Literature DB >> 29135365

Deep Learning to Classify Radiology Free-Text Reports.

Matthew C Chen1, Robyn L Ball1, Lingyao Yang1, Nathaniel Moradzadeh1, Brian E Chapman1, David B Larson1, Curtis P Langlotz1, Timothy J Amrhein1, Matthew P Lungren1.   

Abstract

Purpose To evaluate the performance of a deep learning convolutional neural network (CNN) model compared with a traditional natural language processing (NLP) model in extracting pulmonary embolism (PE) findings from thoracic computed tomography (CT) reports from two institutions. Materials and Methods Contrast material-enhanced CT examinations of the chest performed between January 1, 1998, and January 1, 2016, were selected. Annotations by two human radiologists were made for three categories: the presence, chronicity, and location of PE. Classification of performance of a CNN model with an unsupervised learning algorithm for obtaining vector representations of words was compared with the open-source application PeFinder. Sensitivity, specificity, accuracy, and F1 scores for both the CNN model and PeFinder in the internal and external validation sets were determined. Results The CNN model demonstrated an accuracy of 99% and an area under the curve value of 0.97. For internal validation report data, the CNN model had a statistically significant larger F1 score (0.938) than did PeFinder (0.867) when classifying findings as either PE positive or PE negative, but no significant difference in sensitivity, specificity, or accuracy was found. For external validation report data, no statistical difference between the performance of the CNN model and PeFinder was found. Conclusion A deep learning CNN model can classify radiology free-text reports with accuracy equivalent to or beyond that of an existing traditional NLP model. © RSNA, 2017 Online supplemental material is available for this article.

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Year:  2017        PMID: 29135365     DOI: 10.1148/radiol.2017171115

Source DB:  PubMed          Journal:  Radiology        ISSN: 0033-8419            Impact factor:   11.105


  37 in total

1.  A Roadmap for Foundational Research on Artificial Intelligence in Medical Imaging: From the 2018 NIH/RSNA/ACR/The Academy Workshop.

Authors:  Curtis P Langlotz; Bibb Allen; Bradley J Erickson; Jayashree Kalpathy-Cramer; Keith Bigelow; Tessa S Cook; Adam E Flanders; Matthew P Lungren; David S Mendelson; Jeffrey D Rudie; Ge Wang; Krishna Kandarpa
Journal:  Radiology       Date:  2019-04-16       Impact factor: 11.105

2.  Integrity of clinical information in computerized order requisitions for diagnostic imaging.

Authors:  Ronilda Lacson; Romeo Laroya; Aijia Wang; Neena Kapoor; Daniel I Glazer; Atul Shinagare; Ivan K Ip; Sameer Malhotra; Keith Hentel; Ramin Khorasani
Journal:  J Am Med Inform Assoc       Date:  2018-12-01       Impact factor: 4.497

3.  Deep-learning classification using convolutional neural network for evaluation of maxillary sinusitis on panoramic radiography.

Authors:  Makoto Murata; Yoshiko Ariji; Yasufumi Ohashi; Taisuke Kawai; Motoki Fukuda; Takuma Funakoshi; Yoshitaka Kise; Michihito Nozawa; Akitoshi Katsumata; Hiroshi Fujita; Eiichiro Ariji
Journal:  Oral Radiol       Date:  2018-12-11       Impact factor: 1.852

Review 4.  Technical and clinical overview of deep learning in radiology.

Authors:  Daiju Ueda; Akitoshi Shimazaki; Yukio Miki
Journal:  Jpn J Radiol       Date:  2018-12-01       Impact factor: 2.374

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

Authors:  Ryan G Short; John Bralich; Dave Bogaty; Nicholas T Befera
Journal:  J Digit Imaging       Date:  2019-10       Impact factor: 4.056

6.  Identifying incidental findings from radiology reports of trauma patients: An evaluation of automated feature representation methods.

Authors:  Gaurav Trivedi; Charmgil Hong; Esmaeel R Dadashzadeh; Robert M Handzel; Harry Hochheiser; Shyam Visweswaran
Journal:  Int J Med Inform       Date:  2019-06-06       Impact factor: 4.046

7.  Automated Detection of Radiology Reports that Require Follow-up Imaging Using Natural Language Processing Feature Engineering and Machine Learning Classification.

Authors:  Robert Lou; Darco Lalevic; Charles Chambers; Hanna M Zafar; Tessa S Cook
Journal:  J Digit Imaging       Date:  2020-02       Impact factor: 4.056

8.  Performance Comparison of Individual and Ensemble CNN Models for the Classification of Brain 18F-FDG-PET Scans.

Authors:  Tomomi Nobashi; Claudia Zacharias; Jason K Ellis; Valentina Ferri; Mary Ellen Koran; Benjamin L Franc; Andrei Iagaru; Guido A Davidzon
Journal:  J Digit Imaging       Date:  2020-04       Impact factor: 4.056

9.  Deep Learning to Estimate RECIST in Patients with NSCLC Treated with PD-1 Blockade.

Authors:  Kathryn C Arbour; Anh Tuan Luu; Jia Luo; Justin F Gainor; Regina Barzilay; Matthew D Hellmann; Hira Rizvi; Andrew J Plodkowski; Mustafa Sakhi; Kevin B Huang; Subba R Digumarthy; Michelle S Ginsberg; Jeffrey Girshman; Mark G Kris; Gregory J Riely; Adam Yala
Journal:  Cancer Discov       Date:  2020-09-21       Impact factor: 39.397

10.  Preparing Medical Imaging Data for Machine Learning.

Authors:  Martin J Willemink; Wojciech A Koszek; Cailin Hardell; Jie Wu; Dominik Fleischmann; Hugh Harvey; Les R Folio; Ronald M Summers; Daniel L Rubin; Matthew P Lungren
Journal:  Radiology       Date:  2020-02-18       Impact factor: 11.105

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