Integrative hybrid deep learning for enhanced breast cancer diagnosis: leveraging the Wisconsin Breast Cancer Database and the CBIS-DDSM dataset.

Journal: Scientific reports
Published Date:

Abstract

The objective of this investigation was to improve the diagnosis of breast cancer by combining two significant datasets: the Wisconsin Breast Cancer Database and the DDSM Curated Breast Imaging Subset (CBIS-DDSM). The Wisconsin Breast Cancer Database provides a detailed examination of the characteristics of cell nuclei, including radius, texture, and concavity, for 569 patients, of which 212 had malignant tumors. In addition, the CBIS-DDSM dataset-a revised variant of the Digital Database for Screening Mammography (DDSM)-offers a standardized collection of 2,620 scanned film mammography studies, including cases that are normal, benign, or malignant and that include verified pathology data. To identify complex patterns and trait diagnoses of breast cancer, this investigation used a hybrid deep learning methodology that combines Convolutional Neural Networks (CNNs) with the stochastic gradients method. The Wisconsin Breast Cancer Database is used for CNN training, while the CBIS-DDSM dataset is used for fine-tuning to maximize adaptability across a variety of mammography investigations. Data integration, feature extraction, model development, and thorough performance evaluation are the main objectives. The diagnostic effectiveness of the algorithm was evaluated by the area under the Receiver Operating Characteristic Curve (AUC-ROC), sensitivity, specificity, and accuracy. The generalizability of the model will be validated by independent validation on additional datasets. This research provides an accurate, comprehensible, and therapeutically applicable breast cancer detection method that will advance the field. These predicted results might greatly increase early diagnosis, which could promote improvements in breast cancer research and eventually lead to improved patient outcomes.

Authors

  • Patnala S R Chandra Murty
    Department of CSE, Malla Reddy Engineering College (Autonomous), Maisammaguda, Secunderabad, 500100, Telangana, India.
  • Chinta Anuradha
    Department of CSE, Velagapudi Ramakrishna Siddhartha Engineering College (Deemed to be University), Kanuru, Vijayawada, 520007, Andhra Pradesh, India.
  • P Appala Naidu
    Department of CSE, Raghu Engineering College (Autonomous), Visakhapatnam, 531162, Andhra Pradesh, India.
  • Deenababu Mandru
    Department of IT, Malla Reddy Engineering College (Autonomous), Maisammaguda, Secunderabad, 500100, Telangana, India.
  • Maram Ashok
    Department of CSE, Malla Reddy College of Engineering, Maisammaguda, Secunderabad, 500100, Telangana, India.
  • Athiraja Atheeswaran
    Department of CSE (AIML), Malla Reddy College of Engineering, Secunderabad, India.
  • Nagalingam Rajeswaran
    Department of IQAC, IMS Unison University, Dehradun, India.
  • V Saravanan
    Dr. SNS Rajalakshmi College of Arts and Science, Coimbatore, India. tvsaran@hotmail.com.