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RGBM: regularized gradient boosting machines for identification of the transcriptional regulators of discrete glioma subtypes
Author(s) -
Raghvendra Mall,
Luigi Cerulo,
Luciano Garofano,
Veroniquè Frattini,
Khalid Kunji,
Halima Bensmail,
Thaís S. Sabedot,
Houtan Noushmehr,
Anna Lasorella,
Antonio Iavarone,
Michele Ceccarelli
Publication year - 2018
Publication title -
nucleic acids research
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 9.008
H-Index - 537
eISSN - 1362-4954
pISSN - 0305-1048
DOI - 10.1093/nar/gky015
Subject(s) - biology , inference , computational biology , gene regulatory network , regularization (linguistics) , gradient boosting , boosting (machine learning) , feature selection , random forest , gene expression profiling , gene , artificial intelligence , computer science , machine learning , gene expression , genetics
We propose a generic framework for gene regulatory network (GRN) inference approached as a feature selection problem. GRNs obtained using Machine Learning techniques are often dense, whereas real GRNs are rather sparse. We use a Tikonov regularization inspired optimal L-curve criterion that utilizes the edge weight distribution for a given target gene to determine the optimal set of TFs associated with it. Our proposed framework allows to incorporate a mechanistic active biding network based on cis-regulatory motif analysis. We evaluate our regularization framework in conjunction with two non-linear ML techniques, namely gradient boosting machines (GBM) and random-forests (GENIE), resulting in a regularized feature selection based method specifically called RGBM and RGENIE respectively. RGBM has been used to identify the main transcription factors that are causally involved as master regulators of the gene expression signature activated in the FGFR3-TACC3-positive glioblastoma. Here, we illustrate that RGBM identifies the main regulators of the molecular subtypes of brain tumors. Our analysis reveals the identity and corresponding biological activities of the master regulators characterizing the difference between G-CIMP-high and G-CIMP-low subtypes and between PA-like and LGm6-GBM, thus providing a clue to the yet undetermined nature of the transcriptional events among these subtypes.

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