Literature DB >> 33961561

Computational Modeling of Gene-Specific Transcriptional Repression, Activation and Chromatin Interactions in Leukemogenesis by LASSO-Regularized Logistic Regression.

Nickolas Steinauer, Kevin Zhang, Chun Guo, Jinsong Zhang.   

Abstract

Many physiological and pathological pathways are dependent on gene-specific on/off regulation of transcription. Some genes are repressed, while others are activated. Although many previous studies have analyzed the mechanisms of gene-specific repression and activation, these studies are mainly based on the use of candidate genes, which are either repressed or activated, without simultaneously comparing and contrasting both groups of genes. There is also insufficient consideration of gene locations. Here we describe an integrated machine learning approach, using LASSO-regularized logistic regression, to model gene-specific repression and activation and the underlying contribution of chromatin interactions. LASSO-regularized logistic regression accurately predicted gene-specific transcriptional events and robustly detected the rate-limiting factors that underlie the differences of gene activation and repression. An example was provided by the leukemogenic transcription factor AML1-ETO, which is responsible for 10-15 percent of all acute myeloid leukemia cases. The analysis of AML1-ETO has also revealed novel networks of chromatin interactions and uncovered an unexpected role for E-proteins in AML1-ETO-p300 interactions and a role for the pre-existing gene state in governing the transcriptional response. Our results show that logistic regression-based probabilistic modeling is a promising tool to decipher mechanisms that integrate gene regulation and chromatin interactions in regulated transcription.

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Year:  2021        PMID: 33961561      PMCID: PMC8572318          DOI: 10.1109/TCBB.2021.3078128

Source DB:  PubMed          Journal:  IEEE/ACM Trans Comput Biol Bioinform        ISSN: 1545-5963            Impact factor:   3.710


  43 in total

Review 1.  ETO interacting proteins.

Authors:  Bruce A Hug; Mitchell A Lazar
Journal:  Oncogene       Date:  2004-05-24       Impact factor: 9.867

2.  Histone deacetylase 3 preferentially binds and collaborates with the transcription factor RUNX1 to repress AML1-ETO-dependent transcription in t(8;21) AML.

Authors:  Chun Guo; Jian Li; Nickolas Steinauer; Madeline Wong; Brent Wu; Alexandria Dickson; Markus Kalkum; Jinsong Zhang
Journal:  J Biol Chem       Date:  2020-02-18       Impact factor: 5.157

3.  Simple combinations of lineage-determining transcription factors prime cis-regulatory elements required for macrophage and B cell identities.

Authors:  Sven Heinz; Christopher Benner; Nathanael Spann; Eric Bertolino; Yin C Lin; Peter Laslo; Jason X Cheng; Cornelis Murre; Harinder Singh; Christopher K Glass
Journal:  Mol Cell       Date:  2010-05-28       Impact factor: 17.970

Review 4.  Role of RUNX family members in transcriptional repression and gene silencing.

Authors:  Kristie L Durst; Scott W Hiebert
Journal:  Oncogene       Date:  2004-05-24       Impact factor: 9.867

5.  Integration of ChIP-seq and machine learning reveals enhancers and a predictive regulatory sequence vocabulary in melanocytes.

Authors:  David U Gorkin; Dongwon Lee; Xylena Reed; Christopher Fletez-Brant; Seneca L Bessling; Stacie K Loftus; Michael A Beer; William J Pavan; Andrew S McCallion
Journal:  Genome Res       Date:  2012-09-27       Impact factor: 9.043

6.  p53, transcriptional, and drug sensitivity: fresh perspectives on an old activity.

Authors:  Maureen E Murphy
Journal:  Cell Cycle       Date:  2010-11-15       Impact factor: 4.534

7.  NF-kappaB mediated transcriptional repression of acid modifying hormone gastrin.

Authors:  Dipanjana Datta De; Arindam Datta; Sumana Bhattacharjya; Susanta Roychoudhury
Journal:  PLoS One       Date:  2013-08-23       Impact factor: 3.240

8.  A group LASSO-based method for robustly inferring gene regulatory networks from multiple time-course datasets.

Authors:  Li-Zhi Liu; Fang-Xiang Wu; Wen-Jun Zhang
Journal:  BMC Syst Biol       Date:  2014-10-22

9.  Network-constrained group lasso for high-dimensional multinomial classification with application to cancer subtype prediction.

Authors:  Xinyu Tian; Xuefeng Wang; Jun Chen
Journal:  Cancer Inform       Date:  2015-01-12

10.  Network-based regularization for high dimensional SNP data in the case-control study of Type 2 diabetes.

Authors:  Jie Ren; Tao He; Ye Li; Sai Liu; Yinhao Du; Yu Jiang; Cen Wu
Journal:  BMC Genet       Date:  2017-05-16       Impact factor: 2.797

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