Institute of Physics of São Carlos, University of São Paulo, Av. Trabalhador São-Carlense, 400 - Parque Arnold Schimidt, São Carlos, SP, 13566-590, Brazil; Medical School of Ribeirão Preto, University of São Paulo, Av. Bandeirantes, 3900 - Monte Alegre, Ribeirão Preto, SP, 14048-900, Brazil.
Institute of Physics of São Carlos, University of São Paulo, Av. Trabalhador São-Carlense, 400 - Parque Arnold Schimidt, São Carlos, SP, 13566-590, Brazil.
Photodiagnosis Photodyn Ther. 2017 Sep;19:45-50. doi: 10.1016/j.pdpdt.2017.03.014. Epub 2017 Mar 28.
Fast and non-invasive analytical methods, as in fluorescence spectroscopy, have potential applications to detect modifications of biochemical and morphologic properties of malignant tissues. In this study, we propose to analyze the fluorescence spectra using k-Nearest Neighbours algorithm (k-NN) and ratio of the fluorescence intensity (FI) to differentiate skin disorders of distinctive etiologies and morphologies.
Laser-induced autofluorescence spectra upon excitation at 408nm were collected from basal cell carcinoma (BCC) subtypes (n=45/212 spectra), psoriasis (PS) (n=37/193 spectra) and Bowen's disease (BD) (n=04/19 spectra) lesions and respective normal skin at sun-exposed (EXP) and non-exposed (NEXP) sites of the same patient.
The mean ratios of FI values at selected wavelengths of emission (FI/FI) were significantly lower in BCC and PS lesions compared to EXP [P=0.0001; P=0.0002, respectively]; but there were no significant differences between abnormal conditions. The analysis of fluorescence spectra using k-NN can discriminate normal or abnormal skin conditions (EXP, BCC, BD, PS) of distinctive etiology, neoplastic or inflammatory (BCC, BD and PS) and morphologies (nodular and superficial BCC, BD and PS) as high as 88% and 93% sensitivity and specificity means, respectively; also, similar erythematous-squamous features (superficial BCC, BD and PS) with 98% and 97% sensitivity and specificity means, respectively. The k-NN computational analysis appears to be a promising approach to distinguish skin disorders.
快速且无创的分析方法,如荧光光谱法,具有检测生物化学和形态学特性改变的潜力,从而用于恶性组织的检测。在本研究中,我们提出使用 K 近邻算法(k-NN)和荧光强度比(FI)来分析荧光光谱,以区分具有不同病因和形态的皮肤病变。
用 408nm 激光激发收集基底细胞癌(BCC)各亚型(n=45/212 个光谱)、银屑病(PS)(n=37/193 个光谱)和 Bowen 病(BD)(n=04/19 个光谱)病变以及同一患者暴露和非暴露部位的正常皮肤的激光诱导自体荧光光谱。
与暴露部位(EXP)相比,BCC 和 PS 病变在选定发射波长的 FI 值比(FI/FI)均值显著降低(P=0.0001;P=0.0002);但异常病变之间无显著差异。用 k-NN 分析荧光光谱可以区分不同病因(EXP、BCC、BD、PS)、形态(结节状和浅表性 BCC、BD 和 PS)的正常或异常皮肤状态,其灵敏度和特异性均值分别高达 88%和 93%;同时,对具有相似红斑鳞屑特征的病变(浅表性 BCC、BD 和 PS),其灵敏度和特异性均值分别高达 98%和 97%。k-NN 计算分析似乎是一种有前途的方法,可以用于区分皮肤病变。