Literature DB >> 30611893

A systematic approach for developing a corpus of patient reported adverse drug events: A case study for SSRI and SNRI medications.

Maryam Zolnoori1, Kin Wah Fung2, Timothy B Patrick3, Paul Fontelo4, Hadi Kharrazi5, Anthony Faiola6, Yi Shuan Shirley Wu7, Christina E Eldredge8, Jake Luo3, Mike Conway9, Jiaxi Zhu10, Soo Kyung Park11, Kelly Xu7, Hamideh Moayyed12, Somaieh Goudarzvand13.   

Abstract

"Psychiatric Treatment Adverse Reactions" (PsyTAR) corpus is an annotated corpus that has been developed using patients narrative data for psychiatric medications, particularly SSRIs (Selective Serotonin Reuptake Inhibitor) and SNRIs (Serotonin Norepinephrine Reuptake Inhibitor) medications. This corpus consists of three main components: sentence classification, entity identification, and entity normalization. We split the review posts into sentences and labeled them for presence of adverse drug reactions (ADRs) (2168 sentences), withdrawal symptoms (WDs) (438 sentences), sign/symptoms/illness (SSIs) (789 sentences), drug indications (517), drug effectiveness (EF) (1087 sentences), and drug infectiveness (INF) (337 sentences). In the entity identification phase, we identified and extracted ADRs (4813 mentions), WDs (590 mentions), SSIs (1219 mentions), and DIs (792). In the entity normalization phase, we mapped the identified entities to the corresponding concepts in both UMLS (918 unique concepts) and SNOMED CT (755 unique concepts). Four annotators double coded the sentences and the span of identified entities by strictly following guidelines rules developed for this study. We used the PsyTAR sentence classification component to automatically train a range of supervised machine learning classifiers to identifying text segments with the mentions of ADRs, WDs, DIs, SSIs, EF, and INF. SVMs classifiers had the highest performance with F-Score 0.90. We also measured performance of the cTAKES (clinical Text Analysis and Knowledge Extraction System) in identifying patients' expressions of ADRs and WDs with and without adding PsyTAR dictionary to the core dictionary of cTAKES. Augmenting cTAKES dictionary with PsyTAR improved the F-score cTAKES by 25%. The findings imply that PsyTAR has significant implications for text mining algorithms aimed to identify information about adverse drug events and drug effectiveness from patients' narratives data, by linking the patients' expressions of adverse drug events to medical standard vocabularies. The corpus is publicly available at Zolnoori et al. [30].
Copyright © 2019 Elsevier Inc. All rights reserved.

Entities:  

Keywords:  Adverse drug events; Annotated corpus; Drug effectiveness; Drug safety; Information extraction; Machine learning; Online healthcare forums; Patients narratives; Psychiatric medications; SNOMED CT; SNRIs; SSRIs; Semantic mapping; Social media; Text mining; UMLS

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Substances:

Year:  2019        PMID: 30611893     DOI: 10.1016/j.jbi.2018.12.005

Source DB:  PubMed          Journal:  J Biomed Inform        ISSN: 1532-0464            Impact factor:   6.317


  6 in total

1.  RadLex Normalization in Radiology Reports.

Authors:  Surabhi Datta; Jordan Godfrey-Stovall; Kirk Roberts
Journal:  AMIA Annu Symp Proc       Date:  2021-01-25

2.  The PsyTAR dataset: From patients generated narratives to a corpus of adverse drug events and effectiveness of psychiatric medications.

Authors:  Maryam Zolnoori; Kin Wah Fung; Timothy B Patrick; Paul Fontelo; Hadi Kharrazi; Anthony Faiola; Nilay D Shah; Yi Shuan Shirley Wu; Christina E Eldredge; Jake Luo; Mike Conway; Jiaxi Zhu; Soo Kyung Park; Kelly Xu; Hamideh Moayyed
Journal:  Data Brief       Date:  2019-03-15

3.  A Systematic Framework for Analyzing Patient-Generated Narrative Data: Protocol for a Content Analysis.

Authors:  Maryam Zolnoori; Joyce E Balls-Berry; Tabetha A Brockman; Christi A Patten; Ming Huang; Lixia Yao
Journal:  JMIR Res Protoc       Date:  2019-08-26

4.  Social Media Analytics for Pharmacovigilance of Antiepileptic Drugs.

Authors:  Anwar Ali Yahya; Yousef Asiri; Ibrahim Alyami
Journal:  Comput Math Methods Med       Date:  2022-01-04       Impact factor: 2.238

5.  Distant supervision for medical concept normalization.

Authors:  Nikhil Pattisapu; Vivek Anand; Sangameshwar Patil; Girish Palshikar; Vasudeva Varma
Journal:  J Biomed Inform       Date:  2020-08-09       Impact factor: 6.317

Review 6.  The Unified Medical Language System at 30 Years and How It Is Used and Published: Systematic Review and Content Analysis.

Authors:  Xia Jing
Journal:  JMIR Med Inform       Date:  2021-08-27
  6 in total

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