† Corresponding author. E-mail:
Project supported by the National Natural Science Foundation of China (Grant Nos. 11875042 and 11505114), the Innovation Foundation of Shanghai Aerospace Science and Technology, China (Grant No. SAST2018-22), and the Course of Scientific Research Project of Shanghai University for Science and Technology (Grant No. 13002100).
The mammals can not only entrain to the natural 24-h light–dark cycle, but also to the artificial cycle with non 24-h period through the main clock named suprachiasmatic nucleus in the brain. The range of the periods of the artificial cycles which the suprachiasmatic nucleus (SCN) can entrain, is called entrainment range reflecting the flexibility of the SCN. The SCN can be divided into two groups of neurons functionally, based on the different sensitivities to the light information. In the present study, we examined whether the entrainment range is affected by this difference in the sensitivity by a Poincaré model. We found that the relationship of the entrainment range to the difference depends on the coupling between two groups. When the coupling strength is much smaller than the light intensity, the relationship is parabolic-like, and the maximum of the entrainment range is obtained with no difference of the sensitivity. When the coupling strength is much larger than the light intensity, the relationship is monotonically changed, and the maximum of the entrainment range is obtained when the difference is the largest. Our finding may provide an explanation for the exitance of the difference in the sensitivity to light-information as well as shed light on how to increase the flexibility of the SCN represented by widening the entrainment range.
Behavioral and physiological rhythms in the living beings are regulated by the main clock, suprachiasmatic nucleus (SCN) of the brain.[1–5] One main function of the SCN is to entrain the body rhythms to the environmental light-darkness cycle. The SCN can entrain to not only the natural 24-h light–darkness cycle but also to the artificial non 24-h light–darkness cycles. For example, a Sudanian grass rat can entrain from 22.9 h (lower limit entrainment) to 25.3 h (higher limit entrainment), a southern flying squirrel can entrain from 23.5 h to 24.9 h, and a human being can entrain from 21.5 h to 28.6 h.[6–9] The range between the lower limit entrainment (LLE) and upper limit entrainment (ULE) is called entrainment range, which reflects the flexibility of the SCN, i.e., the larger the entrainment range is, the larger the flexibility is. The entrainment range is often represented by the LLE in the mathematical model, provided that the LLE and the ULE are symmetrical to 24 h.[6]
The entrainment range is one kind of collective behaviors of about 2.0 × 104 SCN neurons.[5,6] The SCN neurons can be divided into two distinct groups, i.e., the ventrolateral part (VL) and the dorsomedial part (DM), based on the different functions. The VL containing around 25% SCN neurons, and the DM composed of the rest 75% SCN neurons, differ in the sensitivity to the photic information.[9–14] Most of the VL neurons can directly receive the photic information from the retina, while most of the DM neurons can not. The DM neurons receive the information from the VL neurons. Additionally, the coupling is directed between VL and DM due to the neurotransmitters and the directed synapses. The neurotransmitters differ between the VL and the DM.[15–17] The VL neurons produce the vasoactive intestinal polypeptide (VIP) which is absorbed by both the VL and the DM neurons, and the DM neurons are coupled through the arganine vasopressin (AVP). The VL neurons dominate the DM neurons also because the synapses mostly project from the VL. Therefore, the coupling strength from the VL to the DM is larger than the other directions.[5]
This difference in the sensitivity to the photic information plays a key role in the function of the SCN, such as recovery from the jet-lag. In particular, in the beginning days after the jet-lag, the VL switches to the new environmental time immediately because the VL neurons are directly sensitive to the light information, while the DM remains the previous time information. Due to the directed coupling, the DM is gradually synchronized to the VL and reaches the new environmental time in the following days.[13,18] Another experiment is that exposed to a 22-h light–dark cycle, the dissociation between the VL and the DM emerges.[8,11] Two periodic components of behavioral activities are observed, i.e., one component of 22-h period, which is equal to the period of the external cycle, is controlled by the VL, and the other component of about 24-h period, which is close to the endogenous period of the SCN, is regulated by the DM.
Recently, by contrary, it has been found that the light-responsive neurons are not located in the specific subregion of the SCN.[19,20] Not only the VIP neurons receive the light information from the retina but also the AVP neurons do. Therefore, both the VL and the DM neurons are sensitive to the light information, directly. Interestingly, the study implied that the VIP neurons can be activated at low light levels whereas AVP neurons require higher light intensities. Accordingly, the sensitive strength to light information differs between the VL neurons and the DM neurons, i.e., the strength is larger in the VL neurons than the DM neurons.
In all previous modeling studies as best as we know, all the SCN neurons were assumed to be sensitive to the photic information with the same strength,[16,21–23] or only the VL neurons are light-sensitive but the DM neurons are light-insensitive.[9,24] Thus far, it is unknown about the effects of the difference in the sensitivity to the light-information. In the present study, we will examine the effects of this difference on the entrainment range based on a Poincaré model. The rest of this article is organized as follows. In Section
In the present study, the Poincaré model composed of N neuronal oscillators is introduced to mimic the SCN network exposed to an artificial external light–dark cycle.[24–32] For each neuronal oscillator, there are two variables, i.e., x and y. The oscillators are coupled through the mean field F to form an all-to-all network. The model is described as follows:
The coupling term and the light-input term are giGF and liL sin (Ω t), respectively, where G and L are coupling strength and light intensity, respectively. The key parameters gi and li depend on the region of the neurons, which represents the sensitivity to the mean field and the sensitivity to the light information for oscillator i, respectively. For simplicity, the SCN neurons are divided into two groups to represent the VL and the DM. We assume that for the neurons within the same group, the values of gi or li are the same. If the neuron i is located in the first group of the SCN, i.e., 0 < i ≤ N1, we let gi = p and li = q, and if the neuron j is located in the second group of the SCN, i.e., N1 < j ≤ N, gj = (N − N1p)/(N − N1), and lj = (N − N1q)/(N − N1), where the parameters p and q satisfy
The key parameter q represents the difference in the sensitivity to the photic information between the two groups. If q = 1, there is no difference. If q > 1 (or q < 1), the sensitivity of the first group is larger than the second group (or vice versa). Similarly, p represents the direction of the coupling between the two groups. If p = 1, the coupling is undirected. If p > 1 (or p < 1), the VL dominates the DM (or vice versa). In the results, we will examine whether the difference represented by q affects entrainment range (represented by the LLE). For the numerical simulation, the parameters are set as a = 1, γ = 1, and τ = 24. Without special statement, the number is N = 2, i.e., one oscillator represents the VL and the other is DM, and the deviation is β = 0.
Figure
In this section, we will examine the relationship of LLE to the sensitivity q with given values of G and L in Figs
The parameters are set as G = 0.1, and L = 0.05, 0.1, and 0.15 in Fig
Next, we also examine the cases of G < 0.1 and G > 0.15, respectively. The parameters are set as G = 0.05 in Fig.
The SCN neurons are nonidentical in the intrinsic periods.[33] We examine whether the main results are affected by this nonidentity. Figure
For simplicity, we let N be 2, i.e., one oscillator represents the first group and the other represents the second group. Equation (
When all the oscillators are entrained to the external cycle, we obtain
Generally speaking, ΩLLE depends on the slower oscillator with smaller Ω. Mathematically, ΩLLE of the SCN is achieved through the interplay between the coupling terms and light terms. The light terms are positive which contributes to ΩLLE. ϕ1 and ϕ1 + α reflect the “absorption efficiency” of the light information. When ϕ1 = ϕ1 + α = π, where α is zero, the efficiency is perfect. However, the value of α may not be zero which depends on the coupling term. The coupling term influences ΩLLE through the phase difference α. If α is zero, both C1 and C2 are zero. If α is not zero, one of C1 and C2 is positive and the other is negative. In the following discussions, we will discuss the influence of G1,2 and L1,2 on ΩLLE, where G1 = pG, G2 = (2 − p)G, L1 = qL, and L2 = (2 − q)L, under two limited conditions.
If the coupling is very large (G ≫ L, such as in Fig.
In order to achieve ΩLLE, the light term should be positive and maximum. Therefore, cos ϕ1 is equal to −1, and equation (
If G1 = G2 = G, i.e., p = 1, the coupling is symmetrical, and the amplitudes are identical from the first and third equations of Eq. (
If G1 = 0, i.e., G2 = 2G and p = 0, equation (
If G ≪ L, the contribution of the coupling terms C1 and C2 to ΩLLE is a smaller term, compared to the light term. Let C1 = δ1 and C2 = δ2, where δ1,2 is a small term. Then the second and fourth equations of Eq. (
Combined the analytical results of the two limited cases of G ≫ L and G ≪ L, we conclude that in the case of G ≫ L, qc = 2 for p < 1, and in the case of G ≪ L, qc = 1 for p < 1. This implies that if G is around L, qc is between 1 and 2, and with the increase of L or the decrease of G, qc decreases in the range of 2 to 1. The cases of p > 1 are symmetrical to the cases p < 1, i.e., in the case of G ≫ L, qc = 1 for p > 1, and in the case of G ≪ L, qc = 2 for p > 1.
In the present study, we examined the relationship of the entrainment range (represented by the LLE) to the sensitivity (q) to the photic information, where q ≠ 1 represents there exists difference of sensitivity between the VL and the DM. We found that the relationship depends on the coupling strength. In particular, when the coupling strength (G) is much smaller than the light intensity (L), the relationship is parabolic-like, and the maximum of the entrainment range is obtained when there is no difference (q = 1). This relationship is independent of the direction of the coupling (represented by p). When the coupling strength is much larger than the light intensity, the relationship is monotonically decreasing or increasing if there is directed coupling (p ≠ 1), and the maximum of the entrainment range is obtained when the difference is the largest (q = 2 for p < 1 and q = 0 for p > 1). When the coupling strength is close to the sensitive strength, the relationship is parabolic-like if there is directed coupling (p ≠ 1), and the maximum of the entrainment range is obtained when the difference is moderate (1 < q < 2 for p < 1 and 0 < q < 1 for p > 1).
In a recent experiment, both the VL neurons and the DM neurons are sensitive to light information, and the sensitive strength to the light information for the VL neurons is larger than the DM neurons.[19] However, the benefits of the difference in the sensitive strength are unknown so far. In the present study, we found that this difference may lead to large entrainment range which reflects the flexibility of the SCN to the external light–dark cycle. Our finding may provide an explanation for the exitance of the difference in the sensitivity to light-information, as well as shed light on how to increase the flexibility of the SCN represented by widening the entrainment range.
For simplicity, the SCN network is assumed to be an all-to-all network represented by the mean-field, and no noise or stochasticity is considered in the circadian signaling in the present study. Additionally, the Poincaré model is a genetic model which is oversimplification. In the future, it is worth rebuilding a more realistic model for the SCN, i.e., a Goodwin model,[34] where the noise in the circadian signaling,[35–37] the amplitude difference between the neurons,[38] and the network structure, such as a small-world network, a scale-free network, and a two-layer network[39–43] are considered.
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