Personalized Dynamic Treatment Regimes in Continuous Time: A Bayesian Joint Model for Optimizing Clinical Decisions with Timing

07/08/2020
by   William Hua, et al.
0

Accurate models of clinical actions and their impacts on disease progression are critical for estimating personalized optimal dynamic treatment regimes (DTRs) in medical/health research, especially in managing chronic conditions. Traditional statistical methods for DTRs usually focus on estimating the optimal treatment or dosage at each given medical intervention, but overlook the important question of "when this intervention should happen." We fill this gap by building a generative model for a sequence of medical interventions–which are discrete events in continuous time–with a marked temporal point process (MTPP) where the mark is the assigned treatment or dosage. This clinical action model is then embedded into a Bayesian joint framework where the other components model clinical observations including longitudinal medical measurements and time-to-event data. Moreover, we propose a policy gradient method to learn the personalized optimal clinical decision that maximizes patient survival by interacting the MTPP with the model on clinical observations while accounting for uncertainties in clinical observations. A signature application of the proposed approach is to schedule follow-up visitations and assign a dosage at each visitation for patients after kidney transplantation. We evaluate our approach with comparison to alternative methods on both simulated and real-world datasets. In our experiments, the personalized decisions made by our method turn out to be clinically useful: they are interpretable and successfully help improve patient survival. The R package doct (short for "Decisions Optimized in Continuous Time") implementing the proposed model and algorithm is available at https://github.com/YanxunXu/doct.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
10/10/2018

Bayesian Nonparametric Policy Search with Application to Periodontal Recall Intervals

Tooth loss from periodontal disease is a major public health burden in t...
research
11/10/2016

Estimating Dynamic Treatment Regimes in Mobile Health Using V-learning

The vision for precision medicine is to use individual patient character...
research
12/04/2019

Deep Physiological State Space Model for Clinical Forecasting

Clinical forecasting based on electronic medical records (EMR) can uncov...
research
04/27/2015

Modeling Recovery Curves With Application to Prostatectomy

We propose a Bayesian model that predicts recovery curves based on infor...
research
07/04/2023

Deep Attention Q-Network for Personalized Treatment Recommendation

Tailoring treatment for individual patients is crucial yet challenging i...
research
11/29/2022

Bayesian Semiparametric Model for Sequential Treatment Decisions with Informative Timing

We develop a Bayesian semi-parametric model for the estimating the impac...
research
07/08/2023

Digital Twins for Patient Care via Knowledge Graphs and Closed-Form Continuous-Time Liquid Neural Networks

Digital twin technology has is anticipated to transform healthcare, enab...

Please sign up or login with your details

Forgot password? Click here to reset