| Literature DB >> 29620004 |
Tamara Micantonio1, Luca Neri2, Caterina Longo3, Simone Grassi4, Alessandro Di Stefani4, Ambra Antonini1, Valeria Coco4, Maria Concetta Fargnoli1, Giuseppe Argenziano5, Ketty Peris4.
Abstract
The clinical and dermoscopic diagnosis of facial lentigo maligna (LM) and pigmented actinic keratosis (PAK) remains challenging, particularly at the early disease stages. To identify dermoscopic criteria that might be useful to differentiate LM from PAK, and to elaborate and validate an automated diagnostic algorithm for facial LM/PAK. We performed a retrospective multicentre study to evaluate dermoscopic images of histologically-proven LM and PAK, and assess previously described dermoscopic criteria. In the first part of the study, 61 cases of LM and 74 PAK were examined and a parsimonious algorithm was elaborated using stepwise discriminant analysis. The following eight dermoscopic criteria achieved the greatest discriminative power: (1) light brown colour; (2) a structureless zone, varying in colour from brown to brown/tan, to black; (3) in-focus, discontinuous brown lines; (4) incomplete brown or grey circles; (5) a structureless brown or black zone, obscuring the hair follicles; (6) a brown (tan), eccentric, structureless zone; (7) a blue structureless zone; and (8) scales. The newly developed algorithm was subsequently validated using an additional series of 110 LM and 75 PAK cases. Diagnostic accuracy was 86.5% (κ: 0.73, 95% CI: 0.63-0.83). For the diagnosis of LM vs PAK, sensitivity was 82.7% (95% CI: 75.7-89.8%), specificity was 92.0% (95% CI: 85.9-98.1%), positive predictive value was 93.8% (95% CI: 89.0-98.6%), and negative predictive value was 78.4% (95% CI: 68.4-86.5%). This algorithm may represent an additional tool for clinicians to distinguish between facial LM and PAK.Entities:
Keywords: dermoscopic algorithm; dermoscopy; lentigo maligna; lentigo maligna melanoma; pigmented actinic keratosis
Mesh:
Year: 2018 PMID: 29620004 DOI: 10.1684/ejd.2018.3246
Source DB: PubMed Journal: Eur J Dermatol ISSN: 1167-1122 Impact factor: 3.328