The SESAMEEG package: a probabilistic tool for source localization and uncertainty quantification in M/EEG

被引:0
|
作者
Luria, Gianvittorio [1 ]
Viani, Alessandro [2 ]
Pascarella, Annalisa [3 ]
Bornfleth, Harald [4 ]
Sommariva, Sara [2 ]
Sorrentino, Alberto [2 ]
机构
[1] Bayesian Estimat Engn Solut Srl, Genoa, Italy
[2] Univ Genoa, Dept Math, Genoa, Italy
[3] CNR, Inst Appl Math Mauro Picone, Rome, Italy
[4] BESA GmbH, Grafelfing, Germany
来源
关键词
Bayesian inference; inverse problems; MEG; EEG; open-source software; MATLAB; !text type='Python']Python[!/text; BRAIN; MAGNETOENCEPHALOGRAPHY;
D O I
10.3389/fnhum.2024.1359753
中图分类号
Q189 [神经科学];
学科分类号
071006 ;
摘要
Source localization from M/EEG data is a fundamental step in many analysis pipelines, including those aiming at clinical applications such as the pre-surgical evaluation in epilepsy. Among the many available source localization algorithms, SESAME (SEquential SemiAnalytic Montecarlo Estimator) is a Bayesian method that distinguishes itself for several good reasons: it is highly accurate in localizing focal sources with comparably little sensitivity to input parameters; it allows the quantification of the uncertainty of the reconstructed source(s); it accepts user-defined a priori high- and low-probability search regions in input; it can localize the generators of neural oscillations in the frequency domain. Both a Python and a MATLAB implementation of SESAME are available as open-source packages under the name of SESAMEEG and are well integrated with the main software packages used by the M/EEG community; moreover, the algorithm is part of the commercial software BESA Research (from version 7.0 onwards). While SESAMEEG is arguably simpler to use than other source modeling methods, it has a much richer output that deserves to be described thoroughly. In this article, after a gentle mathematical introduction to the algorithm, we provide a complete description of the available output and show several use cases on experimental M/EEG data.
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页数:12
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