Machine learning-based phenogroups and prediction model in patients with functional gastrointestinal disorders to reveal distinct disease subsets associated with gas production.

IF 4.7 2区 医学 Q1 MEDICINE, GENERAL & INTERNAL
Journal of Translational Internal Medicine Pub Date : 2024-10-01 eCollection Date: 2024-09-01 DOI:10.2478/jtim-2024-0009
Lingling Zhu, Shuo Xu, Huaizhu Guo, Siqi Lu, Jiaqi Gao, Nan Hu, Chen Chen, Zuojing Liu, Xiaolin Ji, Kun Wang, Liping Duan
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引用次数: 0

Abstract

Background and objectives: Symptom-based subtyping for functional gastrointestinal disorders (FGIDs) has limited value in identifying underlying mechanisms and guiding therapeutic strategies. Small intestinal dysbiosis is implicated in the development of FGIDs. We tested if machine learning (ML) algorithms utilizing both gastrointestinal (GI) symptom characteristics and lactulose breath tests could provide distinct clusters.

Materials and methods: This was a prospective cohort study. We performed lactulose hydrogen methane breath tests and hydrogen sulfide breath tests in 508 patients with GI symptoms. An unsupervised ML algorithm was used to categorize subjects by integrating GI symptoms and breath gas characteristics. Generalized Estimating Equation (GEE) models were used to examine the longitudinal associations between cluster patterns and breath gas time profiles. An ML-based prediction model for identifying excessive gas production in FGIDs patients was developed and internal validation was performed.

Results: FGIDs were confirmed in 300 patients. K-means clustering identified 4 distinct clusters. Cluster 2, 3, and 4 showed enrichments for abdominal distention and diarrhea with a high proportion of excessive gas production, whereas Cluster 1 was characterized by moderate lower abdominal discomforts with the most psychological complaints and the lowest proportion of excessive gas production. GEE models showed that breath gas concentrations varied among different clusters over time. We further sought to develop an ML-based prediction model to determine excessive gas production. The model exhibited good predictive capabilities.

Conclusion: ML-based phenogroups and prediction model approaches could provide distinct FGIDs subsets and efficiently determine FGIDs subsets with greater gas production, thereby facilitating clinical decision-making and guiding treatment.

基于机器学习的功能性胃肠病患者表型和预测模型,揭示与产气相关的不同疾病亚群。
背景和目的:基于症状的功能性胃肠病(FGIDs)亚型分析在确定潜在机制和指导治疗策略方面价值有限。小肠菌群失调与 FGIDs 的发病有关。我们测试了利用胃肠道(GI)症状特征和乳果糖呼气试验的机器学习(ML)算法能否提供不同的群组:这是一项前瞻性队列研究。我们对 508 名有胃肠道症状的患者进行了乳糖甲烷化氢呼气试验和硫化氢呼气试验。我们采用了一种无监督 ML 算法,通过整合消化道症状和呼气特征对受试者进行分类。研究人员使用广义估计方程(GEE)模型来检验集群模式与呼气时间曲线之间的纵向关联。开发了一个基于 ML 的预测模型,用于识别 FGIDs 患者的过量气体产生,并进行了内部验证:结果:300 名患者被确诊为 FGIDs。K 均值聚类确定了 4 个不同的群组。聚类 2、3 和 4 显示出腹胀和腹泻的富集,气体产生过多的比例较高,而聚类 1 的特点是中度下腹不适,心理投诉最多,气体产生过多的比例最低。GEE 模型显示,随着时间的推移,不同群组之间的呼气浓度存在差异。我们进一步开发了一个基于 ML 的预测模型,以确定气体产生量是否过多。该模型具有良好的预测能力:结论:基于 ML 的表型组和预测模型方法可提供不同的 FGIDs 子集,并有效确定气体产生量较多的 FGIDs 子集,从而有助于临床决策和指导治疗。
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来源期刊
Journal of Translational Internal Medicine
Journal of Translational Internal Medicine MEDICINE, GENERAL & INTERNAL-
CiteScore
5.50
自引率
8.20%
发文量
41
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