Author:
Mitate Eiji,Inoue Kirin,Sato Retsushi,Shimomoto Youichi,Ohba Seigo,Ogata Kinuko,Sakai Tomoya,Ohno Jun,Yamamoto Ikuo,Asahina Izumi
Abstract
Abstract
Background
We aimed to develop an artificial intelligence (AI)-assisted oral cytology method, similar to cervical cytology. We focused on the detection of cell nuclei because the ratio of cell nuclei to cytoplasm increases with increasing cell malignancy. As an initial step in the development of AI-assisted cytology, we investigated two methods for the automatic detection of cell nuclei in blue-stained cells in cytopreparation images.
Methods
We evaluated the usefulness of the sliding window method (SWM) and mask region-based convolutional neural network (Mask-RCNN) in identifying the cell nuclei in oral cytopreparation images. Thirty cases of liquid-based oral cytology were analyzed. First, we performed the SWM by dividing each image into 96 × 96 pixels. Overall, 591 images with or without blue-stained cell nuclei were prepared as the training data and 197 as the test data (total: 1,576 images). Next, we performed the Mask-RCNN by preparing 130 images of Class II and III lesions and creating mask images showing cell regions based on these images.
Results
Using the SWM method, the highest detection rate for blue-stained cells in the evaluation group was 0.9314. For Mask-RCNN, 37 cell nuclei were identified, and 1 cell nucleus was identified as a non-nucleus after 40 epochs (error rate:0.027).
Conclusions
Mask-RCNN is more accurate than SWM in identifying the cell nuclei. If the blue-stained cell nuclei can be correctly identified automatically, the entire cell morphology can be grasped faster, and the diagnostic performance of cytology can be improved.
Funder
Project Mirai Cancer Research Grants
Nishiyama Dental Academy research grants
JSPS KAKENHI
Publisher
Springer Science and Business Media LLC
Subject
General Medicine,Histology,Pathology and Forensic Medicine
Reference15 articles.
1. Borkowski AA, Viswanadhan NA, Thomas LB, Guzman RD, Deland LA, Mastorides SM. Using artificial intelligence for COVID-19 chest X-ray diagnosis. Fed Pract. 2020;37:398–404. https://doi.org/10.12788/fp.0045.
2. Bao H, Bi H, Zhang X, Zhao Y, Dong Y, Luo X, et al. Artificial intelligence assisted cytology for detection of cervical intraepithelial neoplasia or invasive cancer: a multicenter, clinical-based, observational study. Gynecol Oncol. 2020;159:171–8. https://doi.org/10.1016/j.ygyno.2020.07.099.
3. Cancer registry and statistics. Japan: Cancer Information Service, National Cancer Center (Vital Statistics of Japan).
4. Cheng M-M, Liu Y, Lin W-Y, Zhang Z, Rosin PL, Torr PHS. BING: Binarized Normed Gradients for objectness estimation at 300fps. Comp Vis Media. 2019;5:3–20. https://doi.org/10.1007/s41095-018-0120-1.
5. Viola P, Jones M. Robust real-time object detection. In: Second International Workshop on statical and computational theories of vision – modeling, learning, computing and sampling. 2001.
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