| Literature DB >> 28507514 |
Mario Martin1, Javier Béjar1, Gennaro Esposito1, Diógenes Chávez2, Enrique Contreras-Hernández2, Silvio Glusman2,3, Ulises Cortés1,4, Pablo Rudomín2,5.
Abstract
In a previous study we developed a Machine Learning procedure for the automatic identification and classification of spontaneous cord dorsum potentials (CDPs). This study further supported the proposal that in the anesthetized cat, the spontaneous CDPs recorded from different lumbar spinal segments are generated by a distributed network of dorsal horn neurons with structured (non-random) patterns of functional connectivity and that these configurations can be changed to other non-random and stable configurations after the noceptive stimulation produced by the intradermic injection of capsaicin in the anesthetized cat. Here we present a study showing that the sequence of identified forms of the spontaneous CDPs follows a Markov chain of at least order one. That is, the system has memory in the sense that the spontaneous activation of dorsal horn neuronal ensembles producing the CDPs is not independent of the most recent activity. We used this markovian property to build a procedure to identify portions of signals as belonging to a specific functional state of connectivity among the neuronal networks involved in the generation of the CDPs. We have tested this procedure during acute nociceptive stimulation produced by the intradermic injection of capsaicin in intact as well as spinalized preparations. Altogether, our results indicate that CDP sequences cannot be generated by a renewal stochastic process. Moreover, it is possible to describe some functional features of activity in the cord dorsum by modeling the CDP sequences as generated by a Markov order one stochastic process. Finally, these Markov models make possible to determine the functional state which produced a CDP sequence. The proposed identification procedures appear to be useful for the analysis of the sequential behavior of the ongoing CDPs recorded from different spinal segments in response to a variety of experimental procedures including the changes produced by acute nociceptive stimulation. They are envisaged as a useful tool to examine alterations of the patterns of functional connectivity between dorsal horn neurons under normal and different pathological conditions, an issue of potential clinical concern.Entities:
Keywords: cord dorsum potentials; machine learning; markovian analysis; nociceptive stimulation; spinal cord
Year: 2017 PMID: 28507514 PMCID: PMC5410574 DOI: 10.3389/fncom.2017.00032
Source DB: PubMed Journal: Front Comput Neurosci ISSN: 1662-5188 Impact factor: 2.380
Maneuvers performed in the experiments presently analyzed and the number of time steps.
| e110906 | |
| e120511 | |
| e130221 | |
| e140225 |
All time steps have a duration of 10 min each. See text for further explanations.
Figure 1Spontaneous . Note that the CDPs increased after spinalization and that capsaicin had different effect on the CDPs recorded in the left and right side of the spinal cord. L, left; R, right; c caudal; r, rostral. Data obtained from experiment e130221 (negative voltages plotted upward).
Figure 2Shape dictionary obtained from recordings made in the L6rL segment, and the probability occurrence for each shape at each time step in experiment e130221. Each shape corresponds to the centroid of a cluster of CDPs and a standard deviation around the prototype. In the histograms green columns indicate the control, red columns the capsaicin, and black columns the spinalization periods. CDPs amplitude is measured in millivolts, time in milliseconds. Further explanations in text. (A–L) Represent the label assigned to each CDP class.
Figure 3Example of discretization of the signal recorded from L6rL from experiment e130221. In red, the time intervals identified as spontaneous CDPs by the CDP detection algorithm used by the methodology. Each CDP is labeled using the shapes dictionary obtained from the segment L6rL for this experiment using the closest shape according to the euclidean distance. Symbol $ represents a pause in the sequence because the signal was not identified as a CDP (shown in black). The labels for the CDPs and the pause symbols form the discretized sequence. The CDPs in the figure correspond to the 0.3 hz–10 khz filtered signal resampled to 1.6 khz before processing with PCA.
Figure 4Transition matrix for . Position row i, column j shows probability of transition from CDP toward CDP. Compare this figure with Figures 5, 6.
Figure 5Transition matrix for . Same experiment and display as that of Figure 4.
Figure 6Transition matrix for . Same experiment and display as that of Figure 4.
Description of major symbols.
| Set of lumbar segment | |
| Time step, a contiguous subset of the recording | |
| Set of time steps | |
| Sequence of | |
| Subsequence of the last | |
| Subsequence of | |
| CDP from a sequence | |
| Probability model for lumbar segment | |
| Probability model for lumbar segment | |
| Likelihood of sequence | |
| Probability of | |
| Similarity index between time step |
Figure 7Summary of the prediction process described in Section 6.1 for segment ( For each 10 min step, we remove the last 100 CDPs of the recorded sequence (). (B) Building, for each step of the experiment, the model with the remaining data (). (C) Given an unknown sequence of 100 CDPs, computation of the log-likelihood of each model for that particular sequence. (D) Obtaining the model with maximum log-likelihood and return prediction of membership. Average prediction accuracy for all segments in several experiments is shown in Table 3.
Average percentage of success in membership prediction for all experiments with respect to the length of the sequence.
| e110906 | 51.9 | 85 | 92.5 | 95 | 92.5 | 92.5 | 95 |
| e120511 | 42.8 | 58.4 | 65.0 | 68.8 | 71.4 | 63.6 | 68.8 |
| e130221 | 37.4 | 80.7 | 88.6 | 88.6 | 92.0 | 91 | 93.2 |
| e140225 | 37.4 | 76.4 | 75.0 | 77.7 | 75.0 | 73 | 77.1 |
In general, the longer the sequence used to predict, the better the results obtained. First column shows average accuracy obtained from a random classifier.
This table details the prediction results in experiment e130221.
| L4cR | ||||||||
| L4cL | ||||||||
| L5cR | ||||||||
| L5cL | ||||||||
| L5rR | ||||||||
| L5rL | ||||||||
| L6cR | ||||||||
| L6cL | ||||||||
| L6rR | ||||||||
| L6rL | ||||||||
| L7rL | ||||||||
| Consensus |
Each cell shows prediction for .
Percentage of success defined as proper prediction among the set of .
| e110906 | 92 | 95 | 100 | 100 |
| e120511 | 65 | 86 | 94 | 94 |
| e130221 | 89 | 95 | 99 | 100 |
| e140225 | 75 | 88 | 97 | 100 |
Obtained .
| e110906 | 5.30e-25 | 1.25e-07 | 1.07e-34 |
| e120511 | 1.72e-34 | 1.99e-54 | 1.72e-34 |
| e130221 | 6.83e-30 | 3.62e-38 | 6.83e-30 |
| e140225 | 3.54e-23 | 4.79e-50 | 3.54e-23 |
Each value presented is the maximum p-value obtained for all sequences of the experiment. In all cases we have a p-value a lot lower than 0.05 that show robustness of the detection of the markovian property with respect to the number of symbols considered.