TY - JOUR
T1 - A BAYESIAN DECISION FRAMEWORK FOR OPTIMIZING SEQUENTIAL COMBINATION ANTIRETROVIRAL THERAPY IN PEOPLE WITH HIV
AU - Jin, Wei
AU - Ni, Yang
AU - O’halloran, Jane
AU - Spence, Amanda B.
AU - Rubin, Leah H.
AU - Xu, Yanxun
N1 - Publisher Copyright:
© Institute of Mathematical Statistics, 2023.
PY - 2023/12
Y1 - 2023/12
N2 - Numerous adverse effects (e.g., depression) have been reported for combination antiretroviral therapy (cART) despite its remarkable success in viral suppression in people with HIV (PWH). To improve long-term health outcomes for PWH, there is an urgent need to design personalized optimal cART with the lowest risk of comorbidity in the emerging field of precision medicine for HIV. Large-scale HIV studies offer researchers unprecedented opportunities to optimize personalized cART in a data-driven manner. However, the large number of possible drug combinations for cART makes the estimation of cART effects a high-dimensional combinatorial problem, imposing challenges in both statistical inference and decision-making. We develop a two-step Bayesian decision framework for optimizing sequential cART assignments. In the first step, we propose a dynamic model for individ-uals’ longitudinal observations using a multivariate Gaussian process. In the second step, we build a probabilistic generative model for cART assignments and design an uncertainty-penalized policy optimization using the uncertainty quantification from the first step. Applying the proposed method to a dataset from the Women’s Interagency HIV Study, we demonstrate its clinical util-ity in assisting physicians to make effective treatment decisions, serving the purpose of both viral suppression and comorbidity risk reduction.
AB - Numerous adverse effects (e.g., depression) have been reported for combination antiretroviral therapy (cART) despite its remarkable success in viral suppression in people with HIV (PWH). To improve long-term health outcomes for PWH, there is an urgent need to design personalized optimal cART with the lowest risk of comorbidity in the emerging field of precision medicine for HIV. Large-scale HIV studies offer researchers unprecedented opportunities to optimize personalized cART in a data-driven manner. However, the large number of possible drug combinations for cART makes the estimation of cART effects a high-dimensional combinatorial problem, imposing challenges in both statistical inference and decision-making. We develop a two-step Bayesian decision framework for optimizing sequential cART assignments. In the first step, we propose a dynamic model for individ-uals’ longitudinal observations using a multivariate Gaussian process. In the second step, we build a probabilistic generative model for cART assignments and design an uncertainty-penalized policy optimization using the uncertainty quantification from the first step. Applying the proposed method to a dataset from the Women’s Interagency HIV Study, we demonstrate its clinical util-ity in assisting physicians to make effective treatment decisions, serving the purpose of both viral suppression and comorbidity risk reduction.
KW - Antiretroviral therapy
KW - multivariate Gaussian process
KW - offline reinforcement learning
KW - precision medicine
KW - uncertainty-penalized policy optimization
UR - http://www.scopus.com/inward/record.url?scp=85177093923&partnerID=8YFLogxK
U2 - 10.1214/23-AOAS1750
DO - 10.1214/23-AOAS1750
M3 - Article
AN - SCOPUS:85177093923
SN - 1932-6157
VL - 17
SP - 3035
EP - 3055
JO - Annals of Applied Statistics
JF - Annals of Applied Statistics
IS - 4
ER -