A deep learning mobile-based image analysis for cervical cancer detection

Published: 20 May 2025| Version 1 | DOI: 10.17632/hwmpww97rs.1
Contributors:
,
, Yuliana Jimenez,
,
, Veronique Verhoeven

Description

This dataset provides a structured environment for cervical cancer image analysis using machine learning and deep learning. It includes four main experiments: Risk factor prediction using classical ML models ROI segmentation using U-Net Lesion detection using Detectron2 Binary classification of images and Kappa evaluation The experiments are implemented in Jupyter notebooks. All datasets are reduced 10% samples. The images used are publicly available from the Intel MobileODT dataset. Originally, the project included a private dataset (CAIME), but for privacy reasons, those images were removed and replaced with public samples. Both Intel/ and test/ folders now contain only public data. Segmentation masks (.tif) were also included where filenames matched. This environment was originally executed in a Docker container with GPU support (NVIDIA QUADRO), but the reduced version can be tested on CPU.

Files

Steps to reproduce

1. It is recommended to create and activate a virtual environment to isolate dependencies. 2. Extract the ZIP archive. 3. Navigate to the extracted folder named 'colpotool-lab'. 4. Install the dependencies using: pip install -r requirements.txt 5. Launch Jupyter using: jupyter notebook 6. Open and run the notebooks located in the 'experiments/' directory. Note: The original experiments were executed in a Docker environment using a TITAN GPU. However, this reduced version can be executed on CPU for testing purposes.

Institutions

Universidad Tecnologica Metropolitana, Universiteit Antwerpen, Universidad Tecnica Particular de Loja, Universidad de Cuenca

Categories

Artificial Intelligence, Computer Vision, Biomedical Engineering, Image Processing, Data Science, Cervical Cancer, Machine Learning, Image Analysis (Medical Imaging), Clinical Decision Support System, Deep Learning, Predictive Modeling

Funding

Universidad Técnica Particular de Loja

Licence