Skip to main content
Top
Published in: Digestive Diseases and Sciences 3/2017

01-03-2017 | Editorial

Identifying Drug-Induced Liver Illness (DILI) with Computerized Information Extraction: No More Dilly-Dallying

Authors: H. Shen, A. Monto

Published in: Digestive Diseases and Sciences | Issue 3/2017

Login to get access

Excerpt

The rapid adoption of electronic medical record (EMR) has provided health-care professionals with better access to patient records while also improving the quality of medical care, reducing medical errors, and lowering medical costs. As a result, the EMR has produced a parallel growth of digitized clinical data, an important medical resource. Clinical data extracted from EMRs have helped health-care professionals support their decisions and have also aided biomedical research, clinical trial screening, adverse drug reaction monitoring, and drug–drug interaction assessment. Nevertheless, a major feature of each EMR is the inclusion of a large amount of clinical narrative text, including medical histories, social histories, laboratory studies, progress notes, discharge summaries, nursing and consultation notes, and pathology, radiology, surgery, and medical imaging reports. Such information is often presented in an unstructured format not immediately suitable for computer analysis. In order to best utilize the vast amount of medical information included in the EMR, data have to be properly extracted and encoded into a structured format suitable for predefined templates. Therefore, effective tools and techniques are required to retrieve and organize these huge volumes of clinical narrative text data in order to make this information useful for supporting medical practice, project management, research, and policy-making. Natural language processing (NLP), and more specifically information extraction (IE), is the most popular and useful technique/tools to date. IE, a subdomain of NLP, is aimed at better understanding the human process of language comprehension in order to develop tools and techniques in order to enable computer systems to manipulate natural languages and perform desired tasks [1]. One of the NLP’s major tasks is the extraction of semantic information from text [2]. As a result, large amounts of text can be automatically analyzed by effective extraction tools in order to gather useful information, which can then be represented in a tabular/structured format. In development since the 1950s–1960s [3, 4], the recent literature has reported significant advances in IE, particularly in the last 30 years [5]. Nevertheless, IE has mostly been developed outside of the biomedical domain, being adapted to the biomedical field much later than for other fields. …
Literature
1.
go back to reference Chowdhury G. Natural language processing. Ann Rev Inf Sci Technol. 2003;37:51–89.CrossRef Chowdhury G. Natural language processing. Ann Rev Inf Sci Technol. 2003;37:51–89.CrossRef
3.
go back to reference Weiss SM, Indurkhya N, Zhang T, Damerau FJ. Text Ming: Predictive Methods for Analyzing Unstructured Information. Springer Science + Business Media, Inc. 2005. p 13. ISBN 0-387-95433-3. Weiss SM, Indurkhya N, Zhang T, Damerau FJ. Text Ming: Predictive Methods for Analyzing Unstructured Information. Springer Science + Business Media, Inc. 2005. p 13. ISBN 0-387-95433-3.
4.
go back to reference Sager N, Bross ID, Story G, Bastedo P, Marsh E, Shedd D. Automatic encoding of clinical narrative. Comput Biol Med. 1982;12:43–46.CrossRefPubMed Sager N, Bross ID, Story G, Bastedo P, Marsh E, Shedd D. Automatic encoding of clinical narrative. Comput Biol Med. 1982;12:43–46.CrossRefPubMed
5.
go back to reference Meystre SM, Savova GK, Kipper-Schuler KC, Hurdle JF. Extracting Information from Textual Documents in the Electronic Health Record: A Review of Recent Research. IMIA Yearbook of Medical Informatics. 2008; 128. Meystre SM, Savova GK, Kipper-Schuler KC, Hurdle JF. Extracting Information from Textual Documents in the Electronic Health Record: A Review of Recent Research. IMIA Yearbook of Medical Informatics. 2008; 128.
6.
go back to reference Tolentino HD, Matters MD, Walop W, et al. A UMLS-based spell checker for natural language processing in vaccine safety. BMC Med Inf Decision Making. 2007;7:3.CrossRef Tolentino HD, Matters MD, Walop W, et al. A UMLS-based spell checker for natural language processing in vaccine safety. BMC Med Inf Decision Making. 2007;7:3.CrossRef
7.
go back to reference Heidemann L, Law J, Fontana RJ. A text searching tool to identify patients with idiosyncratic drug-induced liver injury. Dig Dis Sci. (Epub ahead of print). doi:10.1007/s10620-015-3970-8. Heidemann L, Law J, Fontana RJ. A text searching tool to identify patients with idiosyncratic drug-induced liver injury. Dig Dis Sci. (Epub ahead of print). doi:10.​1007/​s10620-015-3970-8.
8.
go back to reference Luo Y, Uzuner O, Szolovits P. Bridging semantics and syntax with graph algorithms—state-of-the-art of extracting biomedical relations. Brief Bioinf. 2016;2016:1–19. Luo Y, Uzuner O, Szolovits P. Bridging semantics and syntax with graph algorithms—state-of-the-art of extracting biomedical relations. Brief Bioinf. 2016;2016:1–19.
9.
go back to reference Aramaki E, Miura Y, Tonoike M, et al. Extraction of adverse drug effects from clinical records. Stud Health Technol Inform.. 2010;160(Pt 1):739–743.PubMed Aramaki E, Miura Y, Tonoike M, et al. Extraction of adverse drug effects from clinical records. Stud Health Technol Inform.. 2010;160(Pt 1):739–743.PubMed
10.
go back to reference Chapman WW, Nadkarni PM, Hirschman L, D’Avolio LW, Savova GK, Uzuner O. Overcoming barriers to NLP for clinical text: the role of shared tasks and the need for additional creative solutions. J Am Med Inform Assoc. 2011;18:5.CrossRef Chapman WW, Nadkarni PM, Hirschman L, D’Avolio LW, Savova GK, Uzuner O. Overcoming barriers to NLP for clinical text: the role of shared tasks and the need for additional creative solutions. J Am Med Inform Assoc. 2011;18:5.CrossRef
Metadata
Title
Identifying Drug-Induced Liver Illness (DILI) with Computerized Information Extraction: No More Dilly-Dallying
Authors
H. Shen
A. Monto
Publication date
01-03-2017
Publisher
Springer US
Published in
Digestive Diseases and Sciences / Issue 3/2017
Print ISSN: 0163-2116
Electronic ISSN: 1573-2568
DOI
https://doi.org/10.1007/s10620-016-4359-z

Other articles of this Issue 3/2017

Digestive Diseases and Sciences 3/2017 Go to the issue
Live Webinar | 27-06-2024 | 18:00 (CEST)

Keynote webinar | Spotlight on medication adherence

Live: Thursday 27th June 2024, 18:00-19:30 (CEST)

WHO estimates that half of all patients worldwide are non-adherent to their prescribed medication. The consequences of poor adherence can be catastrophic, on both the individual and population level.

Join our expert panel to discover why you need to understand the drivers of non-adherence in your patients, and how you can optimize medication adherence in your clinics to drastically improve patient outcomes.

Prof. Kevin Dolgin
Prof. Florian Limbourg
Prof. Anoop Chauhan
Developed by: Springer Medicine
Obesity Clinical Trial Summary

At a glance: The STEP trials

A round-up of the STEP phase 3 clinical trials evaluating semaglutide for weight loss in people with overweight or obesity.

Developed by: Springer Medicine

Highlights from the ACC 2024 Congress

Year in Review: Pediatric cardiology

Watch Dr. Anne Marie Valente present the last year's highlights in pediatric and congenital heart disease in the official ACC.24 Year in Review session.

Year in Review: Pulmonary vascular disease

The last year's highlights in pulmonary vascular disease are presented by Dr. Jane Leopold in this official video from ACC.24.

Year in Review: Valvular heart disease

Watch Prof. William Zoghbi present the last year's highlights in valvular heart disease from the official ACC.24 Year in Review session.

Year in Review: Heart failure and cardiomyopathies

Watch this official video from ACC.24. Dr. Biykem Bozkurt discusses last year's major advances in heart failure and cardiomyopathies.