chillier
Senior Member (Voting Rights)
Link:
https://www.cell.com/cell/fulltext/S0092-8674(24)01268-6
Highlights
•
Construct a comprehensive proteomics atlas for 1,706 human diseases and traits
•
Machine-learning-based big data uncover promising diagnostic and predictive biomarkers
•
Identify 37 drug repurposing prospects and 26 potential targets with good safety
•
Provide an open-access proteome-phenome resource to advance precision medicine
Summary
Large-scale proteomics studies can refine our understanding of health and disease and enable precision medicine. Here, we provide a detailed atlas of 2,920 plasma proteins linking to diseases (406 prevalent and 660 incident) and 986 health-related traits in 53,026 individuals (median follow-up: 14.8 years) from the UK Biobank, representing the most comprehensive proteome profiles to date. This atlas revealed 168,100 protein-disease associations and 554,488 protein-trait associations. Over 650 proteins were shared among at least 50 diseases, and over 1,000 showed sex and age heterogeneity. Furthermore, proteins demonstrated promising potential in disease discrimination (area under the curve [AUC] > 0.80 in 183 diseases). Finally, integrating protein quantitative trait locus data determined 474 causal proteins, providing 37 drug-repurposing opportunities and 26 promising targets with favorable safety profiles. These results provide an open-access comprehensive proteome-phenome resource (https://proteome-phenome-atlas.com/) to help elucidate the biological mechanisms of diseases and accelerate the development of disease biomarkers, prediction models, and therapeutic targets.
Graphical summary:

https://www.cell.com/cell/fulltext/S0092-8674(24)01268-6
Highlights
•
Construct a comprehensive proteomics atlas for 1,706 human diseases and traits
•
Machine-learning-based big data uncover promising diagnostic and predictive biomarkers
•
Identify 37 drug repurposing prospects and 26 potential targets with good safety
•
Provide an open-access proteome-phenome resource to advance precision medicine
Summary
Large-scale proteomics studies can refine our understanding of health and disease and enable precision medicine. Here, we provide a detailed atlas of 2,920 plasma proteins linking to diseases (406 prevalent and 660 incident) and 986 health-related traits in 53,026 individuals (median follow-up: 14.8 years) from the UK Biobank, representing the most comprehensive proteome profiles to date. This atlas revealed 168,100 protein-disease associations and 554,488 protein-trait associations. Over 650 proteins were shared among at least 50 diseases, and over 1,000 showed sex and age heterogeneity. Furthermore, proteins demonstrated promising potential in disease discrimination (area under the curve [AUC] > 0.80 in 183 diseases). Finally, integrating protein quantitative trait locus data determined 474 causal proteins, providing 37 drug-repurposing opportunities and 26 promising targets with favorable safety profiles. These results provide an open-access comprehensive proteome-phenome resource (https://proteome-phenome-atlas.com/) to help elucidate the biological mechanisms of diseases and accelerate the development of disease biomarkers, prediction models, and therapeutic targets.
Graphical summary:
