Standardization and harmonization of distributed multi-center proteotype analysis supporting precision medicine studies

Cancer has no borders: Generation and analysis of molecular data across multiple centers worldwide is necessary to gain statistically significant clinical insights for the benefit of patients. Here we conceived and standardized a proteotype data generation and analysis workflow enabling distributed...

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Veröffentlicht in:Nature communications 2020-10, Vol.11 (1), p.5248-5248, Article 5248
Hauptverfasser: Xuan, Yue, Bateman, Nicholas W., Gallien, Sebastien, Goetze, Sandra, Zhou, Yue, Navarro, Pedro, Hu, Mo, Parikh, Niyati, Hood, Brian L., Conrads, Kelly A., Loosse, Christina, Kitata, Reta Birhanu, Piersma, Sander R., Chiasserini, Davide, Zhu, Hongwen, Hou, Guixue, Tahir, Muhammad, Macklin, Andrew, Khoo, Amanda, Sun, Xiuxuan, Crossett, Ben, Sickmann, Albert, Chen, Yu-Ju, Jimenez, Connie R., Zhou, Hu, Liu, Siqi, Larsen, Martin R., Kislinger, Thomas, Chen, Zhinan, Parker, Benjamin L., Cordwell, Stuart J., Wollscheid, Bernd, Conrads, Thomas P.
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Sprache:eng
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Zusammenfassung:Cancer has no borders: Generation and analysis of molecular data across multiple centers worldwide is necessary to gain statistically significant clinical insights for the benefit of patients. Here we conceived and standardized a proteotype data generation and analysis workflow enabling distributed data generation and evaluated the quantitative data generated across laboratories of the international Cancer Moonshot consortium. Using harmonized mass spectrometry (MS) instrument platforms and standardized data acquisition procedures, we demonstrate robust, sensitive, and reproducible data generation across eleven international sites on seven consecutive days in a 24/7 operation mode. The data presented from the high-resolution MS1-based quantitative data-independent acquisition (HRMS1-DIA) workflow shows that coordinated proteotype data acquisition is feasible from clinical specimens using such standardized strategies. This work paves the way for the distributed multi-omic digitization of large clinical specimen cohorts across multiple sites as a prerequisite for turning molecular precision medicine into reality. Distributed multi-omic digitization of clinical specimen across multiple sites is a prerequisite for turning molecular precision medicine into reality. Here, the authors show that coordinated proteotype data acquisition is feasible using standardized MS data acquisition and analysis strategies.
ISSN:2041-1723
2041-1723
DOI:10.1038/s41467-020-18904-9