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Consensus clustering with missing labels (ccml): a consensus clustering tool for multi-omics integrative prediction in cohorts with unequal sample coverage. | LitMetric

AI Article Synopsis

  • Multi-omics data integration in biomedical research faces challenges, especially with traditional consensus clustering methods that often assume similar sample coverages, which doesn't align with real-world biological data.
  • A new strategy called "ccml," implemented in R, addresses this by allowing for unequal missing labels during the consensus clustering process, accommodating varying data coverage from multiple predictive labels.
  • The ccml method has shown promise in effectively grouping molecular data in studies on chronic obstructive pulmonary disease and adult asthma, providing a valuable toolkit for researchers dealing with incomplete multi-omics datasets.

Article Abstract

Multi-omics data integration is a complex and challenging task in biomedical research. Consensus clustering, also known as meta-clustering or cluster ensembles, has become an increasingly popular downstream tool for phenotyping and endotyping using multiple omics and clinical data. However, current consensus clustering methods typically rely on ensembling clustering outputs with similar sample coverages (mathematical replicates), which may not reflect real-world data with varying sample coverages (biological replicates). To address this issue, we propose a new consensus clustering with missing labels (ccml) strategy termed ccml, an R protocol for two-step consensus clustering that can handle unequal missing labels (i.e. multiple predictive labels with different sample coverages). Initially, the regular consensus weights are adjusted (normalized) by sample coverage, then a regular consensus clustering is performed to predict the optimal final cluster. We applied the ccml method to predict molecularly distinct groups based on 9-omics integration in the Karolinska COSMIC cohort, which investigates chronic obstructive pulmonary disease, and 24-omics handprint integrative subgrouping of adult asthma patients of the U-BIOPRED cohort. We propose ccml as a downstream toolkit for multi-omics integration analysis algorithms such as Similarity Network Fusion and robust clustering of clinical data to overcome the limitations posed by missing data, which is inevitable in human cohorts consisting of multiple data modalities. The ccml tool is available in the R language (https://CRAN.R-project.org/package=ccml, https://github.com/pulmonomics-lab/ccml, or https://github.com/ZhoulabCPH/ccml).

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10782800PMC
http://dx.doi.org/10.1093/bib/bbad501DOI Listing

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