General anesthesia reduces complexity and temporal asymmetry of the informational structures derived from neural recordings in Drosophila

We apply techniques from the field of computational mechanics to evaluate the statistical complexity of neural recording data from fruit flies. First, we connect statistical complexity to the flies' level of conscious arousal, which is manipulated by general anesthesia (isoflurane). We show that the complexity of even single channel time series data decreases under anesthesia. The observed difference in complexity between the two states of conscious arousal increases as higher orders of temporal correlations are taken into account. We then go on to show that, in addition to reducing complexity, anesthesia also modulates the informational structure between the forward- and reverse-time neural signals. Specifically, using three distinct notions of temporal asymmetry we show that anesthesia reduces temporal asymmetry on information-theoretic and information-geometric grounds. In contrast to prior work, our results show that: (1) Complexity differences can emerge at very short timescales and across broad regions of the fly brain, thus heralding the macroscopic state of anesthesia in a previously unforeseen manner, and (2) that general anesthesia also modulates the temporal asymmetry of neural signals. Together, our results demonstrate that anesthetized brains become both less structured and more reversible.

[1]  Robert Haslinger,et al.  The Computational Structure of Spike Trains , 2009, Neural Computation.

[2]  G. Tononi,et al.  Breakdown of Cortical Effective Connectivity During Sleep , 2005, Science.

[3]  Fady Alajaji,et al.  The Kullback-Leibler divergence rate between Markov sources , 2004, IEEE Transactions on Information Theory.

[4]  G. Tononi An information integration theory of consciousness , 2004, BMC Neuroscience.

[5]  Karl J. Friston,et al.  Canonical Microcircuits for Predictive Coding , 2012, Neuron.

[6]  Peter Stratton,et al.  Multichannel brain recordings in behaving Drosophila reveal oscillatory activity and local coherence in response to sensory stimulation and circuit activation. , 2013, Journal of neurophysiology.

[7]  Toru Yanagawa,et al.  Measuring Integrated Information from the Decoding Perspective , 2015, PLoS Comput. Biol..

[8]  L. H. Miller Table of Percentage Points of Kolmogorov Statistics , 1956 .

[9]  G. Tononi,et al.  The Neurology of Consciousness: An Overview , 2016 .

[10]  Naotsugu Tsuchiya,et al.  Isoflurane Impairs Low-Frequency Feedback but Leaves High-Frequency Feedforward Connectivity Intact in the Fly Brain , 2018, eNeuro.

[11]  J. Crutchfield,et al.  Measures of statistical complexity: Why? , 1998 .

[12]  G. Tononi,et al.  A Theoretically Based Index of Consciousness Independent of Sensory Processing and Behavior , 2013, Science Translational Medicine.

[13]  L. Cosmides From : The Cognitive Neurosciences , 1995 .

[14]  Young,et al.  Inferring statistical complexity. , 1989, Physical review letters.

[15]  Pedro A. M. Mediano,et al.  Measuring Integrated Information: Comparison of Candidate Measures in Theory and Simulation , 2018, Entropy.

[16]  Gilles Louppe,et al.  Robust EEG-based cross-site and cross-protocol classification of states of consciousness , 2018, Brain : a journal of neurology.

[17]  Danna Zhou,et al.  d. , 1934, Microbial pathogenesis.

[18]  Anil K. Seth,et al.  Practical Measures of Integrated Information for Time-Series Data , 2011, PLoS Comput. Biol..

[19]  Marc Andrew Valdez,et al.  Complex-network description of thermal quantum states in the Ising spin chain , 2018, 1803.00994.

[20]  F. Massey The Kolmogorov-Smirnov Test for Goodness of Fit , 1951 .

[21]  Fabio Boschetti,et al.  Mapping the complexity of ecological models , 2008 .

[22]  Karoline Wiesner,et al.  Quantum mechanics can reduce the complexity of classical models , 2011, Nature Communications.

[23]  Philip H. Ramsey Nonparametric Statistical Methods , 1974, Technometrics.

[24]  D. Heeger,et al.  A Hierarchy of Temporal Receptive Windows in Human Cortex , 2008, The Journal of Neuroscience.

[25]  Steven Laureys,et al.  Consciousness in humans and non-human animals: recent advances and future directions , 2013, Front. Psychol..

[26]  James P Crutchfield,et al.  Time's barbed arrow: irreversibility, crypticity, and stored information. , 2009, Physical review letters.

[27]  Aaas News,et al.  Book Reviews , 1893, Buffalo Medical and Surgical Journal.

[28]  Max Tegmark,et al.  Improved Measures of Integrated Information , 2016, PLoS Comput. Biol..

[29]  Laura D. Lewis,et al.  Rapid fragmentation of neuronal networks at the onset of propofol-induced unconsciousness , 2012, Proceedings of the National Academy of Sciences.

[30]  James P. Crutchfield,et al.  Information Symmetries in Irreversible Processes , 2011, Chaos.

[31]  D. Bates,et al.  Fitting Linear Mixed-Effects Models Using lme4 , 2014, 1406.5823.

[32]  M. Sigman,et al.  Large scale screening of neural signatures of consciousness in patients in a vegetative or minimally conscious state. , 2014, Brain : a journal of neurology.

[33]  D. Owald,et al.  Network-Specific Synchronization of Electrical Slow-Wave Oscillations Regulates Sleep Drive in Drosophila , 2019, Current Biology.

[34]  Larissa Albantakis,et al.  From the Phenomenology to the Mechanisms of Consciousness: Integrated Information Theory 3.0 , 2014, PLoS Comput. Biol..

[35]  F. Opitz Information geometry and its applications , 2012, 2012 9th European Radar Conference.

[36]  G. Tononi,et al.  Consciousness and Complexity during Unresponsiveness Induced by Propofol, Xenon, and Ketamine , 2015, Current Biology.

[37]  J. P. Crutchfield,et al.  From finite to infinite range order via annealing: the causal architecture of deformation faulting in annealed close-packed crystals , 2004 .

[38]  Stefano Nolfi,et al.  Learning to perceive the world as articulated: an approach for hierarchical learning in sensory-motor systems , 1998, Neural Networks.

[39]  George Sugihara,et al.  Detecting Causality in Complex Ecosystems , 2012, Science.

[40]  Cesar Maldonado,et al.  Information Entropy Production of Maximum Entropy Markov Chains from Spike Trains , 2018, Entropy.

[41]  Lawrence R. Rabiner,et al.  A tutorial on hidden Markov models and selected applications in speech recognition , 1989, Proc. IEEE.

[42]  Mile Gu,et al.  Measures of distinguishability between stochastic processes. , 2020, Physical review. E.

[43]  Steven Laureys,et al.  Coma and consciousness: Paradigms (re)framed by neuroimaging , 2012, NeuroImage.

[44]  Hang-Hyun Jo,et al.  Complexity analysis of the stock market , 2006, physics/0607283.

[45]  Naotsugu Tsuchiya,et al.  Local Versus Global Effects of Isoflurane Anesthesia on Visual Processing in the Fly Brain , 2016, eNeuro.

[46]  Marc Andrew Valdez,et al.  Quantifying Complexity in Quantum Phase Transitions via Mutual Information Complex Networks. , 2015, Physical review letters.

[47]  G. Buzsáki,et al.  Forward and reverse hippocampal place-cell sequences during ripples , 2007, Nature Neuroscience.

[48]  Richard Inger,et al.  A brief introduction to mixed effects modelling and multi-model inference in ecology , 2018, PeerJ.

[49]  James P. Crutchfield,et al.  Computation at the Onset of Chaos , 1991 .

[50]  Toru Yanagawa,et al.  Untangling Brain-Wide Dynamics in Consciousness by Cross-Embedding , 2015, PLoS Comput. Biol..

[51]  Fernando E. Rosas,et al.  An Introduction to the Non-Equilibrium Steady States of Maximum Entropy Spike Trains , 2019, Entropy.

[52]  G. Tononi,et al.  Stratification of unresponsive patients by an independently validated index of brain complexity , 2016, Annals of neurology.

[53]  Karl J. Friston The free-energy principle: a unified brain theory? , 2010, Nature Reviews Neuroscience.

[54]  Paul A. Gagniuc,et al.  Markov Chains: From Theory to Implementation and Experimentation , 2017 .

[55]  M. Boly,et al.  Complexity of Multi-Dimensional Spontaneous EEG Decreases during Propofol Induced General Anaesthesia , 2015, PloS one.

[56]  C T VAN VALKENBURG,et al.  [Neurology of consciousness]. , 1958, Nederlands tijdschrift voor geneeskunde.

[57]  G. Tononi Information integration: its relevance to brain function and consciousness. , 2010, Archives italiennes de biologie.

[58]  Shun-ichi Amari,et al.  Unified framework for information integration based on information geometry , 2015, Proceedings of the National Academy of Sciences.

[59]  Jyrki Piilo,et al.  Measure for the degree of non-markovian behavior of quantum processes in open systems. , 2009, Physical review letters.

[60]  K. Marton,et al.  Entropy and the Consistent Estimation of Joint Distributions , 1993, Proceedings. IEEE International Symposium on Information Theory.

[61]  C. Koch,et al.  Integrated information theory: from consciousness to its physical substrate , 2016, Nature Reviews Neuroscience.

[62]  Peter Tiño,et al.  Predicting the Future of Discrete Sequences from Fractal Representations of the Past , 2001, Machine Learning.