Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy

Lei Wang,1,* Rong Fan,1,* Chen Zhang,1 Liwen Hong,1 Tianyu Zhang,1 Ying Chen,2 Kai Liu,2 Zhengting Wang,1 Jie Zhong1 1Department of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, People’s Republic of China; 2CareLinker Co., Ltd., Shanghai, Peo...

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Main Authors: Wang L, Fan R, Zhang C, Hong L, Zhang T, Chen Y, Liu K, Wang Z, Zhong J
Format: Article
Language:English
Published: Dove Medical Press 2020-06-01
Series:Patient Preference and Adherence
Subjects:
Online Access:https://www.dovepress.com/applying-machine-learning-models-to-predict-medication-nonadherence-in-peer-reviewed-article-PPA
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spelling doaj-7fe406b6fe584ff29c1272b15f95bab92020-11-25T02:39:16ZengDove Medical PressPatient Preference and Adherence1177-889X2020-06-01Volume 1491792654253Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance TherapyWang LFan RZhang CHong LZhang TChen YLiu KWang ZZhong JLei Wang,1,* Rong Fan,1,* Chen Zhang,1 Liwen Hong,1 Tianyu Zhang,1 Ying Chen,2 Kai Liu,2 Zhengting Wang,1 Jie Zhong1 1Department of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, People’s Republic of China; 2CareLinker Co., Ltd., Shanghai, People’s Republic of China*These authors contributed equally to this workCorrespondence: Zhengting Wang; Jie ZhongDepartment of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, 197 Ruijiner Road, Shanghai 200025, People’s Republic of ChinaTel +86-21-64370045 ext. 600901Email Dake_wang@126.com; jimmyzj64@hotmail.comObjective: Medication adherence is crucial in the management of Crohn’s disease (CD), and yet the adherence remains low. This study aimed to develop machine learning models that can help predict CD patients of nonadherence to azathioprine (AZA), and thus assist caregivers to streamline the intervention process.Methods: This single-centered, cross-sectional study recruited 446 CD patients who have been prescribed AZA between Sep 2005 and Sep 2018. Questionnaires of medication adherence, anxiety and depression, beliefs of medication necessity and concerns, and medication knowledge were provided to patients, while other data were extracted from the electronic medical records. Two machine learning models of back-propagation neural network (BPNN) and support vector machine (SVM) were developed and compared with logistic regression (LR), and assessed by accuracy, recall, precision, F1 score and the area under the receiver operating characteristic curve (AUC).Results: The average classification accuracy and AUC of the three models were 81.6% and 0.896 for LR, 85.9% and 0.912 for BPNN, and 87.7% and 0.930 for SVM, respectively. Multivariate analysis identified four risk factors associated with AZA nonadherence: medication concern belief (OR=3.130, p< 0.001), education (OR=2.199, p< 0.001), anxiety (OR=1.549, p< 0.001) and depression (OR=1.190, p< 0.001), while medication necessity belief (OR=0.004, p< 0.001) and medication knowledge (OR=0.805, p=0.013) were protective factors.Conclusion: We developed three machine learning models and proposed an SVM model with promising accuracy in the prediction of AZA nonadherence in Chinese CD patients. The study also reconfirmed that education, psychologic distress, and medication beliefs and knowledge are correlated to AZA nonadherence.Keywords: Crohn’s disease, azathioprine, medication adherence, maintenance therapy, machine learning, support vector machine, back-propagation neural networkhttps://www.dovepress.com/applying-machine-learning-models-to-predict-medication-nonadherence-in-peer-reviewed-article-PPAcrohn’s diseaseazathioprinemedication adherencemaintenance therapymachine learningsupport vector machineback-propagation neural network.
collection DOAJ
language English
format Article
sources DOAJ
author Wang L
Fan R
Zhang C
Hong L
Zhang T
Chen Y
Liu K
Wang Z
Zhong J
spellingShingle Wang L
Fan R
Zhang C
Hong L
Zhang T
Chen Y
Liu K
Wang Z
Zhong J
Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
Patient Preference and Adherence
crohn’s disease
azathioprine
medication adherence
maintenance therapy
machine learning
support vector machine
back-propagation neural network.
author_facet Wang L
Fan R
Zhang C
Hong L
Zhang T
Chen Y
Liu K
Wang Z
Zhong J
author_sort Wang L
title Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
title_short Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
title_full Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
title_fullStr Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
title_full_unstemmed Applying Machine Learning Models to Predict Medication Nonadherence in Crohn’s Disease Maintenance Therapy
title_sort applying machine learning models to predict medication nonadherence in crohn’s disease maintenance therapy
publisher Dove Medical Press
series Patient Preference and Adherence
issn 1177-889X
publishDate 2020-06-01
description Lei Wang,1,* Rong Fan,1,* Chen Zhang,1 Liwen Hong,1 Tianyu Zhang,1 Ying Chen,2 Kai Liu,2 Zhengting Wang,1 Jie Zhong1 1Department of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, People’s Republic of China; 2CareLinker Co., Ltd., Shanghai, People’s Republic of China*These authors contributed equally to this workCorrespondence: Zhengting Wang; Jie ZhongDepartment of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, 197 Ruijiner Road, Shanghai 200025, People’s Republic of ChinaTel +86-21-64370045 ext. 600901Email Dake_wang@126.com; jimmyzj64@hotmail.comObjective: Medication adherence is crucial in the management of Crohn’s disease (CD), and yet the adherence remains low. This study aimed to develop machine learning models that can help predict CD patients of nonadherence to azathioprine (AZA), and thus assist caregivers to streamline the intervention process.Methods: This single-centered, cross-sectional study recruited 446 CD patients who have been prescribed AZA between Sep 2005 and Sep 2018. Questionnaires of medication adherence, anxiety and depression, beliefs of medication necessity and concerns, and medication knowledge were provided to patients, while other data were extracted from the electronic medical records. Two machine learning models of back-propagation neural network (BPNN) and support vector machine (SVM) were developed and compared with logistic regression (LR), and assessed by accuracy, recall, precision, F1 score and the area under the receiver operating characteristic curve (AUC).Results: The average classification accuracy and AUC of the three models were 81.6% and 0.896 for LR, 85.9% and 0.912 for BPNN, and 87.7% and 0.930 for SVM, respectively. Multivariate analysis identified four risk factors associated with AZA nonadherence: medication concern belief (OR=3.130, p< 0.001), education (OR=2.199, p< 0.001), anxiety (OR=1.549, p< 0.001) and depression (OR=1.190, p< 0.001), while medication necessity belief (OR=0.004, p< 0.001) and medication knowledge (OR=0.805, p=0.013) were protective factors.Conclusion: We developed three machine learning models and proposed an SVM model with promising accuracy in the prediction of AZA nonadherence in Chinese CD patients. The study also reconfirmed that education, psychologic distress, and medication beliefs and knowledge are correlated to AZA nonadherence.Keywords: Crohn’s disease, azathioprine, medication adherence, maintenance therapy, machine learning, support vector machine, back-propagation neural network
topic crohn’s disease
azathioprine
medication adherence
maintenance therapy
machine learning
support vector machine
back-propagation neural network.
url https://www.dovepress.com/applying-machine-learning-models-to-predict-medication-nonadherence-in-peer-reviewed-article-PPA
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