2013
DOI: 10.1002/bit.25115
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Automated method for the rapid and precise estimation of adherent cell culture characteristics from phase contrast microscopy images

Abstract: The quantitative determination of key adherent cell culture characteristics such as confluency, morphology, and cell density is necessary for the evaluation of experimental outcomes and to provide a suitable basis for the establishment of robust cell culture protocols. Automated processing of images acquired using phase contrast microscopy (PCM), an imaging modality widely used for the visual inspection of adherent cell cultures, could enable the non-invasive determination of these characteristics. We present … Show more

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Cited by 137 publications
(129 citation statements)
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“…This was done by calculating the number for cells for 100% confluency and the following wells as 54%, 29%, 15%, 8%, 4%, 2%, 1%, 0.66%, 0.35%, 0.18%, 0.1%. The cells were counted using automated cell counting methods from transmission images at a low magnification(65). These dishes were progressively imaged using FLIM with an interval of 3 days to establish a difference in their lifetime signature with both media depletion and confluency.…”
Section: Resultsmentioning
confidence: 99%
“…This was done by calculating the number for cells for 100% confluency and the following wells as 54%, 29%, 15%, 8%, 4%, 2%, 1%, 0.66%, 0.35%, 0.18%, 0.1%. The cells were counted using automated cell counting methods from transmission images at a low magnification(65). These dishes were progressively imaged using FLIM with an interval of 3 days to establish a difference in their lifetime signature with both media depletion and confluency.…”
Section: Resultsmentioning
confidence: 99%
“…Depending on the bioreactor setup and cell carrier or scaffold design under consideration, this can be attributed to the high technicality and/or cost of direct, online and non-destructive measurement of TE construct CQAs. For example, imaging techniques for real-time bioprocess control in 3D TE scaffolds are limited by the resolved depth of the sample or the lack of label-free techniques (Jaccard et al, 2014;Ward et al, 2013), surface plasmon resonance or mass spectrometry techniques needs specialized setups and have issues with complex culture medium samples (Jacquemart et al, 2008;Weber et al, 2012), while biomass probes are limited to certain cell carrier materials and are unable to distinguish between viable and non-viable cells (Kiviharju et al, 2007).…”
Section: Introductionmentioning
confidence: 99%
“…Another approach for addressing the problem of recognizing cells within densely packed groups is the multi-resolution analysis and maximum-likelihood (MAMLE) [61]. The automated image processing toolbox PHANTAST was developed with open-source code for MATLAB and ImageJ and as such may enable a wide range of utilizations for image processing pipelines [62]. PHANTAST was tested on chinese hamster ovary (CHO) cells, human neuroblastoma, and embryonic mouse stem cells and obtains accurate information on culture confluency, cell density, and the morphology of cellular objects.…”
Section: Computational Approaches To Classify Shape Profiles Into Biomentioning
confidence: 99%