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Impact of Pre- and Post-Processing Steps for Supervised Classification of Colorectal Cancer in Hyperspectral Images.

Authors :
Tkachenko M
Chalopin C
Jansen-Winkeln B
Neumuth T
Gockel I
Maktabi M
Source :
Cancers [Cancers (Basel)] 2023 Apr 05; Vol. 15 (7). Date of Electronic Publication: 2023 Apr 05.
Publication Year :
2023

Abstract

Background: Recent studies have shown that hyperspectral imaging (HSI) combined with neural networks can detect colorectal cancer. Usually, different pre-processing techniques (e.g., wavelength selection and scaling, smoothing, denoising) are analyzed in detail to achieve a well-trained network. The impact of post-processing was studied less.<br />Methods: We tested the following methods: (1) Two pre-processing techniques (Standardization and Normalization), with (2) Two 3D-CNN models: Inception-based and RemoteSensing (RS)-based, with (3) Two post-processing algorithms based on median filter: one applies a median filter to a raw predictions map, the other applies the filter to the predictions map after adopting a discrimination threshold. These approaches were evaluated on a dataset that contains ex vivo hyperspectral (HS) colorectal cancer records of 56 patients.<br />Results: (1) Inception-based models perform better than RS-based, with the best results being 92% sensitivity and 94% specificity; (2) Inception-based models perform better with Normalization, RS-based with Standardization; (3) Our outcomes show that the post-processing step improves sensitivity and specificity by 6.6% in total. It was also found that both post-processing algorithms have the same effect, and this behavior was explained.<br />Conclusion: HSI combined with tissue classification algorithms is a promising diagnostic approach whose performance can be additionally improved by the application of the right combination of pre- and post-processing.

Details

Language :
English
ISSN :
2072-6694
Volume :
15
Issue :
7
Database :
MEDLINE
Journal :
Cancers
Publication Type :
Academic Journal
Accession number :
37046818
Full Text :
https://doi.org/10.3390/cancers15072157