A groundbreaking study reveals that mathematical models can explain how modularity emerges in biological systems, challenging the traditional view of strict genetic instructions.
The Emergence of Modularity in Nature
Nature is replete with examples of modularity – self-contained units that combine to perform various functions. From the branching of trees to the organization of brain regions, modularity is a ubiquitous feature of the natural world. But how does this organization arise? Does it follow a detailed genetic blueprint or can these structures emerge on their own?
The Role of Mathematical Models in Understanding Modularity
A new study published in Nature suggests that mathematical models can help explain how modularity emerges in biological systems. Researchers from the McGovern Institute for Brain Research, led by Professor Ila Fiete, have developed a model called peak selection that can explain how modules form without strict genetic instructions.
Grid Cells and the Emergence of Modularity
One of the key examples studied by the researchers is the grid cell, a type of neuron in the brain that plays a critical role in spatial navigation and memory. Grid cells fire in a repeating triangular pattern as animals move through space, but they don’t all work at the same scale – they are organized into distinct modules, each responsible for mapping space at slightly different resolutions.
Grid cells are a type of neuronal cell in the brain's entorhinal cortex that play a crucial role in spatial navigation and memory.
These cells fire at specific locations, creating a grid-like pattern of activity that helps the brain to map its surroundings.
Research has shown that grid cells are essential for tasks such as wayfinding, route planning, and even imagination.
Studies have identified three types of grid cells: alpha, beta, and theta, each with distinct firing patterns and properties.
The researchers’ model suggests that gradual variations in cellular properties along one dimension in the brain, combined with local neural interactions, could explain the entire structure of grid cell modules. This finding tips the balance toward the possibility of self-organization, suggesting that there might be no gene or intrinsic cell property that jumps when the grid cell scale jumps to another module.

Self-organization refers to the spontaneous formation of complex patterns and structures from individual components.
This phenomenon is observed in various natural systems, such as flocks of birds, schools of fish, and even social insects like ants and bees.
In self-organized systems, components interact with each other through simple rules, leading to emergent behavior that cannot be predicted by analyzing the individual parts alone.
Examples include the formation of snowflakes and the organization of cells in a developing embryo.
Modularity in Ecosystems
The same principle applies beyond neuroscience. In ecosystems, species clusters with sharp boundaries form naturally, even when the underlying conditions change gradually. The researchers’ study suggests that local competition, cooperation, and predation between species interact with global environmental gradients to create natural separations.
This phenomenon can be explained using peak selection – a simple mathematical principle that shows how modular structures emerge naturally. The model also makes testable predictions, such as the spacing ratios of grid cell modules and the formation of distinct clusters in ecosystems.
A Self-Organizing World
One of the most striking findings of the researchers is that modularity in these systems is remarkably robust. Change the size of the system, and the number of modules stays the same – they just scale up or down. This means that a mouse brain and a human brain could use the same fundamental rules to form their navigation circuits, just at different sizes.
Modularity in biological systems refers to the organization and interaction of distinct components that work together to achieve specific functions.
This concept is crucial in understanding how living organisms adapt, evolve, and respond to environmental changes.
In modular systems, individual components or modules are designed to perform specific tasks, allowing for flexibility, efficiency, and resilience.
For example, the human body's circulatory system is a prime example of modularity, where the heart, blood vessels, and lungs work together to transport oxygen and nutrients.
Modularity enables biological systems to evolve and adapt over time, ensuring their survival and success.
The model also has implications for developmental biology, suggesting that peak selection can inform future experiments and provide a new conceptual framework for understanding how biological systems organize themselves.