Enhancing VIA screening for cervical cancer: a comprehensive system integrating image processing, risk factors and follow-up facilitation
Abstract
Visual Inspection of cervix with Acetic Acid (VIA) is an inexpensive and effective
screening test which is being conducted in many under-developped and developing
regions. In medical image processing applications, the performance of Computer
Vision has been promising. This research aims to establish a systematic process for
VIA (Visual Inspection with Acetic Acid) screening of the cervix by incorporating
Computer Vision and Machine Learning techniques. The paper analyzes the performance
of VGG16, ResNet-50, YOLOv9, YOLO-NAS(Medium) on cervix images
with Acetic Acid (VIA), with VGG-16 achieving 96% accuracy, ResNet-50 achieving
95%, YOLOv9 achieving 93%, and YOLO-NAS achieving 91%. Furthermore, we use
feature importance scores from the Random Forest model to extract key features
associated with cervical cancer from demographic, behavioral, and clinical factors.
Training an ensemble model on these features yields an accuracy of 94%. The goal
is to analyze the cervical images during VIA inspection and predict its outcome using
Computer Vision and integrate patient risk factors so that our proposed system
identifies high-risk individuals, even among VIA-negative cases and improves overall
screening accuracy, surpassing the existing VIA screening method.