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Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease

BACKGROUND: Alzheimer’s Disease (AD) is a progressive neurological disorder with no specific curative medications. While only a few medications are approved by FDA (i.e., donepezil, galantamine, rivastigmine, and memantine) to relieve symptoms (e.g., cognitive decline), sophisticated clinical skills...

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Autores principales: Bhattarai, Kritib, Das, Trisha, Kim, Yejin, Chen, Yongbin, Dai, Qiying, Li, Xiaoyang, Jiang, Xiaoqian, Zong, Nansu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Cold Spring Harbor Laboratory 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9901063/
https://www.ncbi.nlm.nih.gov/pubmed/36747733
http://dx.doi.org/10.1101/2023.01.26.23285064
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author Bhattarai, Kritib
Das, Trisha
Kim, Yejin
Chen, Yongbin
Dai, Qiying
Li, Xiaoyang
Jiang, Xiaoqian
Zong, Nansu
author_facet Bhattarai, Kritib
Das, Trisha
Kim, Yejin
Chen, Yongbin
Dai, Qiying
Li, Xiaoyang
Jiang, Xiaoqian
Zong, Nansu
author_sort Bhattarai, Kritib
collection PubMed
description BACKGROUND: Alzheimer’s Disease (AD) is a progressive neurological disorder with no specific curative medications. While only a few medications are approved by FDA (i.e., donepezil, galantamine, rivastigmine, and memantine) to relieve symptoms (e.g., cognitive decline), sophisticated clinical skills are crucial to optimize the appropriate regimens given the multiple coexisting comorbidities in this patient population. OBJECTIVE: Here, we propose a study to leverage reinforcement learning (RL) to learn the clinicians’ decisions for AD patients based on the longitude records from Electronic Health Records (EHR). METHODS: In this study, we withdraw 1,736 patients fulfilling our criteria, from the Alzheimer’s Disease Neuroimaging Initiative(ADNI) database. We focused on the two most frequent concomitant diseases, depression, and hypertension, thus resulting in five main cohorts, 1) whole data, 2) AD-only, 3) AD-hypertension, 4) AD-depression, and 5) AD-hypertension-depression. We modeled the treatment learning into an RL problem by defining the three factors (i.e., states, action, and reward) in RL in multiple strategies, where a regression model and a decision tree are developed to generate states, six main medications extracted (i.e., no drugs, cholinesterase inhibitors, memantine, hypertension drugs, a combination of cholinesterase inhibitors and memantine, and supplements or other drugs) are for action, and Mini-Mental State Exam (MMSE) scores are for reward. RESULTS: Given the proper dataset, the RL model can generate an optimal policy (regimen plan) that outperforms the clinician’s treatment regimen. With the smallest data samples, the optimal-policy (i.e., policy iteration and Q-learning) gained a lesser reward than the clinician’s policy (mean −2.68 and −2.76 vs. −2.66, respectively), but it gained more reward once the data size increased (mean −3.56 and −2.48 vs. −3.57, respectively). CONCLUSIONS: Our results highlight the potential of using RL to generate the optimal treatment based on the patients’ longitude records. Our work can lead the path toward the development of RL-based decision support systems which could facilitate the daily practice to manage Alzheimer’s disease with comorbidities.
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spelling pubmed-99010632023-02-07 Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease Bhattarai, Kritib Das, Trisha Kim, Yejin Chen, Yongbin Dai, Qiying Li, Xiaoyang Jiang, Xiaoqian Zong, Nansu medRxiv Article BACKGROUND: Alzheimer’s Disease (AD) is a progressive neurological disorder with no specific curative medications. While only a few medications are approved by FDA (i.e., donepezil, galantamine, rivastigmine, and memantine) to relieve symptoms (e.g., cognitive decline), sophisticated clinical skills are crucial to optimize the appropriate regimens given the multiple coexisting comorbidities in this patient population. OBJECTIVE: Here, we propose a study to leverage reinforcement learning (RL) to learn the clinicians’ decisions for AD patients based on the longitude records from Electronic Health Records (EHR). METHODS: In this study, we withdraw 1,736 patients fulfilling our criteria, from the Alzheimer’s Disease Neuroimaging Initiative(ADNI) database. We focused on the two most frequent concomitant diseases, depression, and hypertension, thus resulting in five main cohorts, 1) whole data, 2) AD-only, 3) AD-hypertension, 4) AD-depression, and 5) AD-hypertension-depression. We modeled the treatment learning into an RL problem by defining the three factors (i.e., states, action, and reward) in RL in multiple strategies, where a regression model and a decision tree are developed to generate states, six main medications extracted (i.e., no drugs, cholinesterase inhibitors, memantine, hypertension drugs, a combination of cholinesterase inhibitors and memantine, and supplements or other drugs) are for action, and Mini-Mental State Exam (MMSE) scores are for reward. RESULTS: Given the proper dataset, the RL model can generate an optimal policy (regimen plan) that outperforms the clinician’s treatment regimen. With the smallest data samples, the optimal-policy (i.e., policy iteration and Q-learning) gained a lesser reward than the clinician’s policy (mean −2.68 and −2.76 vs. −2.66, respectively), but it gained more reward once the data size increased (mean −3.56 and −2.48 vs. −3.57, respectively). CONCLUSIONS: Our results highlight the potential of using RL to generate the optimal treatment based on the patients’ longitude records. Our work can lead the path toward the development of RL-based decision support systems which could facilitate the daily practice to manage Alzheimer’s disease with comorbidities. Cold Spring Harbor Laboratory 2023-01-29 /pmc/articles/PMC9901063/ /pubmed/36747733 http://dx.doi.org/10.1101/2023.01.26.23285064 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use.
spellingShingle Article
Bhattarai, Kritib
Das, Trisha
Kim, Yejin
Chen, Yongbin
Dai, Qiying
Li, Xiaoyang
Jiang, Xiaoqian
Zong, Nansu
Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title_full Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title_fullStr Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title_full_unstemmed Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title_short Using Artificial Intelligence to Learn Optimal Regimen Plan for Alzheimer’s Disease
title_sort using artificial intelligence to learn optimal regimen plan for alzheimer’s disease
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9901063/
https://www.ncbi.nlm.nih.gov/pubmed/36747733
http://dx.doi.org/10.1101/2023.01.26.23285064
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