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A combined imaging, deformation and registration methodology for predicting respirator fitting

A combined imaging, deformation and registration methodology for predicting respirator fitting
A combined imaging, deformation and registration methodology for predicting respirator fitting

N95/FFP3 respirators have been critical to protect healthcare workers and their patients from the transmission of COVID-19. However, these respirators are characterised by a limited range of size and geometry, which are often associated with fitting issues in particular sub-groups of gender and ethnicities. This study describes a novel methodology which combines magnetic resonance imaging (MRI) of a cohort of individuals (n = 8), with and without a respirator in-situ, and 3D registration algorithm which predicted the goodness of fit of the respirator. Sensitivity analysis was used to optimise a deformation value for the respirator-face interactions and corroborate with the soft tissue displacements estimated from the MRI images. An association between predicted respirator fitting and facial anthropometrics was then assessed for the cohort.

1932-6203
Caggiari, Silvia
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Keenan, Bethany
cb0d2f90-0d73-4b67-9b60-933b98aa8eaa
Bader, Dan L.
06079726-5aa3-49cd-ad71-402ab4cd3255
Mavrogordato, Mark N.
faedf03d-e357-4ec3-818e-e5ff5368fdf0
Rankin, Kathryn
d9516566-0ad8-473d-b99b-4683c663a2b7
Evans, Sam L.
962f93bd-5378-4002-aeef-787a5dee2f4c
Worsley, Peter R.
6d33aee3-ef43-468d-aef6-86d190de6756
Abdullah, Johari Yap
98c5c808-e83f-4a32-8811-f59277f570d5
Caggiari, Silvia
58f49054-6ca6-429b-b499-49b93357e5ba
Keenan, Bethany
cb0d2f90-0d73-4b67-9b60-933b98aa8eaa
Bader, Dan L.
06079726-5aa3-49cd-ad71-402ab4cd3255
Mavrogordato, Mark N.
faedf03d-e357-4ec3-818e-e5ff5368fdf0
Rankin, Kathryn
d9516566-0ad8-473d-b99b-4683c663a2b7
Evans, Sam L.
962f93bd-5378-4002-aeef-787a5dee2f4c
Worsley, Peter R.
6d33aee3-ef43-468d-aef6-86d190de6756
Abdullah, Johari Yap
98c5c808-e83f-4a32-8811-f59277f570d5

Caggiari, Silvia, Keenan, Bethany, Bader, Dan L., Mavrogordato, Mark N., Rankin, Kathryn, Evans, Sam L. and Worsley, Peter R. , Abdullah, Johari Yap (ed.) (2022) A combined imaging, deformation and registration methodology for predicting respirator fitting. PLoS ONE, 17 (11), [e0277570]. (doi:10.1371/journal.pone.0277570).

Record type: Article

Abstract

N95/FFP3 respirators have been critical to protect healthcare workers and their patients from the transmission of COVID-19. However, these respirators are characterised by a limited range of size and geometry, which are often associated with fitting issues in particular sub-groups of gender and ethnicities. This study describes a novel methodology which combines magnetic resonance imaging (MRI) of a cohort of individuals (n = 8), with and without a respirator in-situ, and 3D registration algorithm which predicted the goodness of fit of the respirator. Sensitivity analysis was used to optimise a deformation value for the respirator-face interactions and corroborate with the soft tissue displacements estimated from the MRI images. An association between predicted respirator fitting and facial anthropometrics was then assessed for the cohort.

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Accepted/In Press date: 30 October 2022
Published date: 11 November 2022
Additional Information: Copyright: © 2022 Caggiari et al. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.

Identifiers

Local EPrints ID: 473159
URI: http://eprints.soton.ac.uk/id/eprint/473159
ISSN: 1932-6203
PURE UUID: f327bb10-863d-407f-ab6b-ed5da80b882c
ORCID for Silvia Caggiari: ORCID iD orcid.org/0000-0002-8928-2141
ORCID for Kathryn Rankin: ORCID iD orcid.org/0000-0002-8458-1038
ORCID for Peter R. Worsley: ORCID iD orcid.org/0000-0003-0145-5042

Catalogue record

Date deposited: 11 Jan 2023 17:36
Last modified: 17 Mar 2024 04:06

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Contributors

Author: Silvia Caggiari ORCID iD
Author: Bethany Keenan
Author: Dan L. Bader
Author: Mark N. Mavrogordato
Author: Kathryn Rankin ORCID iD
Author: Sam L. Evans
Editor: Johari Yap Abdullah

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