Drug recommendation system using sentiment analysis of drug reviews using machine learning algorithm

Project Code :TCMAPY601

Objective

The primary goal of this project is to determine the sentiment of the drug based on its reviews, whether the medicine has positive or negative sentiment and to know this we have used the Logistic Regression, Decision Tree classifier classification techniques.

Abstract

Since coronavirus has shown up, inaccessibility of legitimate clinical resources is at its peak, like the shortage of specialists and healthcare workers, lack of proper equipment and medicines etc. The entire medical fraternity is in distress, which results in numerous individual’s demise. Due to unavailability, individuals 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, TF-IDF, 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 Linear SVC using TF-IDF vectorization outperforms all other models with better accuracy.

Index Terms—Drug, Recommender System, Machine Learning, NLP, Smote, Bow, TF-IDF, Word2Vec, Sentiment analysis.

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NOTE: Without the concern of our team, please don't submit to the college. This Abstract varies based on student requirements.

Block Diagram

Specifications

Hardware:

  • Operating system:  Windows 7 or 7+
  • RAM:  8 GB
  • Hard disc or SSD:  More than 500 GB  
  • Processor :  Intel 3rd generation or high or Ryzen with 8 GB Ram

Software:

  • Software’s :  Python 3.6 or high version
  • IDE:  PyCharm.
  • Framework : Flask  

Learning Outcomes

·         Practical exposure to

·         Hardware and software tools

·         Solution providing for real time problems

·         Working with team/individual

·         Work on creative ideas

·         Testing techniques

·         Error correction mechanisms

·         What type of technology versions is used?

·         Working of Tensor Flow

·         Implementation of Deep Learning techniques

·         Working of CNN algorithm

·         Working of Transfer Learning methods

·         Building of model creations

·         Scope of project

·         Applications of the project

·         About Python language

·         About Deep Learning Frameworks

Use of Data Science

Demo Video