Joint analysis of multiple biomarker images and tissue morphology is important for disease diagnosis, treatment planning and drug development. It requires cross-staining comparison among Whole Slide Images (WSIs) of immuno-histochemical and hematoxylin and eosin (H&E) microscopic slides. However, automatic, and fast cross-staining alignment of enormous gigapixel WSIs at single-cell precision is challenging. In addition to morphological deformations introduced during slide preparation, there are large variations in cell appearance and tissue morphology across different staining. In this paper, we propose a two-step automatic feature-based cross-staining WSI alignment to assist localization of even tiny metastatic foci in the assessment of lymph node. Image pairs were aligned allowing for translation, rotation, and scaling. The registration was performed automatically by first detecting landmarks in both images, using the scale-invariant image transform (SIFT), followed by the fast sample consensus (FSC) protocol for finding point correspondences and finally aligned the images. The Registration results were evaluated using both visual and quantitative criteria using the Jaccard index. The average Jaccard similarity index of the results produced by the proposed system is 0.942 when compared with the manual registration.
翻译:对多种生物标志图像和组织形态进行联合分析对于疾病诊断、治疗规划和药物开发十分重要,这要求对免疫-精神化学、血氧素和衣原体微型幻灯片的整个幻灯片图像(SSIs)进行交叉比对,但是,在单细胞精确度上对巨大的千兆像素 WSI进行自动和快速交叉比对具有挑战性。除了在幻灯片制作过程中引入的形态变形外,细胞外观和组织形态在不同染色上也有很大的变异。在本文件中,我们提议在对淋巴结进行评估时,采用双步自动地自动基于地貌的跨面涂层图像(SSIs),以协助即使是微小的转移性叶尘变异物的本地化。对成像配对允许翻译、旋转和缩放。登记工作是自动进行的,首先利用规模变异图图变图(SIFT)探测两个图像的标志,随后是快速样本共识(FSC)协议,以查找点对图像进行对比,最后对图像进行比对准。在使用视觉和定量手动指数时,对登记结果进行了对比。在使用拟议的硬质指数时,用模拟记录后,用比较的硬质记录结果对结果进行了评估。