Towards Large-scale Twitter Mining for Drug-related Adverse Events
Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacture...
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| Vydáno v: | SHB'12 : proceedings of the 2012 ACM International Workshop on Smart Health and Wellbeing : October 29, 2012, Maui, Hawaii, USA. International Workshop on Smart Health and Wellbeing (2012 : Maui, Hawaii) Ročník 2012; s. 25 |
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United States
29.10.2012
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| Abstract | Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacturers for pharmacovigilance. Existing methods rely on patients' "spontaneous" self-reports that attest problems. The increasing popularity of social media platforms like the Twitter presents us a new information source for finding potential adverse events. Given the high frequency of user updates, mining Twitter messages can lead us to real-time pharmacovigilance. In this paper, we describe an approach to find drug users and potential adverse events by analyzing the content of twitter messages utilizing Natural Language Processing (NLP) and to build Support Vector Machine (SVM) classifiers. Due to the size nature of the dataset (i.e., 2 billion Tweets), the experiments were conducted on a High Performance Computing (HPC) platform using MapReduce, which exhibits the trend of big data analytics. The results suggest that daily-life social networking data could help early detection of important patient safety issues. |
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| AbstractList | Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacturers for pharmacovigilance. Existing methods rely on patients' "spontaneous" self-reports that attest problems. The increasing popularity of social media platforms like the Twitter presents us a new information source for finding potential adverse events. Given the high frequency of user updates, mining Twitter messages can lead us to real-time pharmacovigilance. In this paper, we describe an approach to find drug users and potential adverse events by analyzing the content of twitter messages utilizing Natural Language Processing (NLP) and to build Support Vector Machine (SVM) classifiers. Due to the size nature of the dataset (i.e., 2 billion Tweets), the experiments were conducted on a High Performance Computing (HPC) platform using MapReduce, which exhibits the trend of big data analytics. The results suggest that daily-life social networking data could help early detection of important patient safety issues.Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacturers for pharmacovigilance. Existing methods rely on patients' "spontaneous" self-reports that attest problems. The increasing popularity of social media platforms like the Twitter presents us a new information source for finding potential adverse events. Given the high frequency of user updates, mining Twitter messages can lead us to real-time pharmacovigilance. In this paper, we describe an approach to find drug users and potential adverse events by analyzing the content of twitter messages utilizing Natural Language Processing (NLP) and to build Support Vector Machine (SVM) classifiers. Due to the size nature of the dataset (i.e., 2 billion Tweets), the experiments were conducted on a High Performance Computing (HPC) platform using MapReduce, which exhibits the trend of big data analytics. The results suggest that daily-life social networking data could help early detection of important patient safety issues. Drug-related adverse events pose substantial risks to patients who consume post-market or Drug-related adverse events pose substantial risks to patients who consume post-market or investigational drugs. Early detection of adverse events benefits not only the drug regulators, but also the manufacturers for pharmacovigilance. Existing methods rely on patients' "spontaneous" self-reports that attest problems. The increasing popularity of social media platforms like the Twitter presents us a new information source for finding potential adverse events. Given the high frequency of user updates, mining Twitter messages can lead us to real-time pharmacovigilance. In this paper, we describe an approach to find drug users and potential adverse events by analyzing the content of twitter messages utilizing Natural Language Processing (NLP) and to build Support Vector Machine (SVM) classifiers. Due to the size nature of the dataset (i.e., 2 billion Tweets), the experiments were conducted on a High Performance Computing (HPC) platform using MapReduce, which exhibits the trend of big data analytics. The results suggest that daily-life social networking data could help early detection of important patient safety issues. |
| Author | Topaloglu, Umit Bian, Jiang Yu, Fan |
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| Keywords | Public Health Algorithms High Performance Computing Theory Twitter mining Natural Language Processing Big-data Analytic Experimentation Drug-related Adverse Events MapReduce |
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| References | 21577079 - J Patient Saf. 2011 Jun;7(2):106-8 11604736 - Stud Health Technol Inform. 2001;84(Pt 1):216-20 21960633 - Science. 2011 Sep 30;333(6051):1878-81 22182518 - J Med Internet Res. 2011 Dec 19;13(4):e119 16921045 - J Clin Oncol. 2006 Aug 20;24(24):3933-8 20087340 - Mol Syst Biol. 2010;6:343 8472007 - Bull Med Libr Assoc. 1993 Apr;81(2):217-22 10128725 - Top Hosp Pharm Manage. 1992 Jul;12(2):12-8 11825149 - Proc AMIA Symp. 2001;:17-21 22195210 - AMIA Annu Symp Proc. 2011;2011:1464-70 22195073 - AMIA Annu Symp Proc. 2011;2011:217-26 |
| References_xml | – reference: 22195073 - AMIA Annu Symp Proc. 2011;2011:217-26 – reference: 22195210 - AMIA Annu Symp Proc. 2011;2011:1464-70 – reference: 11604736 - Stud Health Technol Inform. 2001;84(Pt 1):216-20 – reference: 16921045 - J Clin Oncol. 2006 Aug 20;24(24):3933-8 – reference: 21960633 - Science. 2011 Sep 30;333(6051):1878-81 – reference: 21577079 - J Patient Saf. 2011 Jun;7(2):106-8 – reference: 11825149 - Proc AMIA Symp. 2001;:17-21 – reference: 10128725 - Top Hosp Pharm Manage. 1992 Jul;12(2):12-8 – reference: 22182518 - J Med Internet Res. 2011 Dec 19;13(4):e119 – reference: 20087340 - Mol Syst Biol. 2010;6:343 – reference: 8472007 - Bull Med Libr Assoc. 1993 Apr;81(2):217-22 |
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| Title | Towards Large-scale Twitter Mining for Drug-related Adverse Events |
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