Deciphering the signaling network of breast cancer improves drug sensitivity prediction

解密乳腺癌信号网络可改善药物敏感性预测

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作者:Marco Tognetti, Attila Gabor, Mi Yang, Valentina Cappelletti, Jonas Windhager, Oscar M Rueda, Konstantina Charmpi, Elham Esmaeilishirazifard, Alejandra Bruna, Natalie de Souza, Carlos Caldas, Andreas Beyer, Paola Picotti, Julio Saez-Rodriguez, Bernd Bodenmiller

Abstract

One goal of precision medicine is to tailor effective treatments to patients' specific molecular markers of disease. Here, we used mass cytometry to characterize the single-cell signaling landscapes of 62 breast cancer cell lines and five lines from healthy tissue. We quantified 34 markers in each cell line upon stimulation by the growth factor EGF in the presence or absence of five kinase inhibitors. These data-on more than 80 million single cells from 4,000 conditions-were used to fit mechanistic signaling network models that provide insight into how cancer cells process information. Our dynamic single-cell-based models accurately predicted drug sensitivity and identified genomic features associated with drug sensitivity, including a missense mutation in DDIT3 predictive of PI3K-inhibition sensitivity. We observed similar trends in genotype-drug sensitivity associations in patient-derived xenograft mouse models. This work provides proof of principle that patient-specific single-cell measurements and modeling could inform effective precision medicine strategies.

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