Proteomic prediction of diverse incident diseases: a machine learning-guided biomarker discovery study using data from a prospective cohort study

被引:4
|
作者
Carrasco-Zanini J. [1 ,3 ]
Pietzner M. [1 ,2 ,3 ]
Koprulu M. [1 ]
Wheeler E. [1 ]
Kerrison N.D. [1 ]
Wareham N.J. [1 ]
Langenberg C. [1 ,2 ,3 ]
机构
[1] MRC Epidemiology Unit, University of Cambridge School of Clinical Medicine, Institute of Metabolic Science, Cambridge
[2] Computational Medicine, Berlin Institute of Health at Charité-Universitätsmedizin Berlin, Berlin
[3] Precision Healthcare University Research Institute, Queen Mary University of London, London
来源
The Lancet Digital Health | 2024年 / 6卷 / 07期
基金
英国医学研究理事会; 英国科研创新办公室; 英国惠康基金;
关键词
Disease control - Health risks - Machine learning - Proteins - Quality control;
D O I
10.1016/S2589-7500(24)00087-6
中图分类号
学科分类号
摘要
Background: Broad-capture proteomic technologies have the potential to improve disease prediction, enabling targeted prevention and management, but studies have so far been limited to very few selected diseases and have not evaluated predictive performance across multiple conditions. We aimed to evaluate the potential of serum proteins to improve risk prediction over and above health-derived information and polygenic risk scores across a diverse set of 24 outcomes. Methods: We designed multiple case-cohorts nested in the EPIC-Norfolk prospective study, from participants with available serum samples and genome-wide genotype data, with more than 32 974 person-years of follow-up. Participants were middle-aged individuals (aged 40–79 years at baseline) of European ancestry who were recruited from the general population of Norfolk, England, between March, 1993 and December, 1997. We selected participants who developed one of ten less common diseases within 10 years of follow-up; we also subsampled a randomly drawn control subcohort, which also served to investigate 14 more common outcomes (n>70), including all-cause premature mortality (death before the age of 75 years; case numbers 71–437; controls 608–1556). Individuals were excluded from the current study owing to failed genotyping or proteomic quality control, relatedness, or missing information on age, sex, BMI, or smoking status. We used a machine learning framework to derive sparse predictive protein models for the onset of the the 23 individual diseases and all-cause premature mortality, and to derive a single common sparse multimorbidity signature that was predictive across multiple diseases from 2923 serum proteins. Findings: Participants who developed one of ten less common diseases within 10 years of follow-up included 482 women and 507 men, with a mean age at baseline of 64·56 years (8·08). The random subcohort included 990 women and 769 men, with a mean age of 58·79 years (9·31). As few as five proteins alone outperformed polygenic risk scores for 17 of 23 outcomes (median dfference in concordance index [C-index] 0·13 [0·10–0·17]) and improved predictive performance when added over basic patient-derived information models for seven outcomes, achieving a median C-index of 0·82 (IQR 0·77–0·82). This included diseases with poor prognosis such as lung cancer (C-index 0·85 [+/− cross-validation error 0·83–0·87]), for which we identified unreported biomarkers such as C-X-C motif chemokine ligand 17. A sparse multimorbidity signature of ten proteins improved prediction across seven outcomes over patient-derived information models, achieving performances (median C-index 0·81 [IQR 0·80–0·82]) similar to those of disease-specific signatures. Interpretation: We show the value of broad-capture proteomic biomarker discovery studies across multiple diseases of diverse causes, pointing to those that might benefit the most from proteomic approaches, and the potential to derive common sparse biomarker panels for prediction of multiple diseases at once. This framework could enable follow-up studies to explore the generalisability of proteomic models and to benchmark these against clinical assays, which are required to understand the translational potential of these findings. Funding: Medical Research Council, Health Data Research UK, UK Research and Innovation–National Institute for Health and Care Research, Cancer Research UK, and Wellcome Trust. © 2024 The Author(s). Published by Elsevier Ltd. This is an Open Access article under the CC BY 4.0 license
引用
收藏
页码:e470 / e479
页数:9
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