Submit manuscript...
MOJ
eISSN: 2374-6920

Proteomics & Bioinformatics

Review Article Volume 7 Issue 1

Back-of-the-envelope guide (a tutorial) to 10 intracellular landscapes

Maurice HT Ling1,2

1Colossus Technologies LLP, Republic of Singapore
2HOHY Pte. Ltd., Republic of Singapore

Correspondence: Maurice HT Ling, Colossus Technologies LLP, 8 Burns Road, Trivex, Singapore 369977, Republic of Singapore, Tel +65-96669233

Received: January 29, 2018 | Published: February 6, 2018

Citation: Ling MHT. Back-of-the-envelope guide (a tutorial) to 10 intracellular landscapes. MOJ Proteomics Bioinform. 2018;7(1):31-36. DOI: 10.15406/mojpb.2018.07.00209

Download PDF

Abstract

Landscape is a metaphor for conceptualizing and visualizing a score across one or more biological entities or concepts. This review provides a cursory overview of 10 landscapes (in alphabetical order, copy number, fluxome, genome, molecular, metabolome, mutation, phenome, proteome, regulome, and transcriptome) in intracellular biology without going into extensive depth; hence, this article can act as a first tutorial into intracellular landscapes. The value ahead is to be able to compare and interrogate across multiple landscapes at different resolutions.

Definition of a “landscape”

The concept of landscape was first introduced by Sewell Wright,1 as a metaphor to visual a scale or score across a biological entity, such as a chromosome (Figure 1). In a linear biological entity, such as a chromosome; the biological entity is represented on the horizontal axis and the score, such as GC content, is represented on the vertical axis. This result in a line graph representing the GC content across the entire chromosome, which can then be used to identify GC content fluctuations across a chromosome.2

Figure 1 Hypothetical 2-Dimensional Landscape of an Occurrence (such as GC content) across a Biological Entity (such as a chromosome).

The resulting landscapes can then be used for comparison across different chromosomes or genomes.2 The vertical scale is not limited to interval or ratio values– it can also be ordinal values, such as binary. For example, mapping the presence or absence of coding sequences across a chromosome can illustrate large stretches on chromosomes devoid of coding sequences, known as gene deserts;3 thus, refuting the hypothesis that coding sequences are evenly distributed across genome. In addition, landscapes can be 3-dimensional when 2 related axes (x-axis ad z-axis) were used to represent 2 search spaces, such as 2 different adaptation scales, while the vertical y-axis represent the fitness score, as demonstrated by Wright.1 Three dimensional landscapes can be mapped onto two dimensions by using contours to represent the vertical axis.

Since Wright,1 the concept of landscape had been used to reference a metaphoric representation of an overview of one or more biological entities. This article reviews 10 landscapes (in alphabetical order, copy number, fluxome, genome, molecular, metabolome, mutation, phenome, proteome, regulome, and transcriptome) in intracellular biology with the aim of presenting a cursory, back of the envelope overview without going into extensive depth into each landscape. Each landscape will review several recent studies; hence, this article can act as a first tutorial into intracellular landscapes.

Intracellular landscapes

In this section, 10 landscapes will be reviewed; namely, copy number landscape, mutational landscape, genetic/gene/genomic landscape, gene regulation/regulomic landscape, transcriptomic landscape, proteomic landscape, fluxomic landscape, metabolic/metabolomic landscape, molecular landscape, and phenotypic/phenomic landscape. The concept of landscape, as referred to the biological entity on the horizontal axis, tends to be more relevant in the first five landscapes; namely, copy number, mutational, genomic, regulomic, and transcriptomic landscapes; thus, true landscapes. In the other five landscapes (proteome, fluxome, metabolome, molecule, and pheonome), nominal values (such as, different organelles) are represented by the horizontal axis; thus, quasi-landscapes. Despite so, it must be noted that value of “landscape” is enhanced when the horizontal axis is ordinal (such as, across a chromosome) rather than nominal (such as, different samples) as spatial distribution is implied in the former case.

Copy number landscape4 often refers to copy number variation (CNV), which is the differences between the numbers of copies of one or more nucleotides within individuals in the same species. The repeats can range from a few bases; such as, polyglutamine repeats;5 to entire genes; such as alpha-amylase6 and neutrophil cytosolic factor 1.7 CNV can be a result when sections of a genome are duplicated/repeated or deleted;8,9 which exists in both higher eukaryotes, such as humans,10 and prokaryotes, such as Escherichia coli;11 and is implicated in several disease phenotypes.8 For example, CNV in neutrophil cytosolic factor 1 has been implicated in rheumatoid arthritis7 and CNV in protease has been implicated in anthropogenic toxins in arthropods12 as differences in copy number may have an impact on gene expression.13 Beroukhim et al.,14 studied CNVs from 3131 cancer specimens, spanning across 26 different cancer types and found 158 regions of focal CNVs (CNVs within a short region of a chromosome), comprising of 76 amplifications and 82 deletions, with significant frequency variations across multiple cancer types. CNVs across entire chromosomes or across an arm of a chromosome are known as arm-level CNVs, as opposed to focal CNVs. CNV analysis on 41 patients with adrenocortical carcinoma were carried out15 and found mutually exclusive focal CNVs in ZNRF3 or TERT loci. This suggests that separate mechanisms may underlie the development of adrenocortical carcinoma. Usher syndrome, caused by a 2 autosomal recessive alleles (USH1 allele results in congenital deafness while USH2 allele results in progressive hearing impairment), is estimated to account for 11% of deafness in children.16 CNV analysis was performed on next generation sequencing (NGS) data of 138 patients clinically diagnosed with Usher syndrome and found that CNVs were found in 10% of the patients with biallelic USH2A mutations.

Mutational landscape refers to the frequency of mutations and/or type of mutations across a biological entity,17 which may include CNVs16,18 and single nucleotide polymorphisms or SNPs.19 As mutation can be broadly defined as a permanent change in the nucleotide sequence, mutational landscape can be seen as the superset of all measurable nucleotide variations between individuals of the same species or across species. However, the term “mutation” tends to invoke a negative impression of “disease” and “errors”. Hence, mutational landscape often refers to sequence variations leading to diseases; such as, with reference to cancer.19–21 On the other hand, nucleotide sequence variations consistent with positive impressions; such as with respect to adaptation22 and tolerance;23,24 or neutral impressions such as allelic variations within species;25–28 tends to be referred to as genomic landscape. However, the opposite may also be true as mutational landscape had also been used to describe natural variations between species.18 As such, these terms are synonymous.

Here, five studies on genomic/mutational landscapes are reviewed. Firstly, Xu et al.,18 studied the genomic differences between two important Chinese indigenous cattle breeds with distinct phenotypes– Nanyang (Bos indicus) and Qinchuan (Bos taurus). The genomes of four Nanyang and four Qinchuan cattle were sequenced with 10 to 12-fold on average of 97.86% and 98.98% coverage of genomes, respectively. Using Bos_taurus_UMD_3.1 reference assembly as standard, 9010096 and 6965062 SNPs were identified for Nanyang and Qinchuan cattle, respectively. Of which, 51% of the SNPs in Nanyang cattle and 29% of the SNPs in Qinchuan cattle were novel. In addition, 154934 indels (1-3 bases) were found in Nanyang genome while 115032 indels were found Qinchuan genomes. These results suggest that Nanyang cattles showed more genetic diversity as compared to Qinchuan cattles. By analyzing the CNVs, the copy number of leptin receptor is significantly higher in Qinchuan cattles compared to Nanyang cattles, which may contribute to the higher fat deposition in muscles as observed in Qinchuan cattles. Secondly, Mata et al.,29 sequenced 36 genes in 57 clinical samples from histologically confirmed classic Hodgkin lymphoma patients29 for mutations and found that 4 genes (CSF2RB, EP300, STAT6, and BTK) had mutation rates of more than 10%. These 4 genes are functionally related to B-cell receptor signaling pathway. This suggests B-cell receptor signaling as potential therapeutic targets. Thirdly, Babenko et al.,30 used reference genomes in UCSC Genome Browser to generate a genomic landscape of CpG-rich elements in human and found strong correlation (r=0.97; P<1.1E-188) between open chromatin, using DNase hypersensitivity essay, and number of CpG islands. This further demonstrates the close association between CpG islands and chromatin states. Fourthly, Ruiz et al. used random mutagenesis to map out a landscape of essential genes in Bifidobacterium breve UCC2003,31 a commensal bacterium in human gut with probiotic properties.32 The essential genes in B. breve include (a) housekeeping genes; such as, DNA replication and transcription, manufacture of cell envelope components, the Sec-dependent protein translocation pathway; (b) genes in central pathways for energy acquisition and conversion; such as central glycolysis, a specific bifid-shunt, pentose phosphate pathway, and pathways crucial for production of energy and precursors for other metabolic routes; (c) genes encoding subunits of ATP synthase; (d) genes encoding enzymes involved in purine and pyrimidine synthesis; and (e) genes encoding proteins involved in ion transport and redox homeostasis. Lastly, Gnecchi-Ruscone et al.,25 successfully genotyped 59 buccal swab from 4 communities near the Tibetan plateaus. By analyzing the SNPs, a model to describe the migration and colonization of Southern Himalayan slopes from East Asia ancestry is proposed. However, this ideological segregation is not absolute as “genome landscape” is also been used to refer to diseases such as cancers.33

Regulome refers to the whole set of regulatory components and network in a cell,34,35 including gene expression regulation; and protein and enzyme activation, inhibition, and degradation. Considering that the genome is the blueprint of the cell, regulome is equivalent to its operation manual. Hence, regulome is an integral part of all aspect of the workings of the cell, including transcriptome and metabolome; except and perhaps, the genome. Therefore, regulomic landscape covers an extensively wide area and is equivalent to deciphering the cell’s operation manual. Often, gene expressions (the transcriptome) are analyzed and grouped into sets of correlated expressions, known as metagenes.36 After which, the regulation of each metagenes were identified. The most common method is to analyze the promoters to identify the transcription factors for each gene as common transcription factor use have a tendency to result in correlated gene expressions;37,38 thereby, finding common transcription factors for each metagene. For example, Zhang et al.,39 performed a 15-timepoint (from previtellogenesis to choriogenesis) NGS analysis of domestic silkworm (Bombyx mori) oogenesis. Six stages of oogenesis were found using correlated gene expressions, with each stage demonstrating a specific set of activities. Next, 761 transcription factors were identified and mapped onto each stage, resulting in a regulatory landscape for each of the 6 stages of oogenesis.

Transcriptomic landscape refers to the expression pattern across a chromosome or genome to examine the spatial distribution of expression,40 to elucidate genomic regions of specific level of transcriptional activities. Earlier studies tend to use “transcriptomic landscape” or “transcriptional landscape” synonymously with “transcriptome”.41,42 In certain cases where different transcriptomes were analyzed, such as transcriptomes of different tissues; “transcriptome landscape” may refer to transcriptional pattern across biological samples.43

Here, three studies on transcriptomic landscapes are reviewed: (a) Severe alcoholic hepatitis are often treated with glucocorticoids and prednisolone but a portion of the patients do not respond within 7 days, with higher mortality rates in non-responders compared to responders.44 Sharma et al. studied the pre-therapy liver transcriptomes of Indian and Frech patients with severe alcoholic hepatitis using both microarrays and NGS.45 1202 differentially expressed genes (1,106 upregulated genes and 96 downregulated in non-respondents relative to respondents) between livers from Indian patients. The upregulated genes from Indian population did not exhibit Gene Ontology enrichment but downregulated genes are under-represented in hepatocyte-specific metabolic pathways for xenobiotics by cytochrome P450, drugs, retinol and all-trans-retinoic acid, amino acids, steroids. In French patients, 207 differentially expressed genes were found (65 upregulated genes and 142 downregulated genes in non-respondents relative to respondents). The upregulated genes were enriched in the following Gene Ontology terms: “Hemoglobin complex”, “Oxygen transport”, “Heme binding”; while downregulated genes were enriched in Gene Ontology terms and KEGG pathways related to mitotic cell cycle, G1/S transition to mitotic cell cycle, and DNA replication. This suggests that genetic variations between French and Indians. However, differentially expressed genes were not spatially analyzed. (b) Ovariectomy has been used on livestock goats to increase mutton production but the molecular mechanisms are unknown. Zhang et al. studied the longissimus dorsi muscle transcriptome of ovariectomized Boer hybrid goats (Boer male goat × Guanzhong dairy female goat) 50 days after ovariectomization using NGS.46 By comparing against un-ovariectomized control goats, 376773 SNPs and 1612 differentially expressed genes (718 upregulated genes and 894 downregulated gene in ovariectomized goats) but no analysis was performed using spatial approach. These differentially expressed genes were of neuromuscular junction class, synapse assembly class, and sulfiredoxin activity; in terms of Gene Ontology; and mapped onto development and reproduction associated pathways in KEGG. Thus, providing a molecular basis for increased muscle growth in ovariectomized goats. (c) Li et al.,40 performed NGS on Mycobacterium smegmatis mc2155 and mapped its transcriptional activities onto its genome map; thus, producing the first transcriptomic landscape for Mycobacterium smegmatis mc2155. Using this, 2139 transcriptional start sites with 2233 independent monocistronic or polycistronic mRNAs within the operon/sub-operon structures were found. In addition, 8 highly active promoters were found and experimentally validated with β-galactosidase assays.

Proteomic landscape generally refers to the overview of protein activities; such as, protein-protein interactions and protein-molecule interactions, collectively known as protein interactomes;47–51 with or without reference to spatial organization within the cell; such as, intracellular locations or organelles. Hence, proteomic/interactomic landscape tends to be represented as networks by the first group that coined the term “interactome”.52 For example, a study examining the proteomic landscape of cyclin E considered the interactomics of cyclin E across different tissues as proteomic landscape.53 Chiang et al.,54 examined the proteomic differences in 8-12weeks C57BL6/J mice’s suprachiasmatic nucleus, the master circadian pacemaker in mammals, across 6 regular time points (every 4hour intervals) within a 24-hour circadian cycle and found 20% (421 of 2112 accurately quantified proteins) demonstrating time-of-day-dependent expression profile. Hence, timing of the circadian cycle can be considered as the horizontal axis and each protein can be mapped as relative abundance on the vertical axis. When comparing to the corresponding time-dependent transcriptomes, Chiang et al.,54 found that more than 40% of each proteome was encoded by non-rhythmic transcripts. This suggests that the time-dependent proteomic profiles are poorly indicated by the corresponding transcriptome profiles. Kole et al.55 referred to “proteomic landscape” synonymously with “proteome” as they are concerned with differential protein abundance in primary somatosensory cortex across different treatments of sensory deprivation.55

Metabolomics and fluxomics are closely related. Metabolomics is concerned with the relative abundance of metabolites in a biological sample,56 putting metabolomics to be the proteomics and transcriptomics counterpart for metabolites. The advantage of metabolomics over transcriptomics or proteomics is the reduction of data elements – metabolomics has few components compared to transcriptomics or proteomics.57 Fluxomics is the rate of metabolic reactions.58 While metabolomics provides a snapshot of metabolism,59 fluxomics provides the activity of metabolism. In another words, metabolomics provides a photograph while fluxomics provides a video, and metabolomics is an integral part of fluxomics. A video is comprised of multiple “photographs” arranged in precise time intervals and it is always possible to extract a photographic image from a video. Hence, metabolomic landscape and fluxomic landscape are inter-connected and refers to the relative abundance of metabolites and the distribution of metabolic rates, respectively; with or without reference to spatial organization within the cell.

For example, Lien at al.,60 quantified the flux differences of wild-type Pseudomonas fluorescens, which does not produce alginate; and a double MucA and AlgC knockout as MucA knockout P. fluorescens is able to produce alginate61 but double MucA and AlgC knockout mutants are unable to produce alginate. The fluxomic landscapes were generated from multiple metabolomes of radioactive carbon labelling experiments, each representing a metabolomic landscape. Lien at al.,60 found that MucA-AlgC double knockout mutants are able to reorganize carbon flux without going through alginate production. Ahn et al.,62 combined liquid chromatography/mass spectrometry (LC-MS) isotope tracing with metabolite flux modeling to create a fluxomic landscape of tricarboxylic acid (TCA) cycle of HeLa cell line across cell cycle; and found that the concentration of central metabolites, such as cytidine triphosphate, oscillates across cell cycle. This is likely to be a result metabolite entry from glycolysis into TCA cycle is cell cycle phase dependent, resulting in oscillating metabolite concentrations in the entire central metabolism. Sabra et al. examined the fluxomic landscape of Yarrowia lipolytica, oleaginous yeast, for citric acid production at different substrate and dissolved oxygen concentrations in a fermenter.63 It was found that oxygen requirements differed based on different carbon sources resulting from differential fluxes towards TCA cycle and pentose phosphate pathway, which highlights the importance of oxygen demand based on different feed stocks.

Metabolomic landscapes, on the other hand, usually focus on samples rather than time course. For example, Heiland et al.,64 performed nuclear magnetic resonance (NMR) spectrometry on sonicated tissue extracts from 48 patients with primary glioblastoma multiforme WHO grade IV; thus, generating 48 metabolomic landscapes, and found 3 patient clusters by unsupervised clustering on the NMR results. Rabinowitz et al.,65 first mapped out the transcriptomic and proteomic landscapes along the proximodistal axis (from body to extremity) of Zebrafish caudal fin. Mass spectrometry data was used to generate a 3-position (proximal, middle, and distal) metabolomic landscape of the causal fin where 26 proximally enriched metabolites and 16 distally enriched metabolites were found. Wound healing and cell proliferation amino acids;66 such as glutamate, arginine, and leucine; were enriched at proximal end, suggesting that the proximal end of the fin is metabolically primed for rapid cell proliferation in event of injury. Fuhrer et al.,67 collected wild-type E. coli K-12 and 4320 single gene deletion mutants from KEIO knockout collection68 to perform mass spectrometry and generated 4321 metabolomic landscapes in order to decipher the metabolic effects of each gene knockout. One of the important conclusions was that the metabolic perturbations are significant within 2 metabolic steps from the deleted enzyme with diminishing significance beyond 3 metabolic steps. In a way, the 4320 metabolomic landscapes are spatial oriented as they can be mapped onto the E. coli K-12 genome landscape.

Both metabolome and fluxome are the results of genome, transcriptome, proteome, and regulome; metabolome and fluxome, especially fluxome, can be seen as the layer directly underneath phenotype.69 As all various compound-based omics are molecules in nature, molecular landscape becomes the de facto umbrella term for genomic/mutational, transcriptomic, proteomic, regulomic, metabolomic, and fluxomic landscapes. It is also common to use the term “molecular landscape” as an abbreviation to represent the inter-connectedness and inter-relationship across multiple landscapes. For example, Medico et al.,70 used the term “molecular landscape” to represent genomic-transcriptomic-proteomic-metabolic landscape in human colorectal cancer. Schafer et al.,71 used “molecular landscape” to represent genomic-transcriptomic-regulomic landscape in disease phenotypes. van de Vondervoort et al.,72 used “molecular landscape” to represent genomic-proteomic landscape in obsessive-compulsive disorder. Neely et al.,73 used “molecular landscape” to represent transcriptomic-proteomic landscape in clear-cell renal cell carcinoma. However, it is also possible to use “molecular landscape” to refer to a dominant landscape in a study rather than the variety of landscapes. For example, both Grimwade et al.,74 and Bolouri et al.,75 used “molecular landscape” to refer to primarily genomic landscape in acute myeloid leukemia.

Phenomic or phenotypic landscape refers to the phenotype observations on the vertical axis with respect to either changes in molecular landscape or changes to external stimulus on the horizontal axis. If the horizontal axis is ordinal or interval, the phenotypic landscape can offer an overview of the changes. Median lethal dose (LD50) or minimum inhibitory concentration (MIC) graph are examples of phenotypic landscape as they show growth (the phenotypic observation) on the vertical axis again dosage on the horizontal axis. Hence, we are likely to see more phenotypic landscapes than we would have noticed. For example, Nichols et al.,76 measured the growth (by colony size) of 3979 mutant strains from KEIO knockout collection68 against 324 conditions accounting for 114 unique stresses and found 179 genes that are essential for cell survival under specific conditions, which are known as conditionally essential genes. Mukherjee et al.,77 isolated 232 non-Saccharomyces yeast strains from a wide variety of sources and evaluate their growth based on different stresses; namely, osmotic stress (glucose, fructose, and sorbitol), salt stress (sodium chloride, potassium chloride, and lithium chloride), ethanol stress, heat stress, furan derivative stress, and heavy metal stress (zinc chloride, copper sulfate, and cadmium sulfate); and found that wild Pichia kudriavzevii (VMU139) strain is able to tolerate most of the tested fermentation conditions.

Concluding remarks

Landscape provides a view of an ordinal biological entity, such as a genome or chromosome; or an ordinal condition, such as levels of chemical stress; or a nominal condition, such as different samples or tissues; yet, does not limit the resolution of the view. In this omics era, landscapes can provide a useful scaffold to collate available information on an organism. It has been widely known that one of the major usefulness of UCSC Genome Browser (https://genome.ucsc.edu/) is its ability to view multiple tracks at the same time.78–81 In this case, a track in UCSC Genome Browser is equivalent to a landscape. The value ahead is to be able to compare and interrogate across multiple landscapes.

Acknowledgements

None.

Conflict of interest

No conflict of interests results from the publishing of this article.

References

  1. Wright S. The roles of mutation, inbreeding, crossbreeding, and selection in evolution. In: Proceedings of the Sixth International Congress of Genetics. 1932. p. 356–66.
  2. Webber C, Ponting CP. Hotspots of mutation and breakage in dog and human chromosomes. Genome Research. 2005;15(12):1787–1797.
  3. Itoh T, Toyoda A, Taylor TD, et al. Identification of large ancient duplications associated with human gene deserts. Nat Genet. 2005;37(10):1041.
  4. Pawlina–Tyszko K, Gurgul A, Szmatoła T, et al. Genomic landscape of copy number variation and copy neutral loss of heterozygosity events in equine sarcoids reveals increased instability of the sarcoid genome. Biochimie. 2017;140:122–132.
  5. Adegbuyiro A, Sedighi F, Pilkington AW, et al. Proteins Containing Expanded Polyglutamine Tracts and Neurodegenerative Disease. Biochemistry. 2017;56(9):1199–1217.
  6. Perry GH, Dominy NJ, Claw KG, et al. Diet and the evolution of human amylase gene copy number variation. Nat Genet. 2007;39(10):1256–1260.
  7. Olsson LM, Nerstedt A, Lindqvist AK, et al. Copy number variation of the gene NCF1 is associated with rheumatoid arthritis. Antioxid Redox Signal. 2012;16(1):71–78.
  8. McCarroll SA, Altshuler DM. Copy–number variation and association studies of human disease. Nat Genet. 2007;39(7 Suppl):S37–S42.
  9. Sharp AJ, Locke DP, McGrath SD, et al. Segmental duplications and copy–number variation in the human genome. Am J Hum Genet. 2005;77(1):78–88.
  10. Zarrei M, MacDonald JR, Merico D, et al. A copy number variation map of the human genome. Nat Rev Genet. 2015;16(3):172–183.
  11. Taniguchi Y, Choi PJ, Li GW, et al. Quantifying E. coli proteome and transcriptome with single–molecule sensitivity in single cells. Science. 2010;329(5991):533–538.
  12. Schwarzenberger A, Keith NR, Jackson CE, et al. Copy number variation of a protease gene of Daphnia: Its role in population tolerance. J Exp Zool A Ecol Integr Physiol. 2017;327(2–3):119–126.
  13. Gamazon ER, Stranger BE. The impact of human copy number variation on gene expression. Brief Funct Genomics. 2015;14(5):352–357.
  14. Beroukhim R, Mermel CH, Porter D, et al. The landscape of somatic copy–number alteration across human cancers. Nature. 2010;463(7283):899–905.
  15. Juhlin CC, Goh G, Healy JM, et al. Whole–exome sequencing characterizes the landscape of somatic mutations and copy number alterations in adrenocortical carcinoma. J Clin Endocrinol Metab. 2015;100(3):E493–E502.
  16. Neuhaus C, Eisenberger T, Decker C, et al. Next–generation sequencing reveals the mutational landscape of clinically diagnosed Usher syndrome:copy number variations, phenocopies, a predominant target for translational read–through, and PEX26 mutated in Heimler syndrome. Mol Genet Genomic Med. 2017;5(5):531–552.
  17. Zhao S, Bellone S, Lopez S, et al. Mutational landscape of uterine and ovarian carcinosarcomas implicates histone genes in epithelial–mesenchymal transition. Proc Natl Acad Sci USA. 2016;113(43):12238–12243.
  18. Xu Y, Jiang Y, Shi T, et al. Whole–genome sequencing reveals mutational landscape underlying phenotypic differences between two widespread Chinese cattle breeds. Plos One. 2017;12(8):e0183921.
  19. Waddell N, Pajic M, Patch AM, et al. Whole genomes redefine the mutational landscape of pancreatic cancer. Nature. 2015;518(7540):495–501.
  20. Ding LW, Sun QY, Tan KT, et al. Mutational Landscape of Pediatric Acute Lymphoblastic Leukemia. Cancer Res. 2017;77(2):390–400.
  21. Zehir A, Benayed R, Shah RH, et al. Mutational landscape of metastatic cancer revealed from prospective clinical sequencing of 10,000 patients. Nat Med. 2017;23(6):703–713.
  22. Lawson LP, Petren K. The adaptive genomic landscape of beak morphology in Darwin’s finches. Mol Ecol. 2017;26(19):4978–4989.
  23. Reid NM, Proestou DA, Clark BW, et al. The genomic landscape of rapid repeated evolutionary adaptation to toxic pollution in wild fish. Science. 2016;354(6317):1305–1308.
  24. Musicha P, Feasey NA, Cain AK, et al. Genomic landscape of extended–spectrum β–lactamase resistance in Escherichia coli from an urban African setting. J Antimicrob Chemother. 2017;72(6):1602–1609.
  25. Gnecchi–Ruscone GA, Jeong C, De Fanti S, et al. The genomic landscape of Nepalese Tibeto–Burmans reveals new insights into the recent peopling of Southern Himalayas. Sci Rep. 2017;7(1):15512.
  26. Özçelik T, Onat OE. Genomic landscape of the Greater Middle East. Nat Genet. 2016;48(9):978–979.
  27. Busby GBJ, Hellenthal G, Montinaro F, et al. The Role of Recent Admixture in Forming the Contemporary West Eurasian Genomic Landscape. Curr Biol. 2015;25(19):2518–2526.
  28. Hermsen R, de Ligt J, Spee W, et al. Genomic landscape of rat strain and substrain variation. BMC Genomics. 2015;16:357.
  29. Mata E, Díaz–López A, Martín–Moreno AM, et al. Analysis of the mutational landscape of classic Hodgkin lymphoma identifies disease heterogeneity and potential therapeutic targets. Oncotarget. 2017;8(67):111386–111395.
  30. Babenko VN, Chadaeva IV, Orlov YL. Genomic landscape of CpG rich elements in human. BMC Evol Biol. 2017;17(Suppl 1):19.
  31. Ruiz L, Bottacini F, Boinett CJ, et al. The essential genomic landscape of the commensal Bifidobacterium breve UCC2003. Sci Rep. 2017;7(1):5648.
  32. Russell DA, Ross RP, Fitzgerald GF, et al. Metabolic activities and probiotic potential of bifidobacteria. Int J Food Microbiol. 2011;149(1):88–105.
  33. Sandhu V, Wedge DC, Bowitz Lothe IM, et al. The Genomic Landscape of Pancreatic and Periampullary Adenocarcinoma. Cancer Res. 2016;76(17):5092–5102.
  34. Kendall SL, Movahedzadeh F, Wietzorrek A, et al. Microarray analysis of bacterial gene expression: towards the regulome. Comp Funct Genomics. 2002;3(4):352–354.
  35. Casella LG, Weiss A, Pérez–Rueda E, et al. Towards the complete proteinaceous regulome of Acinetobacter baumannii. Microb Genom. 2017;3(3):mgen000107.
  36. Wilson TJ, Lai L, Ban Y, et al. Identification of metagenes and their Interactions through Large–scale Analysis of Arabidopsis Gene Expression Data. BMC Genomics. 2012;13:237–237.
  37. Marco A, Konikoff C, Karr TL, et al. Relationship between gene co–expression and sharing of transcription factor binding sites in Drosophila melanogaster. Bioinformatics. 2019;25(19):2473–2477.
  38. Veerla S, Ringnér M, Höglund M. Genome–wide transcription factor binding site/promoter databases for the analysis of gene sets and co–occurrence of transcription factor binding motifs. BMC Genomics. 2010;11:145.
  39. Zhang Q, Sun W, Sun BY, et al. The dynamic landscape of gene regulation during Bombyx mori oogenesis. BMC Genomics. 2017;18(1):714.
  40. Li X, Mei H, Chen F, et al. Transcriptome Landscape of Mycobacterium smegmatis. Front Microbiol. 2017;8:2505.
  41. Fossat N, Pfister S, Tam PPL. A transcriptome landscape of mouse embryogenesis. Dev Cell. 2007;13(6):761–762.
  42. Tang F, Barbacioru C, Nordman E, et al. RNA–Seq analysis to capture the transcriptome landscape of a single cell. Nat Protoc. 2010;5(3):516–535.
  43. Kim J, Zhao K, Jiang P, et al. Transcriptome landscape of the human placenta. BMC Genomics. 2012;13:115–115.
  44. Louvet A, Wartel F, Castel H, et al. Infection in patients with severe alcoholic hepatitis treated with steroids: early response to therapy is the key factor. Gastroenterology. 2009;137(2):541–548.
  45. Sharma S, Maras JS, Das S, et al. Pre–therapy liver transcriptome landscape in Indian and French patients with severe alcoholic hepatitis and steroid responsiveness. Sci Rep. 2017;7(1):6816.
  46. Zhang S, Xu H, Liu X, et al. The muscle development transcriptome landscape of ovariectomized goat. R Soc Open Sci. 2017;4(12):171415.
  47. Ito T, Chiba T, Yoshida M. Exploring the protein interactome using comprehensive two–hybrid projects. Trends Biotechnol. 2001;19(10 Suppl):S23–S27.
  48. Causier B. Studying the interactome with the yeast two–hybrid system and mass spectrometry. Mass Spectrom Rev. 2004;23(5):350–367.
  49. Parrish JR, Gulyas KD, Finley RL. Yeast two–hybrid contributions to interactome mapping. Curr Opin Biotechnol. 2006;17(4):387–393.
  50. Spurrell CH, Dickel DE, Visel A. The Ties That Bind: Mapping the Dynamic Enhancer–Promoter Interactome. Cell. 2016;167(5):1163–1166.
  51. Ryder SP. Protein–mRNA interactome capture: cartography of the mRNP landscape. F1000Res. 2016;5:2627.
  52. Sanchez C, Lachaize C, Janody F, et al. Grasping at molecular interactions and genetic networks in Drosophila melanogaster using FlyNets, an Internet database. Nucleic Acids Res. 1999;27(1):89–94.
  53. Odajima J, Saini S, Jung P, et al. Proteomic Landscape of Tissue–Specific Cyclin E Functions in vivo. PLoS Genet. 2016;12(11):e1006429.
  54. Chiang CK, Mehta N, Patel A, et al. The proteomic landscape of the suprachiasmatic nucleus clock reveals large–scale coordination of key biological processes. PLoS Genet. 2014;10(10):e1004695.
  55. Kole K, Lindeboom RGH, Baltissen MPA, et al. Proteomic landscape of the primary somatosensory cortex upon sensory deprivation. Gigascience. 2017;6(10):1–10.
  56. Cascante M, Marin S. Metabolomics and fluxomics approaches. Essays Biochem. 2008;45:67–81.
  57. Raamsdonk LM, Teusink B, Broadhurst D, et al. A functional genomics strategy that uses metabolome data to reveal the phenotype of silent mutations. Nat Biotechnol. 2001;19(1):45–50.
  58. Winter G, Krömer JO. Fluxomics – connecting ’omics analysis and phenotypes. Environ Microbiol. 2013;15(7):1901–1916.
  59. Viswan A, Sharma RK, Azim A, et al. NMR–Based Metabolic Snapshot from Minibronchoalveolar Lavage Fluid: An Approach To Unfold Human Respiratory Metabolomics. J Proteome Res. 2016;15(1):302–310.
  60. Lien SK, Niedenführ S, Sletta H, et al. Fluxome study of Pseudomonas fluorescens reveals major reorganisation of carbon flux through central metabolic pathways in response to inactivation of the anti–sigma factor MucA. BMC Syst Biol. 2015;9:6.
  61. Borgos SEF, Bordel S, Sletta H, et al. Mapping global effects of the anti–sigma factor MucA in Pseudomonas fluorescens SBW25 through genome–scale metabolic modeling. BMC Syst Biol. 2013;7:19.
  62. Ahn E, Kumar P, Mukha D, et al. Temporal fluxomics reveals oscillations in TCA cycle flux throughout the mammalian cell cycle. Mol Syst Biol. 2017;13(11):953.
  63. Sabra W, Bommareddy RR, Maheshwari G, et al. Substrates and oxygen dependent citric acid production by Yarrowia lipolytica:insights through transcriptome and fluxome analyses. Microb Cell Fact. 2017;16(1):78.
  64. Heiland DH, Wörner J, Gerrit Haaker J, et al. The integrative metabolomic–transcriptomic landscape of glioblastome multiforme. Oncotarget. 2017;8(30):49178–49190.
  65. Rabinowitz JS, Robitaille AM, Wang Y, et al. Transcriptomic, proteomic, and metabolomic landscape of positional memory in the caudal fin of zebrafish. Proc Natl Acad Sci USA. 2017;114(5):E717–E726.
  66. Marc Rhoads J, Wu G. Glutamine, arginine, and leucine signaling in the intestine. Amino Acids. 2009;37(1):111–122.
  67. Fuhrer T, Zampieri M, Sévin DC, et al. Genomewide landscape of gene–metabolome associations in Escherichia coli. Mol Syst Biol. 2017;13(1):907.
  68. Baba T, Ara T, Hasegawa M, et al. Construction of Escherichia coli K–12 in–frame, single–gene knockout mutants:the Keio collection. Mol Syst Biol. 2006;2:2006.0008.
  69. Aon M, Cortassa S. Systems Biology of the Fluxome. Processes. 2015;3(3):607–618.
  70. Medico E, Russo M, Picco G, et al. The molecular landscape of colorectal cancer cell lines unveils clinically actionable kinase targets. Nat Commun. 2015;6:7002.
  71. Schafer S, Adami E, Heinig M, et al. Translational regulation shapes the molecular landscape of complex disease phenotypes. Nat Commun. 2015;6:7200.
  72. van de Vondervoort I, Poelmans G, Aschrafi A, et al. An integrated molecular landscape implicates the regulation of dendritic spine formation through insulin–related signalling in obsessive–compulsive disorder. J Psychiatry Neurosci. 2016;41(4):280–285.
  73. Neely BA, Wilkins CE, Marlow LA, et al. Proteotranscriptomic Analysis Reveals Stage Specific Changes in the Molecular Landscape of Clear–Cell Renal Cell Carcinoma. PLoS ONE. 2016;11(4):e0154074.
  74. Grimwade D, Ivey A, Huntly BJP. Molecular landscape of acute myeloid leukemia in younger adults and its clinical relevance. Blood. 2016;127(1):29–41.
  75. Bolouri H, Farrar JE, Triche T, et al. The molecular landscape of pediatric acute myeloid leukemia reveals recurrent structural alterations and age–specific mutational interactions. Nat Med. 2018;24(1):103–112.
  76. Nichols RJ, Sen S, Choo YJ, et al. Phenotypic Landscape of a Bacterial Cell. Cell. 2011;144(1):143–156.
  77. Mukherjee V, Radecka D, Aerts G, et al. Phenotypic landscape of non–conventional yeast species for different stress tolerance traits desirable in bioethanol fermentation. Biotechnol Biofuels. 2017;10:216.
  78. Kielpinski LJ, Sidiropoulos N, Vinther J. Reproducible Analysis of Sequencing–Based RNA Structure Probing Data with User–Friendly Tools. Methpds Enzymol. 2015;558:153–180.
  79. Kang K, Chung JH, Kim J. Evolutionary Conserved Motif Finder (ECMFinder) for genome–wide identification of clustered YY1– and CTCF–binding sites. Nucleic Acids Res. 2009;37(6):2003–2013.
  80. Kent WJ, Hsu F, Karolchik D, et al. Exploring relationships and mining data with the UCSC Gene Sorter. Genome Res. 2005;15(5):737–741.
  81. Casper J, Zweig AS, Villarreal C, et al. The UCSC Genome Browser database: 2018 update. Nucleic Acids Res. 2018;46(D1):D762–D769.
Creative Commons Attribution License

©2018 Ling. This is an open access article distributed under the terms of the, which permits unrestricted use, distribution, and build upon your work non-commercially.