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<h3>Machine Learning </h3> | <h3>Machine Learning </h3> | ||
<p>As Cry proteins are a group that is hard to define biologically, other than having highly specific toxic activity, it is somewhat of a challenge to find them through means other than direct sequence comparisons. This is why we use three methods to find potential Cry proteins: <ol> | <p>As Cry proteins are a group that is hard to define biologically, other than having highly specific toxic activity, it is somewhat of a challenge to find them through means other than direct sequence comparisons. This is why we use three methods to find potential Cry proteins: <ol> | ||
− | <li>A direct sequence comparison with a stringent cut-off | + | <li>A direct sequence comparison with a stringent cut-off defined to be an <a class="tooltip">E value<span class="tooltiptext" style="width:500px;">Expect value is the number of hits one can "expect" to see by chance when searching a database of a particular size.</span></a>of 0.1 or lower and an alignment overlap of at least 50%: |
<a class="tooltip">BLAST<span class="tooltiptext" style="width:500px;"> | <a class="tooltip">BLAST<span class="tooltiptext" style="width:500px;"> | ||
The Basic Local Alignment Search Tool (<b>BLAST</b>) is an algorithm for comparing sequence information, such as amino-acid (protein) or nucleic-acid (DNA/RNA) sequences.</span></a> <sup><a href="#ts8" id="ref_ts8">8</a></sup> | The Basic Local Alignment Search Tool (<b>BLAST</b>) is an algorithm for comparing sequence information, such as amino-acid (protein) or nucleic-acid (DNA/RNA) sequences.</span></a> <sup><a href="#ts8" id="ref_ts8">8</a></sup> |
Revision as of 14:50, 18 October 2016
Toxin Scanner
BioBrick discovery
For iGEM 2016 we designed a high-throughput pipeline for the identification of novel proteins directly from raw genome sequencing data. Given the specificity of our tool and the importance of biobrick discovery in iGEM, we made it publicly available for everyone to modify and use. The tool can be found in this Gitlab repository .
For the purpose of the BeeT project, we use it as a cry toxin predictor, given genomes of selected bacteria.
Toxin Specificity
For this project we need a toxin that specifically targets Varroa destructor. The most well known miticidal proteins are the crystal (Cry) proteins. These are usually found on megaplasmids from Bacillus Thuringiensis and related species. 14
We know Varroa-specific miticidal activity exists in Bacillus thuringiensis and related species, as shown in: "In vitro susceptibility of Varroa destructor and Apis mellifera to native strains of Bacillus thuringiensis." by Alquisira-Ramírez et al. 2 In this paper, several isolates are described that cause a mite mortality of up to 100%. Importantly, the strains also showed no miticidal activity against bee larvae. Because of this we started several sub-projects in parallel to maximize our chances of finding a viable V. destructor-killer. The specificity part of our project focuses on creating V. destructor-gut binding Cry toxins and finding V. destructor-specific miticidal proteins.
There already exists a publication about a tool called “Bt Toxin Scanner”1. This tool does not fully support local deployment, which is needed for high-throughput analysis. Also, because of the relatively basic analysis done by the tool, we decided to develop our own tool that is fully open-source and improves upon the analysis techniques used in Bt Toxin Scanner. Our goal with this tool is to run raw sequencing files, and deliver potential Cry proteins with just the click of a button.
This tool was made in preparation for results of the latter, finding V. destructor-specific miticidal proteins, which we assume to be of the Cry protein family. These Cry proteins are a diverse group, but are known to be highly specific for individual insects, acari, nematodes and various other eukaryotic taxa. Cry proteins are not necessarily a group of proteins that all perform the same function in the same manner. The distinction between Cry and non-Cry proteins is defined by a committee: Cry Protein website Based on 45% sequence similarity there are over 70 groups. This high amount of diversity makes it hard to predict when something is or isn't a Cry protein. Despite this diversity, many of them have the same three domain structure. The N-terminal domain I is involved in membrane insertion and pore formation, while domains II and III are involved in receptor recognition and binding to them.
Testing the tool
We tested the tool on a genome sample from a study with accession number PRJEB5931. 13 This genome was found after a co-evolution experiment, and a Bacillus thuringiensis with known nematicidal Cry proteins present.
ERX463573 is the accession code of the experiment from which these raw read files came. The experiment this came from was about a Population of Bacillus thuringiensis which were coevolved with Caenorhabditis, which is a kind of nematode, as host.
From the study we know to expect at the very least the following two proteins:
Cry35Aa4
and
Cry21Aa2.
According to the Cry protein toxin list it is known that Cry35Aa4 is a binary toxin with Cry34Aa4 , and as such we may expect to find this protein, or one like it, as well.
Visualizing the result
The easiest way to visualize the results from the three separate components of the tool is to use a Venn diagram.
As Blast had only 5 results it is easier to examine this method in detail. Two of the five were indeed proteins we expected from the paper: Cry35Aa4 and Cry21Aa2. Both of these were also picked up by the Hidden Markov Model method of cry protein detection as shown in figure 1, but not by the RandomForest method.
Next we found a protein that matched very well with the Cry34Aa group, which is a complimentary protein to Cry35Aa4.
The two other proteins which were found: Cry38Aa1, which has no known insecticidal target, but is highly similar to proteins that do: Cry15Aa1, Cry23Aa1, and Cry33Aa1. 17
and "Gene_5518" which was 85.87% identical to: Cry14Ab1. This protein is only mentioned in a patent by Sampson et al. 2012.18 This protein is quite interesting because it might be a completely new protein or a variation of Cry14Ab1 specific to nematodes.
Tool overview
We use a combination of existing tools to come to the prediction of novel cry proteins. The entire pipeline consists of four scripts in total, one of which is entirely dedicated to analysis of the Random Forest model and not further used in the main program. The others are there to group the Machine Learning specific functions, the functions that handle known cry proteins, and the functions that handle raw sequence data. Figure 2 gives a graphical representation of the pipeline, though some modules have been left out for the sake of readability. Here, we go through each part of the process in a step-by-step manner.
Software description
Click here for a highly detailed overview of how the pipeline works.
References
1. Ye, W., Zhu, L., Liu, Y., Crickmore, N., Peng, D., Ruan, L., & Sun, M. (2012). Mining new crystal protein genes from Bacillus thuringiensis on the basis of mixed plasmid-enriched genome sequencing and a computational pipeline. Applied and environmental microbiology, 78(14), 4795-4801. ↩2. Alquisira-Ramírez, E. V., Paredes-Gonzalez, J. R., Hernández-Velázquez, V. M., Ramírez-Trujillo, J. A., & Peña-Chora, G. (2014). In vitro susceptibility of Varroa destructor and Apis mellifera to native strains of Bacillus thuringiensis. Apidologie, 45(6), 707-718. ↩
3. Compeau, P. E., Pevzner, P. A., & Tesler, G. (2011). How to apply de Bruijn graphs to genome assembly. Nature biotechnology, 29(11), 987-991. ↩
4. Rabiner, L., & Juang, B. (1986). An introduction to hidden Markov models. ieee assp magazine, 3(1), 4-16. ↩
5. Crickmore, N., Baum, J., Bravo, A., Lereclus, D., Narva, K., Sampson, K., Schnepf, E., Sun, M. and Zeigler, D.R. " Bacillus thuringiensis toxin nomenclature" (2016) http://www.btnomenclature.info/ ↩
6. Cock PA, Antao T, Chang JT, Bradman BA, Cox CJ, Dalke A, Friedberg I, Hamelryck T, Kauff F, Wilczynski B and de Hoon MJL (2009) Biopython: freely available Python tools for computational molecular biology and bioinformatics. Bioinformatics, 25, 1422-1423 ↩
7. Liaw, A., & Wiener, M. (2002). Classification and regression by randomForest. R news, 2(3), 18-22. ↩
8. Altschul, S. F., Gish, W., Miller, W., Myers, E. W., & Lipman, D. J. (1990). Basic local alignment search tool. Journal of molecular biology, 215(3), 403-410. ↩
9. Eddy, S. R. (1998). Profile hidden Markov models. Bioinformatics, 14(9), 755-763. ↩
10. Sievers, F., & Higgins, D. G. (2014). Clustal Omega, accurate alignment of very large numbers of sequences. Multiple sequence alignment methods, 105-116. ↩
11. Guruprasad, K., Reddy, B. B., & Pandit, M. W. (1990). Correlation between stability of a protein and its dipeptide composition: a novel approach for predicting in vivo stability of a protein from its primary sequence. Protein engineering, 4(2), 155-161. ↩
12. Pedregosa, F., Varoquaux, G., Gramfort, A., Michel, V., Thirion, B., Grisel, O., ... & Vanderplas, J. (2011). Scikit-learn: Machine learning in Python. Journal of Machine Learning Research, 12(Oct), 2825-2830. ↩
13. Masri, L., Branca, A., Sheppard, A. E., Papkou, A., Laehnemann, D., Guenther, P. S., ... & Brzuszkiewicz, E. (2015). Host–pathogen coevolution: the selective advantage of Bacillus thuringiensis virulence and its cry toxin genes. PLoS Biol, 13(6), e1002169. ↩
14.de Maagd, R. A., Bravo, A., & Crickmore, N. (2001). How Bacillus thuringiensis has evolved specific toxins to colonize the insect world. TRENDS in Genetics, 17(4), 193-199. ↩
15. Peng, Y., Leung, H. C., Yiu, S. M., & Chin, F. Y. (2012). IDBA-UD: a de novo assembler for single-cell and metagenomic sequencing data with highly uneven depth. Bioinformatics, 28(11), 1420-1428. ↩
16. Besemer, J., Lomsadze, A., & Borodovsky, M. (2001). GeneMarkS: a self-training method for prediction of gene starts in microbial genomes. Implications for finding sequence motifs in regulatory regions. Nucleic acids research, 29(12), 2607-2618. ↩
17. Baum, J. A., Chu, C. R., Rupar, M., Brown, G. R., Donovan, W. P., Huesing, J. E., ... & Vaughn, T. (2004). Binary toxins from Bacillus thuringiensis active against the western corn rootworm, Diabrotica virgifera virgifera LeConte. Applied and environmental microbiology, 70(8), 4889-4898. ↩
18. Sampson, K. S., Tomso, D. J., & Dumitru, R. V. (2012). U.S. Patent No. 8,318,900. Washington, DC: U.S. Patent and Trademark Office. ↩
19. Bradley, A. P. (1997). The use of the area under the ROC curve in the evaluation of machine learning algorithms. Pattern recognition, 30(7), 1145-1159. ↩