| Literature DB >> 24583602 |
Zhankun Xi1, Swanand Khare2, Aaron Cheung3, Biao Huang4, Tianhong Pan5, Weiping Zhang6, Fadi Ibrahim7, Can Jin8, Stephan Gabos9.
Abstract
In this paper, we present a new statistical pattern recognition method for classifying cytotoxic cellular responses to toxic agents. The advantage of the proposed method is to quickly assess the toxicity level of an unclassified toxic agent on human health by bringing cytotoxic cellular responses with similar patterns (mode of action, MoOA) into the same class. The proposed method is a model-based hierarchical classification approach incorporating principal component analysis (PCA) and functional data analysis (FDA). The cytotoxic cell responses are represented by multi-concentration time-dependent cellular response profiles (TCRPs) which are dynamically recorded by using the xCELLigence real-time cell analysis high-throughput (RTCA HT) system. The classification results obtained using our algorithm show satisfactory discrimination and are validated using biological facts by examining common chemical mechanisms of actions with treatment on human hepatocellular carcinoma cells (HepG2).Entities:
Keywords: Functional data analysis; Hierarchical classification; Mode of action; Principal component analysis; Time-dependent cellular response profiles
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Year: 2014 PMID: 24583602 DOI: 10.1016/j.compbiolchem.2013.12.004
Source DB: PubMed Journal: Comput Biol Chem ISSN: 1476-9271 Impact factor: 2.877