Ultrasound in point-of-care lung assessment is becoming increasingly relevant. This is further reinforced in the context of the COVID-19 pandemic, where rapid decisions on the lung state must be made for staging and monitoring purposes. The lung structural changes due to severe COVID-19 modify the way ultrasound propagates in the parenchyma. This is reflected by changes in the appearance of the lung ultrasound images. In abnormal lungs, vertical artifacts known as B-lines appear and can evolve into white lung patterns in the more severe cases. Currently, these artifacts are assessed by trained physicians, and the diagnosis is qualitative and operator dependent. In this article, an automatic segmentation method using a convolutional neural network is proposed to automatically stage the progression of the disease. 1863 B-mode images from 203 videos obtained from 14 asymptomatic individual,14 confirmed COVID-19 cases, and 4 suspected COVID-19 cases were used. Signs of lung damage, such as the presence and extent of B-lines and white lung areas, are manually segmented and scored from zero to three (most severe). These manually scored images are considered as ground truth. Different test-training strategies are evaluated in this study. The results shed light on the efficient approaches and common challenges associated with automatic segmentation methods.
Skip Nav Destination
Investigating training-test data splitting strategies for automated segmentation and scoring of COVID-19 lung ultrasound imagesa)
Article navigation
December 2021
December 06 2021
Investigating training-test data splitting strategies for automated segmentation and scoring of COVID-19 lung ultrasound imagesa)
Special Collection:
Lung Ultrasound
Roshan Roshankhah
;
Roshan Roshankhah
b)
1
Department of Mechanical and Aerospace Engineering, North Carolina State University
, Raleigh, North Carolina 27606, USA
Search for other works by this author on:
Yasamin Karbalaeisadegh;
Yasamin Karbalaeisadegh
2
Georgia Institute of Technology
, Atlanta, Georgia 30332, USA
Search for other works by this author on:
Hastings Greer;
Hastings Greer
3
Kitware Inc.
, Clifton Park, New York 12065, USA
Search for other works by this author on:
Federico Mento
;
Federico Mento
c)
4
Ultrasound Laboratory, University of Trento
, Trento, Italy
Search for other works by this author on:
Gino Soldati;
Gino Soldati
5
Azienda USL Toscana nord ovest Sede di Lucca, Diagnostic and Interventional Ultrasound Unit Lucca
, Toscana, Italy
Search for other works by this author on:
Andrea Smargiassi;
Andrea Smargiassi
6
Pulmonary Medicine Unit, Department of Medical and Surgical Sciences, Fondazione Policlinico Universitario Agostino Gemelli IRCCS. Roma
, Lazio, Italy
Search for other works by this author on:
Riccardo Inchingolo;
Riccardo Inchingolo
6
Pulmonary Medicine Unit, Department of Medical and Surgical Sciences, Fondazione Policlinico Universitario Agostino Gemelli IRCCS. Roma
, Lazio, Italy
Search for other works by this author on:
Tiziano Perrone;
Tiziano Perrone
8
Department of Internal Medicine, Istituto di Ricovero e Cura a Carattere Scientifico
, San Matteo, Pavia, Italy
Search for other works by this author on:
Stephen Aylward;
Stephen Aylward
3
Kitware Inc.
, Clifton Park, New York 12065, USA
Search for other works by this author on:
Libertario Demi
;
Libertario Demi
d)
4
Ultrasound Laboratory, University of Trento
, Trento, Italy
Search for other works by this author on:
Marie Muller
Marie Muller
e)
1
Department of Mechanical and Aerospace Engineering, North Carolina State University
, Raleigh, North Carolina 27606, USA
Search for other works by this author on:
J. Acoust. Soc. Am. 150, 4118–4127 (2021)
Article history
Received:
March 15 2021
Accepted:
September 23 2021
Citation
Roshan Roshankhah, Yasamin Karbalaeisadegh, Hastings Greer, Federico Mento, Gino Soldati, Andrea Smargiassi, Riccardo Inchingolo, Elena Torri, Tiziano Perrone, Stephen Aylward, Libertario Demi, Marie Muller; Investigating training-test data splitting strategies for automated segmentation and scoring of COVID-19 lung ultrasound images. J. Acoust. Soc. Am. 1 December 2021; 150 (6): 4118–4127. https://doi.org/10.1121/10.0007272
Download citation file:
Sign in
Don't already have an account? Register
Sign In
You could not be signed in. Please check your credentials and make sure you have an active account and try again.
Sign in via your Institution
Sign in via your InstitutionPay-Per-View Access
$40.00
Citing articles via
Related Content
Automated segmentation and scoring of lung ultrasound images of COVID-19 patients
J Acoust Soc Am (October 2020)
Deep learning applied to lung ultrasound videos for scoring COVID-19 patients: A multicenter study
J. Acoust. Soc. Am. (May 2021)
Lung ultrasound and high-resolution CT-scan of the chest for COVID-19 pneumonia
J Acoust Soc Am (October 2020)
A non-convex regularization based line artefact quantification method in lung ultrasound imagery for pulmonary disease evaluation
J Acoust Soc Am (October 2020)
Early detection of powdery mildew (Podosphaera xanthii) on cucumber leaves based on visible and near-infrared spectroscopy
AIP Conference Proceedings (February 2019)