The reporting quality of natural language processing studies: systematic review of studies of radiology reports

Abstract Background Automated language analysis of radiology reports using natural language processing (NLP) can provide valuable information on patients’ health and disease. With its rapid development, NLP studies should have transparent methodology to allow comparison of approaches and reproducibi...

Full description

Bibliographic Details
Main Authors: Emma M. Davidson, Michael T. C. Poon, Arlene Casey, Andreas Grivas, Daniel Duma, Hang Dong, Víctor Suárez-Paniagua, Claire Grover, Richard Tobin, Heather Whalley, Honghan Wu, Beatrice Alex, William Whiteley
Format: Article
Language:English
Published: BMC 2021-10-01
Series:BMC Medical Imaging
Subjects:
Online Access:https://doi.org/10.1186/s12880-021-00671-8
id doaj-1e2f53d1f3f843d18b45553061012a08
record_format Article
spelling doaj-1e2f53d1f3f843d18b45553061012a082021-10-03T11:48:22ZengBMCBMC Medical Imaging1471-23422021-10-0121111310.1186/s12880-021-00671-8The reporting quality of natural language processing studies: systematic review of studies of radiology reportsEmma M. Davidson0Michael T. C. Poon1Arlene Casey2Andreas Grivas3Daniel Duma4Hang Dong5Víctor Suárez-Paniagua6Claire Grover7Richard Tobin8Heather Whalley9Honghan Wu10Beatrice Alex11William Whiteley12Centre for Clinical Brain Sciences, University of EdinburghCentre for Medical Informatics, Usher Institute, University of EdinburghSchool of Literatures, Languages and Cultures (LLC), University of EdinburghSchool of Literatures, Languages and Cultures (LLC), University of EdinburghSchool of Literatures, Languages and Cultures (LLC), University of EdinburghCentre for Medical Informatics, Usher Institute, University of EdinburghCentre for Medical Informatics, Usher Institute, University of EdinburghInstitute for Language, Cognition and Computation, School of Informatics, University of EdinburghInstitute for Language, Cognition and Computation, School of Informatics, University of EdinburghCentre for Clinical Brain Sciences, University of EdinburghHealth Data Research UKSchool of Literatures, Languages and Cultures (LLC), University of EdinburghCentre for Clinical Brain Sciences, University of EdinburghAbstract Background Automated language analysis of radiology reports using natural language processing (NLP) can provide valuable information on patients’ health and disease. With its rapid development, NLP studies should have transparent methodology to allow comparison of approaches and reproducibility. This systematic review aims to summarise the characteristics and reporting quality of studies applying NLP to radiology reports. Methods We searched Google Scholar for studies published in English that applied NLP to radiology reports of any imaging modality between January 2015 and October 2019. At least two reviewers independently performed screening and completed data extraction. We specified 15 criteria relating to data source, datasets, ground truth, outcomes, and reproducibility for quality assessment. The primary NLP performance measures were precision, recall and F1 score. Results Of the 4,836 records retrieved, we included 164 studies that used NLP on radiology reports. The commonest clinical applications of NLP were disease information or classification (28%) and diagnostic surveillance (27.4%). Most studies used English radiology reports (86%). Reports from mixed imaging modalities were used in 28% of the studies. Oncology (24%) was the most frequent disease area. Most studies had dataset size > 200 (85.4%) but the proportion of studies that described their annotated, training, validation, and test set were 67.1%, 63.4%, 45.7%, and 67.7% respectively. About half of the studies reported precision (48.8%) and recall (53.7%). Few studies reported external validation performed (10.8%), data availability (8.5%) and code availability (9.1%). There was no pattern of performance associated with the overall reporting quality. Conclusions There is a range of potential clinical applications for NLP of radiology reports in health services and research. However, we found suboptimal reporting quality that precludes comparison, reproducibility, and replication. Our results support the need for development of reporting standards specific to clinical NLP studies.https://doi.org/10.1186/s12880-021-00671-8Natural language processingRadiology reportsSystematic review
collection DOAJ
language English
format Article
sources DOAJ
author Emma M. Davidson
Michael T. C. Poon
Arlene Casey
Andreas Grivas
Daniel Duma
Hang Dong
Víctor Suárez-Paniagua
Claire Grover
Richard Tobin
Heather Whalley
Honghan Wu
Beatrice Alex
William Whiteley
spellingShingle Emma M. Davidson
Michael T. C. Poon
Arlene Casey
Andreas Grivas
Daniel Duma
Hang Dong
Víctor Suárez-Paniagua
Claire Grover
Richard Tobin
Heather Whalley
Honghan Wu
Beatrice Alex
William Whiteley
The reporting quality of natural language processing studies: systematic review of studies of radiology reports
BMC Medical Imaging
Natural language processing
Radiology reports
Systematic review
author_facet Emma M. Davidson
Michael T. C. Poon
Arlene Casey
Andreas Grivas
Daniel Duma
Hang Dong
Víctor Suárez-Paniagua
Claire Grover
Richard Tobin
Heather Whalley
Honghan Wu
Beatrice Alex
William Whiteley
author_sort Emma M. Davidson
title The reporting quality of natural language processing studies: systematic review of studies of radiology reports
title_short The reporting quality of natural language processing studies: systematic review of studies of radiology reports
title_full The reporting quality of natural language processing studies: systematic review of studies of radiology reports
title_fullStr The reporting quality of natural language processing studies: systematic review of studies of radiology reports
title_full_unstemmed The reporting quality of natural language processing studies: systematic review of studies of radiology reports
title_sort reporting quality of natural language processing studies: systematic review of studies of radiology reports
publisher BMC
series BMC Medical Imaging
issn 1471-2342
publishDate 2021-10-01
description Abstract Background Automated language analysis of radiology reports using natural language processing (NLP) can provide valuable information on patients’ health and disease. With its rapid development, NLP studies should have transparent methodology to allow comparison of approaches and reproducibility. This systematic review aims to summarise the characteristics and reporting quality of studies applying NLP to radiology reports. Methods We searched Google Scholar for studies published in English that applied NLP to radiology reports of any imaging modality between January 2015 and October 2019. At least two reviewers independently performed screening and completed data extraction. We specified 15 criteria relating to data source, datasets, ground truth, outcomes, and reproducibility for quality assessment. The primary NLP performance measures were precision, recall and F1 score. Results Of the 4,836 records retrieved, we included 164 studies that used NLP on radiology reports. The commonest clinical applications of NLP were disease information or classification (28%) and diagnostic surveillance (27.4%). Most studies used English radiology reports (86%). Reports from mixed imaging modalities were used in 28% of the studies. Oncology (24%) was the most frequent disease area. Most studies had dataset size > 200 (85.4%) but the proportion of studies that described their annotated, training, validation, and test set were 67.1%, 63.4%, 45.7%, and 67.7% respectively. About half of the studies reported precision (48.8%) and recall (53.7%). Few studies reported external validation performed (10.8%), data availability (8.5%) and code availability (9.1%). There was no pattern of performance associated with the overall reporting quality. Conclusions There is a range of potential clinical applications for NLP of radiology reports in health services and research. However, we found suboptimal reporting quality that precludes comparison, reproducibility, and replication. Our results support the need for development of reporting standards specific to clinical NLP studies.
topic Natural language processing
Radiology reports
Systematic review
url https://doi.org/10.1186/s12880-021-00671-8
work_keys_str_mv AT emmamdavidson thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT michaeltcpoon thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT arlenecasey thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT andreasgrivas thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT danielduma thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT hangdong thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT victorsuarezpaniagua thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT clairegrover thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT richardtobin thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT heatherwhalley thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT honghanwu thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT beatricealex thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT williamwhiteley thereportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT emmamdavidson reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT michaeltcpoon reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT arlenecasey reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT andreasgrivas reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT danielduma reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT hangdong reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT victorsuarezpaniagua reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT clairegrover reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT richardtobin reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT heatherwhalley reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT honghanwu reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT beatricealex reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
AT williamwhiteley reportingqualityofnaturallanguageprocessingstudiessystematicreviewofstudiesofradiologyreports
_version_ 1716845178210222080