dc.contributor.author
Thies, Mareike
dc.contributor.author
Wagner, Fabian
dc.contributor.author
Huang, Yixing
dc.contributor.author
Gu, Mingxuan
dc.contributor.author
Kling, Lasse
dc.contributor.author
Pechmann, Sabrina
dc.contributor.author
Aust, Oliver
dc.contributor.author
Grüneboom, Anika
dc.contributor.author
Schett, Georg
dc.contributor.author
Christiansen, Silke H.
dc.contributor.author
Maier, Andreas
dc.date.accessioned
2022-11-21T11:25:57Z
dc.date.available
2022-11-21T11:25:57Z
dc.identifier.uri
https://refubium.fu-berlin.de/handle/fub188/36953
dc.identifier.uri
http://dx.doi.org/10.17169/refubium-36666
dc.description.abstract
High‐resolution X‐ray microscopy (XRM) is gaining interest for biological investigations of extremely small‐scale structures. XRM imaging of bones in living mice could provide new insights into the emergence and treatment of osteoporosis by observing osteocyte lacunae, which are holes in the bone of few micrometres in size. Imaging living animals at that resolution, however, is extremely challenging and requires very sophisticated data processing converting the raw XRM detector output into reconstructed images. This paper presents an open‐source, differentiable reconstruction pipeline for XRM data which analytically computes the final image from the raw measurements. In contrast to most proprietary reconstruction software, it offers the user full control over each processing step and, additionally, makes the entire pipeline deep learning compatible by ensuring differentiability. This allows fitting trainable modules both before and after the actual reconstruction step in a purely data‐driven way using the gradient‐based optimizers of common deep learning frameworks. The value of such differentiability is demonstrated by calibrating the parameters of a simple cupping correction module operating on the raw projection images using only a self‐supervisory quality metric based on the reconstructed volume and no further calibration measurements. The retrospective calibration directly improves image quality as it avoids cupping artefacts and decreases the difference in grey values between outer and inner bone by 68–94%. Furthermore, it makes the reconstruction process entirely independent of the XRM manufacturer and paves the way to explore modern deep learning reconstruction methods for arbitrary XRM and, potentially, other flat‐panel computed tomography systems. This exemplifies how differentiable reconstruction can be leveraged in the context of XRM and, hence, is an important step towards the goal of reducing the resolution limit of in vivo bone imaging to the single micrometre domain.
en
dc.format.extent
12 Seiten
dc.rights
This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited.
dc.rights.uri
https://creativecommons.org/licenses/by/4.0/
dc.subject
computed tomography
en
dc.subject
deep learning
en
dc.subject
inverse problems
en
dc.subject
known operator learning
en
dc.subject
reconstruction
en
dc.subject
X‐ray microscopy
en
dc.subject.ddc
500 Naturwissenschaften und Mathematik::530 Physik::530 Physik
dc.title
Calibration by differentiation – Self‐supervised calibration for X‐ray microscopy using a differentiable cone‐beam reconstruction operator
dc.type
Wissenschaftlicher Artikel
dcterms.bibliographicCitation.doi
10.1111/jmi.13125
dcterms.bibliographicCitation.journaltitle
Journal of Microscopy
dcterms.bibliographicCitation.number
2
dcterms.bibliographicCitation.pagestart
81
dcterms.bibliographicCitation.pageend
92
dcterms.bibliographicCitation.volume
287
dcterms.bibliographicCitation.url
https://doi.org/10.1111/jmi.13125
refubium.affiliation
Physik
refubium.resourceType.isindependentpub
no
dcterms.accessRights.openaire
open access
dcterms.isPartOf.eissn
1365-2818
refubium.resourceType.provider
DeepGreen