Tamošiūnas Mindaugas, Čiževskis Oskars, Viškere Daira, Melderis Mikus, Rubins Uldis, Cugmas Blaž
Biophotonics Laboratory, Institute of Atomic Physics and Spectroscopy, University of Latvia, 19 Raina Blvd., LV-1586 Riga, Latvia.
Faculty of Veterinary Medicine, Latvia University of Life Sciences and Technologies, 8 K. Helmana Str., LV-3004 Jelgava, Latvia.
Cancers (Basel). 2022 Jun 7;14(12):2820. doi: 10.3390/cancers14122820.
As in humans, cancer is one of the leading causes of companion animal mortality. Up to 30% of all canine and feline neoplasms appear on the skin or directly under it. There are only a few available studies that have investigated pet tumors by biophotonics techniques. In this study, we acquired 1115 optical coherence tomography (OCT) images of canine and feline skin, lipomas, soft tissue sarcomas, and mast cell tumors ex vivo, which were subsequently used for automated machine vision analysis. The OCT images were analyzed using a scanning window with a size of 53 × 53 μm. The distributions of the standard deviation, mean, range, and coefficient of variation values were acquired for each image. These distributions were characterized by their mean, standard deviation, and median values, resulting in 12 parameters in total. Additionally, 1002 Raman spectral measurements were made on the same samples, and features were generated by integrating the intensity of the most prominent peaks. Linear discriminant analysis (LDA) was used for sample classification, and sensitivities/specificities were acquired by leave-one-out cross-validation. Three datasets were analyzed-OCT, Raman, and combined. The combined OCT and Raman data enabled the best sample differentiation with the sensitivities of 0.968, 1, and 0.939 and specificities of 0.956, 1, and 0.977 for skin, lipomas, and malignant tumors, respectively. Based on these results, we concluded that the proposed multimodal approach, combining Raman and OCT data, can accurately distinguish between malignant and benign tissues.
与人类一样,癌症是伴侣动物死亡的主要原因之一。所有犬猫肿瘤中,高达30%出现在皮肤或其正下方。仅有少数研究通过生物光子学技术对宠物肿瘤进行了调查。在本研究中,我们获取了1115张犬猫皮肤、脂肪瘤、软组织肉瘤和肥大细胞瘤的光学相干断层扫描(OCT)离体图像,随后将其用于自动机器视觉分析。使用大小为53×53μm的扫描窗口对OCT图像进行分析。获取每张图像的标准差、均值、范围和变异系数值的分布。这些分布通过其均值、标准差和中值进行表征,总共得到12个参数。此外,对相同样本进行了1002次拉曼光谱测量,并通过整合最突出峰的强度生成特征。使用线性判别分析(LDA)进行样本分类,并通过留一法交叉验证获得敏感性/特异性。分析了三个数据集——OCT、拉曼和组合数据集。OCT和拉曼数据的组合能够实现最佳的样本区分,皮肤、脂肪瘤和恶性肿瘤的敏感性分别为0.968、1和0.939,特异性分别为0.956、1和0.977。基于这些结果,我们得出结论,所提出的结合拉曼和OCT数据的多模态方法能够准确区分恶性和良性组织。