An Information-Extreme Algorithm for Universal Nuclear Feature-Driven Automated Classification of Breast Cancer Cells.

Journal: Diagnostics (Basel, Switzerland)
Published Date:

Abstract

Breast cancer diagnosis heavily relies on histopathological assessment, which is prone to subjectivity and inefficiency, especially with whole-slide imaging (WSI). This study addressed these limitations by developing an automated breast cancer cell classification algorithm using an information-extreme machine learning approach and universal cytological features, aiming for objective and generalized histopathological diagnosis. : Digitized histological images were processed to identify hyperchromatic cells. A set of 21 cytological features (10 geometric and 11 textural), chosen for their potential universality across cancers, were extracted from individual cells. These features were then used to classify cells as normal or malignant using an information-extreme algorithm. This algorithm optimizes an information criterion within a binary Hamming space to achieve robust recognition with minimal input features. The architectural innovation lies in the application of this information-extreme approach to cytological feature analysis for cancer cell classification. : The algorithm's functional efficiency was evaluated on a dataset of 176 labeled cell images, yielding promising results: an accuracy of 89%, a precision of 85%, a recall of 84%, and an F1-score of 88%. These metrics demonstrate a balanced and effective model for automated breast cancer cell classification. : The proposed information-extreme algorithm utilizing universal cytological features offers a potentially objective and computationally efficient alternative to traditional methods and may mitigate some limitations of deep learning in histopathological analysis. Future work will focus on validating the algorithm on larger datasets and exploring its applicability to other cancer types.

Authors

  • Taras Savchenko
    Department of Computer Science, Sumy State University, 40000 Sumy, Ukraine.
  • Ruslana Lakhtaryna
    Department of Pathology, Sumy State University, 40000 Sumy, Ukraine.
  • Anastasiia Denysenko
    Department of Pathology, Sumy State University, 40000 Sumy, Ukraine.
  • Anatoliy Dovbysh
    Department of Computer Science, Sumy State University, 40000 Sumy, Ukraine.
  • Sarah E Coupland
    Department of Cellular and Molecular Pathology, University of Liverpool, Liverpool, UK.
  • Roman Moskalenko
    Department of Pathology, Sumy State University, 40000 Sumy, Ukraine.

Keywords

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