Laboratory phase‐contrast nanotomography of unstained Bombus terrestris compound eyes
Romell, J., Jie, V. W., Miettinen, A., Baird, E., & Hertz, H. M. (2021). Laboratory phase‐contrast nanotomography of unstained Bombus terrestris compound eyes. Journal of Microscopy, 283(1), 29-40. https://doi.org/10.1111/jmi.13005
Julkaistu sarjassa
Journal of MicroscopyPäivämäärä
2021Tekijänoikeudet
© 2021 the Authors
Imaging the visual systems of bumblebees and other pollinating insects may increase understanding of their dependence on specific habitats and how they will be affected by climate change. Current high-resolution imaging methods are either limited to two dimensions (light- and electron microscopy) or have limited access (synchrotron radiation x-ray tomography). For x-ray imaging, heavy metal stains are often used to increase contrast. Here, we present micron-resolution imaging of compound eyes of buff-tailed bumblebees (Bombus terrestris) using a table-top x-ray nanotomography (nano-CT) system. By propagation-based phase-contrast imaging, the use of stains was avoided and the microanatomy could more accurately be reconstructed than in samples stained with phosphotungstic acid or osmium tetroxide. The findings in the nano-CT images of the compound eye were confirmed by comparisons with light- and transmission electron microscopy of the same sample and finally, comparisons to synchrotron radiation tomography as well as to a commercial micro-CT system were done.
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WileyISSN Hae Julkaisufoorumista
0022-2720Asiasanat
Julkaisu tutkimustietojärjestelmässä
https://converis.jyu.fi/converis/portal/detail/Publication/89790320
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We acknowledge the generous funding of the Knut and Alice Wallenberg foundation. This project was supported in part by the Swedish Research Council grant 2018-06238 to EB. We also acknowledge the Paul Scherrer Institut, Villigen, Switzerland for provision of synchrotron radiation beamtime (proposal number: 20190641, to EB) at the TOMCAT beamline X02DA of the SLS. Data acquisition at the Xradia 520 Versa system was supported by a grant to the Stockholm University Brain Imaging Centre (SU FV-5.1.2-1035-15). ...Lisenssi
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