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Feasibility Study on Automatic Interpretation of Radiation Dose Using Deep Learning Technique for Dicentric Chromosome Assay.

Authors :
Jang S
Shin SG
Lee MJ
Han S
Choi CH
Kim S
Cho WS
Kim SH
Kang YR
Jo W
Jeong S
Oh S
Source :
Radiation research [Radiat Res] 2021 Feb 01; Vol. 195 (2), pp. 163-172.
Publication Year :
2021

Abstract

The interpretation of radiation dose is an important procedure for both radiological operators and persons who are exposed to background or artificial radiations. Dicentric chromosome assay (DCA) is one of the representative methods of dose estimation that discriminates the aberration in chromosomes modified by radiation. Despite the DCA-based automated radiation dose estimation methods proposed in previous studies, there are still limitations to the accuracy of dose estimation. In this study, a DCA-based automated dose estimation system using deep learning methods is proposed. The system is comprised of three stages. In the first stage, a classifier based on a deep learning technique is used for filtering the chromosome images that are not appropriate for use in distinguishing the chromosome; 99% filtering accuracy was achieved with 2,040 test images. In the second stage, the dicentric rate is evaluated by counting and identifying chromosomes based on the Feature Pyramid Network, which is one of the object detection algorithms based on deep learning architecture. The accuracies of the neural networks for counting and identifying chromosomes were estimated at over 97% and 90%, respectively. In the third stage, dose estimation is conducted using the dicentric rate and the dose-response curve. The accuracies of the system were estimated using two independent samples; absorbed doses ranging from 1- 4 Gy agreed well within a 99% confidential interval showing highest accuracy compared to those in previous studies. The goal of this study was to provide insights towards achieving complete automation of the radiation dose estimation, especially in the event of a large-scale radiation exposure incident.<br /> (©2021 by Radiation Research Society. All rights of reproduction in any form reserved.)

Details

Language :
English
ISSN :
1938-5404
Volume :
195
Issue :
2
Database :
MEDLINE
Journal :
Radiation research
Publication Type :
Academic Journal
Accession number :
33316052
Full Text :
https://doi.org/10.1667/RADE-20-00167.1