RateML: A Code Generation Tool for Brain Network Models

被引:2
作者
van der Vlag, Michiel [1 ]
Woodman, Marmaduke [2 ]
Fousek, Jan [2 ]
Diaz-Pier, Sandra [1 ]
Martin, Aaron Perez [1 ]
Jirsa, Viktor [2 ]
Morrison, Abigail [1 ,3 ,4 ,5 ,6 ]
机构
[1] Forschungszentrum Julich, Inst Adv Simulat, Julich Supercomp Ctr JSC, Simulat & Data Lab Neurosci,JARA, Julich, Germany
[2] Aix Marseille Univ, Inst Neurosci Syst, Marseille, France
[3] Inst Neurosci & Med INM 6, Julich, Germany
[4] Inst Adv Simulat IAS 6, Julich, Germany
[5] JARA Inst Brain, Julich, Germany
[6] Rhein Westfal TH Aachen, Comp Sci 3 Software Engn, Aachen, Germany
来源
FRONTIERS IN NETWORK PHYSIOLOGY | 2022年 / 2卷
基金
欧盟地平线“2020”;
关键词
brain network models; domain specific language; automatic code generation; high performance computing; simulation;
D O I
10.3389/fnetp.2022.826345
中图分类号
Q4 [生理学];
学科分类号
071003 ;
摘要
Whole brain network models are now an established tool in scientific and clinical research, however their use in a larger workflow still adds significant informatics complexity. We propose a tool, RateML, that enables users to generate such models from a succinct declarative description, in which the mathematics of the model are described without specifying how their simulation should be implemented. RateML builds on NeuroML's Low Entropy Model Specification (LEMS), an XML based language for specifying models of dynamical systems, allowing descriptions of neural mass and discretized neural field models, as implemented by the Virtual Brain (TVB) simulator: the end user describes their model's mathematics once and generates and runs code for different languages, targeting both CPUs for fast single simulations and GPUs for parallel ensemble simulations. High performance parallel simulations are crucial for tuning many parameters of a model to empirical data such as functional magnetic resonance imaging (fMRI), with reasonable execution times on small or modest hardware resources. Specifically, while RateML can generate Python model code, it enables generation of Compute Unified Device Architecture C++ code for NVIDIA GPUs. When a CUDA implementation of a model is generated, a tailored model driver class is produced, enabling the user to tweak the driver by hand and perform the parameter sweep. The model and driver can be executed on any compute capable NVIDIA GPU with a high degree of parallelization, either locally or in a compute cluster environment. The results reported in this manuscript show that with the CUDA code generated by RateML, it is possible to explore thousands of parameter combinations with a single Graphics Processing Unit for different models, substantially reducing parameter exploration times and resource usage for the brain network models, in turn accelerating the research workflow itself. This provides a new tool to create efficient and broader parameter fitting workflows, support studies on larger cohorts, and derive more robust and statistically relevant conclusions about brain dynamics.
引用
收藏
页数:13
相关论文
共 36 条
  • [1] Abadi M, 2015, TensorFlow: Large-Scale Machine Learning on Heterogeneous Systems
  • [2] Arbor - a morphologically-detailed neural network simulation library for contemporary high-performance computing architectures
    Akar, Nora Abi
    Cumming, Ben
    Karakasis, Vasileios
    Kuesters, Anne
    Klijn, Wouter
    Peyser, Alexander
    Yates, Stuart
    [J]. 2019 27TH EUROMICRO INTERNATIONAL CONFERENCE ON PARALLEL, DISTRIBUTED AND NETWORK-BASED PROCESSING (PDP), 2019, : 274 - 282
  • [3] Personalized brain network models for assessing structure-function relationships
    Bansal, Kanika
    Nakuci, Johan
    Muldoon, Sarah Feldt
    [J]. CURRENT OPINION IN NEUROBIOLOGY, 2018, 52 : 42 - 47
  • [4] Code Generation in Computational Neuroscience: A Review of Tools and Techniques
    Blundell, Inga
    Brette, Romain
    Cleland, Thomas A.
    Close, Thomas G.
    Coca, Daniel
    Davison, Andrew P.
    Diaz-Pier, Sandra
    Musoles, Carlos Fernandez
    Gleeson, Padraig
    Goodman, Dan F. M.
    Hines, Michael
    Hopkins, Michael W.
    Kumbhar, Pramod
    Lester, David R.
    Marin, Boris
    Morrison, Abigail
    Mueller, Eric
    Nowotny, Thomas
    Peyser, Alexander
    Plotnikov, Dimitri
    Richmond, Paul
    Rowley, Andrew
    Rumpe, Bernhard
    Stimberg, Marcel
    Stokes, Alan B.
    Tomkins, Adam
    Trensch, Guido
    Woodman, Marmaduke
    Eppler, Jochen Martin
    [J]. FRONTIERS IN NEUROINFORMATICS, 2018, 12
  • [5] Role of local network oscillations in resting-state functional connectivity
    Cabral, Joana
    Hugues, Etienne
    Sporns, Olaf
    Deco, Gustavo
    [J]. NEUROIMAGE, 2011, 57 (01) : 130 - 139
  • [6] LEMS: a language for expressing complex biological models in concise and hierarchical form and its use in underpinning NeuroML 2
    Cannon, Robert C.
    Gleeson, Padraig
    Crook, Sharon
    Ganapathy, Gautham
    Marin, Boris
    Piasini, Eugenio
    Silver, R. Angus
    [J]. FRONTIERS IN NEUROINFORMATICS, 2014, 8
  • [7] Davison A., 2013, NineML, P1, DOI [10.1007/978-1-4614-7320-6_375-2, DOI 10.1007/978-1-4614-7320-6_375-2]
  • [8] Identification of Optimal Structural Connectivity Using Functional Connectivity and Neural Modeling
    Deco, Gustavo
    McIntosh, Anthony R.
    Shen, Kelly
    Hutchison, R. Matthew
    Menon, Ravi S.
    Everling, Stefan
    Hagmann, Patric
    Jirsa, Viktor K.
    [J]. JOURNAL OF NEUROSCIENCE, 2014, 34 (23) : 7910 - 7916
  • [9] The Scientific Case for Brain Simulations
    Einevoll, Gaute T.
    Destexhe, Alain
    Diesmann, Markus
    Gruen, Sonja
    Jirsa, Viktor
    de Kamps, Marc
    Migliore, Michele
    Ness, Torbjorn V.
    Plesser, Hans E.
    Schurmann, Felix
    [J]. NEURON, 2019, 102 (04) : 735 - 744
  • [10] A new neuroinformatics approach to personalized medicine in neurology: The Virtual Brain
    Falcon, Maria I.
    Jirsa, Viktor
    Solodkin, Ana
    [J]. CURRENT OPINION IN NEUROLOGY, 2016, 29 (04) : 429 - 436