Automated Cervical Cancer Detection through Visual Inspection with Acetic Acid in Resource-Poor Settings with Lightweight Deep Learning Models Deployed on an Android Device
Leander Melroy Maben, Keerthana Prasad, Shyamala Guruvare, Vidya Kudva, P C Siddalingaswamy

TL;DR
This paper presents a lightweight deep learning system for automated cervical cancer screening using visual inspection with acetic acid, deployable on Android devices to aid low-resource settings with high accuracy and minimal infrastructure.
Contribution
It introduces a novel lightweight AI model combining EfficientDet-Lite3 and MobileNet-V2 for automated VIA analysis on Android devices, enabling accessible screening in resource-poor environments.
Findings
Achieved 92.31% classification accuracy
High sensitivity of 98.24% for detecting positive cases
Model deployed successfully on Android device for real-time screening
Abstract
Cervical cancer is among the most commonly occurring cancer among women and claims a huge number of lives in low and middle-income countries despite being relatively easy to treat. Several studies have shown that public screening programs can bring down cervical cancer incidence and mortality rates significantly. While several screening tests are available, visual inspection with acetic acid (VIA) presents itself as the most viable option for low-resource settings due to the affordability and simplicity of performing the test. VIA requires a trained medical professional to interpret the test and is subjective in nature. Automating VIA using AI eliminates subjectivity and would allow shifting of the task to less trained health workers. Task shifting with AI would help further expedite screening programs in low-resource settings. In our work, we propose a lightweight deep learning…
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