Team II Comparative Genomics Group: Difference between revisions

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We computed min-hash distances between all samples with known Antibiotic resistance phenotype and clustered them using complete linkage hierarchical clustering.   
We computed min-hash distances between all samples with known Antibiotic resistance phenotype and clustered them using complete linkage hierarchical clustering.   


[[File:mash_distances.png|frame|none|Fig #: Hierarchical clustering based on min-hash distances. Distances were computed using MASH, and clustering was done using the R package hclust. Samples labeled "NA" were not included in the analysis.]]
[[File:mash_distances.png|frame|center|Fig #: Hierarchical clustering based on min-hash distances. Distances were computed using MASH, and clustering was done using the R package hclust. Samples labeled "NA" were not included in the analysis.]]


The dendrogram indicates that there is no clear demarcation between the different resistance phenotypes, confirming that there is no broad genomic signature that distinguishes the heteroresistant samples from the non-heteroresistant samples.  
The dendrogram indicates that there is no clear demarcation between the different resistance phenotypes, confirming that there is no broad genomic signature that distinguishes the heteroresistant samples from the non-heteroresistant samples.  
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After removing the outliers, we found a single highly similar cluster of isolates that spanned all 3 phenotypes (Resistant, heteroresistant, susceptible)  
After removing the outliers, we found a single highly similar cluster of isolates that spanned all 3 phenotypes (Resistant, heteroresistant, susceptible)  


[[File:mash_distances_cluster.png|frame|none|Fig #: Zoomed in view of a single highly related cluster that encompasses all three resistance phenotypes]]
[[File:mash_distances_cluster.png|frame|center|Fig #: Zoomed in view of a single highly related cluster that encompasses all three resistance phenotypes]]




These 11 samples have relative mash distances =~ 0.0001, suggesting that any genetic element causing the different antibiotic resistance phenotypes would be caused by the extremely small percentage of differences between these samples. We believe this cluster is a good representative of our complete dataset.
These 12 samples have relative mash distances =~ 0.0001, suggesting that any genetic element causing the different antibiotic resistance phenotypes would be caused by the extremely small percentage of differences between these samples. We believe this cluster is a good representative of our complete dataset.


===Difference analysis===
===Difference analysis===
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We executed a pan-genome GWAS using the tool 'bacterial GWAS'. Bacterial GWAS runs prodigal on assembled contigs to annotate ORFs, and performs CD-HIT clustering to construct a pan-genome. Then it performs a GWAS using a logistic regression model on the given phenotypes - presence or absence of heteroresistance and outputs a list of significant predicted genes along with the frequency of their occurrence in each phenotype. We then BLASTed the predicted genes to identify their function.
We executed a pan-genome GWAS using the tool 'bacterial GWAS'. Bacterial GWAS runs prodigal on assembled contigs to annotate ORFs, and performs CD-HIT clustering to construct a pan-genome. Then it performs a GWAS using a logistic regression model on the given phenotypes - presence or absence of heteroresistance and outputs a list of significant predicted genes along with the frequency of their occurrence in each phenotype. We then BLASTed the predicted genes to identify their function.
[[File:manhattan_plot.png|thumb|center|upright=2.0|none|Fig #: Manhattan plot from bacterialGWAS. Each point represents a gene from the pan-genome, the y axis is the -log p value]]
[[File:relative_percentages|thumb|center|upright=2.0|none|Fig #: Relative percentages of occurrence of a feature in each phenotype. There is no feature that is overrepresented in any phenotype ]]
===Piggy===
Intergenic region is an area of DNA sequences located between genes. Its function is little known but intergenic regions may contain unidentified genes such as noncoding RNAs. Variation in intergenic regions in bacteria may directly confer phenotypes. First of all, Piggy takes gene presence-absence output file from Roary, and it takes gff files produced by Prokka as input files. Piggy extracts and names intergenic regions, using the flanking gene names and their orientations. The intergenic regions are clustered with CD-HIT, and the longest sequence from each cluster is used to do an all-vs-all BLASTN comparison. Then, it merges similar clusters and these clusters are used to produce an intergenic regions presence-absence matrix. Presence-absence matrix has each intergenic cluster, what sample it appears on, and what genes neighboring the intergenic regions.
[[File:Piggy figure.png |thumb|center|upright=2.0|none|Fig #: Piggy pipeline]]
I tested the cluster of interest. This histogram shows how many intergenic region clusters appear per sample, and almost all of the intergenic regions are present in all samples.
[[File:Piggy1.png | center | 500px]]
Even without one that appeared on all samples, there is no phenotype-specific difference.
[[File:Piggy2.png | center | 500px]]


==Phylogeny Approach==
==Phylogeny Approach==
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* tonB - Protein TonB
* tonB - Protein TonB


[[File:Mlst_table.png|thumb|left|upright=2|Fig #: MLST distribution across samples]]
[[File:Mlst_table.png|thumb|400px|center|upright=2|Fig #: MLST distribution across samples]]
 
[[File:Barchart1_mlst.png|thumb|400px|center|upright=2|Fig #: MLST distribution across samples]]
[[File:Barchart1_mlst.png|thumb|left|upright=2|Fig #: MLST distribution across samples]]
[[File:Barchart3_mlst.png|thumb|400px|center|upright=2|Fig #: MLST distribution across samples]]
[[File:Barchart2_mlst.png|thumb|right|upright=2|Fig #: MLST distribution across samples]]
[[File:Barchart3_mlst.png|thumb|left|upright=2|Fig #: MLST distribution across samples]]


===Single Nucleotide Polymorphism (SNP) Analysis===
===Single Nucleotide Polymorphism (SNP) Analysis===
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After obtaining the trees and SNPs contained within, our focus shifted toward finding SNPs which were homogenous within and unique to our phenotypic populations.
After obtaining the trees and SNPs contained within, our focus shifted toward finding SNPs which were homogenous within and unique to our phenotypic populations.


In the end, we were unable to discover any SNPs which were homogenous across our heteroresistant sample population and were not found in susceptible and/or resitant populations. This led us to the conclusion that heteroresistance was not being caused by single nucleotide polymorphisms.
[[File:KSNPresults.png|thumb|center|upright=2|Fig #: kSNP3 results of the cluster of interest]]


==Results and Discussion==
In the end, we were unable to discover any SNPs which were homogenous across our heteroresistant sample population and were not found in susceptible and/or resistant populations. This led us to the conclusion that heteroresistance was not being caused by single nucleotide polymorphisms.


==Conclusion==
We were unable to identify any genetic determinants of heteroresistance to fosfomycin from our analyses. As the samples are highly genetically similar, any differences we found using GWAS and kSNP analysis did not correlate with resistance phenotype.


==References==
==References==
Castañeda-García, Alfredo, Jesús Blázquez, and Alexandro Rodríguez-Rojas. "Molecular mechanisms and clinical impact of acquired and intrinsic fosfomycin resistance." Antibiotics 2.2 (2013): 217-236.<br>
Castañeda-García A, Blázquez J, Rodríguez-Rojas A. Molecular Mechanisms and Clinical Impact of Acquired and Intrinsic Fosfomycin Resistance. Antibiotics. 2013;2(2):217–236.
Nikolaidis I, Favini-Stabile S, Dessen A. 2014. Resistance to antibiotics targeted to the bacterial cell wall. Protein Sci 23: 243–259.<br>
 
Kidd, Timothy J et al. “A Klebsiella Pneumoniae Antibiotic Resistance Mechanism That Subdues Host Defences and Promotes Virulence.EMBO Molecular Medicine 9.4 (2017): 430–447.<br>
Nikolaidis I, Favini-Stabile S, Dessen A. Resistance to antibiotics targeted to the bacterial cell wall. Protein Science. 2014;23(3):243–259.
Guo, Qinglan et al. “Glutathione-S-Transferase FosA6 of Klebsiella Pneumoniae Origin Conferring Fosfomycin Resistance in ESBL-Producing Escherichia Coli.Journal of Antimicrobial Chemotherapy 71.9 (2016): 2460–2465.<br>
 
Gardner, Shea N., Tom Slezak, and Barry G. Hall. "kSNP3. 0: SNP detection and phylogenetic analysis of genomes without genome alignment or reference genome." Bioinformatics31.17 (2015): 2877-2878. <br>
Kidd TJ, Mills G, Sá‐Pessoa J, Dumigan A, Frank CG, Insua JL, Ingram R, Hobley L, Bengoechea JA. A ''Klebsiella pneumoniae'' antibiotic resistance mechanism that subdues host defences and promotes virulence. EMBO Molecular Medicine. 2017;9(4):430–447.
Shea N Gardner, Tom Slezak, Barry G. Hall; kSNP3.0: SNP detection and phylogenetic analysis of genomes without genome alignment or reference genome, Bioinformatics, Volume 31, Issue 17, 1 September 2015, Pages 2877–2878. <br>
 
Kim, Mincheol, et al. "Towards a taxonomic coherence between average nucleotide identity and 16S rRNA gene sequence similarity for species demarcation of prokaryotes." International journal of systematic and evolutionary microbiology 64.2 (2014): 346-351.<br>
Guo Q, Tomich AD, Mcelheny CL, Cooper VS, Stoesser N, Wang M, Sluis-Cremer N, Doi Y. Glutathione-S-transferase FosA6 of ''Klebsiella pneumoniae'' origin conferring fosfomycin resistance in ESBL-producing ''Escherichia coli''. Journal of Antimicrobial Chemotherapy. 2016;71(9):2460–2465.
 
Thorpe HA, Bayliss SC, Sheppard SK, Feil EJ. Piggy: A Rapid, Large-Scale Pan-Genome Analysis Tool for Intergenic Regions in Bacteria. 2017.
 
Gardner SN, Slezak T, Hall BG. kSNP3.0: SNP detection and phylogenetic analysis of genomes without genome alignment or reference genome: Table 1. Bioinformatics. 2015;31(17):2877–2878.
 
Kim M, Oh H-S, Park S-C, Chun J. Towards a taxonomic coherence between average nucleotide identity and 16S rRNA gene sequence similarity for species demarcation of prokaryotes. International Journal Of Systematic And Evolutionary Microbiology. 2014;64(Pt 5):1825–1825.

Latest revision as of 21:45, 19 April 2018

Introduction

Background

Comparative genomics is the study of comparing genome sequences to better understand the structure and function of genes. This field has explored areas ranging from organism development and behavior to metabolism and susceptibility to disease.

Fosfomycin

Fosfomycin is a natural antibacterial produced by various Streptomyces and Pseudomonas species. It is the only antibiotic currently in clinical use that targets a Mur enzyme. It is broad-spectrum bactericidal antibiotic that can be employed against both Gram-positive and Gram-negative bacteria (i.e. Klebsiella). It interferes with cell wall synthesis, particularly inhibits the initial step involving phosphoenolpyruvate synthetase, as shown below.

Resistance of Fosfomycin involves a wide range of resistance mechanisms. Some of them include reduced uptake, target site modification, expression of antibiotic-degrading enzymes and rescue of the UDP-MurNAc biogenesis pathway (ex. mutation within MurA enzyme).

Objectives

To identify genetic determinants that could be a potential cause for Fosfomycin heteroresistance in the isolates provided.

Data

The following is the metadata of our study:

Whole Genome Approach

The Whole Genome approach to comparative genomics attempts to broadly identify similarities and differences across samples.

Similarity analysis

Identifying similarities among our samples would tell us if phenotypic similarities correlate with overall genome similarity and help us choose representatives.

We computed min-hash distances between all samples with known Antibiotic resistance phenotype and clustered them using complete linkage hierarchical clustering.

Fig #: Hierarchical clustering based on min-hash distances. Distances were computed using MASH, and clustering was done using the R package hclust. Samples labeled "NA" were not included in the analysis.

The dendrogram indicates that there is no clear demarcation between the different resistance phenotypes, confirming that there is no broad genomic signature that distinguishes the heteroresistant samples from the non-heteroresistant samples.

After removing the outliers, we found a single highly similar cluster of isolates that spanned all 3 phenotypes (Resistant, heteroresistant, susceptible)

Fig #: Zoomed in view of a single highly related cluster that encompasses all three resistance phenotypes


These 12 samples have relative mash distances =~ 0.0001, suggesting that any genetic element causing the different antibiotic resistance phenotypes would be caused by the extremely small percentage of differences between these samples. We believe this cluster is a good representative of our complete dataset.

Difference analysis

In order to identify the genomic differences between our samples, we decided to perform a Genome Wide Association Study or GWAS. A GWA study correlates the presence or absence of variants in a genome with the presence or absence of a trait, which in our case is heteroresistance.

We executed a pan-genome GWAS using the tool 'bacterial GWAS'. Bacterial GWAS runs prodigal on assembled contigs to annotate ORFs, and performs CD-HIT clustering to construct a pan-genome. Then it performs a GWAS using a logistic regression model on the given phenotypes - presence or absence of heteroresistance and outputs a list of significant predicted genes along with the frequency of their occurrence in each phenotype. We then BLASTed the predicted genes to identify their function.

Fig #: Manhattan plot from bacterialGWAS. Each point represents a gene from the pan-genome, the y axis is the -log p value
File:Relative percentages
Fig #: Relative percentages of occurrence of a feature in each phenotype. There is no feature that is overrepresented in any phenotype

Piggy

Intergenic region is an area of DNA sequences located between genes. Its function is little known but intergenic regions may contain unidentified genes such as noncoding RNAs. Variation in intergenic regions in bacteria may directly confer phenotypes. First of all, Piggy takes gene presence-absence output file from Roary, and it takes gff files produced by Prokka as input files. Piggy extracts and names intergenic regions, using the flanking gene names and their orientations. The intergenic regions are clustered with CD-HIT, and the longest sequence from each cluster is used to do an all-vs-all BLASTN comparison. Then, it merges similar clusters and these clusters are used to produce an intergenic regions presence-absence matrix. Presence-absence matrix has each intergenic cluster, what sample it appears on, and what genes neighboring the intergenic regions.

Fig #: Piggy pipeline

I tested the cluster of interest. This histogram shows how many intergenic region clusters appear per sample, and almost all of the intergenic regions are present in all samples.

Even without one that appeared on all samples, there is no phenotype-specific difference.

Phylogeny Approach

Phylogeny based approaches aim to pair down analysis by focusing on small changes to a directed set of genes between samples. Our group chose to focus on comparison of highly conserved genes and single nucleotide polymorphisms. These approaches attempted to both sequence type and understand the underlying mechanisms of action for heteroresistance in Klebsiella pneumoniae.

Multilocus Sequence Typing (MLST)

Traditional MLST schemes focus on allelic diversity across a small subset of highly conserved genes commonly referred to as housekeeping genes. Compiling allelic variants into compound identification profiles creates unique types which have been shown to have specificity down to the strain level. However, due to housekeeping genes being highly conserved, MLST schemes have difficulty distinguishing between organisms and samples from the same culture.

MLST schemes take years and large amounts of funding to establish and verify. Luckily, an MLST scheme existed previously for Klebsiella pneumoniae. We chose to use this existing scheme along with known phenotypic profiles of our samples in hopes of being able to easily sequence type heteroresistance. STing, an MLST Tool developed by the Jordan Lab at Georgia Tech, was used to quickly assign allelic profiles to our sample set.

The MLST scheme for Klebsiella pneumoniae contains 7 genes and is as follows:

  • gapA - Glyceraldehyde-3-phosphate dehydrogenase A
  • infB - Translation initiation factor IF-2
  • Mdh - Malate dehydrogenase
  • Pgi - Glucose-6-phosphate isomerase
  • phoE - Outer membrane pore protein E
  • rpoB - RNA polymerase subunit B
  • tonB - Protein TonB
Fig #: MLST distribution across samples
Fig #: MLST distribution across samples
Fig #: MLST distribution across samples

Single Nucleotide Polymorphism (SNP) Analysis

SNP analysis compares genetic sequences across samples in search of single nucleotide differences. Even single nucleotide changes have been shown to drastically affect genetic expression, transcriptional mechanisms, and protein composition and configuration. Our team chose to compare these sites using kSNP3. kSNP relies on pre-existing string manipulation programs which k-merize the sequences based off of metrics of sequence similarity. kSNP3 also possess the ability to annotate these SNPs found in the genome based off either NCBI reference genomes or provided GenBank files.

Using self-contained scripts, we used a k-mer size of 23 and GenBank files from the Functional Annotation team, we analyzed both the whole sample population and our previously identified cluster of interest. Initial analysis of the trees generated by kSNP3 did not return clear phylogenetic groupings along phenotypic populations. The tree for our cluster of interest is listed below.

Fig #: SNP Tree generated from analysis of cluster of interest

After obtaining the trees and SNPs contained within, our focus shifted toward finding SNPs which were homogenous within and unique to our phenotypic populations.

Fig #: kSNP3 results of the cluster of interest

In the end, we were unable to discover any SNPs which were homogenous across our heteroresistant sample population and were not found in susceptible and/or resistant populations. This led us to the conclusion that heteroresistance was not being caused by single nucleotide polymorphisms.

Conclusion

We were unable to identify any genetic determinants of heteroresistance to fosfomycin from our analyses. As the samples are highly genetically similar, any differences we found using GWAS and kSNP analysis did not correlate with resistance phenotype.

References

Castañeda-García A, Blázquez J, Rodríguez-Rojas A. Molecular Mechanisms and Clinical Impact of Acquired and Intrinsic Fosfomycin Resistance. Antibiotics. 2013;2(2):217–236.

Nikolaidis I, Favini-Stabile S, Dessen A. Resistance to antibiotics targeted to the bacterial cell wall. Protein Science. 2014;23(3):243–259.

Kidd TJ, Mills G, Sá‐Pessoa J, Dumigan A, Frank CG, Insua JL, Ingram R, Hobley L, Bengoechea JA. A Klebsiella pneumoniae antibiotic resistance mechanism that subdues host defences and promotes virulence. EMBO Molecular Medicine. 2017;9(4):430–447.

Guo Q, Tomich AD, Mcelheny CL, Cooper VS, Stoesser N, Wang M, Sluis-Cremer N, Doi Y. Glutathione-S-transferase FosA6 of Klebsiella pneumoniae origin conferring fosfomycin resistance in ESBL-producing Escherichia coli. Journal of Antimicrobial Chemotherapy. 2016;71(9):2460–2465.

Thorpe HA, Bayliss SC, Sheppard SK, Feil EJ. Piggy: A Rapid, Large-Scale Pan-Genome Analysis Tool for Intergenic Regions in Bacteria. 2017.

Gardner SN, Slezak T, Hall BG. kSNP3.0: SNP detection and phylogenetic analysis of genomes without genome alignment or reference genome: Table 1. Bioinformatics. 2015;31(17):2877–2878.

Kim M, Oh H-S, Park S-C, Chun J. Towards a taxonomic coherence between average nucleotide identity and 16S rRNA gene sequence similarity for species demarcation of prokaryotes. International Journal Of Systematic And Evolutionary Microbiology. 2014;64(Pt 5):1825–1825.