Leveraging AI for Automatic Classification of PCOS Using Ultrasound Imaging
Journal:
arXiv
Published Date:
Dec 30, 2024
Abstract
The AUTO-PCOS Classification Challenge seeks to advance the diagnostic
capabilities of artificial intelligence (AI) in identifying Polycystic Ovary
Syndrome (PCOS) through automated classification of healthy and unhealthy
ultrasound frames. This report outlines our methodology for building a robust
AI pipeline utilizing transfer learning with the InceptionV3 architecture to
achieve high accuracy in binary classification. Preprocessing steps ensured the
dataset was optimized for training, validation, and testing, while
interpretability methods like LIME and saliency maps provided valuable insights
into the model's decision-making. Our approach achieved an accuracy of 90.52%,
with precision, recall, and F1-score metrics exceeding 90% on validation data,
demonstrating its efficacy. The project underscores the transformative
potential of AI in healthcare, particularly in addressing diagnostic challenges
like PCOS. Key findings, challenges, and recommendations for future
enhancements are discussed, highlighting the pathway for creating reliable,
interpretable, and scalable AI-driven medical diagnostic tools.