Title
Density peaks based clustering for single-cell interpretation via multikernel learning.
Abstract
The development in single-cell technology has enabled to quantify the high throughput gene expressions of individual cell, and it became possible to discover heterogeneity at cell level. To detect heterogeneity within cell population remains challenging in presence of outliers, biological noise, and dropouts. SIMLR (single-cell interpretation via multikernel learning) has been proposed to measure cell to cell similarity, dimensional reduction, clustering, and visualization of scRNA-seq data. SIMLR uses K-means to organize the cells into the predefined number of types, which is a significant drawback of SIMLR toward adaptive analysis of scRNA-seq data. In this paper, we introduced density peaks based clustering for single-cell interpretation via multikernel learning (DP-SIMLR), an adaptive approach to discover biological meaningful heterogeneity within the individual cell population. The DP-SIMLR is an extension of SIMLR, where the concept of density peaks is employed to discover heterogeneity within the cell population, adaptively. We have evaluated the DP-SIMLR on four scRNA-seq datasets and the results are compared with SIMLR.
Year
DOI
Venue
2018
10.1016/j.procs.2019.01.187
Procedia Computer Science
Keywords
Field
DocType
Data mining,single cell RNA-seq,clustering
Data mining,Population,Expression (mathematics),Visualization,Computer science,Outlier,Multikernel,Dimensional reduction,Throughput,Cluster analysis
Conference
Volume
ISSN
Citations 
147
1877-0509
0
PageRank 
References 
Authors
0.34
0
6
Name
Order
Citations
PageRank
Samina Kausar1123.91
Rashid Mehmood235545.46
Muhammad Shahid Iqbal300.68
Rongfang Bie454768.23
Shujaat Ali500.34
Yasir Shabir600.34