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LEE LI REN


CS3244-09

ML-based Breast Ultrasound Classification for Early Cancer Detection

Breast cancer diagnosis accuracy is critical for early intervention and improved patient outcomes. Our project presents an ML model for classifying breast ultrasounds into normal, benign, and malignant categories, streamlining tumor detection and enhancing diagnostic efficiency. Targeting healthcare professionals, medical imaging researchers, and breast cancer patients, our model provides a reliable second opinion. The model also reduces human error, and aids in identifying subtle patterns in ultrasound images. Integration with information systems facilitates image analysis for medical professionals and researchers. By enabling accurate and timely detection of early-stage breast cancer, our project contributes to more effective treatments and better patient outcomes.