TY - JOUR
T1 - Classification of peripheral blood neutrophils using deep learning
AU - Tseng, Tser Rei
AU - Huang, Hsuan Ming
N1 - © 2022 International Society for Advancement of Cytometry.
PY - 2023/4
Y1 - 2023/4
N2 - Deep learning has been used to classify the while blood cells in peripheral blood smears. However, the classification of developing neutrophils is rarely studied. Moreover, it is still unknown whether deep learning can work well on the data coming from different sources. In this study, we therefore investigate the classification performance of deep learning for immature and mature neutrophils. In particular, we used three open-access datasets obtained from different imaging systems: CellaVision DM 96, CellaVision DM 100, and iCELL ME-150. A total of 26,050 images identified by one laboratory technologist were randomly split into training, validation, and testing datasets. A total of 10 convolutional neural networks were trained to classify six blood cell types: myeloblast, promyelocyte, myelocyte, metamyelocyte, banded neutrophil, and segmented neutrophil. The experimental results showed that compared to any single model, the average ensemble model could achieve a better classification performance and provide a testing accuracy of 90.1%. The sensitivity and specificity of the average ensemble model for the six blood cell types were above 83.5% and 96.9%, respectively. Our results suggest that deep learning is a promising tool for the classification of developing neutrophils, but further improvement is required.
AB - Deep learning has been used to classify the while blood cells in peripheral blood smears. However, the classification of developing neutrophils is rarely studied. Moreover, it is still unknown whether deep learning can work well on the data coming from different sources. In this study, we therefore investigate the classification performance of deep learning for immature and mature neutrophils. In particular, we used three open-access datasets obtained from different imaging systems: CellaVision DM 96, CellaVision DM 100, and iCELL ME-150. A total of 26,050 images identified by one laboratory technologist were randomly split into training, validation, and testing datasets. A total of 10 convolutional neural networks were trained to classify six blood cell types: myeloblast, promyelocyte, myelocyte, metamyelocyte, banded neutrophil, and segmented neutrophil. The experimental results showed that compared to any single model, the average ensemble model could achieve a better classification performance and provide a testing accuracy of 90.1%. The sensitivity and specificity of the average ensemble model for the six blood cell types were above 83.5% and 96.9%, respectively. Our results suggest that deep learning is a promising tool for the classification of developing neutrophils, but further improvement is required.
KW - classification
KW - deep learning
KW - immature neutrophil
KW - peripheral blood smear
KW - Neural Networks, Computer
KW - Neutrophils
KW - Deep Learning
UR - http://www.scopus.com/inward/record.url?scp=85141441264&partnerID=8YFLogxK
U2 - 10.1002/cyto.a.24698
DO - 10.1002/cyto.a.24698
M3 - 文章
C2 - 36268593
AN - SCOPUS:85141441264
SN - 1552-4922
VL - 103
SP - 295
EP - 303
JO - Cytometry Part A
JF - Cytometry Part A
IS - 4
ER -