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A streamlined search technology for identification of synergistic drug combinations.

Authors :
Weiss, Andrea
Weiss, Andrea
Berndsen, Robert H
Ding, Xianting
Ho, Chih-Ming
Dyson, Paul J
van den Bergh, Hubert
Griffioen, Arjan W
Nowak-Sliwinska, Patrycja
Weiss, Andrea
Weiss, Andrea
Berndsen, Robert H
Ding, Xianting
Ho, Chih-Ming
Dyson, Paul J
van den Bergh, Hubert
Griffioen, Arjan W
Nowak-Sliwinska, Patrycja
Source :
Scientific reports; vol 5, iss 1, 14508; 2045-2322
Publication Year :
2015

Abstract

A major key to improvement of cancer therapy is the combination of drugs. Mixing drugs that already exist on the market may offer an attractive alternative. Here we report on a new model-based streamlined feedback system control (s-FSC) method, based on a design of experiment approach, for rapidly finding optimal drug mixtures with minimal experimental effort. We tested combinations in an in vitro assay for the viability of a renal cell adenocarcinoma (RCC) cell line, 786-O. An iterative cycle of in vitro testing and s-FSC analysis was repeated a few times until an optimal low dose combination was reached. Starting with ten drugs that target parallel pathways known to play a role in the development and progression of RCC, we identified the best overall drug combination, being a mixture of four drugs (axitinib, erlotinib, dasatinib and AZD4547) at low doses, inhibiting 90% of cell viability. The removal of AZD4547 from the optimized drug combination resulted in 80% of cell viability inhibition, while still maintaining the synergistic interaction. These optimized drug combinations were significantly more potent than monotherapies of all individual drugs (p < 0.001, CI < 0.3).

Details

Database :
OAIster
Journal :
Scientific reports; vol 5, iss 1, 14508; 2045-2322
Notes :
application/pdf, Scientific reports vol 5, iss 1, 14508 2045-2322
Publication Type :
Electronic Resource
Accession number :
edsoai.on1287370805
Document Type :
Electronic Resource