Detailed Information on Publication Record
2019
On Generative Modeling of Cell Shape Using 3D GANs
WIESNER, David, Tereza NEČASOVÁ and David SVOBODABasic information
Original name
On Generative Modeling of Cell Shape Using 3D GANs
Authors
WIESNER, David (203 Czech Republic, guarantor, belonging to the institution), Tereza NEČASOVÁ (203 Czech Republic, belonging to the institution) and David SVOBODA (203 Czech Republic, belonging to the institution)
Edition
LNCS 11752. Trento, Image Analysis and Processing – ICIAP 2019, p. 672-682, 11 pp. 2019
Publisher
Springer
Other information
Language
English
Type of outcome
Stať ve sborníku
Field of Study
10201 Computer sciences, information science, bioinformatics
Country of publisher
United States of America
Confidentiality degree
není předmětem státního či obchodního tajemství
Publication form
electronic version available online
References:
Impact factor
Impact factor: 0.402 in 2005
RIV identification code
RIV/00216224:14330/19:00107522
Organization unit
Faculty of Informatics
ISBN
978-3-030-30644-1
ISSN
UT WoS
000562008400059
Keywords in English
Image-based Simulations; 3D GAN; Training Stability; Microscopy Data; Digital Cell Shape
Tags
International impact, Reviewed
Změněno: 11/1/2023 14:24, RNDr. David Wiesner, Ph.D.
Abstract
V originále
The ongoing advancement of deep-learning generative models, showing great interest of the scientific community since the introduction of the generative adversarial networks (GAN), paved the way for generation of realistic data. The utilization of deep learning for the generation of realistic biomedical images allows one to alleviate the constraints of the parametric models, limited by the employed mathematical approximations. Building further upon the laid foundation, the 3D GAN added another dimension, allowing generation of fully 3D volumetric data. In this paper, we present an approach to generating fully 3D volumetric cell masks using GANs. Presented model is able to generate high-quality cell masks with variability matching the real data. Required modifications of the proposed model are presented along with the training dataset, based on 385 real cells captured using the fluorescence microscope. Furthermore, the statistical validation is also presented, allowing to quantitatively assess the quality of data generated by the proposed model.
Links
GA17-05048S, research and development project |
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MUNI/A/1018/2018, interní kód MU |
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