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2.
Cell Rep ; 42(8): 112875, 2023 08 29.
Article in English | MEDLINE | ID: mdl-37542718

ABSTRACT

The success of Mycobacterium tuberculosis (Mtb) is largely attributed to its ability to physiologically adapt and withstand diverse localized stresses within host microenvironments. Here, we present a data-driven model (EGRIN 2.0) that captures the dynamic interplay of environmental cues and genome-encoded regulatory programs in Mtb. Analysis of EGRIN 2.0 shows how modulation of the MtrAB two-component signaling system tunes Mtb growth in response to related host microenvironmental cues. Disruption of MtrAB by tunable CRISPR interference confirms that the signaling system regulates multiple peptidoglycan hydrolases, among other targets, that are important for cell division. Further, MtrA decreases the effectiveness of antibiotics by mechanisms of both intrinsic resistance and drug tolerance. Together, the model-enabled dissection of complex MtrA regulation highlights its importance as a drug target and illustrates how EGRIN 2.0 facilitates discovery and mechanistic characterization of Mtb adaptation to specific host microenvironments within the host.


Subject(s)
Mycobacterium tuberculosis , Transcription Factors , Transcription Factors/genetics , Bacterial Proteins/genetics , Cell Division , Drug Tolerance
3.
Mol Cancer Ther ; 22(3): 406-418, 2023 03 02.
Article in English | MEDLINE | ID: mdl-36595660

ABSTRACT

In the TRANSCEND NHL 001 study, 53% of patients with relapsed/refractory large B-cell lymphoma (LBCL) treated with lisocabtagene maraleucel (liso-cel) achieved a complete response (CR). To determine characteristics of patients who did and did not achieve a CR, we examined the tumor biology and microenvironment from lymph node tumor biopsies. LBCL biopsies from liso-cel-treated patients were taken pretreatment and ∼11 days posttreatment for RNA sequencing (RNA-seq) and multiplex immunofluorescence (mIF). We analyzed gene expression data from pretreatment biopsies (N = 78) to identify gene sets enriched in patients who achieved a CR to those with progressive disease. Pretreatment biopsies from month-3 CR patients displayed higher expression levels of T-cell and stroma-associated genes, and lower expression of cell-cycle genes. To interpret whether LBCL samples were "follicular lymphoma (FL)-like," we constructed an independent gene expression signature and found that patients with a higher "FL-like" gene expression score had longer progression-free survival (PFS). Cell of origin was not associated with response or PFS, but double-hit gene expression was associated with shorter PFS. The day 11 posttreatment samples (RNA-seq, N = 73; mIF, N = 53) had higher levels of chimeric antigen receptor (CAR) T-cell densities and CAR gene expression, general immune infiltration, and immune activation in patients with CR. Further, the majority of T cells in the day 11 samples were endogenous. Gene expression signatures in liso-cel-treated patients with LBCL can inform the development of combination therapies and next-generation CAR T-cell therapies.


Subject(s)
Lymphoma, Follicular , Lymphoma, Large B-Cell, Diffuse , Receptors, Chimeric Antigen , Humans , Tumor Microenvironment , Biopsy , Genes, Neoplasm , Combined Modality Therapy , Immunotherapy, Adoptive , Antigens, CD19
4.
NPJ Precis Oncol ; 5(1): 60, 2021 Jun 28.
Article in English | MEDLINE | ID: mdl-34183722

ABSTRACT

Despite recent advancements in the treatment of multiple myeloma (MM), nearly all patients ultimately relapse and many become refractory to multiple lines of therapies. Therefore, we not only need the ability to predict which patients are at high risk for disease progression but also a means to understand the mechanisms underlying their risk. Here, we report a transcriptional regulatory network (TRN) for MM inferred from cross-sectional multi-omics data from 881 patients that predicts how 124 chromosomal abnormalities and somatic mutations causally perturb 392 transcription regulators of 8549 genes to manifest in distinct clinical phenotypes and outcomes. We identified 141 genetic programs whose activity profiles stratify patients into 25 distinct transcriptional states and proved to be more predictive of outcomes than did mutations. The coherence of these programs and accuracy of our network-based risk prediction was validated in two independent datasets. We observed subtype-specific vulnerabilities to interventions with existing drugs and revealed plausible mechanisms for relapse, including the establishment of an immunosuppressive microenvironment. Investigation of the t(4;14) clinical subtype using the TRN revealed that 16% of these patients exhibit an extreme-risk combination of genetic programs (median progression-free survival of 5 months) that create a distinct phenotype with targetable genes and pathways.

5.
PLoS Med ; 17(11): e1003323, 2020 11.
Article in English | MEDLINE | ID: mdl-33147277

ABSTRACT

BACKGROUND: The tumor microenvironment (TME) is increasingly appreciated as an important determinant of cancer outcome, including in multiple myeloma (MM). However, most myeloma microenvironment studies have been based on bone marrow (BM) aspirates, which often do not fully reflect the cellular content of BM tissue itself. To address this limitation in myeloma research, we systematically characterized the whole bone marrow (WBM) microenvironment during premalignant, baseline, on treatment, and post-treatment phases. METHODS AND FINDINGS: Between 2004 and 2019, 998 BM samples were taken from 436 patients with newly diagnosed MM (NDMM) at the University of Arkansas for Medical Sciences in Little Rock, Arkansas, United States of America. These patients were 61% male and 39% female, 89% White, 8% Black, and 3% other/refused, with a mean age of 58 years. Using WBM and matched cluster of differentiation (CD)138-selected tumor gene expression to control for tumor burden, we identified a subgroup of patients with an adverse TME associated with 17 fewer months of progression-free survival (PFS) (95% confidence interval [CI] 5-29, 49-69 versus 70-82 months, χ2 p = 0.001) and 15 fewer months of overall survival (OS; 95% CI -1 to 31, 92-120 versus 113-129 months, χ2 p = 0.036). Using immunohistochemistry-validated computational tools that identify distinct cell types from bulk gene expression, we showed that the adverse outcome was correlated with elevated CD8+ T cell and reduced granulocytic cell proportions. This microenvironment develops during the progression of premalignant to malignant disease and becomes less prevalent after therapy, in which it is associated with improved outcomes. In patients with quantified International Staging System (ISS) stage and 70-gene Prognostic Risk Score (GEP-70) scores, taking the microenvironment into consideration would have identified an additional 40 out of 290 patients (14%, premutation p = 0.001) with significantly worse outcomes (PFS, 95% CI 6-36, 49-73 versus 74-90 months) who were not identified by existing clinical (ISS stage III) and tumor (GEP-70) criteria as high risk. The main limitations of this study are that it relies on computationally identified cell types and that patients were treated with thalidomide rather than current therapies. CONCLUSIONS: In this study, we observe that granulocyte signatures in the MM TME contribute to a more accurate prognosis. This implies that future researchers and clinicians treating patients should quantify TME components, in particular monocytes and granulocytes, which are often ignored in microenvironment studies.


Subject(s)
Bone Marrow/pathology , Multiple Myeloma/diagnosis , Multiple Myeloma/pathology , Tumor Microenvironment , Adult , Cohort Studies , Female , Humans , Male , Middle Aged , Multiple Myeloma/drug therapy , Prognosis , Tumor Burden
6.
Gigascience ; 9(7)2020 07 01.
Article in English | MEDLINE | ID: mdl-32696951

ABSTRACT

BACKGROUND: Mechanistic models, when combined with pertinent data, can improve our knowledge regarding important molecular and cellular mechanisms found in cancer. These models make the prediction of tissue-level response to drug treatment possible, which can lead to new therapies and improved patient outcomes. Here we present a data-driven multiscale modeling framework to study molecular interactions between cancer, stromal, and immune cells found in the tumor microenvironment. We also develop methods to use molecular data available in The Cancer Genome Atlas to generate sample-specific models of cancer. RESULTS: By combining published models of different cells relevant to pancreatic ductal adenocarcinoma (PDAC), we built an agent-based model of the multicellular pancreatic tumor microenvironment, formally describing cell type-specific molecular interactions and cytokine-mediated cell-cell communications. We used an ensemble-based modeling approach to systematically explore how variations in the tumor microenvironment affect the viability of cancer cells. The results suggest that the autocrine loop involving EGF signaling is a key interaction modulator between pancreatic cancer and stellate cells. EGF is also found to be associated with previously described subtypes of PDAC. Moreover, the model allows a systematic exploration of the effect of possible therapeutic perturbations; our simulations suggest that reducing bFGF secretion by stellate cells will have, on average, a positive impact on cancer apoptosis. CONCLUSIONS: The developed framework allows model-driven hypotheses to be generated regarding therapeutically relevant PDAC states with potential molecular and cellular drivers indicating specific intervention strategies.


Subject(s)
Algorithms , Carcinoma, Pancreatic Ductal/etiology , Carcinoma, Pancreatic Ductal/pathology , Disease Susceptibility , Models, Biological , Autocrine Communication , Carcinoma, Pancreatic Ductal/metabolism , Cell Communication/genetics , Cytokines/metabolism , Gene Expression Regulation, Neoplastic , Humans , Organ Specificity , Paracrine Communication , Phenotype
7.
Clin Cancer Res ; 26(18): 4814-4822, 2020 09 15.
Article in English | MEDLINE | ID: mdl-32554514

ABSTRACT

PURPOSE: Assess safety and efficacy of nivolumab plus nab-paclitaxel and gemcitabine in patients with locally advanced/metastatic pancreatic cancer in a two-part, open-label, phase I trial. PATIENTS AND METHODS: Fifty chemotherapy-naive patients received nab-paclitaxel 125 mg/m2 plus gemcitabine 1,000 mg/m2 (days 1, 8, and 15) and nivolumab 3 mg/kg (days 1 and 15) in 28-day cycles. The primary endpoints were dose-limiting toxicities (DLTs; part 1) and grade 3/4 treatment-emergent adverse events (TEAEs) or treatment discontinuation due to TEAEs (parts 1/2). Secondary efficacy endpoints were progression-free survival (PFS), overall survival (OS), and response. Assessment of programmed cell death-ligand 1 (PD-L1) expression was an exploratory endpoint; additional biomarkers were assessed post hoc. RESULTS: One DLT (hepatitis) was reported in part 1 among six DLT-evaluable patients; 48 of 50 patients experienced grade 3/4 TEAEs and 18 discontinued treatment due to TEAEs. One grade 5 TEAE (respiratory failure) was reported. Median [95% confidence interval (CI)] PFS/OS was 5.5 (3.25-7.20 months)/9.9 (6.74-12.16 months) months, respectively [median follow-up for OS, 13.6 months (95% CI, 12.06-23.49 months)]. Overall response rate (95% CI) was 18% (8.6%-31.4%). Median PFS/OS was 5.5/9.7 months (PD-L1 <5%) and 6.8/11.6 months (PD-L1 ≥5%), respectively. Proportion of peripheral Ki67+ CD8+/CD4+ cells increased significantly from baseline to cycle 3; median peak on-treatment Ki67+ CD8+ T-cell values were higher in responders than in nonresponders. CONCLUSIONS: The safety profile of nivolumab plus nab-paclitaxel and gemcitabine at standard doses in advanced pancreatic cancer was manageable, with no unexpected safety signals. Overall, the clinical results of this study do not support further investigation.


Subject(s)
Albumins/adverse effects , Antineoplastic Combined Chemotherapy Protocols/adverse effects , Deoxycytidine/analogs & derivatives , Nivolumab/adverse effects , Paclitaxel/adverse effects , Pancreatic Neoplasms/drug therapy , Adult , Aged , Aged, 80 and over , Albumins/administration & dosage , Antineoplastic Combined Chemotherapy Protocols/administration & dosage , Deoxycytidine/administration & dosage , Deoxycytidine/adverse effects , Female , Humans , Male , Middle Aged , Neoplasm Staging , Nivolumab/administration & dosage , Paclitaxel/administration & dosage , Pancreatic Neoplasms/diagnosis , Pancreatic Neoplasms/mortality , Pancreatic Neoplasms/pathology , Progression-Free Survival , Gemcitabine
8.
PLoS One ; 14(11): e0224693, 2019.
Article in English | MEDLINE | ID: mdl-31743345

ABSTRACT

Immune cell infiltration of tumors and the tumor microenvironment can be an important component for determining patient outcomes. For example, immune and stromal cell presence inferred by deconvolving patient gene expression data may help identify high risk patients or suggest a course of treatment. One particularly powerful family of deconvolution techniques uses signature matrices of genes that uniquely identify each cell type as determined from single cell type purified gene expression data. Many methods from this family have been recently published, often including new signature matrices appropriate for a single purpose, such as investigating a specific type of tumor. The package ADAPTS helps users make the most of this expanding knowledge base by introducing a framework for cell type deconvolution. ADAPTS implements modular tools for customizing signature matrices for new tissue types by adding custom cell types or building new matrices de novo, including from single cell RNAseq data. It includes a common interface to several popular deconvolution algorithms that use a signature matrix to estimate the proportion of cell types present in heterogenous samples. ADAPTS also implements a novel method for clustering cell types into groups that are difficult to distinguish by deconvolution and then re-splitting those clusters using hierarchical deconvolution. We demonstrate that the techniques implemented in ADAPTS improve the ability to reconstruct the cell types present in a single cell RNAseq data set in a blind predictive analysis. ADAPTS is currently available for use in R on CRAN and GitHub.


Subject(s)
Computational Biology/methods , Neoplasms/genetics , RNA-Seq/methods , Single-Cell Analysis/methods , Software , Cluster Analysis , Datasets as Topic , Gene Expression Regulation, Neoplastic/immunology , Humans , Neoplasms/immunology , Neoplasms/pathology , Support Vector Machine , Tumor Microenvironment/genetics , Tumor Microenvironment/immunology
9.
Mol Syst Biol ; 13(3): 919, 2017 03 20.
Article in English | MEDLINE | ID: mdl-28320772

ABSTRACT

Managing trade-offs through gene regulation is believed to confer resilience to a microbial community in a fluctuating resource environment. To investigate this hypothesis, we imposed a fluctuating environment that required the sulfate-reducer Desulfovibrio vulgaris to undergo repeated ecologically relevant shifts between retaining metabolic independence (active capacity for sulfate respiration) and becoming metabolically specialized to a mutualistic association with the hydrogen-consuming Methanococcus maripaludis Strikingly, the microbial community became progressively less proficient at restoring the environmentally relevant physiological state after each perturbation and most cultures collapsed within 3-7 shifts. Counterintuitively, the collapse phenomenon was prevented by a single regulatory mutation. We have characterized the mechanism for collapse by conducting RNA-seq analysis, proteomics, microcalorimetry, and single-cell transcriptome analysis. We demonstrate that the collapse was caused by conditional gene regulation, which drove precipitous decline in intracellular abundance of essential transcripts and proteins, imposing greater energetic burden of regulation to restore function in a fluctuating environment.


Subject(s)
Desulfovibrio vulgaris/growth & development , Methanococcus/growth & development , Systems Biology/methods , Desulfovibrio vulgaris/genetics , Directed Molecular Evolution , Gene Expression Profiling , Methanococcus/genetics , Oxidation-Reduction , Phenotype , Proteomics , Sequence Analysis, RNA , Single-Cell Analysis , Sulfates/metabolism
10.
Cell Syst ; 3(2): 172-186, 2016 08.
Article in English | MEDLINE | ID: mdl-27426982

ABSTRACT

We developed the transcription factor (TF)-target gene database and the Systems Genetics Network Analysis (SYGNAL) pipeline to decipher transcriptional regulatory networks from multi-omic and clinical patient data, and we applied these tools to 422 patients with glioblastoma multiforme (GBM). The resulting gbmSYGNAL network predicted 112 somatically mutated genes or pathways that act through 74 TFs and 37 microRNAs (miRNAs) (67 not previously associated with GBM) to dysregulate 237 distinct co-regulated gene modules associated with patient survival or oncogenic processes. The regulatory predictions were associated to cancer phenotypes using CRISPR-Cas9 and small RNA perturbation studies and also demonstrated GBM specificity. Two pairwise combinations (ETV6-NFKB1 and romidepsin-miR-486-3p) predicted by the gbmSYGNAL network had synergistic anti-proliferative effects. Finally, the network revealed that mutations in NF1 and PIK3CA modulate IRF1-mediated regulation of MHC class I antigen processing and presentation genes to increase tumor lymphocyte infiltration and worsen prognosis. Importantly, SYGNAL is widely applicable for integrating genomic and transcriptomic measurements from other human cohorts.


Subject(s)
Glioblastoma , Gene Expression Regulation, Neoplastic , Gene Regulatory Networks , Humans , MicroRNAs , Oncogenes
11.
Biotechnol Biofuels ; 8: 207, 2015.
Article in English | MEDLINE | ID: mdl-26633994

ABSTRACT

BACKGROUND: Algae accumulate lipids to endure different kinds of environmental stresses including macronutrient starvation. Although this response has been extensively studied, an in depth understanding of the transcriptional regulatory network (TRN) that controls the transition into lipid accumulation remains elusive. In this study, we used a systems biology approach to elucidate the transcriptional program that coordinates the nitrogen starvation-induced metabolic readjustments that drive lipid accumulation in Chlamydomonas reinhardtii. RESULTS: We demonstrate that nitrogen starvation triggered differential regulation of 2147 transcripts, which were co-regulated in 215 distinct modules and temporally ordered as 31 transcriptional waves. An early-stage response was triggered within 12 min that initiated growth arrest through activation of key signaling pathways, while simultaneously preparing the intracellular environment for later stages by modulating transport processes and ubiquitin-mediated protein degradation. Subsequently, central metabolism and carbon fixation were remodeled to trigger the accumulation of triacylglycerols. Further analysis revealed that these waves of genome-wide transcriptional events were coordinated by a regulatory program orchestrated by at least 17 transcriptional regulators, many of which had not been previously implicated in this process. We demonstrate that the TRN coordinates transcriptional downregulation of 57 metabolic enzymes across a period of nearly 4 h to drive an increase in lipid content per unit biomass. Notably, this TRN appears to also drive lipid accumulation during sulfur starvation, while phosphorus starvation induces a different regulatory program. The TRN model described here is available as a community-wide web-resource at http://networks.systemsbiology.net/chlamy-portal. CONCLUSIONS: In this work, we have uncovered a comprehensive mechanistic model of the TRN controlling the transition from N starvation to lipid accumulation. The program coordinates sequentially ordered transcriptional waves that simultaneously arrest growth and lead to lipid accumulation. This study has generated predictive tools that will aid in devising strategies for the rational manipulation of regulatory and metabolic networks for better biofuel and biomass production.

12.
Sci Data ; 2: 150010, 2015.
Article in English | MEDLINE | ID: mdl-25977815

ABSTRACT

Mycobacterium tuberculosis (MTB) is a pathogenic bacterium responsible for 12 million active cases of tuberculosis (TB) worldwide. The complexity and critical regulatory components of MTB pathogenicity are still poorly understood despite extensive research efforts. In this study, we constructed the first systems-scale map of transcription factor (TF) binding sites and their regulatory target proteins in MTB. We constructed FLAG-tagged overexpression constructs for 206 TFs in MTB, used ChIP-seq to identify genome-wide binding events and surveyed global transcriptomic changes for each overexpressed TF. Here we present data for the most comprehensive map of MTB gene regulation to date. We also define elaborate quality control measures, extensive filtering steps, and the gene-level overlap between ChIP-seq and microarray datasets. Further, we describe the use of TF overexpression datasets to validate a global gene regulatory network model of MTB and describe an online source to explore the datasets.


Subject(s)
Gene Expression Regulation, Bacterial , Genome, Bacterial , Mycobacterium tuberculosis/genetics , Bacterial Proteins/genetics , Bacterial Proteins/metabolism , Binding Sites , Gene Expression Profiling , Models, Genetic , Transcription Factors/genetics , Transcription Factors/metabolism
13.
BMC Syst Biol ; 9 Suppl 2: S1, 2015.
Article in English | MEDLINE | ID: mdl-25881257

ABSTRACT

BACKGROUND: Biclustering is a popular method for identifying under which experimental conditions biological signatures are co-expressed. However, the general biclustering problem is NP-hard, offering room to focus algorithms on specific biological tasks. We hypothesize that conditional co-regulation of genes is a key factor in determining cell phenotype and that accurately segregating conditions in biclusters will improve such predictions. Thus, we developed a bicluster sampled coherence metric (BSCM) for determining which conditions and signals should be included in a bicluster. RESULTS: Our BSCM calculates condition and cluster size specific p-values, and we incorporated these into the popular integrated biclustering algorithm cMonkey. We demonstrate that incorporation of our new algorithm significantly improves bicluster co-regulation scores (p-value = 0.009) and GO annotation scores (p-value = 0.004). Additionally, we used a bicluster based signal to predict whether a given experimental condition will result in yeast peroxisome induction. Using the new algorithm, the classifier accuracy improves from 41.9% to 76.1% correct. CONCLUSIONS: We demonstrate that the proposed BSCM helps determine which signals ought to be co-clustered, resulting in more accurately assigned bicluster membership. Furthermore, we show that BSCM can be extended to more accurately detect under which experimental conditions the genes are co-clustered. Features derived from this more accurate analysis of conditional regulation results in a dramatic improvement in the ability to predict a cellular phenotype in yeast. The latest cMonkey is available for download at https://github.com/baliga-lab/cmonkey2. The experimental data and source code featured in this paper is available http://AitchisonLab.com/BSCM. BSCM has been incorporated in the official cMonkey release.


Subject(s)
Software , Systems Biology/methods , Algorithms , Cluster Analysis , Gene Expression Regulation , Phenotype , Pneumonia, Mycoplasma/genetics , Saccharomyces cerevisiae/genetics , Transcriptome
14.
Nucleic Acids Res ; 43(13): e87, 2015 Jul 27.
Article in English | MEDLINE | ID: mdl-25873626

ABSTRACT

The cMonkey integrated biclustering algorithm identifies conditionally co-regulated modules of genes (biclusters). cMonkey integrates various orthogonal pieces of information which support evidence of gene co-regulation, and optimizes biclusters to be supported simultaneously by one or more of these prior constraints. The algorithm served as the cornerstone for constructing the first global, predictive Environmental Gene Regulatory Influence Network (EGRIN) model for a free-living cell, and has now been applied to many more organisms. However, due to its computational inefficiencies, long run-time and complexity of various input data types, cMonkey was not readily usable by the wider community. To address these primary concerns, we have significantly updated the cMonkey algorithm and refactored its implementation, improving its usability and extendibility. These improvements provide a fully functioning and user-friendly platform for building co-regulated gene modules and the tools necessary for their exploration and interpretation. We show, via three separate analyses of data for E. coli, M. tuberculosis and H. sapiens, that the updated algorithm and inclusion of novel scoring functions for new data types (e.g. ChIP-seq and transcription factor over-expression [TFOE]) improve discovery of biologically informative co-regulated modules. The complete cMonkey2 software package, including source code, is available at https://github.com/baliga-lab/cmonkey2.


Subject(s)
Gene Expression Regulation , Software , Algorithms , Carcinoma, Squamous Cell/genetics , Chromatin Immunoprecipitation , Escherichia coli/genetics , Gene Expression Regulation, Bacterial , Lung Neoplasms/genetics , Mycobacterium tuberculosis/genetics , Regulon , Sequence Analysis, DNA , Transcription Factors/metabolism
15.
Nat Commun ; 6: 5829, 2015 Jan 12.
Article in English | MEDLINE | ID: mdl-25581030

ABSTRACT

Mycobacterium tuberculosis (MTB) infects 30% of all humans and kills someone every 20-30 s. Here we report genome-wide binding for ~80% of all predicted MTB transcription factors (TFs), and assayed global expression following induction of each TF. The MTB DNA-binding network consists of ~16,000 binding events from 154 TFs. We identify >50 TF-DNA consensus motifs and >1,150 promoter-binding events directly associated with proximal gene regulation. An additional ~4,200 binding events are in promoter windows and represent strong candidates for direct transcriptional regulation under appropriate environmental conditions. However, we also identify >10,000 'dormant' DNA-binding events that cannot be linked directly with proximal transcriptional control, suggesting that widespread DNA binding may be a common feature that should be considered when developing global models of coordinated gene expression.


Subject(s)
Bacterial Proteins/chemistry , DNA, Bacterial/chemistry , DNA-Binding Proteins/chemistry , Gene Expression Regulation, Bacterial , Mycobacterium tuberculosis/chemistry , Amino Acid Motifs , Bacterial Proteins/genetics , Binding Sites , Chromatin Immunoprecipitation , Computational Biology , DNA, Bacterial/genetics , DNA-Binding Proteins/genetics , Gene Expression Profiling , Genetic Vectors , Genome-Wide Association Study , Mycobacterium tuberculosis/genetics , Nucleotide Motifs , Promoter Regions, Genetic , Protein Binding , ROC Curve , Recombinant Proteins/chemistry , Transcription Factors/chemistry , Transcription, Genetic
16.
BMC Syst Biol ; 8: 122, 2014 Nov 14.
Article in English | MEDLINE | ID: mdl-25394904

ABSTRACT

BACKGROUND: Expansion of transcription factors is believed to have played a crucial role in evolution of all organisms by enabling them to deal with dynamic environments and colonize new environments. We investigated how the expansion of the Feast/Famine Regulatory Protein (FFRP) or Lrp-like proteins into an eight-member family in Halobacterium salinarum NRC-1 has aided in niche-adaptation of this archaeon to a complex and dynamically changing hypersaline environment. RESULTS: We mapped genome-wide binding locations for all eight FFRPs, investigated their preference for binding different effector molecules, and identified the contexts in which they act by analyzing transcriptional responses across 35 growth conditions that mimic different environmental and nutritional conditions this organism is likely to encounter in the wild. Integrative analysis of these data constructed an FFRP regulatory network with conditionally active states that reveal how interrelated variations in DNA-binding domains, effector-molecule preferences, and binding sites in target gene promoters have tuned the functions of each FFRP to the environments in which they act. We demonstrate how conditional regulation of similar genes by two FFRPs, AsnC (an activator) and VNG1237C (a repressor), have striking environment-specific fitness consequences for oxidative stress management and growth, respectively. CONCLUSIONS: This study provides a systems perspective into the evolutionary process by which gene duplication within a transcription factor family contributes to environment-specific adaptation of an organism.


Subject(s)
Adaptation, Biological/genetics , Biological Evolution , Environment , Gene Duplication/genetics , Gene Expression Regulation, Archaeal/genetics , Halobacterium salinarum/genetics , Transcription Factors/genetics , Binding Sites/genetics , Halobacterium salinarum/metabolism , Paraquat
17.
PLoS One ; 9(9): e107863, 2014.
Article in English | MEDLINE | ID: mdl-25255272

ABSTRACT

Widespread microbial genome sequencing presents an opportunity to understand the gene regulatory networks of non-model organisms. This requires knowledge of the binding sites for transcription factors whose DNA-binding properties are unknown or difficult to infer. We adapted a protein structure-based method to predict the specificities and putative regulons of homologous transcription factors across diverse species. As a proof-of-concept we predicted the specificities and transcriptional target genes of divergent archaeal feast/famine regulatory proteins, several of which are encoded in the genome of Halobacterium salinarum. This was validated by comparison to experimentally determined specificities for transcription factors in distantly related extremophiles, chromatin immunoprecipitation experiments, and cis-regulatory sequence conservation across eighteen related species of halobacteria. Through this analysis we were able to infer that Halobacterium salinarum employs a divergent local trans-regulatory strategy to regulate genes (carA and carB) involved in arginine and pyrimidine metabolism, whereas Escherichia coli employs an operon. The prediction of gene regulatory binding sites using structure-based methods is useful for the inference of gene regulatory relationships in new species that are otherwise difficult to infer.


Subject(s)
Archaeal Proteins/chemistry , Archaeal Proteins/metabolism , Computational Biology/methods , Halobacterium salinarum/genetics , Halobacterium salinarum/metabolism , Transcription Factors/metabolism , Amino Acid Sequence , Archaeal Proteins/genetics , Arginine/metabolism , Binding Sites , DNA, Archaeal/metabolism , Gene Regulatory Networks , Molecular Sequence Data , Operon/genetics , Protein Binding , Pyrimidines/metabolism , Regulatory Sequences, Nucleic Acid/genetics , Substrate Specificity , Transcription Factors/chemistry
18.
Nucleic Acids Res ; 42(18): 11291-303, 2014 Oct.
Article in English | MEDLINE | ID: mdl-25232098

ABSTRACT

The resilience of Mycobacterium tuberculosis (MTB) is largely due to its ability to effectively counteract and even take advantage of the hostile environments of a host. In order to accelerate the discovery and characterization of these adaptive mechanisms, we have mined a compendium of 2325 publicly available transcriptome profiles of MTB to decipher a predictive, systems-scale gene regulatory network model. The resulting modular organization of 98% of all MTB genes within this regulatory network was rigorously tested using two independently generated datasets: a genome-wide map of 7248 DNA-binding locations for 143 transcription factors (TFs) and global transcriptional consequences of overexpressing 206 TFs. This analysis has discovered specific TFs that mediate conditional co-regulation of genes within 240 modules across 14 distinct environmental contexts. In addition to recapitulating previously characterized regulons, we discovered 454 novel mechanisms for gene regulation during stress, cholesterol utilization and dormancy. Significantly, 183 of these mechanisms act uniquely under conditions experienced during the infection cycle to regulate diverse functions including 23 genes that are essential to host-pathogen interactions. These and other insights underscore the power of a rational, model-driven approach to unearth novel MTB biology that operates under some but not all phases of infection.


Subject(s)
Gene Expression Regulation, Bacterial , Gene Regulatory Networks , Mycobacterium tuberculosis/genetics , Cholesterol/metabolism , Gene Expression Profiling , Genome, Bacterial , Models, Genetic , Transcription Factors/metabolism , Transcription, Genetic
19.
Mol Syst Biol ; 10: 740, 2014 Jul 15.
Article in English | MEDLINE | ID: mdl-25028489

ABSTRACT

Microbes can tailor transcriptional responses to diverse environmental challenges despite having streamlined genomes and a limited number of regulators. Here, we present data-driven models that capture the dynamic interplay of the environment and genome-encoded regulatory programs of two types of prokaryotes: Escherichia coli (a bacterium) and Halobacterium salinarum (an archaeon). The models reveal how the genome-wide distributions of cis-acting gene regulatory elements and the conditional influences of transcription factors at each of those elements encode programs for eliciting a wide array of environment-specific responses. We demonstrate how these programs partition transcriptional regulation of genes within regulons and operons to re-organize gene-gene functional associations in each environment. The models capture fitness-relevant co-regulation by different transcriptional control mechanisms acting across the entire genome, to define a generalized, system-level organizing principle for prokaryotic gene regulatory networks that goes well beyond existing paradigms of gene regulation. An online resource (http://egrin2.systemsbiology.net) has been developed to facilitate multiscale exploration of conditional gene regulation in the two prokaryotes.


Subject(s)
Gene Regulatory Networks , Genome, Microbial , Models, Genetic , Algorithms , Escherichia coli/genetics , Gene Expression Regulation , Genetic Fitness , Halobacterium salinarum/genetics , Operon , Regulatory Elements, Transcriptional , Regulon
20.
Nucleic Acids Res ; 42(Database issue): D184-90, 2014 Jan.
Article in English | MEDLINE | ID: mdl-24271392

ABSTRACT

The ease of generating high-throughput data has enabled investigations into organismal complexity at the systems level through the inference of networks of interactions among the various cellular components (genes, RNAs, proteins and metabolites). The wider scientific community, however, currently has limited access to tools for network inference, visualization and analysis because these tasks often require advanced computational knowledge and expensive computing resources. We have designed the network portal (http://networks.systemsbiology.net) to serve as a modular database for the integration of user uploaded and public data, with inference algorithms and tools for the storage, visualization and analysis of biological networks. The portal is fully integrated into the Gaggle framework to seamlessly exchange data with desktop and web applications and to allow the user to create, save and modify workspaces, and it includes social networking capabilities for collaborative projects. While the current release of the database contains networks for 13 prokaryotic organisms from diverse phylogenetic clades (4678 co-regulated gene modules, 3466 regulators and 9291 cis-regulatory motifs), it will be rapidly populated with prokaryotic and eukaryotic organisms as relevant data become available in public repositories and through user input. The modular architecture, simple data formats and open API support community development of the portal.


Subject(s)
Databases, Genetic , Gene Regulatory Networks , Algorithms , Archaea/genetics , Archaea/metabolism , Bacteria/genetics , Bacteria/metabolism , Computer Graphics , Gene Expression Profiling , Internet , Nucleotide Motifs , Regulatory Elements, Transcriptional , Software , Systems Integration , Transcription Factors/metabolism
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