Automatic textual description of colorectal polyp features: explainable artificial intelligence

Author:

Thijssen Ayla12ORCID,Schreuder Ramon-Michel3ORCID,Fonollà Roger4,van der Zander Quirine12ORCID,Scheeve Thom4ORCID,Winkens Bjorn56,Subramaniam Sharmila7ORCID,Bhandari Pradeep7,de With Peter4,Masclee Ad1,van der Sommen Fons4ORCID,Schoon Erik23

Affiliation:

1. Maastricht University Medical Center, Division of Gastroenterology and Hepatology, Maastricht, Netherlands

2. Maastricht University, GROW School for Oncology and Reproduction, Maastricht, Netherlands

3. Catharina Hospital, Division of Gastroenterology and Hepatology, Eindhoven, Netherlands

4. Eindhoven University of Technology, Department of Electrical Engineering, Eindhoven, Netherlands

5. Maastricht University, Department of Methodology and Statistics, Maastricht, Netherlands

6. Maastricht University, CAPHRI, Care and Public Health Research Institute

7. Portsmouth Hospitals University NHS Trust, Division of Gastroenterology and Hepatology, Portsmouth, United Kingdom

Abstract

AbstractComputer-aided diagnosis systems (CADx) can improve colorectal polyp (CRP) optical diagnosis. For integration into clinical practice, better understanding of artificial intelligence (AI) by endoscopists is needed. We aimed to develop an explainable AI CADx capable of automatically generating textual descriptions of CRPs. For training and testing of this CADx, textual descriptions of CRP size and features according to the Blue Light Imaging (BLI) Adenoma Serrated International Classification (BASIC) were used, describing CRP surface, pit pattern, and vessels. CADx was tested using BLI images of 55 CRPs. Reference descriptions with agreement by at least five out of six expert endoscopists were used as gold standard. CADx performance was analyzed by calculating agreement between the CADx generated descriptions and reference descriptions. CADx development for automatic textual description of CRP features succeeded. Gwet’s AC1 values comparing the reference and generated descriptions per CRP feature were: size 0.496, surface-mucus 0.930, surface-regularity 0.926, surface-depression 0.940, pits-features 0.921, pits-type 0.957, pits-distribution 0.167, and vessels 0.778. CADx performance differed per CRP feature and was particularly high for surface descriptors while size and pits-distribution description need improvement. Explainable AI can help comprehend reasoning behind CADx diagnoses and therefore facilitate integration into clinical practice and increase trust in AI.

Funder

KWF Kankerbestrijding

Publisher

Georg Thieme Verlag KG

Subject

Obstetrics and Gynecology

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