| Literature DB >> 21949504 |
Julia Makarova1, José M Ibarz, Valeri A Makarov, Nuria Benito, Oscar Herreras.
Abstract
Local field potentials (LFPs) capture the electrical activity produced by principal cells during integration of converging synaptic inputs from multiple neuronal populations. However, since synaptic currents mix in the extracellular volume, LFPs have complex spatiotemporal structure, making them hard to exploit. Here we propose a biophysical framework to identify and separate LFP-generators. First we use a computational multineuronal model that scales up single cell electrogenesis driven by several synaptic inputs to realistic aggregate LFPs. This approach relies on the fixed but distinct locations of synaptic inputs from different presynaptic populations targeting a laminated brain structure. Thus the LFPs are contributed by several pathway-specific LFP-generators, whose electrical activity is defined by the spatial distribution of synaptic terminals and the time course of synaptic currents initiated in target cells by the corresponding presynaptic population. Then we explore the efficacy of independent component analysis to blindly separate converging sources and reconstruct pathway-specific LFP-generators. This approach can optimally locate synaptic inputs with subcellular accuracy while the reconstructed time course of pathway-specific LFP-generators is reliable in the millisecond scale. We also describe few cases where the non-linear intracellular interaction of strongly overlapping LFP-generators may lead to a significant cross-contamination and the appearance of derivative generators. We show that the approach reliably disentangle ongoing LFPs in the hippocampus into contribution of several LFP-generators. We were able to readout in parallel the pathway-specific presynaptic activity of projection cells in the entorhinal cortex and pyramidal cells in the ipsilateral and contralateral CA3. Thus we provide formal mathematical and experimental support for parallel readout of the activity of converging presynaptic populations in working neuronal circuits from common LFPs.Entities:
Keywords: computational neuronal model; independent component analysis; local field potentials; neuronal circuits
Year: 2011 PMID: 21949504 PMCID: PMC3171694 DOI: 10.3389/fnsys.2011.00077
Source DB: PubMed Journal: Front Syst Neurosci ISSN: 1662-5137
Figure 1Scaling single neuron currents to macroscopic LFPs and their separation by independent component analysis (ICA). (A) The problem of the mixing of currents in the volume constituting LFPs is simplified in regular structures. A synaptic input to a single neuron (blue arrows in subplot 1) produces quadrupole-like extracellular fields (blue and red isopotential curves) and currents (dashed curves). Due to the spread of currents in the extracellular volume, the field potentials generated by several synapses in different domains overlap strongly (panel 2), but in regular structures with stratified inputs the simultaneous activation of many neurons produce laminar field potentials that are specific for each input (panel 3), and they can be captured by fix groups of electrodes within linear recording arrays (rec). a and b schematically illustrate the multicellular connection of axons from extrinsic neurons and local interneurons, respectively. (B) An irregular series of inhibitory synaptic currents (panel 1, unit, Isyn) is injected to a dendritic band (blue compartments) of one model neuron enabling the calculation of the compartmental membrane potentials (Vms) and currents (Ims) along the neuron anatomy. The Ims of the single neuron are replicated in a CA1 aggregate (subplot 2, population) of model neurons to build the LFPs, which were estimated along a 16-point recording track (rec). LFPs are stratified along the main Z-axis of single units (VZ) and they can be analyzed by current-source density analysis (CSD), or decomposed into their contributing generators by ICA. The ICA reports only one generator, with its spatial distribution and time course. The second spatial derivative of the spatial distribution, V”(z), renders the location of active currents (in yellow/red), which match the locus of activated synapses. The time course of the ICA-derived LFP-generator precisely matches the injected synaptic current on each single neuron. Cbl, cell body layer; bas, basal dendrites; ap, apical dendrites.
Figure 2Optimal performance of the ICA to disentangle multiple synaptic inputs in mixed LFPs. (A) An example of LFPs obtained by combining four irregular time series of inhibitory (G1, G3) and excitatory (G2, G4) synaptic inputs in different neuron domains [see location in (C)]. (B,C) The ICA returned four significant generators whose time course (B) and spatial distributions (C) matched those obtained when analyzing single generator LFPs (labeled in a color code). (D) Left: estimation of the wavelet coherence of the ICA-derived generator’s time course and the corresponding dynamics of each original pathway-specific generator. Temporal fidelity of the time courses is kept up to the millisecond time scale. Right: index of cross-contamination of each generator to all others. Note the low cross-contamination level. (E,F) The LFP-generators require a different minimum duration of LFPs for the ICA to separate them optimally. The plots correspond to seven different segments of increasing duration for two of the generators [G1 and G4, (E)]. Note the faster convergence of the spatial curves in G4. The spatial jitter was associated to the degree of coincidence of each generator with other inputs. For durations longer than 3 s all generators showed acceptable spatial accuracy (F).
Figure A1Schemes of the parameters employed for the synaptic input combinations. All cells in the aggregate were synaptically activated over the dendritic compartments contained within a spatial band (see details in Table A1) to mimic the stratification of inputs from different presynaptic populations. The relative position of inputs along the somato-dendritic axis over the dummy neuron is scaled with the prototype CA1 pyramidal model cell. The numbers below indicate the different simulations for the particular synaptic input configuration.
Parameters of the synaptic inputs employed in the simulation of LFPs.
| EXP | Name | #Gs | Type of input | Somato-dendritic band of inputs (μm) | Mean input frequency (Hz) | Input intensity (nS) |
|---|---|---|---|---|---|---|
| 1 | 3_14 Hz | 2 | GA + GB | (+150:−100) (−100:−400) | (6) (14) | (60) (30) |
| 2 | 3_6 Hz | 2 | GA + GB | (+150:−100) (−100:−400) | (14) (6) | (60) (30) |
| 3 | 4_6 Hz | 2 | GA + GB | (+50:−200) (−50:−350) | (6) (14) | (60) (30) |
| 4 | 4_14 Hz | 2 | GA + GB | (+50:−200) (−50:−350) | (14) (6) | (60) (30) |
| 5 | 5_6 HzA1 | 2 | GA + GB | (+150:−100) (−100:−400) | (6A1) (6A2) | (60) (40) |
| 6 | 5_6 HzA2 | 2 | GA + GB | (+150:−100) (−100:−400) | (6A2) (6A1) | (60) (40) |
| 7 | 6_6 HzA1 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A1) (6A2) | (60) (40) |
| 8 | 6_6 HzA2 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A2) (6A1) | (60) (40) |
| 9 | 7_6 HzA3 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A3) (6A4) | (60) (30) |
| 10 | 8_6 Hz | 2 | GA + GB | (+50:−200) (−50:−350) | (6) (6) | (60) (30) |
| 11 | 8_6 Hzret | 2 | GA + GB | (+50:−200) (−50:−350) | (6del) (6) | (60) (30) |
| 12 | 8_6 HzA1 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A1) (6) | (60) (30) |
| 13 | 8_6 HzA11 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A11) (6A11) | (60) (30) |
| 14 | 8_6 HzA12 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A11) (6A12) | (60) (30) |
| 15 | 8_6 HzA13 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A11) (6A13) | (60) (30) |
| 16 | 8_6 HzA14 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A11) (6A14) | (60) (30) |
| 17 | 8_6 HzA15 | 2 | GA + GB | (+50:−200) (−50:−350) | (6A11) (6A15) | (60) (30) |
| 18 | 9_6 Hz | 2 | GA + GB | (+150:−100) (−100:−400) | (6) (6) | (60) (30) |
| 19 | 12_15.15 Hz | 2 | GB + GB | (+50:−200) (−50:−350) | (15.15) (6.33) | (30) (30) |
| 20 | 12_6 HzA1 | 2 | GB + GB | (+50:−200) (−50:−350) | (6A1) (6A2) | (30) (30) |
| 21 | 13_15.15 Hz | 2 | GB + GB | (+150:−100) (−100:−400) | (15.15) (6.33) | (30) (30) |
| 22 | 13_6 HzA1 | 2 | GB + GB | (+150:−100) (−100:−400) | (6A1) (6A2) | (30) (30) |
| 23 | 10_15.15 Hz | 2 | GA + GA | (+50:−200) (−50:−350) | (15.15) (6.33) | (60) (60) |
| 24 | 10_6 HzA1 | 2 | GA + GA | (+50:−200) (−50:−350) | (6A1) (6A2) | (60) (60) |
| 25 | 11_15.15 Hz | 2 | GA + GA | (+150:−100) (−100:−400) | (15.15) (6.33) | (60) (60) |
| 26 | 11_6 HzA1 | 2 | GA + GA | (+150:−100) (−100:−400) | (6A1) (6A2) | (60) (60) |
| 27 | 14_15.15 Hz | 2 | GA + GA | (−150:−250) (−50:−350) | (15.15) (6.33) | (60) (60) |
| 28 | 14_6 HzA1 | 2 | GA + GA | (−150:−250) (−50:−350) | (6A1) (6A2) | (60) (60) |
| 29 | 24_3 | 2 | GA + GA | (+250:+150) (−350:−450) | (15A1) (15A2) | (30) (30) |
| 30 | 24_4 | 2 | GA + GA | (−150:−250) (−200:−300) | (15A1) (15A2) | (30) (30) |
| 31 | 16_6.33 Hz | 2 | Glu + Glu | (+250:+30) (−50:−300) | (15.15) (6.33) | (8) (8) |
| 32 | 16_20 HzA1 | 2 | Glu + Glu | (+250:+30) (−50:−300) | (20A1) (20A2) | (8) (8) |
| 33 | 16_20 HzA1(a | 2 | Glu + Glu | (+250:+30) (−50:−300) | (20A1) (20A2) | (4) (4) |
| 34 | 16_20 HzA1(b | 2 | Glu + Glu | (+250:+30) (−50:−300) | (20A1) (20A2) | (8) (8) |
| 35 | 16_20 HzA1(c | 2 | Glu + Glu | (+250:+100) (−100:−350) | (20A1) (20A2) | (8) (8) |
| 36 | 16_20 HzA1(d | 2 | Glu + Glu | (+250:+30) (−50:−300) | (20A1) (20A2) | (8) (8) |
| 37 | 23_3 | 2 | Glu + Glu | (+250:+150) (−350:−450) | (30A1) (30A2) | (8) (8) |
| 38 | 23_4 | 2 | Glu + Glu | (−150:−250) (−200:−300) | (30A1) (30A2) | (8) (8) |
| 39 | 17_6.33 Hz | 2 | GA + Glu | (+150:−100) (−250:−400) | (6.33) (15.15) | (60) (12) |
| 40 | 17_20 HzA1 | 2 | GA + Glu | (+150:−100) (−250:−400) | (20A1) (20A2) | (60) (12) |
| 41 | 17_20a | 2 | GA + Glu | (+250:+50) (−250:−400) | (20A1) (20A2) | (60) (12) |
| 42 | 17_20b | 2 | GA + Glu | (+200:−1) (−250:−400) | (20A1) (20A2) | (60) (12) |
| 43 | 17_20c | 2 | GA + Glu | (+150:−100) (−350:−500) | (20A1) (20A2) | (60) (12) |
| 44 | 18_6.33 Hz | 2 | GB + Glu | (−50:−250) (−250:−400) | (6.33) (15.15) | (30) (12) |
| 45 | 18_6 HzA1 | 2 | GB + Glu | (−50:−250) (−250:−400) | (6A1) (20A1) | (30) (12) |
| 46 | 20_6.33 Hz | 2 | GB + Glu | (−50:−500) (−350:−500) | (6.33) (15.15) | (30) (12) |
| 47 | 20_6 HzA1 | 2 | GB + Glu | (−50:−500) (−350:−500) | (6A1) (20A1) | (30) (12) |
| 48 | 21_1 | 3 | Glu + Glu + Glu | (−50:−300) (−250:−400) (−400:−500) | (6A1) (6A2) (6A3) | (6) (7) (8) |
| 49 | 21_2 | 3 | Glu + Glu + Glu | (−50:−300) (−250:−400) (−400: −500) | (6A1) (6A2) (8) | (6) (7) (8) |
| 50 | 21_3 | 3 | Glu + Glu + Glu | (−50:−300) (−250:−400) (−400:−500) | (6A1) (8) (6A3) | (6) (7) (8) |
| 51 | 21_4 | 3 | Glu + Glu + Glu | (−50:−300) (−250:−400) (−400:−500) | (8) (6A2) (6A3) | (6) (7) (8) |
| 52 | 27_1 | 3 | GA + Glu + GB | (−50:−300) (−250:−400) (−400:−500) | (20A1) (20A2) (14) | (60) (12) (30) |
| 53 | 27_2 | 3 | GA + GB + Glu | (−50:−300) (−250:−400) (−400:−500) | (6A1) (6A2) (20A1) | (60) (40) (12) |
| 54 | 27_3 | 3 | Glu + Glu + GB | (−50:−300) (−250:−400) (−400:−500) | (20A1) (20A2) (14) | (8) (8) (30) |
| 55 | 27_3b | 3 | Glu + Glu + GB | (+150:−100) (−250:−400) (−100:−400) | (20A4) (20A5) (14) | (8) (8) (30) |
| 56 | 28_1 | 4 | Glu + Glu + GB + GB | (+250:+30) (−50:−350) (+50:−200) (−50:−350) | (6.33) (15.15) (6A1) (6A2) | (8) (8) (30) (30) |
| 57 | 28_1b | 4 | Glu + Glu + GB + GB | (+250:+30) (−50:−350) (+50:−200) (−50:−350) | (6.33) (15.15) (6A3) (6A4) | (8) (8) (30) (30) |
| 58 | 28_2 | 4 | Glu + Glu + GA + GA | (+250:+150) (−350:−450) (−150:−250) (−200:−300) | (30A1) (30A2) (15A1) (15A2) | (8) (8) (30) (30) |
| 59 | 28_3 | 4 | Glu + Glu + GA + GA | (−150:−250) (−200:−300) (+250:+150) (−350:−450) | (30A1) (30A2) (15A1) (15A2) | (8) (8) (30) (30) |
| 60 | 28_3b | 4 | Glu + Glu + GA + GA | (−150:−250) (−200:−300) (+250:+150) (−350:−450) | (30A4) (30A5) (15A4) (15A5) | (8) (8) (30) (30) |
| 61 | 28_4 | 4 | Glu + GA + Glu + GA | (+250:+150) (−150:−250) (−200:−300) (−350:−450) | (30A1) (15A1) (30A2) (15A2) | (8) (30) (6) (30) |
| 62 | 28_5 | 4 | GA + Glu + GA + Glu | (+250:+150) (−150:−250) (−200:−300) (−350:−450) | (15A1) (30A1) (15A2) (30A2) | (30) (8) (30) (6) |
| 63 | 28_6 | 4 | Glu + Glu + Glu + GB | (−50:−300) (−250:−400) (−400:−500) (−100:−400) | (6A1) (6A2) (6A3) (14) | (6) (7) (8) (30) |
| 64 | 28_7 | 4 | Glu + Glu + Glu + GA | (−50:−300) (−250:−400) (−400:−500) (+150:−100) | (6A1) (6A2) (6A3) (6) | (6) (7) (8) (40) |
| 65 | 28_8 | 4 | GA + GB + Glu + Glu | (+150:−100) (−100:−400) (+250:+30) (−50:−300) | (14) (6) (6.33) (15.15) | (60) (30) (8) (8) |
| 66 | 28_8b | 4 | GA + GB + Glu + Glu | (+150:−100) (−100:−400) (+250:+30) (−50:−300) | (14) (6) (6.33) (15.15) | (60) (30) (8) (8) |
| 67 | 28_9 | 4 | Glu + Glu + GA + GB | (+250:+30) (−50:−300) (+50:−200) (−50:−350) | (6.33) (15.15) (6A2) (6A1) | (8) (8) (60) (40) |
| 68 | 29_1 | 5 | Glu + Glu + Glu + GA + GA | (−50:−300) (−250:−400) (−400:−500) (+250:+150) (−350:−450) | (6A1) (6A2) (6A3) (15A1) (15A2) | (6) (7) (8) (30) (30) |
| 69 | 29_2 | 5 | Glu + Glu + Glu + GA + GA | (−50:−300) (−250:−400) (−400:−500) (−150:−250) (−200:−300) | (6A1) (6A2) (6A3) (15A1) (15A2) | (6) (7) (8) (30) (30) |
| 70 | 29_3 | 5 | GB + Glu + GA + GA + GA | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33) (15.15) (15A1) (15A2) (6) | (30) (12) (30) (30) (40) |
| 71 | 29_3a | 5 | GB + Glu + GA + GA + GA | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33) (7) (15A1) (15A2) (6) | (30) (6) (30) (30) (40) |
| 72 | 29_3b | 5 | GB + Glu + GA + GA + GA | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33) (15.15) (15A1) (15A2) (6) | (30) (12) (60) (60) (40) |
| 73 | 29_3c | 5 | GB + Glu + GA + GA + GA | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33) (7) (15A1) (15A2) (6) | (30) (6) (60) (60) (40) |
| 74 | 29_3d | 5 | GB + Glu + GA + GA + GA | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33A1) (7A1) (15A1) (15A2) (6A1) | (30) (6) (60) (60) (40) |
| 75 | 29_3e | 5 | GA + Glu + GB + GB + GB | (−50:−250) (−250:−400) (−150:−250) (−200:−300) (+150:−100) | (6.33) (7) (15A1) (15A2) (6) | (30) (6) (30) (30) (40) |
| 76 | 29_4 | 5 | GA + GA + GA + GA + GA | (−150:−250) (−50:−350) (+150:−100) (+250:+150) (−350:−450) | (15.15) (6.33) (20A1) (15A1) (15A2) | (60) (60) (60) (30) (30) |
| 77 | 29_6 | 5 | Glu + Glu + Glu + Glu + Glu | (−150:−250) (−50:−350) (+150:−100) (+250:+150) (−350: −450) | (30A1) (30A2) (6A2) (6A3) (15.15) | (8) (8) (7) (8) (8) |
| 78 | 29_7 | 5 | GA + GB + Glu + Glu + GA | (+50:−200) (−50:−350) (+250:+30) (−350:−500) (+250:+150) | (14) (6) (6.33) (20) (8) | (60) (30) (8) (12) (30) |
| 79 | 29_8 | 5 | GA + GB + Glu + Glu + GA | (+50:−200) (−50:−350) (+250:+30) (−350:−500) (+250:+150) | (6A1) (6A2) (20A1) (20A2) (15A1) | (60) (30) (8) (12) (30) |
| 80 | 29_5 | 5 | GB + GB + GB + GB + GB | (−100:−350) (−100:−400) (+150:−100) (+50:−200) (−50:−500) | (14) (6A2) (15.15) (6A1) (6.33) | (30) (40) (30) (30) (30) |
From left to right: .
Figure 3Summary of the results obtained for 80 multisynaptic LFPs. The plots show the spatial (A) and temporal (B) accuracy of each generator derived from mixed LFPs when compared to their values alone (see Methods). The values of the different generators obtained in each simulation are represented by the dots in the same vertical position. The parameters for the synaptic combinations can be found in the Appendix.
Figure 4Spatial and temporal cross-contamination between LFP-generators with a strongly unbalanced contribution. (A) The example corresponds to LFPs modeled by combining spatially overlapping of GABAB dendritic inhibition (G1, blue) and perisomatic GABAA inhibition (G2, green). Irregular series of synaptic inputs were injected in the two generators with a variable degree of temporal coincidence between them (case I: 0% and case II: 25%). The spatial distribution of the strong generator (G1) was stable, but that of the weak generator (G2) underwent a slight spatial shift when the two inputs had a partial temporal coincidence (25% of the time), which did not however modify the estimation of the synaptic loci (CSD). Note the small bump in the CSD curve of the weak generator at the site where the stronger generator peaked. (B) Cross-contamination can also be observed in the respective time courses of the generators (arrows mark the timings of synaptic inputs and asterisks show coincident inputs). The cross-contamination grew larger as the inputs coincided for a longer period (case I vs. case II). G1 got extra power (variance) from G2. (C) The strong generator (G1) practically does not suffer from coincident inputs. However, the time course of the weak generator (G2) may be severely distorted by coincident inputs and a significant part of its contribution lost. The spatial distribution of the weak generator also becomes worse for higher coincidence level, but at 100% coincidence G2 recovers its original spatial distribution (see main text).
Figure 5Extra generators may rarely arise due to intracellular interactions of coincident synaptic currents. (A) An inhibitory perisomatic (GABAA) input (G1, red) was combined with a non-overlapping dendritic excitatory input (G2, blue), both under irregular regimes. The ICA returned three generators, two of them matching the spatial distributions of the original individual inputs. The extra generator (G3, gray) presented an intermediate spatial distribution, and its time course revealed activity when the inputs coincided. (B) A slight shift of the inhibitory input away from the excitatory one reduced the variance of the extra generator down to the 5% border of significance (see Materials and Methods). (C) A further spatial shift of the inhibitory input toward the opposite dendritic tree yielded a perfect separation of the mixed LFPs into the two generators. (D) A distal shift of the excitatory input also led to perfect separation of the contributing LFP-generators [to be compared with (A)]. (E) To assess the intracellular origin of the extra generator we applied an ICA to mixed LFPs with the same synaptic inputs but obtained by numerical addition of their respective currents (without neurons). In this case (to be compared with A), the separation of the generators was optimal. The slight deviations of neuron-mediated (black) and numerically obtained LFPs (green) quantitatively estimate the mutual interactions of synaptic currents converging on the same neuron.
Figure 6Separation of multiple synaptic inputs in hippocampal LFPs from live animals. (A) LFP segments recorded with a multielectrode linear probe (e1–e32) containing electrically evoked subthreshold activity of three different excitatory pathways in the hippocampus [stimulus time instants marked by dashed vertical line; Com: commissural input, green; PP: perforant pathway, red; Sch: Schaffer input, blue; see also (B), bottom subplot]. Three of the ICA-separated LFP-generators, G1–G3, contained the evoked activity of only one activated pathway (colored traces), i.e., they are pathway-specific. During spontaneous LFPs, according to the model, the time envelope of each of these generators corresponds to the varying intensity of synaptic currents generated by synaptic bombardment from neurons belonging to the same presynaptic population. (B) The spatial distribution of these generators (upper subplot) matched those expected for the respective anatomical distribution of afferent axons colored in the scheme of the hippocampal connections (bottom subplot). (C) Matching pre- and post-synaptic activity for one generator. The activity of the CA3 region was locally manipulated by pharmacological disinhibition applied through a pipette (pip, in B, bottom subplot). This treatment raised the hypersynchronous epileptic field bursts that are synaptically conveyed to the next relay in the CA1 region. One of these is enlarged in the upper traces as recorded locally (Vpip, green) and in the postsynaptic target in the CA1 apical dendrites (e#13, asterisk). Note the multiunit activity and a slight advance of the CA3 local field spike over that in CA1. The ICA-derived Schaffer LFP-generator (G1, blue) specifically captured the hypersynchronous volley of synaptic activity during the epileptic spike, while the upstream PP generator (G3, red) shows an independent activity.