Dissecting cancer heterogeneity based on dimension reduction of transcriptomic profiles using extreme learning machines
Sep 14, 2018·

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Kejun Wang
1st Author
Xin DUAN
Co-1st Author
Feng GAO
Co-1st Author
,Wei Wang
Liangliang Liu
Xin Wang
Corresponding Author
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0 min readAbstract
It is becoming increasingly clear that major malignancies such as breast, colorectal and gastric cancers are not single disease entities, but comprising multiple cancer subtypes of distinct molecular properties. Molecular subtyping has been widely used to dissect inter-tumor biological heterogeneity, in relation to clinical outcomes. A key step of this methodology is to perform unsupervised classification of gene expression profiles, which, however, often suffers challenges of high-dimensionality, feature redundancy as well as noise and irrelevant information. To overcome these limitations, we propose ELM-CC, which employs hidden observation features obtained from extreme learning machines (ELMs) for cancer classification. To demonstrate the effectiveness and usefulness, we applied ELM-CC for gastric and ovarian cancer subtyping. Comparing with the widely-used consensus clustering method, our approach demonstrated much better clustering performance and identified molecular subtypes that are much more clinically relevant.
Type
Publication
PLoS ONE

