| Literature DB >> 33345996 |
Takashi Ohnishi1, Alexei Teplov2, Noboru Kawata3, Kareem Ibrahim2, Peter Ntiamoah2, Canan Firat2, Hideaki Haneishi4, Meera Hameed2, Jinru Shia2, Yukako Yagi2.
Abstract
In the field of pathology, micro-computed tomography (micro-CT) has become an attractive imaging modality because it enables full analysis of the three-dimensional characteristics of a tissue sample or organ in a noninvasive manner. However, because of the complexity of the three-dimensional information, understanding would be improved by development of analytical methods and software such as those implemented for clinical CT. As the accurate identification of tissue components is critical for this purpose, we have developed a deep neural network (DNN) to analyze whole-tissue images (WTIs) and whole-block images (WBIs) of neoplastic cancer tissue using micro-CT. The aim of this study was to segment vessels from WTIs and WBIs in a volumetric segmentation method using DNN. To accelerate the segmentation process while retaining accuracy, a convolutional block in DNN was improved by introducing a residual inception block. Three colorectal tissue samples were collected and one WTI and 70 WBIs were acquired by a micro-CT scanner. The implemented segmentation method was then tested on the WTI and WBIs. As a proof-of-concept study, our method successfully segmented the vessels on all WTI and WBIs of the colorectal tissue sample. In addition, despite the large size of the images for analysis, all segmentation processes were completed in 10 minutes.Entities:
Mesh:
Year: 2020 PMID: 33345996 PMCID: PMC7927274 DOI: 10.1016/j.ajpath.2020.12.008
Source DB: PubMed Journal: Am J Pathol ISSN: 0002-9440 Impact factor: 4.307