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Breast Cancer Classification Based on Proteotypes Obtained by SWATH Mass Spectrometry
Author(s) -
Pavel Bouchal,
Olga T. Schubert,
Jakub Faktor,
Lenka Čápková,
Hana Imrichová,
Karolína Zoufalová,
Vendula Páralová,
Roman Hrstka,
Yansheng Liu,
H. Alexander Ebhardt,
Eva Budínská,
Rudolf Nenutil,
Ruedi Aebersold
Publication year - 2019
Publication title -
cell reports
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 6.264
H-Index - 154
eISSN - 2639-1856
pISSN - 2211-1247
DOI - 10.1016/j.celrep.2019.06.046
Subject(s) - breast cancer , computational biology , cancer , correlation , biology , bioinformatics , oncology , cancer research , medicine , genetics , mathematics , geometry
Accurate classification of breast tumors is vital for patient management decisions and enables more precise cancer treatment. Here, we present a quantitative proteotyping approach based on sequential windowed acquisition of all theoretical fragment ion spectra (SWATH) mass spectrometry and establish key proteins for breast tumor classification. The study is based on 96 tissue samples representing five conventional breast cancer subtypes. SWATH proteotype patterns largely recapitulate these subtypes; however, they also reveal varying heterogeneity within the conventional subtypes, with triple negative tumors being the most heterogeneous. Proteins that contribute most strongly to the proteotype-based classification include INPP4B, CDK1, and ERBB2 and are associated with estrogen receptor (ER) status, tumor grade status, and HER2 status. Although these three key proteins exhibit high levels of correlation with transcript levels (R > 0.67), general correlation did not exceed R = 0.29, indicating the value of protein-level measurements of disease-regulated genes. Overall, this study highlights how cancer tissue proteotyping can lead to more accurate patient stratification.

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