Literature DB >> 29884988

Natural Language Processing and Its Implications for the Future of Medication Safety: A Narrative Review of Recent Advances and Challenges.

Adrian Wong1,2, Joseph M Plasek2,3, Steven P Montecalvo4, Li Zhou5.   

Abstract

The safety of medication use has been a priority in the United States since the late 1930s. Recently, it has gained prominence due to the increasing amount of data suggesting that a large amount of patient harm is preventable and can be mitigated with effective risk strategies that have not been sufficiently adopted. Adverse events from medications are part of clinical practice, but the ability to identify a patient's risk and to minimize that risk must be a priority. The ability to identify adverse events has been a challenge due to limitations of available data sources, which are often free text. The use of natural language processing (NLP) may help to address these limitations. NLP is the artificial intelligence domain of computer science that uses computers to manipulate unstructured data (i.e., narrative text or speech data) in the context of a specific task. In this narrative review, we illustrate the fundamentals of NLP and discuss NLP's application to medication safety in four data sources: electronic health records, Internet-based data, published literature, and reporting systems. Given the magnitude of available data from these sources, a growing area is the use of computer algorithms to help automatically detect associations between medications and adverse effects. The main benefit of NLP is in the time savings associated with automation of various medication safety tasks such as the medication reconciliation process facilitated by computers, as well as the potential for near-real-time identification of adverse events for postmarketing surveillance such as those posted on social media that would otherwise go unanalyzed. NLP is limited by a lack of data sharing between health care organizations due to insufficient interoperability capabilities, inhibiting large-scale adverse event monitoring across populations. We anticipate that future work in this area will focus on the integration of data sources from different domains to improve the ability to identify potential adverse events more quickly and to improve clinical decision support with regard to a patient's estimated risk for specific adverse events at the time of medication prescription or review.
© 2018 Pharmacotherapy Publications, Inc.

Entities:  

Keywords:  adverse drug reaction reporting systems; electronic health records; medical informatics; natural language processing; patient safety; pharmacovigilance; social media; supervised machine learning

Mesh:

Year:  2018        PMID: 29884988     DOI: 10.1002/phar.2151

Source DB:  PubMed          Journal:  Pharmacotherapy        ISSN: 0277-0008            Impact factor:   4.705


  17 in total

1.  Using Electronic Health Records To Generate Phenotypes For Research.

Authors:  Sarah A Pendergrass; Dana C Crawford
Journal:  Curr Protoc Hum Genet       Date:  2018-12-05

2.  Transparent Reporting on Research Using Unstructured Electronic Health Record Data to Generate 'Real World' Evidence of Comparative Effectiveness and Safety.

Authors:  Shirley V Wang; Olga V Patterson; Joshua J Gagne; Jeffrey S Brown; Robert Ball; Pall Jonsson; Adam Wright; Li Zhou; Wim Goettsch; Andrew Bate
Journal:  Drug Saf       Date:  2019-11       Impact factor: 5.606

3.  Evaluation of Use of Technologies to Facilitate Medical Chart Review.

Authors:  Loreen Straub; Joshua J Gagne; Judith C Maro; Michael D Nguyen; Nicolas Beaulieu; Jeffrey S Brown; Adee Kennedy; Margaret Johnson; Adam Wright; Li Zhou; Shirley V Wang
Journal:  Drug Saf       Date:  2019-09       Impact factor: 5.606

4.  Natural Language Processing Combined with ICD-9-CM Codes as a Novel Method to Study the Epidemiology of Allergic Drug Reactions.

Authors:  Aleena Banerji; Kenneth H Lai; Yu Li; Rebecca R Saff; Carlos A Camargo; Kimberly G Blumenthal; Li Zhou
Journal:  J Allergy Clin Immunol Pract       Date:  2019-12-16

5.  Mining social media data to assess the risk of skin and soft tissue infections from allergen immunotherapy.

Authors:  Kimberly G Blumenthal; Maxim Topaz; Li Zhou; Tyler Harkness; Roee Sa'adon; Ofrit Bar-Bachar; Aidan A Long
Journal:  J Allergy Clin Immunol       Date:  2019-02-02       Impact factor: 10.793

6.  Leveraging Case Narratives to Enhance Patient Age Ascertainment from Adverse Event Reports.

Authors:  Phuong Pham; Carmen Cheng; Eileen Wu; Ivone Kim; Rongmei Zhang; Yong Ma; Cindy M Kortepeter; Monica A Muñoz
Journal:  Pharmaceut Med       Date:  2021-09-02

7.  Natural language processing: state of the art, current trends and challenges.

Authors:  Diksha Khurana; Aditya Koli; Kiran Khatter; Sukhdev Singh
Journal:  Multimed Tools Appl       Date:  2022-07-14       Impact factor: 2.577

8.  Prediction of general medical admission length of stay with natural language processing and deep learning: a pilot study.

Authors:  Stephen Bacchi; Samuel Gluck; Yiran Tan; Ivana Chim; Joy Cheng; Toby Gilbert; David K Menon; Jim Jannes; Timothy Kleinig; Simon Koblar
Journal:  Intern Emerg Med       Date:  2020-01-02       Impact factor: 3.397

9.  Using the Electronic Health Record to Characterize the Hepatitis C Virus Care Cascade.

Authors:  Shannon M Christy; Richard R Reich; Julie A Rathwell; Susan T Vadaparampil; Kimberly A Isaacs-Soriano; Mark S Friedman; Richard G Roetzheim; Anna R Giuliano
Journal:  Public Health Rep       Date:  2021-04-08       Impact factor: 3.117

Review 10.  Utilizing Advanced Technologies to Augment Pharmacovigilance Systems: Challenges and Opportunities.

Authors:  David John Lewis; John Fraser McCallum
Journal:  Ther Innov Regul Sci       Date:  2019-12-28       Impact factor: 1.778

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