Cargando…
NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics
Machine learning provides a valuable tool for analyzing high-dimensional functional neuroimaging data, and is proving effective in predicting various neurological conditions, psychiatric disorders, and cognitive patterns. In functional magnetic resonance imaging (MRI) research, interactions between...
Autores principales: | , , , , , , |
---|---|
Formato: | Online Artículo Texto |
Lenguaje: | English |
Publicado: |
Cornell University
2023
|
Materias: | |
Acceso en línea: | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10690301/ https://www.ncbi.nlm.nih.gov/pubmed/38045477 |
_version_ | 1785152500758740992 |
---|---|
author | Said, Anwar Bayrak, Roza G. Derr, Tyler Shabbir, Mudassir Moyer, Daniel Chang, Catie Koutsoukos, Xenofon |
author_facet | Said, Anwar Bayrak, Roza G. Derr, Tyler Shabbir, Mudassir Moyer, Daniel Chang, Catie Koutsoukos, Xenofon |
author_sort | Said, Anwar |
collection | PubMed |
description | Machine learning provides a valuable tool for analyzing high-dimensional functional neuroimaging data, and is proving effective in predicting various neurological conditions, psychiatric disorders, and cognitive patterns. In functional magnetic resonance imaging (MRI) research, interactions between brain regions are commonly modeled using graph-based representations. The potency of graph machine learning methods has been established across myriad domains, marking a transformative step in data interpretation and predictive modeling. Yet, despite their promise, the transposition of these techniques to the neuroimaging domain has been challenging due to the expansive number of potential preprocessing pipelines and the large parameter search space for graph-based dataset construction. In this paper, we introduce NeuroGraph, a collection of graph-based neuroimaging datasets, and demonstrated its utility for predicting multiple categories of behavioral and cognitive traits. We delve deeply into the dataset generation search space by crafting 35 datasets that encompass static and dynamic brain connectivity, running in excess of 15 baseline methods for benchmarking. Additionally, we provide generic frameworks for learning on both static and dynamic graphs. Our extensive experiments lead to several key observations. Notably, using correlation vectors as node features, incorporating larger number of regions of interest, and employing sparser graphs lead to improved performance. To foster further advancements in graph-based data driven neuroimaging analysis, we offer a comprehensive open-source Python package that includes the benchmark datasets, baseline implementations, model training, and standard evaluation. |
format | Online Article Text |
id | pubmed-10690301 |
institution | National Center for Biotechnology Information |
language | English |
publishDate | 2023 |
publisher | Cornell University |
record_format | MEDLINE/PubMed |
spelling | pubmed-106903012023-12-02 NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics Said, Anwar Bayrak, Roza G. Derr, Tyler Shabbir, Mudassir Moyer, Daniel Chang, Catie Koutsoukos, Xenofon ArXiv Article Machine learning provides a valuable tool for analyzing high-dimensional functional neuroimaging data, and is proving effective in predicting various neurological conditions, psychiatric disorders, and cognitive patterns. In functional magnetic resonance imaging (MRI) research, interactions between brain regions are commonly modeled using graph-based representations. The potency of graph machine learning methods has been established across myriad domains, marking a transformative step in data interpretation and predictive modeling. Yet, despite their promise, the transposition of these techniques to the neuroimaging domain has been challenging due to the expansive number of potential preprocessing pipelines and the large parameter search space for graph-based dataset construction. In this paper, we introduce NeuroGraph, a collection of graph-based neuroimaging datasets, and demonstrated its utility for predicting multiple categories of behavioral and cognitive traits. We delve deeply into the dataset generation search space by crafting 35 datasets that encompass static and dynamic brain connectivity, running in excess of 15 baseline methods for benchmarking. Additionally, we provide generic frameworks for learning on both static and dynamic graphs. Our extensive experiments lead to several key observations. Notably, using correlation vectors as node features, incorporating larger number of regions of interest, and employing sparser graphs lead to improved performance. To foster further advancements in graph-based data driven neuroimaging analysis, we offer a comprehensive open-source Python package that includes the benchmark datasets, baseline implementations, model training, and standard evaluation. Cornell University 2023-11-22 /pmc/articles/PMC10690301/ /pubmed/38045477 Text en https://creativecommons.org/licenses/by/4.0/This work is licensed under a Creative Commons Attribution 4.0 International License (https://creativecommons.org/licenses/by/4.0/) , which allows reusers to distribute, remix, adapt, and build upon the material in any medium or format, so long as attribution is given to the creator. The license allows for commercial use. |
spellingShingle | Article Said, Anwar Bayrak, Roza G. Derr, Tyler Shabbir, Mudassir Moyer, Daniel Chang, Catie Koutsoukos, Xenofon NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title_full | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title_fullStr | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title_full_unstemmed | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title_short | NeuroGraph: Benchmarks for Graph Machine Learning in Brain Connectomics |
title_sort | neurograph: benchmarks for graph machine learning in brain connectomics |
topic | Article |
url | https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10690301/ https://www.ncbi.nlm.nih.gov/pubmed/38045477 |
work_keys_str_mv | AT saidanwar neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT bayrakrozag neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT derrtyler neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT shabbirmudassir neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT moyerdaniel neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT changcatie neurographbenchmarksforgraphmachinelearninginbrainconnectomics AT koutsoukosxenofon neurographbenchmarksforgraphmachinelearninginbrainconnectomics |