Deep Learning Enabled Segmentation, Classification and Risk Assessment of Cervical Cancer
Journal:
arXiv
Published Date:
May 21, 2025
Abstract
Cervical cancer, the fourth leading cause of cancer in women globally,
requires early detection through Pap smear tests to identify precancerous
changes and prevent disease progression. In this study, we performed a focused
analysis by segmenting the cellular boundaries and drawing bounding boxes to
isolate the cancer cells. A novel Deep Learning (DL) architecture, the
``Multi-Resolution Fusion Deep Convolutional Network", was proposed to
effectively handle images with varying resolutions and aspect ratios, with its
efficacy showcased using the SIPaKMeD dataset. The performance of this DL model
was observed to be similar to the state-of-the-art models, with accuracy
variations of a mere 2\% to 3\%, achieved using just 1.7 million learnable
parameters, which is approximately 85 times less than the VGG-19 model.
Furthermore, we introduced a multi-task learning technique that simultaneously
performs segmentation and classification tasks and begets an Intersection over
Union score of 0.83 and a classification accuracy of 90\%. The final stage of
the workflow employs a probabilistic approach for risk assessment, extracting
feature vectors to predict the likelihood of normal cells progressing to
malignant states, which can be utilized for the prognosis of cervical cancer.