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A Convolutional Neural Network Uses Microscopic Images to Differentiate between Mouse and Human Cell Lines and Their Radioresistant Clones

Authors :
Katsutoshi Sato
Hideshi Ishii
Masaki Mori
Kazuhiko Ogawa
Zhihao Li
Keisuke Tamari
Toshihiro Kudo
Daisuke Okuzaki
Ayumu Asai
Masayasu Toratani
Jun Koseki
Taroh Satoh
Daisuke Sakai
Daisuke Motooka
Masamitsu Konno
Yuichiro Doki
Koichi Kawamoto
Source :
Cancer Research. 78:6703-6707
Publication Year :
2018
Publisher :
American Association for Cancer Research (AACR), 2018.

Abstract

Artificial intelligence (AI) trained with a convolutional neural network (CNN) is a recent technological advancement. Previously, several attempts have been made to train AI using medical images for clinical applications. However, whether AI can distinguish microscopic images of mammalian cells has remained debatable. This study assesses the accuracy of image recognition techniques using the CNN to identify microscopic images. We also attempted to distinguish between mouse and human cells and their radioresistant clones. We used phase-contrast microscopic images of radioresistant clones from two cell lines, mouse squamous cell carcinoma NR-S1, and human cervical carcinoma ME-180. We obtained 10,000 images of each of the parental NR-S1 and ME-180 controls as well as radioresistant clones. We trained the CNN called VGG16 using these images and obtained an accuracy of 96%. Features extracted by the trained CNN were plotted using t-distributed stochastic neighbor embedding, and images of each cell line were well clustered. Overall, these findings suggest the utility of image recognition using AI for predicting minute differences among phase-contrast microscopic images of cancer cells and their radioresistant clones. Significance: This study demonstrates rapid and accurate identification of radioresistant tumor cells in culture using artifical intelligence; this should have applications in future preclinical cancer research.

Details

ISSN :
15387445 and 00085472
Volume :
78
Database :
OpenAIRE
Journal :
Cancer Research
Accession number :
edsair.doi.dedup.....aa0c0e16a7e132564f958ef51e988bbf
Full Text :
https://doi.org/10.1158/0008-5472.can-18-0653