Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling

Research output: Contribution to journalJournal articleResearchpeer-review

Standard

Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling. / Puonti, Oula; Van Leemput, Koen; Saturnino, Guilherme B.; Siebner, Hartwig R.; Madsen, Kristoffer H.; Thielscher, Axel.

In: NeuroImage, Vol. 219, 117044, 2020.

Research output: Contribution to journalJournal articleResearchpeer-review

Harvard

Puonti, O, Van Leemput, K, Saturnino, GB, Siebner, HR, Madsen, KH & Thielscher, A 2020, 'Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling', NeuroImage, vol. 219, 117044. https://doi.org/10.1016/j.neuroimage.2020.117044

APA

Puonti, O., Van Leemput, K., Saturnino, G. B., Siebner, H. R., Madsen, K. H., & Thielscher, A. (2020). Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling. NeuroImage, 219, [117044]. https://doi.org/10.1016/j.neuroimage.2020.117044

Vancouver

Puonti O, Van Leemput K, Saturnino GB, Siebner HR, Madsen KH, Thielscher A. Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling. NeuroImage. 2020;219. 117044. https://doi.org/10.1016/j.neuroimage.2020.117044

Author

Puonti, Oula ; Van Leemput, Koen ; Saturnino, Guilherme B. ; Siebner, Hartwig R. ; Madsen, Kristoffer H. ; Thielscher, Axel. / Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling. In: NeuroImage. 2020 ; Vol. 219.

Bibtex

@article{6eeeafaee1dc4ad0a561ef3195617d43,
title = "Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling",
abstract = "Transcranial brain stimulation (TBS) has been established as a method for modulating and mapping the function of the human brain, and as a potential treatment tool in several brain disorders. Typically, the stimulation is applied using a one-size-fits-all approach with predetermined locations for the electrodes, in electric stimulation (TES), or the coil, in magnetic stimulation (TMS), which disregards anatomical variability between individuals. However, the induced electric field distribution in the head largely depends on anatomical features implying the need for individually tailored stimulation protocols for focal dosing. This requires detailed models of the individual head anatomy, combined with electric field simulations, to find an optimal stimulation protocol for a given cortical target. Considering the anatomical and functional complexity of different brain disorders and pathologies, it is crucial to account for the anatomical variability in order to translate TBS from a research tool into a viable option for treatment. In this article we present a new method, called CHARM, for automated segmentation of fifteen different head tissues from magnetic resonance (MR) scans. The new method compares favorably to two freely available software tools on a five-tissue segmentation task, while obtaining reasonable segmentation accuracy over all fifteen tissues. The method automatically adapts to variability in the input scans and can thus be directly applied to clinical or research scans acquired with different scanners, sequences or settings. We show that an increase in automated segmentation accuracy results in a lower relative error in electric field simulations when compared to anatomical head models constructed from reference segmentations. However, also the improved segmentations and, by implication, the electric field simulations are affected by systematic artifacts in the input MR scans. As long as the artifacts are unaccounted for, this can lead to local simulation differences up to 30% of the peak field strength on reference simulations. Finally, we exemplarily demonstrate the effect of including all fifteen tissue classes in the field simulations against the standard approach of using only five tissue classes and show that for specific stimulation configurations the local differences can reach 10% of the peak field strength.",
keywords = "Electroencephalography, Head segmentation, Magnetoencephalography, MRI, Non-invasive brain stimulation, Volume conductor modeling",
author = "Oula Puonti and {Van Leemput}, Koen and Saturnino, {Guilherme B.} and Siebner, {Hartwig R.} and Madsen, {Kristoffer H.} and Axel Thielscher",
year = "2020",
doi = "10.1016/j.neuroimage.2020.117044",
language = "English",
volume = "219",
journal = "NeuroImage",
issn = "1053-8119",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Accurate and robust whole-head segmentation from magnetic resonance images for individualized head modeling

AU - Puonti, Oula

AU - Van Leemput, Koen

AU - Saturnino, Guilherme B.

AU - Siebner, Hartwig R.

AU - Madsen, Kristoffer H.

AU - Thielscher, Axel

PY - 2020

Y1 - 2020

N2 - Transcranial brain stimulation (TBS) has been established as a method for modulating and mapping the function of the human brain, and as a potential treatment tool in several brain disorders. Typically, the stimulation is applied using a one-size-fits-all approach with predetermined locations for the electrodes, in electric stimulation (TES), or the coil, in magnetic stimulation (TMS), which disregards anatomical variability between individuals. However, the induced electric field distribution in the head largely depends on anatomical features implying the need for individually tailored stimulation protocols for focal dosing. This requires detailed models of the individual head anatomy, combined with electric field simulations, to find an optimal stimulation protocol for a given cortical target. Considering the anatomical and functional complexity of different brain disorders and pathologies, it is crucial to account for the anatomical variability in order to translate TBS from a research tool into a viable option for treatment. In this article we present a new method, called CHARM, for automated segmentation of fifteen different head tissues from magnetic resonance (MR) scans. The new method compares favorably to two freely available software tools on a five-tissue segmentation task, while obtaining reasonable segmentation accuracy over all fifteen tissues. The method automatically adapts to variability in the input scans and can thus be directly applied to clinical or research scans acquired with different scanners, sequences or settings. We show that an increase in automated segmentation accuracy results in a lower relative error in electric field simulations when compared to anatomical head models constructed from reference segmentations. However, also the improved segmentations and, by implication, the electric field simulations are affected by systematic artifacts in the input MR scans. As long as the artifacts are unaccounted for, this can lead to local simulation differences up to 30% of the peak field strength on reference simulations. Finally, we exemplarily demonstrate the effect of including all fifteen tissue classes in the field simulations against the standard approach of using only five tissue classes and show that for specific stimulation configurations the local differences can reach 10% of the peak field strength.

AB - Transcranial brain stimulation (TBS) has been established as a method for modulating and mapping the function of the human brain, and as a potential treatment tool in several brain disorders. Typically, the stimulation is applied using a one-size-fits-all approach with predetermined locations for the electrodes, in electric stimulation (TES), or the coil, in magnetic stimulation (TMS), which disregards anatomical variability between individuals. However, the induced electric field distribution in the head largely depends on anatomical features implying the need for individually tailored stimulation protocols for focal dosing. This requires detailed models of the individual head anatomy, combined with electric field simulations, to find an optimal stimulation protocol for a given cortical target. Considering the anatomical and functional complexity of different brain disorders and pathologies, it is crucial to account for the anatomical variability in order to translate TBS from a research tool into a viable option for treatment. In this article we present a new method, called CHARM, for automated segmentation of fifteen different head tissues from magnetic resonance (MR) scans. The new method compares favorably to two freely available software tools on a five-tissue segmentation task, while obtaining reasonable segmentation accuracy over all fifteen tissues. The method automatically adapts to variability in the input scans and can thus be directly applied to clinical or research scans acquired with different scanners, sequences or settings. We show that an increase in automated segmentation accuracy results in a lower relative error in electric field simulations when compared to anatomical head models constructed from reference segmentations. However, also the improved segmentations and, by implication, the electric field simulations are affected by systematic artifacts in the input MR scans. As long as the artifacts are unaccounted for, this can lead to local simulation differences up to 30% of the peak field strength on reference simulations. Finally, we exemplarily demonstrate the effect of including all fifteen tissue classes in the field simulations against the standard approach of using only five tissue classes and show that for specific stimulation configurations the local differences can reach 10% of the peak field strength.

KW - Electroencephalography

KW - Head segmentation

KW - Magnetoencephalography

KW - MRI

KW - Non-invasive brain stimulation

KW - Volume conductor modeling

U2 - 10.1016/j.neuroimage.2020.117044

DO - 10.1016/j.neuroimage.2020.117044

M3 - Journal article

C2 - 32534963

AN - SCOPUS:85087087672

VL - 219

JO - NeuroImage

JF - NeuroImage

SN - 1053-8119

M1 - 117044

ER -

ID: 249905772