IEEE Access (Jan 2019)

Segmentation and Classification of Cervical Cells Using Deep Learning

  • Kurnianingsih,
  • Khalid Hamed S. Allehaibi,
  • Lukito Edi Nugroho,
  • Widyawan,
  • Lutfan Lazuardi,
  • Anton Satria Prabuwono,
  • Teddy Mantoro

DOI
https://doi.org/10.1109/ACCESS.2019.2936017
Journal volume & issue
Vol. 7
pp. 116925 – 116941

Abstract

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Cervical cancer is the fourth most prevalent disease in women. Accurate and timely cancer detection can save lives. Automatic and reliable cervical cancer detection methods can be devised through the accurate segmentation and classification of Pap smear cell images. This paper presents an approach to whole cervical cell segmentation using a mask regional convolutional neural network (Mask R-CNN) and classifies this using a smaller Visual Geometry Group-like Network (VGG-like Net). ResNet10 is used to make full use of spatial information and prior knowledge as the backbone of the Mask R-CNN. We evaluate our proposed method on the Herlev Pap Smear dataset. In the segmentation phase, when Mask R-CNN is applied on the whole cell, it outperforms the previous segmentation method in precision (0.92±0.06), recall (0.91±0.05) and ZSI (0.91±0.04). In the classification phase, VGG-like Net is applied on the whole segmented cell and yields a sensitivity score of more than 96% with low standard deviation (±2.8%) for the binary classification problem and yields a higher result of more than 95% with low standard deviation (maximum 4.2% in accuracy measurement) for the 7-class problem in terms of sensitivity, specificity, accuracy, h-mean, and F1 score.

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