Since coronavirus has shown up, inaccessibility of legitimate clinical resources is at its peak, like the shortage of specialists, healthcare workers, lack of proper equipment and medicines. The entire medical fraternity is in distress, which results in numerous individuals demise. Due to unavailability, people started taking medication independently without appropriate consultation, making the health condition worse than usual. As of late, machine learning has been valuable in numerous applications, and there is an increase in innovative work for automation. This paper intends to present a drug recommender system that can drastically reduce specialists heap. In this research, we build a medicine recommendation system that uses patient reviews to predict the sentiment using various vectorization processes like Bow, TFIDF, Word2Vec, and Manual Feature Analysis, which can help recommend the top drug for a given disease by different classification algorithms. The predicted sentiments were evaluated by precision, recall, f1score, accuracy, and AUC score. The results show that classifier LinearSVC using TFIDF vectorization outperforms all other models with 93% accuracy.
翻译:由于冠状病毒的出现,合法临床资源的无法获得已经达到高峰,如专家、保健工作者短缺、缺乏适当的设备和药品等。整个医学兄弟会都陷入困境,导致无数人死亡。由于得不到药物,人们开始单独服用药物,而没有经过适当的咨询,使健康状况比通常更糟。截至最近,机器学习在许多应用中一直很有价值,自动化的创新工作也有所增加。本文件打算提出一种药物推荐系统,可以大量减少专家人数。在这个研究中,我们建立了一个药物建议系统,利用病人审查来预测情绪,使用各种病媒化过程,如鲍尔、TFIDF、Word2Vec和手动特征分析,这可以帮助通过不同的分类算法推荐某种疾病的最高药物。预测的情绪是通过精确、回顾、f1分、准确性和AUC得分来评价的。结果显示,使用TFID病媒化的分类器比所有其他模型都精确度高93%。