Predictive value of circulating NMR metabolic biomarkers for type 2 diabetes risk in the UK Biobank study

被引:52
作者
Bragg, Fiona [1 ,2 ,3 ]
Trichia, Eirini [2 ,3 ]
Aguilar-Ramirez, Diego [2 ,3 ]
Besevic, Jelena [2 ,3 ]
Lewington, Sarah [1 ,2 ,3 ,4 ]
Emberson, Jonathan [1 ,2 ,3 ]
机构
[1] Univ Word, Nuffield Dept Populat Hlth, MRC Populat Hlth Res Unit, Old Rd Campus, Oxford OX3 7LF, England
[2] Univ Oxford, Clin Trial Serv Unit, Nuffield Dept Populat Hlth, Old Rd Campus, Oxford OX3 7LF, England
[3] Univ Oxford, Epidemiol Studies Unit, Nuffield Dept Populat Hlth, Old Rd Campus, Oxford OX3 7LF, England
[4] Univ Kebangsaan Malaysia, UKM Med Mol Biol Inst UMBI, Kuala Lumpur, Malaysia
基金
英国医学研究理事会;
关键词
Biomarkers; Diabetes; Metabolomics; Risk prediction; MAGNETIC-RESONANCE METABOLOMICS; IMPAIRED GLUCOSE-TOLERANCE; INSULIN-RESISTANCE; MARKERS; EPIDEMIOLOGY; PREVENTION; PROFILES; PEOPLE; COHORT;
D O I
10.1186/s12916-022-02354-9
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Background Effective targeted prevention of type 2 diabetes (T2D) depends on accurate prediction of disease risk. We assessed the role of metabolomic profiling in improving T2D risk prediction beyond conventional risk factors. Methods Nuclear magnetic resonance (NMR) metabolomic profiling was undertaken on baseline plasma samples in 65,684 UK Biobank participants without diabetes and not taking lipid-lowering medication. Among a subset of 50,519 participants with data available on all relevant co-variates (sociodemographic characteristics, parental history of diabetes, lifestyle-including dietary-factors, anthropometric measures and fasting time), Cox regression yielded adjusted hazard ratios for the associations of 143 individual metabolic biomarkers (including lipids, lipoproteins, fatty acids, amino acids, ketone bodies and other low molecular weight metabolic biomarkers) and 11 metabolic biomarker principal components (PCs) (accounting for 90% of the total variance in individual biomarkers) with incident T2D. These 11 PCs were added to established models for T2D risk prediction among the full study population, and measures of risk discrimination (c-statistic) and reclassification (continuous net reclassification improvement [NRI], integrated discrimination index [IDI]) were assessed. Results During median 11.9 (IQR 11.1-12.6) years' follow-up, after accounting for multiple testing, 90 metabolic biomarkers showed independent associations with T2D risk among 50,519 participants (1211 incident T2D cases) and 76 showed associations after additional adjustment for HbA1c (false discovery rate controlled p < 0.01). Overall, 8 metabolic biomarker PCs were independently associated with T2D. Among the full study population of 65,684 participants, of whom 1719 developed T2D, addition of PCs to an established risk prediction model, including age, sex, parental history of diabetes, body mass index and HbA1c, improved T2D risk prediction as assessed by the c-statistic (increased from 0.802 [95% CI 0.791-0.812] to 0.830 [0.822-0.841]), continuous NRI (0.44 [0.38-0.49]) and relative (15.0% [10.5-20.4%]) and absolute (1.5 [1.0-1.9]) IDI. More modest improvements were observed when metabolic biomarker PCs were added to a more comprehensive established T2D risk prediction model additionally including waist circumference, blood pressure and plasma lipid concentrations (c-statistic, 0.829 [0.819-0.838] to 0.837 [0.831-0.848]; continuous NRI, 0.22 [0.17-0.28]; relative IDI, 6.3% [4.1-9.8%]; absolute IDI, 0.7 [0.4-1.1]). Conclusions When added to conventional risk factors, circulating NMR-based metabolic biomarkers modestly enhanced T2D risk prediction.
引用
收藏
页数:12
相关论文
共 50 条
  • [31] Association between temperatures and type 2 diabetes: A prospective study in UK Biobank
    Wang, ShengYuan
    Lei, YaTing
    Wang, XiaoLi
    Ma, Kun
    Wang, Cheng
    Sun, ChangHao
    Han, TianShu
    DIABETES RESEARCH AND CLINICAL PRACTICE, 2024, 215
  • [32] Predictive value of serum testosterone for type 2 diabetes risk assessment in men
    Evan Atlantis
    Paul Fahey
    Sean Martin
    Peter O’Loughlin
    Anne W. Taylor
    Robert J. Adams
    Zumin Shi
    Gary Wittert
    BMC Endocrine Disorders, 16
  • [33] Physical Activity Indicators, Metabolic Biomarkers, and Comorbidity in Type 2 Diabetes
    Akinci, Buket
    Yeldan, Ipek
    Celik, Selda
    Satman, Ilhan
    RESEARCH QUARTERLY FOR EXERCISE AND SPORT, 2019, 90 (04) : 690 - 698
  • [34] Metabolite ratios as potential biomarkers for type 2 diabetes: a DIRECT study
    Molnos, Sophie
    Wahl, Simone
    Haid, Mark
    Eekhoff, E. Marelise W.
    Pool, Rene
    Floegel, Anna
    Deelen, Joris
    Much, Daniela
    Prehn, Cornelia
    Breier, Michaela
    Draisma, Harmen H.
    van Leeuwen, Nienke
    Simonis-Bik, Annemarie M. C.
    Jonsson, Anna
    Willemsen, Gonneke
    Bernigau, Wolfgang
    Wang-Sattler, Rui
    Suhre, Karsten
    Peters, Annette
    Thorand, Barbara
    Herder, Christian
    Rathmann, Wolfgang
    Roden, Michael
    Gieger, Christian
    Kramer, Mark H. H.
    van Heemst, Diana
    Pedersen, Helle K.
    Gudmundsdottir, Valborg
    Schulze, Matthias B.
    Pischon, Tobias
    de Geus, Eco J. C.
    Boeing, Heiner
    Boomsma, Dorret I.
    Ziegler, Anette G.
    Slagboom, P. Eline
    Hummel, Sandra
    Beekman, Marian
    Grallert, Harald
    Brunak, Soren
    McCarthy, Mark I.
    Gupta, Ramneek
    Pearson, Ewan R.
    Adamski, Jerzy
    't Hart, Leen M.
    DIABETOLOGIA, 2018, 61 (01) : 117 - 129
  • [35] Smoking timing, genetic susceptibility and the risk of incident type 2 diabetes: A cohort study from the UK Biobank
    Hu, Ying
    Li, Xiang
    Wang, Xuan
    Ma, Hao
    Zhou, Jian
    Tang, Rui
    Kou, Minghao
    Heianza, Yoriko
    Liang, Zhaoxia
    Qi, Lu
    DIABETES OBESITY & METABOLISM, 2024, 26 (07) : 2850 - 2859
  • [36] Risk of type 2 diabetes and long-term antibiotic use in childhood: Evidence from the UK Biobank
    Zhao, Houyu
    Chai, Sanbao
    Wen, Qiaorui
    Wang, Shengfeng
    Zhan, Siyan
    DIABETES RESEARCH AND CLINICAL PRACTICE, 2024, 209
  • [37] Circulating metabolomic markers linking diabetic kidney disease and incident cardiovascular disease in type 2 diabetes: analyses from the Hong Kong Diabetes Biobank
    Jin, Qiao
    Lau, Eric S. H.
    Luk, Andrea O.
    Tam, Claudia H. T.
    Ozaki, Risa
    Lim, Cadmon K. P.
    Wu, Hongjiang
    Chow, Elaine Y. K.
    Kong, Alice P. S.
    Lee, Heung Man
    Fan, Baoqi
    Ng, Alex C. W.
    Jiang, Guozhi
    Lee, Ka Fai
    Siu, Shing Chung
    Hui, Grace
    Tsang, Chiu Chi
    Lau, Kam Piu
    Leung, Jenny Y.
    Tsang, Man-wo
    Cheung, Elaine Y. N.
    Kam, Grace
    Lau, Ip Tim
    Li, June K.
    Yeung, Vincent T. F.
    Lau, Emmy
    Lo, Stanley
    Fung, Samuel
    Cheng, Yuk Lun
    Chow, Chun Chung
    Yu, Weichuan
    Tsui, Stephen K. W.
    Tomlinson, Brian
    Huang, Yu
    Lan, Hui-yao
    Szeto, Cheuk Chun
    So, Wing Yee
    Jenkins, Alicia J.
    Fung, Erik
    Muilwijk, Mirthe
    Blom, Marieke T.
    't Hart, Leen M.
    Chan, Juliana C. N.
    Ma, Ronald C. W.
    DIABETOLOGIA, 2024, 67 (05) : 837 - 849
  • [38] The potential use of DNA methylation biomarkers to identify risk and progression of type 2 diabetes
    Gillberg, Linn
    Ling, Charlotte
    FRONTIERS IN ENDOCRINOLOGY, 2015, 6
  • [39] Circulating Undercarboxylated Osteocalcin as Estimator of Cardiovascular and Type 2 Diabetes Risk in Metabolic Syndrome Patients
    Riquelme-Gallego, Blanca
    Garcia-Molina, Laura
    Cano-Ibanez, Naomi
    Sanchez-Delgado, Guillermo
    Andujar-Vera, Francisco
    Garcia-Fontana, Cristina
    Gonzalez-Salvatierra, Sheila
    Garcia-Recio, Enrique
    Martinez-Ruiz, Virginia
    Bueno-Cavanillas, Aurora
    Munoz-Torres, Manuel
    Garcia-Fontana, Beatriz
    SCIENTIFIC REPORTS, 2020, 10 (01)
  • [40] Circulating miRNAs as intercellular messengers, potential biomarkers and therapeutic targets for Type 2 diabetes
    Mirra, Paola
    Raciti, Gregory Alexander
    Nigro, Cecilia
    Fiory, Francesca
    D'Esposito, Vittoria
    Formisano, Pietro
    Beguinot, Francesco
    Miele, Claudia
    EPIGENOMICS, 2015, 7 (04) : 653 - 667