Proteomic-based stemness score measures oncogenic dedifferentiation and enables the identification of druggable targets

Iga Kołodziejczak-Guglas(International Institute of Molecular and Cell Biology), Renan Simões(Universidade de Ribeirão Preto), Emerson de Souza Santos(Universidade de Ribeirão Preto), Elizabeth G. Demicco(Mount Sinai Hospital), Rossana N. Lazcano Segura(The University of Texas MD Anderson Cancer Center), Ma Weiping(Icahn School of Medicine at Mount Sinai), Pei Wang(Icahn School of Medicine at Mount Sinai), Yifat Geffen(Broad Institute), Erik Storrs(Washington University in St. Louis), Francesca Petralia(Icahn School of Medicine at Mount Sinai), Antonio Colaprico(Sylvester Comprehensive Cancer Center), Felipe da Veiga Leprevost(University of Michigan), Pietro Pugliese(University of Sannio), Michele Ceccarelli(Sylvester Comprehensive Cancer Center), Houtan Noushmehr(Henry Ford Health System), Alexey I. Nesvizhskii(University of Michigan), Bożena Kamińska(Instytut Biologii Doświadczalnej im. Marcelego Nenckiego), Waldemar Priebe(The University of Texas MD Anderson Cancer Center), Jan Lubiński(International Hereditary Cancer Center), Bing Zhang(Baylor College of Medicine), Alexander J. Lazar(The University of Texas MD Anderson Cancer Center), Paweł Kurzawa(Poznan University of Medical Sciences), Mehdi Mesri(National Cancer Institute), Ana I. Robles(National Cancer Institute), Alicia Francis(Washington University in St. Louis), Amanda G. Paulovich(Universidade de Ribeirão Preto), Anna P. Calinawan(International Institute for Molecular Oncology), Antonio Iavarone, Arul M. Chinnaiyan, Bo Wen, Boris Reva, Brian J. Druker, Caleb M. Lindgren, Chandan Kumar-Sinha, Chelsea J. Newton, Chen Huang, Chet Birger, Corbin Day, D.R. Mani, Daniel Cui Zhou, Daniel W. Chan, David Fenyö, David I. Heiman, Dmitry Rykunov, Emily Huntsman, Eric E. Schadt, Eric J. Jaehnig, Eunkyung An, Fernanda Martins Rodrigues, François Aguet, Gad Getz, Galen Hostetter, Gilbert S. Omenn, Hanbyul Cho, Hui Zhang, Jared L. Johnson, Jasmin Bavarva, Jiayi Ji, Jimin Tan, Jonathan T. Lei, Joshua M. Wang, Karen A. Ketchum, Karin D. Rodland, Karl R. Clauser, Karsten Krug, Kelly V. Ruggles, Lewis C. Cantley, Liang-Bo Wang, Lijun Yao, Lizabeth Katsnelson, Marcin J. Domagalski, Marcin P. Cieslik, Mathangi Thiagarajan, Matthew A. Wyczalkowski, Matthew J. Ellis, Meenakshi Anurag, Michael A. Gillette, Michael J. Birrer, Michael Schnaubelt, Myvizhi Esai Selvan, Nadezhda V. Terekhanova, Nathan Edwards, Nicole Tignor, Özgün Babur, Qing Zhang, Ratna R. Thangudu, Richard D. Smith, Robert Oldroyd, Runyu Hong, Samuel H. Payne, Sara J.C. Gosline, Sara R. Savage, Saravana M. Dhanasekaran, Scott D. Jewell, Shankara Anand, Shankha Satpathy, Shrabanti Chowdhury, Song Cao, Stephan Schürer, Steven A. Carr, Steven M. Foltz, Tania J. Gonzalez Robles, Tao Liu, Tobias Schraink, Tomer M. Yaron, Vasileios Stathias, Wen Jiang, Wen-Wei Liang, Wenke Liu, Wilson McKerrow, Xiaoyu Song, Xinpei Yi, Xu Zhang, Yifat Geffen(Broad Institute), Yige Wu, Ying Wang, Yingwei Hu, Yize Li, Yizhe Song, Yo Akiyama, Yongchao Dou, Yuxing Liao, Zeynep H. Gümüş, Zhen Zhang, Zhiao Shi, Li Ding(Washington University in St. Louis), Tathiane M. Malta(Universidade de Ribeirão Preto), Maciej Wiznerowicz(International Institute for Molecular Oncology)
Cell Genomics
April 17, 2025
Cited by 4Open Access
Full Text

Abstract

Cancer progression and therapeutic resistance are closely linked to a stemness phenotype. Here, we introduce a protein-expression-based stemness index (PROTsi) to evaluate oncogenic dedifferentiation in relation to histopathology, molecular features, and clinical outcomes. Utilizing datasets from the Clinical Proteomic Tumor Analysis Consortium across 11 tumor types, we validate PROTsi's effectiveness in accurately quantifying stem-like features. Through integration of PROTsi with multi-omics, including protein post-translational modifications, we identify molecular features associated with stemness and proteins that act as active nodes within transcriptional networks, driving tumor aggressiveness. Proteins highly correlated with stemness were identified as potential drug targets, both shared and tumor specific. These stemness-associated proteins demonstrate predictive value for clinical outcomes, as confirmed by immunohistochemistry in multiple samples. The findings emphasize PROTsi's efficacy as a valuable tool for selecting predictive protein targets, a crucial step in customizing anti-cancer therapy and advancing the clinical development of cures for cancer patients.


Related Papers

No related papers found

Powered by citation graph analysis