Inference on the Macroscopic Dynamics of Spiking Neurons

The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters o...

Full description

Saved in:
Bibliographic Details
Published inNeural computation Vol. 36; no. 10; pp. 1 - 43
Main Authors Baldy, Nina, Breyton, Martin, Woodman, Marmaduke M., Jirsa, Viktor K., Hashemi, Meysam
Format Journal Article
LanguageEnglish
Published United States MIT Press Journals, The 17.09.2024
Massachusetts Institute of Technology Press (MIT Press)
Subjects
Online AccessGet full text
ISSN0899-7667
1530-888X
1530-888X
DOI10.1162/neco_a_01701

Cover

Abstract The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system’s dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamics and responses to various perturbations or pharmacological interventions using deep neural networks.
AbstractList The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system's dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamicsMeysam Hashemi is the corresponding author. Victor Jirsa and Meysam Hashemi contributed equally.
The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system’s dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamics and responses to various perturbations or pharmacological interventions using deep neural networks.
The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system's dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamics and responses to various perturbations or pharmacological interventions using deep neural networks.The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system's dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamics and responses to various perturbations or pharmacological interventions using deep neural networks.
The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we conduct inference on parameters and dynamics of a mean-field approximation, simplifying the interactions of neurons. Estimating parameters of this class of generative model allows one to predict the system’s dynamics and responses under changing inputs and, indeed, changing parameters. We first assume a set of known state-space equations and address the problem of inferring the lumped parameters from observed time series. Crucially, we consider this problem in the setting of bistability, random fluctuations in system dynamics, and partial observations, in which some states are hidden. To identify the most efficient estimation or inversion scheme in this particular system identification, we benchmark against state-of-the-art optimization and Bayesian estimation algorithms, highlighting their strengths and weaknesses. Additionally, we explore how well the statistical relationships between parameters are maintained across different scales. We found that deep neural density estimators outperform other algorithms in the inversion scheme, despite potentially resulting in overestimated uncertainty and correlation between parameters. Nevertheless, this issue can be improved by incorporating time-delay embedding. We then eschew the mean-field approximation and employ deep neural ODEs on spiking neurons, illustrating prediction of system dynamics and vector fields from microscopic states. Overall, this study affords an opportunity to predict brain dynamics and responses to various perturbations or pharmacological interventions using deep neural networks.
Author Baldy, Nina
Woodman, Marmaduke M.
Hashemi, Meysam
Jirsa, Viktor K.
Breyton, Martin
Author_xml – sequence: 1
  givenname: Nina
  surname: Baldy
  fullname: Baldy, Nina
– sequence: 2
  givenname: Martin
  surname: Breyton
  fullname: Breyton, Martin
– sequence: 3
  givenname: Marmaduke M.
  surname: Woodman
  fullname: Woodman, Marmaduke M.
– sequence: 4
  givenname: Viktor K.
  surname: Jirsa
  fullname: Jirsa, Viktor K.
– sequence: 5
  givenname: Meysam
  surname: Hashemi
  fullname: Hashemi, Meysam
BackLink https://www.ncbi.nlm.nih.gov/pubmed/39141813$$D View this record in MEDLINE/PubMed
https://hal.science/hal-04890317$$DView record in HAL
BookMark eNp90E1P20AQBuBVFVSSlBtnZKkXkHA74117d4-IAkEK7aGtxG21WY_BqbNrvDFV_j2Owpd66OmVRo9mNO-EjXzwxNghwhfEIvvqyQVjDaAE_MDGmHNIlVK3IzYGpXUqi0Lus0mMSwAoEPKPbJ9rFKiQj5m69hV15B0lwSfre0purOtCdKGtXfJt4-2qdjEJVfKzrf_U_i75Tn0XfPzE9irbRDp4zin7fXnx63yWzn9cXZ-fzVPHhVqnmVCICwuAmvLCoqhKssqVuYYcSleJvCBhISNRcglOL0hIUCorVCVk6YhPWbrb2_vWbv7apjFtV69stzEIZtuAed_A4E92_t6-yWBrMzubm-0MhNLAUT5u7fHOtl146CmuzaqOjprGegp9NBz0AEEPMWWf_6HL0Hd--NxwxEzJTGbFoI6eVb9YUfl6_6XvAZzuwLbj2FH1_2eeAJLyjxg
ContentType Journal Article
Copyright 2024 Massachusetts Institute of Technology. Published under a Creative Commons Attribution 4.0 International (CC BY 4.0) license.
Copyright MIT Press Journals, The 2024
Attribution
Copyright_xml – notice: 2024 Massachusetts Institute of Technology. Published under a Creative Commons Attribution 4.0 International (CC BY 4.0) license.
– notice: Copyright MIT Press Journals, The 2024
– notice: Attribution
DBID AAYXX
CITATION
CGR
CUY
CVF
ECM
EIF
NPM
7SC
8FD
JQ2
L7M
L~C
L~D
7X8
1XC
VOOES
ADTOC
UNPAY
DOI 10.1162/neco_a_01701
DatabaseName CrossRef
Medline
MEDLINE
MEDLINE (Ovid)
MEDLINE
MEDLINE
PubMed
Computer and Information Systems Abstracts
Technology Research Database
ProQuest Computer Science Collection
Advanced Technologies Database with Aerospace
Computer and Information Systems Abstracts – Academic
Computer and Information Systems Abstracts Professional
MEDLINE - Academic
Hyper Article en Ligne (HAL)
Hyper Article en Ligne (HAL) (Open Access)
Unpaywall for CDI: Periodical Content
Unpaywall
DatabaseTitle CrossRef
MEDLINE
Medline Complete
MEDLINE with Full Text
PubMed
MEDLINE (Ovid)
Computer and Information Systems Abstracts
Technology Research Database
Computer and Information Systems Abstracts – Academic
Advanced Technologies Database with Aerospace
ProQuest Computer Science Collection
Computer and Information Systems Abstracts Professional
MEDLINE - Academic
DatabaseTitleList
Computer and Information Systems Abstracts
MEDLINE - Academic
CrossRef
MEDLINE
Database_xml – sequence: 1
  dbid: NPM
  name: PubMed
  url: https://proxy.k.utb.cz/login?url=http://www.ncbi.nlm.nih.gov/entrez/query.fcgi?db=PubMed
  sourceTypes: Index Database
– sequence: 2
  dbid: EIF
  name: MEDLINE
  url: https://proxy.k.utb.cz/login?url=https://www.webofscience.com/wos/medline/basic-search
  sourceTypes: Index Database
– sequence: 3
  dbid: UNPAY
  name: Unpaywall
  url: https://proxy.k.utb.cz/login?url=https://unpaywall.org/
  sourceTypes: Open Access Repository
DeliveryMethod fulltext_linktorsrc
Discipline Computer Science
EISSN 1530-888X
EndPage 43
ExternalDocumentID 10.1162/neco_a_01701
oai:HAL:hal-04890317v1
39141813
10_1162_neco_a_01701
Genre Journal Article
GroupedDBID ---
-~X
.4S
.DC
0R~
123
36B
4.4
6IK
AAJGR
AALMD
AAYXX
ABAZT
ABDBF
ABDNZ
ABIVO
ABJNI
ABVLG
ACGFO
ACUHS
ADMLS
AEGXH
AENEX
AIAGR
ALMA_UNASSIGNED_HOLDINGS
AMVHM
ARCSS
AVWKF
AZFZN
BEFXN
BFFAM
BGNUA
BKEBE
BPEOZ
CITATION
CS3
DU5
EAP
EAS
EBC
EBD
EBS
ECS
EDO
EMB
EMK
EMOBN
EPL
EPS
EST
ESX
F5P
FEDTE
FNEHJ
HZ~
I-F
IPLJI
JAVBF
MCG
MINIK
MKJ
O9-
OCL
P2P
PK0
PQQKQ
RMI
SV3
TUS
WG8
WH7
XJE
ZWS
AEILP
CGR
CUY
CVF
ECM
EIF
NPM
7SC
8FD
JQ2
L7M
L~C
L~D
7X8
1XC
ABUFD
VOOES
41~
53G
AAFWJ
ABEFU
ACYGS
ADIYS
ADTOC
CAG
COF
EJD
HVGLF
H~9
UNPAY
ID FETCH-LOGICAL-c348t-24811ba0019e56a14fdea8cd59050dcf456e4a02e4d370c9be47088268f47dce3
IEDL.DBID UNPAY
ISSN 0899-7667
1530-888X
IngestDate Sun Oct 26 02:56:07 EDT 2025
Tue Oct 14 20:35:02 EDT 2025
Wed Oct 01 00:32:25 EDT 2025
Tue Sep 30 08:11:04 EDT 2025
Thu Apr 03 07:04:24 EDT 2025
Wed Oct 01 02:03:12 EDT 2025
IsDoiOpenAccess true
IsOpenAccess true
IsPeerReviewed true
IsScholarly true
Issue 10
Language English
License 2024 Massachusetts Institute of Technology. Published under a Creative Commons Attribution 4.0 International (CC BY 4.0) license.
Attribution: http://creativecommons.org/licenses/by
LinkModel DirectLink
MergedId FETCHMERGED-LOGICAL-c348t-24811ba0019e56a14fdea8cd59050dcf456e4a02e4d370c9be47088268f47dce3
Notes ObjectType-Article-1
SourceType-Scholarly Journals-1
ObjectType-Feature-2
content type line 14
content type line 23
ORCID 0000-0002-8251-8860
OpenAccessLink https://proxy.k.utb.cz/login?url=https://direct.mit.edu/neco/article-pdf/doi/10.1162/neco_a_01701/2465493/neco_a_01701.pdf
PMID 39141813
PQID 3112872726
PQPubID 37252
PageCount 43
ParticipantIDs unpaywall_primary_10_1162_neco_a_01701
hal_primary_oai_HAL_hal_04890317v1
proquest_miscellaneous_3093170909
proquest_journals_3112872726
pubmed_primary_39141813
crossref_primary_10_1162_neco_a_01701
ProviderPackageCode CITATION
AAYXX
PublicationCentury 2000
PublicationDate 2024-09-17
PublicationDateYYYYMMDD 2024-09-17
PublicationDate_xml – month: 09
  year: 2024
  text: 2024-09-17
  day: 17
PublicationDecade 2020
PublicationPlace United States
PublicationPlace_xml – name: United States
– name: Cambridge
PublicationTitle Neural computation
PublicationTitleAlternate Neural Comput
PublicationYear 2024
Publisher MIT Press Journals, The
Massachusetts Institute of Technology Press (MIT Press)
Publisher_xml – name: MIT Press Journals, The
– name: Massachusetts Institute of Technology Press (MIT Press)
SSID ssj0006105
Score 2.4651327
Snippet The process of inference on networks of spiking neurons is essential to decipher the underlying mechanisms of brain computation and function. In this study, we...
SourceID unpaywall
hal
proquest
pubmed
crossref
SourceType Open Access Repository
Aggregation Database
Index Database
StartPage 1
SubjectTerms Action Potentials - physiology
Algorithms
Animals
Approximation
Artificial neural networks
Bayes Theorem
Brain
Cognitive science
Fields (mathematics)
Humans
Inference
Models, Neurological
Neural Networks, Computer
Neurons
Neurons - physiology
Neuroscience
Non-pharmacological intervention
Parameter estimation
Parameter identification
Parameter uncertainty
Spiking
System dynamics
System identification
Title Inference on the Macroscopic Dynamics of Spiking Neurons
URI https://www.ncbi.nlm.nih.gov/pubmed/39141813
https://www.proquest.com/docview/3112872726
https://www.proquest.com/docview/3093170909
https://hal.science/hal-04890317
https://direct.mit.edu/neco/article-pdf/doi/10.1162/neco_a_01701/2465493/neco_a_01701.pdf
UnpaywallVersion publishedVersion
Volume 36
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
journalDatabaseRights – providerCode: PRVEBS
  databaseName: Academic Search Ultimate - eBooks
  customDbUrl: https://search.ebscohost.com/login.aspx?authtype=ip,shib&custid=s3936755&profile=ehost&defaultdb=asn
  eissn: 1530-888X
  dateEnd: 20241101
  omitProxy: true
  ssIdentifier: ssj0006105
  issn: 0899-7667
  databaseCode: ABDBF
  dateStart: 19970101
  isFulltext: true
  titleUrlDefault: https://search.ebscohost.com/direct.asp?db=asn
  providerName: EBSCOhost
– providerCode: PRVEBS
  databaseName: EBSCOhost Mathematics Source - HOST
  customDbUrl:
  eissn: 1530-888X
  dateEnd: 20241101
  omitProxy: false
  ssIdentifier: ssj0006105
  issn: 0899-7667
  databaseCode: AMVHM
  dateStart: 19970101
  isFulltext: true
  titleUrlDefault: https://www.ebsco.com/products/research-databases/mathematics-source
  providerName: EBSCOhost
– providerCode: PRVEBS
  databaseName: Inspec with Full Text
  customDbUrl:
  eissn: 1530-888X
  dateEnd: 20241101
  omitProxy: false
  ssIdentifier: ssj0006105
  issn: 0899-7667
  databaseCode: ADMLS
  dateStart: 19970101
  isFulltext: true
  titleUrlDefault: https://www.ebsco.com/products/research-databases/inspec-full-text
  providerName: EBSCOhost
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV1Lb9QwEB61uwfogZZnA21lEHDL1rGdOD6uaKsFdSukstL2FDmOI1a0ScTugtpfzzgv9SEhLtwie-LYHnv8TTz-DPCeply7Zdo3guW-4PgUo659K5XmOpLMaHfeeXoWTWbiyzycb8BFdxamMeSjq0UTRVOgD3bY9qFfZXlPOBBErM5MdOIYYIJD5ojBFL-TOMI3NmEYhQjTBzCcnX0dX9SoUilfRvXtsjjhqY9e4LwLir9X7p3lavO7C5Z8iES34NG6qPT1b315eWt1OtmGm65dTVDKj9F6lY7MzT3Kx__S8B140mJaMm7KeQobtngG2919EaQ1H88h_tydLiRlQRB5kql2zTZltTDk6LrQVwuzJGVOzquF-4VPauqQYvkCZifH3z5N_PbmBt9wEa98JuIgSLXDjzaMdCDyzOrYZKGiIc1MjqjNCk2ZFRmX1KjUCumwfhTnQmbG8pcwKMrC7gIRNpYqyDg6qgiVlEypTRmX1iCu1SGXHnzoFJRUDUFHUjs2EUtud4kH71B7vYhj1Z6MTxOXhkZMoW2Tv1Bor1Nu0s7lZcIRksZuvzry4G2fjbPQba3owpZrlKEKC6CKKg9eNYOi_xRXgUAcxT342I-Sv1b19b8KvoHHDDGWC18J5B4MVj_Xdh8x0io9gOH4aHp6ftCO-j8LQAus
linkProvider Unpaywall
linkToUnpaywall http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwtV1Lb9QwEB612wP0QHk3pSCDgFu2ju3E8XFFqRZEKyRYaXuKHMcRK1onYndB7a_vOC_1ISEu3CJ74tgee_xNPP4M8JbmXPtlOjSClaHg-JSirkMrleY6kcxof975-CSZzsTneTzfgNP-LExryMfnizaKxqEPdtD1YVgX5UA4ECWsycx05hlgogPmicEUv5E4xjc2YSuJEaaPYGt28nVy2qBKpUKZNLfL4oSnIXqB8z4o_la5N5arzR8-WPIuEt2Ge2tX64s_-uzs2up0tAOXfbvaoJSf4_UqH5vLW5SP_6XhD-FBh2nJpC3nEWxY9xh2-vsiSGc-nkD6qT9dSCpHEHmSY-2bbap6YcjhhdPnC7MkVUm-1Qv_C5801CFu-RRmRx-_f5iG3c0NoeEiXYVMpFGUa48fbZzoSJSF1akpYkVjWpgSUZsVmjIrCi6pUbkV0mP9JC2FLIzlz2DkKmd3gQibShUVHB1VhEpK5tTmjEtrENfqmMsA3vUKyuqWoCNrHJuEZde7JIA3qL1BxLNqTydfMp-GRkyhbZO_UWi_V27WzeVlxhGSpn6_Ogng9ZCNs9BvrWhnqzXKUIUFUEVVAM_bQTF8iqtIII7iAbwfRslfq7r3r4Iv4D5DjOXDVyK5D6PVr7V9iRhplb_qRvsVthwKGA
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Ajournal&rft.genre=article&rft.atitle=Inference+on+the+Macroscopic+Dynamics+of+Spiking+Neurons&rft.jtitle=Neural+computation&rft.au=Baldy%2C+Nina&rft.au=Breyton%2C+Martin&rft.au=Woodman%2C+Marmaduke+M&rft.au=Jirsa%2C+Viktor+K&rft.date=2024-09-17&rft.pub=MIT+Press+Journals%2C+The&rft.issn=0899-7667&rft.eissn=1530-888X&rft.volume=36&rft.issue=10&rft.spage=2030&rft_id=info:doi/10.1162%2Fneco_a_01701&rft.externalDBID=NO_FULL_TEXT
thumbnail_l http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/lc.gif&issn=0899-7667&client=summon
thumbnail_m http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/mc.gif&issn=0899-7667&client=summon
thumbnail_s http://covers-cdn.summon.serialssolutions.com/index.aspx?isbn=/sc.gif&issn=0899-7667&client=summon