Exploring diet categorizations and their influence on flare prediction in inflammatory bowel disease, using the Sparse Grouped Least Absolute Shrinkage and Selection Operator method

IF 7.4 2区 医学 Q1 NUTRITION & DIETETICS Clinical nutrition Pub Date : 2025-02-24 DOI:10.1016/j.clnu.2025.02.027
Corien L. Stevens , Greetje M.C. Adriaans , Corinne E.G.M. Spooren , Vera Peters , Marie J. Pierik , Rinse K. Weersma , Hendrik M. van Dullemen , Eleonora A.M. Festen , Marijn C. Visschedijk , Evelien M.B. Hendrix , Corine W.M. Perenboom , Edith J.M. Feskens , Gerard Dijkstra , Rui J. Almeida , Daisy M.A.E. Jonkers , Marjo J.E. Campmans-Kuijpers
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Abstract

Background & aims

Diet is an important environmental factor in inflammatory bowel disease (IBD) onset and disease course, but analyses are hindered by its complexity. We aim to explore the Sparse Grouped Least Absolute Shrinkage and Selection Operator (Sparse Grouped LASSO or SGL) method to study whether different food categorizations, representing different dietary patterns, can predict flares in IBD.

Methods

Baseline data on habitual dietary intake and longitudinal data on disease course were collected over a 24 month-period in two distinct cohorts. Food items were classified into 22 food groups. These were further classified into three diet categorizations: 1. Plant vs animal vs mixed; 2. Potentially healthy vs potentially unhealthy vs neutral; 3. Ultra-processed vs not ultra-processed. The SGL parameter ‘lambda’ identifies important groups using a-priori group information, while allowing for only a subset of variables within a group to be important predictors.

Results

Of 724 eligible patients, 427 were in remission at baseline and were included in the SGL analyses. 106 (24.8 %) included patients developed a flare within 11.2 ± 6.6 months (65.1 % female, 34 % ulcerative colitis, mean age 43.3 ± 14.7 years). They had a higher crude food intake of red meat (p = 0.028) and vegetables (p = 0.027) than those who stayed in remission. Prediction models for flare development were moderate with AUC varying between 0.425 and 0.542 for model 1, 0.512 and 0.562 for model 2 and 0.451 and 0.612 for model 3. All models showed red meat, legumes and vegetables as the first selected predicting variables. However, female sex and energy intake had the highest predictive values in all 3 models.

Conclusion

Categorization of the same food groups in different ways influences the predictive value of the SGL method. The current exploration of the SGL method shows that food might not be the most important predictor of flares in IBD.
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使用稀疏分组最小绝对收缩和选择算子方法探索饮食分类及其对炎症性肠病发作预测的影响
背景,目的饮食是炎症性肠病(IBD)发病和病程的重要环境因素,但其复杂性阻碍了分析。我们的目的是探索稀疏分组最小绝对收缩和选择算子(稀疏分组LASSO或SGL)方法,以研究代表不同饮食模式的不同食物分类是否可以预测IBD的发作。方法:在24个月的时间里,在两个不同的队列中收集习惯性饮食摄入的基线数据和疾病病程的纵向数据。食品被分为22类。这些饮食被进一步分为三种类型:1;植物vs动物vs混合;2. 潜在健康vs潜在不健康vs中性;3. 超加工vs非超加工。SGL参数‘ lambda ’使用先验组信息标识重要的组,同时只允许组内的变量子集成为重要的预测因子。结果在724例符合条件的患者中,427例在基线时缓解,并纳入了SGL分析。106例(24.8%)患者在11.2±6.6个月内出现急性发作(65.1%为女性,34%为溃疡性结肠炎,平均年龄43.3±14.7岁)。他们的红肉(p = 0.028)和蔬菜(p = 0.027)的粗食物摄入量比那些处于缓解期的人要高。耀斑发展的预测模型为中等,模型1的AUC在0.425 ~ 0.542之间,模型2的AUC在0.512 ~ 0.562之间,模型3的AUC在0.451 ~ 0.612之间。所有的模型都将红肉、豆类和蔬菜作为首选的预测变量。然而,在所有3个模型中,女性性别和能量摄入的预测值最高。结论以不同方式对同一食物组进行分类会影响SGL方法的预测价值。目前对SGL方法的探索表明,食物可能不是IBD发作最重要的预测因素。
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来源期刊
Clinical nutrition
Clinical nutrition 医学-营养学
CiteScore
14.10
自引率
6.30%
发文量
356
审稿时长
28 days
期刊介绍: Clinical Nutrition, the official journal of ESPEN, The European Society for Clinical Nutrition and Metabolism, is an international journal providing essential scientific information on nutritional and metabolic care and the relationship between nutrition and disease both in the setting of basic science and clinical practice. Published bi-monthly, each issue combines original articles and reviews providing an invaluable reference for any specialist concerned with these fields.
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