skip to main content
OSTI.GOV title logo U.S. Department of Energy
Office of Scientific and Technical Information

Title: Multimodal parameter spaces of a complex multi-channel neuron model

Journal Article · · Frontiers in Systems Neuroscience

One of the most common types of models that helps us to understand neuron behavior is based on the Hodgkin–Huxley ion channel formulation (HH model). A major challenge with inferring parameters in HH models is non-uniqueness: many different sets of ion channel parameter values produce similar outputs for the same input stimulus. Such phenomena result in an objective function that exhibits multiple modes (i.e., multiple local minima). This non-uniqueness of local optimality poses challenges for parameter estimation with many algorithmic optimization techniques. HH models additionally have severe non-linearities resulting in further challenges for inferring parameters in an algorithmic fashion. To address these challenges with a tractable method in high-dimensional parameter spaces, we propose using a particular Markov chain Monte Carlo (MCMC) algorithm, which has the advantage of inferring parameters in a Bayesian framework. The Bayesian approach is designed to be suitable for multimodal solutions to inverse problems. We introduce and demonstrate the method using a three-channel HH model. We then focus on the inference of nine parameters in an eight-channel HH model, which we analyze in detail. We explore how the MCMC algorithm can uncover complex relationships between inferred parameters using five injected current levels. The MCMC method provides as a result a nine-dimensional posterior distribution, which we analyze visually with solution maps or landscapes of the possible parameter sets. The visualized solution maps show new complex structures of the multimodal posteriors, and they allow for selection of locally and globally optimal value sets, and they visually expose parameter sensitivities and regions of higher model robustness. We envision these solution maps as enabling experimentalists to improve the design of future experiments, increase scientific productivity and improve on model structure and ideation when the MCMC algorithm is applied to experimental data.

Sponsoring Organization:
USDOE
OSTI ID:
1894149
Journal Information:
Frontiers in Systems Neuroscience, Journal Name: Frontiers in Systems Neuroscience Vol. 16; ISSN 1662-5137
Publisher:
Frontiers Media SACopyright Statement
Country of Publication:
Country unknown/Code not available
Language:
English

References (53)

Automatic Selection of Methods for Solving Stiff and Nonstiff Systems of Ordinary Differential Equations journal March 1983
Voltage- and Branch-Specific Climbing Fiber Responses in Purkinje Cells journal August 2018
Parallel Tempering with Lasso for model reduction in systems biology journal March 2020
Intracellular FGF14 (iFGF14) Is Required for Spontaneous and Evoked Firing in Cerebellar Purkinje Neurons and for Motor Coordination and Balance journal April 2015
Failure of Averaging in the Construction of a Conductance-Based Neuron Model journal February 2002
Parameter estimation and identifiability in a neural population model for electro-cortical activity journal May 2019
The conda-forge Project: Community-based Software Distribution Built on the conda Package Format and Ecosystem image January 2015
An Adaptive Parallel Tempering Algorithm journal July 2013
Dynamical estimation of neuron and network properties I: variational methods journal October 2011
An Overview of Bayesian Methods for Neural Spike Train Analysis journal January 2013
Visualization of currents in neural models with similar behavior and different conductance densities journal January 2019
Variability, compensation and homeostasis in neuron and network function journal July 2006
Animal-to-animal variability of connection strength in the leech heartbeat central pattern generator journal March 2012
Estimating parameters and predicting membrane voltages with conductance-based neuron models journal June 2014
Mesoscopic population equations for spiking neural networks with synaptic short-term plasticity journal April 2020
A Self-Organizing State-Space-Model Approach for Parameter Estimation in Hodgkin-Huxley-Type Models of Single Neurons journal March 2012
A novel multiple objective optimization framework for constraining conductance-based neuron models by experimental data journal November 2007
Robustness of Burst Firing in Dissociated Purkinje Neurons with Acute or Long-Term Reductions in Sodium Conductance journal April 2005
Alternative to Hand-Tuning Conductance-Based Models: Construction and Analysis of Databases of Model Neurons journal December 2003
Neurofitter: A parameter tuning package for a wide range of electrophysiological neuron models journal January 2007
Preserving axosomatic spiking features despite diverse dendritic morphology journal June 2013
Input-output relations in the pathway of recurrent inhibition to motoneurones in the cat. journal December 1979
State-dependent swap strategies and automatic reduction of number of temperatures in adaptive parallel tempering algorithm journal June 2015
Automated neuron model optimization techniques: a review journal November 2008
Monte Carlo sampling methods using Markov chains and their applications journal April 1970
Training deep neural density estimators to identify mechanistic models of neural dynamics journal September 2020
A Model Neuron with Activity-Dependent Conductances Regulated by Multiple Calcium Sensors journal April 1998
Estimating the Parameters of Fitzhugh–Nagumo Neurons from Neural Spiking Data journal December 2019
Annealing Markov Chain Monte Carlo with Applications to Ancestral Inference journal September 1995
MCMC Techniques for Parameter Estimation of ODE Based Models in Systems Biology journal November 2019
Comprehensive benchmarking of Markov chain Monte Carlo methods for dynamical systems journal June 2017
Graded Regulation of the Kv2.1 Potassium Channel by Variable Phosphorylation journal August 2006
Inference of a Mesoscopic Population Model from Population Spike Trains journal August 2020
Ensemble methods for stochastic networks with special reference to the biological clock of Neurospora crassa journal May 2018
Author Correction: SciPy 1.0: fundamental algorithms for scientific computing in Python journal February 2020
A quantitative description of membrane current and its application to conduction and excitation in nerve journal August 1952
Variable channel expression in identified single and electrically coupled neurons in different animals journal January 2006
PESTO: Parameter EStimation TOolbox journal October 2017
Efficient Markov Chain Monte Carlo Methods for Decoding Neural Spike Trains journal January 2011
Noradrenaline and serotonin selectively modulate thalamic burst firing by enhancing a hyperpolarization-activated cation current journal August 1989
Ambiguity and nonidentifiability in the statistical analysis of neural codes: Fig. 1. journal May 2015
Dynamic temperature selection for parallel tempering in Markov chain Monte Carlo simulations journal November 2015
Simulated Tempering: A New Monte Carlo Scheme journal July 1992
A model of spike initiation in neocortical pyramidal neurons journal December 1995
Motoneuron excitability: The importance of neuromodulatory inputs journal December 2009
Benchmarking of numerical integration methods for ODE models of biological systems journal January 2021
Automated Parameter Estimation of the Hodgkin-Huxley Model Using the Differential Evolution Algorithm: Application to Neuromimetic Analog Integrated Circuits journal October 2011
Computational Model of Electrically Coupled, Intrinsically Distinct Pacemaker Neurons journal July 2005
Similar network activity from disparate circuit parameters journal November 2004
Modeling the leech heartbeat elemental oscillator I. Interactions of intrinsic and synaptic currents journal September 1995
Complex Parameter Landscape for a Complex Neuron Model journal July 2006
Quantitative expression profiling of identified neurons reveals cell-specific constraints on highly variable levels of gene expression journal August 2007
A class of Wasserstein metrics for probability distributions. journal January 1984

Similar Records

Extreme-Scale Bayesian Inference for Uncertainty Quantification of Complex Simulations
Technical Report · Fri Jan 12 00:00:00 EST 2018 · OSTI ID:1894149

Bayesian calibration of terrestrial ecosystem models: A study of advanced Markov chain Monte Carlo methods
Journal Article · Wed Feb 22 00:00:00 EST 2017 · Biogeosciences Discussions (Online) · OSTI ID:1894149

Bayesian learning of orthogonal embeddings for multi-fidelity Gaussian Processes
Journal Article · Thu Sep 09 00:00:00 EDT 2021 · Computer Methods in Applied Mechanics and Engineering · OSTI ID:1894149

Related Subjects