Author:
Trivizakis Eleftherios,Ioannidis Georgios S.,Souglakos Ioannis,Karantanas Apostolos H.,Tzardi Maria,Marias Kostas
Abstract
AbstractColorectal cancer (CRC) constitutes the third most commonly diagnosed cancer in males and the second in females. Precise histopathological classification of CRC tissue pathology is the cornerstone not only for diagnosis but also for patients’ management decision making. An automated system able to accurately classify different CRC tissue regions may increase diagnostic precision and alleviate clinical workload. However, tissue classification is a challenging task due to the variability in morphological and textural characteristics present in histopathology images. In this study, an artificial neural network was trained to classify between eight classes of CRC tissue image patches derived from a public dataset with 5000 CRC histopathology image tiles. A total of 532 multi-level pathomics features examined at different scales were extracted by visual descriptors such as local binary patterns, wavelet transforms and Gabor filters. An exhaustive evaluation involving a variety of wavelet families and parameters was performed in order to shed light on the impact of scale on pathomics based CRC tissue differentiation. Our model achieved a performance accuracy of 95.3% with tenfold cross validation demonstrating superior performance compared to 87.4% reported in recent studies. Furthermore, we experimentally showed that the first and the second levels of the wavelet approximations can be used without compromising classification performance.
Funder
Stavros Niarchos Foundation
Publisher
Springer Science and Business Media LLC
Reference27 articles.
1. Ferro, C. J. S. & Warner, T. A. Scale and texture in digital image classification. Photogramm. Eng. Remote Sensing 68, 51–63 (2002).
2. de Siqueira, F. R., RobsonSchwartz, W. & Pedrini, H. Multi-scale gray level co-occurrence matrices for texture description. Neurocomputing 120, 336–345 (2013).
3. Gao, R. X. & Yan, R. Wavelet Packet Transform. in Wavelets 69–81 (Springer, 2011). https://doi.org/10.1007/978-1-4419-1545-0_5.
4. Van Griethuysen, J. J. M. et al. Computational radiomics system to decode the radiographic phenotype. Cancer Res. 77, e104–e107 (2017).
5. Sharma, S., Jain, S. & Bhusri, S. Classification of breast lesions using gabor wavelet filter for three classes. in 4th International Conference on “Computing for Sustainable Global Development” 6282–6284 (2017).
Cited by
31 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献