Z Gastroenterol 2021; 59(08): e182
DOI: 10.1055/s-0041-1733545
Kolorektales Karzinom
Freitag, 17. September 2021, 16:15–17:43 Uhr, Saal 5
Dünndarm, Dickdarm und Proktologie

Colorectal cancer detection using hyperspectral imaging

B Jansen-Winkeln
1   Universitätsklinikum Leipzig, Klinik und Poliklinik für Viszeral-, Transplantations-, Thorax- und Gefäßchirurgie, Leipzig, Deutschland
,
M Barberio
2   Hospital Card. G. Panico, Department of General Surgery, Tricase, Italien
,
C Chalopin
3   Universität Leipzig, Innovation Center Computer-Assisted Surgery (ICCAS), Leipzig, Deutschland
,
K Schierle
4   Universitätsklinikum Leipzig, Institut für Pathologie, Leipzig, Deutschland
,
H Köhler
3   Universität Leipzig, Innovation Center Computer-Assisted Surgery (ICCAS), Leipzig, Deutschland
,
I Gockel
1   Universitätsklinikum Leipzig, Klinik und Poliklinik für Viszeral-, Transplantations-, Thorax- und Gefäßchirurgie, Leipzig, Deutschland
,
M Maktabi
3   Universität Leipzig, Innovation Center Computer-Assisted Surgery (ICCAS), Leipzig, Deutschland
› Institutsangaben
 
 

    Introduction Currently, colorectal cancer (CRC) is mainly identified via a visual assessment during colonoscopy, increasingly used artificial intelligence algorithms, or surgery. Subsequently, CRC is confirmed through a histopathological examination by a pathologist. Hyperspectral imaging (HSI), a non-invasive optical imaging technology, has shown promising results in the medical field. In the current study, we combined HSI with several artificial intelligence algorithms to discriminate CRC.

    Methods Between July 2019 and May 2020, 54 consecutive patients undergoing colorectal resections for CRC were included. The tumor was imaged from the mucosal side with a hyperspectral camera. The image annotations were classified into three groups (cancer, CA; adenomatous margin around the central tumor, AD; and healthy mucosa, HM). Classification and visualization were performed based on a four-layer perceptron neural network.

    Results Based on a neural network, the classification of CA or AD resulted in a sensitivity of 86% and a specificity of 95%, by means of leave-one-patient-out cross-validation. Additionally, significant differences in terms of perfusion parameters (e.g., oxygen saturation) related to tumor staging and neoadjuvant therapy were observed.

    Conclusion Hyperspectral imaging combined with automatic classification can be used to differentiate between CRC and healthy mucosa. Additionally, the biological changes induced by chemotherapy to the tissue are detectable with HSI.


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    Artikel online veröffentlicht:
    07. September 2021

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