Abstract

BackgroundAdverse Drug Reactions are one of the leading causes of injury or death among patients undergoing medical treatments. Not all Adverse Drug Reactions are identified before a drug is made available in the market. Current post-marketing drug surveillance methods, which are based purely on voluntary spontaneous reports, are unable to provide the early indications necessary to prevent the occurrence of such injuries or fatalities. The objective of this research is to extract reports of adverse drug side-effects from messages in online healthcare forums and use them as early indicators to assist in post-marketing drug surveillance.MethodsWe treat the task of extracting adverse side-effects of drugs from healthcare forum messages as a sequence labeling problem and present a Hidden Markov Model(HMM) based Text Mining system that can be used to classify a message as containing drug side-effect information and then extract the adverse side-effect mentions from it. A manually annotated dataset from http://www.medications.comis used in the training and validation of the HMM based Text Mining system.ResultsA 10-fold cross-validation on the manually annotated dataset yielded on average an F-Score of 0.76 from the HMM Classifier, in comparison to 0.575 from the Baseline classifier. Without the Plain Text Filter component as a part of the Text Processing module, the F-Score of the HMM Classifier was reduced to 0.378 on average, while absence of the HTML Filter component was found to have no impact. Reducing the Drug names dictionary size by half, on average reduced the F-Score of the HMM Classifier to 0.359, while a similar reduction to the side-effects dictionary yielded an F-Score of 0.651 on average. Adverse side-effects mined from http://www.medications.comand http://www.steadyhealth.comwere found to match the Adverse Drug Reactions on the Drug Package Labels of several drugs. In addition, some novel adverse side-effects, which can be potential Adverse Drug Reactions, were also identified.ConclusionsThe results from the HMM based Text Miner are encouraging to pursue further enhancements to this approach. The mined novel side-effects can act as early indicators for health authorities to help focus their efforts in post-marketing drug surveillance.

Highlights

  • Adverse Drug Reactions are one of the leading causes of injury or death among patients undergoing medical treatments

  • It is evident that the Baseline classifier performs poorly in comparison to the Hidden Markov Model (HMM) classifier as both its the False Positive and False Negative values are higher

  • The HMM-based classifier, in contrast, is able to predict such relationships, even in cases where positive Adverse Drug Reactions (ADRs) between a specific drug and its side-effect were not available as a part of the training set. It is in this regard that the HMM classifier is capable of extracting some novel drug/side-effect information as well

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Summary

Introduction

Adverse Drug Reactions are one of the leading causes of injury or death among patients undergoing medical treatments. Current post-marketing drug surveillance methods, which are based purely on voluntary spontaneous reports, are unable to provide the early indications necessary to prevent the occurrence of such injuries or fatalities. The objective of this research is to extract reports of adverse drug side-effects from messages in online healthcare forums and use them as early indicators to assist in post-marketing drug surveillance. Drug manufacturers are mandated to publish the side-effects that have been identified as a part of the clinical trials. These are usually published as a part of the. In order to address this issue, health organizations around the world employ post-marketing surveillance programs as a part of their Pharmacovigilance: the science relating to the detection, assessment, understanding and prevention of adverse effects of pharmaceutical drugs

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