Evolution-based mathematical models significantly prolong response to abiraterone in metastatic castrate-resistant prostate cancer and identify strategies to further improve outcomes

Author:

Zhang Jingsong1,Cunningham Jessica2,Brown Joel23,Gatenby Robert24ORCID

Affiliation:

1. Department of Genitourinary Oncology, Moffitt Cancer Center and Research Institute

2. Department of Integrated Mathematical Oncology, Moffitt Cancer Center and Research Institute

3. Department of Biological Sciences, University of Illinois at Chicago

4. Cancer Biology and Evolution Program, Moffitt Cancer Center and Research Institute

Abstract

Background:Abiraterone acetate is an effective treatment for metastatic castrate-resistant prostate cancer (mCRPC), but evolution of resistance inevitably leads to progression. We present a pilot study in which abiraterone dosing is guided by evolution-informed mathematical models to delay onset of resistance.Methods:In the study cohort, abiraterone was stopped when PSA was <50% of pretreatment value and resumed when PSA returned to baseline. Results are compared to a contemporaneous cohort who had >50% PSA decline after initial abiraterone administration and met trial eligibility requirements but chose standard of care (SOC) dosing.Results:17 subjects were enrolled in the adaptive therapy group and 16 in the SOC group. All SOC subjects have progressed, but four patients in the study cohort remain stably cycling (range 53–70 months). The study cohort had significantly improved median time to progression (TTP; 33.5 months; p<0.001) and median overall survival (OS; 58.5 months; hazard ratio, 0.41, 95% confidence interval (CI), 0.20–0.83, p<0.001) compared to 14.3 and 31.3 months in the SOC cohort. On average, study subjects received no abiraterone during 46% of time on trial. Longitudinal trial data demonstrated the competition coefficient ratio (αRSSR) of sensitive and resistant populations, a critical factor in intratumoral evolution, was two- to threefold higher than pre-trial estimates. Computer simulations of intratumoral evolutionary dynamics in the four long-term survivors found that, due to the larger value for αRSSR, cycled therapy significantly decreased the resistant population. Simulations in subjects who progressed predicted further increases in OS could be achieved with prompt abiraterone withdrawal after achieving 50% PSA reduction.Conclusions:Incorporation of evolution-based mathematical models into abiraterone monotherapy for mCRPC significantly increases TTP and OS. Computer simulations with updated parameters from longitudinal trial data can estimate intratumoral evolutionary dynamics in each subject and identify strategies to improve outcomes.Funding:Moffitt internal grants and NIH/NCI U54CA143970-05 (Physical Science Oncology Network).

Funder

National Cancer Institute

Moffitt Cancer Center

Horizon 2020

Publisher

eLife Sciences Publications, Ltd

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine,General Neuroscience

Reference37 articles.

1. Intermittent androgen suppression for rising PSA level after radiotherapy;Crook;The New England Journal of Medicine,2012

2. Optimal control to develop therapeutic strategies for metastatic castrate resistant prostate cancer;Cunningham;Journal of Theoretical Biology,2018

3. A call for integrated metastatic management;Cunningham;Nature Ecology & Evolution,2019

4. Optimal control to reach eco-evolutionary stability in metastatic castrate-resistant prostate cancer;Cunningham;PLOS ONE,2020

5. Evolution-based-mathematical-models-significantly-prolong-response-to-Abiraterone-in-mCRPC;Cunningham,2022

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