1. Streamlining volumetric multi-channel image cytometry using hue-saturation-brightness-based surface creation
- Author
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Michael Poidinger, Yingrou Tan, Lai Guan Ng, Maximilien Evrard, Hong Liang Tey, Immanuel Kwok, Wei Jie Ng, Bernett Lee, Chi Ching Goh, and Jackson LiangYao Li
- Subjects
0301 basic medicine ,Brightness ,genetic structures ,Computer science ,Dynamic imaging ,ComputingMethodologies_IMAGEPROCESSINGANDCOMPUTERVISION ,Medicine (miscellaneous) ,Color space ,General Biochemistry, Genetics and Molecular Biology ,03 medical and health sciences ,0302 clinical medicine ,Computer vision ,lcsh:QH301-705.5 ,Multi channel ,Hue ,integumentary system ,business.industry ,030104 developmental biology ,Workflow ,lcsh:Biology (General) ,Scalability ,Image Cytometry ,Artificial intelligence ,General Agricultural and Biological Sciences ,business ,030217 neurology & neurosurgery - Abstract
Image cytometry is the process of converting image data to flow cytometry-style plots, and it usually requires computer-aided surface creation to extract out statistics for cells or structures. One way of dealing with structures stained with multiple markers in three-dimensional images, is carrying out multiple rounds of channel co-localization and image masking before surface creation, which is cumbersome and laborious. We propose the application of the hue-saturation-brightness color space to streamline this process, which produces complete surfaces, and allows the user to have a global view of the data before flexibly defining cell subsets. Spectral compensation can also be performed after surface creation to accurately resolve different signals. We demonstrate the utility of this workflow in static and dynamic imaging datasets of a needlestick injury on the mouse ear, and we believe this scalable and intuitive approach will improve the ease of performing histocytometry on biological samples.
- Published
- 2018
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