Literature DB >> 32952236

Estimating Dynamic Treatment Regimes in Mobile Health Using V-learning.

Daniel J Luckett1, Eric B Laber2, Anna R Kahkoska3, David M Maahs4, Elizabeth Mayer-Davis3, Michael R Kosorok1.   

Abstract

The vision for precision medicine is to use individual patient characteristics to inform a personalized treatment plan that leads to the best possible health-care for each patient. Mobile technologies have an important role to play in this vision as they offer a means to monitor a patient's health status in real-time and subsequently to deliver interventions if, when, and in the dose that they are needed. Dynamic treatment regimes formalize individualized treatment plans as sequences of decision rules, one per stage of clinical intervention, that map current patient information to a recommended treatment. However, most existing methods for estimating optimal dynamic treatment regimes are designed for a small number of fixed decision points occurring on a coarse time-scale. We propose a new reinforcement learning method for estimating an optimal treatment regime that is applicable to data collected using mobile technologies in an out-patient setting. The proposed method accommodates an indefinite time horizon and minute-by-minute decision making that are common in mobile health applications. We show that the proposed estimators are consistent and asymptotically normal under mild conditions. The proposed methods are applied to estimate an optimal dynamic treatment regime for controlling blood glucose levels in patients with type 1 diabetes.

Entities:  

Keywords:  Markov decision processes; Precision medicine; Reinforcement learning; Type 1 diabetes

Year:  2019        PMID: 32952236      PMCID: PMC7500510          DOI: 10.1080/01621459.2018.1537919

Source DB:  PubMed          Journal:  J Am Stat Assoc        ISSN: 0162-1459            Impact factor:   5.033


  29 in total

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Authors:  Susan A Murphy
Journal:  J Mach Learn Res       Date:  2005-07       Impact factor: 3.654

2.  Can mobile health technologies transform health care?

Authors:  Steven R Steinhubl; Evan D Muse; Eric J Topol
Journal:  JAMA       Date:  2013-12-11       Impact factor: 56.272

3.  Pathway to artificial pancreas systems revisited: moving downstream.

Authors:  Aaron Kowalski
Journal:  Diabetes Care       Date:  2015-06       Impact factor: 19.112

4.  Safety of a Hybrid Closed-Loop Insulin Delivery System in Patients With Type 1 Diabetes.

Authors:  Richard M Bergenstal; Satish Garg; Stuart A Weinzimer; Bruce A Buckingham; Bruce W Bode; William V Tamborlane; Francine R Kaufman
Journal:  JAMA       Date:  2016-10-04       Impact factor: 56.272

5.  Interactive model building for Q-learning.

Authors:  Eric B Laber; Kristin A Linn; Leonard A Stefanski
Journal:  Biometrika       Date:  2014-10-20       Impact factor: 2.445

6.  Interactive Q-learning for Quantiles.

Authors:  Kristin A Linn; Eric B Laber; Leonard A Stefanski
Journal:  J Am Stat Assoc       Date:  2017-03-31       Impact factor: 5.033

7.  Sample size calculations for micro-randomized trials in mHealth.

Authors:  Peng Liao; Predrag Klasnja; Ambuj Tewari; Susan A Murphy
Journal:  Stat Med       Date:  2015-12-28       Impact factor: 2.373

8.  Robust estimation of optimal dynamic treatment regimes for sequential treatment decisions.

Authors:  Baqun Zhang; Anastasios A Tsiatis; Eric B Laber; Marie Davidian
Journal:  Biometrika       Date:  2013       Impact factor: 2.445

9.  Outpatient assessment of determinants of glucose excursions in adolescents with type 1 diabetes: proof of concept.

Authors:  David M Maahs; Elizabeth Mayer-Davis; Franziska K Bishop; Lily Wang; Meg Mangan; Robert G McMurray
Journal:  Diabetes Technol Ther       Date:  2012-08       Impact factor: 6.118

10.  Cluster-randomized trial of a mobile phone personalized behavioral intervention for blood glucose control.

Authors:  Charlene C Quinn; Michelle D Shardell; Michael L Terrin; Erik A Barr; Shoshana H Ballew; Ann L Gruber-Baldini
Journal:  Diabetes Care       Date:  2011-07-25       Impact factor: 19.112

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  7 in total

1.  A BAYESIAN TIME-VARYING EFFECT MODEL FOR BEHAVIORAL MHEALTH DATA.

Authors:  Matthew D Koslovsky; Emily T Hébert; Michael S Businelle; Marina Vannucci
Journal:  Ann Appl Stat       Date:  2020-12-19       Impact factor: 2.083

2.  Estimating time-varying causal excursion effect in mobile health with binary outcomes.

Authors:  Tianchen Qian; Hyesun Yoo; Predrag Klasnja; Daniel Almirall; Susan A Murphy
Journal:  Biometrika       Date:  2020-09-04       Impact factor: 3.028

3.  Personalized Policy Learning using Longitudinal Mobile Health Data.

Authors:  Xinyu Hu; Min Qian; Bin Cheng; Ying Kuen Cheung
Journal:  J Am Stat Assoc       Date:  2020-08-11       Impact factor: 5.033

4.  Off-Policy Estimation of Long-Term Average Outcomes with Applications to Mobile Health.

Authors:  Peng Liao; Predrag Klasnja; Susan Murphy
Journal:  J Am Stat Assoc       Date:  2020-10-01       Impact factor: 5.033

5.  A semiparametric instrumental variable approach to optimal treatment regimes under endogeneity.

Authors:  Yifan Cui; Eric Tchetgen Tchetgen
Journal:  J Am Stat Assoc       Date:  2020-08-04       Impact factor: 5.033

6.  Beyond Two Cultures: Cultural Infrastructure for Data-driven Decision Support.

Authors:  Nikki L B Freeman; John Sperger; Helal El-Zaatari; Anna R Kahkoska; Minxin Lu; Michael Valancius; Arti V Virkud; Tarek M Zikry; Michael R Kosorok
Journal:  Obs Stud       Date:  2021-07

7.  Deep reinforcement learning for personalized treatment recommendation.

Authors:  Mingyang Liu; Xiaotong Shen; Wei Pan
Journal:  Stat Med       Date:  2022-06-18       Impact factor: 2.497

  7 in total

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