Scientists Gain Insights into Biophysical Properties of Neurons with New Workflow

Biophysically detailed neuronal models provide a unique window into the workings of individual neurons. They enable researchers to manipulate neuronal properties systematically and reversibly, something that is often impossible in real-world experiments. These in silico models have played a pivotal role in advancing our understanding of how neuronal morphology influences excitability and how specific ion currents contribute to cell function. Additionally, they have been instrumental in building neuronal circuits to simulate and study brain activity, offering a glimpse into the complex dance of neurons that underlies our thoughts and actions.

Creating accurate electrical models that faithfully replicate experimental observations is no easy feat. It involves quantifying the similarity between model responses and actual electrophysiological behaviors, which can be challenging when parameters like ion channel conductance and passive membrane properties are not directly measurable. Achieving a high similarity score often requires extensive exploration of parameter space, a task that can be arduous and time-consuming.

To address these challenges, researchers have turned to evolutionary algorithms (EAs) for help. EAs are efficient tools for global parameter optimization in high-dimensional spaces. In particular, the indicator-based evolutionary algorithm (IBEA) has shown promise in this context. However, the field still lacks fully open-sourced and reproducible workflows for model optimization.

In this new study, appearing on the cover of November's Patterns, Blue Brain presents a groundbreaking universal workflow for creating, validating, and generalizing detailed neuronal models. The approach is built upon open-source tools, with all the steps freely available, and offers researchers a comprehensive solution for constructing neuronal models that can represent either a single biological cell or a predefined type of cells.

One of the unique features of the workflow is the ability to build so-called canonical neuronal models.

Rather than customizing each model for individual neurons, models that represent an entire neuronal type are created. This approach is particularly useful when studying properties of a specific neuronal type and when constructing large neuronal circuits."

Werner Van Geit, group leader at BBP

In this study, the authors applied the workflow to create 40 models representing 11 electrical types (e-types) in the juvenile rat somatosensory cortex, the region of the brain's cortex responsible for processing sensory information related to touch, pressure, temperature, and pain from various parts of the body. Each model was optimized based on a set of electrophysiological features, ensuring a close match with experimental data. These canonical models were then tested on various morphologies to assess their generalizability.

By analyzing the parameters used in these models, scientists gain insights into their biophysical properties. "Sensitivity analysis helps reveal which parameters are crucial for model performance and which can vary without affecting the outcome" emphasizes co-lead author Christian Rössert, adding "This deeper understanding is a significant aid in refining model creation."

While this approach is powerful, the authors point to some current limitations. Certain neuron types generalize well across various shapes, while others struggle. Understanding why certain models work better with specific morphologies is an ongoing area of research. In addition, creating a single canonical model means dismissing some of the variability seen in real neurons. To address this, neuroscientists can create multiple models based on the same input, introducing variation to represent real-world diversity.

"The set of e-models presented here are based on electrical measurement from patch-clamp recordings of the main body of neurons," specifies co-lead author Maria Reva, "in future versions, these models can be enriched with more details, such as synaptic and dendritic integration and additional ion currents."

"These enhancements will bring us even closer to understanding how neurons function." concludes Van Geit.

Source:
Journal reference:

Reva, M., et al. (2023) A universal workflow for creation, validation and generalization of detailed neuronal models. Patterns. doi.org/10.1016/j.patter.2023.100855.

Comments

The opinions expressed here are the views of the writer and do not necessarily reflect the views and opinions of AZoLifeSciences.
Post a new comment
Post

While we only use edited and approved content for Azthena answers, it may on occasions provide incorrect responses. Please confirm any data provided with the related suppliers or authors. We do not provide medical advice, if you search for medical information you must always consult a medical professional before acting on any information provided.

Your questions, but not your email details will be shared with OpenAI and retained for 30 days in accordance with their privacy principles.

Please do not ask questions that use sensitive or confidential information.

Read the full Terms & Conditions.

You might also like...
Cellular Atlas of the Human Ovary Offers Hope for Restoring Hormone Production and Fertility