具的构建。
数据可用于 176 名患者。只有三个项目的 FCBF 评分>0.1:“我吃东西是为了忘记我的问题”;“我一个人吃的时候吃得多”;“我吃甜食或安慰食品”。朴素贝叶斯分类获得了最佳预测性能。然后,我们创建了一个 3 项的列线图来预测 YFAS 的阳性评分。
提出了一种简单快速的筛查工具,用于检测高失调饮食风险。下一步将是对 FAST 列线图进行验证研究,以确保其对情绪进食诊断的相关性。
V 级,横断面描述性研究。
NCT02857179 在 clinicaltrials.gov。