TiCoNE 2: A Composite Clustering Model for Robust Cluster Analyses on Noisy Data
Christian Wiwie, Richard R\"ottger, Jan Baumbach

TL;DR
TiCoNE 2 introduces a composite clustering model that integrates multiple data types, including time-series and network data, to improve robustness and accuracy in noisy biomedical datasets.
Contribution
It extends the original TiCoNE approach to seamlessly incorporate multiple data types, enhancing cluster recovery and noise robustness in biomedical data analysis.
Findings
Successfully recovers embedded cluster patterns in noisy data.
More robust to noise than single data type models.
Effectively distinguishes foreground from background clusters.
Abstract
Identifying groups of similar objects using clustering approaches is one of the most frequently employed first steps in exploratory biomedical data analysis. Many clustering methods have been developed that pursue different strategies to identify the optimal clustering for a data set. We previously published TiCoNE, an interactive clustering approach coupled with de-novo network enrichment of identified clusters. However, in this first version time-series and network analysis remained two separate steps in that only time-series data was clustered, and identified clusters mapped to and enriched within a network in a second separate step. In this work, we present TiCoNE 2: An extension that can now seamlessly incorporate multiple data types within its composite clustering model. Systematic evaluation on 50 random data sets, as well as on 2,400 data sets containing enriched cluster…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Biomedical Text Mining and Ontologies · Gene expression and cancer classification
