| URL: | http://hmpa.zju.edu.cn |
| Full name: | The Human MicroPeptide Atlas |
| Description: | The Human MicroPeptide Atlas (HMPA) is a resource identifying 19,586 novel cancer-associated micropeptides from proteomic reanalysis of 3,753 samples across 8 cancers. It catalogs 3,065 dysregulated micropeptides (370 prognostic), employs deep learning to build a micropeptide-protein interaction network, and provides insights into micropeptide functions as bioactive molecules in cancer biology. |
| Year founded: | 2024 |
| Last update: | 2024-10-16 |
| Version: | v1.0 |
| Accessibility: |
Unaccessible
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| Country/Region: | China |
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| University/Institution: | Zhejiang University |
| Address: | MOE Laboratory of Biosystem Homeostasis and Protection, College of Life Sciences, Zhejiang University, 866 Yuhangtang Road, West Lake District, Hangzhou, Zhejiang 310058, China |
| City: | Hangzhou |
| Province/State: | Zhejiang |
| Country/Region: | China |
| Contact name (PI/Team): | Aifu Lin |
| Contact email (PI/Helpdesk): | linaifu@zju.edu.cn |
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HMPA: a pioneering framework for the noncanonical peptidome from discovery to functional insights. [PMID: 39413795]
Advancements in peptidomics have revealed numerous small open reading frames with coding potential and revealed that some of these micropeptides are closely related to human cancer. However, the systematic analysis and integration from sequence to structure and function remains largely undeveloped. Here, as a solution, we built a workflow for the collection and analysis of proteomic data, transcriptomic data, and clinical outcomes for cancer-associated micropeptides using publicly available datasets from large cohorts. We initially identified 19 586 novel micropeptides by reanalyzing proteomic profile data from 3753 samples across 8 cancer types. Further quantitative analysis of these micropeptides, along with associated clinical data, identified 3065 that were dysregulated in cancer, with 370 of them showing a strong association with prognosis. Moreover, we employed a deep learning framework to construct a micropeptide-protein interaction network for further bioinformatics analysis, revealing that micropeptides are involved in multiple biological processes as bioactive molecules. Taken together, our atlas provides a benchmark for high-throughput prediction and functional exploration of micropeptides, providing new insights into their biological mechanisms in cancer. The HMPA is freely available at http://hmpa.zju.edu.cn. |