automatic identification of messages related to adverse drug reactions from online user reviews using feature-based classification.
نویسندگان
چکیده
user-generated medical messages on internet contain extensive information related to adverse drug reactions (adrs) and are known as valuable resources for post-marketing drug surveillance. the aim of this study was to find an effective method to identify messages related to adrs automatically from online user reviews.we conducted experiments on online user reviews using different feature set and different classification technique. firstly, the messages from three communities, allergy community, schizophrenia community and pain management community, were collected, the 3000 messages were annotated. secondly, the n-gram-based features set and medical domain-specific features set were generated. thirdly, three classification techniques, svm, c4.5 and naïve bayes, were used to perform classification tasks separately. finally, we evaluated the performance of different method using different feature set and different classification technique by comparing the metrics including accuracy and f-measure.in terms of accuracy, the accuracy of svm classifier was higher than 0.8, the accuracy of c4.5 classifier or naïve bayes classifier was lower than 0.8; meanwhile, the combination feature sets including n-gram-based feature set and domain-specific feature set consistently outperformed single feature set. in terms of f-measure, the highest f-measure is 0.895 which was achieved by using combination feature sets and a svm classifier. in all, we can get the best classification performance by using combination feature sets and svm classifier.by using combination feature sets and svm classifier, we can get an effective method to identify messages related to adrs automatically from online user reviews.
منابع مشابه
Automatic Identification of Messages Related to Adverse Drug Reactions from Online User Reviews using Feature-based Classification
BACKGROUND User-generated medical messages on Internet contain extensive information related to adverse drug reactions (ADRs) and are known as valuable resources for post-marketing drug surveillance. The aim of this study was to find an effective method to identify messages related to ADRs automatically from online user reviews. METHODS We conducted experiments on online user reviews using di...
متن کاملAutomatic topic identification of health-related messages in online health community using text classification
To facilitate patient involvement in online health community and obtain informative support and emotional support they need, a topic identification approach was proposed in this paper for identifying automatically topics of the health-related messages in online health community, thus assisting patients in reaching the most relevant messages for their queries efficiently. Feature-based classific...
متن کاملantiepileptic drug-related adverse reactions and factors influencing these reactions
how to cite this article: karimzadeh p, bakrani v. antiepileptic drug-related adverse reactions and factors influencing these reactions. iran j child neurol. 2013 summer; 7(3):23-27. objective according to the basic role of drug side effects in selection of an appropriate drug, patient compliance and the quality of life in epileptic patients, and forasmuch as new dugs with unknown side effect...
متن کاملADRTrace: Detecting Expected and Unexpected Adverse Drug Reactions from User Reviews on Social Media Sites
We automatically extract adverse drug reactions (ADRs) from consumer reviews provided on various drug social media sites to identify adverse reactions not reported by the United States Food and Drug Administration (FDA) but touted by consumers. We utilize various lexicons, identify patterns, and generate a synonym set that includes variations of medical terms. We identify “expected” and “unexpe...
متن کاملFeature Engineering for Recognizing Adverse Drug Reactions from Twitter Posts
Social media platforms are emerging digital communication channels that provide an easy way for common people to share their health and medication experiences online. With more people discussing their health information online publicly, social media platforms present a rich source of information for exploring adverse drug reactions (ADRs). ADRs are major public health problems that result in de...
متن کاملDetecting Adverse Drug Reactions Using a Sentiment Classification Framework
Medical blogs and forums are a source of sentiment oriented content that is used in diverse applications including post-marketing drug surveillance, competitive intelligence and the assessment of health-related opinions and sentiments for detecting adverse drug reactions. However applying existing tools for sentiment analysis to health-related datasets provides inadequate classification accurac...
متن کاملمنابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
iranian journal of public healthجلد ۴۳، شماره ۱۱، صفحات ۱۵۱۹-۲۷
میزبانی شده توسط پلتفرم ابری doprax.com
copyright © 2015-2023