Fluorescence excitation-scanning hyperspectral imaging with scalable 2D-3D deep learning framework for colorectal cancer detection.

Journal: Scientific reports
Published Date:

Abstract

Colorectal cancer is one of the top contributors to cancer-related deaths in the United States, with over 100,000 estimated cases in 2020 and over 50,000 deaths. The most common screening technique is minimally invasive colonoscopy using either reflected white light endoscopy or narrow-band imaging. However, current imaging modalities have only moderate sensitivity and specificity for lesion detection. We have developed a novel fluorescence excitation-scanning hyperspectral imaging (HSI) approach to sample image and spectroscopic data simultaneously on microscope and endoscope platforms for enhanced diagnostic potential. Unfortunately, fluorescence excitation-scanning HSI datasets pose major challenges for data processing, interpretability, and classification due to their high dimensionality. Here, we present an end-to-end scalable Artificial Intelligence (AI) framework built for classification of excitation-scanning HSI microscopy data that provides accurate image classification and interpretability of the AI decision-making process. The developed AI framework is able to perform real-time HSI classification with different speed/classification performance trade-offs by tailoring the dimensionality of the dataset, supporting different dimensions of deep learning models, and varying the architecture of deep learning models. We have also incorporated tools to visualize the exact location of the lesion detected by the AI decision-making process and to provide heatmap-based pixel-by-pixel interpretability. In addition, our deep learning framework provides wavelength-dependent impact as a heatmap, which allows visualization of the contributions of HSI wavelength bands during the AI decision-making process. This framework is well-suited for HSI microscope and endoscope platforms, where real-time analysis and visualization of classification results are required by clinicians.

Authors

  • Willaim Oswald
    Department of Electrical and Computer Engineering, University of South Alabama, Mobile Alabama, 36688, USA.
  • Craig Browning
    Department of Systems Engineering, University of South Alabama, Mobile, AL, 36688, USA.
  • Ruthba Yasmin
    Department of Electrical and Computer Engineering, University of South Alabama, Mobile Alabama, 36688, USA.
  • Joshua Deal
    Nikon Instruments, Melville, NY, 11747, USA.
  • Thomas C Rich
    Department of Pharmacology, University of South Alabama, Mobile, AL, 36688, USA.
  • Silas J Leavesley
    Department of Systems Engineering, University of South Alabama, Mobile, AL, 36688, USA. leavesley@southalabama.edu.
  • Na Gong
    Department of Electrical and Computer Engineering, University of South Alabama, Mobile Alabama, 36688, USA. nagong@southalabama.edu.