A dynamic treatment regimen (DTR) is a set of decision rules to personalize treatments for an individual using their medical history. The Q-learning based Q-shared algorithm has been used to develop DTRs that involve decision rules shared across multiple stages of intervention. We show that the existing Q-shared algorithm can suffer from non-convergence due to the use of linear models in the Q-learning setup, and identify the condition in which Q-shared fails. Leveraging properties from expansion-constrained ordinary least-squares, we give a penalized Q-shared algorithm that not only converges in settings that violate the condition, but can outperform the original Q-shared algorithm even when the condition is satisfied. We give evidence for...
Personalized medicine is gaining attention as a promising avenue for improved healthcare, and hasrec...
Q-learning (Watkins, 1989) is a simple way for agents to learn how to act optimally in controlled Ma...
In clinical practice, physicians make a series of treatment decisions over the course of a patient’s...
A dynamic treatment regimen incorporates both accrued information and long-term effects of treatment...
Dynamic treatment regimes are a set of decision rules and each treatment decision is tailored over t...
We develop methodology for a multistage-decision problem with flexible number of stages in which the...
University of Minnesota Ph.D. dissertation. 2021. Major: Biostatistics. Advisors: Thomas Murray, Dav...
Dynamic treatment regimes (DTRs) are sequential decision rules for individual patients that can adap...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/115910/1/sim6558.pd
The focus of this work is to investigate a form of Q-learning using estimating equations for quality...
Dynamic treatment regimes are fast becoming an important part of medicine, with the corresponding ch...
An optimal dynamic treatment regime (DTR) is a sequence of treatment decisions that yields the best ...
This paper presents a novel incremental algorithm that combines Q-learning, a well-known dynamic-pro...
Precision medicine allows personalized treatment regime for patients with distinct clinical history ...
Q-learning (QL) is a popular reinforcement learning algorithm that is guaranteed to converge to opti...
Personalized medicine is gaining attention as a promising avenue for improved healthcare, and hasrec...
Q-learning (Watkins, 1989) is a simple way for agents to learn how to act optimally in controlled Ma...
In clinical practice, physicians make a series of treatment decisions over the course of a patient’s...
A dynamic treatment regimen incorporates both accrued information and long-term effects of treatment...
Dynamic treatment regimes are a set of decision rules and each treatment decision is tailored over t...
We develop methodology for a multistage-decision problem with flexible number of stages in which the...
University of Minnesota Ph.D. dissertation. 2021. Major: Biostatistics. Advisors: Thomas Murray, Dav...
Dynamic treatment regimes (DTRs) are sequential decision rules for individual patients that can adap...
Peer Reviewedhttp://deepblue.lib.umich.edu/bitstream/2027.42/115910/1/sim6558.pd
The focus of this work is to investigate a form of Q-learning using estimating equations for quality...
Dynamic treatment regimes are fast becoming an important part of medicine, with the corresponding ch...
An optimal dynamic treatment regime (DTR) is a sequence of treatment decisions that yields the best ...
This paper presents a novel incremental algorithm that combines Q-learning, a well-known dynamic-pro...
Precision medicine allows personalized treatment regime for patients with distinct clinical history ...
Q-learning (QL) is a popular reinforcement learning algorithm that is guaranteed to converge to opti...
Personalized medicine is gaining attention as a promising avenue for improved healthcare, and hasrec...
Q-learning (Watkins, 1989) is a simple way for agents to learn how to act optimally in controlled Ma...
In clinical practice, physicians make a series of treatment decisions over the course of a patient’s...