Employing machine learning for enhanced abdominal fat prediction in cavitation post-treatment
Doaa A. Abdel Hady,
Omar M. Mabrouk,
Tarek Abd El-Hafeez
Abstract:This study investigates the application of cavitation in non-invasive abdominal fat reduction and body contouring, a topic of considerable interest in the medical and aesthetic fields. We explore the potential of cavitation to alter abdominal fat composition and delve into the optimization of fat prediction models using advanced hyperparameter optimization techniques, Hyperopt and Optuna. Our objective is to enhance the predictive accuracy of abdominal fat dynamics post-cavitation treatment. Employing a robust… Show more
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