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Poly-ligand profiling differentiates trastuzumab-treated breast cancer patients according to their outcomes
Journal article   Peer reviewed

Poly-ligand profiling differentiates trastuzumab-treated breast cancer patients according to their outcomes

Valeriy Domenyuk, Zoran Gatalica, Radhika Santhanam, Xixi Wei, Adam Stark, Patrick Kennedy, Brandon Toussaint, Symon Levenberg, Jie Wang, Nianqing Xiao, …
Nature communications, Vol.9(1), pp.1219-9
03/23/2018
PMID: 29572535

Abstract

Adult Aged Aged, 80 and over Antineoplastic Agents, Immunological - therapeutic use Antineoplastic Combined Chemotherapy Protocols - therapeutic use Area Under Curve Biomarkers, Tumor - analysis Breast Neoplasms - drug therapy Breast Neoplasms - genetics Disease Progression Disease-Free Survival DNA, Single-Stranded - analysis Female Gene Expression Regulation, Neoplastic Humans Kaplan-Meier Estimate Ligands Middle Aged Phenotype Precision Medicine SELEX Aptamer Technique Sequence Analysis, DNA Trastuzumab - therapeutic use Treatment Outcome
Assessing the phenotypic diversity underlying tumour progression requires the identification of variations in the respective molecular interaction networks. Here we report proof-of-concept for a platform called poly-ligand profiling (PLP) that surveys these system states and distinguishes breast cancer patients who did or did not derive benefit from trastuzumab. We perform tissue-SELEX on breast cancer specimens to enrich single-stranded DNA (ssDNA) libraries that preferentially interact with molecular components associated with the two clinical phenotypes. Testing of independent sample sets verifies the ability of PLP to classify trastuzumab-treated patients according to their clinical outcomes with ROC-AUC of 0.78. Standard HER2 testing of the same patients gives a ROC-AUC of 0.47. Kaplan-Meier analysis reveals a median increase in benefit from trastuzumab-containing treatments of 300 days for PLP-positive compared to PLP-negative patients. If prospectively validated, PLP may increase success rates in precision oncology and clinical trials, thus improving both patient care and drug development.
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https://doi.org/10.1038/s41467-018-03631-zView
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