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Dive into the research topics where Deborah Chasman is active.

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Featured researches published by Deborah Chasman.


Plant Physiology | 2015

Deep Sequencing of the Medicago truncatula Root Transcriptome Reveals a Massive and Early Interaction between Nodulation Factor and Ethylene Signals

Estíbaliz Larrainzar; Brendan K. Riely; Sang Cheol Kim; Noelia Carrasquilla-Garcia; Hee-Ju Yu; Hyun-Ju Hwang; Mijin Oh; Goon Bo Kim; Anandkumar Surendrarao; Deborah Chasman; Alireza Fotuhi Siahpirani; Ramachandra Varma Penmetsa; Gang-Seob Lee; Namshin Kim; Sushmita Roy; Jeong-Hwan Mun; Douglas R. Cook

Transcriptional reprogramming is regulated by Nod factor-induced ethylene signaling. The legume-rhizobium symbiosis is initiated through the activation of the Nodulation (Nod) factor-signaling cascade, leading to a rapid reprogramming of host cell developmental pathways. In this work, we combine transcriptome sequencing with molecular genetics and network analysis to quantify and categorize the transcriptional changes occurring in roots of Medicago truncatula from minutes to days after inoculation with Sinorhizobium medicae. To identify the nature of the inductive and regulatory cues, we employed mutants with absent or decreased Nod factor sensitivities (i.e. Nodulation factor perception and Lysine motif domain-containing receptor-like kinase3, respectively) and an ethylene (ET)-insensitive, Nod factor-hypersensitive mutant (sickle). This unique data set encompasses nine time points, allowing observation of the symbiotic regulation of diverse biological processes with high temporal resolution. Among the many outputs of the study is the early Nod factor-induced, ET-regulated expression of ET signaling and biosynthesis genes. Coupled with the observation of massive transcriptional derepression in the ET-insensitive background, these results suggest that Nod factor signaling activates ET production to attenuate its own signal. Promoter:β-glucuronidase fusions report ET biosynthesis both in root hairs responding to rhizobium as well as in meristematic tissue during nodule organogenesis and growth, indicating that ET signaling functions at multiple developmental stages during symbiosis. In addition, we identified thousands of novel candidate genes undergoing Nod factor-dependent, ET-regulated expression. We leveraged the power of this large data set to model Nod factor- and ET-regulated signaling networks using MERLIN, a regulatory network inference algorithm. These analyses predict key nodes regulating the biological process impacted by Nod factor perception. We have made these results available to the research community through a searchable online resource.


Molecular Systems Biology | 2014

Pathway connectivity and signaling coordination in the yeast stress‐activated signaling network

Deborah Chasman; Yi-Hsuan Ho; David B. Berry; Corey M. Nemec; Matthew E. MacGilvray; James Hose; Anna E. Merrill; M. Violet Lee; Jessica L. Will; Joshua J. Coon; Aseem Z. Ansari; Mark Craven; Audrey P. Gasch

Stressed cells coordinate a multi‐faceted response spanning many levels of physiology. Yet knowledge of the complete stress‐activated regulatory network as well as design principles for signal integration remains incomplete. We developed an experimental and computational approach to integrate available protein interaction data with gene fitness contributions, mutant transcriptome profiles, and phospho‐proteome changes in cells responding to salt stress, to infer the salt‐responsive signaling network in yeast. The inferred subnetwork presented many novel predictions by implicating new regulators, uncovering unrecognized crosstalk between known pathways, and pointing to previously unknown ‘hubs’ of signal integration. We exploited these predictions to show that Cdc14 phosphatase is a central hub in the network and that modification of RNA polymerase II coordinates induction of stress‐defense genes with reduction of growth‐related transcripts. We find that the orthologous human network is enriched for cancer‐causing genes, underscoring the importance of the subnetworks predictions in understanding stress biology.


Current Opinion in Biotechnology | 2016

Network-based approaches for analysis of complex biological systems

Deborah Chasman; Alireza Fotuhi Siahpirani; Sushmita Roy

Cells function and respond to changes in their environment by the coordinated activity of their molecular components, including mRNAs, proteins and metabolites. At the heart of proper cellular function are molecular networks connecting these components to process extra-cellular environmental signals and drive dynamic, context-specific cellular responses. Network-based computational approaches aim to systematically integrate measurements from high-throughput experiments to gain a global understanding of cellular function under changing environmental conditions. We provide an overview of recent methodological developments toward solving two major computational problems within this field in the past two years (2013-2015): network reconstruction and network-based interpretation. Looking forward, we envision development of methods that can predict phenotypes with high accuracy as well as provide biologically plausible mechanistic hypotheses.


Nucleic Acids Research | 2015

A predictive modeling approach for cell line-specific long-range regulatory interactions

Sushmita Roy; Alireza Fotuhi Siahpirani; Deborah Chasman; Sara A. Knaack; Ferhat Ay; Ron Stewart; Michael D. Wilson; Rupa Sridharan

Long range regulatory interactions among distal enhancers and target genes are important for tissue-specific gene expression. Genome-scale identification of these interactions in a cell line-specific manner, especially using the fewest possible datasets, is a significant challenge. We develop a novel computational approach, Regulatory Interaction Prediction for Promoters and Long-range Enhancers (RIPPLE), that integrates published Chromosome Conformation Capture (3C) data sets with a minimal set of regulatory genomic data sets to predict enhancer-promoter interactions in a cell line-specific manner. Our results suggest that CTCF, RAD21, a general transcription factor (TBP) and activating chromatin marks are important determinants of enhancer-promoter interactions. To predict interactions in a new cell line and to generate genome-wide interaction maps, we develop an ensemble version of RIPPLE and apply it to generate interactions in five human cell lines. Computational validation of these predictions using existing ChIA-PET and Hi-C data sets showed that RIPPLE accurately predicts interactions among enhancers and promoters. Enhancer-promoter interactions tend to be organized into subnetworks representing coordinately regulated sets of genes that are enriched for specific biological processes and cis-regulatory elements. Overall, our work provides a systematic approach to predict and interpret enhancer-promoter interactions in a genome-wide cell-type specific manner using a few experimentally tractable measurements.


Plant Physiology | 2017

Physiological Responses and Gene Co-Expression Network of Mycorrhizal Roots under K+ Deprivation

Kevin Garcia; Deborah Chasman; Sushmita Roy; Jean-Michel Ané

Arbuscular mycorrhizal symbiosis compensates the transcriptional response of M. truncatula roots at low potassium level and activates specific mechanisms to tolerate long-term potassium deprivation. Arbuscular mycorrhizal (AM) associations enhance the phosphorous and nitrogen nutrition of host plants, but little is known about their role in potassium (K+) nutrition. Medicago truncatula plants were cocultured with the AM fungus Rhizophagus irregularis under high and low K+ regimes for 6 weeks. We determined how K+ deprivation affects plant development and mineral acquisition and how these negative effects are tempered by the AM colonization. The transcriptional response of AM roots under K+ deficiency was analyzed by whole-genome RNA sequencing. K+ deprivation decreased root biomass and external K+ uptake and modulated oxidative stress gene expression in M. truncatula roots. AM colonization induced specific transcriptional responses to K+ deprivation that seem to temper these negative effects. A gene network analysis revealed putative key regulators of these responses. This study confirmed that AM associations provide some tolerance to K+ deprivation to host plants, revealed that AM symbiosis modulates the expression of specific root genes to cope with this nutrient stress, and identified putative regulators participating in these tolerance mechanisms.


Nature Methods | 2017

The inconvenience of data of convenience: Computational research beyond post-mortem analyses

Chloé-Agathe Azencott; Tero Aittokallio; Sushmita Roy; Ankit Agrawal; Emmanuel Barillot; Nikolai Bessonov; Deborah Chasman; Urszula Czerwinska; Alireza Fotuhi Siahpirani; Stephen H. Friend; Anna Goldenberg; Jan S. Greenberg; Manuel B. Huber; Samuel Kaski; Christoph Kurz; Marsha R. Mailick; Michael M. Merzenich; Nadya Morozova; Arezoo Movaghar; Mor Nahum; Torbjörn E. M. Nordling; Thea Norman; R. C. Penner; Krishanu Saha; Asif Salim; Siamak Sorooshyari; Vassili Soumelis; Alit Stark-Inbar; Audra Sterling; Gustavo Stolovitzky

The inconvenience of data of convenience: computational research beyond post-mortem analyses


PLOS Computational Biology | 2016

Integrating Transcriptomic and Proteomic Data Using Predictive Regulatory Network Models of Host Response to Pathogens

Deborah Chasman; Kevin B. Walters; Tiago J. S. Lopes; Amie J. Eisfeld; Yoshihiro Kawaoka; Sushmita Roy

Mammalian host response to pathogenic infections is controlled by a complex regulatory network connecting regulatory proteins such as transcription factors and signaling proteins to target genes. An important challenge in infectious disease research is to understand molecular similarities and differences in mammalian host response to diverse sets of pathogens. Recently, systems biology studies have produced rich collections of omic profiles measuring host response to infectious agents such as influenza viruses at multiple levels. To gain a comprehensive understanding of the regulatory network driving host response to multiple infectious agents, we integrated host transcriptomes and proteomes using a network-based approach. Our approach combines expression-based regulatory network inference, structured-sparsity based regression, and network information flow to infer putative physical regulatory programs for expression modules. We applied our approach to identify regulatory networks, modules and subnetworks that drive host response to multiple influenza infections. The inferred regulatory network and modules are significantly enriched for known pathways of immune response and implicate apoptosis, splicing, and interferon signaling processes in the differential response of viral infections of different pathogenicities. We used the learned network to prioritize regulators and study virus and time-point specific networks. RNAi-based knockdown of predicted regulators had significant impact on viral replication and include several previously unknown regulators. Taken together, our integrated analysis identified novel module level patterns that capture strain and pathogenicity-specific patterns of expression and helped identify important regulators of host response to influenza infection.


Bioinformatics | 2016

Multi-task consensus clustering of genome-wide transcriptomes from related biological conditions.

Zhen Niu; Deborah Chasman; Amie J. Eisfeld; Yoshihiro Kawaoka; Sushmita Roy

MOTIVATION Identifying the shared and pathogen-specific components of host transcriptional regulatory programs is important for understanding the principles of regulation of immune response. Recent efforts in systems biology studies of infectious diseases have resulted in a large collection of datasets measuring host transcriptional response to various pathogens. Computational methods to identify and compare gene expression modules across different infections offer a powerful way to identify strain-specific and shared components of the regulatory program. An important challenge is to identify statistically robust gene expression modules as well as to reliably detect genes that change their module memberships between infections. RESULTS We present MULCCH (MULti-task spectral Consensus Clustering for Hierarchically related tasks), a consensus extension of a multi-task clustering algorithm to infer high-confidence strain-specific host response modules under infections from multiple virus strains. On simulated data, MULCCH more accurately identifies genes exhibiting pathogen-specific patterns compared to non-consensus and nonmulti-task clustering approaches. Application of MULCCH to mammalian transcriptional response to a panel of influenza viruses showed that our method identifies clusters with greater coherence compared to non-consensus methods. Further, MULCCH derived clusters are enriched for several immune system-related processes and regulators. In summary, MULCCH provides a reliable module-based approach to identify molecular pathways and gene sets characterizing commonality and specificity of host response to viruses of different pathogenicities. AVAILABILITY AND IMPLEMENTATION The source code is available at https://bitbucket.org/roygroup/mulcch CONTACT [email protected] SUPPLEMENTARY INFORMATION Supplementary data are available at Bioinformatics online.


PLOS Computational Biology | 2014

Inferring Host Gene Subnetworks Involved in Viral Replication

Deborah Chasman; Brandi Gancarz; Linhui Hao; Michael C. Ferris; Paul Ahlquist; Mark Craven

Systematic, genome-wide loss-of-function experiments can be used to identify host factors that directly or indirectly facilitate or inhibit the replication of a virus in a host cell. We present an approach that combines an integer linear program and a diffusion kernel method to infer the pathways through which those host factors modulate viral replication. The inputs to the method are a set of viral phenotypes observed in single-host-gene mutants and a background network consisting of a variety of host intracellular interactions. The output is an ensemble of subnetworks that provides a consistent explanation for the measured phenotypes, predicts which unassayed host factors modulate the virus, and predicts which host factors are the most direct interfaces with the virus. We infer host-virus interaction subnetworks using data from experiments screening the yeast genome for genes modulating the replication of two RNA viruses. Because a gold-standard network is unavailable, we assess the predicted subnetworks using both computational and qualitative analyses. We conduct a cross-validation experiment in which we predict whether held-aside test genes have an effect on viral replication. Our approach is able to make high-confidence predictions more accurately than several baselines, and about as well as the best baseline, which does not infer mechanistic pathways. We also examine two kinds of predictions made by our method: which host factors are nearest to a direct interaction with a viral component, and which unassayed host genes are likely to be involved in viral replication. Multiple predictions are supported by recent independent experimental data, or are components or functional partners of confirmed relevant complexes or pathways. Integer program code, background network data, and inferred host-virus subnetworks are available at http://www.biostat.wisc.edu/~craven/chasman_host_virus/.


PLOS Computational Biology | 2018

Network inference reveals novel connections in pathways regulating growth and defense in the yeast salt response

Matthew E. MacGilvray; Evgenia Shishkova; Deborah Chasman; Michael Place; Anthony Gitter; Joshua J. Coon; Audrey P. Gasch

Cells respond to stressful conditions by coordinating a complex, multi-faceted response that spans many levels of physiology. Much of the response is coordinated by changes in protein phosphorylation. Although the regulators of transcriptome changes during stress are well characterized in Saccharomyces cerevisiae, the upstream regulatory network controlling protein phosphorylation is less well dissected. Here, we developed a computational approach to infer the signaling network that regulates phosphorylation changes in response to salt stress. We developed an approach to link predicted regulators to groups of likely co-regulated phospho-peptides responding to stress, thereby creating new edges in a background protein interaction network. We then use integer linear programming (ILP) to integrate wild type and mutant phospho-proteomic data and predict the network controlling stress-activated phospho-proteomic changes. The network we inferred predicted new regulatory connections between stress-activated and growth-regulating pathways and suggested mechanisms coordinating metabolism, cell-cycle progression, and growth during stress. We confirmed several network predictions with co-immunoprecipitations coupled with mass-spectrometry protein identification and mutant phospho-proteomic analysis. Results show that the cAMP-phosphodiesterase Pde2 physically interacts with many stress-regulated transcription factors targeted by PKA, and that reduced phosphorylation of those factors during stress requires the Rck2 kinase that we show physically interacts with Pde2. Together, our work shows how a high-quality computational network model can facilitate discovery of new pathway interactions during osmotic stress.

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Sushmita Roy

University of Wisconsin-Madison

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Shilu Zhang

University of Wisconsin-Madison

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Amie J. Eisfeld

University of Wisconsin-Madison

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Audrey P. Gasch

University of Wisconsin-Madison

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Joshua J. Coon

University of Wisconsin-Madison

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Mark Craven

University of Wisconsin-Madison

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Matthew E. MacGilvray

University of Wisconsin-Madison

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Sara A. Knaack

University of Wisconsin-Madison

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Yoshihiro Kawaoka

University of Wisconsin-Madison

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