Pulse Brain · Growing Health Evidence Index
Peer-reviewed

Proteomic signatures improve risk prediction for common and rare diseases

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

Nature Medicine · 2024

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Summary

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 del

Subject
Other / interdisciplinary
Source type
Peer-reviewed study
System type
Other
DOI
10.1038/s41591-024-03142-z
Catalogue ID
SNmoj1yjvo-1jyu2p
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