In clinical practice, an informative and practically useful treatment rule should be simple and transparent. However, because simple rules are likely to be far from optimal, effective methods to construct such rules must guarantee performance, in terms of yielding the best clinical outcome (highest reward) among the class of simple rules under consideration. Furthermore, it is important to evaluate the benefit of the derived rules on the whole sample and in pre-specified subgroups (e.g., vulnerable patients). To achieve both goals, we propose a robust machine learning method to estimate a linear treatment rule that is guaranteed to achieve optimal reward among the class of all linear rules. We then develop a diagnostic measure and inference...
Thesis (Ph.D.)--University of Washington, 2019The availability of scientific knowledge and the stren...
Multistate process data are common in studies of chronic diseases such as cancer. These data are ide...
There has been increasing development in personalized interventions that are tailored to uniquely ev...
There is increasing interest in discovering individualized treatment rules for patients who have het...
A salient feature of data from clinical trials and medical studies is inhomogeneity. Patients not on...
Dynamic treatment regimes (DTRs) are sequential decision rules for individual patients that can adap...
A dynamic treatment regimen incorporates both accrued information and long-term effects of treatment...
<p>Personalized medicine has received increasing attention among statisticians, computer scientists,...
Learning optimal individualized treatment rules (ITRs) has become increasingly important in the mode...
Heterogeneous treatment responses are commonly observed in patients with mental disorders. Thus, a u...
Individualized treatment rules recommend treatments on the basis of individual patient characteristi...
Personalized medicine has received increasing attention among statisticians, computer scientists and...
Individualized treatment rules recommend treatments on the basis of individual patient characteristi...
Dynamic treatment regimens (DTRs) are sequential treatment decisions tailored by patient's evolving ...
Treatment rules based on individual patient characteristics that are easy to interpret and dissemina...
Thesis (Ph.D.)--University of Washington, 2019The availability of scientific knowledge and the stren...
Multistate process data are common in studies of chronic diseases such as cancer. These data are ide...
There has been increasing development in personalized interventions that are tailored to uniquely ev...
There is increasing interest in discovering individualized treatment rules for patients who have het...
A salient feature of data from clinical trials and medical studies is inhomogeneity. Patients not on...
Dynamic treatment regimes (DTRs) are sequential decision rules for individual patients that can adap...
A dynamic treatment regimen incorporates both accrued information and long-term effects of treatment...
<p>Personalized medicine has received increasing attention among statisticians, computer scientists,...
Learning optimal individualized treatment rules (ITRs) has become increasingly important in the mode...
Heterogeneous treatment responses are commonly observed in patients with mental disorders. Thus, a u...
Individualized treatment rules recommend treatments on the basis of individual patient characteristi...
Personalized medicine has received increasing attention among statisticians, computer scientists and...
Individualized treatment rules recommend treatments on the basis of individual patient characteristi...
Dynamic treatment regimens (DTRs) are sequential treatment decisions tailored by patient's evolving ...
Treatment rules based on individual patient characteristics that are easy to interpret and dissemina...
Thesis (Ph.D.)--University of Washington, 2019The availability of scientific knowledge and the stren...
Multistate process data are common in studies of chronic diseases such as cancer. These data are ide...
There has been increasing development in personalized interventions that are tailored to uniquely ev...