Modelling heterogeneous biomolecular dynamics in neurons using nonlinear mixed effects models and scientific machine learning
dc.contributor.advisor
Sterratt, David
dc.contributor.advisor
Chadwick, Angus
dc.contributor.advisor
Stefan, Melanie
dc.contributor.author
Linkevičius, Domas
dc.date.accessioned
2025-09-10T10:59:00Z
dc.date.available
2025-09-10T10:59:00Z
dc.date.issued
2025-09-10
dc.description.abstract
Computational neuroscience employs mathematical, computational
and physical abstractions of biological structures ranging from the
scale of ion channels to systems to investigate the brain and the central
nervous system. Computational neuroscience has a well-established
set of tools and methodologies which are used to handle the
available data. However, with the development of new experimental
techniques, automation of experiments and increased data-sharing,
different analytical tools may be necessary to best use and understand
the high volumes of novel data. In this thesis I use two tools
which have hitherto had limited application in computational neuroscience
– non-linear mixed effects modelling (NLME) and scientific
machine learning (SciML). NLME is a hierarchical modelling framework
that can account for the sources of within- and between-subject
variability. SciML is a discipline in which machine learning is blended
with classical mathematical models. By supplementing the set of existing
computational neuroscience approaches with NLME and SciML,
I tackle three distinct topics that are related to synaptic plasticity and
neuronal function.
The first topic is related to the modelling of chemical reaction networks
in neurons. There are many published studies containing a
relatively large amount of different protein species. Among them is
calmodulin, a Ca²⁺-binding molecule essential in cellular signalling,
particularly in synaptic plasticity, learning and memory. There are
many different published Calmodulin models, but there is no systematic
comparison between the different models. I used the data from
Faas et al. (Faas et al., 2011) to fit and evaluate the existing Calmodulin
models. The Faas et al. data contains the most accurate measurement
of Calmodulin-Ca²⁺ binding dynamics to date. However, it
suffers from uncertainties of important experimental factors which
were not possible to control fully. Therefore, I used NLME to account
for the uncertain experimental factors, using the data set to compare
various published Calmodulin-Ca²⁺ binding schemes, analysing their
ability to fit the data, and showing that some schemes fail due to
structural limitations.
The second topic deals with the modelling of voltage-gated ion
channels. More specifically, the class of the Hodgkin-Huxley-like ion
channel models that assume independence between the different channel
gating variables. I use the data of Ranjan et al. (Ranjan et al.,
2019) to fit and evaluate various models of the voltage-gated potassium
channel (Kᵥ) gating dynamics. The data from Ranjan et al. contain
current recordings of many different Kᵥ types. However, their
data showed significant heterogeneity in the gating kinetics of the
same Kᵥ type. Therefore, I applied NLME to account for within- and
between-Kᵥ type heterogeneity. Moreover, I applied SciML to facilitate
the Hodgkin-Huxley-like model fitting to multiple different Kᵥ
types. Application of these tools led to the creation of a single neural-network
based model capable of accurately modelling the gating dynamics
of 20 different Kᵥ types.
The third topic I discuss is the application of NLME and SciML
in the modelling of synaptic plasticity. Modelling of synaptic plasticity
poses a significant challenge to the existing approaches used in
computational neuroscience. The number of different protein species
present in synapses, along with the heterogeneity of protein numbers
in the same type of synapse, makes it very difficult to construct
kinetic schemes capable of explaining various observed forms of synaptic
plasticity. Therefore, I discuss various ways of applying NLME
and SciML which could be productive in creating models of synaptic
plasticity.
In conclusion, this thesis demonstrates the benefits of NLME and
SciML in supplementing the existing toolbox of computational neuroscientists.
These two additional tools were applied successfully to two
challenging data sets and led to new insights, such as the limitations
of the Calmodulin models used in the literature and the possibility of
representing 20 different Kᵥ channels using a single model. A wider
adoption of these tools could result in solutions to a number of other
existing challenges in neuroscience.
en
dc.identifier.uri
https://hdl.handle.net/1842/43953
dc.identifier.uri
http://dx.doi.org/10.7488/era/6484
dc.language.iso
en
en
dc.publisher
The University of Edinburgh
en
dc.relation.hasversion
Linkevicius D, Chadwick A, Faas GC, Stefan MI, Sterratt DC. Fitting and comparison of calcium-calmodulin kinetic schemes to a common data set using non-linear mixed effects modelling. PLoS One. 2025 Feb 7;20(2):e0318646. doi: 10.1371/journal.pone.0318646. PMID: 39919077; PMCID: PMC11805441
en
dc.relation.hasversion
Linkevicius, Domas & Chadwick, Angus & Stefan, Melanie & Sterratt, David. (2025). One model to rule them all: unification of voltage-gated potassium channel models via deep non-linear mixed effects modelling. 10.1101/2025.04.24.650426.
en
dc.subject
computational neuroscience
en
dc.subject
non-linear mixed effects modelling
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dc.subject
NLME
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dc.subject
scientific machine learning
en
dc.subject
SciML
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dc.subject
modelling
en
dc.subject
calmodulin
en
dc.subject
voltage-gated ion channels
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dc.subject
synaptic plasticity
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dc.title
Modelling heterogeneous biomolecular dynamics in neurons using nonlinear mixed effects models and scientific machine learning
en
dc.type
Thesis or Dissertation
en
dc.type.qualificationlevel
Doctoral
en
dc.type.qualificationname
PhD Doctor of Philosophy
en
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