Team:Peking/Project/SensorMining

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Biosensor Mining

Biosensor Mining

In order to comprehensively profile aromatics in environment, our toolkit should be equipped with a collection of biosensors that senses diverse aromatic components. However, there is no such a comprehensive collection of biosensors available currently. Noting the abundant genomic and proteomic data in databases today, we speculated that large protein databases, like Uniprot, are ideal gold mines finding new Biobricks. This year, Peking iGEM team has developed a four-step bioinformatic mining method to screen out feasible and well-characterized aromatics-sensing transcriptional regulators from the protein database. This method consists of several computer programs to process massive data and a manual adjustment step to further guarantee the reliability of the mining results:

Figure 1. The flow chart of mining aromatic-sensing transcriptional regulators from the database Uniprot. Step 1, narrowing down the scope of proteins into transcription factors (TFs) in specific bacteria species. Step 2, screening out aromatics-related transcription factors. Step 3, the aromatics-related transcription factors with most detailed studies are selected. Step 4, manual adjustment to further evaluate the reliability of the selected transcription factors. Move the mouse cursor to see the detailed explanations of individual steps.

First (Step 1 in Fig. 1), we narrowed down the scope of proteins into transcription factors of specific bacteria species. We chose Pseudomonas putida, pseudomonas sp and pseudomonas nitroreducens as our source organisms because they live in aromatics-rich environments and chose E.coli and bacillus subtilis due to their clear genetic contexts. We downloaded all 21,096 entries of transcription-regulation-related proteins of these five bacteria species from the protein data base uniprot.

Second (Step 2 in Fig. 1), we screened out aromatics-related transcription factors by analyzing the downloaded entries with a computer program. The computer program searched all the entries with a list of keywords (aromatic, benzene, phenol, phenyl, naphthalene, benzoic, benzaldehyde, tolyl, toluene, xylene, styrene) and scored the proteins. Once a keyword appeared in a protein’s entry, the program added one point to its score. 912 proteins with scores higher than 0 remained after this step.

Third (Step 3 in Fig. 1), we used another computer program to examine whether the transcription factors remaining after step two were well studied. The computer program excluded unnamed proteins that have open reading frame numbers only. Because proteins that have been characterized in E.coli are more likely to work well in our expected biosensor circuits (that works in E.coli), the computer program then searched the names of the remaining proteins together with the keyword “E. coli” in google scholar and added k/10 point to its score (k is the number of citations). 60 proteins scored higher than 10 points remained after this step.

Finally (Step 4 in Fig. 1), we carried out a manual adjustment on the 60 proteins to confirm their reliability. Proteins that has no actual ability to sense aromatic compounds and those other possible false positive cases, such as bacterial two-component systems (their performance is highly genetic-context-dependent across different bacterial species), were excluded. Finally, 17 proteins were manually determined at last (Table 1). The entire mining process has been summarized in Fig. 2.

Table 1. Aromatics-sensing transcriptional regulators mined from the Uniprot

Protein namesSourcesReported Typical Inducers
(Click Here for the chemical formula of aromatic compounds)
Scores
XylSPseudomonas putida (Arthrobacter siderocapsulatus)Benzoic acid259
XylRPseudomonas putida (Arthrobacter siderocapsulatus)m-Xylene219
tyrREscherichia coli (strain K12)tyrosine160
nahRPseudomonas putida (Arthrobacter siderocapsulatus)Salicylic acid106
CapRPseudomonas putida (Arthrobacter siderocapsulatus)phenol80
hcaREscherichia coli (strain K12)3-Phenyl-propionic acid56
dmpRPseudomonas sp. (strain CF600).phenol43
pobRPseudomonas putida(Arthrobacter siderocapsulatus)p-Hydroxybenzoic acid29
CymRPseudomonas putida (Arthrobacter siderocapsulatus)4-Isopropyl benzoate23
PaaxEscherichia coli (strain K12)phenylacedtyl-CoA20
hpaRPseudomonas putida (Arthrobacter siderocapsulatus)(3-Hydroxy-phenyl)-acetic acid18
mhpREscherichia coli (strain K12)(3-Hydroxy-phenyl)-propionic acid18
phhRPseudomonas putida (Arthrobacter siderocapsulatus)phenylalanine16
bphSPseudomonas sp. (strain CF600).2-hydroxy-6-oxo-6-phenylhexa-2,4-dienoic acid16
HbpRPseudomonas nitroreducens2-Hydroxybiphenyl12
phcRPseudomonas putida (Arthrobacter siderocapsulatus)phenol11
yodBBacillus subtilis (strain 168)2-methyl hydroquinone11

In summary, using the four-step bioinformatic data mining method. we have successfully screened out a set of aromatics-sensing transcriptional regulators (Fig. 2). These 17 aromatics-sensing regulators are supposed to be reliable and well studied.

We believe that this method will also be useful for the mining of other types of Biobricks. More broadly speaking, despite the fact that our data mining method is quite conventional in the field of bioinformatics, we made the very first step that bioinformatics could strongly facilitate the development of synthetic biology, for instance, greatly reinforcing our ability to mine rich collections of high-quality Biobricks from increasingly massive data in an automated manner.

In the following study, we will take these regulators as the core component to build a comprehensive set of biosensor circuits for aromatics detection.

Figure 2. Summary of data mining process and screening criteria. Numbers of remained candidates after each step are shown on the left surface of the pyramid. The screening criteria are shown on the right.