Improved Cell Segmentation Using Deep Learning in Label-Free Optical Microscopy Images
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Date
Authors
Yalçın Özuysal, Özden
Pesen Okvur, Devrim
Journal Title
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Volume Title
Open Access Color
GOLD
Green Open Access
Yes
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Publicly Funded
No
Abstract
The recently popular deep neural networks (DNNs) have a significant effect on the improvement of segmentation accuracy from various perspectives, including robustness and completeness in comparison to conventional methods. We determined that the naive U-Net has some lacks in specific perspectives and there is high potential for further enhancements on the model. Therefore, we employed some modifications in different folds of the U-Net to overcome this problem. Based on the probable opportunity for improvement, we develop a novel architecture by using an alternative feature extractor in the encoder of U-Net and replacing the plain blocks with residual blocks in the decoder. This alteration makes the model superconvergent yielding improved performance results on two challenging optical microscopy image series: a phase-contrast dataset of our own (MDA-MB-231) and a brightfield dataset from a well-known challenge (DSB2018). We utilized the U-Net with pretrained ResNet-18 as the encoder for the segmentation task. Hence, following the modifications, we redesign a novel skip-connection to reduce the semantic gap between the encoder and the decoder. The proposed skip-connection increases the accuracy of the model on both datasets. The proposed segmentation approach results in Jaccard Index values of 85.0% and 89.2% on the DSB2018 and MDA-MB-231 datasets, respectively. The results reveal that our method achieves competitive results compared to the state-of-the-art approaches and surpasses the performance of baseline approaches.
Description
Keywords
Segmentation, Breast cancer, Convolutional neural networks, Optical microscopy, Phase-contrast microscopy, Brightfield
Fields of Science
0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology
Citation
WoS Q
Scopus Q

OpenCitations Citation Count
3
Volume
29
Issue
Start Page
2855
End Page
2868
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Scopus : 6
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Mendeley Readers : 11
SCOPUS™ Citations
6
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3
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21803
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Downloads
343
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