Literature DB >> 36266463

Automatic deep learning-based consolidation/collapse classification in lung ultrasound images for COVID-19 induced pneumonia.

Nabeel Durrani1, Damjan Vukovic2,3, Jeroen van der Burgt4, Maria Antico1,5, Ruud J G van Sloun6, David Canty7,8, Marian Steffens4, Andrew Wang7, Alistair Royse7, Colin Royse7,9, Kavi Haji7, Jason Dowling10, Girija Chetty11, Davide Fontanarosa12,13.   

Abstract

Our automated deep learning-based approach identifies consolidation/collapse in LUS images to aid in the identification of late stages of COVID-19 induced pneumonia, where consolidation/collapse is one of the possible associated pathologies. A common challenge in training such models is that annotating each frame of an ultrasound video requires high labelling effort. This effort in practice becomes prohibitive for large ultrasound datasets. To understand the impact of various degrees of labelling precision, we compare labelling strategies to train fully supervised models (frame-based method, higher labelling effort) and inaccurately supervised models (video-based methods, lower labelling effort), both of which yield binary predictions for LUS videos on a frame-by-frame level. We moreover introduce a novel sampled quaternary method which randomly samples only 10% of the LUS video frames and subsequently assigns (ordinal) categorical labels to all frames in the video based on the fraction of positively annotated samples. This method outperformed the inaccurately supervised video-based method and more surprisingly, the supervised frame-based approach with respect to metrics such as precision-recall area under curve (PR-AUC) and F1 score, despite being a form of inaccurate learning. We argue that our video-based method is more robust with respect to label noise and mitigates overfitting in a manner similar to label smoothing. The algorithm was trained using a ten-fold cross validation, which resulted in a PR-AUC score of 73% and an accuracy of 89%. While the efficacy of our classifier using the sampled quaternary method significantly lowers the labelling effort, it must be verified on a larger consolidation/collapse dataset, our proposed classifier using the sampled quaternary video-based method is clinically comparable with trained experts' performance.
© 2022. The Author(s).

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Year:  2022        PMID: 36266463      PMCID: PMC9584232          DOI: 10.1038/s41598-022-22196-y

Source DB:  PubMed          Journal:  Sci Rep        ISSN: 2045-2322            Impact factor:   4.996


  26 in total

Review 1.  International evidence-based recommendations for point-of-care lung ultrasound.

Authors:  Giovanni Volpicelli; Mahmoud Elbarbary; Michael Blaivas; Daniel A Lichtenstein; Gebhard Mathis; Andrew W Kirkpatrick; Lawrence Melniker; Luna Gargani; Vicki E Noble; Gabriele Via; Anthony Dean; James W Tsung; Gino Soldati; Roberto Copetti; Belaid Bouhemad; Angelika Reissig; Eustachio Agricola; Jean-Jacques Rouby; Charlotte Arbelot; Andrew Liteplo; Ashot Sargsyan; Fernando Silva; Richard Hoppmann; Raoul Breitkreutz; Armin Seibel; Luca Neri; Enrico Storti; Tomislav Petrovic
Journal:  Intensive Care Med       Date:  2012-03-06       Impact factor: 17.440

Review 2.  Types and mechanisms of pulmonary atelectasis.

Authors:  J H Woodring; J C Reed
Journal:  J Thorac Imaging       Date:  1996       Impact factor: 3.000

3.  Automatic Pleural Line Extraction and COVID-19 Scoring From Lung Ultrasound Data.

Authors:  Leonardo Carrer; Elena Donini; Daniele Marinelli; Massimo Zanetti; Federico Mento; Elena Torri; Andrea Smargiassi; Riccardo Inchingolo; Gino Soldati; Libertario Demi; Francesca Bovolo; Lorenzo Bruzzone
Journal:  IEEE Trans Ultrason Ferroelectr Freq Control       Date:  2020-06-29       Impact factor: 2.725

4.  A New Lung Ultrasound Protocol Able to Predict Worsening in Patients Affected by Severe Acute Respiratory Syndrome Coronavirus 2 Pneumonia.

Authors:  Tiziano Perrone; Gino Soldati; Lucia Padovini; Anna Fiengo; Gianluca Lettieri; Umberto Sabatini; Giulia Gori; Federica Lepore; Matteo Garolfi; Ilaria Palumbo; Riccardo Inchingolo; Andrea Smargiassi; Libertario Demi; Elisa Eleonora Mossolani; Francesco Tursi; Catherine Klersy; Antonio Di Sabatino
Journal:  J Ultrasound Med       Date:  2020-11-06       Impact factor: 2.153

5.  Point-of-Care Lung Ultrasound Findings in Patients with COVID-19 Pneumonia.

Authors:  Kosuke Yasukawa; Taro Minami
Journal:  Am J Trop Med Hyg       Date:  2020-06       Impact factor: 2.345

Review 6.  Point-of-care lung ultrasound in intensive care during the COVID-19 pandemic.

Authors:  S Kulkarni; B Down; S Jha
Journal:  Clin Radiol       Date:  2020-05-13       Impact factor: 2.350

Review 7.  Lung ultrasound training: a systematic review of published literature in clinical lung ultrasound training.

Authors:  Pia Iben Pietersen; Kristian Rørbæk Madsen; Ole Graumann; Lars Konge; Bjørn Ulrik Nielsen; Christian Borbjerg Laursen
Journal:  Crit Ultrasound J       Date:  2018-09-03

8.  Impact of point-of-care ultrasound on the hospital length of stay for internal medicine inpatients with cardiopulmonary diagnosis at admission: study protocol of a randomized controlled trial-the IMFCU-1 (Internal Medicine Focused Clinical Ultrasound) study.

Authors:  Ximena Cid; David Canty; Alistair Royse; Andrea B Maier; Douglas Johnson; Doa El-Ansary; Sandy Clarke-Errey; Timothy Fazio; Colin Royse
Journal:  Trials       Date:  2020-01-08       Impact factor: 2.279

9.  Human-to-AI Interrater Agreement for Lung Ultrasound Scoring in COVID-19 Patients.

Authors:  Noreen Fatima; Federico Mento; Alessandro Zanforlin; Andrea Smargiassi; Elena Torri; Tiziano Perrone; Libertario Demi
Journal:  J Ultrasound Med       Date:  2022-07-07       Impact factor: 2.754

10.  Interrater reliability: the kappa statistic.

Authors:  Mary L McHugh
Journal:  Biochem Med (Zagreb)       Date:  2012       Impact factor: 2.313

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