A deep learning algorithm to detect cutaneous squamous cell carcinoma on frozen sections in Mohs micrographic surgery: A retrospective assessment

Author:

Davis Matthew J.1,Srinivasan Gokul2,Chacko Rachael3,Chen Sophie4,Suvarna Anish5ORCID,Vaickus Louis J.6,Torres Veronica C.7,Hodge Sassan7,Chen Eunice Y.38,Preum Sarah9,Samkoe Kimberley S.37,Christensen Brock C.101112,LeBoeuf Matthew R.1,Levy Joshua J.123610ORCID

Affiliation:

1. Department of Dermatology Dartmouth‐Hitchcock Medical Center Lebanon New Hampshire USA

2. Dartmouth College Hanover New Hampshire USA

3. Geisel School of Medicine Hanover New Hampshire USA

4. Caddo Parish Magnet High School Shreveport Louisiana USA

5. Thomas Jefferson School for Science and Technology Alexandria Virginia USA

6. Department of Pathology and Laboratory Medicine Dartmouth‐Hitchcock Medical Center Lebanon New Hampshire USA

7. Thayer School of Engineering Dartmouth College Hanover New Hampshire USA

8. Department of Surgery Dartmouth Hitchcock Medical Center Lebanon New Hampshire USA

9. Department of Computer Science Dartmouth College Hanover New Hampshire USA

10. Department of Epidemiology Dartmouth College Geisel School of Medicine Hanover New Hampshire USA

11. Department of Molecular and Systems Biology Geisel School of Medicine at Dartmouth Lebanon New Hampshire USA

12. Department of Community and Family Medicine Geisel School of Medicine at Dartmouth Lebanon New Hampshire USA

Abstract

AbstractIntraoperative margin analysis is crucial for the successful removal of cutaneous squamous cell carcinomas (cSCC). Artificial intelligence technologies (AI) have previously demonstrated potential for facilitating rapid and complete tumour removal using intraoperative margin assessment for basal cell carcinoma. However, the varied morphologies of cSCC present challenges for AI margin assessment. The aim of this study was to develop and evaluate the accuracy of an AI algorithm for real‐time histologic margin analysis of cSCC. To do this, a retrospective cohort study was conducted using frozen cSCC section slides. These slides were scanned and annotated, delineating benign tissue structures, inflammation and tumour to develop an AI algorithm for real‐time margin analysis. A convolutional neural network workflow was used to extract histomorphological features predictive of cSCC. This algorithm demonstrated proof of concept for identifying cSCC with high accuracy, highlighting the potential for integration of AI into the surgical workflow. Incorporation of AI algorithms may improve efficiency and completeness of real‐time margin assessment for cSCC removal, particularly in cases of moderately and poorly differentiated tumours/neoplasms. Further algorithmic improvement incorporating surrounding tissue context is necessary to remain sensitive to the unique epidermal landscape of well‐differentiated tumours, and to map tumours to their original anatomical position/orientation.

Funder

National Institutes of Health

Publisher

Wiley

Subject

Dermatology,Molecular Biology,Biochemistry

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