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Quantitative method for estimating stain density in electron microscopy of conventionally prepared biological specimens.


ABSTRACT: Stain density is an important parameter for optimising the quality of ultrastructural data obtained from several types of 3D electron microscopy techniques, including serial block-face electron microscopy (SBEM), and focused ion beam scanning electron microscopy (FIB-SEM). Here, we show how some straightforward measurements in the TEM can be used to determine the stain density based on a simple expression that we derive. Numbers of stain atoms per unit volume are determined from the measured ratio of the bright-field intensities from regions of the specimen that contain both pure embedding material and the embedded biological structures of interest. The determination only requires knowledge of the section thickness, which can either be estimated from the microtome setting, or from low-dose electron tomography, and the elastic scattering cross section for the heavy atoms used to stain the specimen. The method is tested on specimens of embedded blood platelets, brain tissue and liver tissue.

SUBMITTER: Fera A 

PROVIDER: S-EPMC7530943 | biostudies-literature | 2020 Feb

REPOSITORIES: biostudies-literature

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Quantitative method for estimating stain density in electron microscopy of conventionally prepared biological specimens.

Fera A A   He Q Q   Zhang G G   Leapman R D RD  

Journal of microscopy 20200220 2


Stain density is an important parameter for optimising the quality of ultrastructural data obtained from several types of 3D electron microscopy techniques, including serial block-face electron microscopy (SBEM), and focused ion beam scanning electron microscopy (FIB-SEM). Here, we show how some straightforward measurements in the TEM can be used to determine the stain density based on a simple expression that we derive. Numbers of stain atoms per unit volume are determined from the measured rat  ...[more]

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