TY - JOUR
T1 - Automatic breast carcinoma detection in histopathological micrographs based on Single Shot Multibox Detector
AU - Yamaguchi, Mio
AU - Sasaki, Tomoaki
AU - Uemura, Kodai
AU - Tajima, Yuichiro
AU - Kato, Sho
AU - Takagi, Kiyoshi
AU - Yamazaki, Yuto
AU - Saito-Koyama, Ryoko
AU - Inoue, Chihiro
AU - Kawaguchi, Kurara
AU - Soma, Tomoya
AU - Miyata, Toshio
AU - Suzuki, Takashi
N1 - Funding Information:
We would like to thank the volunteer medical school students (Freeha Khalid, Shiori Fujisawa, Reina Taguchi, Takumi Fukasawa and Kento Iida) who have been participated in our study and Enago (www.enago.jp) for the English language review.
Publisher Copyright:
© 2022 The Authors
PY - 2022/1
Y1 - 2022/1
N2 - Background: A diagnosis with histological classification by pathologists is very important for appropriate treatments to improve the prognosis of patients with breast cancer. However, the number of pathologists is limited, and assisting the pathological diagnosis by artificial intelligence becomes very important. Here, we presented an automatic breast lesions detection model using microscopic histopathological images based on a Single Shot Multibox Detector (SSD) for the first time and evaluated its significance in assisting the diagnosis. Methods: We built the data set and trained the SSD model with 1361 microscopic images and evaluated using 315 images. Pathologists and medical students diagnosed the images with or without the assistance of the model to investigate the significance of our model in assisting the diagnosis. Results: The model achieved 88.3% and 90.5% diagnostic accuracies in 3-class (benign, non-invasive carcinoma, or invasive carcinoma) or 2-class (benign or malignant) classification tasks, respectively, and the mean intersection over union was 0.59. Medical students achieved a remarkably higher diagnostic accuracy score (average 84.7%) with the assistance of the model compared to those without assistance (average 67.4%). Some people diagnosed images in a short time using the assistance of the model (shorten by average 6.4 min) while others required a longer time (extended by 7.2 min). Conclusion: We presented the automatic breast lesions detection method at high speed using histopathological micrographs. The present system may conveniently support the histological diagnosis by pathologists in laboratories.
AB - Background: A diagnosis with histological classification by pathologists is very important for appropriate treatments to improve the prognosis of patients with breast cancer. However, the number of pathologists is limited, and assisting the pathological diagnosis by artificial intelligence becomes very important. Here, we presented an automatic breast lesions detection model using microscopic histopathological images based on a Single Shot Multibox Detector (SSD) for the first time and evaluated its significance in assisting the diagnosis. Methods: We built the data set and trained the SSD model with 1361 microscopic images and evaluated using 315 images. Pathologists and medical students diagnosed the images with or without the assistance of the model to investigate the significance of our model in assisting the diagnosis. Results: The model achieved 88.3% and 90.5% diagnostic accuracies in 3-class (benign, non-invasive carcinoma, or invasive carcinoma) or 2-class (benign or malignant) classification tasks, respectively, and the mean intersection over union was 0.59. Medical students achieved a remarkably higher diagnostic accuracy score (average 84.7%) with the assistance of the model compared to those without assistance (average 67.4%). Some people diagnosed images in a short time using the assistance of the model (shorten by average 6.4 min) while others required a longer time (extended by 7.2 min). Conclusion: We presented the automatic breast lesions detection method at high speed using histopathological micrographs. The present system may conveniently support the histological diagnosis by pathologists in laboratories.
KW - Artificial intelligence
KW - Breast cancer
KW - Deep learning
KW - Pathology
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U2 - 10.1016/j.jpi.2022.100147
DO - 10.1016/j.jpi.2022.100147
M3 - Article
AN - SCOPUS:85139075205
SN - 2229-5089
VL - 13
JO - Journal of Pathology Informatics
JF - Journal of Pathology Informatics
M1 - 100147
ER -