Affiliation:
1. Department of Computer Science and Enginering, Qatar University, Doha 2713, Qatar
Abstract
The implementation of tumor grading tasks with image processing and machine learning techniques has progressed immensely over the past several years. Multispectral imaging enabled us to capture the sample as a set of image bands corresponding to different wavelengths in the visible and infrared spectrums. The higher dimensional image data can be well exploited to deliver a range of discriminative features to support the tumor grading application. This paper compares the classification accuracy of RGB and multispectral images, using a case study on colorectal tumor grading with the QU-Al Ahli Dataset (dataset I). Rotation-invariant local phase quantization (LPQ) features with an SVM classifier resulted in 80% accuracy for the RGB images compared to 86% accuracy with the multispectral images in dataset I. However, the higher dimensionality elevates the processing time. We propose a band-selection strategy using mutual information between image bands. This process eliminates redundant bands and increases classification accuracy. The results show that our band-selection method provides better results than normal RGB and multispectral methods. The band-selection algorithm was also tested on another colorectal tumor dataset, the Texas University Dataset (dataset II), to further validate the results. The proposed method demonstrates an accuracy of more than 94% with 10 bands, compared to using the whole set of 16 multispectral bands. Our research emphasizes the advantages of multispectral imaging over the RGB imaging approach and proposes a band-selection method to address the higher computational demands of multispectral imaging.
Funder
Qatar National Research Fund
Reference47 articles.
1. Perceived life expectancy is associated with colorectal cancer screening in England;Kobayashi;Ann. Behav. Med.,2017
2. Moleyar-Narayana, P., Leslie, S., and Ranganathan, S. (2024). Cancer Screening, StatPearls.
3. Low-cost, speculum-free, automated cervical cancer screening: Bringing expert colposcopy assessment to community health;Asiedu;Ann. Glob. Health,2017
4. AI in computational pathology of cancer: Improving diagnostic workflows and clinical outcomes?;Cifci;Annu. Rev. Cancer Biol.,2023
5. Classification of breast cancer malignancy using cytological images of fine needle aspiration biopsies;Fevens;Int. J. Appl. Math. Comput. Sci.,2008