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A Preliminary Investigation into Predictive Models for Adverse Drug Events

机译:对不良药物事件预测模型的初步调查

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Adverse drug events are a leading cause of danger and cost in health care. We could reduce both the danger and the cost if we had accurate models to predict, at prescription time for each drug, which patients are most at risk for known adverse reactions to that drug, such as myocardial infarction (MI, or "heart attack") if given a Cox2 inhibitor, angioedema if given an ACE inhibitor, or bleeding if given an anticoagulant such asWarfarin. We address this task for the specific case of Cox2 inhibitors, a type of non-steroidal anti-inflammatory drug (NSAID) or pain reliever that is easier on the gastrointestinal system than most NSAIDS. Because of the MI adverse drug reaction, some but not all very effective Cox2 inhibitors were removed from the market. Specifically, we use machine learning to predict which patients on a Cox2 inhibitor would suffer an MI. An important issue for machine learning is that we do not know which of these patients might have suffered an MI even without the drug. To begin to make some headway on this important problem, we compare our predictive model for MI for patients on Cox2 inhibitors against a more general model for predicting MI among a broader population not on Cox2 inhibitors.
机译:不良药物事件是医疗保健危险和成本的主要原因。如果我们有准确的模型,我们可以减少危险和成本,以预测每种药物的处方时间,患者对该药物的已知不良反应有危险,例如心肌梗死(MI或“心脏病发作” )如果给予COX2抑制剂,如果给予ACE抑制剂,或者如果给予抗凝血剂如甘草蛋白,则出血。我们针对COX2抑制剂的具体情况进行了解决该任务,一种非甾体类抗炎药(NSAID)或止痛药,比大多数NSAID更容易胃肠系统。由于MI不良药物反应,一些但并非所有非常有效的COX2抑制剂都被从市场中移除。具体而言,我们使用机器学习来预测COX2抑制剂上的哪个患者会遭受MI。机器学习的一个重要问题是,即使没有药物,我们不知道这些患者可能患有MI的哪一个。为了开始对这一重要问题进行一些进步,我们将MI的MI预测模型与COX2抑制剂的患者进行比较,以更普通模型预测不在COX2抑制剂的更广泛的人群中。

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