Using Artificial Intelligence as a Melanoma Screening Tool in Self-Referred Patients

Author:

Crawford Madeleine E.1,Kamali Kiyana1,Dorey Rachel A.1ORCID,MacIntyre Olivia C.1,Cleminson Kristyna1,MacGillivary Michael L.1ORCID,Green Peter J.1,Langley Richard G.1,Purdy Kerri S.1,DeCoste Ryan C.2,Gruchy Jennette R.2,Pasternak Sylvia2,Oakley Amanda3,Hull Peter R.1ORCID

Affiliation:

1. Division of Clinical Dermatology and Cutaneous Science, Department of Medicine, Dalhousie University, Halifax, NS, Canada

2. Department of Pathology and Laboratory Medicine, Dalhousie University, Halifax, NS, Canada

3. Department of Medicine, Waikato Clinical Campus, University of Auckland, Hamilton, New Zealand

Abstract

Introduction: Early detection of melanoma requires timely access to medical care. In this study, we examined the feasibility of using artificial intelligence (AI) to flag possible melanomas in self-referred patients concerned that a skin lesion might be cancerous. Methods: Patients were recruited for the study through advertisements in 2 hospitals in Halifax, Nova Scotia, Canada. Lesions of concern were initially examined by a trained medical student and if the study criteria were met, the lesions were then scanned using the FotoFinder System®. The images were analyzed using their proprietary computer software. Macroscopic and dermoscopic images were evaluated by 3 experienced dermatologists and a senior dermatology resident, all blinded to the AI results. Suspicious lesions identified by the AI or any of the 3 dermatologists were then excised. Results: Seventeen confirmed malignancies were found, including 10 melanomas. Six melanomas were not flagged by the AI. These lesions showed ambiguous atypical melanocytic proliferations, and all were diagnostically challenging to the dermatologists and to the dermatopathologists. Eight malignancies were seen in patients with a family history of melanoma. The AI’s ability to diagnose malignancy is not inferior to the dermatologists examining dermoscopic images. Conclusion: AI, used in this study, may serve as a practical skin cancer screening aid. While it does have technical and diagnostic limitations, its inclusion in a melanoma screening program, directed at those with a concern about a particular lesion would be valuable in providing timely access to the diagnosis of skin cancer.

Funder

Faculty of Medicine Professor Murray Macneill, Summer Medical Research Studentship

Dalhousie Medical Research Foundation Allan and Leslie Shaw Research Fund

Dalhousie Faculty of Medicine Sandy Murray RIM Studentship

Publisher

SAGE Publications

Subject

Dermatology,Surgery

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