Optimization and Construction of a Deep Learning Model for Breast Cancer Segmentation

Authors

  • Luka Glišić Department for information technologies,Tehnical Faculty “Mihaljo Pupin”, University Novi Sad, Zrenjanin, Serbia
  • Ivana Berković Department for information technologies,Tehnical Faculty “Mihaljo Pupin”, University Novi Sad, Zrenjanin, Serbia
  • Biljana Radulović Department for information technologies,Tehnical Faculty “Mihaljo Pupin”, University Novi Sad, Zrenjanin, Serbia

DOI:

https://doi.org/10.7251/IJEEC2402062G

Abstract

The research focuses on optimizing and developing a breast cancer segmentation model utilizing multi-GPU arrays to maximize hardware resource utilization. By exploring various architectural strategies, the study aims to enhance resource allocation efficiency despite existing limitations. Detailed evaluations using mammography datasets have demonstrated significant improvements in tumor detection capabilities. This technology holds the potential to revolutionize breast cancer detection, a critical advancement given the global impact of the disease. Training data analysis confirms the scalability of these results across diverse hardware configurations, ensuring high efficiency and reliability. The study employs modern architectures, contributing valuable insights to the field of breast cancer segmentation and advancing medical imaging technologies. The development of efficient and clinically viable solutions is imperative in contemporary medical image analysis. While state-of-the-art deep learning architectures offer impressive capabilities, their substantial computational demands pose barriers to widespread clinical adoption. This research addresses the need for solutions that efficiently process large datasets while maintaining diagnostic accuracy, facilitating integration into clinical workflows and reducing operational costs.

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Published

2024-12-30