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1.
Nat Cancer ; 5(3): 433-447, 2024 Mar.
Article in English | MEDLINE | ID: mdl-38286827

ABSTRACT

Liver metastasis (LM) confers poor survival and therapy resistance across cancer types, but the mechanisms of liver-metastatic organotropism remain unknown. Here, through in vivo CRISPR-Cas9 screens, we found that Pip4k2c loss conferred LM but had no impact on lung metastasis or primary tumor growth. Pip4k2c-deficient cells were hypersensitized to insulin-mediated PI3K/AKT signaling and exploited the insulin-rich liver milieu for organ-specific metastasis. We observed concordant changes in PIP4K2C expression and distinct metabolic changes in 3,511 patient melanomas, including primary tumors, LMs and lung metastases. We found that systemic PI3K inhibition exacerbated LM burden in mice injected with Pip4k2c-deficient cancer cells through host-mediated increase in hepatic insulin levels; however, this circuit could be broken by concurrent administration of an SGLT2 inhibitor or feeding of a ketogenic diet. Thus, this work demonstrates a rare example of metastatic organotropism through co-optation of physiological metabolic cues and proposes therapeutic avenues to counteract these mechanisms.


Subject(s)
Liver Neoplasms , Proto-Oncogene Proteins c-akt , Humans , Mice , Animals , Proto-Oncogene Proteins c-akt/metabolism , Phosphatidylinositol 3-Kinases , Signal Transduction , Insulin , Phosphotransferases (Alcohol Group Acceptor)/metabolism
2.
J Immunother Cancer ; 11(9)2023 09.
Article in English | MEDLINE | ID: mdl-37657842

ABSTRACT

Current methods for biomarker discovery and target identification in immuno-oncology rely on static snapshots of tumor immunity. To thoroughly characterize the temporal nature of antitumor immune responses, we developed a 34-parameter spectral flow cytometry panel and performed high-throughput analyses in critical contexts. We leveraged two distinct preclinical models that recapitulate cancer immunoediting (NPK-C1) and immune checkpoint blockade (ICB) response (MC38), respectively, and profiled multiple relevant tissues at and around key inflection points of immune surveillance and escape and/or ICB response. Machine learning-driven data analysis revealed a pattern of KLRG1 expression that uniquely identified intratumoral effector CD4 T cell populations that constitutively associate with tumor burden across tumor models, and are lost in tumors undergoing regression in response to ICB. Similarly, a Helios-KLRG1+ subset of tumor-infiltrating regulatory T cells was associated with tumor progression from immune equilibrium to escape and was also lost in tumors responding to ICB. Validation studies confirmed KLRG1 signatures in human tumor-infiltrating CD4 T cells associate with disease progression in renal cancer. These findings nominate KLRG1+ CD4 T cell populations as subsets for further investigation in cancer immunity and demonstrate the utility of longitudinal spectral flow profiling as an engine of dynamic biomarker discovery.


Subject(s)
Carcinoma, Renal Cell , Kidney Neoplasms , Humans , CD4-Positive T-Lymphocytes , T-Lymphocyte Subsets , Immunotherapy , Biomarkers , Receptors, Immunologic , Lectins, C-Type
3.
bioRxiv ; 2023 May 02.
Article in English | MEDLINE | ID: mdl-37205498

ABSTRACT

While the functional effects of many recurrent cancer mutations have been characterized, the TCGA repository comprises more than 10M non-recurrent events, whose function is unknown. We propose that the context specific activity of transcription factor (TF) proteins-as measured by expression of their transcriptional targets-provides a sensitive and accurate reporter assay to assess the functional role of oncoprotein mutations. Analysis of differentially active TFs in samples harboring mutations of unknown significance-compared to established gain (GOF/hypermorph) or loss (LOF/hypomorph) of function-helped functionally characterize 577,866 individual mutational events across TCGA cohorts, including identification of mutations that are either neomorphic (gain of novel function) or phenocopy other mutations ( mutational mimicry ). Validation using mutation knock-in assays confirmed 15 out of 15 predicted gain and loss of function mutations and 15 of 20 predicted neomorphic mutations. This could help determine targeted therapy in patients with mutations of unknown significance in established oncoproteins.

4.
Nat Genet ; 55(1): 19-25, 2023 01.
Article in English | MEDLINE | ID: mdl-36624340

ABSTRACT

Single-cell genomics enables dissection of tumor heterogeneity and molecular underpinnings of drug response at an unprecedented resolution1-11. However, broad clinical application of these methods remains challenging, due to several practical and preanalytical challenges that are incompatible with typical clinical care workflows, namely the need for relatively large, fresh tissue inputs. In the present study, we show that multimodal, single-nucleus (sn)RNA/T cell receptor (TCR) sequencing, spatial transcriptomics and whole-genome sequencing (WGS) are feasible from small, frozen tissues that approximate routinely collected clinical specimens (for example, core needle biopsies). Compared with data from sample-matched fresh tissue, we find a similar quality in the biological outputs of snRNA/TCR-seq data, while reducing artifactual signals and compositional biases introduced by fresh tissue processing. Profiling sequentially collected melanoma samples from a patient treated in the KEYNOTE-001 trial12, we resolved cellular, genomic, spatial and clonotype dynamics that represent molecular patterns of heterogeneous intralesional evolution during anti-programmed cell death protein 1 therapy. To demonstrate applicability to banked biospecimens of rare diseases13, we generated a single-cell atlas of uveal melanoma liver metastasis with matched WGS data. These results show that single-cell genomics from archival, clinical specimens is feasible and provides a framework for translating these methods more broadly to the clinical arena.


Subject(s)
Genomics , Neoplasms , Humans , Genomics/methods , Gene Expression Profiling/methods , Neoplasms/genetics , Sequence Analysis, RNA/methods , Whole Genome Sequencing
5.
Cell Rep ; 41(4): 111539, 2022 10 25.
Article in English | MEDLINE | ID: mdl-36288695

ABSTRACT

Codon usage of each genome is closely correlated with the abundance of tRNA isoacceptors. How codon usage bias is resolved by tRNA post-transcriptional modifications is largely unknown. Here we demonstrate that the N1-methylation of guanosine at position 37 (m1G37) on the 3'-side of the anticodon, while not directly responsible for reading of codons, is a neutralizer that resolves differential decoding of proline codons. A genome-wide suppressor screen of a non-viable Escherichia coli strain, lacking m1G37, identifies proS suppressor mutations, indicating a coupling of methylation with tRNA prolyl-aminoacylation that sets the limit of cell viability. Using these suppressors, where prolyl-aminoacylation is decoupled from tRNA methylation, we show that m1G37 neutralizes differential translation of proline codons by the major isoacceptor. Lack of m1G37 inactivates this neutralization and exposes the need for a minor isoacceptor for cell viability. This work has medical implications for bacterial species that exclusively use the major isoacceptor for survival.


Subject(s)
Anticodon , Codon Usage , Methylation , Cell Survival/genetics , RNA, Transfer/genetics , RNA, Transfer/metabolism , Codon/genetics , Escherichia coli/genetics , Escherichia coli/metabolism , Guanosine , Proline/genetics
6.
Cell ; 185(14): 2591-2608.e30, 2022 07 07.
Article in English | MEDLINE | ID: mdl-35803246

ABSTRACT

Melanoma brain metastasis (MBM) frequently occurs in patients with advanced melanoma; yet, our understanding of the underlying salient biology is rudimentary. Here, we performed single-cell/nucleus RNA-seq in 22 treatment-naive MBMs and 10 extracranial melanoma metastases (ECMs) and matched spatial single-cell transcriptomics and T cell receptor (TCR)-seq. Cancer cells from MBM were more chromosomally unstable, adopted a neuronal-like cell state, and enriched for spatially variably expressed metabolic pathways. Key observations were validated in independent patient cohorts, patient-derived MBM/ECM xenograft models, RNA/ATAC-seq, proteomics, and multiplexed imaging. Integrated spatial analyses revealed distinct geography of putative cancer immune evasion and evidence for more abundant intra-tumoral B to plasma cell differentiation in lymphoid aggregates in MBM. MBM harbored larger fractions of monocyte-derived macrophages and dysfunctional TOX+CD8+ T cells with distinct expression of immune checkpoints. This work provides comprehensive insights into MBM biology and serves as a foundational resource for further discovery and therapeutic exploration.


Subject(s)
Brain Neoplasms , Melanoma , Brain Neoplasms/drug therapy , Brain Neoplasms/secondary , CD8-Positive T-Lymphocytes/pathology , Ecosystem , Humans , RNA-Seq
7.
Nat Biomed Eng ; 6(4): 351-371, 2022 04.
Article in English | MEDLINE | ID: mdl-35478225

ABSTRACT

Engineered tissues can be used to model human pathophysiology and test the efficacy and safety of drugs. Yet, to model whole-body physiology and systemic diseases, engineered tissues with preserved phenotypes need to physiologically communicate. Here we report the development and applicability of a tissue-chip system in which matured human heart, liver, bone and skin tissue niches are linked by recirculating vascular flow to allow for the recapitulation of interdependent organ functions. Each tissue is cultured in its own optimized environment and is separated from the common vascular flow by a selectively permeable endothelial barrier. The interlinked tissues maintained their molecular, structural and functional phenotypes over 4 weeks of culture, recapitulated the pharmacokinetic and pharmacodynamic profiles of doxorubicin in humans, allowed for the identification of early miRNA biomarkers of cardiotoxicity, and increased the predictive values of clinically observed miRNA responses relative to tissues cultured in isolation and to fluidically interlinked tissues in the absence of endothelial barriers. Vascularly linked and phenotypically stable matured human tissues may facilitate the clinical applicability of tissue chips.


Subject(s)
Liver , MicroRNAs , Heart , Skin
9.
Nature ; 595(7865): 114-119, 2021 07.
Article in English | MEDLINE | ID: mdl-33915568

ABSTRACT

Respiratory failure is the leading cause of death in patients with severe SARS-CoV-2 infection1,2, but the host response at the lung tissue level is poorly understood. Here we performed single-nucleus RNA sequencing of about 116,000 nuclei from the lungs of nineteen individuals who died of COVID-19 and underwent rapid autopsy and seven control individuals. Integrated analyses identified substantial alterations in cellular composition, transcriptional cell states, and cell-to-cell interactions, thereby providing insight into the biology of lethal COVID-19. The lungs from individuals with COVID-19 were highly inflamed, with dense infiltration of aberrantly activated monocyte-derived macrophages and alveolar macrophages, but had impaired T cell responses. Monocyte/macrophage-derived interleukin-1ß and epithelial cell-derived interleukin-6 were unique features of SARS-CoV-2 infection compared to other viral and bacterial causes of pneumonia. Alveolar type 2 cells adopted an inflammation-associated transient progenitor cell state and failed to undergo full transition into alveolar type 1 cells, resulting in impaired lung regeneration. Furthermore, we identified expansion of recently described CTHRC1+ pathological fibroblasts3 contributing to rapidly ensuing pulmonary fibrosis in COVID-19. Inference of protein activity and ligand-receptor interactions identified putative drug targets to disrupt deleterious circuits. This atlas enables the dissection of lethal COVID-19, may inform our understanding of long-term complications of COVID-19 survivors, and provides an important resource for therapeutic development.


Subject(s)
COVID-19/pathology , COVID-19/virology , Lung/pathology , SARS-CoV-2/pathogenicity , Single-Cell Analysis , Aged , Aged, 80 and over , Alveolar Epithelial Cells/pathology , Alveolar Epithelial Cells/virology , Atlases as Topic , Autopsy , COVID-19/immunology , Case-Control Studies , Female , Fibroblasts/pathology , Fibrosis/pathology , Fibrosis/virology , Humans , Inflammation/pathology , Inflammation/virology , Macrophages/pathology , Macrophages/virology , Macrophages, Alveolar/pathology , Macrophages, Alveolar/virology , Male , Middle Aged , Plasma Cells/immunology , T-Lymphocytes/immunology
10.
Cell ; 184(2): 334-351.e20, 2021 01 21.
Article in English | MEDLINE | ID: mdl-33434495

ABSTRACT

Despite considerable efforts, the mechanisms linking genomic alterations to the transcriptional identity of cancer cells remain elusive. Integrative genomic analysis, using a network-based approach, identified 407 master regulator (MR) proteins responsible for canalizing the genetics of individual samples from 20 cohorts in The Cancer Genome Atlas (TCGA) into 112 transcriptionally distinct tumor subtypes. MR proteins could be further organized into 24 pan-cancer, master regulator block modules (MRBs), each regulating key cancer hallmarks and predictive of patient outcome in multiple cohorts. Of all somatic alterations detected in each individual sample, >50% were predicted to induce aberrant MR activity, yielding insight into mechanisms linking tumor genetics and transcriptional identity and establishing non-oncogene dependencies. Genetic and pharmacological validation assays confirmed the predicted effect of upstream mutations and MR activity on downstream cellular identity and phenotype. Thus, co-analysis of mutational and gene expression profiles identified elusive subtypes and provided testable hypothesis for mechanisms mediating the effect of genetic alterations.


Subject(s)
Neoplasms/genetics , Transcription, Genetic , Adenocarcinoma/genetics , Animals , Cell Line, Tumor , Colonic Neoplasms/genetics , Gene Expression Regulation, Neoplastic , Gene Regulatory Networks , Genome, Human , HEK293 Cells , Humans , Mice, Nude , Mutation/genetics , Reproducibility of Results
11.
Nat Biotechnol ; 39(2): 215-224, 2021 02.
Article in English | MEDLINE | ID: mdl-32929263

ABSTRACT

Tumor-specific elucidation of physical and functional oncoprotein interactions could improve tumorigenic mechanism characterization and therapeutic response prediction. Current interaction models and pathways, however, lack context specificity and are not oncoprotein specific. We introduce SigMaps as context-specific networks, comprising modulators, effectors and cognate binding-partners of a specific oncoprotein. SigMaps are reconstructed de novo by integrating diverse evidence sources-including protein structure, gene expression and mutational profiles-via the OncoSig machine learning framework. We first generated a KRAS-specific SigMap for lung adenocarcinoma, which recapitulated published KRAS biology, identified novel synthetic lethal proteins that were experimentally validated in three-dimensional spheroid models and established uncharacterized crosstalk with RAB/RHO. To show that OncoSig is generalizable, we first inferred SigMaps for the ten most mutated human oncoproteins and then for the full repertoire of 715 proteins in the COSMIC Cancer Gene Census. Taken together, these SigMaps show that the cell's regulatory and signaling architecture is highly tissue specific.


Subject(s)
Gene Regulatory Networks , Neoplasms/genetics , Oncogene Proteins/metabolism , Algorithms , Animals , Humans , Mice , Mutation/genetics , Organoids/pathology , Proto-Oncogene Proteins p21(ras)/genetics , RNA, Small Interfering/metabolism , ROC Curve , Signal Transduction
12.
Sci Rep ; 10(1): 15628, 2020 09 24.
Article in English | MEDLINE | ID: mdl-32973219

ABSTRACT

In contrast to fossorial and above-ground organisms, subterranean species have adapted to the extreme stresses of living underground. We analyzed the predicted protein-protein interactions (PPIs) of all gene products, including those of stress-response genes, among nine subterranean, ten fossorial, and 13 aboveground species. We considered 10,314 unique orthologous protein families and constructed 5,879,879 PPIs in all organisms using ChiPPI. We found strong association between PPI network modulation and adaptation to specific habitats, noting that mutations in genes and changes in protein sequences were not linked directly with niche adaptation in the organisms sampled. Thus, orthologous hypoxia, heat-shock, and circadian clock proteins were found to cluster according to habitat, based on PPIs rather than on sequence similarities. Curiously, "ordered" domains were preserved in aboveground species, while "disordered" domains were conserved in subterranean organisms, and confirmed for proteins in DistProt database. Furthermore, proteins with disordered regions were found to adopt significantly less optimal codon usage in subterranean species than in fossorial and above-ground species. These findings reveal design principles of protein networks by means of alterations in protein domains, thus providing insight into deep mechanisms of evolutionary adaptation, generally, and particularly of species to underground living and other confined habitats.


Subject(s)
Adaptation, Physiological , Evolution, Molecular , Mutation , Protein Interaction Maps , Proteins/genetics , Proteins/metabolism , Animals , Humans , Phylogeny
13.
Article in English | MEDLINE | ID: mdl-30281472

ABSTRACT

The significance of metabolic pathway prediction is to envision the viable unknown transformations that can occur provided the appropriate enzymes are present. It can facilitate the prediction of the consequences of host-pathogen interactions. In this article, we have proposed a new algorithm Architectural Similarity-based Automated Pathway Prediction (ASAPP) to predict metabolic pathways based on the structural similarity among the metabolites. ASAPP takes two-dimensional structure and molecular weight of metabolites as input, and generates a list of probable transformations without the knowledge of any externally established reactions, with an accuracy of 85.09 percent. ASAPP has also been applied to predict the outcome of pathogen liberated toxins on the carbohydrate and lipid pathways of the hosts. We have analyzed the disruption of host pathways in the presence of toxins, and have found that some metabolites in Glycolysis and the TCA cycle have a high chance of being the breakpoints in the pathway. The tool is available at http://asapp.droppages.com/.


Subject(s)
Computational Biology/methods , Host-Pathogen Interactions , Metabolic Networks and Pathways , Software , Algorithms , Animals , Computer Simulation , Humans , Toxins, Biological
14.
PLoS Comput Biol ; 15(8): e1007239, 2019 08.
Article in English | MEDLINE | ID: mdl-31437145

ABSTRACT

Tailored therapy aims to cure cancer patients effectively and safely, based on the complex interactions between patients' genomic features, disease pathology and drug metabolism. Thus, the continual increase in scientific literature drives the need for efficient methods of data mining to improve the extraction of useful information from texts based on patients' genomic features. An important application of text mining to tailored therapy in cancer encompasses the use of mutations and cancer fusion genes as moieties that change patients' cellular networks to develop cancer, and also affect drug metabolism. Fusion proteins, which are derived from the slippage of two parental genes, are produced in cancer by chromosomal aberrations and trans-splicing. Given that the two parental proteins for predicted fusion proteins are known, we used our previously developed method for identifying chimeric protein-protein interactions (ChiPPIs) associated with the fusion proteins. Here, we present a validation approach that receives fusion proteins of interest, predicts their cellular network alterations by ChiPPI and validates them by our new method, ProtFus, using an online literature search. This process resulted in a set of 358 fusion proteins and their corresponding protein interactions, as a training set for a Naïve Bayes classifier, to identify predicted fusion proteins that have reliable evidence in the literature and that were confirmed experimentally. Next, for a test group of 1817 fusion proteins, we were able to identify from the literature 2908 PPIs in total, across 18 cancer types. The described method, ProtFus, can be used for screening the literature to identify unique cases of fusion proteins and their PPIs, as means of studying alterations of protein networks in cancers. Availability: http://protfus.md.biu.ac.il/.


Subject(s)
Data Mining/methods , Oncogene Proteins, Fusion/genetics , Protein Interaction Mapping/methods , Algorithms , Bayes Theorem , Big Data , Computational Biology , Data Mining/statistics & numerical data , Databases, Genetic , Humans , Mutation , Neoplasms/genetics , Neoplasms/therapy , Oncogene Proteins, Fusion/chemistry , Oncogene Proteins, Fusion/metabolism , Precision Medicine , Protein Interaction Mapping/statistics & numerical data , Protein Interaction Maps
15.
Comput Biol Med ; 112: 103374, 2019 09.
Article in English | MEDLINE | ID: mdl-31419629

ABSTRACT

BACKGROUND: Effector proteins of bacteria infect their hosts by specific dedicated machinery identified as secretion systems. Currently, no mechanism to identify the effector proteins based on their 3D structure has been reported in the literature. In order to identify effector proteins, extraction of features from their 3D structure is crucial. However, effector protein datasets are highly imbalanced. State-of-the-art oversampling algorithms are incapable of dealing with such datasets. They usually eliminate samples as noise. They do not ensure generation of synthetic samples strictly in the vicinity of the minority class samples. In effector protein datasets, deletion of any samples as noise would lead to loss of crucial information. Furthermore, generation of synthetic samples of the minority class in the vicinity of majority class samples would lead to an inept classifier. METHOD: In this paper, we introduce an algorithm called Cluster Quality based Non-Reductional (CQNR) oversampling technique. Its novelty lies in generating new samples proportional to the distribution of samples of the minority classes, without eliminating any sample as noise. Utilizing CQNR, we develop a novel Effector Protein Predictor based on the 3D (EPP3D) structure of proteins. EPP3D is trained on a feature set, balanced by CQNR, comprising 3D structure-based features, namely, convex hull layer count, surface atom composition, radius of gyration, packing density and compactness, derived from the 3D structure of the experimentally verified effector proteins. RESULT: Fscore and Gmean demonstrate that CQNR has outperformed some well-established oversampling methods by approximately 3-5%, with respect to classification accuracy, on five benchmark datasets and three other highly imbalanced synthetically generated datasets. Likewise, for classification of pathogenic effector proteins, a significant improvement of 7-9% in accuracy has been noticed, on the application of CQNR followed by EPP3D. Moreover, EPP3D has exhibited an improvement of 2-4% in classifying effector proteins based on their 3D structure compared to the classification of effector proteins based on their amino acid sequences. The software for CQNR and EPP3D are available at http://projectphd.droppages.com/CQNR.html.


Subject(s)
Algorithms , Bacterial Proteins/chemistry , Bacteroides/chemistry , Databases, Protein , Listeria/chemistry , Models, Molecular , Protein Domains
16.
Sci Rep ; 8(1): 4671, 2018 03 16.
Article in English | MEDLINE | ID: mdl-29549310

ABSTRACT

Animals living at high altitudes have evolved distinct phenotypic and genotypic adaptations against stressful environments. We studied the adaptive patterns of altitudinal stresses on transcriptome turnover in subterranean plateau zokors (Myospalax baileyi) in the high-altitude Qinghai-Tibetan Plateau. Transcriptomes of zokors from three populations with distinct altitudes and ecologies (Low: 2846 m, Middle: 3282 m, High: 3,714 m) were sequenced and compared. Phylogenetic and principal component analyses classified them into three divergent altitudinal population clusters. Genetic polymorphisms showed that the population at H, approaching the uppermost species boundary, harbors the highest genetic polymorphism. Moreover, 1056 highly up-regulated UniGenes were identified from M to H. Gene ontologies reveal genes like EPAS1 and COX1 were overexpressed under hypoxia conditions. EPAS1, EGLN1, and COX1 were convergent in high-altitude adaptation against stresses in other species. The fixation indices (F ST and G ST )-based outlier analysis identified 191 and 211 genes, highly differentiated among L, M, and H. We observed adaptive transcriptome changes in Myospalax baileyi, across a few hundred meters, near the uppermost species boundary, regardless of their relatively stable underground burrows' microclimate. The highly variant genes identified in Myospalax were involved in hypoxia tolerance, hypercapnia tolerance, ATP-pathway energetics, and temperature changes.


Subject(s)
Adaptation, Physiological , Gene Expression Profiling/methods , Muridae/classification , Polymorphism, Genetic , Altitude , Animals , Cell Hypoxia , Evolution, Molecular , Gene Expression Regulation , Muridae/genetics , Muridae/physiology , Phylogeny , Principal Component Analysis , Sequence Analysis, RNA , Tibet
17.
Nucleic Acids Res ; 45(12): 7094-7105, 2017 Jul 07.
Article in English | MEDLINE | ID: mdl-28549153

ABSTRACT

Fusion proteins, comprising peptides deriving from the translation of two parental genes, are produced in cancer by chromosomal aberrations. The expressed fusion protein incorporates domains of both parental proteins. Using a methodology that treats discrete protein domains as binding sites for specific domains of interacting proteins, we have cataloged the protein interaction networks for 11 528 cancer fusions (ChiTaRS-3.1). Here, we present our novel method, chimeric protein-protein interactions (ChiPPI) that uses the domain-domain co-occurrence scores in order to identify preserved interactors of chimeric proteins. Mapping the influence of fusion proteins on cell metabolism and pathways reveals that ChiPPI networks often lose tumor suppressor proteins and gain oncoproteins. Furthermore, fusions often induce novel connections between non-interactors skewing interaction networks and signaling pathways. We compared fusion protein PPI networks in leukemia/lymphoma, sarcoma and solid tumors finding distinct enrichment patterns for each disease type. While certain pathways are enriched in all three diseases (Wnt, Notch and TGF ß), there are distinct patterns for leukemia (EGFR signaling, DNA replication and CCKR signaling), for sarcoma (p53 pathway and CCKR signaling) and solid tumors (FGFR and EGFR signaling). Thus, the ChiPPI method represents a comprehensive tool for studying the anomaly of skewed cellular networks produced by fusion proteins in cancer.


Subject(s)
Gene Expression Regulation, Neoplastic , Oncogene Proteins, Fusion/genetics , Precursor Cell Lymphoblastic Leukemia-Lymphoma/genetics , Protein Interaction Mapping/methods , Sarcoma/genetics , Software , Humans , Metabolic Networks and Pathways/genetics , Oncogene Proteins, Fusion/metabolism , Precursor Cell Lymphoblastic Leukemia-Lymphoma/metabolism , Precursor Cell Lymphoblastic Leukemia-Lymphoma/pathology , Protein Interaction Domains and Motifs , Protein Interaction Maps , Receptors, Notch/genetics , Receptors, Notch/metabolism , Sarcoma/metabolism , Sarcoma/pathology , Signal Transduction , Transforming Growth Factor beta/genetics , Transforming Growth Factor beta/metabolism , Wnt Proteins/genetics , Wnt Proteins/metabolism
18.
Nucleic Acids Res ; 45(D1): D790-D795, 2017 01 04.
Article in English | MEDLINE | ID: mdl-27899596

ABSTRACT

Discovery of chimeric RNAs, which are produced by chromosomal translocations as well as the joining of exons from different genes by trans-splicing, has added a new level of complexity to our study and understanding of the transcriptome. The enhanced ChiTaRS-3.1 database (http://chitars.md.biu.ac.il) is designed to make widely accessible a wealth of mined data on chimeric RNAs, with easy-to-use analytical tools built-in. The database comprises 34 922: chimeric transcripts along with 11 714: cancer breakpoints. In this latest version, we have included multiple cross-references to GeneCards, iHop, PubMed, NCBI, Ensembl, OMIM, RefSeq and the Mitelman collection for every entry in the 'Full Collection'. In addition, for every chimera, we have added a predicted Chimeric Protein-Protein Interaction (ChiPPI) network, which allows for easy visualization of protein partners of both parental and fusion proteins for all human chimeras. The database contains a comprehensive annotation for 34 922: chimeric transcripts from eight organisms, and includes the manual annotation of 200 sense-antiSense (SaS) chimeras. The current improvements in the content and functionality to the ChiTaRS database make it a central resource for the study of chimeric transcripts and fusion proteins.


Subject(s)
Databases, Genetic , Protein Interaction Mapping/methods , RNA , Trans-Splicing , Transcription, Genetic , Translocation, Genetic , Animals , Computational Biology/methods , Humans , Protein Interaction Maps , Web Browser
19.
Comput Biol Med ; 61: 19-35, 2015 Jun.
Article in English | MEDLINE | ID: mdl-25862998

ABSTRACT

BACKGROUND: Studying biochemical pathway evolution for diseases is a flourishing area of Systems Biology. Here, we study Type 1 Diabetes Mellitus (T1D), focusing on growth of glutamate, ß-alanine, taurine and hypotaurine, and butanoate metabolisms involved in onset of GAD and INS genes in Homo sapiens with comparative analysis in non-obese diabetic Mus musculus, biobreeding Diabetes-prone Rattus norvegicus, Pan troglodytes, Oryctolagus cuniculus, Danio rerio and Drosophila melanogaster respectively. METHODS: We propose an algorithm for growth analysis for four metabolic pathways involved in T1D. It has three modules, pattern finding, interaction identification and growth detection. The first module identifies patterns using Community structures using Hamming distances and the Tanimoto coefficient. We have performed functional analysis by representing patterns using ODEs, and identified Stoichiometric, Gradient and Jacobian matrices. The second module identifies interactions among patterns using cut-sets and network-partitioning by 'Divide-and-conquer'. The third module identifies functions of patterns using interactions, thereby highlighting their nature of growth. RESULTS: We observed that metabolites that are genetically robust and resist alterations against stable state during evolution, account for emergence of a scale-free network. DISCUSSION: New modules get acquired to the fundamental cluster in a preferential manner, an instance of micro-evolution theory. For instance, (S)-3-hydroxy butanoyl-CoA, acetoacetyl-CoA, acetoacetate, acetyl-CoA, (S)-3-hydroxy-3-methyl glutaryl-CoA acts as a fundamental cluster in butanoate metabolism. Moreover, the interactions among metabolites are divergent in nature.


Subject(s)
Diabetes Mellitus, Type 1/metabolism , Glutamate Decarboxylase/metabolism , Insulin/metabolism , Models, Biological , Animals , Diabetes Mellitus, Type 1/genetics , Drosophila melanogaster , Glutamate Decarboxylase/genetics , Humans , Insulin/genetics , Mice , Pan troglodytes , Rabbits , Rats , Zebrafish
20.
Gene ; 534(2): 125-38, 2014 Jan 25.
Article in English | MEDLINE | ID: mdl-24230973

ABSTRACT

Metabolomics is one of the key approaches of systems biology that consists of studying biochemical networks having a set of metabolites, enzymes, reactions and their interactions. As biological networks are very complex in nature, proper techniques and models need to be chosen for their better understanding and interpretation. One of the useful strategies in this regard is using path mining strategies and graph-theoretical approaches that help in building hypothetical models and perform quantitative analysis. Furthermore, they also contribute to analyzing topological parameters in metabolome networks. Path mining techniques can be based on grammars, keys, patterns and indexing. Moreover, they can also be used for modeling metabolome networks, finding structural similarities between metabolites, in-silico metabolic engineering, shortest path estimation and for various graph-based analysis. In this manuscript, we have highlighted some core and applied areas of path-mining for modeling and analysis of metabolic networks.


Subject(s)
Metabolic Networks and Pathways/physiology , Metabolomics/methods , Systems Biology/methods , Models, Biological , Models, Theoretical
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