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Published in: Emergency Radiology 3/2021

01-06-2021 | COVID-19 | Original Article

Automated processing of social media content for radiologists: applied deep learning to radiological content on twitter during COVID-19 pandemic

Authors: Shikhar Khurana, Rohan Chopra, Bharti Khurana

Published in: Emergency Radiology | Issue 3/2021

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Abstract

Purpose

The purpose of this study was to develop an automated process to analyze multimedia content on Twitter during the COVID-19 outbreak and classify content for radiological significance using deep learning (DL).

Materials and methods

Using Twitter search features, all tweets containing keywords from both “radiology” and “COVID-19” were collected for the period January 01, 2020 up to April 24, 2020. The resulting dataset comprised of 8354 tweets. Images were classified as (i) images with text (ii) radiological content (e.g., CT scan snapshots, X-ray images), and (iii) non-medical content like personal images or memes. We trained our deep learning model using Convolutional Neural Networks (CNN) on training dataset of 1040 labeled images drawn from all three classes. We then trained another DL classifier for segmenting images into categories based on human anatomy. All software used is open-source and adapted for this research. The diagnostic performance of the algorithm was assessed by comparing results on a test set of 1885 images.

Results

Our analysis shows that in COVID-19 related tweets on radiology, nearly 32% had textual images, another 24% had radiological content, and 44% were not of radiological significance. Our results indicated a 92% accuracy in classifying images originally labeled as chest X-ray or chest CT and a nearly 99% accurate classification of images containing medically relevant text. With larger training dataset and algorithmic tweaks, the accuracy can be further improved.

Conclusion

Applying DL on rich textual images and other metadata in tweets we can process and classify content for radiological significance in real time.
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Literature
7.
go back to reference Newman N (n.d.) Reuters Institute Digital News Report 2020:112 Newman N (n.d.) Reuters Institute Digital News Report 2020:112
9.
go back to reference Chen, T., Lu, D., Kan, M.-Y., & Cui, P. (2013). Understanding and classifying image tweets. In Proceedings of the 21st ACM international conference on Multimedia - MM ‘13 (pp. 781–784). Presented at the 21st ACM international conference, Barcelona, Spain: ACM Press. https://doi.org/10.1145/2502081.2502203 Chen, T., Lu, D., Kan, M.-Y., & Cui, P. (2013). Understanding and classifying image tweets. In Proceedings of the 21st ACM international conference on Multimedia - MM ‘13 (pp. 781–784). Presented at the 21st ACM international conference, Barcelona, Spain: ACM Press. https://​doi.​org/​10.​1145/​2502081.​2502203
12.
go back to reference Gonzalez SM, Gadbury-Amyot CC (2016) Using Twitter for teaching and learning in an oral and maxillofacial radiology course. J Dent Educ 80(2):149–155CrossRef Gonzalez SM, Gadbury-Amyot CC (2016) Using Twitter for teaching and learning in an oral and maxillofacial radiology course. J Dent Educ 80(2):149–155CrossRef
Metadata
Title
Automated processing of social media content for radiologists: applied deep learning to radiological content on twitter during COVID-19 pandemic
Authors
Shikhar Khurana
Rohan Chopra
Bharti Khurana
Publication date
01-06-2021
Publisher
Springer International Publishing
Keyword
COVID-19
Published in
Emergency Radiology / Issue 3/2021
Print ISSN: 1070-3004
Electronic ISSN: 1438-1435
DOI
https://doi.org/10.1007/s10140-020-01885-z

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