Proteomic prediction of common and rare diseases

Author:

Carrasco-Zanini Julia,Pietzner Maik,Davitte Jonathan,Surendran Praveen,Croteau-Chonka Damien C.,Robins Chloe,Torralbo Ana,Tomlinson Christopher,Fitzpatrick Natalie,Ytsma Cai,Kanno Tokuwa,Gade Stephan,Freitag Daniel,Ziebell Frederik,Denaxas Spiros,Betts Joanna C.,Wareham Nicholas J.,Hemingway Harry,Scott Robert A.,Langenberg Claudia

Abstract

AbstractBackgroundFor many diseases there are delays in diagnosis due to a lack of objective biomarkers for disease onset. Whether measuring thousands of proteins offers predictive information across a wide range of diseases is unknown.MethodsIn 41,931 individuals from the UK Biobank Pharma Proteomics Project (UKB-PPP), we integrated ∼3000 plasma proteins with clinical information to derive sparse prediction models for the 10-year incidence of 218 common and rare diseases (81 – 6038 cases). We compared prediction models based on proteins with a) basic clinical information alone, b) basic clinical information + 37 clinical biomarkers, and c) genome-wide polygenic risk scores.ResultsFor 67 pathologically diverse diseases, a model including as few as 5 to 20 proteins was superior to clinical models (median delta C-index = 0.07; range = 0.02 – 0.31) and to clinical models with biomarkers for 52 diseases. In multiple myeloma, for example, a set of 5 proteins significantly improved prediction over basic clinical information (delta C-index = 0.25 (95% confidence interval 0.20 – 0.29)). At a 5% false positive rate (FPR), proteomic prediction (5 proteins) identified individuals at high risk of multiple myeloma (detection rate (DR) = 50%), non-Hodgkin lymphoma (DR = 55%) and motor neuron disease (DR = 29%). At a 20% FPR, proteomic prediction identified individuals at high-risk for pulmonary fibrosis (DR= 80%) and dilated cardiomyopathy (DR = 75%).ConclusionsSparse plasma protein signatures offer novel, clinically useful prediction of common and rare diseases, through disease-specific proteins and protein predictors shared across multiple diseases.(Funded by Medical Research Council, NIHR, Wellcome Trust.)

Publisher

Cold Spring Harbor Laboratory

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