Independent Drug Action in Combination Therapy: Implications for Precision Oncology

Author:

Plana Deborah12ORCID,Palmer Adam C.3ORCID,Sorger Peter K.1ORCID

Affiliation:

1. 1Laboratory of Systems Pharmacology and the Department of Systems Biology, Harvard Medical School, Boston, Massachusetts.

2. 2Harvard-MIT Division of Health Sciences and Technology, Cambridge, Massachusetts.

3. 3Department of Pharmacology, Computational Medicine Program, UNC Lineberger Comprehensive Cancer Center, University of North Carolina at Chapel Hill, Chapel Hill, North Carolina.

Abstract

Abstract Combination therapies are superior to monotherapy for many cancers. This advantage was historically ascribed to the ability of combinations to address tumor heterogeneity, but synergistic interaction is now a common explanation as well as a design criterion for new combinations. We review evidence that independent drug action, described in 1961, explains the efficacy of many practice-changing combination therapies: it provides populations of patients with heterogeneous drug sensitivities multiple chances of benefit from at least one drug. Understanding response heterogeneity could reveal predictive or pharmacodynamic biomarkers for more precise use of existing drugs and realize the benefits of additivity or synergy. Significance: The model of independent drug action represents an effective means to predict the magnitude of benefit likely to be observed in new clinical trials for combination therapies. The “bet-hedging” strategy implicit in independent action suggests that individual patients often benefit from only a subset—sometimes one—of the drugs in a combination. Personalized, targeted combination therapy, consisting of agents likely to be active in a particular patient, will increase, perhaps substantially, the magnitude of therapeutic benefit. Precision approaches of this type will require a better understanding of variability in drug response and new biomarkers, which will entail preclinical research on diverse panels of cancer models rather than studying drug synergy in unusually sensitive models.

Funder

NIH NCI

NIGMS grant

NCI grant

Publisher

American Association for Cancer Research (AACR)

Subject

Oncology

Reference138 articles.

1. Combination therapy in combating cancer;Mokhtari;Oncotarget,2017

2. Principles of dose, schedule, and combination therapy;Frei,2003

3. Holland‐Frei Cancer Medicine

4. Community assessment to advance computational prediction of cancer drug combinations in a pharmacogenomic screen;Menden;Nat Commun,2019

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