A reusable benchmark of brain-age prediction from M/EEG resting-state signals

被引:29
作者
Engemann, Denis A. [1 ,2 ,3 ]
Mellot, Apolline [2 ]
Hochenberger, Richard [2 ]
Banville, Hubert [2 ,4 ]
Sabbagh, David [2 ,5 ]
Gemein, Lukas [6 ,7 ]
Ball, Tonio [6 ,7 ,8 ]
Gramfort, Alexandre [2 ]
机构
[1] F Hoffmann Roche Ltd, Roche Innovat Ctr Basel, Roche Pharma Res & Early Dev Neurosci & Rare Dis, Basel, Switzerland
[2] Univ Saclay, INRIA, CEA, Palaiseau, France
[3] Max Planck Inst Human Cognit & Brain Sci, Dept Neurol, D-04103 Leipzig, Germany
[4] Univ Paris Diderot, INSERM, UMRS 942, Paris, France
[5] Univ Freiburg, Dept Neurosurg, Neuromed AI Lab, Med Ctr Univ Freiburg, Engelbergerstr 21, D-79106 Freiburg, Germany
[6] Univ Freiburg, Comp Sci Dept Univ Freiburg, Neurorobot Lab, Fac Engn, Georges Kohler Allee 80, D-79110 Freiburg, Germany
[7] Univ Freiburg, BrainLinks BrainTools Cluster Excellence, Freiburg, Germany
[8] InteraXon Inc, Toronto, ON, Canada
关键词
Clinical neuroscience; Brain age; Electroencephalography; Magnetoencephalography; Machine learning; Population modeling; Riemannian geometry; Random forests; Deep learning; HUMAN CONNECTOME PROJECT; TELOMERE LENGTH; LEARNING-MODELS; EEG; MEG; ELECTROENCEPHALOGRAM; SIGNATURES; DIAGNOSIS; EFFICIENT; AMPLITUDE;
D O I
10.1016/j.neuroimage.2022.119521
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Population-level modeling can define quantitative measures of individual aging by applying machine learning to large volumes of brain images. These measures of brain age, obtained from the general population, helped characterize disease severity in neurological populations, improving estimates of diagnosis or prognosis. Magnetoencephalography (MEG) and Electroencephalography (EEG) have the potential to further generalize this approach towards prevention and public health by enabling assessments of brain health at large scales in socio-economically diverse environments. However, more research is needed to define methods that can handle the complexity and diversity of M/EEG signals across diverse real-world contexts. To catalyse this effort, here we propose reusable benchmarks of competing machine learning approaches for brain age modeling. We benchmarked popular classical machine learning pipelines and deep learning architectures previously used for pathology decoding or brain age estimation in 4 international M/EEG cohorts from diverse countries and cultural contexts, including recordings from more than 2500 participants. Our benchmarks were built on top of the M/EEG adaptations of the BIDS standard, providing tools that can be applied with minimal modification on any M/EEG dataset provided in the BIDS format. Our results suggest that, regardless of whether classical machine learning or deep learning was used, the highest performance was reached by pipelines and architectures involving spatially aware representations of the M/EEG signals, leading to R-2 scores between 0.60-0.74. Hand-crafted features paired with random forest regression provided robust benchmarks even in situations in which other approaches failed. Taken together, this set of benchmarks, accompanied by open-source software and high-level Python scripts, can serve as a starting point and quantitative reference for future efforts at developing M/EEG-based measures of brain aging. The generality of the approach renders this benchmark reusable for other related objectives such as modeling specific cognitive variables or clinical endpoints.
引用
收藏
页数:17
相关论文
共 147 条
  • [21] Resting State Healthy EEG: The First Wave of the Cuban Normative Database
    Bosch-Bayard, Jorge
    Galan, Lidice
    Aubert Vazquez, Eduardo
    Virues Alba, Trinidad
    Valdes-Sosa, Pedro A.
    [J]. FRONTIERS IN NEUROSCIENCE, 2020, 14
  • [22] Random forests
    Breiman, L
    [J]. MACHINE LEARNING, 2001, 45 (01) : 5 - 32
  • [23] Breiman L, 1996, MACH LEARN, V24, P123, DOI 10.1023/A:1018054314350
  • [24] Buitinck L., 2013, ARXIV, DOI 10.48550/arXiv.1309.0238
  • [25] The UK Biobank resource with deep phenotyping and genomic data
    Bycroft, Clare
    Freeman, Colin
    Petkova, Desislava
    Band, Gavin
    Elliott, Lloyd T.
    Sharp, Kevin
    Motyer, Allan
    Vukcevic, Damjan
    Delaneau, Olivier
    O'Connell, Jared
    Cortes, Adrian
    Welsh, Samantha
    Young, Alan
    Effingham, Mark
    McVean, Gil
    Leslie, Stephen
    Allen, Naomi
    Donnelly, Peter
    Marchini, Jonathan
    [J]. NATURE, 2018, 562 (7726) : 203 - +
  • [26] Aging gracefully: Compensatory brain activity in high-performing older adults
    Cabeza, R
    Anderson, ND
    Locantore, JK
    McIntosh, AR
    [J]. NEUROIMAGE, 2002, 17 (03) : 1394 - 1402
  • [27] A Deep Learning Architecture for Temporal Sleep Stage Classification Using Multivariate and Multimodal Time Series
    Chambon, Stanislas
    Galtier, Mathieu N.
    Arnal, Pierrick J.
    Wainrib, Gilles
    Gramfort, Alexandre
    [J]. IEEE TRANSACTIONS ON NEURAL SYSTEMS AND REHABILITATION ENGINEERING, 2018, 26 (04) : 758 - 769
  • [28] Systemic Racism in EEG Research: Considerations and Potential Solutions
    Choy, Tricia
    Baker, Elizabeth
    Stavropoulos, Katherine
    [J]. AFFECTIVE SCIENCE, 2022, 3 (01) : 14 - 20
  • [29] Brain age predicts mortality
    Cole, J. H.
    Ritchie, S. J.
    Bastin, M. E.
    Hernandez, M. C. Valdes
    Maniega, S. Munoz
    Royle, N.
    Corley, J.
    Pattie, A.
    Harris, S. E.
    Zhang, Q.
    Wray, N. R.
    Redmond, P.
    Marioni, R. E.
    Starr, J. M.
    Cox, S. R.
    Wardlaw, J. M.
    Sharp, D. J.
    Deary, I. J.
    [J]. MOLECULAR PSYCHIATRY, 2018, 23 (05) : 1385 - 1392
  • [30] Cole JH, 2019, HEALTHY AGEING LONG, V10, P293, DOI 10.1007/978-3-030-24970-0_19