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Phenotypic feature quantification of patient derived 3D cancer spheroids in fluorescence microscopy image

Title
Phenotypic feature quantification of patient derived 3D cancer spheroids in fluorescence microscopy image
Authors
Kang M.-S.Rhee S.-M.Seo J.-H.Kim M.-H.
Ewha Authors
김명희
SCOPUS Author ID
김명희scopus
Issue Date
2017
Journal Title
Progress in Biomedical Optics and Imaging - Proceedings of SPIE
ISSN
1605-7422JCR Link
Citation
Progress in Biomedical Optics and Imaging - Proceedings of SPIE vol. 10137
Keywords
High content screeningImage-based phenotypePatient-derivedQuantification
Publisher
SPIE
Indexed
SCOPUS scopus
Document Type
Conference Paper
Abstract
Patients' responses to a drug differ at the cellular level. Here, we present an image-based cell phenotypic feature quantification method for predicting the responses of patient-derived glioblastoma cells to a particular drug. We used high-content imaging to understand the features of patient-derived cancer cells. A 3D spheroid culture formation resembles the in vivo environment more closely than 2D adherent cultures do, and it allows for the observation of cellular aggregate characteristics. However, cell analysis at the individual level is more challenging. In this paper, we demonstrate image-based phenotypic screening of the nuclei of patient-derived cancer cells. We first stitched the images of each well of the 384-well plate with the same state. We then used intensity information to detect the colonies. The nuclear intensity and morphological characteristics were used for the segmentation of individual nuclei. Next, we calculated the position of each nucleus that is appeal of the spatial pattern of cells in the well environment. Finally, we compared the results obtained using 3D spheroid culture cells with those obtained using 2D adherent culture cells from the same patient being treated with the same drugs. This technique could be applied for image-based phenotypic screening of cells to determine the patient's response to the drug. © 2017 SPIE.
DOI
10.1117/12.2254337
ISBN
9781510607194
Appears in Collections:
인공지능대학 > 컴퓨터공학과 > Journal papers
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