scholarly journals Information topology of gene expression profile in dopaminergic neurons

2017 ◽  
Author(s):  
Mónica Tapia Pacheco ◽  
Pierre Baudot ◽  
Martial A. Dufour ◽  
Christine Formisano-Tréziny ◽  
Simone Temporal ◽  
...  

SUMMARY PARAGRAPHExtracting high-degree interactions and dependences between variables (pairs, triplets, … k-tuples) is a challenge posed by all omics approaches1, 2. Here we used multivariate mutual information (Ik) analysis3 on single-cell retro-transcription quantitative PCR (sc-RTqPCR) data obtained from midbrain neurons to estimate the k-dimensional topology of their gene expression profiles. 41 mRNAs were quantified and statistical dependences in gene expression levels could be fully described for 21 genes: Ik analysis revealed a complex combinatorial structure including modules of pairs, triplets (up to 6-tuples) sharing strong positive, negative or zero Ik, corresponding to co-varying, clustering and independent sets of genes, respectively. Therefore, Ik analysis simultaneously identified heterogeneity (negative Ik) of the cell population under study and regulatory principles conserved across the population (homogeneity, positive Ik). Moreover, maximum information paths enabled to determine the size and stability of such transcriptional modules. Ik analysis represents a new topological and statistical method of data analysis.

Author(s):  
Xiangtao Li ◽  
Shaochuan Li ◽  
Lei Huang ◽  
Shixiong Zhang ◽  
Ka-chun Wong

Abstract Single-cell RNA sequencing (scRNA-seq) technologies have been heavily developed to probe gene expression profiles at single-cell resolution. Deep imputation methods have been proposed to address the related computational challenges (e.g. the gene sparsity in single-cell data). In particular, the neural architectures of those deep imputation models have been proven to be critical for performance. However, deep imputation architectures are difficult to design and tune for those without rich knowledge of deep neural networks and scRNA-seq. Therefore, Surrogate-assisted Evolutionary Deep Imputation Model (SEDIM) is proposed to automatically design the architectures of deep neural networks for imputing gene expression levels in scRNA-seq data without any manual tuning. Moreover, the proposed SEDIM constructs an offline surrogate model, which can accelerate the computational efficiency of the architectural search. Comprehensive studies show that SEDIM significantly improves the imputation and clustering performance compared with other benchmark methods. In addition, we also extensively explore the performance of SEDIM in other contexts and platforms including mass cytometry and metabolic profiling in a comprehensive manner. Marker gene detection, gene ontology enrichment and pathological analysis are conducted to provide novel insights into cell-type identification and the underlying mechanisms. The source code is available at https://github.com/li-shaochuan/SEDIM.


2013 ◽  
Vol 2013 ◽  
pp. 1-8 ◽  
Author(s):  
Amanda L. Brown ◽  
Trevor A. Day ◽  
Christopher V. Dayas ◽  
Doug W. Smith

The ability to microdissect individual cells from the nervous system has enormous potential, as it can allow for the study of gene expression in phenotypically identified cells. However, if the resultant gene expression profiles are to be accurately ascribed, it is necessary to determine the extent of contamination by nontarget cells in the microdissected sample. Here, we show that midbrain dopamine neurons can be laser-microdissected to a high degree of enrichment and purity. The average enrichment for tyrosine hydroxylase (TH) gene expression in the microdissected sample relative to midbrain sections was approximately 200-fold. For the dopamine transporter (DAT) and the vesicular monoamine transporter type 2 (Vmat2), average enrichments were approximately 100- and 60-fold, respectively. Glutamic acid decarboxylase (Gad65) expression, a marker for GABAergic neurons, was several hundredfold lower than dopamine neuron-specific genes. Glial cell and glutamatergic neuron gene expression were not detected in microdissected samples. Additionally, SN and VTA dopamine neurons had significantly different expression levels of dopamine neuron-specific genes, which likely reflects functional differences between the two cell groups. This study demonstrates that it is possible to laser-microdissect dopamine neurons to a high degree of cell purity. Therefore gene expression profiles can be precisely attributed to the targeted microdissected cells.


Blood ◽  
2005 ◽  
Vol 106 (11) ◽  
pp. 3903-3903
Author(s):  
Tetsuya Yamagata ◽  
Christophe Benoist ◽  
Diane Mathis

Abstract Innate and adaptive immunity are the two major arms of the immune system. They rely on very distinct cell-types, primarily distinguished by the source of diversity for non-self recognition, of germline or somatic origin. There exists, however, a subset of lymphocytes whose receptors require rearrangement but result in semi-invariant structures with a high degree of self-specificity. We hypothesized that these innate-like lymphocytes might share a common gene transcription signature. To test this notion, we made pair-wise comparisons of the gene-expression profiles of innate-like lymphocytes and closely paired adaptive system counterparts (NKT vs. CD4T, CD8ααT vs. CD8αβT, B1 vs. B2), and bioinformatically extracted common features and common genes distinguishing innate from adaptive cell-types. A statistically significant “innate signature” was indeed distilled, composed of a small set of genes over- and under-expressed in innate vs. adaptive lymphocytes. Particularly intriguing was the high representation of interferon-inducible GTPases crucial for resistance against intracellular pathogens, and of small G proteins involved in intracellular vacuole maturation and trafficking. Overall, this combined expression pattern can thus be designated as an “innate signature” among lymphocytes.


Database ◽  
2018 ◽  
Vol 2018 ◽  
Author(s):  
Yi-Fang Lee ◽  
Chien-Yueh Lee ◽  
Liang-Chuan Lai ◽  
Mong-Hsun Tsai ◽  
Tzu-Pin Lu ◽  
...  

Abstract With the advancement of high-throughput technologies, gene expression profiles in cell lines and clinical samples are widely available in the public domain for research. However, a challenge arises when trying to perform a systematic and comprehensive analysis across independent datasets. To address this issue, we developed a web-based system, CellExpress, for analyzing the gene expression levels in more than 4000 cancer cell lines and clinical samples obtained from public datasets and user-submitted data. First, a normalization algorithm can be utilized to reduce the systematic biases across independent datasets. Next, a similarity assessment of gene expression profiles can be achieved through a dynamic dot plot, along with a distance matrix obtained from principal component analysis. Subsequently, differentially expressed genes can be visualized using hierarchical clustering. Several statistical tests and analytical algorithms are implemented in the system for dissecting gene expression changes based on the groupings defined by users. Lastly, users are able to upload their own microarray and/or next-generation sequencing data to perform a comparison of their gene expression patterns, which can help classify user data, such as stem cells, into different tissue types. In conclusion, CellExpress is a user-friendly tool that provides a comprehensive analysis of gene expression levels in both cell lines and clinical samples. The website is freely available at http://cellexpress.cgm.ntu.edu.tw/. Source code is available at https://github.com/LeeYiFang/Carkinos under the MIT License. Database URL: http://cellexpress.cgm.ntu.edu.tw/


2018 ◽  
Vol 29 (9) ◽  
pp. 3828-3835 ◽  
Author(s):  
Qilong Xin ◽  
Laura Ortiz-Terán ◽  
Ibai Diez ◽  
David L Perez ◽  
Julia Ginsburg ◽  
...  

Abstract Individual differences in humans are driven by unique brain structural and functional profiles, presumably mediated in part through differential cortical gene expression. However, the relationships between cortical gene expression profiles and individual differences in large-scale neural network organization remain poorly understood. In this study, we aimed to investigate whether the magnitude of sequence alterations in regional cortical genes mapped onto brain areas with high degree of functional connectivity variability across individuals. First, human genetic expression data from the Allen Brain Atlas was used to identify protein-coding genes associated with cortical areas, which delineated the regional genetic signature of specific cortical areas based on sequence alteration profiles. Thereafter, we identified brain regions that manifested high degrees of individual variability by using test-retest functional connectivity magnetic resonance imaging and graph-theory analyses in healthy subjects. We found that rates of genetic sequence alterations shared a distinct spatial topography with cortical regions exhibiting individualized (highly-variable) connectivity profiles. Interestingly, gene expression profiles of brain regions with highly individualized connectivity patterns and elevated number of sequence alterations are devoted to neuropeptide-signaling-pathways and chemical-synaptic-transmission. Our findings support that genetic sequence alterations may underlie important aspects of brain connectome individualities in humans. Significance Statement: The neurobiological underpinnings of our individuality as humans are still an unsolved question. Although the notion that genetic variation drives an individual’s brain organization has been previously postulated, specific links between neural connectivity and gene expression profiles have remained elusive. In this study, we identified the magnitude of population-based sequence alterations in discrete cortical regions and compared them to the brain topological distribution of functional connectivity variability across an independent human sample. We discovered that brain regions with high degree of connectional individuality are defined by increased rates of genetic sequence alterations; these findings specifically implicated genes involved in neuropeptide-signaling pathways and chemical-synaptic transmission. These observations support that genetic sequence alterations may underlie important aspects of the emergence of the brain individuality across humans.


Blood ◽  
2012 ◽  
Vol 120 (21) ◽  
pp. 283-283
Author(s):  
Costa Bachas ◽  
Gerrit Jan Schuurhuis ◽  
C. Michel Zwaan ◽  
Marry M. van den Heuvel-Eibrink ◽  
Monique L. Den Boer ◽  
...  

Abstract Abstract 283 The vast majority of pediatric AML patients (>90%) achieve complete remission, however 30–40% relapse and face a dismal prognosis. Current therapy is insufficient as drug resistant cells survive chemotherapy; novel strategies are needed to overcome chemoresistance and improve outcome. The molecular basis underlying drug resistance in AML cells remains largely unknown. Based on the hypothesis that drug resistance in AML patients is largely due to intrinsic properties of leukemic blasts, we here correlated ex-vivo drug resistance data of primary patient samples to genome wide microarray gene expression profiles of AML blasts from diagnosis samples. Peripheral blood or bone marrow samples of 73 pediatric AML patients were enriched for leukemic blasts (median 89% blasts). Ex-vivo drug resistance towards cytarabine (ara-C, N=73), daunorubicin (DNR, N=69), etoposide (VP16, N=39) and cladribine (CDA, N=59) was assayed using the 4 days colorimetric MTT assay; median LC50 values are shown in Table 1. Genome wide expression profiling on the enriched samples was performed using the Affymetrix HGU 133 plus 2 platform (Balgobind et al, Hematologica, 2011). Spearman's rank correlation analyses were used to correlate gene expression levels to the LC50 values, nominal p-values < 0.001 were considered significant. The number of significant probe sets for each drug is shown in Table 1. The strongest correlation of ex-vivo drug resistance and gene expression was found for VP16 (r2 ranged from −0.78 to 0.69 with p values ranging from 1×10−4 to 2×10−7 for the above mentioned 656 probes). The figure illustrates the correlation of ex-vivo DNR resistance with gene expression levels. We performed Gene Ontology (GO) enrichment analysis and Ingenuity Pathway Analysis (IPA) using expression values of the probe sets that were associated with ex-vivo resistance for each drug to gain insight in the possible cellular pathways involved. Chromatin remodeling, epigenetic regulation of gene expression and methyltransferase activity were among the top GO categories for ara-C resistance. For example, a high expression of MLL2, MLL4, ASXL1, and CARM1 was associated with high ara-C LC50 values. For DNR, GO and IPA indicated a role for response to growth factor stimuli and mitochondrial response to oxidative stress; examples of individual genes are shown in the Figure below. For VP16, a low expression of genes that are implicated in cell cycle, DNA replication and DNA damage response was associated with increased resistance. This included DNA polymerases, genes in BRCA1 signaling as well as the target of VP16, topoisomerase 2α. Upstream regulators that contribute to the gene expression profiles that were associated with ex-vivo drug resistance according to IPA are shown in Table 2. Interestingly, for DNR, VP16 and CDA the expression profiles in part explained by regulation via CD40L, a gene that has been associated with drug resistance in lymphatic leukemias. Targeted therapeutics are being developed to interfere in the CD40L mediated anti-apoptotic signaling and thus may offer alternative treatment options in drug resistant AML. Hence, we present novel data in which diagnosis samples of a relatively large group of pediatric AML patients were used to identify gene expression profiles that are associated with cellular drug resistance. These data may pave the way to the identification of genes that contribute to drug resistance, e.g. CD40L. Moreover, our findings may enhance the development of personalized treatment strategies by sensitizing patients to conventional chemotherapeutic drugs. Table 1. Summary of ex-vivo drug resistance of primary AML blasts and its correlation with genome wide gene expression data Drug LC50 significant probe sets Ara-C .360 (.182-.616) 113 DNR .172 (.093-.250) 465 VP16 2.65 (1.84-6.70) 656 CDA .020 (.004-.027) 269 LC50 = lethal concentration needed to kill 50% of the cells depicted as median ug/mL(p25-p75). Table 2. Summary of pathway analysis of gene expression that correlated with ex-vivo drug sensitivity Drug top 3 upstream regulators p range upstream regulators Ara-C IL5 2.40×10−02 DNR CD40L, IRF8, OSCAR 7.4×10−4 to 4.4×10−5 VP16 CD40L, BRCA1, ACAT1 3.2×10−2 to 9.6×10−3 CDA CD40L, ASB2,IL10RB 1.15×10−2 to 8.3×10−4 Upstream regulators are ranked according to p-value. Disclosures: No relevant conflicts of interest to declare.


2006 ◽  
Vol 74 (6) ◽  
pp. 3668-3672 ◽  
Author(s):  
Marianna O. Orlova ◽  
Konstantin B. Majorov ◽  
Irina V. Lyadova ◽  
Eugenii B. Eruslanov ◽  
Cyr E. M'lan ◽  
...  

ABSTRACT Interstitial lung macrophages from tuberculosis-susceptible I/St and tuberculosis-resistant A/Sn mice demonstrated significant constitutive differences in gene expression levels, whereas in vitro infection of these cells with Mycobacterium tuberculosis had only a modulatory impact on gene expression. We conclude that intrinsic gene expression profiles are an important determinant of tuberculosis pathogenesis in mice.


Cartilage ◽  
2021 ◽  
pp. 194760352110572
Author(s):  
Katherine Wang ◽  
Q.Y. Esbensen ◽  
T.A. Karlsen ◽  
C.N. Eftang ◽  
C. Owesen ◽  
...  

Objective To analyze and compare cartilage samples from 3 groups of patients utilizing low-input RNA-sequencing. Design Cartilage biopsies were collected from patients in 3 groups ( n = 48): Cartilage lesion (CL) patients had at least ICRS grade 2, osteoarthritis (OA) samples were taken from patients undergoing knee replacement, and healthy cartilage (HC) was taken from ACL-reconstruction patients without CLs. RNA was isolated using an optimized protocol. RNA samples were assessed for quality and sequenced with a low-input SmartSeq2 protocol. Results RNA isolation yielded 48 samples with sufficient quality for sequencing. After quality control, 13 samples in the OA group, 9 in the HC group, and 9 in the CL group were included in the analysis. There was a high degree of co-clustering between the HC and CL groups with only 6 genes significantly up- or downregulated. OA and the combined HC/CL group clustered significantly separate from each other, yielding 659 significantly upregulated and 1,369 downregulated genes. GO-term analysis revealed that genes matched to cartilage and connective tissue development terms. Conclusion The gene expression profiles from the 3 groups suggest that there are no major differences in gene expression between cartilage from knees with a cartilage injury and knees without an apparent cartilage injury. OA cartilage, as expected, showed markedly different gene expression from the other 2 groups. The gene expression profiles resulting from this low-input RNA-sequencing study offer opportunities to discover new pathways not previously recognized that may be explored in future studies.


2004 ◽  
Vol 171 (4S) ◽  
pp. 349-350
Author(s):  
Gaelle Fromont ◽  
Michel Vidaud ◽  
Alain Latil ◽  
Guy Vallancien ◽  
Pierre Validire ◽  
...  

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