Submit your paper : editorIJETjournal@gmail.com Paper Title : MINING SERENDIPITOUS DRUGS FROM REVIEWS USING MACHINE LEARNING TECHNIQUES ISSN : 2395-1303 Year of Publication : 2022 10.5281/zenodo.7221238 MLA Style: -B. Prathyusha, Rupali Sharma, Y. Yamini, R. Amitha Bhavana Reddy MINING SERENDIPITOUS DRUGS FROM REVIEWS USING MACHINE LEARNING TECHNIQUES , Volume 8 - Issue 5 September - October 2022 International Journal of Engineering and Techniques (IJET) ,ISSN:2395-1303 , www.ijetjournal.org APA Style: - B. Prathyusha, Rupali Sharma, Y. Yamini, R. Amitha Bhavana Reddy MINING SERENDIPITOUS DRUGS FROM REVIEWS USING MACHINE LEARNING TECHNIQUES , Volume 8 - Issue 5 September - October 2022 International Journal of Engineering and Techniques (IJET) ,ISSN:2395-1303 , www.ijetjournal.org Abstract The word serendipity means ‘happy accident’. Making discoveries by accident has contributed a lot to medical history. Serendipitous drug use is when a patient takes a prescription for a separate known indication and unintentionally experiences relief from comorbid illnesses or symptoms. The discovery of numerous new medication indications has benefited greatly from serendipity throughout history. Drug-repositioning hypotheses might be created and validated if patient-reported serendipitous drug usage in social media could be computationally discovered. We looked into deep neural network models for social media mining of accidental drug use. We contrasted Regression and KNN with our support vector machine, random forest, RNN, and LSTM algorithms. We used machine learning and natural language processing techniques in a web application to mine social media and data reviews for accidental drug use. An essential algorithm is sentiment analysis. We decided to employ Natural Language Processing for our project since it can be used to identify sentiment in text. Upon reviewing reviews of various pharmaceuticals that have been rated on a scale of 1 to 10 and have been reviewed as texts. This data set was collected from the UCI machine learning repository, which contained the train and test data sets (divided as 75–25%). In general, we categorize the drug's numerical rating into three categories: positive (7–10), negative (1-4), or neutral (4-7). We chose to look into how the ratings of the drugs are affected by the inclusion of different words in reviews for ailments with many reviews for drugs that are used to treat those conditions. Our main goal was to construct supervised machine learning classification algorithms that use textual reviews to predict the rating class. Last but not least, we used machine learning and natural language processing techniques to mine data reviews for drug usage. Reference [1] 1. [1] J. T. Dudley, T. Deshpande, and A. J. Butte, "Exploiting drug-disease relationships for computational drug repositioning," Briefings in Bioinformatics, vol. 12, pp. 303-311, 2011. [2] 2. [2] T. T. Ashburn and K. B. Thor, "Drug repositioning: identifying and developing new uses for existing drugs," Nature Review Drug Discovery, vol. 3, pp. 673-683, 2004 [3] 3. [3] L. Yao, Y. Zhang, Y. Li, P. Sanseau, and P. Agarwal, "Electronic health records: Implications for drug discovery," Drug Discovery Today, vol. 16, pp. 594-599, 2011. [4] 4. [4] C. Andronis, A. Sharma, V. Virvilis, S. Deftereos, and A. Persidis, "Literature mining, ontologies and information visualization for drug repurposing," Briefings in Bioinformatics, vol. 12, pp. 357-368, 2011. [5] 5. Dane Hankamer, David Liedtka. Twitter Sentiment Analysis with Emojis. 2019 [6] 6. .Aliaksei Severyn, Alessandro Moschitti.Twitter Sentiment Analysis with Deep Convolutional Neural Networks. 2015 [7] 7. .Janata Wehrmann et al. A Multi-Task Neural Network for Multilingual Sentiment Classification and Language Detection on Twitter. 2018 [8] 8. Simon Provoost et al. Validating Automated Sentiment Analysis of Online Cognitive Behavioral Therapy Patient Texts- An Exploratory Study. 2019 [9] Rakibul Hassan and Md. Rabiul Islam “Detection of fake online reviews using semi-supervised and supervised learning” 2019 International Conference on Electrical, Computer and Communication Engineering (ECCE) Keywords — MINING SERENDIPITOUS DRUGS FROM REVIEWS USING MACHINE LEARNING TECHNIQUES. |