Localized Protein Quantification of Blood Brain Barrier Vasculature in Brightfield IHC Images
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https://figshare.com/articles/dataset/Localized_Protein_Quantification_of_Blood_Brain_Barrier_Vasculature_in_Brightfield_IHC_Images/1512834/232
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资源简介:
In this paper, we present an objective method for locally quantifying proteins in blood brain barrier (BBB) vasculature using standard immunohistochemistry (IHC) techniques and bright-field microscopy. Images from the hippocampal region at the BBB are acquired using bright-field microscopy and subjected to our immunohistochemistry quantification (IQ) algorithm which is designed to automatically identify and segment microvessels containing the protein glucose transporter 1 (GLUT1). Gabor filtering and k-means clustering are employed to isolate potential vascular structures within cryopsectioned slabs of the hippocampus, which are subsequently subjected to feature extraction followed by classification via decision forest. The false positive rate (FPR) of microvessel classification is characterized using synthetic and non-synthetic IHC image data for image entropies ranging between 3 and 8 bits. The average FPR for synthetic and non-synthetic IHC image data was found to be 5.48% and 5.04%, respectively.
本研究提出一种基于标准免疫组化(immunohistochemistry, IHC)技术与明场显微镜的客观方法,用于定量检测血脑屏障(blood brain barrier, BBB)血管系统中的局部蛋白表达。研究采集血脑屏障海马区的明场显微镜图像,并将其输入本研究开发的免疫组化定量(immunohistochemistry quantification, IQ)算法,该算法可自动识别并分割表达葡萄糖转运蛋白1(glucose transporter 1, GLUT1)的微血管。研究采用Gabor滤波与k均值聚类,从海马冷冻切片标本中分离潜在血管结构,随后对其开展特征提取,并通过决策森林完成分类。本研究针对图像熵介于3至8比特的合成与非合成免疫组化图像数据,对微血管分类的假阳性率(false positive rate, FPR)进行性能表征。实验结果表明,合成与非合成免疫组化图像数据的平均假阳性率分别为5.48%与5.04%。
提供机构:
figshare
创建时间:
2016-01-20



