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Proteomic signatures improve risk prediction for common and rare diseases
by
Freitag, Daniel
, Hemingway, Harry
, Gade, Stephan
, Tomlinson, Christopher
, Robins, Chloe
, Scott, Robert A.
, Betts, Joanna C.
, Torralbo, Ana
, Wareham, Nicholas J.
, Kanno, Tokuwa
, Langenberg, Claudia
, Ytsma, Cai
, Davitte, Jonathan
, Ziebell, Frederik
, Carrasco-Zanini, Julia
, Pietzner, Maik
, Denaxas, Spiros
, Croteau-Chonka, Damien C.
, Fitzpatrick, Natalie
, Surendran, Praveen
, Grünschläger, Florian
, Haas, Simon
in
692/499
/ 692/53/2423
/ 692/700/459
/ Adult
/ Aged
/ Autoimmune diseases
/ Biobanks
/ Biomarkers
/ Biomarkers - blood
/ Biomedical and Life Sciences
/ Biomedicine
/ Blood Proteins - metabolism
/ Bone marrow
/ Cancer Research
/ Cardiomyopathy
/ Celiac disease
/ Cell culture
/ Dilated cardiomyopathy
/ Female
/ Fibrosis
/ Gene sequencing
/ Humans
/ Infectious Diseases
/ Lung diseases
/ Lymphoma
/ Male
/ Metabolic Diseases
/ Middle Aged
/ Molecular Medicine
/ Motor neuron diseases
/ Motor neurone disease
/ Multiple myeloma
/ Neurosciences
/ Non-Hodgkin's lymphoma
/ Performance prediction
/ Pharmaceuticals
/ Plasma cells
/ Plasma proteins
/ Prediction models
/ Proteins
/ Proteomics
/ Proteomics - methods
/ Pulmonary fibrosis
/ Rare diseases
/ Rare Diseases - blood
/ Rare Diseases - diagnosis
/ Rare Diseases - genetics
/ Risk Assessment
/ United Kingdom - epidemiology
2024
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Proteomic signatures improve risk prediction for common and rare diseases
by
Freitag, Daniel
, Hemingway, Harry
, Gade, Stephan
, Tomlinson, Christopher
, Robins, Chloe
, Scott, Robert A.
, Betts, Joanna C.
, Torralbo, Ana
, Wareham, Nicholas J.
, Kanno, Tokuwa
, Langenberg, Claudia
, Ytsma, Cai
, Davitte, Jonathan
, Ziebell, Frederik
, Carrasco-Zanini, Julia
, Pietzner, Maik
, Denaxas, Spiros
, Croteau-Chonka, Damien C.
, Fitzpatrick, Natalie
, Surendran, Praveen
, Grünschläger, Florian
, Haas, Simon
in
692/499
/ 692/53/2423
/ 692/700/459
/ Adult
/ Aged
/ Autoimmune diseases
/ Biobanks
/ Biomarkers
/ Biomarkers - blood
/ Biomedical and Life Sciences
/ Biomedicine
/ Blood Proteins - metabolism
/ Bone marrow
/ Cancer Research
/ Cardiomyopathy
/ Celiac disease
/ Cell culture
/ Dilated cardiomyopathy
/ Female
/ Fibrosis
/ Gene sequencing
/ Humans
/ Infectious Diseases
/ Lung diseases
/ Lymphoma
/ Male
/ Metabolic Diseases
/ Middle Aged
/ Molecular Medicine
/ Motor neuron diseases
/ Motor neurone disease
/ Multiple myeloma
/ Neurosciences
/ Non-Hodgkin's lymphoma
/ Performance prediction
/ Pharmaceuticals
/ Plasma cells
/ Plasma proteins
/ Prediction models
/ Proteins
/ Proteomics
/ Proteomics - methods
/ Pulmonary fibrosis
/ Rare diseases
/ Rare Diseases - blood
/ Rare Diseases - diagnosis
/ Rare Diseases - genetics
/ Risk Assessment
/ United Kingdom - epidemiology
2024
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
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Proteomic signatures improve risk prediction for common and rare diseases
by
Freitag, Daniel
, Hemingway, Harry
, Gade, Stephan
, Tomlinson, Christopher
, Robins, Chloe
, Scott, Robert A.
, Betts, Joanna C.
, Torralbo, Ana
, Wareham, Nicholas J.
, Kanno, Tokuwa
, Langenberg, Claudia
, Ytsma, Cai
, Davitte, Jonathan
, Ziebell, Frederik
, Carrasco-Zanini, Julia
, Pietzner, Maik
, Denaxas, Spiros
, Croteau-Chonka, Damien C.
, Fitzpatrick, Natalie
, Surendran, Praveen
, Grünschläger, Florian
, Haas, Simon
in
692/499
/ 692/53/2423
/ 692/700/459
/ Adult
/ Aged
/ Autoimmune diseases
/ Biobanks
/ Biomarkers
/ Biomarkers - blood
/ Biomedical and Life Sciences
/ Biomedicine
/ Blood Proteins - metabolism
/ Bone marrow
/ Cancer Research
/ Cardiomyopathy
/ Celiac disease
/ Cell culture
/ Dilated cardiomyopathy
/ Female
/ Fibrosis
/ Gene sequencing
/ Humans
/ Infectious Diseases
/ Lung diseases
/ Lymphoma
/ Male
/ Metabolic Diseases
/ Middle Aged
/ Molecular Medicine
/ Motor neuron diseases
/ Motor neurone disease
/ Multiple myeloma
/ Neurosciences
/ Non-Hodgkin's lymphoma
/ Performance prediction
/ Pharmaceuticals
/ Plasma cells
/ Plasma proteins
/ Prediction models
/ Proteins
/ Proteomics
/ Proteomics - methods
/ Pulmonary fibrosis
/ Rare diseases
/ Rare Diseases - blood
/ Rare Diseases - diagnosis
/ Rare Diseases - genetics
/ Risk Assessment
/ United Kingdom - epidemiology
2024
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Proteomic signatures improve risk prediction for common and rare diseases
Journal Article
Proteomic signatures improve risk prediction for common and rare diseases
2024
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Overview
For many diseases there are delays in diagnosis due to a lack of objective biomarkers for disease onset. Here, in 41,931 individuals from the United Kingdom Biobank Pharma Proteomics Project, we integrated measurements of ~3,000 plasma proteins with clinical information to derive sparse prediction models for the 10-year incidence of 218 common and rare diseases (81–6,038 cases). We then compared prediction models developed using proteomic data with models developed using either basic clinical information alone or clinical information combined with data from 37 clinical assays. The predictive performance of sparse models including as few as 5 to 20 proteins was superior to the performance of models developed using basic clinical information for 67 pathologically diverse diseases (median delta C-index = 0.07; range = 0.02–0.31). Sparse protein models further outperformed models developed using basic information combined with clinical assay data for 52 diseases, including multiple myeloma, non-Hodgkin lymphoma, motor neuron disease, pulmonary fibrosis and dilated cardiomyopathy. For multiple myeloma, single-cell RNA sequencing from bone marrow in newly diagnosed patients showed that four of the five predictor proteins were expressed specifically in plasma cells, consistent with the strong predictive power of these proteins. External replication of sparse protein models in the EPIC-Norfolk study showed good generalizability for prediction of the six diseases tested. These findings show that sparse plasma protein signatures, including both disease-specific proteins and protein predictors shared across several diseases, offer clinically useful prediction of common and rare diseases.
Proteomic prediction models developed using a large-scale dataset from the UK Biobank Pharma Proteomics Project were superior to clinical models for assessing the 10-year risk of 67 diseases across different types of pathology, including multiple myeloma, motor neuron disease, pulmonary fibrosis, celiac disease and dilated cardiomyopathy.
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