Convolutional Neural Network for Segmentation of Single Cell Gel Electrophoresis Assay
- Daniel Ruz-Suarezc(Author),
- Anabel Martin-Gonzalezc(Author),
- Carlos Brito-Loezac(Author),
- ,
- ,
- cUniversidad Autonoma de Yucatan
Publication Information
Output type
Original language
EnglishPages from-to (Number of pages)
Pages 57-68 (12 pages)Publication milestones
- Published - 01/01/2022
Publication status
Publisher
Springer Science and Business Media Deutschland GmbHPublication series
- Publication series name: Communications in Computer and Information Science
ISSN (Print): 1865-0929
ISSN (Electronic): 1865-0937
Volume: 1569 CCIS
ISBN (Print)
9783030984564External Publication IDs
- Scopus: 85127923456
Host publication title
Intelligent Computing Systems - 4th International Symposium, ISICS 2022, ProceedingsHost publication editors
- Carlos Brito-Loeza
- Anabel Martin-Gonzalez
- Victor Castañeda-Zeman
- Asad Safi
Abstract
The single cell gel electrophoresis assay, which is also referred to as the comet assay, is a quantitative method by which visual evidence of DNA damage in individual cells may be measured. Since this assay is sensitive and simple to perform, it is widely used in several areas including human biomonitoring, genotoxicology, and ecological monitoring. In the last decades, various computer systems have implemented segmentation algorithms based on traditional threshold techniques rather than efficient deep learning methods to automatically identify cells in comet assay output images. This paper presents a fully convolutional neural network based system, named U-NetComet, to automate comets segmentation, minimizing user interaction and providing reproducible measurements. A comparison of our method with a commercial system has been performed, and results showed that our system is more efficient and reliable.
