Szyc Łukasz, Hillen Uwe, Scharlach Constantin, Kauer Friederike, Garbe Claus
magnosco GmbH, 12489 Berlin, Germany.
Department of Dermatology and Venerology, Vivantes Klinikum Neukoelln, 12351 Berlin, Germany.
Diagnostics (Basel). 2019 Aug 25;9(3):103. doi: 10.3390/diagnostics9030103.
The need for diagnosing malignant melanoma in its earliest stages results in an increasing number of unnecessary excisions. Objective criteria beyond the visual inspection are needed to distinguish between benign and malignant melanocytic tumors in vivo. Fluorescence spectra collected during the prospective, multicenter observational study ("FLIMMA") were retrospectively analyzed by the newly developed machine learning algorithm. The formalin-fixed paraffin-embedded (FFPE) tissue samples of 214 pigmented skin lesions (PSLs) from 144 patients were examined by two independent pathologists in addition to the first diagnosis from the FLIMMA study, resulting in three histopathological results per sample. The support vector machine classifier was trained on 17,918 fluorescence spectra from 49 lesions labeled as malignant (1) and benign (0) by three histopathologists. A scoring system that scales linearly with the number of the "malignant spectra" was designed to classify the lesion as malignant melanoma (score > 28) or non-melanoma (score ≤ 28). Finally, the scoring algorithm was validated on 165 lesions to ensure model prediction power and to estimate the diagnostic accuracy of dermatofluoroscopy in melanoma detection. The scoring algorithm revealed a sensitivity of 91.7% and a specificity of 83.0% in diagnosing malignant melanoma. Using additionally the image segmentation for normalization of lesions' region of interest, a further improvement of sensitivity of 95.8% was achieved, with a corresponding specificity of 80.9%.
在黑色素瘤最早期阶段进行诊断的需求导致了越来越多不必要的切除手术。需要视觉检查之外的客观标准来在体内区分良性和恶性黑素细胞肿瘤。通过新开发的机器学习算法对在前瞻性多中心观察性研究(“FLIMMA”)期间收集的荧光光谱进行回顾性分析。除了FLIMMA研究的首次诊断外,由两名独立病理学家对144例患者的214个色素沉着性皮肤病变(PSL)的福尔马林固定石蜡包埋(FFPE)组织样本进行检查,每个样本得出三个组织病理学结果。支持向量机分类器在由三名组织病理学家标记为恶性(1)和良性(0)的49个病变的17,918个荧光光谱上进行训练。设计了一个与“恶性光谱”数量呈线性比例的评分系统,以将病变分类为恶性黑色素瘤(评分> 28)或非黑色素瘤(评分≤28)。最后,在165个病变上对评分算法进行验证,以确保模型预测能力并估计皮肤荧光检查在黑色素瘤检测中的诊断准确性。评分算法在诊断恶性黑色素瘤时显示出91.7%的敏感性和83.0%的特异性。另外使用图像分割对病变的感兴趣区域进行归一化,敏感性进一步提高到95.8%,相应的特异性为80.9%。