| Literature DB >> 32283771 |
Dragos Cretoiu1,2, Simona Roatesi3, Ion Bica4, Cezar Plesca3, Amado Stefan5, Oana Bajenaru6, Carmen Elena Condrat2, Sanda Maria Cretoiu1.
Abstract
BACKGROUND: Telocytes (TCs) are unique interstitial or stromal cells of mesodermal origin, defined by long cellular extensions called telopodes (Tps) which form a network, connecting them to surrounding cells. TCs were previously found around stem and progenitor cells, and were thought to be most likely involved in local tissue metabolic equilibrium and regeneration. The roles of telocytes are still under scientific scrutiny, with existing studies suggesting they possess various functions depending on their location.Entities:
Keywords: content-based image retrieval; image indexation; modeling of living cell behavior; telocyte network tracking and indexing; telocytes; viscoelastic constitutive laws
Mesh:
Year: 2020 PMID: 32283771 PMCID: PMC7177713 DOI: 10.3390/ijms21072615
Source DB: PubMed Journal: Int J Mol Sci ISSN: 1422-0067 Impact factor: 5.923
Figure 1The numerical results of telopode elongation at t = 0 s (a) and t = 0.1027 s (b), obtained through the finite element method model using a viscoelastic constitutive law for the mathematical model [4]. The numerical model simulates the telopode elongation, the main feature of telocytes (TCs) behavior, and it presents the tracking of the interface between phase 0 (outside the telocyte, marked in blue) and phase 1 (the telocyte body marked in red) by the volume fraction entity.
Figure 2Comparison of semi-analytical and numerical solutions for the same data. The difference between the two types of solutions is due to the inherent limitations of the semi-analytical solution. The numerical solution is able to provide more information regarding the entities involved in the problem considered, while the semi-analytical solution, which is faster, is necessary for validating the numerical calculation [4].
Figure 3Example of similar images based on texture features. First, the texture feature vector is computed on the query image and then it is compared with vectors from the database.
Figure 4Two kernels centered in the same point. The inner kernel with the radius is tracking the black area and the outer kernel with the radius is tracking the white area.
Figure 5Kernel parts enumeration.
Figure 6The length of the segment is and the length of the segment is rw.
Figure 7The black circle (inside the emphasized region) represents the center of the kernel that tracks the white cell. The order of frames is from left to right and from top to bottom. It is seen that the cell is shrinking with each frame and the kernel converges to the center of the cell.
Figure 8Content Based Image Retrieval (CBIR) Application.