Correction
9 Aug 2012: Punnoose A, McConnell LA, Liu W, Mutter AC, Koder RL (2012) Correction: Fundamental Limits on Wavelength, Efficiency and Yield of the Charge Separation Triad. PLOS ONE 7(8): 10.1371/annotation/7db1b9ef-c93c-4b02-b721-a8473d2bb4e2. https://doi.org/10.1371/annotation/7db1b9ef-c93c-4b02-b721-a8473d2bb4e2 View correction
Figures
Abstract
In an attempt to optimize a high yield, high efficiency artificial photosynthetic protein we have discovered unique energy and spatial architecture limits which apply to all light-activated photosynthetic systems. We have generated an analytical solution for the time behavior of the core three cofactor charge separation element in photosynthesis, the photosynthetic cofactor triad, and explored the functional consequences of its makeup including its architecture, the reduction potentials of its components, and the absorption energy of the light absorbing primary-donor cofactor. Our primary findings are two: First, that a high efficiency, high yield triad will have an absorption frequency more than twice the reorganization energy of the first electron transfer, and second, that the relative distance of the acceptor and the donor from the primary-donor plays an important role in determining the yields, with the highest efficiency, highest yield architecture having the light absorbing cofactor closest to the acceptor. Surprisingly, despite the increased complexity found in natural solar energy conversion proteins, we find that the construction of this central triad in natural systems matches these predictions. Our analysis thus not only suggests explanations for some aspects of the makeup of natural photosynthetic systems, it also provides specific design criteria necessary to create high efficiency, high yield artificial protein-based triads.
Citation: Punnoose A, McConnell L, Liu W, Mutter AC, Koder R (2012) Fundamental Limits on Wavelength, Efficiency and Yield of the Charge Separation Triad. PLoS ONE 7(6): e36065. https://doi.org/10.1371/journal.pone.0036065
Editor: Carl J. Bernacchi, University of Illinois, United States of America
Received: February 2, 2012; Accepted: March 30, 2012; Published: June 1, 2012
Copyright: © 2012 Punnoose et al. This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
Funding: RLK gratefully acknowledges support by the following grants: FA9550-10-1-0350 from the Air Force Office of Scientific Research and the NIH National Center for Research Resources to CCNY (NIH 5G12 RR03060). ACM gratefully acknowledges support from the Center for Exploitation of Nanostructures in Sensor and Energy Systems (CENSES) under NSF Cooperative Agreement Award Number 0833180. These funders had no role in study design, data collection and analysis, decision to publish, or preparation of the manuscript.
Competing interests: The authors have declared that no competing interests exist.
Introduction
Solar energy conversion machines found in nature utilize a number of small molecules, called cofactors, which serve as discrete sites for the binding of a single electron [1]. Charge separation in these proteins is effected via a cascade of several individual electron transfer (ET) events initiated by the absorption of a photon at a central cofactor termed the primary-donor [2]. These protein machines typically contain numerous cofactors arranged so as to enable the movement of the electron and the oxidizing equivalent away from the primary-donor in opposite directions [3], [4]. The resultant potential energy is then coupled to some chemical reaction or reactions which create a storable, diffusable form of chemical energy.
Chemists have made an intensive effort over the past forty years to recreate the charge separation capability of these devices in synthetic systems [5]–[11]. The minimal construct that can achieve long-lived charge separation contains a primary-donor along with two other cofactors to facilitate the separation and prevent the fast relaxation of the electron back to the groundstate of the primary-donor (see Figure 1A). This has been termed the photosynthetic cofactor triad (PCT) [7], [11]–[13]. Research efforts have aimed at engineering protein-based PCTs, either through the reengineering of natural proteins [14], [15] or de novo design of new artificial proteins [16], [17]. An optimal PCT construct will maximize the yield of the charge separated state and minimize energy loss while maintaining the state for as long as necessary before decaying to the groundstate. These performance metrics are intimately related to the microscopic ET rates which themselves are a function of the reduction potentials and the spatial arrangement of the three cofactors. Given the large expense and long time scale of these design efforts [2], [18]–[20], it is important to understand the optimal structure and properties of this molecule from the beginning of the design process. The key is to identify the set of microscopic parameters which when manipulated can effect maximum benefit during the design process.
(A) Molecular detail of an idealized artificial charge separation construct, a self-assembling de novo designed protein. (B) Discrete steps in the formation of the charge separated state: The primary-donor molecule P in the ground state configuration DPA absorbs a photon of the correct frequency to form
D
A, where
is the photoexcited state of P. The excited electron transfers to the acceptor cofactor, A, forming the intermediate state
DP+A−. The donor cofactor, D, then transfers an electron into P, resulting in the charge separated state
D+PA−. (C) Energy level diagram of the states in B. The k-variables denote the corresponding microscopic single-electron ET rates. In this scheme, the direct long range tunneling between D and A (i.e.,
) and the ‘thermal back reaction’ [33] between P and A (i.e.,
) are not considered. As explained in the main text, their magnitudes can be significantly suppressed without affecting the efficiency and yield.
Clearly, numerical simulations of the rate equations to map out the optimal set of ET rates for the entire construct involve a large parameter space [21]. For this reason there has been little theoretical analysis of the optimal structure and properties of the cofactor triad and its many sequential ETs. There are several semiclassical equations which predict ET rates that are well validated, in particular the semiclassical Marcus expression [22]–[26]. These are all complicated functions with a number of terms. The challenge in a complex system such as the PCT is to select the formalism which will give a meaningful analytical expression for its behavior. For example, Cho and Silby, in 1995, derived the time-dependent behavior of a molecular dyad structure composed of two cofactors and three states in the limit of a very large reduction potential difference between the excited state primary donor and the acceptor site [27].
In this work, we solve the rate equations analytically for a generic molecular triad with four states and obtain closed-form expressions relating the lifetime and yield of the charge separated state to the ET rates. The equations allow us to isolate the relevant ratios of rate constants that control the yield and the lifetime. These conditions are used to set bounds on the physical distances and potentials that makeup the PCT using a standard semiclassical model which incorporates Marcus theory for the dependence and an exponential drop-off of the ET rate with distance [28] as parameterized in the Moser-Dutton ruler [29], [30]. We report two major findings: first, that the highest yield occurs when the primary-donor cofactor is closest to the acceptor cofactor and second, that the highest yield and efficiency occurs when the absorption frequency of the primary-donor is more than twice the reorganization energy of the first electron transfer. Interestingly, we demonstrate that natural systems seem to obey these rules despite their much higher degree of complexity.
Methods
The basic PCT arrangement for long lived charge separation is depicted schematically in Figure 1A [7], and the microscopic steps leading to charge separation are shown explicitly in Figure 1B and energetically in Figure 1C: upon photoexcitation of the site of charge separation or primary-donor (P) to , the excited electron transfers to an acceptor molecule (A). A donor molecule (D) then transfers an electron to P, thus blocking the unproductive charge recombination via back electron transfer, to create a fully charge separated state,
D+PA−.
The state C principally relaxes back to the ground state, DPA, by one of two mechanisms: direct long ET between A− and D+, or a two step recombination process via the intermediate state,
DP+A−, followed by electron transfer from A− to P+, i.e, from state
G. When the molecules are arranged linearly, as in Figure 1A, the first short-circuit reaction mechanism is considerably suppressed, and is therefore neglected in our model. The ET rates for the two step process are
and
, respectively. The reverse transition back to the excited state
from A is also suppressed; below we demonstrate that the corresponding ET rate is exponentially suppressed for energy differences larger than 60–100 meV between
A and P+A−, which we show is much less than 10% of the output energy and therefore does not affect our general conclusions. Similarly, since the energy difference for the ET from P to A is in the eV range, thermal excitation from the groundstate to the acceptor is not considered at room temperatures.
The master equations describing the transitions between the states corresponding to the scheme in Figure 1C are:(1a)
(1b)
(1c)
(1d)
The transition rates between different configurations is governed by the microscopic ET rates. The specific ET involved is encoded in the subscript, for example, , denotes the ET rate for the
transition. The complete list of transitions are:
and
. As explained earlier, the
short-circuit and the reverse
transitions are suppressed in our scheme. The rate
is the combined direct relaxation rate, fluorescent and otherwise, from the photoexcited state
to its groundstate P.
Setting either of the two rates or
to zero in Equation 1 prevents the state C (the charge separated state) from decaying into the ground state G creating a steadystate at long times. A finite
and/or
will, on the other hand, force C to decay in a finite time, which we call the lifetime of the charge separated state. To study this decay and determine the population (yield) of state C, it is convenient to solve for the evolution of
analytically. The solution is presented in the next section.
Results
Analytical solution of the PCT
Our goal in this section is two-fold: to obtain the conditions under which a charge separated state can be maintained in a quasi-steadystate (QSS) for a desired length of time, determined, for example, by the optimal throughput rate, and to derive simple explicit formulas for the lifetime of the QSS and the maximum yield of C. To this end, we first analytically solve Equation 1 for . For the initial conditions, we note that the equations being homogeneous, the solutions scale with the initial population
, which is determined by the efficiency of the photoexcitation process. Hence, given a non-zero “source”
at
, we assume that
, i.e., they are initially unpopulated.
We first note that Equation 1a can be integrated to give . Substituting
into Equation 1c for C and after taking a second time derivative to eliminate I, we arrive at the following second order equation for
:
(2)where
(3)The source term on the right.
(4)
The boundary condition is obtained by setting
in Equation 1c. Since the coefficients appearing in Equation 2 are real, it can be written as:
(5)where the macroscopic rate constants
(6)are the roots of the algebraic equation:
(Negative roots are used to keep the rates
positive.) Using the following identity, where k is a constant,
(7)we rewrite Equation 5 as
(8)
Equation 8 is now easily integrated to obtain the solution for . Separating the constant source term as
, the time-dependent part
equals
(9)This completes our derivation of
.
A typical time evolution of is depicted in Figure 2. This graph exhibits several aspects characteristic of charge separation in a PCT [12]: an exponential buildup of state C with a rate constant
, followed by a QSS plateau region that decays exponentially at the rate
. The length of time for which the QSS persists is termed the charge separation lifetime (
), and the population of C at the plateau stage is termed the yield of charge separation (
). The rate
is the rate at which the state I is initially populated by
(see Equation 1b); I then subsequently populates C at the rate
. Physically, any system designed to spatially separate charges has to be able to transfer an electron from the photoexcited primary-donor
to the acceptor A (which is controlled by the rate
) before it decays back to the ground state at the rate
. We thus restrict our analysis to
(10)
is normalized by
, which we take to be unity. Rate constants are chosen as
, and
s
. Relevant timescales are labeled on the upper axis and are marked by vertical lines (see eqn:kpm for definitions of
). A central quasi-steadystate (QSS) plateau region is formed when these timescales are well separated. We define the decay time of the QSS,
, as the lifetime of the charge separated state. The horizontal line marks the yield,
, defined as the value of C in QSS. Analytical expressions for
and
are derived in Equations 14 and 17, respectively.
[We use the strong inequality () to emphasize at least an order-of-magnitude smallness.]
The determinants of QSS lifetime and yield
In the previous section, we observed that a QSS is reached at intermediate times provided(11)
When is significantly different from
and
, the lifetime of the QSS, and thus that of the charge separated state, can be defined as
. Our key observation is that
in Equation 6 can be made as small as we require by arranging either or both
and
to be sufficiently small. More precisely, we find that the constraints on the macroscopic rate constants in Equation 11 are satisfied if the microscopic rates obey:
(12)
We recognize that is a downhill transfer that can be fast or slow depending on the driving force of the ET determined by where it lies in the Marcus curve.
, on the other hand, involves an energetically uphill electron transfer which is always slower than its corresponding downhill transfer (i.e.,
). We therefore only demand a strong constraint for
compared to that for
in Equation 12.
To prove that the conditions in Equation 12 are sufficient to establish a QSS, we first show that independent of the magnitude of the term under the square-root in eqn:kpm, besides being positive, satisfies the stronger constraint
(13)
We show this by expanding the square-root in eqn:kpm and analyzing the behavior of for small and large
. For small
, we see that
and
, while for large
, they reduce to
and
. It is immediately clear that assuming
is sufficient to satisfy Equation 13 for all values of
. Note that, since
for large
, the second condition in Equation 11, namely
, is automatically satisfied if we restrict
. Hence, the conditions on the macroscopic rate constants in Equation 11 for a QSS to exist are met when the microscopic rate constants obey the constraints in Equation 12.
The importance of the observation that Equation 13 is satisfied for all values of is that it allows us to expand the square-root in Equation 6 to derive simple closed-form expressions for
and
. They can be analyzed to identify the key optimization parameters controlling the lifetime and yield of the charge separated state. Thus an almost exact expression for the lifetime
is obtained after expanding the square-root for the leading non-zero value of
(14)
Similarly, to find the yield , we first note in Equation 9 that the QSS behavior of
for times
and
is well approximated by the surviving third term denoted below as
.
(15)
(16)
To obtain the above expressions we used Equation 11 to justify keeping only the leading order terms in the expansion of the square-root in Equation 6, namely, and
.
denotes the fraction of the initial population of the photoexcited state
that remains after direct transition to the grounstate (predominantly fluorescence). Since
is the maximum value that
attains, namely, its value at the plateau (see Figure 2), before decaying to the groundstate, we define the yield,
, as:
(17)
The expressions for and
derived in Equations 14 and 17 are the main results of this section. They are compared in Figure 2 with the exact solution for
(Equation 9); the agreement is excellent. When combined with the conditions in Equation 12 for a QSS to exist, they provide all the necessary information for the design of highly optimized PCTs.
Maximizing the QSS yield and lifetime: microscopic constraints
The advantage of having formulas Equations 14 and 17 for and
is that they enable us to identify the primary control parameters that have the largest affect on the performance of the PCT. From Equations 10–17 we conclude that the relevant ratios of the five microscopic ET rates
are
(18)
They control the formation, yield and lifetime of the charge separated state. To make the dependence explicit, we rewrite Equations 14 and 17 as functions of the dimensionless ratios here:(19a)
(19b)where
and
are the normalized lifetime and yield, respectively. [Note that all the individual rate constants can be expressed in terms of an appropriate combination of the dimensionless ratios and
.]
In terms of these ratios, the conditions for the formation of a QSS in Equation 12 translates to(20)
Although no fundamental restrictions on and
exist, it follows from Equation 19b that the yield is substantially suppressed when they are
. Hence, to maximize the yield, we demand
(21)
The condition justifies the arguments leading to Equation 10 and therefore no new condition is obtained. Note that since
, a
also implies long life-times. We wish to emphasize that while restricting
and
to
is necessary for a QSS to form, the conditions on
and
ensure a high QSS concentration or yield and a long lifetime.
This completes our analysis of the fundamental constraints on the microscopic rate constants derived to maximize the yield and the lifetime of charge separated states in the QSS regime. It is model-free in the sense that we have not utilized any particular equation to calculate the ET rates and we have not determined any specifics in terms of spatial constraints or electron affinities. We have only derived the limits of optimal values for the rate constants themselves. We now discuss in detail the physical constraints that Equations 20 and 21 impose on the energetics and architecture of the cofactor triads.
Engineering guidelines for optimal PCTs
The physical characteristics of a PCT involve the differences in reduction potentials and distances between the cofactors. Such a construct consistent with the scheme in Figure 1C is shown in Figure 3 where the energies and the distances are marked explicitly. Two more relevant metrics, geometric (overall size) and energetic (efficiency), are introduced below.
The edge-to-edge separations of the D-P pair and the P-A pair are labeled as and
, respectively. The vertical axis is in the direction of increasing energy. The respective reduction potentials are defined in terms of the half-cell potentials,
and
(final minus the initial state). The driving force,
, for an uphill electron transfer, say, D+P
DP+, is defined as
. The corresponding driving force for the downhill transfer
. Given the driving forces and the distances, the rate constants are derived using the Moser-Dutton ruler. Note that the rate
, which we take to be the combined relaxation rate, fluorescent and otherwise, of the photoexcited state
to its groundstate P, does not follow the Moser-Dutton ruler and must therefore be given. An incoming photon with the correct frequency
is absorbed by P to create the photoexcited state
. We assume that the ET rates involving
can be expressed in terms of the reduction potential of the state P, i.e.,
, where
and
. Hence the input energy
. The output energy is the stored energy
in the charge separated state.
Separation distance.
We believe that a linear construct is better because it maximizes the distance between the acceptor and donor, thus preventing relaxation by short circuiting direct electron transfer between these sites. We note, however, that this ideal is not found in all natural systems. The maximum distance of charge separation is thus:(22)where
and
are the edge-to-edge separations of the P-A pair and D-P pair, respectively. Since the ET rates are determined primarily by the edge-to-edge distance [29], the width of P does not play a part in any of the microscopic rate constants delineated in our scheme in Figs. 1B and 3. We do not therefore include the actual width of the primary-donor site P, which even further helps to eliminate the short circuiting A
D electron transfer. Instead, we introduce a second distance parameter:
(23)that can be varied, keeping
fixed, to optimize the output.
Charge-separation efficiency.
An optimal light-activated charge separation construct should also maximize the available useful energy stored in the charge separated state D+PA− (see Figure 3). The energy stored in C can be expressed in terms of the driving force as
(see Figure 3). Defining the charge separation efficiency,
, as the ratio of the stored energy
to the input photon energy,
, we get:
(24)
Thus, consideration of the reduction potentials of each cofactor in the PCT adds a third performance metric , to
and
, to optimize.
The Moser-Dutton ruler.
In Equations 20 and 21 we identified and derived constraints on the ratios of the ET rate constants for optimal charge transfer in a PCT construct. These rates are determined by the individual values of the reduction potentials and the spatial separations of the cofactors. For this we need explicit equations that relate the rate constants to these variables. To this end, we use the Moser-Dutton ruler, a set of empirical equations that is widely used to simply and accurately predict ET rates in proteins [19], [29], [31]. The ruler predicts a rate constant,
, for a downhill electron transfer at room temperature, i.e., when the driving force
as
(25)
here is the reorganization energy in eV and the term in which it appears is the Marcus term which depicts the hyperbolic dependence of the ET rate on the driving force for electron transfer [23]. Reverse or uphill electron transfer is modified by a Boltzmann term to give:
(26)The transfer rates are predicted in units of
. The energies
are measured in eV, and
is the edge-to-edge distance between the cofactors in Å. All logs are to base 10. We note that the use of the Moser-Dutton ruler restricts our analysis from here on only to protein-based PCTs. Other PCTs can be analyzed in a similar way provided the appropriate expressions for the ET rates are used.
Using the Moser-Dutton ruler to express the microscopic variables in terms of the physical variables
of the PCT, we get:
(27a)
(27b)
(27c)
(27d)
(27e)
(Refer to Equations 22 and 23 for the definitions of and
and
.) Since
is the only dimensionful quantity we need, its form is given explicitly in Equation 27d. The last parameter
depends on
, which because it involves the combined relaxation rate, fluorescent and otherwise, of the photoexcited state
to its groundstate P, it cannot be estimated using the Moser-Dutton ruler. It is assumed to be a given quantity in our analysis. And finally, we have assumed that the reorganization energy
is the same for the entire construct. Only minor modifications to Equation 27c are necessary if this last assumption is relaxed. The qualitative features of our conclusions are robust, although certain quantitative predictions will have to be reworked.
Our final goal is to use the relations in Equation 27 to set general bounds on the physical makeup of a generic protein-based PCT to optimize its performance. We do this by adjusting the physical parameters (for a fixed size
of the construct) to satisfy the constraints in Equations 20 and 21 on the rates. This way, we are guaranteed that the performance metrics
are optimized. The efficiency metric
(defined in Equation 24) is then determined for a given
and
. Clearly, configurations with a large difference in
and
will ensure a high efficiency. It is therefore desirable to arrive at an independent set of constraints for the energies and the distances. We argue that this is mostly possible, primarily because the
variables depend only on the driving forces and not on the separation distances (see Equations 27a and 27b). Hence any condition on the
variables translates to conditions on
, independently of the distance. These considerations are analyzed in detail next.
Maximizing the QSS yield and lifetime: physical constraints.
In Equations 20 and 21 we identified two sets of conditions necessary for the creation of a QSS with a high charge separation yield and lifetime. We can now see what effects these constraints impose on the physical makeup of a PCT. In particular, our aim is to arrive at a set of independent constraints for the energies and distances.
Energy constraints - fundamental limits on the absorption wavelength of the primary-donor.
From Equation 27a we note that the ratio is a factor 10 smaller for approximately every
meV difference in the reduction potentials
. We conclude that the first constraint for the existence of a QSS,
stated in Equation 20, is satisfied provided:
(28)
Since depends exponentially on
, the strong inequality on
translates to a weak inequality on
. This simple observation is the key to the viability of our general mathematical analysis of a PCT. Small adjustments to the physical parameters can drive the system into the QSS regime and affect large changes in the performance metrics thus allowing us to arrive at a set of practically realizable bounds on the physical parameters.
From Equation 27b we see that the second condition in Equation 20, , is satisfied if
for photon energies
(29)
The low energy range results in a small
which reduces the efficiency as seen from Equation24, and is therefore not a useful range for our purpose.
Equation 21 presents the constraints necessary to maximize the yield . The energy dependent term for
in Equation 27c is formed out of the product of the sum and difference of the driving forces. The difference term is proportional to the efficiency
and is therefore always positive. To maintain
for all
, the sum must satisfy
. Since a large
increases the efficiency from Equation 24, for practical purposes it is sufficient to ensure that
. The two conditions for
can be combined as:
(30)where max
implies the larger of the two variables a and b. Thus, a
satisfies conditions for both high
and
, and a
will either result in a loss of efficiency or yield. We thus predict that high yield, high efficiency QSS formation in a triad requires that back electron transfer from A to P be so downhill as to be well into the Marcus inverted region (see Figure 4.) This greatly slows the rate of this ET, allowing the donor molecule time to re-reduce the primary-donor molecule.
A high yield, high efficiency QSS formation in a triad requires that back electron transfer from A to P be so downhill as to be well into the Marcus inverted region. To see this, we substitute in Equation 27b so that
, from which it immediately follows that the condition
is satisfied if the mean value
. The condition
was derived in Equation 20 to be a necessary condition for the formation of a QSS.
The upper limit is necessary to facilitate the electron transfer from the photoexcited primary-donor . This, however, has certain limitations: as
approaches the photoexcitation energy
, the back ET governed by the uphill rate
(which is set to zero in our scheme) will become relevant - see Figure 3. This will provide yet another route for the charge separated state to decay to the groundstate thus reducing the performance. Hence, we put an upper cut-off on
. To obtain this upper cut-off, we study the behavior of the ratio of the uphill vs downhill rates using the Moser-Dutton ruler and find that (similar to the ratio
in Equation 27a)
(31)
This clearly suggests that as long as the uphill driving force meV, the back reaction is exponentially suppressed. By direct simulation (not shown here), we find that our results obtained by setting
are unaffected if a difference of the order of
meV or higher is maintained. Although larger values will reduce the efficiency, a difference of 100 meV affects the efficiency by less than 10%.
Finally, we analyze in Equation 27e. Since it can be expressed in terms of the ratios
and
, no new energy constraints can be obtained. Instead, we show below that requiring
(Equation 21) provides useful insight into the geometrical construction of the PCT.
Distance constraints - optimal placement of the three cofactors.
Since (see Equation 27e), maintaining
can only be done at the expense of increasing
which is counterproductive as we require both
and
for maximum yield (Equation 21). An optimal compromise can be reached by adjusting the distance
. To see this, we write the
dependence explicitly in Equation 27e by combining it with Equations 33 and 34 to give
. Hence, once the energy terms are optimized for a fixed total length
, we predict that arranging for
(32)will significantly reduce
. Provided
, an order-of-magnitude suppression of
is achieved if
, i.e.,
. Hence,
can be fine-tuned to increase the yield.
There is a relatively simple physical explanation for our prediction. This is due in part to the fact that while electron transfer rates in proteins are strongly distance dependent, the equilibria are not. As noted in Equation 19b, there are three pairs of rate constants which determine quantum yield, of which the parameter involves electron transfers that are the forward and reverse of each other between P and D. Since ratios involving forward and backward rates for any particular triad are not dependent on distance, the
parameter is distance independent. On the other hand, the remaining two pairs,
and
, are distance dependent: the first is the initial ET between A and P which competes with the relaxation processes encompassed by
. In this case the actual rate, and therefore the distance, plays a direct role in the final yield. This constrains the primary-donor and acceptor cofactors to be close enough to out-compete
. The second is the competing pair of electron transfers which can occur from state I: reverse electron transfer from A to P forming G vs. the formation of C by electron transfer from D to P. This second pair is a weaker constraint given the fact that electron transfer from A to P is well into the Marcus inverted region. Viewed in this light it is not surprising that optimal arrangements move the primary-donor and acceptor closer together (see Figure 4 for a demonstration of this using commonly observed parameters). The full dependence of
and
on
are discussed further in the discussion.
Finally, regarding the total size : the
dependence of
and
in Equations 19a and 19b are fully governed by the rate constant
defined in Equation 27d. It follows that while the lifetime grows with
as
, the yield is suppressed as
.
This completes our analysis of the fundamental constraints on the physical parameters for an optimized PCT. The guidelines listed in Equations 28–32 are relevant to any protein based PCTs where the Moser-Dutton ruler is applicable.
Discussion
In Equations 28–32, we arrived at a set of constraints on the physical makeup of a high performance PCT capable of creating and maintaining a high yield charge separated state in a QSS for a significant length of time. We now apply these results to study the efficiency of such PCTs.
While analysis of many PCT constructs focus on the charge separation lifetime, [6], it is clear that the arrangement which gives the longest possible lifetime will oftentimes make a less efficient solar energy conversion component. The charge separated state must only last as long as the mechanism for extracting this potential energy requires. After this condition is met, factors which maximize the yield and efficiency of QSS formation (
and
) are paramount, as these determine the eventual power output. Thus, in the following we fix the lifetime
ms in our analysis.
In Figure 5, we start with a set of parameters that are typical of photonic energy transduction in proteins: The reorganization energy varies in the range of 0.7 to 1.4 eV for cofactors bound within typical native proteins, with
taking higher values with decreasing hydrophobicity in the local cofactor environment [19]. Light frequencies are in the near infrared and higher. We use
eV and
eV (690 nm) as a starting point. Note that
is satisfied consistent with Equation 29. To satisfy the energy constraint in Equation 30, we choose the range
eV. [Note that the highest value for
is 100 meV less than
for the reasons described following Equation 31.] Electron tunneling distances in biology range from 4–14 Å, with the shorter limit that of Van der Waals contact and the longer setting a millisecond time limit on electron transfer rates [29], [31]. Hence, the sum of the distances between the cofactors are typically in the range
; we use
. Instead of specifying the final parameter,
, we specify the QSS lifetime
ms and solve Equation 19a for
for different values of
and
(for a fixed
). For self-consistency, we check that the
values obtained using these parameters all satisfy Equation 28 in the optimal range.
The following parameters are fixed: The light frequency eV, the reorganization energy
eV, the size
, and the relaxation rate at
ns. The driving force
for each choice of
and
is obtained by solving Equation 19a setting
ms. All the relations necessary to invert Equation 19a for
can be found in Equation 27. (A) Illustration of possible changes in
made while keeping
fixed. (B) Predictions for
made using differing values of
plotted as a function of
. Open symbols are used to indicate
and solid symbols for
. Note that in each case, a maximum
of
is achieved at some optimal
. (C) Re-plot of the same data explicitly showing the variation in yield and efficiency as
and
are varied.
is defined in Equation 24. Legends mark different
values varied in
increments evaluated at the same points as in (B). The
value at the maximum are labeled explicitly.
Several things are immediately apparent upon inspection of the data in Figure 5. First, the yield in Figure 5B is strongly dependent on
, with a maximum value in each case being reached at a configuration where the primary-donor P is closer to the acceptor site than the donor site as predicted in Equation 32. Second, the efficiency
in Figure 5C is considerably enhanced as
is increased closer to the maximum value
.
To gain further insight on the dependence of the metrics and
on the size
and self-relaxation (fluorescence) rate
, we study the variation of the optimized PCT metrics, i.e., the metrics obtained after adjusting
for maximum yield (i.e, we track the location of maximum yield in Figue 5 as
and
are varied). We find that once optimized for
, the two metrics
and
are mostly orthogonal in terms of their determinants. This is demonstrated by Figure 6A where the maximum yield is seen to be strongly suppressed with increasing
while the efficiency at maximum yield is robust. The former is due to the decrease in
caused by the increase in distance, resulting in a smaller partitioning factor
(Equation 16). As Figure 6B demonstrates, this loss can be alleviated by decreasing the rate of self-relaxation,
, of the excited primary-donor
.
For each point, and
are set to the values that maximizes
within the limits set by
and
as in Figure 5.
is strongly sensitive to the separation distance,
, and
is primarily sensitive to
. (B) The decrease in the maximal values of
with increasing
plotted for different values of
and
. At large values of
the optimized yield is primarily dependent on
.
Conclusions
We have generated an analytical solution for the time behavior of the PCT and explored its dependence on the architecture, the reduction potentials of its components, and the absorption frequency of the primary-donor cofactor. Our primary findings are two: First, that a high efficiency, high yield PCT will have an absorption frequency more than twice the reorganization energy of the first electron transfer, and second, that the distance metric (the relative distance of the acceptor and the donor from the primary-donor) plays an important role in the determination of the yields.
We remark that our use of the Moser-Dutton ruler clearly does not capture all the subtle details of protein ET reactions. For example, the assumption that ET rates drop-off exponentially with distance ignores possible effects of the intervening medium when present [32]. Secondly, some experimental results point to an asymmetric Marcus curve [33], that is known to be relevant when certain high-frequency intramolecular vibrations are active, are not accounted for. It is a simple matter to include these effects into Equations 20 and 21, which as we noted earlier are model-free, they provide fundamental constraints on the microscopic rate constants derived to maximize the yield and the lifetime of the charge separated states in the QSS regime. Further work is needed to study the quantitative effects these corrections will have on our conclusions. We show below, however, that our analysis incorporating the simple Moser-Dutton ruler is able to successfully explain a number of remarkable features observed in Nature.
Implications for natural systems
The first implication sets a long-wavelength limit or red-edge [34] for efficient solar energy conversion. It is estimated that the reorganization energies scale from 0.7 eV to 1.4 eV for typical proteins and cofactors bound in local environments varying from less to more hydrophobic [19]. These values predict that the longest effective wavelength for solar energy conversion is about 890 nm, correlating to the lower value. Longer wavelengths are possible, but this would necessitate a loss in either yield or energy. Our analysis is primarily limited by the fact that we include only three discrete sites for electron localization. Natural photosynthetic proteins have additional acceptor molecules, which enable the stepwise diffusion of the electron further away from the primary-donor. Their effect on the behavior of the PCT is unclear.
However, we do note in Figure 7 that at present the observed wavelength limits for oxygenic photosynthesis, an energetically demanding process in that it must create oxidizing potentials high enough to oxidize water [2], are within the values [35] we predict. Furthermore the limits observed for charge separation in any natural organism, those from bacterial photosynthesis [34], are within 150 nm, or 160 meV, of that predicted by our model, as shown in Figure 7. This suggests that efforts to re-engineer natural systems to utilize longer wavelengths of light, and thus garner a greater fraction of the solar emission spectrum [36] will result in considerable losses of either yield or conversion efficiency to do so.
Photon energies smaller than cause a loss in either yield or energy storage efficiciency. For each point, the value of
used maximizes
within the constraints set by
and
as in Figure 5. The
values are calculated as
where
and 0.4 eV. Wavelength limits of natural systems depicted above the axis are taken from [34].
The other prediction is that yields are maximized by placing the primary-donor closer to the acceptor than the donor cofactor. This again may be altered when further discrete electron binding sites are added to the construct, but we again note that for the limited subset of photosynthetic proteins which have structures which include the donor cofactor, the primary-donors are indeed positioned in this manner (Figure 8).
Primary donors P are colored green with the donor D and acceptor A cofactors colored red in each structure. Distances are measured edge-to-edge. (left) Reaction Center complex from Blastochloris viridis (PDB ID 2X5U) [37], (center) Photosystem II from Thermosynechococcus elongates (PDB ID 3BZ1) [38], and (right) is Photosystem I Plastcyanin complex from Prochlorothrix hollandica created by computational docking [39]. Images and distances were created using Pymol.
Engineering parameters for artificial charge separation constructs
This analysis sets out the optimal physical composition of an artificial protein-based charge separation construct. It demonstrates that efficient, high yield charge separation can be engineered with values that are both feasible to engineer and within the ranges observed in natural systems. It further identifies the molecular properties which are important targets for engineering improved PCTs. Principle among these is the control of the reorganization energy,
. A smaller value of
will enable the utilization of longer wavelengths of light, enabling the possible utilization of a larger fraction of the solar emission spectrum. There have been very few experimental determinations of
values within a protein, and even less work on manipulating or optimizing its magnitude. However, it is apparent that it will be important to be able to manipulate this parameter effectively.
While we have identified as a critical parameter for high yield constructs, at smaller cofactor separation distances the tolerances for
are very small. The large changes engendered by even a
change in
make high yield small constructs difficult to create. Larger constructs have broader
maxima, but in this case yields are reduced due to unproductive primary-donor relaxation rates, or
(see Equation 16). Consequently the creation of primary-donor cofactors with longer excited state lifetimes is paramount. As Figure 6B demonstrates, longer lifetime cofactors will enable significantly larger constructs, and thus eases the optimization of
. We further note that while our analysis uses the protein-specific Moser-Dutton ruler, which models coupling as an exponential drop-off in electron transfer rate with distance, the model-free portion of this analysis leading to Equations 20 and 21 are applicable to synthetic constructs as well. The distance dependence in these systems depends strongly on the nature of the bridging elements which connect the triad cofactors, and the analysis presented here predicts that the coupling must in general be as strong as possible between the primary-donor and acceptor. In a protein this means putting them close together since the “bridge” is always the same. In a bridged system this means choosing a bridge that maximizes the coupling, but it doesn’t necessarily mean bringing them closer together.
Acknowledgments
RLK would like to thank Art Van der Est, Brock University Chemistry department, Thomas Haines, CCNY Chemistry department, and Marilyn Gunner, CCNY Physics department, for helpful suggestions and discussion pertaining to this manuscript. WL and AP would like to thank the Department of Cell & Molecular Biology and the Department of Physics and Engineering Physics at Tulane University for their kind hospitality.
Author Contributions
Conceived and designed the experiments: AP LM RLK. Performed the experiments: AP LM WL ACM RLK. Analyzed the data: AP LM WL ACM RLK. Contributed reagents/materials/analysis tools: AP LM WL ACM RLK. Wrote the paper: AP LM RLK.
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