Emergence of Integrated Information at Macro Timescales in Real Neural Recordings

How a system generates conscious experience remains an elusive question. One approach towards answering this is to consider the information available in the system from the perspective of the system itself. Integrated information theory (IIT) proposes a measure to capture this integrated information...

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Main Authors: Angus Leung, Naotsugu Tsuchiya
Format: Article
Language:English
Published: MDPI AG 2022-04-01
Series:Entropy
Subjects:
Online Access:https://www.mdpi.com/1099-4300/24/5/625
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author Angus Leung
Naotsugu Tsuchiya
author_facet Angus Leung
Naotsugu Tsuchiya
author_sort Angus Leung
collection DOAJ
description How a system generates conscious experience remains an elusive question. One approach towards answering this is to consider the information available in the system from the perspective of the system itself. Integrated information theory (IIT) proposes a measure to capture this integrated information (Φ). While Φ can be computed at any spatiotemporal scale, IIT posits that it be applied at the scale at which the measure is maximised. Importantly, Φ in conscious systems should emerge to be maximal not at the smallest spatiotemporal scale, but at some macro scale where system elements or timesteps are grouped into larger elements or timesteps. Emergence in this sense has been demonstrated in simple example systems composed of logic gates, but it remains unclear whether it occurs in real neural recordings which are generally continuous and noisy. Here we first utilise a computational model to confirm that Φ becomes maximal at the temporal scales underlying its generative mechanisms. Second, we search for emergence in local field potentials from the fly brain recorded during wakefulness and anaesthesia, finding that normalised Φ (wake/anaesthesia), but not raw Φ values, peaks at 5 ms. Lastly, we extend our model to investigate why raw Φ values themselves did not peak. This work extends the application of Φ to simple artificial systems consisting of logic gates towards searching for emergence of a macro spatiotemporal scale in real neural systems.
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spelling doaj.art-fba8f8adcaac42f29c5a83e681defbb02023-11-23T10:54:48ZengMDPI AGEntropy1099-43002022-04-0124562510.3390/e24050625Emergence of Integrated Information at Macro Timescales in Real Neural RecordingsAngus Leung0Naotsugu Tsuchiya1Turner Institute for Brain and Mental Health, School of Psychological Sciences, Monash University, Melbourne, VIC 3800, AustraliaTurner Institute for Brain and Mental Health, School of Psychological Sciences, Monash University, Melbourne, VIC 3800, AustraliaHow a system generates conscious experience remains an elusive question. One approach towards answering this is to consider the information available in the system from the perspective of the system itself. Integrated information theory (IIT) proposes a measure to capture this integrated information (Φ). While Φ can be computed at any spatiotemporal scale, IIT posits that it be applied at the scale at which the measure is maximised. Importantly, Φ in conscious systems should emerge to be maximal not at the smallest spatiotemporal scale, but at some macro scale where system elements or timesteps are grouped into larger elements or timesteps. Emergence in this sense has been demonstrated in simple example systems composed of logic gates, but it remains unclear whether it occurs in real neural recordings which are generally continuous and noisy. Here we first utilise a computational model to confirm that Φ becomes maximal at the temporal scales underlying its generative mechanisms. Second, we search for emergence in local field potentials from the fly brain recorded during wakefulness and anaesthesia, finding that normalised Φ (wake/anaesthesia), but not raw Φ values, peaks at 5 ms. Lastly, we extend our model to investigate why raw Φ values themselves did not peak. This work extends the application of Φ to simple artificial systems consisting of logic gates towards searching for emergence of a macro spatiotemporal scale in real neural systems.https://www.mdpi.com/1099-4300/24/5/625integrated informationanaesthesiaemergence<i>Drosophila</i>consciousnessinformation
spellingShingle Angus Leung
Naotsugu Tsuchiya
Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
Entropy
integrated information
anaesthesia
emergence
<i>Drosophila</i>
consciousness
information
title Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
title_full Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
title_fullStr Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
title_full_unstemmed Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
title_short Emergence of Integrated Information at Macro Timescales in Real Neural Recordings
title_sort emergence of integrated information at macro timescales in real neural recordings
topic integrated information
anaesthesia
emergence
<i>Drosophila</i>
consciousness
information
url https://www.mdpi.com/1099-4300/24/5/625
work_keys_str_mv AT angusleung emergenceofintegratedinformationatmacrotimescalesinrealneuralrecordings
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