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A Drug Recommendation System for Multi-disease in Health Care Using Machine Learning

机译:使用机器学习的医疗保健多病药物推荐系统

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The remarkable technological advancements in the health care industry have improved recently for the betterment of patients' life and providing better clinical decisions. Applications of machine learning and data mining can change the available data to valuable information that can be used for recommending appropriate drugs by analyzing symptoms of the disease. In this work, a machine learning approach for multi-disease with drug recommendation is proposed to provide accurate drug recommendations for the patients suffering from various diseases. This approach generates appropriate recommendations for the patients suffering from cardiac, common cold, fever, obesity, optical, and ortho. Supervised machine learning approaches such as Support Vector Machine (SVM), Random Forest, Decision Tree, and K-nearest neighbors were used for generating recommendations for patients. The experimentation and evaluation of the study was carried out on a sample dataset created only for testing purpose and is not obtained from any source (medical practitioner). This experimental evaluation shows that the Random Forest classifier approach yields a very good recommendation accuracy of 96.87% than the other classifiers under comparison. Thus, the proposed approach is considered as a promising tool for reliable recommendations to the patients in the health care industry.
机译:最近,为了改善患者的生活并提供更好的临床决策,医疗保健行业的显着技术进步得到了改善。机器学习和数据挖掘的应用程序可以将可用数据更改为有价值的信息,这些信息可以用于通过分析疾病的症状来推荐合适的药物。在这项工作中,提出了一种带有药物推荐的多疾病机器学习方法,以为患有各种疾病的患者提供准确的药物推荐。这种方法为患有心脏,普通感冒,发烧,肥胖,视力和矫正的患者提供了适当的建议。有监督的机器学习方法(例如支持向量机(SVM),随机森林,决策树和K近邻)用于为患者提供建议。本研究的实验和评估是在仅出于测试目的而创建的样本数据集中进行的,而不是从任何来源(医生)获得的。该实验评估表明,与比较中的其他分类器相比,Random Forest分类器方法的推荐准确度高达96.87%。因此,所提出的方法被认为是向医疗保健行业中的患者提供可靠建议的有前途的工具。

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