Nuclear magnetic resonance-based metabolomics with machine learning for predicting progression from prediabetes to diabetes

被引:4
作者
Li, Jiang [1 ]
Yu, Yuefeng [1 ]
Sun, Ying [1 ]
Fu, Yanqi [1 ]
Shen, Wenqi [1 ]
Cai, Lingli [1 ]
Tan, Xiao [2 ,3 ]
Cai, Yan [4 ]
Wang, Ningjian [1 ]
Lu, Yingli [1 ]
Wang, Bin [1 ]
机构
[1] Shanghai Jiao Tong Univ, Sch Med, Shanghai Peoples Hosp 9, Inst & Dept Endocrinol & Metab, Shanghai, Peoples R China
[2] Uppsala Univ, Dept Med Sci, Uppsala, Sweden
[3] Zhejiang Univ, Sch Publ Hlth, Dept Big Data Hlth Sci, Sch Med, Hangzhou, Peoples R China
[4] Kunming Med Univ, Yunnan Honghe Prefecture Cent Hosp, Ge Jiu Peoples Hosp, Dept Endocrinol,Affiliated Hosp 5, Kunming 661000, Yunnan, Peoples R China
关键词
prediabetes; diabetes; metabolomics; risk prediction; machine learning; RISK; PREVENTION; INTERVENTION; EPIDEMIOLOGY; DIAGNOSIS; MORTALITY; MARKERS;
D O I
10.7554/eLife.98709
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
Background: Identification of individuals with prediabetes who are at high risk of developing diabetes allows for precise interventions. We aimed to determine the role of nuclear magnetic resonance (NMR)-based metabolomic signature in predicting the progression from prediabetes to diabetes. Methods: This prospective study included 13,489 participants with prediabetes who had metabolomic data from the UK Biobank. Circulating metabolites were quantified via NMR spectroscopy. Cox proportional hazard (CPH) models were performed to estimate the associations between metabolites and diabetes risk. Supporting vector machine, random forest, and extreme gradient boosting were used to select the optimal metabolite panel for prediction. CPH and random survival forest (RSF) models were utilized to validate the predictive ability of the metabolites. Results: During a median follow-up of 13.6 years, 2525 participants developed diabetes. After adjusting for covariates, 94 of 168 metabolites were associated with risk of progression to diabetes. A panel of nine metabolites, selected by all three machine-learning algorithms, was found to significantly improve diabetes risk prediction beyond conventional risk factors in the CPH model (area under the receiver-operating characteristic curve, 1 year: 0.823 for risk factors + metabolites vs 0.759 for risk factors, 5 years: 0.830 vs 0.798, 10 years: 0.801 vs 0.776, all p < 0.05). Similar results were observed from the RSF model. Categorization of participants according to the predicted value thresholds revealed distinct cumulative risk of diabetes. Conclusions: Our study lends support for use of the metabolite markers to help determine individuals with prediabetes who are at high risk of progressing to diabetes and inform targeted and efficient interventions.
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页数:19
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