DeepPap: Deep Convolutional Networks for Cervical Cell Classification
Ling Zhang, Le Lu, Isabella Nogues, Ronald M. Summers, Shaoxiong Liu,, Jianhua Yao

TL;DR
This paper introduces a deep learning approach using convolutional neural networks to classify cervical cells directly from images, eliminating the need for segmentation and achieving high accuracy in cancer detection.
Contribution
It presents a novel segmentation-free classification method for cervical cells using deep features from ConvNets, trained on re-sampled image patches.
Findings
Achieved 98.3% classification accuracy on Herlev dataset
Attained 0.99 AUC in performance evaluation
Outperformed previous methods in specificity and overall accuracy
Abstract
Automation-assisted cervical screening via Pap smear or liquid-based cytology (LBC) is a highly effective cell imaging based cancer detection tool, where cells are partitioned into "abnormal" and "normal" categories. However, the success of most traditional classification methods relies on the presence of accurate cell segmentations. Despite sixty years of research in this field, accurate segmentation remains a challenge in the presence of cell clusters and pathologies. Moreover, previous classification methods are only built upon the extraction of hand-crafted features, such as morphology and texture. This paper addresses these limitations by proposing a method to directly classify cervical cells - without prior segmentation - based on deep features, using convolutional neural networks (ConvNets). First, the ConvNet is pre-trained on a natural image dataset. It is subsequently…
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