Team:Heidelberg/Project

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| [[Image:Sensing_en.jpg|left|thumb|300px| Fig. 1: A killer cell senses the specific signal of autoinducer-2 secreted by prey cells and chases them with chemotaxis]] || [[Image:Toxin_raw.jpg|left|thumb|250px|Fig. 2: Once the preys are caught the killer cells are induced by a second specific signal, autoinducer-1, to activate a killer mechanism.]]
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| [[Image:HD_Sensing.png|left|thumb|300px| Fig. 1: A killer cell senses the specific signal of autoinducer-2 secreted by prey cells and chases them with chemotaxis]] || [[Image:Fig_0-System.png|left|thumb|300px|Fig. 2: Once the preys are caught the killer cells are induced by a second specific signal, autoinducer-1, to activate a killer mechanism.]]
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'''Ecolizenz zum Töten: Eine ''E. coli''-Konstruktion zum gezielten Angriff auf pathogene Mikroorganismen'''
'''Ecolizenz zum Töten: Eine ''E. coli''-Konstruktion zum gezielten Angriff auf pathogene Mikroorganismen'''
-
Pathogene Mikroorganismen stellen eine große Herausforderung sowohl für die Medizin als auch für die Industrie dar. Gemeinschaften aus Mikroorganismen, die in der Fachsprache als Biofilme bezeichnet werden, haben sich als äußerst resistent gegenüber konventionellen Therapien erwiesen [1]. Um deren Wachstum zu bekämpfen bedarf es daher alternativen Ansätzen. Die Entstehung von Biofilmen, genauso wie die der Virulenz, der Produktion von Antibiotika oder der Bildung von Sporen werden durch Kommunikations-Schaltkreise reguliert, die auf kleinen Signalmolekülen - den sogennanten Autoinduzierern (AI) - basieren. Unser Ziel ist es, diese Kommunikationsmechanismen in der Weise zu integrieren, dass synthetische Bakterien potenziell gefährliche, AI-ausschüttende Spezies aufspüren und töten können. Mit ''E. coli'' als Modellorganismus beabsichtigen wir zwei separate Stämme - einen Killer- und einen Beutestamm - zu entwerfen. Das Projekt gliedert sich in zwei ergänzende Module: Die Signalerkennung umfasst die Modifizierung des Chemotaxis-Systems von E. coli [2], um Killer-Zellen zu den Beute-Zellen schwimmen zu lassen. Dafür ist es notwendig, dass ein Erkennungsmodul einen Beute-spezifischen Stimulus an die Signalkaskade für Chemotaxis weiterleitet, so dass die Killer-Zellen entgegen des Gradienten des Stimulus schwimmen. Das gerichtete Schwimmen kommt nur zum Erliegen, wenn sich die Killer-Zellen in der unmittelbaren Umgebung der Beute-Zellen befinden - dort, wo die Stimuluskonzentration maximal ist. Das Killer-Modul gewährt, dass - einmal in der Nähe der Beute angekommen - ein bakterizider Mechanismus aktiviert wird. Computermodelle werden ergänzend zeigen, wie sich die beiden Modelle im Zusammenspiel verhalten, und wie die Effizienz des Gesamtsystems in seiner räumlichen Umgebung einzuschätzen ist. In Zukunft - sicherlich außerhalb der Reichweite unseres Projekts - könnte die Spezifität auf relevante Pathogene, genauso wie auf andere Organismen, Gewebe oder sogar Krebszellen erweitert werden. </div>
+
Pathogene Mikroorganismen stellen eine große Herausforderung sowohl für die Medizin als auch für die Industrie dar. Gemeinschaften aus Mikroorganismen, die in der Fachsprache als Biofilme bezeichnet werden, haben sich als äußerst resistent gegenüber konventionellen Therapien erwiesen [1]. Um deren Wachstum zu bekämpfen bedarf es daher alternativen Ansätzen. Die Entstehung von Biofilmen, genauso wie die der Virulenz, die Produktion von Antibiotika oder die Bildung von Sporen werden durch Kommunikations-Schaltkreise reguliert, die auf kleinen Signalmolekülen - den sogennanten Autoinduzierern (AI) - basieren. Unser Ziel ist es, diese Kommunikationsmechanismen in der Weise zu integrieren, dass synthetische Bakterien potenziell gefährliche, AI-ausschüttende Spezies aufspüren und töten können. Mit ''E. coli'' als Modellorganismus beabsichtigen wir zwei separate Stämme - einen Killer- und einen Beutestamm - zu entwerfen. Das Projekt gliedert sich in zwei ergänzende Module: Die Signalerkennung umfasst die Modifizierung des Chemotaxis-Systems von E. coli [2], um Killer-Zellen zu den Beute-Zellen schwimmen zu lassen. Dafür ist es notwendig, dass ein Erkennungsmodul einen Beute-spezifischen Stimulus an die Signalkaskade für Chemotaxis weiterleitet, so dass die Killer-Zellen entgegen des Gradienten des Stimulus schwimmen. Das gerichtete Schwimmen kommt nur zum Erliegen, wenn sich die Killer-Zellen in der unmittelbaren Umgebung der Beute-Zellen befinden - dort, wo die Stimuluskonzentration maximal ist. Das Killer-Modul gewährt, dass - einmal in der Nähe der Beute angekommen - ein bakterizider Mechanismus aktiviert wird. Computermodelle werden ergänzend zeigen, wie sich die beiden Modelle im Zusammenspiel verhalten, und wie die Effizienz des Gesamtsystems in seiner räumlichen Umgebung einzuschätzen ist. In Zukunft - sicherlich außerhalb der Reichweite unseres Projekts - könnte die Spezifität auf relevante Pathogene, genauso wie auf andere Organismen, Gewebe oder sogar Krebszellen erweitert werden. </div>
[[https://2008.igem.org/Team:Heidelberg/Project back]]
[[https://2008.igem.org/Team:Heidelberg/Project back]]
== Project Realization==
== Project Realization==
-
Have you ever wondered, why numbers of iGEM team members are limited to a maximum of twelve students? Apart from financial resources, this limit is only natural: efficient work with larger team sizes requires a subtle organization and project management, in particular when the team is yet green! On top, team formation and project work have to be conducted within a short time interval and under liabilities to the academic curriculum - both on the student and the advisor sides. The social abilities for reliable team formation, in particular communication, team integration, and consequence to work towards common team goals, must therefore be substantial and dedicated to compensate these circumstances. When you visit our portraits, however, you will realize that we are not so green and that each of us has an active past often intricately connected with scientific work. In our project description we provide a sincere answer to the apparent question, if 16 "greenhorns" can push forward in only four months to contribute research on an international level!
+
Have you ever wondered, why numbers of iGEM team members are limited to a maximum of twelve students? Apart from financial resources, this limit is only natural: efficient work with larger team sizes requires a subtle organization and project management, in particular when the team is yet green! On top, team formation and project work have to be conducted within a short time interval and under liabilities to the academic curriculum - both on the student and the advisor sides. The social abilities for reliable team formation, in particular communication, team integration, and consequence to work towards common team goals, must therefore be substantial and dedicated to compensate these circumstances. When you visit our portraits, however, you will realize that we are not really green and that each of us has an active past often intricately connected with scientific work. In our project description we provide a sincere answer to the apparent question, if 16 "greenhorns" can push forward in only four months to contribute research on an international level!
In order to streamline our horse-power, we divide the project into four columns, which are simultaneously developed by us and can merge in the end with a synergistic effect to a complex population system (modeling inclusive). At the same time the global progress is robust towards each column, consequently a delay or failure in one column will not lead to a breakdown of the overall project. In accordance with current scientific standards demanded in systems and synthetic biology, we pursue an interdisciplinary approach combining mathematics, experimental, and quantitative biology [3].  
In order to streamline our horse-power, we divide the project into four columns, which are simultaneously developed by us and can merge in the end with a synergistic effect to a complex population system (modeling inclusive). At the same time the global progress is robust towards each column, consequently a delay or failure in one column will not lead to a breakdown of the overall project. In accordance with current scientific standards demanded in systems and synthetic biology, we pursue an interdisciplinary approach combining mathematics, experimental, and quantitative biology [3].  
-
The first column ([[2008.igem.org:Team_Heidelberg/Project/Sensing|Project - Sensing]]) comprises the design and development of a sensing module. Chemotaxis is a very effective mechanism of bacteria to move towards nutrients. Using the natural signals for bacterial quorum communication, we re-design a chemotactic receptor for detection of the quorum signal (AI-2) and its transmission to the chemotaxis signaling network. A prey strain, which is to be found via the sensing mechanism, will be engineered to secrete two prey specific quorum signals (AI-1 and AI-2). We dedicate two columns to the development of a killing mechanism to secure a higher implementation confidence: In one column, the second ([[2008.igem.org:Team_Heidelberg/Project/Killin_I|Project - Killing I/Phages]]), a killing mechanism is developed based on bacteriophages, which are conjugated into prey cells, once the killers are in their vicinity. In prey cells, however, the phage becomes lytic due to the missing regulation of the cI transcription factor; the phage is thereby released and infects other prey cells in a domino effect. The killing mechanism of the third column ([[2008.igem.org:Team_Heidelberg/Project/Killing_II|Project - Killing II/Colicins]]) can be considered as a mechanism for recognition of molecular exudation patterns. Once killer cells are in the vicinity of preys, they detect the specific signal molecule AI-1, which leads to the production and release of colicins. The bactericide substance, to which the producing host, but not the prey, is resistant will then eliminate the prey. In a fourth column ([[2008.igem.org:Team_Heidelberg/Modeling|Modeling]]) we model the system behavior of these two bacterial strains - the killer and the prey - in a 2D landscape. One approach is based on partial differential equations and simulates chemotaxis and the colicin killing mechanism; the second approach, based on delay differential equations, analyzes the killing dynamics conjugated bacteriophages. [[2008.igem.org:Team_Heidelberg/Project/Visualization|Visualization]] - the architrave - with microscopy is finally employed to quantify bacterial density landscapes in space and time - allowing a phenotypic connection and comparison with our modeling work.
+
The first column ([[2008.igem.org:Team_Heidelberg/Project/Sensing|Project - Sensing]]) comprises the design and development of a sensing module. Chemotaxis is a very effective mechanism of bacteria to move towards nutrients. Using the natural signals for bacterial quorum communication, we re-design a chemotactic receptor for detection of the quorum signal (AI-2) and its transmission to the chemotaxis signaling network. A prey strain, which is to be found via the sensing mechanism, will be engineered to secrete two prey specific quorum signals (AI-1 and AI-2). We dedicate two columns to the development of a killing mechanism to secure a higher implementation confidence: In one column, the second ([[2008.igem.org:Team_Heidelberg/Project/Killin_I|Project - Killing I/Phages]]), a killing mechanism is developed based on bacteriophages, which are conjugated into prey cells, once the killers are in their vicinity. In prey cells, however, the phage becomes lytic due to the missing regulation of the cI transcription factor; the phage is thereby released and infects other prey cells in a domino effect. The killing module in the third column ([[2008.igem.org:Team_Heidelberg/Project/Killing_II|Project - Killing II/Colicins]]) can be considered as a mechanism for recognition of molecular exudation patterns. Once killer cells are in the vicinity of preys, they detect the specific signal molecule AI-1, which leads to the production and release of colicins. The bactericide substance, to which the producing host is resistant, will then eliminate the prone prey. In a fourth column ([[2008.igem.org:Team_Heidelberg/Modeling|Modeling]]) we model the system behavior of these two bacterial strains - the killer and the prey - in a 2D landscape. One approach is based on partial differential equations and simulates chemotaxis and the colicin killing mechanism; the second approach, based on delay differential equations, analyzes the killing dynamics of conjugated bacteriophages. [[2008.igem.org:Team_Heidelberg/Project/Visualization|Visualization]] - the architrave - with microscopy is finally employed to quantify bacterial density landscapes in space and time - allowing a phenotypic connection and comparison with our modeling work. An experimental engagement would these days of course not be appreciable without the active responsibility towards the sake of the community under ethical considerations. We therefore actively engage in [https://2008.igem.org/Team:Heidelberg/Human_Practice/Project_Overview  human practice] ... and the pupils are enthusiastic!
-
[[https://2008.igem.org/Team:Heidelberg/Project back]]
+
In Figure 3 you can see the essence of our project: The sensing column could be advanced significantly, though efficient chemotaxis towards AI-2 could not be established. The phages are conjugated efficiently, though a killing of the prey could not yet be experimentally implemented. The colicin column and the modeling, however, worked out in all respects, and the human practice work has found enthusiastic resonance. With seven new standardized Biobrick parts, all of them have been shown to work, four characterized new parts and one characterized old part, we will run a high pace for the hottest awards at the championship jamboree in one week!
-
== Project Perspectives==
+
[[Image:HD_overview2_klein.png|left|650px|thumb|Fig. 3: Overview on project advancements. The colicin, the modeling, and the human practice columns are immaculate.]]
 +
[[https://2008.igem.org/Team:Heidelberg/Project back]]
 +
 +
== Project Perspectives==
 +
This project is supposed to be a wet model for a mechanism of specific target finding and elimination, in particular of cancer cells. There is clear evidence that bacteria accumulate in tumor areas [4, 5]. One reason might be the immunosuppressive effect of the tumor. The possibility to discriminate cancer patients from breath samples [6, 7, 8] gives rise to the idea to use bacterial receptors for the recognition of specific molecular exudation patterns. The effect of bacterial accumulation might in this way be enhanced by the engineering of a pattern sensitive chemotaxis mechanism. Furthermore bacteria could be induced very specifically in the near environment of the tumor to metabolize a pre-curser into a tumor suppressive molecule. Both mechanisms, increased accumulation at tumor sites and tumor located drug metabolism, would lead to a potentiated selectivity for the elimination of cancer cells. If the toxin is then also cancer cell specific - as could be shown by Pastan ''et al.'' [9] - then three strong effects would fulminate into ... of course, all this is still music of the future - but we are sure: it will be the future!
[[https://2008.igem.org/Team:Heidelberg/Project back]]
[[https://2008.igem.org/Team:Heidelberg/Project back]]
Line 525: Line 529:
|[4] || J. M. Pawelek ''et al.'', Bacteria as tumour-targeting vectors, ''The Lancet Oncology'', Vol. 4, pp. 548-546 (2003)
|[4] || J. M. Pawelek ''et al.'', Bacteria as tumour-targeting vectors, ''The Lancet Oncology'', Vol. 4, pp. 548-546 (2003)
|- valign=top
|- valign=top
-
|[5] || I. Pastan and D. Fitgeral, Recombinant Toxins for Cancer Treatment, ''Science'', Vol. , pp. 1173-1177 (1991)
+
|[5] || H. Loessner ''et al.'', Remote control of tumour-targeted ''Salmonella enterica'' serovar Typhimurium by the use of L-arabinose as inducer of bacterial gene expression ''in vivo'', ''Cellular Microbiology'', Vol 9 (6), pp. 1529-1537 (2007)
 +
|- valign=top
 +
|[6] || C. M. Willis ''et al.'', Olfactory detection of human bladder cancer by dogs: proof of principle study, ''Biomedical Journal'', Vol. 329 (2009)
 +
|- valign=top
 +
|[7] || M. Phillips ''et al.'', Detection of Lung Cancer with Volatile Markers in the Breath, ''Chest'', Vol. 123, pp. 2115-2123 (2003)
 +
|- valign=top
 +
|[8] || M. Phillips ''et al.'', Volatile organic compounds in breath as markers of lung cancer: a cross-sectional study, ''The Lancet'', Vol. 353, pp. 1930-1934 (1999)
|- valign=top
|- valign=top
-
|[6] || H. Loessner ''et al.'', Remote control of tumour-targeted ''Salmonella enterica'' serovar Typhimurium by the use of L-arabinose as inducer of bacterial gene expression ''in vivo'', ''Cellular Microbiology'', Vol 9 (6), pp. 1529-1537 (2007)
+
|[9] || I. Pastan and D. Fitzgerald, Recombinant Toxins for Cancer Treatment, ''Science'', Vol. , pp. 1173-1177 (1991)
-
|[7] ||
+
|-
|-
|}
|}
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[[image:Phips_phage.PNG|middle|200px|Phips the Phage]]
[[image:Phips_phage.PNG|middle|200px|Phips the Phage]]
-
Hi, you are new here and hear of synthetic Biology for the first time? Perfect! I am Phips the Phage and will be your guide to this exciting field of biological research and if you like I will explain the background synthetic biology and gentic engineering as well as of this project to you. Just follow me[[Team:Heidelberg/Human_Practice/Phips_the_Phage/|'''... follow Phips''']]
+
Hi, you are new here and hear about synthetic Biology for the first time? Perfect! I am Phips the Phage and will be your guide to this exciting field of biological research and if you like I will explain the background synthetic biology and gentic engineering as well as of this project to you. Just follow me[[Team:Heidelberg/Human_Practice/Phips_the_Phage/|'''... follow Phips''']]

Latest revision as of 17:52, 29 October 2008

Project Idea

Ecolicence to kill: Engineering E.coli for targeting pathogenic microorganisms

Pathogenic microorganisms represent a major challenge to both medicine and industry. Microbial communities known as biofilms prove to be particularly resistant to conventional therapies [1] and demonstrate the need for alternative methods to fight bacterial growth. The formation of biofilms, as well as other processes such as virulence, antibiotic production, and sporulation, are regulated by communication circuits that depend on small signalling molecules called autoinducers. Our aim is to exploit this communication mechanism by engineering synthetic bacteria that are able to target potentially harmful autoinducer-secreting species and kill them. Working with E. coli as a model system, we plan to engineer separate “killer” and “prey” cells, and divide our project into two complementary modules. The “sensing module” comprises the modification of E. coli’s chemotaxis [2] system to make killer cells move towards prey cells. This requires the engineering of a “sensing module” which propagates a prey-specific stimulus to the downstream signalling cascades, prompting the cells to swim towards the gradient of such a stimulus. The directed swimming stops only in the region where the stimulus is maximal, i.e. in the vicinity of the prey. The “killing module” ensures that once in the vicinity of the prey, a bacteriocidal mechanism is activated. Computer models will show how both modules behave in concert and probe the efficiency of the system in defined spatial environments. Future directions, which are beyond the scope of this project, include the modification of the sensory and killing modules, adjusting the range of targets to real pathogens, but also other organisms, specific cell types or even cancer cells.

Fig. 1: A killer cell senses the specific signal of autoinducer-2 secreted by prey cells and chases them with chemotaxis
Fig. 2: Once the preys are caught the killer cells are induced by a second specific signal, autoinducer-1, to activate a killer mechanism.

[back]


You are very interested in this exciting project, but did not understand all details? Well then come on with me on my guiding tour ... follow phips to step 3 Phips 3.png [ ... back to step 2 ]



Deutsche Übersetzung:

Ecolizenz zum Töten: Eine E. coli-Konstruktion zum gezielten Angriff auf pathogene Mikroorganismen

Pathogene Mikroorganismen stellen eine große Herausforderung sowohl für die Medizin als auch für die Industrie dar. Gemeinschaften aus Mikroorganismen, die in der Fachsprache als Biofilme bezeichnet werden, haben sich als äußerst resistent gegenüber konventionellen Therapien erwiesen [1]. Um deren Wachstum zu bekämpfen bedarf es daher alternativen Ansätzen. Die Entstehung von Biofilmen, genauso wie die der Virulenz, die Produktion von Antibiotika oder die Bildung von Sporen werden durch Kommunikations-Schaltkreise reguliert, die auf kleinen Signalmolekülen - den sogennanten Autoinduzierern (AI) - basieren. Unser Ziel ist es, diese Kommunikationsmechanismen in der Weise zu integrieren, dass synthetische Bakterien potenziell gefährliche, AI-ausschüttende Spezies aufspüren und töten können. Mit E. coli als Modellorganismus beabsichtigen wir zwei separate Stämme - einen Killer- und einen Beutestamm - zu entwerfen. Das Projekt gliedert sich in zwei ergänzende Module: Die Signalerkennung umfasst die Modifizierung des Chemotaxis-Systems von E. coli [2], um Killer-Zellen zu den Beute-Zellen schwimmen zu lassen. Dafür ist es notwendig, dass ein Erkennungsmodul einen Beute-spezifischen Stimulus an die Signalkaskade für Chemotaxis weiterleitet, so dass die Killer-Zellen entgegen des Gradienten des Stimulus schwimmen. Das gerichtete Schwimmen kommt nur zum Erliegen, wenn sich die Killer-Zellen in der unmittelbaren Umgebung der Beute-Zellen befinden - dort, wo die Stimuluskonzentration maximal ist. Das Killer-Modul gewährt, dass - einmal in der Nähe der Beute angekommen - ein bakterizider Mechanismus aktiviert wird. Computermodelle werden ergänzend zeigen, wie sich die beiden Modelle im Zusammenspiel verhalten, und wie die Effizienz des Gesamtsystems in seiner räumlichen Umgebung einzuschätzen ist. In Zukunft - sicherlich außerhalb der Reichweite unseres Projekts - könnte die Spezifität auf relevante Pathogene, genauso wie auf andere Organismen, Gewebe oder sogar Krebszellen erweitert werden.

[back]

Project Realization

Have you ever wondered, why numbers of iGEM team members are limited to a maximum of twelve students? Apart from financial resources, this limit is only natural: efficient work with larger team sizes requires a subtle organization and project management, in particular when the team is yet green! On top, team formation and project work have to be conducted within a short time interval and under liabilities to the academic curriculum - both on the student and the advisor sides. The social abilities for reliable team formation, in particular communication, team integration, and consequence to work towards common team goals, must therefore be substantial and dedicated to compensate these circumstances. When you visit our portraits, however, you will realize that we are not really green and that each of us has an active past often intricately connected with scientific work. In our project description we provide a sincere answer to the apparent question, if 16 "greenhorns" can push forward in only four months to contribute research on an international level!

In order to streamline our horse-power, we divide the project into four columns, which are simultaneously developed by us and can merge in the end with a synergistic effect to a complex population system (modeling inclusive). At the same time the global progress is robust towards each column, consequently a delay or failure in one column will not lead to a breakdown of the overall project. In accordance with current scientific standards demanded in systems and synthetic biology, we pursue an interdisciplinary approach combining mathematics, experimental, and quantitative biology [3].

The first column (Project - Sensing) comprises the design and development of a sensing module. Chemotaxis is a very effective mechanism of bacteria to move towards nutrients. Using the natural signals for bacterial quorum communication, we re-design a chemotactic receptor for detection of the quorum signal (AI-2) and its transmission to the chemotaxis signaling network. A prey strain, which is to be found via the sensing mechanism, will be engineered to secrete two prey specific quorum signals (AI-1 and AI-2). We dedicate two columns to the development of a killing mechanism to secure a higher implementation confidence: In one column, the second (Project - Killing I/Phages), a killing mechanism is developed based on bacteriophages, which are conjugated into prey cells, once the killers are in their vicinity. In prey cells, however, the phage becomes lytic due to the missing regulation of the cI transcription factor; the phage is thereby released and infects other prey cells in a domino effect. The killing module in the third column (Project - Killing II/Colicins) can be considered as a mechanism for recognition of molecular exudation patterns. Once killer cells are in the vicinity of preys, they detect the specific signal molecule AI-1, which leads to the production and release of colicins. The bactericide substance, to which the producing host is resistant, will then eliminate the prone prey. In a fourth column (Modeling) we model the system behavior of these two bacterial strains - the killer and the prey - in a 2D landscape. One approach is based on partial differential equations and simulates chemotaxis and the colicin killing mechanism; the second approach, based on delay differential equations, analyzes the killing dynamics of conjugated bacteriophages. Visualization - the architrave - with microscopy is finally employed to quantify bacterial density landscapes in space and time - allowing a phenotypic connection and comparison with our modeling work. An experimental engagement would these days of course not be appreciable without the active responsibility towards the sake of the community under ethical considerations. We therefore actively engage in human practice ... and the pupils are enthusiastic!

In Figure 3 you can see the essence of our project: The sensing column could be advanced significantly, though efficient chemotaxis towards AI-2 could not be established. The phages are conjugated efficiently, though a killing of the prey could not yet be experimentally implemented. The colicin column and the modeling, however, worked out in all respects, and the human practice work has found enthusiastic resonance. With seven new standardized Biobrick parts, all of them have been shown to work, four characterized new parts and one characterized old part, we will run a high pace for the hottest awards at the championship jamboree in one week!


Fig. 3: Overview on project advancements. The colicin, the modeling, and the human practice columns are immaculate.

[back]

Project Perspectives

This project is supposed to be a wet model for a mechanism of specific target finding and elimination, in particular of cancer cells. There is clear evidence that bacteria accumulate in tumor areas [4, 5]. One reason might be the immunosuppressive effect of the tumor. The possibility to discriminate cancer patients from breath samples [6, 7, 8] gives rise to the idea to use bacterial receptors for the recognition of specific molecular exudation patterns. The effect of bacterial accumulation might in this way be enhanced by the engineering of a pattern sensitive chemotaxis mechanism. Furthermore bacteria could be induced very specifically in the near environment of the tumor to metabolize a pre-curser into a tumor suppressive molecule. Both mechanisms, increased accumulation at tumor sites and tumor located drug metabolism, would lead to a potentiated selectivity for the elimination of cancer cells. If the toxin is then also cancer cell specific - as could be shown by Pastan et al. [9] - then three strong effects would fulminate into ... of course, all this is still music of the future - but we are sure: it will be the future!

[back]

Literature

[1] K. Brenner et al., Engineered bidirectional communication mediates a consensus in a microbial biofilm consortium, PNAS, Vol. 104 (44), pp. 17300-17304 (2007)
[2] G. H. Wadhams and J. P. Armitage, Making sense of it all: bacterial chemotaxis, Nat. Rev. Mol. Cel. Bio., Vol. 5, pp. 1024-1037 (2004)
[3] N. Wingreen and D. Botstein, Back to future: education for systems-level biologists, Nat. Rev. Mol. Cel. Bio., Vol. 7(11), pp. 829-832
[4] J. M. Pawelek et al., Bacteria as tumour-targeting vectors, The Lancet Oncology, Vol. 4, pp. 548-546 (2003)
[5] H. Loessner et al., Remote control of tumour-targeted Salmonella enterica serovar Typhimurium by the use of L-arabinose as inducer of bacterial gene expression in vivo, Cellular Microbiology, Vol 9 (6), pp. 1529-1537 (2007)
[6] C. M. Willis et al., Olfactory detection of human bladder cancer by dogs: proof of principle study, Biomedical Journal, Vol. 329 (2009)
[7] M. Phillips et al., Detection of Lung Cancer with Volatile Markers in the Breath, Chest, Vol. 123, pp. 2115-2123 (2003)
[8] M. Phillips et al., Volatile organic compounds in breath as markers of lung cancer: a cross-sectional study, The Lancet, Vol. 353, pp. 1930-1934 (1999)
[9] I. Pastan and D. Fitzgerald, Recombinant Toxins for Cancer Treatment, Science, Vol. , pp. 1173-1177 (1991)

[back]

Phips the Phage

Hi, you are new here and hear about synthetic Biology for the first time? Perfect! I am Phips the Phage and will be your guide to this exciting field of biological research and if you like I will explain the background synthetic biology and gentic engineering as well as of this project to you. Just follow me... follow Phips