Optimized Treatment Schedules for Chronic Myeloid Leukemia
Qie He, Junfeng Zhu, David Dingli, Jasmine Foo, Kevin Leder

TL;DR
This paper develops a mathematical model to optimize combination therapy schedules for CML, aiming to extend treatment efficacy by accounting for resistance mutations and toxicity constraints.
Contribution
It introduces a novel optimization framework for designing combination therapy schedules based on a differential equation model of CML dynamics.
Findings
Optimal schedules extend time until treatment failure
Model accounts for preexisting resistance mutations
Incorporates toxicity constraints into therapy planning
Abstract
Over the past decade, several targeted therapies (e.g. imatinib, dasatinib, nilotinib) have been developed to treat Chronic Myeloid Leukemia (CML). Despite an initial response to therapy, drug resistance remains a problem for some CML patients. Recent studies have shown that resistance mutations that preexist treatment can be detected in a substan- tial number of patients, and that this may be associated with eventual treatment failure. One proposed method to extend treatment efficacy is to use a combination of multiple targeted therapies. However, the design of such combination therapies (timing, sequence, etc.) remains an open challenge. In this work we mathematically model the dynamics of CML response to combination therapy and analyze the impact of combination treatment schedules on treatment efficacy in patients with preexisting resistance. We then propose an optimization problem…
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