Electroporation is the process by which applied electric fields generate nanoscale defects in biological membranes to more efficiently deliver drugs and other small molecules into the cells. Due to the complexity of the process, computational models of cellular electroporation are difficult to validate against quantitative molecular uptake data. In part I of this two-part report, we describe a novel method for quantitatively determining cell membrane permeability and molecular membrane transport using fluorescence microscopy. Here, in part II, we use the data from part I to develop a two-stage ordinary differential equation model of cellular electroporation. We fit our model using experimental data from cells immersed in three buffer solutions and exposed to electric field strengths of 170 to 400 kV/m and pulse durations of 1 to 1000 μs. We report that a low-conductivity 4-(2-hydroxyethyl)-1 piperazineethanesulfonic acid buffer enables molecular transport into the cell to increase more rapidly than with phosphate-buffered saline or culture medium-based buffer. For multipulse schemes, our model suggests that the interpulse delay between two opposite polarity electric field pulses does not play an appreciable role in the resultant molecular uptake for delays up to 100 μs. Our model also predicts the per-pulse permeability enhancement decreases as a function of the pulse number. This is the first report of an ordinary differential equation model of electroporation to be validated with quantitative molecular uptake data and consider both membrane permeability and charging.
Electroporation is the process by which applied electric fields generate nanoscale defects in biological membranes to more efficiently deliver drugs and other small molecules into the cells. Due to the complexity of the process, computational models of cellular electroporation are difficult to validate against quantitative molecular uptake data. In part I of this two-part report, we describe a novel method for quantitatively determining cell membrane permeability and molecular membrane transport using fluorescence microscopy. Here, in part II, we use the data from part I to develop a two-stage ordinary differential equation model of cellular electroporation. We fit our model using experimental data from cells immersed in three buffer solutions and exposed to electric field strengths of 170 to 400 kV/m and pulse durations of 1 to 1000 μs. We report that a low-conductivity 4-(2-hydroxyethyl)-1 piperazineethanesulfonic acid buffer enables molecular transport into the cell to increase more rapidly than with phosphate-buffered saline or culture medium-based buffer. For multipulse schemes, our model suggests that the interpulse delay between two opposite polarity electric field pulses does not play an appreciable role in the resultant molecular uptake for delays up to 100 μs. Our model also predicts the per-pulse permeability enhancement decreases as a function of the pulse number. This is the first report of an ordinary differential equation model of electroporation to be validated with quantitative molecular uptake data and consider both membrane permeability and charging.
Entities:
Keywords:
differential equation; diffusion; permeability; porosity; pulsed electric fields; solute
An intact cell membrane normally provides a barrier to most molecular transport into and
out of a cell. Electroporation (EP) is a biophysical process in which brief, yet intense,
electrical pulses disrupt bilayer membranes to enhance the flow of molecules. The
electrically motivated buildup of charged molecules at the water–lipid interface raises the
electric potential difference between the inside of the membrane and the outside, known as
the transmembrane potential (TMP).[1-4] When the TMP reaches threshold values of 0.2 to 1.0 V, EP spontaneously occurs, as
polar molecules are inserted through the membrane.[5] Simulations of molecular systems including phospholipids, water, and other
small-molecule solutes have shown that nanoscale defects formation occurs on the order of
picoseconds to nanoseconds.[6,7]When applied to cell membranes, EP-mediated defects render the cell membrane porous and
enable solutes to better flow into and out of the cell. In the minutes to hours following
EP, a porous membrane can reseal to again inhibit molecular transport.[8,9] The generation of these defects is typically modeled using the asymptotic
Smoluchowski model (ASM), which considers the nucleation of trapezoidal defect structures
approximately 0.8 nm in radius.[10] The ASM enables the calculation of the dynamic density of these defects on a membrane
and includes considerations for the surface tension, tension of the defect, electrical
energy, and steric hindrance of the membrane, as lipid molecules are reoriented.[11] The ASM has been widely implemented in spatiotemporal EP models,[12-16] although direct comparisons to quantitative experimental data are yet to be made.
This model also relies on the exponential of the squared TMP and therefore requires small
time steps to resolve in numerical simulations. Simulations of even an idealized cell with
sufficient resolution to capture the spatiotemporal dynamics of EP are computationally
expensive. These resource requirements functionally limit the validation of such simulations
against experimental data over the longer time scales (minutes to hours) relevant to the
applications of EP-based technologies, including electrochemotherapy or irreversible EP.The translation of the presence of conductive membrane defects to an effective permeability
has been used to couple the generation of membrane defects with the electric flux continuity[17] and drift–diffusion equations.[18] Measurements of the electric current through the cell membrane decreases from 30 to
260 - 0 pA over 10 to 500 milliseconds following in vitro EP treatment.[19,20] Experimental data have also shown the rate at which exclusion dyes enter a cell after
EP decreases over 190 to 289 seconds[21] from initial permeabilities of 8.57 × 10−12 m/s for a 20-microsecond pulse
at 300 kV/m.[9] In part I of this 2-part report, we describe a novel method for measuring molecular
transport across the cell membrane and quantitatively characterizing membrane permeability
following EP. These permeability measurements are more readily compared to computational
models through the abstraction of aggregate membrane defects to a net membrane porosity.[22-25]Here, in part II of our report, we detail the development of such a model and fit it to the
experimental data generated in part I from adherent cells in a microfluidic chamber.
Previous models of membrane defect formation have included three to four stages in which an
electroporated membrane can exist.[16,21,26] In these schemes, an intact membrane is modeled as having a minimal permeability.
When the TMP reaches the EP threshold, the membrane becomes sufficiently permeable to
conduct small ionic currents. At this stage, the membrane still inhibits the transport of
larger molecules, such as exclusion dyes. As its porosity increases, especially during EP
schemes comprised of longer pulses (0.1-1.0 milliseconds), larger polyions and other
small-molecule solutes are able to cross the cell membrane.[9,21] The net porosity of the cell membrane is modeled as a linear combination of these
porosity stages weighted by the fraction of the membrane in each stage, with an ordinary
differential equation system representing the flow of the membrane through each available
stage.Once porous, membranes shunt ionic currents along the charge gradient, decreasing the TMP.[11,12,27] This charging to the EP threshold, followed by the rapid formation of membrane
defects, results in a characteristic sharp peak in the evolution of the TMP over time.[19] Lumped parameter resistive–capacitive circuit models have been used to model the
ionic currents through each defect stage.[11,28-31] The parallel flow of ionic currents, modeled as parallel conductances, through the
fraction of the membrane in each porosity stage is driven by an applied electric field,
modeled as a source voltage in series with a Thevenin equivalent conductance that models the
conductance of the buffer surrounding the cell. Lumped parameter models are particularly
interesting, as they provide a means of connecting quantitative cell-level data with
tissue-level phenomena.[32] While these models have the potential to simplify comparisons with experimental data,
no computational model of EP to date has been fit to quantitative experimental data.The goal of part II of our work was to investigate EP-facilitated membrane permeability
within a theoretical framework and avoid the computational expense of spatial models. To
this end, we have developed a lumped parameter model that includes a cell membrane circuit
model coupled with a novel phenomenological dual-porosity model and simple diffusion. Our
model treats the cell using parameters that are representative of the whole cell rather than
varying spatially.[30,32] We fit our model using experimental data reported in part I of this report, including
pulse durations of 1 to 1000 microseconds, electric field strengths of 170 to 400 kV/m, and
3 buffer compositions: phosphate-buffered saline (PBS), serum-free Dulbecco Modified Eagle
Medium/F-12 cell culture medium (SFDF), and a low-conductivity
4-(2-hydroxyethyl)-1-piperazineethanesulfonic acid buffer (HEPES). Analysis of this model
indicates that it is asymptotically stable following the removal of the applied electric
field (ie, during defect resealing). Model parameters and variables were normalized, which
reduced the parameter space to 6 parameters. Of these, 5 parameters were fixed based on
existing literature, and the sixth, the forward transition rate between the low-porosity
stage and the high-porosity stage, was fit to quantitative experimental data. Our results
indicate that buffer composition plays a critical role in EP-mediated membrane porosity.We extend our model to examine its implications for multipulse EP schemes. These results
indicate that the relaxation of the high- to low-porosity stage is slow and results in a
relatively long-lived membrane fraction in the high-porosity stage, compared to the fraction
in the low-porosity stage. We show that the difference in relaxation time scales gives rise
to a membrane permeability increase proportional to the pulse number raised to the power of
0.7. Finally, we demonstrate that the difference in relaxation times between the high- and
low-conductivity stages, which explains the negligible impact of delays of less than 100
milliseconds between consecutive pulses. The small parameter space and conclusions of our
model are consistent with existing literature and serve as a robust link between
experimental observations and theoretical models. While the scope of the present work
focuses on the biophysical mechanisms governing EP, we acknowledge that it has direct
applications to optimizing clinical techniques using EP processes that rely on membrane
transport, including electrochemotherapy. Robust linkages between theoretical and
experimental results are critical to improving clinical EP technology. Our model provides a
simple, concise methodology exploring these connections in greater depth.
Materials and Methods
We develop the following system of equations to describe EP and subsequent molecular
transport into a single idealized, spherical cell immersed in an aqueous buffer (Figure 1). Our model comprises equations
that describe EP as a reversible primary process coupled with an irreversible secondary process.[33] In the reversible primary process, a source current proportional to the applied
electric field drives an increase in the TMP (U). As the TMP increases, the
formation of reversible membrane defects begins to occur and more readily allow ions to flow
across the membrane. These ionic currents slow the TMP increase until either a dynamic
equilibrium between the formation and relaxation of conducting defects is reached or the
source current is removed. When a defect is initially formed (N), it does
not initially allow for the transport for molecules larger than small ions. However, these
initial defects can be expanded radially to accommodate the transport of larger ions, such
as propidium, in a secondary defect stage (M). In the irreversible process,
the transport of a small-molecule solute (X), such as propidium, is
considered from a high extracellular concentration into a cell initially containing no
solute. Our model consists of the system:
Figure 1.
EP model diagram. A, Electrical schematic representation of the cell membrane
charging including the extracellular conductivity to model the electric current incident to the cell membrane. The
conductivity of the cell membrane is given by the parallel conductances of the naive
membrane (blue) and porous membrane weighted by the membrane fraction in each of 2
stages (green and magenta). B, The naive membrane contributes a conductivity and
permittivity to the electrical model (blue). The N membrane fraction
contributes to the permeabilized conductivity of ionic currents but does not permit the transport of larger solutes (green). The
M membrane fraction contributes to and permits diffusive transport of solute with relative
intracellular concentration X (magenta). Note that the membrane
dielectric constant was considered constant across each membrane fraction and in
time.
EP model diagram. A, Electrical schematic representation of the cell membrane
charging including the extracellular conductivity to model the electric current incident to the cell membrane. The
conductivity of the cell membrane is given by the parallel conductances of the naive
membrane (blue) and porous membrane weighted by the membrane fraction in each of 2
stages (green and magenta). B, The naive membrane contributes a conductivity and
permittivity to the electrical model (blue). The N membrane fraction
contributes to the permeabilized conductivity of ionic currents but does not permit the transport of larger solutes (green). The
M membrane fraction contributes to and permits diffusive transport of solute with relative
intracellular concentration X (magenta). Note that the membrane
dielectric constant was considered constant across each membrane fraction and in
time.where , , , and U and time τ are the result of normalization.
N is fraction of the membrane area that is conductive of small ions yet
restricts the entry of larger molecules and M is the fraction of the
membrane area permissive of the entry of larger solutes. X is the
intracellular concentration of a solute such as propidium normalized to the extracellular
concentration of the same. is the source transmembrane current and is proportional to the applied
electric field. is the normalized TMP, where is the TMP and is the EP threshold voltage. is the normalized simulation time to the electrical time constant
associated with a naive cell membrane, where , and and are the conductivity and permittivity of a naive cell membrane,
respectively.To maintain the utility of the present modeling scheme model for describing experimental
results, the parameters are meant to describe the combined effects of all phenomena affecting
membrane defects. We conceive of the transition from N defects to
M defects occurring according to a mechanism that begins with an
N-stage defect forming in an intact membrane as the result of an applied
electric field.[10] Provided the electric field is sufficiently strong and prolonged, the porosity of the
cell membrane is increased as the size of the defects increases.[12] The total porosity of the cell membrane is modeled as a linear combination of the
N and M pore stages. Equation 1 is derived from a
circuit model of an electroporated cell membrane[30] (Appendix A). In this model,
the membrane conductance dominates the circuit response and other components, such as the
cytoplasm, have little effect. The value of time constant is well known for single cells ( s). γ is also well defined, as conductivities of both a naive membrane
and a completely porous membrane have been experimentally measured[19] and estimated to be . The term translates the applied electric field to the source voltage across the
membrane, where is the electric field strength of the homogenous electric field if it were
undisrupted by the immersed spherical cell.Equation 2
describes the fractional porosity of the cell membrane generated by normalized TMP
U at rate α and is quadratic in U, consistent with the
dominant term in a first-order Taylor expansion of the ASM. The second term describes the
transition from the N porosity stage to the M porosity
stage that occurs at rate δ and is motivated by the presence of the TMP U.
The third term in Equation 2 describes the transition from the
N stage back to a naive membrane stage with rate constant β. The fourth
term describes the M to N transition that occurs at rate
η. Within this scheme, the membrane fraction in the M
stage cannot exist without passing through the N stage during generation
and relaxation. Additionally, this scheme does not specifically address whether the
mechanism by which N-stage defects transition to M-stage
defects is through coalescence of the existing N-stage defects[34] or the radial expansion of M-stage pores[35] but instead considers the total contribution of each defect population to the
membrane conductance and permeability.With the duration of the applied electric field 1000-fold shorter than the interval between
the control measurement and the first posttreatment measurement in the experimental data, we
assume that the molecular flux into the cell interior is purely diffusive.[36,37] A Hagen–Poiseuille model of mass transport through a porous membrane was used to
develop Equation 4, where ξ is the normalized permeability coefficient of the
M porosity stage. Flow through a porous membrane is given according to
Equation 4, where
,[25,38]
is the free diffusion coefficient of solute of interest with concentration
X in an aqueous environment, h is the membrane
thickness, r is the cell radius, and is the hindrance factor. This approximation assumes that and , where is the ratio of the solute radius () to the defect radius (). This formulation is solute dependent implying that λ will change based
on the solute. However, in the present case, the solute is propidium as described in part I.
It also assumes that the porosity of the cell membrane is uniformly distributed across the
cell membrane and that flow into the cell occurs in the radial direction only. Modeling
defects as cylinders, the hindrance factor is evaluated using a formula corrected for small porosities.[25,39,40] Assuming and , ξ is calculated to be . With a priori knowledge of the molecular radius of the solute, ξ can be
estimated from these calculations as well as from experimental measurements.[9,21]
Results
Parameter Fitting
Equations 1
to 4 were implemented
in Python 3.6.5 using the Livermore Solver for Ordinary Differential Equations (LSODA) algorithm[41] with the odeint() function in the Scipy (1.0.1) module.[42] The solver was initialized with the initial conditions: , , , and . A stability analysis revealed that the model is asymptotically stable
following the removal of the applied electric field (Appendix B). Experimental time-series data from
single adherent cells within a microfluidic chamber were used to calibrate the model (part
I). Within this dataset, the observed average molecular uptake was calculated from
experimental data prior to electric field exposure and each minute for 30 minutes
following treatment to obtain 31 total observations for each electric field strength and
pulse duration combination. The mean and variance were calculated for each measurement. In
order to estimate δ for all treatments for each buffer composition, the Nelder–Mead method
was implemented using the minimize() function in the LmFit (0.9.7) module
to minimize the sum of square residuals (SSR) given by:where X
model(t) and X
data(t) are the model and data points for X, respectively, at time
t ∈ . Simulations were plotted over the experimental data and show good agreement
visually, with the maximum max(SSRPBS) = 0.025, max(SSRSFDF) =
0.0070, and max(SSRHEPES) = 0.0066 Figure 2. Notably, the to generation rates δ were
similar for cells immersed in PBS and SFDF but were consistently 3- to 5-fold larger for
cells immersed in HEPES buffer.
Figure 2.
The 2-stage model recapitulates experimental averages of molecular uptake.
Representative parameter fits are shown for X for cells exposed to a
pulse at 320 kV/m to pulse widths of 1, 10, 100, and 1000 microseconds in (A)
phosphate buffered saline (PBS), (B) serum-free DMEM/F12 medium (SFDF), and (C)
4-(2-hydroxyethyl)-1-piperazineethanesulfonic acid buffer (HEPES). Equations 1
to 4 were fit to
time series datasets from cells in 3 buffer compositions (PBS, SFDF, and HEPES), 4
pulse durations (1, 10, 100, and 1000 microseconds), and 4 electric field strengths
(170, 250, 320, and 400 kV/m). Fitting was performed using the Nelder–Mead method to
minimize Equation 6 by varying δ. (d) The best fit δ is shown as a product of the source term
and the pulse duration normalized to the time constant for all 48 treatment combinations.
HEPES Buffer Increases Membrane Permeability
Experimental data (part I) from 3 different buffer compositions reveal that cells
immersed in the HEPES buffer during EP experienced a larger molecular uptake following the
application of the 100-microsecond pulse than the cells immersed in PBS or SFDF. With a
1000-microsecond pulse, the ultimate molecular uptake was similar for each of the electric
field strengths experimentally examined, but the time-to-saturation decreased with
increasing field strength. Although the HEPES buffer has a lower conductivity than the PBS
or SFDF by an order of magnitude, δ for the cells in the HEPES buffer is 2 orders of
magnitude larger than for the cells in PBS and SFDF buffers, which are themselves similar
(Table 1). This is
counterintuitive to previous data from studies, where the ionic strength of the buffer was
manipulated for otherwise similar buffers.[31] In our model, this observation is driven by a more rapid transition rate from the
N membrane stage to the M membrane stage that results
in a larger accumulation M that contributes to a rapid increase in
X over the responses evoked by the other buffers (Figure 2). Our data show that although the HEPES
buffer slows the rise in U (Figure 3), X increases similar to
the cells in PBS and SFDF. This observation suggests that electroporating cells in a HEPES
buffer may result in increased permeability over similar cells treated in PBS and SFDF,
despite the lower induced TMP (U).
Table 1.
Model Parameters.
Parameter
Value
Description (Units)
References
α
2.0×10−6
N formation rate
[43]
β
4.0×10−6
N relaxation rate
[8,10,19,44]
γ
1.0×106
Relative permeabilized conductance
[19,44,45]
η
4.0×10−9
M relaxation rate
[9,21]
ξ
5.0×10−4
Permeability coefficient
[9,21,25]
λM
0.63
Solute radius/defect radius
[25]
ρs
0.5
Solute radius (nm)
[46]
ρd
0.8
Defect radius (nm)
[10,47]
U0
250
EP threshold voltage (mV)
[19]
τRC
1.0
Membrane time constant (microseconds)
[19,20,48,49]
D∞
0.5×10−9
Solute diffusivity (m2/s)
[46]
h
5.0
Membrane thickness (nm)
[50,51]
r
7.5
Cell radiusa (μm)
σPBS
1.01
PBS conductivitya (S/m)
σSFDF
0.93
SFDF conductivitya (S/m)
σHEPES
0.08
HEPES conductivitya (S/m)
a Denotes values found in the accompanying manuscript.
Figure 3.
Evolution of membrane porosities N and M and the
resultant molecular uptake X following an increase in the normalized
transmembrane potential U. In each plot, solid lines indicate an
applied electric field microseconds, and dashed lines indicate microseconds. Blue lines indicate a phosphate buffered saline buffer
solution, and green lines indicate a 4-(2-hydroxyethyl)-1-piperazineethanesulfonic
acid buffer. A, The TMP U, driven by a large external electric field,
reaches an initial maximum until the membrane begins to shunt ionic currents as
N and M increase. B, The intracellular
concentration of solute X increases as it enters the cell through the
membrane porosity stage. C, An intact membrane enters a stage conductive of small ions
N driven by a TMP. D, M develops from
N, dependent on U, and allows larger molecules to
pass through the cell membrane. For all simulations, kV/m.
Model Parameters.a Denotes values found in the accompanying manuscript.The 2-stage model recapitulates experimental averages of molecular uptake.
Representative parameter fits are shown for X for cells exposed to a
pulse at 320 kV/m to pulse widths of 1, 10, 100, and 1000 microseconds in (A)
phosphate buffered saline (PBS), (B) serum-free DMEM/F12 medium (SFDF), and (C)
4-(2-hydroxyethyl)-1-piperazineethanesulfonic acid buffer (HEPES). Equations 1
to 4 were fit to
time series datasets from cells in 3 buffer compositions (PBS, SFDF, and HEPES), 4
pulse durations (1, 10, 100, and 1000 microseconds), and 4 electric field strengths
(170, 250, 320, and 400 kV/m). Fitting was performed using the Nelder–Mead method to
minimize Equation 6 by varying δ. (d) The best fit δ is shown as a product of the source term
and the pulse duration normalized to the time constant for all 48 treatment combinations.Evolution of membrane porosities N and M and the
resultant molecular uptake X following an increase in the normalized
transmembrane potential U. In each plot, solid lines indicate an
applied electric field microseconds, and dashed lines indicate microseconds. Blue lines indicate a phosphate buffered saline buffer
solution, and green lines indicate a 4-(2-hydroxyethyl)-1-piperazineethanesulfonic
acid buffer. A, The TMP U, driven by a large external electric field,
reaches an initial maximum until the membrane begins to shunt ionic currents as
N and M increase. B, The intracellular
concentration of solute X increases as it enters the cell through the
membrane porosity stage. C, An intact membrane enters a stage conductive of small ions
N driven by a TMP. D, M develops from
N, dependent on U, and allows larger molecules to
pass through the cell membrane. For all simulations, kV/m.Generally, in each of the primary variables (N, M,
X, and U), several characteristic features emerge.
Immediately following application of the electric field, the TMP U
experiences a characteristic spike within to (Figure 3A). This spike is followed by a sharp decline
as N and M increase and begin conducting ionic currents
through the cell membrane. For N, the initiation of the waveform appears
biphasic: An initial rapid increase is followed by a more gradual increase until a plateau
is reached (Figure 3C). The first
phase is where U is the largest. The second phase occurs when the
membrane begins to shunt small ionic currents that rapidly decrease U and
slows the increase in N. This progression occurs for cells in each buffer
examined in this study, but the cells in HEPES experience a larger for both the 1- and
10-microsecond pulses than the cells in PBS experienced at 10 microseconds. For (Figure 3D), a similar biphasic
response exists but is more stratified between the 1- and 10-microsecond pulse durations
for the cells in the HEPES buffer. Interestingly, the 1-microsecond pulse generated an
M for cells in the HEPES buffer similar to that generated by the
10-microsecond pulse for the cells in PBS. The result of this stratification is apparent
in (Figure 3B). The membrane
permeability (P = ξMh) is directly impacted by the M membrane
stage, and consequently, depends on both the extracellular–intracellular concentration
gradient (1 − X) and M. However, while the concentration
gradient could limit the molecular uptake as it decreases, (1 − X) >
0.30 for even the largest pulse strengths and durations examined here. Therefore, it is
assumed that the changes in M are largely responsible for the molecular
uptake observed.
The High-Conductivity Membrane Fraction Is Slow to Relax
Prior experimental data have shown that U is highly dynamic during the
application of an electric field but quickly returns to its ground state following the
removal of I (Figure 3A). However, it
is clear that molecular transport across the membrane continues for minutes to hours
afterward (Figure 2A–C). This
discrepancy between the electrical and transport time scales is motivation to explore the
mechanism producing a long-lived M stage membrane fraction (Figure 4A). As a large
U generates an initial increase in N, a small
M begins to develop (Figure 4B). M increases until the removal of
I, at which point the plateau of M coincides with the return of
U to its ground state. Both M and N
persist near their plateau for approximately 106τ, at which point
N begins to relax to the ground state it reaches at 108τ.
However, while the N stage decays, the M stage persists
until 109. Because the membrane fraction in the M stage is
approximately 2 orders of magnitude smaller than in the N stage, the
transition of an M-stage porosity to an N-stage porosity
results in a large decrease in the low conductivity, yet larger, portion of the membrane
while the membrane overall continues to be permeable to solutes. This slow relaxation in
the M stage is responsible for the difference in time scales between the
rapid electrical charging and the relatively slow uptake of solutes in the minutes
following EP.
Figure 4.
The transmembrane potential and molecular uptake occur on dramatically different
timescales. A, Pulses with durations of 10 and 100 microseconds are shown simulated
using . B, A lag exists between when the N stage is fully
relaxed to 0 as the M stage persists. M and
N reach plateaus upon removal of the source current with the
applied electric field of kV/m.
The transmembrane potential and molecular uptake occur on dramatically different
timescales. A, Pulses with durations of 10 and 100 microseconds are shown simulated
using . B, A lag exists between when the N stage is fully
relaxed to 0 as the M stage persists. M and
N reach plateaus upon removal of the source current with the
applied electric field of kV/m.
While multipulse experiments can confound observations of membrane dynamics due to the
complex cellular response, EP schemes often rely on a series of pulses, rather than a
single continuous pulse, to limit Joule heating.[52,53] δ = 1.0 × 10−3 was fixed within the range for the PBS buffer, which is
commonly used experimentally. Alternating polarity pulses are becoming increasingly
relevant to EP technology.[54-56] To investigate the implications of our model within such schemes, bipolar pulse
trains were simulated as ideal square waveforms from 1 to 1000 microseconds (Figure 5). The interpulse delay
t between the start of the falling edge of 1 pulse and the start of the initiation
of the following pulse has been implicated in governing cell permeability and death
induced by EP protocols.[57-61] To determine the role of t in the induced permeability P, simulations were performed using two consecutive, alternating polarity pulses
at 400 kV/m with a variable delay between them, shown, for example, by 10-microsecond
pulses (Figure 5A). The induced
permeability was evaluated at the beginning of the falling edge of the second pulse for
t ∈ [10−6 s, 10−1 s], and it was found that
t within this range does not appreciably affect membrane permeability for 1-, 10-,
100-, and 1000-microsecond pulses (Figure
5B). These results corroborate experiment reports of nanosecond pulses that show
a relatively small difference between pulses delivered at intervals from 2 to 1000 milliseconds[62] and that the impedance change in cells is relatively small yet similar between
consecutive pulses for interpulse delays less than 100 milliseconds.[59]
Figure 5.
Interpulse delays of less than 1 millisecond negligibly impact membrane permeability,
while increasing pulse number n and duration () increases membrane permeability. A, The normalized transmembrane
potential (U) response to consecutive, a delay () of 1-, 100-, and 500-microsecond pulses between opposite polarity
pulses 10 microseconds are shown as solid magenta, green, and blue lines,
respectively. The membrane permeability () given in m/s is shown as a dotted line corresponding to each
waveform. In each case, the membrane permeability increases to approximately the same
value at 1000 microseconds following the initiation of the first pulse in the applied
electric field. Pulses are shown with an external electric field of kV/m. B, Two consecutive, opposite polarity pulses interpulse delays
of 1 to 105 microseconds for pulses with durations of 1, 10, 100, and 1000 microseconds retain a constant permeability
at 1 millisecond following application of the stimulating electric field.
was fixed for both figures.
Interpulse delays of less than 1 millisecond negligibly impact membrane permeability,
while increasing pulse number n and duration () increases membrane permeability. A, The normalized transmembrane
potential (U) response to consecutive, a delay () of 1-, 100-, and 500-microsecond pulses between opposite polarity
pulses 10 microseconds are shown as solid magenta, green, and blue lines,
respectively. The membrane permeability () given in m/s is shown as a dotted line corresponding to each
waveform. In each case, the membrane permeability increases to approximately the same
value at 1000 microseconds following the initiation of the first pulse in the applied
electric field. Pulses are shown with an external electric field of kV/m. B, Two consecutive, opposite polarity pulses interpulse delays
of 1 to 105 microseconds for pulses with durations of 1, 10, 100, and 1000 microseconds retain a constant permeability
at 1 millisecond following application of the stimulating electric field.
was fixed for both figures.The impact of the number of consecutive pulses n has been reported as an
important factor in membrane conductance changes resulting from EP.[4,29,63] We refer to the measurement of the effect of the number of pulses on the cell’s
permeability, as the permeabilization efficiency is defined as:where is the time at the initiation of the pulse and is the initiation of the subsequent pulse in a series containing
n alternating polarity pulses of duration . Simulations were performed using pulses generated by an external
electric field with an amplitude of 400 kV/m and varying the pulse number from 1 to 1000
pulses with durations of 1 to 100 microseconds. The relation between pulse number and
permeability is given bywhere is the membrane permeability generated by the first pulse (Figure 6), as these lines are parallel
and have a slope of using propidium and under the conditions described in part I. The
central implication of this relationship is that knowing the permeability generated by a single electrical pulse in a series of alternating
polarity pulses, the number of pulses required to generate and equivalent permeability
induced by a second treatment with an equivalent applied electric field strength may be
estimated through the relation:
Figure 6.
Permeabilization efficiency decreases for each consecutive pulse delivered in a given
series. A, Alternating polarity pulses increase the normalized transmembrane potential
(U) and generate increasing membrane permeabilities . U is driven by an electric field of
kV/m comprising 1, 2, or 3 pulses, shown in magenta, green, and
blue, respectively. P increases with each consecutive pulse, denoted by the magenta, green, and
blue dotted lines identifying the corresponding TMP. B, The increase in
upon removal of the last pulse in a train of n
alternating polarity pulses is shown as green dotted lines for 1-, 10-, and
100-microsecond long pulse durations () with a 1-microsecond delay () between consecutive pulses. The fractional increase in membrane
permeability () between the falling edge of 2 such pulses decreases linearly with
, where shown as a blue solid line. was fixed for both figures.
Permeabilization efficiency decreases for each consecutive pulse delivered in a given
series. A, Alternating polarity pulses increase the normalized transmembrane potential
(U) and generate increasing membrane permeabilities . U is driven by an electric field of
kV/m comprising 1, 2, or 3 pulses, shown in magenta, green, and
blue, respectively. P increases with each consecutive pulse, denoted by the magenta, green, and
blue dotted lines identifying the corresponding TMP. B, The increase in
upon removal of the last pulse in a train of n
alternating polarity pulses is shown as green dotted lines for 1-, 10-, and
100-microsecond long pulse durations () with a 1-microsecond delay () between consecutive pulses. The fractional increase in membrane
permeability () between the falling edge of 2 such pulses decreases linearly with
, where shown as a blue solid line. was fixed for both figures.where n and n are the numbers of alternating polarity pulses in treatment a and b,
respectively, P and P are the permeabilities after the first pulse of each treatment using constant
duration pulses (Figure 6B). This
equation takes a similar form to previous models describing equivalent pulse parameters.[33,64] Although more quantitative measurements of membrane permeability are needed to
validate this result, it could provide a guide to designing future in
vitro EP protocols.
Discussion
In the proposed model, normalization of the governing equations results in only 6
parameters: (Table 1). γ,
ξ, and η are the most readily measurable parameters in the present model and have been well
characterized and estimated in previous literature.[9,19,63] We emphasize that these parameters describe the net rates of defect formation and
relaxation as an aggregate of the underlying mechanism that contribute to membrane EP. α and
β were fixed based on previous estimates[8,9,65,66] and do not correspond to physical parameters but to net transition rates between
porosity stages. We varied δ, which is also an aggregate simulation parameter, to fit our
model to the experimental data set. Fitting our model in this way indicated a 3- to 5-fold
difference in the δ for cells treated in the HEPES buffer over the cells treated in SFDF or
PBS (Figure 2). These data indicate
that the composition of the HEPES buffer impacts the rate at which M is
generated following EP, which is counterintuitive when considering the model in terms of
circuit theory. The HEPES buffer has an electrical conductivity 10-fold lower than PBS and
SFDF and should result in a smaller . Biochemically, there are 2 components in the HEPES buffer—HEPES (10
mmol/L) and sucrose (250 mmol/L)—that differentiate this buffer from PBS and SFDF. HEPES
buffers are commonly used for in vitro EP studies, as they maintain
cellular viability without the presence of calcium,[67-69] and the common use of HEPES buffers may suggest that this buffer does not affect
cellular EP. Additionally, cells immersed in isosmotic sucrose-containing buffers, even in
the absence of HEPES, have been shown to uptake more propidium than cells in buffers without sucrose.[70]While the impact of HEPES buffers on EP appears to be negligible, there is evidence that
the inclusion of sucrose affects cells as they are permeabilized. Sucrose is excluded from
electroporated membranes[65] and has been shown to result in the formation of blebs.[71] Within the context of these results, the large δ our model predicts
for the sucrose-containing HEPES buffer may assist in expanding or stabilizing membrane
defects. The membrane fraction in the low-conductivity N stage could widen
into the M stage to more rapidly shunt the flow of water along the osmotic
pressure gradient and into the cell. In addition to the expansion and stabilization of
defects, the osmotic pressure gradient could also deliver solutes, such as propidium, into
the cell more rapidly. Both of these effects may explain the increased δ
for cells in HEPES. More investigation is required to further characterize this mechanism,
although explaining the specific effects of the HEPES buffer on cellular permeabilization is
beyond the scope of the present work. This is an important consideration for future studies
and would be valuable to the field of EP in general, but the focus of this work is
developing a phenomenological model that can be directly fit using experimental data.The flow of propidium and other small-molecule solutes into the cell through the cell
membrane following EP is the result of both electrophoretic drift and diffusion along
concentration gradients. However, the flow of propidium into an electroporated cell
following the removal of the applied electric field is largely due to diffusion through
defects in the cell membrane.[72,73] Here, the defect population is divided into 2 subpopulations, N and
M, which are treated in aggregate based upon whether the defects permit
propidium transport. Previous reports have suggested subdividing the induced membrane
porosity into diffusive and electrically conductive portions,[16,23,74,75] but these models have typically relied on the incorporation of interface conditions
in continuum models. In our model, the dimensionality of the problem is collapsed to yield
average porosities for the whole membrane, rather than addressing the generation,
relaxation, and interconversion of individual defects (Figure 1). Furthermore, removing this spatial
dependence allows our model to be solved using standard ordinary differential equation
solvers, enabling the simplified spatial system to be readily incorporated as a material
property into larger systems.[32] In the present model, this reduced dimensionality was achieved through the use of
dynamic porosities N and M
[16,23,75,76] rather than more conventional defect numbers.[77-80] The transport through the M stage then facilitates hindered
diffusion of propidium into the cell and is represented as an average over the whole cell,
rather than at each individual defect, giving rise to a dual-porosity model of the cell membrane.[25]While our 2-stage model is fit using single-pulse propidium uptake data, further data sets
should be considered in future work, although our model is qualitatively consistent with
previous reports. The electrical waveforms used to generate our experimental data set
comprised a single pulse with significant ringing on the initiation and termination of each
pulse. Due to the ringing, the cells in the microdevice were exposed to a much larger
electric field strength during the first 100 nanoseconds than during the remainder of the
pulse. Furthermore, in many experimental investigations, a voltage overshoot may exist on
the rising edge of each pulse, depending on the generator topology and experimental apparatus,[55] which differs from the idealized square pulses simulated in the present model.
Experimental investigations of pulse modulation have found that a square pulse with 10%
sinusoidal modulation varied only slightly from an idealized square pulse,[81] although a 90%-modulated pulse increased the permeabilized cell fraction. By analogy,
we expect that for the 10-, 100-, and 1000-microsecond pulses, our experimental data would
closely approximate a square pulse. Experimental data from the 1-microsecond pulses could
overpredict the EP threshold, as the ringing in the applied pulse is of the order of the
pulse duration. Ultimately, little permeabilization occurred for pulses <10 microseconds,
and our model is able to phenomenologically reflect this observation.Our 2-stage model can also be easily extended from a single pulse to a series of
alternating polarity pulses (Figure
6). Due to the slow relaxation rate (η) of the M stage (Figure 4), 2 consecutive pulses
separated by milliseconds allow a negligible M to N
relaxation prior to the start of a second pulse. The membrane conductance, which most
significantly depends on N, is highly dynamic compared to the membrane
permeability to solutes, which depends on M (Figure 6A). This is consistent with the relatively
rapid recovery of the naive membrane conductance observed in patch-clamp experiments.[19]. However, the long-lived M stage results in a appear to be independent of (Figure 6B).At the removal of each consecutive pulse, increases with , where for up to one thousand 1- to 10-microsecond pulses, regardless of the
pulse duration (). In our simulations, the electric field strength and duration of each
pulse remains constant and the pulse number is varied. Our model suggests that 2 disparate
series with different pulse durations and interpulse delays generate equivalent
permeabilities if the number of pulses in each series satisfies Equation 8, suggesting that
permeability increases with increasing applied energy.[82] These data are consistent with previous reports that relate the electric field
intensity required to electroporate 50% of a population of cells with the requisite pulse
duration , where k is constant.[33,64] From Equation 8, our data suggest a modification of this relationship , where the energy density generated by a single pulse is combined with the
diminishing permeabilization efficiency for multiple pulses in a train. Together, these
observations are consistent with previous experimental reports using series of long pulses
of alternating polarity pulses,[63] although it is the first time membrane permeability has been quantitatively related
to the energy applied through electrical pulses.The repetition rate () has been observed to impact the uptake of propidium. Repetition rates of
1 to 10 Hz induce greater permeabilization than pulses delivered more rapidly.[58,59] Delays of 1 and 4 microseconds have also been shown to produce relatively similar
permeabilities with longer pulses of equivalent total duration producing even larger permeabilities.[63] In our model, the permeability is dependent only on the membrane fraction in the
M stage, which is a small fraction of the total porous area
(). The N stage is formed more quickly and relaxes more
rapidly than the M stage. At longer interpulse durations (on the order of
several seconds), the membrane fraction in the M stage begins to relax. If
the cell membrane in the M stage is allowed to partially relax between
pulses, a lower average permeability is obtained over the course of the EP treatment. To
design optimal EP protocols, pulse durations must be long enough to induce the largest
membrane fraction in the M stage while preventing its relaxation.Our 2-stage lumped parameter model is presently limited in scope by the data with which it
has been validated, namely, adherent cells cultured in vitro in a dispersed
fashion using the methods described in part I. For cells cultured in a 3-dimensional
environment, we expect the parameter values in our model would necessarily reflect changes
in cell morphology and physiology. For example, if a solute with a larger molecular radius
or charge was used, the parameters in our model would necessarily change to reflect the
ability of each solute to travel through the membrane; the transport of differently sized
molecules with different charges will inherently be different. Especially, with regard to
the M to N porosity stages, we expect that the parameters
describing these kinetics would vary greatly.[83] Our present model is only validated in vitro using propidium for
cells that exist far from the electrodes, which is consistent with the experimental setup in
the accompanying article. For cells near the electrode contacts, other mechanisms of cell
membrane damage may dominate, and our model may not recapitulate experimental
observations.
Conclusion
Here, we present the second part of a 2-part report on in vitro EP. In
part I, we developed a method of quantitatively determining molecular uptake and measuring
membrane permeability for cells in a microdevice using fluorescence microscopy. Here, in
part II, we develop and fit a computational model of small-molecule transport into cells
using only 6 parameters. We fit our model using experimental data of propidium uptake
following EP gathered in part I. When extended to multiple bipolar pulses, our model
corroborates previous experimental reports and suggests a relationship that defines the
pulse number required to obtain equivalent molecular uptake between disparate EP
schemes.
Authors: Tomo Murovec; Daniel C Sweeney; Eduardo Latouche; Rafael V Davalos; Christian Brosseau Journal: Biophys J Date: 2016-11-15 Impact factor: 4.033
Authors: Bennett L Ibey; Shu Xiao; Karl H Schoenbach; Michael R Murphy; Andrei G Pakhomov Journal: Bioelectromagnetics Date: 2009-02 Impact factor: 2.010