Literature DB >> 30338478

Comprehensive Word-Level Classification of Screening Mammography Reports Using a Neural Network Sequence Labeling Approach.

Ryan G Short1, John Bralich2, Dave Bogaty2, Nicholas T Befera3.   

Abstract

Radiology reports contain a large amount of potentially valuable unstructured data. Recently, neural networks have been employed to perform classification of radiology reports over a few classes at the document level. The success of neural networks in sequence-labeling problems such as named entity recognition and part of speech tagging suggests that they could be used to classify radiology report text with greater granularity. We employed a neural network architecture to comprehensively classify mammography report text at the word level using a sequence labeling approach. Two radiologists devised a comprehensive classification system for screening mammography reports. Each word in each report was manually categorized by a radiologist into one of 33 categories according to the classification system. Tagged words referencing the same finding were grouped into unique sets. We pre-labeled reports with a rule-based algorithm and then manually edited these annotations for 6705 screening mammography reports (25.1%, 66.8%, and 8.1% BI-RADS 0, 1, and 2, respectively). A combined convolutional and recurrent neural network model was used to label words in each sentence of the individual reports. A siamese recurrent neural network was then used to group findings into sets. Performance of the neural network-based method was compared to a rule-based algorithm and a conditional random field (CRF) model. Global accuracy (percentage of documents where all word tags were predicted correctly) and keyword accuracy (percentage of all words that were labeled correctly, excluding words tagged as unimportant) were calculated on an unseen 519 report test set. Two-tailed t tests were used to assess differences between algorithm performance, and p < 0.05 was used to determine statistical significance. The neural network-based approach showed significantly higher global accuracy compared to both the rule-based algorithm (88.3 vs 57.0%, p < 0.001) and the CRF model (88.3% vs. 75.8%, p < 0.001). The neural network also showed significantly higher keyword level accuracy compared to the rule-based algorithm (95.5% vs. 80.9% p < 0.001) and CRF model (95.5% vs. 76.9%, p < 0.001). We demonstrate the potential of neural networks to accurately perform word-level multilabel classification of free text radiology reports across 33 classes, thus showing the utility of a sequence labeling approach to NLP of radiology reports. We found that a neural network classifier outperforms a rule-based algorithm and a CRF classifier for comprehensive multilabel classification of free text screening mammography reports at the word level. By approaching radiology report classification as a sequence-labeling problem, we demonstrate the ability of neural networks to extract data from free text radiology reports at a level of granularity not previously reported.

Entities:  

Keywords:  Deep learning; NLP; Natural language processing; Radiology reporting

Mesh:

Year:  2019        PMID: 30338478      PMCID: PMC6737114          DOI: 10.1007/s10278-018-0141-4

Source DB:  PubMed          Journal:  J Digit Imaging        ISSN: 0897-1889            Impact factor:   4.056


  10 in total

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Authors:  Tianrun Cai; Andreas A Giannopoulos; Sheng Yu; Tatiana Kelil; Beth Ripley; Kanako K Kumamaru; Frank J Rybicki; Dimitrios Mitsouras
Journal:  Radiographics       Date:  2016 Jan-Feb       Impact factor: 5.333

2.  Characterization of Change and Significance for Clinical Findings in Radiology Reports Through Natural Language Processing.

Authors:  Saeed Hassanpour; Graham Bay; Curtis P Langlotz
Journal:  J Digit Imaging       Date:  2017-06       Impact factor: 4.056

Review 3.  Natural Language Processing in Radiology: A Systematic Review.

Authors:  Ewoud Pons; Loes M M Braun; M G Myriam Hunink; Jan A Kors
Journal:  Radiology       Date:  2016-05       Impact factor: 11.105

4.  Radiology report annotation using intelligent word embeddings: Applied to multi-institutional chest CT cohort.

Authors:  Imon Banerjee; Matthew C Chen; Matthew P Lungren; Daniel L Rubin
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5.  Deep Learning to Classify Radiology Free-Text Reports.

Authors:  Matthew C Chen; Robyn L Ball; Lingyao Yang; Nathaniel Moradzadeh; Brian E Chapman; David B Larson; Curtis P Langlotz; Timothy J Amrhein; Matthew P Lungren
Journal:  Radiology       Date:  2017-11-13       Impact factor: 11.105

6.  Radiologic reporting: structure.

Authors:  P J Friedman
Journal:  AJR Am J Roentgenol       Date:  1983-01       Impact factor: 3.959

7.  Integrating Natural Language Processing and Machine Learning Algorithms to Categorize Oncologic Response in Radiology Reports.

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Journal:  J Digit Imaging       Date:  2018-04       Impact factor: 4.056

8.  Patient-Centered Radiology Reporting: Using Online Crowdsourcing to Assess the Effectiveness of a Web-Based Interactive Radiology Report.

Authors:  Ryan G Short; Dana Middleton; Nicholas T Befera; Raj Gondalia; Tina D Tailor
Journal:  J Am Coll Radiol       Date:  2017-11       Impact factor: 5.532

9.  The "open letter": radiologists' reports in the era of patient web portals.

Authors:  Michael A Bruno; Jonelle M Petscavage-Thomas; Michael J Mohr; Sigall K Bell; Stephen D Brown
Journal:  J Am Coll Radiol       Date:  2014-05-16       Impact factor: 5.532

10.  Temporal bone radiology report classification using open source machine learning and natural langue processing libraries.

Authors:  Aaron J Masino; Robert W Grundmeier; Jeffrey W Pennington; John A Germiller; E Bryan Crenshaw
Journal:  BMC Med Inform Decis Mak       Date:  2016-06-06       Impact factor: 2.796

  10 in total
  3 in total

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Journal:  Hepatol Int       Date:  2021-07-15       Impact factor: 6.047

2.  A systematic review of natural language processing applied to radiology reports.

Authors:  Arlene Casey; Emma Davidson; Michael Poon; Hang Dong; Daniel Duma; Andreas Grivas; Claire Grover; Víctor Suárez-Paniagua; Richard Tobin; William Whiteley; Honghan Wu; Beatrice Alex
Journal:  BMC Med Inform Decis Mak       Date:  2021-06-03       Impact factor: 2.796

3.  Multi-label annotation of text reports from computed tomography of the chest, abdomen, and pelvis using deep learning.

Authors:  Vincent M D'Anniballe; Fakrul Islam Tushar; Khrystyna Faryna; Songyue Han; Maciej A Mazurowski; Geoffrey D Rubin; Joseph Y Lo
Journal:  BMC Med Inform Decis Mak       Date:  2022-04-15       Impact factor: 3.298

  3 in total

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