Computer Model Describes the "Architecture of Life"
News Mar 09, 2018 | Original Story by Lindsay Brownell for the Wyss Institute
In this image of a dynein molecule, the colored lines represent the bonds between all the atoms that compose the protein. Credit: Wyss Institute at Harvard University
While most of biology and medicine focus on the key roles genes and chemicals play in the formation and control of living systems, the spatial arrangement of the components that make up those systems and the physical forces they experience are being increasingly recognized as equally important. Donald Ingber, M.D., Ph.D., Founding Director of the Wyss Institute at Harvard University, started investigating this "architecture of life" over thirty-five years ago, and discovered that Nature uses an architectural principle known as "tensegrity" (short for "tensional integrity") to stabilize the shapes of living cells and to determine how they respond to mechanical forces.
Tensegrity structures consist of elements that are either in a state of tension or compression, and the balance between those interacting forces allows such structures to stabilize themselves in state of isometric tension, much like muscles and bones in our bodies. This internal tension or "prestress" allows the entire structure to withstand stresses from outside forces, deform in a controlled way, and spontaneously pop back to its original shape when the stress is removed. The idea that tensegrity dictates the shape and organization of living cells was initially controversial, but as a result of experimental validation in multiple systems, it has gained greater acceptance over time.
Tensegrity can also be hierarchical, in that each structural element can itself be a tensegrity structure at a smaller scale, with tensional integrity being maintained both locally and globally. Based on these properties, Ingber also proposed in a "Scientific American" article in 1998 that tensegrity could apply beyond the cellular level to all size scales of life, from atoms to whole organisms. Recent work by Ingber and others has provided experimental support for that hypothesis by demonstrating that tensegrity is used at the scale of cellular nuclei, cytoskeletal elements, and individual molecules. However, investigating how tensegrity functions in complex hierarchical structures that undergo dramatic changes in shape and form (like enzymes and other proteins) has proven challenging, partly because of the limitations of existing biological modeling methods.
Using a newly developed multi-scale modeling method, Ingber (who is also the Judah Folkman Professor of Vascular Biology at Harvard Medical School and the Vascular Biology Program at Boston Children's Hospital, and Professor of Bioengineering at Harvard's John A. Paulson School of Engineering and Applied Sciences) and Wyss Staff Scientist Charles Reilly have now successfully demonstrated that tensegrity principles are used across various levels of size and structural complexity within living cells. Their work also revealed how tensegrity-based changes in molecular shape can drive the motion of cellular parts. The research, reported in Extreme Mechanics Letters, further elucidates the importance of tensegrity as a fundamental tenet of biology.
The team's new computational modeling approach takes a holistic view, treating each model as a series of mathematical operations that can dynamically change in response to different inputs rather than a collection of static data points. "The difference between our method and other modeling methods is a bit like the different ways you can use Excel spreadsheets," says Reilly. "If you manually put a bunch of data into a spreadsheet and then change the contents of one cell, it won't update the other cells around it. But if you use a formula and feed any data changes through that formula, it automatically updates all the cells in the spreadsheet. That's essentially what we're doing, but for multiscale models of biological molecules and systems of varying size and complexity."
This strategy, also known as "procedural modeling," enables data from different size scales and formats to be integrated into one multi-scale model, building it from the bottom-up and top-down simultaneously, rather than starting with discrete data sets that each describe only one aspect of the model and trying to reconcile them. In a recent publication in ACS Nano, Reilly and Ingber developed this method by combining computer animation software approaches from the entertainment industry with rigorous molecular dynamics simulation tools commonly used in biological research. They used this novel simulation approach to build a model of a sperm cell that demonstrates cellular movement from individual dynein protein molecules in the tail all the way up to the whole cell, allowing them to observe how changes at the atomic level are reflected in larger-scale structures.
In their newest article, they show that this same model reveals tensegrity at work across multiple size scales in the hierarchical structure of a living cell. At the molecular level, individual dynein molecules whose shapes are stabilized by prestress were found to have areas of increased rigidity around their ATP binding sites, which resist deformation by incoming energy from ATP and instead translate that force into the dynein molecule's characteristic movement. The collective shape changes of multiple dyneins generate tensional forces that are exerted on the long, compression-resistant microtubules to which they are bound at a larger size scale. These tensional forces then drive cyclic bending of the microtubules, which causes rhythmic flexing of the sperm tail at the whole cell level.
"This is the first study, to our knowledge, that demonstrates the mechanical continuity, strain transfer, and conformational changes that result from chemical energy release from the atomic scale up through the whole-cell level, as well as how tensegrity guides those changes to drive cellular movement," says Ingber.
The researchers then modeled a new system with the same process: the mitochondrial enzyme ATP synthase, which also exhibits a distinct conformational change that is dictated by the application of force to the enzyme structure, which is propagated via tensegrity. The model can be used to explore, for example, how ATP synthase interacts with its microenvironment by allowing researchers to change the concentration of the enzyme's substrate molecule and see how the enzyme reacts. Further investigations suggested that the higher prevalence of enzyme molecules on the inner versus outer folds of the mitochondrial cristae could, in fact, contribute to the physical properties of the microenvironment as well, implying that tensegrity also stabilizes structures at the scale of complex multi-molecular interactions.
"We focused our research in this paper on structures at the cellular scale and down, but this modeling method also can be extended to larger structures, such that you can model nearly any multiscale system," says Reilly. The researchers anticipate that their approach could be used to produce models for a variety of applications, from mechanobiology to cellular signal transduction to decoding the underpinnings of life itself.
This article has been republished from materials provided by the Wyss Institute. Note: material may have been edited for length and content. For further information, please contact the cited source.
Reference: Reilly, C. B., & Ingber, D. E. (2018). Multi-scale modeling reveals use of hierarchical tensegrity principles at the molecular, multi-molecular, and cellular levels. Extreme Mechanics Letters, 20, 21–28. https://doi.org/10.1016/j.eml.2018.01.001
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