Artificial neural network: A data mining tool in pharmacovigilance

B. Mamatha, VENKATESWARA RAO PEDDADA
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Abstract

Introduction: Pharmacovigilance ensures patient safety as well as drug safety. In India, there is still a lot to be done and learned to ensure that the work and activities done in the area of pharmacovigilance are safely implemented. The key issue in India is that adverse drug reaction (ADR) has been underreported. The number of patients who are hospitalized is growing due to adverse drug effects and figuring out the exact cause of ADRs is a problem, if a patient is treated concurrently with several medicines. Methods: In the analysis, we will analyze the various types of evaluation scale to conduct the ADR evaluation and identify the trigger agents. For situations where various approaches may not be adequate prognostic models, neural networks emerged as advanced data processing devices. Results: However, it is essentially statistical modeling tools that are used in neural network models, as the term implies. Conclusions: These models are thus a replacement solution, offering resources that learn by themselves, while not requiring experts or advanced computer programs, to solve problems and discern patterns.
人工神经网络:药物警戒中的数据挖掘工具
导读:药物警戒不仅保证了患者的安全,也保证了药物的安全。在印度,仍有许多工作要做和要学习,以确保在药物警戒领域开展的工作和活动得到安全实施。印度的关键问题是药物不良反应(ADR)被低估了。由于药物副作用而住院的患者越来越多,如果患者同时服用多种药物,很难确定不良反应的确切原因。方法:在分析中,通过对各类评价量表的分析,对药品不良反应进行评价,识别引发因素。对于各种方法可能不足以作为预测模型的情况,神经网络作为先进的数据处理设备出现了。结果:然而,正如术语所暗示的那样,它本质上是用于神经网络模型的统计建模工具。结论:因此,这些模型是一种替代解决方案,提供了自己学习的资源,而不需要专家或高级计算机程序来解决问题和识别模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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