TY - JOUR
T1 - In silico study of the effects of cerebral circulation on source localization using a dynamical anatomical atlas of the human head
AU - Lahtinen, Joonas
AU - Moura, Fernando
AU - Samavaki, Maryam
AU - Siltanen, Samuli
AU - Pursiainen, Sampsa
N1 - Funding Information:
The work of J L was funded by Väisälä Fund; J L, M S and S P were supported by the Academy of Finland Centre of Excellence (CoE) in Inverse Modelling and Imaging 2018–2025 (Decision 336792) and Project 336151; F S M and S S were funded by the Jane and Aatos Erkko Foundation, Project ‘Electrical Impedance Tomography—a novel method for improved diagnosis of stroke’, the CoE in Inverse Modelling and Imaging (Decision 312339), and F S M also by the São Paulo Research Foundation–FAPESP (2019/09154-7). The authors wish to thank the Finnish Grid and Cloud Infrastructure (FGCI) for supporting this project with computational and data storage resources.
Funding Information:
The work of J L was funded by Väisälä Fund; J L, M S and S P were supported by the Academy of Finland Centre of Excellence (CoE) in Inverse Modelling and Imaging 2018-2025 (Decision 336792) and Project 336151; F S M and S S were funded by the Jane and Aatos Erkko Foundation, Project ‘Electrical Impedance Tomography—a novel method for improved diagnosis of stroke’, the CoE in Inverse Modelling and Imaging (Decision 312339), and F S M also by the São Paulo Research Foundation-FAPESP (2019/09154-7). The authors wish to thank the Finnish Grid and Cloud Infrastructure (FGCI) for supporting this project with computational and data storage resources.
Publisher Copyright:
© 2023 The Author(s). Published by IOP Publishing Ltd.
PY - 2023
Y1 - 2023
N2 - Objective. This study focuses on the effects of dynamical vascular modeling on source localization errors in electroencephalography (EEG). Our aim of this in silico study is to (a) find out the effects of cerebral circulation on the accuracy of EEG source localization estimates, and (b) evaluate its relevance with respect to measurement noise and interpatient variation. Approach. We employ a four-dimensional (3D + T) statistical atlas of the electrical properties of the human head with a cerebral circulation model to generate virtual patients with different cerebral circulatory conditions for EEG source localization analysis. As source reconstruction techniques, we use the linearly constraint minimum variance (LCMV) beamformer, standardized low-resolution brain electromagnetic tomography (sLORETA), and the dipole scan (DS). Main results. Results indicate that arterial blood flow affects source localization at different depths and with varying significance. The average flow rate plays an important role in source localization performance, while the pulsatility effects are very small. In cases where a personalized model of the head is available, blood circulation mismodeling causes localization errors, especially in the deep structures of the brain where the main cerebral arteries are located. When interpatient variations are considered, the results show differences up to 15 mm for sLORETA and LCMV beamformer and 10 mm for DS in the brainstem and entorhinal cortices regions. In regions far from the main arteries vessels, the discrepancies are smaller than 3 mm. When measurement noise is added and interpatient differences are considered in a deep dipolar source, the results indicate that the effects of conductivity mismatch are detectable even for moderate measurement noise. The signal-to-noise ratio limit for sLORETA and LCMV beamformer is 15 dB, while the limit is under 30 dB for DS. Significance. Localization of the brain activity via EEG constitutes an ill-posed inverse problem, where any modeling uncertainty, e.g. a slight amount of noise in the data or material parameter discrepancies, can lead to a significant deviation of the estimated activity, especially in the deep structures of the brain. Proper modeling of the conductivity distribution is necessary in order to obtain an appropriate source localization. In this study, we show that the conductivity of the deep brain structures is particularly impacted by blood flow-induced changes in conductivity because large arteries and veins access the brain through that region.
AB - Objective. This study focuses on the effects of dynamical vascular modeling on source localization errors in electroencephalography (EEG). Our aim of this in silico study is to (a) find out the effects of cerebral circulation on the accuracy of EEG source localization estimates, and (b) evaluate its relevance with respect to measurement noise and interpatient variation. Approach. We employ a four-dimensional (3D + T) statistical atlas of the electrical properties of the human head with a cerebral circulation model to generate virtual patients with different cerebral circulatory conditions for EEG source localization analysis. As source reconstruction techniques, we use the linearly constraint minimum variance (LCMV) beamformer, standardized low-resolution brain electromagnetic tomography (sLORETA), and the dipole scan (DS). Main results. Results indicate that arterial blood flow affects source localization at different depths and with varying significance. The average flow rate plays an important role in source localization performance, while the pulsatility effects are very small. In cases where a personalized model of the head is available, blood circulation mismodeling causes localization errors, especially in the deep structures of the brain where the main cerebral arteries are located. When interpatient variations are considered, the results show differences up to 15 mm for sLORETA and LCMV beamformer and 10 mm for DS in the brainstem and entorhinal cortices regions. In regions far from the main arteries vessels, the discrepancies are smaller than 3 mm. When measurement noise is added and interpatient differences are considered in a deep dipolar source, the results indicate that the effects of conductivity mismatch are detectable even for moderate measurement noise. The signal-to-noise ratio limit for sLORETA and LCMV beamformer is 15 dB, while the limit is under 30 dB for DS. Significance. Localization of the brain activity via EEG constitutes an ill-posed inverse problem, where any modeling uncertainty, e.g. a slight amount of noise in the data or material parameter discrepancies, can lead to a significant deviation of the estimated activity, especially in the deep structures of the brain. Proper modeling of the conductivity distribution is necessary in order to obtain an appropriate source localization. In this study, we show that the conductivity of the deep brain structures is particularly impacted by blood flow-induced changes in conductivity because large arteries and veins access the brain through that region.
KW - anatomical atlas
KW - cerebral circulation
KW - electroencephalography
KW - human head model
KW - inverse problems
KW - source localization
U2 - 10.1088/1741-2552/acbdc1
DO - 10.1088/1741-2552/acbdc1
M3 - Article
C2 - 36808911
AN - SCOPUS:85150000319
SN - 1741-2560
VL - 20
JO - Journal of Neural Engineering
JF - Journal of Neural Engineering
IS - 2
M1 - 026005
ER -