Tognetti Linda, Cartocci Alessandra, Bertello Martina, Giordani Mafalda, Cinotti Elisa, Cevenini Gabriele, Rubegni Pietro
Dermatology Unit, Department of Medical, Surgical and NeuroSciences, University of Siena, Siena, Italy.
Department of Medical Biotechnologies, University of Siena, Siena, Italy.
Dermatol Pract Concept. 2022 Jul 1;12(3):e2022134. doi: 10.5826/dpc.1203a134. eCollection 2022 Jul.
It is well known that multiple patient-related risk factors contribute to the development of cutaneous melanoma, including demographic, phenotypic and anamnestic factors.
We aimed to investigate which MM risk factors were relevant to be incorporated in a risk scoring-classifier based clinico-dermoscopic algorithm.
This retrospective study was performed on a monocentric dataset of 374 atypical melanocytic skin lesions sharing equivocal dermoscopic features, excised in the suspicion of malignancy. Dermoscopic standardized images of 258 atypical nevi (aN) and 116 early melanomas (eMM) were collected along with objective lesional data (i.e., maximum diameter, specific body site and body area) and 7 dermoscopic data. All cases were combined with a series of 10 MM risk factors, including demographic (2), phenotypic (5) and anamnestic (3) ones.
The proposed iDScore 2021 algorithm is composed by 9 variables (age, skin phototype I/II, personal/familiar history of MM, maximum diameter, location on the lower extremities (thighs/legs/ankles/back of the feet) and 4 dermoscopic features (irregular dots and globules, irregular streaks, blue gray peppering, blue white veil). The algorithm assigned to each lesion a score from 0 to 18, reached an area under the ROC curve of 92% and, with a score threshold ≥ 6, a sensitivity (SE) of 98.2% and a specificity (SP) of 50.4%, surpassing the experts in SE (+13%) and SP (+9%).
An integrated checklist combining multiple anamnestic data with selected relevant dermoscopic features can be useful in the differential diagnosis and management of eMM and aN exhibiting with equivocal features.
众所周知,多种与患者相关的风险因素会导致皮肤黑色素瘤的发生,包括人口统计学、表型和既往史因素。
我们旨在研究哪些黑色素瘤风险因素与基于风险评分分类器的临床皮肤镜算法相关。
本回顾性研究基于一个单中心数据集,该数据集包含374例具有可疑皮肤镜特征的非典型黑素细胞性皮肤病变,这些病变因怀疑恶性而被切除。收集了258例非典型痣(aN)和116例早期黑色素瘤(eMM)的皮肤镜标准化图像,以及病变的客观数据(即最大直径、特定身体部位和体表面积)和7项皮肤镜数据。所有病例均与一系列10项黑色素瘤风险因素相结合,包括人口统计学因素(2项)、表型因素(5项)和既往史因素(3项)。
所提出的iDScore 2021算法由9个变量组成(年龄、皮肤光型I/II、个人/家族黑色素瘤病史、最大直径、下肢(大腿/小腿/脚踝/足背)部位以及4项皮肤镜特征(不规则点和小球、不规则条纹、蓝灰色胡椒粉样、蓝白色薄纱)。该算法为每个病变分配一个从0到18的分数,ROC曲线下面积达到92%,分数阈值≥6时,灵敏度(SE)为98.2%,特异度(SP)为50.4%,在灵敏度(提高13%)和特异度(提高9%)方面超过了专家。
将多个既往史数据与选定的相关皮肤镜特征相结合的综合检查表,对于具有可疑特征的早期黑色素瘤和非典型痣的鉴别诊断和管理可能有用。