| Literature DB >> 30696090 |
Jai A Denton1, Chaitanya S Gokhale2.
Abstract
Ecosystems are complex networks of interacting individuals co-evolving with their environment. As such, changes to an interaction can influence the whole ecosystem. However, to predict the outcome of these changes, considerable understanding of processes driving the system is required. Synthetic biology provides powerful tools to aid this understanding, but these developments also allow us to change specific interactions. Of particular interest is the ecological importance of mutualism, a subset of cooperative interactions. Mutualism occurs when individuals of different species provide a reciprocal fitness benefit. We review available experimental techniques of synthetic biology focused on engineered synthetic mutualistic systems. Components of these systems have defined interactions that can be altered to model naturally occurring relationships. Integrations between experimental systems and theoretical models, each informing the use or development of the other, allow predictions to be made about the nature of complex relationships. The predictions range from stability of microbial communities in extreme environments to the collapse of ecosystems due to dangerous levels of human intervention. With such caveats, we evaluate the promise of synthetic biology from the perspective of ethics and laws regarding biological alterations, whether on Earth or beyond. Just because we are able to change something, should we?Entities:
Keywords: cross-feeding; ecosystem engineering; intervention strategies; mutualism
Year: 2019 PMID: 30696090 PMCID: PMC6463046 DOI: 10.3390/life9010015
Source DB: PubMed Journal: Life (Basel) ISSN: 2075-1729
Figure 1The trade-off between ecological realism and the degree of control over the interspecies interactions afforded by synthetic biology.
Synthetic mutualism systems—experimental and theoretical. This table contains only those systems that rely on synthetic expression or gene modifications to establish mutualism. These studies are often accompanied by theoretical models. While most have a model designed to fit that particular system, some studies use experimental systems to test an existing theory e.g., Amor et al. [49].
| Species | Theoretical Analysis | Citation |
|---|---|---|
|
| Minimal birth death growth model | Shou et al. [ |
| Spatial frequency-dependent selection model | Müller et al. [ | |
| including drift and explicit nutrient dynamics | ||
| Diffusion dynamics and individual-based simulation | Momeni et al. [ | |
| and explicit nutrient dynamics and environment | ||
| ODE and hybrid dynamical systems | Denton and Gokhale [ | |
| ODE and stability analysis | Hoek et al. [ | |
|
| Monod type growth kinetics based model | Hosoda et al. [ |
| ODE-based model with Monod kinetics | Kerner et al. [ | |
| ODE-based population dynamics model | Amor et al. [ | |
| akin to hypercycles [ | ||
|
| No theory | Santala et al. [ |
| Individual-based model | Pande et al. [ | |
|
| ODE-based population dynamics model | Kubo et al. [ |
|
| ODE-based population dynamics with explicit | Kong et al. [ |
| signaling molecules and nutrient dynamics and varied | ||
| ecological interactions |