Universidade Federal do Rio Grande do Sul, Postgraduate Program in Health Science: Surgical Sciences, Porto Alegre, Rio Grande do Sul, Brazil.
Department of Obstetrics and Gynecology, Universidade Federal do Rio Grande do Sul, Porto Alegre, Rio Grande do Sul, Brazil.
PLoS One. 2023 Mar 27;18(3):e0282176. doi: 10.1371/journal.pone.0282176. eCollection 2023.
New breast cancer biomarkers have been sought for better tumor characterization and treatment. Among these putative markers, there is Biglycan (BGN). BGN is a class I small leucine-rich proteoglycan family of proteins characterized by a protein core with leucine-rich repeats. The objective of this study is to compare the protein expression of BGN in breast tissue with and without cancer, using immunohistochemical technique associated with digital histological score (D-HScore) and supervised deep learning neural networks (SDLNN). In this case-control study, 24 formalin-fixed, paraffin-embedded tissues were obtained for analysis. Normal (n = 9) and cancerous (n = 15) tissue sections were analyzed by immunohistochemistry using BGN monoclonal antibody (M01-Abnova) and 3,3'-Diaminobenzidine (DAB) as the chromogen. Photomicrographs of the slides were analysed with D-HScore, using arbitrary DAB units. Another set (n = 129) with higher magnification without ROI selection, was submitted to the inceptionV3 deep neural network image embedding recognition model. Next, supervised neural network analysis, using stratified 20 fold cross validation, with 200 hidden layers, ReLu activation, and regularization at α = 0.0001 were applied for SDLNN. The sample size was calculated for a minimum of 7 cases and 7 controls, having a power = 90%, an α error = 5%, and a standard deviation of 20, to identify a decrease from the average of 40 DAB units (control) to 4 DAB units in cancer. BGN expression in DAB units [median (range)] was 6.2 (0.8 to 12.4) and 27.31 (5.3 to 81.7) in cancer and normal breast tissue, respectively, using D-HScore (p = 0.0017, Mann-Whitney test). SDLNN classification accuracy was 85.3% (110 out of 129; 95%CI = 78.1% to 90.3%). BGN protein expression is reduced in breast cancer tissue, compared to normal tissue.
新的乳腺癌生物标志物被寻求用于更好地进行肿瘤特征分析和治疗。在这些候选标志物中,有 BIGLYCAN(BGN)。BGN 是一类具有富含亮氨酸重复的蛋白核心的 I 型小富含亮氨酸的蛋白聚糖家族。本研究的目的是使用免疫组织化学技术结合数字组织学评分(D-HScore)和监督深度学习神经网络(SDLNN),比较有和无癌症的乳腺组织中 BGN 的蛋白表达。在这项病例对照研究中,共获得了 24 例福尔马林固定、石蜡包埋的组织进行分析。正常(n=9)和癌组织(n=15)的组织切片用 BGN 单克隆抗体(M01-Abnova)和 3,3'-二氨基联苯胺(DAB)作为显色剂进行免疫组化分析。使用任意 DAB 单位的 D-HScore 对幻灯片的显微照片进行分析。另一组(n=129)不选择 ROI,具有更高的放大倍数,提交给 inceptionV3 深度神经网络图像嵌入识别模型。然后,使用分层 20 折交叉验证、200 个隐藏层、ReLU 激活和正则化 α = 0.0001 进行监督神经网络分析,应用于 SDLNN。根据 7 例和 7 例对照的最小样本量进行了样本量计算,具有 90%的功率、5%的α误差和 20 的标准差,以确定从对照组 40 个 DAB 单位(平均)的减少到癌症组 4 个 DAB 单位。使用 D-HScore,BGN 在 DAB 单位中的表达[中位数(范围)]在癌症和正常乳腺组织中分别为 6.2(0.8 至 12.4)和 27.31(5.3 至 81.7)(p=0.0017,Mann-Whitney 检验)。SDLNN 的分类准确率为 85.3%(110 例中有 129 例;95%置信区间=78.1%至 90.3%)。与正常组织相比,BGN 蛋白在乳腺癌组织中的表达减少。