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A Multiview Model for Detecting the Inappropriate Use of Prescription Medication: Machine Learning Approach

机译:一种多视图模型,用于检测不恰当的处方药物用途:机器学习方法

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Background The inappropriate use of prescription medication has recently garnered worldwide attention, but most national policies do not effectively provide for early detection or timely intervention. Objective This study aimed to develop and assess the validity of a model that can detect the inappropriate use of prescription medication. This effort combines a multiview and topic matching method. The study also assessed the validity of this approach. Methods A multiview extension of the latent Dirichlet allocation algorithm for topic modeling was chosen to generate diagnosis-medication topics, with data obtained from the Chinese Monitoring Network for Rational Use of Drugs (CMNRUD) database. Topic mapping allowed for calculating the degree to which diagnoses and medications were similarly distributed and, by setting a threshold, for identifying prescription misuse. The Beijing Regional Prescription Review Database (BRPRD) database was used as the gold standard to assess the model’s validity. We also conducted a sensitivity analysis using random samples of validated prescriptions and evaluated the model’s performance. Results A total of 44 million prescriptions were used to generate topics using the diagnoses and medications from the CMNRUD database. A random sample (15,000 prescriptions) from the BRPRD was used for validation, and it was found that the model had a sensitivity of 81.8%, specificity of 47.4%, positive-predictive value of 14.5%, and negative-predictive value of 96.0%. The model showed superior stability under different sampling proportions. Conclusions A method that combines multiview topic modeling and topic matching can detect the inappropriate use of prescription medication. This model, which has mediocre specificity and moderate sensitivity, can be used as a primary screening tool and will likely complement and improve the process of manually reviewing prescriptions.
机译:背景,处方药的不当使用最近在全球范围内推动,但大多数国家政策都没有有效地提供早期检测或及时干预。目的本研究旨在开发和评估模型的有效性,这些模型可以检测到不恰当的处方药物使用。这项努力结合了多视图和主题匹配方法。该研究还评估了这种方法的有效性。方法选择主题建模的潜像分配算法的多视图扩展,以生成诊断 - 药物主题,利用从汉语监测网络获得的数据进行合理使用药物(CMNRUD)数据库。主题映射允许计算类似地分布诊断和药物的程度,并通过设置阈值来识别处方滥用。北京区域处方审查数据库(BRPRD)数据库被用作黄金标准,以评估模型的有效性。我们还使用验证处方的随机样本进行了敏感性分析,并评估了模型的性能。结果总共4400万处的处方用于使用来自CMNRUD数据库的诊断和药物产生主题。来自BRPRD的随机样品(15,000个处方)用于验证,发现该模型的敏感性为81.8%,特异性为47.4%,阳性预测值为14.5%,负预测值为96.0% 。该模型在不同的采样比例下显示出优异的稳定性。结论一种组合多视图主题建模和主题匹配的方法可以检测不恰当的处方药物使用。这种具有平庸特异性和中等灵敏度的模型可用作主要筛查工具,并且可能会补充和改善手动审查处方的过程。

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