Cargando…

Training deep neural density estimators to identify mechanistic models of neural dynamics

Mechanistic modeling in neuroscience aims to explain observed phenomena in terms of underlying causes. However, determining which model parameters agree with complex and stochastic neural data presents a significant challenge. We address this challenge with a machine learning tool which uses deep ne...

Descripción completa

Detalles Bibliográficos
Autores principales: Gonçalves, Pedro J, Lueckmann, Jan-Matthis, Deistler, Michael, Nonnenmacher, Marcel, Öcal, Kaan, Bassetto, Giacomo, Chintaluri, Chaitanya, Podlaski, William F, Haddad, Sara A, Vogels, Tim P, Greenberg, David S, Macke, Jakob H
Formato: Online Artículo Texto
Lenguaje:English
Publicado: eLife Sciences Publications, Ltd 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7581433/
https://www.ncbi.nlm.nih.gov/pubmed/32940606
http://dx.doi.org/10.7554/eLife.56261
_version_ 1783598977719992320
author Gonçalves, Pedro J
Lueckmann, Jan-Matthis
Deistler, Michael
Nonnenmacher, Marcel
Öcal, Kaan
Bassetto, Giacomo
Chintaluri, Chaitanya
Podlaski, William F
Haddad, Sara A
Vogels, Tim P
Greenberg, David S
Macke, Jakob H
author_facet Gonçalves, Pedro J
Lueckmann, Jan-Matthis
Deistler, Michael
Nonnenmacher, Marcel
Öcal, Kaan
Bassetto, Giacomo
Chintaluri, Chaitanya
Podlaski, William F
Haddad, Sara A
Vogels, Tim P
Greenberg, David S
Macke, Jakob H
author_sort Gonçalves, Pedro J
collection PubMed
description Mechanistic modeling in neuroscience aims to explain observed phenomena in terms of underlying causes. However, determining which model parameters agree with complex and stochastic neural data presents a significant challenge. We address this challenge with a machine learning tool which uses deep neural density estimators—trained using model simulations—to carry out Bayesian inference and retrieve the full space of parameters compatible with raw data or selected data features. Our method is scalable in parameters and data features and can rapidly analyze new data after initial training. We demonstrate the power and flexibility of our approach on receptive fields, ion channels, and Hodgkin–Huxley models. We also characterize the space of circuit configurations giving rise to rhythmic activity in the crustacean stomatogastric ganglion, and use these results to derive hypotheses for underlying compensation mechanisms. Our approach will help close the gap between data-driven and theory-driven models of neural dynamics.
format Online
Article
Text
id pubmed-7581433
institution National Center for Biotechnology Information
language English
publishDate 2020
publisher eLife Sciences Publications, Ltd
record_format MEDLINE/PubMed
spelling pubmed-75814332020-10-23 Training deep neural density estimators to identify mechanistic models of neural dynamics Gonçalves, Pedro J Lueckmann, Jan-Matthis Deistler, Michael Nonnenmacher, Marcel Öcal, Kaan Bassetto, Giacomo Chintaluri, Chaitanya Podlaski, William F Haddad, Sara A Vogels, Tim P Greenberg, David S Macke, Jakob H eLife Computational and Systems Biology Mechanistic modeling in neuroscience aims to explain observed phenomena in terms of underlying causes. However, determining which model parameters agree with complex and stochastic neural data presents a significant challenge. We address this challenge with a machine learning tool which uses deep neural density estimators—trained using model simulations—to carry out Bayesian inference and retrieve the full space of parameters compatible with raw data or selected data features. Our method is scalable in parameters and data features and can rapidly analyze new data after initial training. We demonstrate the power and flexibility of our approach on receptive fields, ion channels, and Hodgkin–Huxley models. We also characterize the space of circuit configurations giving rise to rhythmic activity in the crustacean stomatogastric ganglion, and use these results to derive hypotheses for underlying compensation mechanisms. Our approach will help close the gap between data-driven and theory-driven models of neural dynamics. eLife Sciences Publications, Ltd 2020-09-17 /pmc/articles/PMC7581433/ /pubmed/32940606 http://dx.doi.org/10.7554/eLife.56261 Text en © 2020, Gonçalves et al http://creativecommons.org/licenses/by/4.0/ http://creativecommons.org/licenses/by/4.0/This article is distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use and redistribution provided that the original author and source are credited.
spellingShingle Computational and Systems Biology
Gonçalves, Pedro J
Lueckmann, Jan-Matthis
Deistler, Michael
Nonnenmacher, Marcel
Öcal, Kaan
Bassetto, Giacomo
Chintaluri, Chaitanya
Podlaski, William F
Haddad, Sara A
Vogels, Tim P
Greenberg, David S
Macke, Jakob H
Training deep neural density estimators to identify mechanistic models of neural dynamics
title Training deep neural density estimators to identify mechanistic models of neural dynamics
title_full Training deep neural density estimators to identify mechanistic models of neural dynamics
title_fullStr Training deep neural density estimators to identify mechanistic models of neural dynamics
title_full_unstemmed Training deep neural density estimators to identify mechanistic models of neural dynamics
title_short Training deep neural density estimators to identify mechanistic models of neural dynamics
title_sort training deep neural density estimators to identify mechanistic models of neural dynamics
topic Computational and Systems Biology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7581433/
https://www.ncbi.nlm.nih.gov/pubmed/32940606
http://dx.doi.org/10.7554/eLife.56261
work_keys_str_mv AT goncalvespedroj trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT lueckmannjanmatthis trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT deistlermichael trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT nonnenmachermarcel trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT ocalkaan trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT bassettogiacomo trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT chintalurichaitanya trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT podlaskiwilliamf trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT haddadsaraa trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT vogelstimp trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT greenbergdavids trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics
AT mackejakobh trainingdeepneuraldensityestimatorstoidentifymechanisticmodelsofneuraldynamics