Wang Lei, Fan Rong, Zhang Chen, Hong Liwen, Zhang Tianyu, Chen Ying, Liu Kai, Wang Zhengting, Zhong Jie
Department of Gastroenterology, Ruijin Hospital, Shanghai Jiaotong University School of Medicine, Shanghai, People's Republic of China.
CareLinker Co., Ltd., Shanghai, People's Republic of China.
Patient Prefer Adherence. 2020 Jun 3;14:917-926. doi: 10.2147/PPA.S253732. eCollection 2020.
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.
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).
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.
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.
药物依从性在克罗恩病(CD)的管理中至关重要,但依从性仍然很低。本研究旨在开发机器学习模型,以帮助预测克罗恩病患者对硫唑嘌呤(AZA)的不依从情况,从而协助护理人员简化干预过程。
这项单中心横断面研究招募了2005年9月至2018年9月期间被处方使用AZA的446例克罗恩病患者。向患者提供了药物依从性、焦虑和抑郁、药物必要性信念和担忧以及药物知识的问卷,同时从电子病历中提取其他数据。开发了反向传播神经网络(BPNN)和支持向量机(SVM)两种机器学习模型,并与逻辑回归(LR)进行比较,通过准确性、召回率、精确率、F1分数和受试者工作特征曲线下面积(AUC)进行评估。
三种模型的平均分类准确率和AUC分别为:LR为81.6%和0.896,BPNN为85.9%和0.912,SVM为87.7%和0.930。多变量分析确定了与AZA不依从相关的四个风险因素:药物担忧信念(OR=3.130,p<0.001)、教育程度(OR=2.199,p<0.001)、焦虑(OR=1.549,p<0.001)和抑郁(OR=1.190,p<0.001),而药物必要性信念(OR=0.004,p<0.001)和药物知识(OR=0.805,p=0.013)是保护因素。
我们开发了三种机器学习模型,并提出了一种在预测中国克罗恩病患者AZA不依从性方面具有良好准确性的支持向量机模型。该研究还再次证实,教育程度、心理困扰以及药物信念和知识与AZA不依从性相关。