Abstract

Abstract Squamous cell carcinoma (SCC) and basal cell carcinoma (BCC) are common types of nonmelanoma skin cancer (NMSC). The DERM-003 study was a prospective multicentre single-arm masked study that aimed to demonstrate the effectiveness of an artificial intelligence-based digital health technology (AI-DHT) to identify SCC, BCC and premalignant conditions in dermoscopic images of suspicious skin lesions. Patients with at least one suspicious skin lesion that was suitable for photography were eligible. Each lesion was photographed with three smartphone cameras (iPhone 6S, iPhone 11 and Samsung 10) with a dermoscopic lens attached. Each image was assessed by the AI-DHT. A clinical diagnosis was made by the dermatologist, and histopathology results were obtained for biopsied lesions. The AI-DHT output was compared with the histopathology diagnosis, and the area under the receiver operating characteristic curve (AUROC) was calculated. Secondary endpoints included other diagnostic measures and assessment of premalignant lesions. Altogether, 572 patients (49.5% women, mean age 68.5 years, 96.9% Fitzpatrick skin types I–III) were recruited from four UK National Health Service trusts, providing images of 611 suspicious lesions. There were no exclusion criteria relating to skin type. In total, 592 lesions had images from all three cameras available; only one lesion had no images available. Altogether, 395 lesions had a histopathology result. Forty-seven biopsied lesions were diagnosed as SCC and 184 as BCC. The AUROCs for images taken by the iPhone 6S was 0.88 [95% confidence interval (CI) 0.83–0.93] for SCC and 0.87 (95% CI 0.84–0.91) for BCC. For the Samsung 10, the AUROCs were 0.85 (95% CI 0.79–0.90) and 0.87 (95% CI 0.83–0.90), and for the iPhone 11, they were 0.88 (95% CI 0.84–0.93) and 0.89 (95% CI 0.86–0.92) for SCC and BCC, respectively. Using images taken on the iPhone 6S of biopsied only lesions, the sensitivity in detecting SCC and BCC was 98% (95% CI 88–100) and 94% (95% CI 90–97), respectively; the specificity was 38% (95% CI 33–44) and 28% (95% CI 21–35), respectively; the positive predictive value was 17% (95% CI 16–19) and 59% (95% CI 56–61), respectively; and the NPV was 99% (95% CI 95–100) and 81% (95% CI 70–89), respectively. All 12 lesions diagnosed as Bowen disease were classified correctly by the AI-DHT. Of the 61 lesions diagnosed as actinic keratosis, 52 were correctly classified of the 22 lesions diagnosed as dysplastic, and 18 were correctly classified by the AI-DHT. All 16 lesions diagnosed as melanoma were classified as such by the AI-DHT. The AI-DHT has the potential to support the diagnosis of NMSC and premalignant lesions.

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