| Literature DB >> 26592652 |
Qin Yang1, Hong-Yan Zou2, Yan Zhang3, Li-Juan Tang3, Guo-Li Shen3, Jian-Hui Jiang3, Ru-Qin Yu3.
Abstract
Most of the proteins locate more than one organelle in a cell. Unmixing the localization patterns of proteins is critical for understanding the protein functions and other vital cellular processes. Herein, non-linear machine learning technique is proposed for the first time upon protein pattern unmixing. Variable-weighted support vector machine (VW-SVM) is a demonstrated robust modeling technique with flexible and rational variable selection. As optimized by a global stochastic optimization technique, particle swarm optimization (PSO) algorithm, it makes VW-SVM to be an adaptive parameter-free method for automated unmixing of protein subcellular patterns. Results obtained by pattern unmixing of a set of fluorescence microscope images of cells indicate VW-SVM as optimized by PSO is able to extract useful pattern features by optimally rescaling each variable for non-linear SVM modeling, consequently leading to improved performances in multiplex protein pattern unmixing compared with conventional SVM and other exiting pattern unmixing methods.Keywords: Non-linear machine learning; Pattern unmixing; Protein distribution; Support vector machine; Variable weight
Mesh:
Year: 2015 PMID: 26592652 DOI: 10.1016/j.talanta.2015.10.047
Source DB: PubMed Journal: Talanta ISSN: 0039-9140 Impact factor: 6.057