Detecting Adverse Drug Reaction with Data Mining And Predicting its Severity With Machine Learning

Tanvir Islam, Nadib Hussain, Samiul Islam, Amitabha Chakrabarty
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引用次数: 8

Abstract

Adverse Drug Reaction (ADR) is one of the many uncertainties that are considered a fatal threat to the pharmacy industry and the field of medical diagnosis. Utmost care is taken to test a new drug thoroughly before it is introduced and made available to the public. However, these pre-clinical trials are not enough on their own to ensure safety. The increasing concern to the ADRs has motivated the development of statistical, data mining and machine learning methods to detect the Adverse Drug Reactions. With the availability of Electronic Health Records (EHRs), it has become possible to detect ADRs with the mentioned technologies. In this work, we have proposed a hybrid model of data mining and machine learning to identify different Adverse Reactions and predict the intensity of the outcome. We have used the Proportionality Reporting Ratio (PRR) along with the precision point estimator test called the Chi-Square test to find out the different relationships between drug and symptoms called the drug-ADR association. This output from the data mining technique is used as an input to the machine learning algorithms such as Random Forest and Support Vector Machine (SVM) to predict the intensity of the outcome of ADR, depending on a patient’s demographic data such as gender, weight, age, etc. In this work, we have achieved an accuracy of 91% to predict 'death' as the outcome from an ADR.
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用数据挖掘检测药物不良反应并用机器学习预测其严重程度
药物不良反应(ADR)是许多不确定因素之一,被认为是对制药行业和医疗诊断领域的致命威胁。一种新药在引进并向公众提供之前,要非常小心地进行彻底的测试。然而,这些临床前试验本身并不足以确保安全性。对不良反应的日益关注推动了统计、数据挖掘和机器学习方法的发展,以检测药物不良反应。随着电子健康记录(EHRs)的出现,使用上述技术检测不良反应已经成为可能。在这项工作中,我们提出了一个数据挖掘和机器学习的混合模型,以识别不同的不良反应并预测结果的强度。我们使用比例报告比(PRR)和称为卡方检验的精度点估计检验来找出药物和症状之间的不同关系,称为药物-不良反应关联。数据挖掘技术的输出用作随机森林和支持向量机(SVM)等机器学习算法的输入,以根据患者的人口统计数据(如性别、体重、年龄等)预测ADR结果的强度。在这项工作中,我们已经实现了91%的准确度预测“死亡”作为ADR的结果。
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