Physiological Signal Analysis Group, Center for Machine Vision and Signal Analysis, University of Oulu, Finland; Faculty of Information Technology and Electrical Engineering, University of Oulu, Finland.
Physiological Signal Analysis Group, Center for Machine Vision and Signal Analysis, University of Oulu, Finland; Faculty of Information Technology and Electrical Engineering, University of Oulu, Finland.
Comput Biol Med. 2022 May;144:105301. doi: 10.1016/j.compbiomed.2022.105301. Epub 2022 Feb 17.
In the recent decade, medical image registration and fusion process has emerged as an effective application to follow up diseases and decide the necessary therapies based on the conditions of patient. For many of the considerable diagnostic analyses, it is common practice to assess two or more different histological slides or images from one tissue sample. A specific area analysis of two image modalities requires an overlay of the images to distinguish positions in the sample that are organized at a similar coordinate in both images. In particular cases, there are two common challenges in digital pathology: first, dissimilar appearances of images resulting due to staining variances and artifacts; second, large image size. In this paper, we develop algorithm to overcome the fact that scanners from different manufacturers have variations in the images. We propose whole slide image registration algorithm where adaptive smoothing is employed to smooth the stained image. A modified scale-invariant feature transform is applied to extract common information and a joint distance helps to match keypoints correctly by eliminating position transformation error. Finally, the registered image is obtained by utilizing correct correspondences and the interpolation of color intensities. We validate our proposal using different images acquired from surgical resection samples of lung cancer (adenocarcinoma). Extensive feature matching with apparently increasing correct correspondences and registration performance on several images demonstrate the superiority of our method over state-of-the-art methods. Our method potentially improves the matching accuracy that might be beneficial for computer-aided diagnosis in biobank applications.
在最近十年中,医学图像配准和融合技术已经成为一种有效的应用,可以根据患者的情况跟踪疾病并决定必要的治疗方法。对于许多重要的诊断分析,评估来自一个组织样本的两个或更多不同的组织学幻灯片或图像是常见的做法。两种图像模式的特定区域分析需要对图像进行叠加,以区分在两个图像中以相似坐标组织的样本中的位置。在特殊情况下,数字病理学中有两个常见的挑战:首先,由于染色差异和伪影导致图像外观不同;其次,图像尺寸较大。在本文中,我们开发了一种算法来克服不同制造商的扫描仪在图像上存在差异的问题。我们提出了一种全幻灯片图像配准算法,其中采用自适应平滑来平滑染色图像。应用改进的尺度不变特征变换来提取共同信息,联合距离有助于通过消除位置变换误差正确匹配关键点。最后,通过利用正确的对应关系和颜色强度的插值来获得注册图像。我们使用从肺癌(腺癌)手术切除样本中获取的不同图像来验证我们的方法。在对几个图像的广泛特征匹配中,明显增加了正确的对应关系,并且注册性能也得到了提高,这表明我们的方法优于最先进的方法。我们的方法有可能提高匹配准确性,这可能对生物库应用中的计算机辅助诊断有益。