A Machine Learning Framework to Predict Adverse Drug Reactions from Electronic Health Records

E. Ponraj, J. Charles
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Abstract

The advent of medical industry is immense in the recent years, with increasing epidemics, pandemics and endemics, thereby ensuring proper treatment to the patients with affordable medications. Right from the chemical compositions, the manufacturing involves a huge procedural overhead along with the clinical trials and pre-marketing studies. Such medications have to clear stringent norms and policies in order to reach the market, during which, the medication should exhibit compliance to lesser side effects, and increased control over the diseases. Adverse Drug Reactions (ADR) are typically reactions which are unintended and may result in harmful effects over the patients. Multiple models understand the data collected from various sources to monitor the effects of medications in regular intervals, in order to prepare for counter actions. The risk of side effects and adverse drug reactions can be reduced with timely detection of drug to protein interaction and drug to drug interactions. It is a practice of co-prescriptions for addressing multiple medical conditions in elderly people and patients with multiple ailments. Compared to the previous manual techniques, prediction of adverse drug reactions was carried out using machine learning techniques lately. The proposed technique introduces a novel mechanism using regularized logistic regression technique to effectively trace the drug-to-drug interactions. The datasets are considered from openly available sources, and electronically stored information are fed into regression models for finding relevant patterns. Empirical studies applied with necessary cross validation checks and numerous failproof tests deliver promising outcomes in form of drug-ADR targeted profiles for signifying the results of the supposed study. From the investigative results, it is evident that the proposed technique ensures utmost quality and interesting insights for making appropriate biological and protein-drug based decisions.
从电子健康记录中预测药物不良反应的机器学习框架
近年来,随着流行病、大流行病和地方病的增加,医疗工业的出现是巨大的,从而确保了病人得到负担得起的药物的适当治疗。从化学成分开始,制造过程涉及巨大的程序开销以及临床试验和上市前研究。此类药物必须通过严格的规范和政策才能进入市场,在此期间,药物应符合较小的副作用,并加强对疾病的控制。药物不良反应(ADR)是一种典型的非预期反应,可能对患者造成有害影响。多种模型理解从各种来源收集的数据,定期监测药物的效果,以便为对抗行动做好准备。通过及时发现药物与蛋白质的相互作用和药物与药物的相互作用,可以降低药物副作用和药物不良反应的风险。这是一种为老年人和患有多种疾病的患者提供多种医疗条件的联合处方的做法。与以前的人工技术相比,最近使用机器学习技术进行药物不良反应的预测。该技术引入了一种新的机制,使用正则化逻辑回归技术来有效地跟踪药物与药物的相互作用。数据集来自公开可用的来源,电子存储的信息被输入回归模型以查找相关模式。实证研究应用必要的交叉验证检查和大量的防故障测试,以药物不良反应目标概况的形式提供了有希望的结果,以表明假设的研究结果。从调查结果来看,很明显,所提出的技术确保了最高的质量和有趣的见解,以做出适当的生物和蛋白质药物为基础的决定。
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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