Psychology Department, Northeastern University, Boston, Massachusetts, United States of America.
PLoS One. 2012;7(10):e44439. doi: 10.1371/journal.pone.0044439. Epub 2012 Oct 11.
EEG/MEG source localization based on a "distributed solution" is severely underdetermined, because the number of sources is much larger than the number of measurements. In particular, this makes the solution strongly affected by sensor noise. A new way to constrain the problem is presented. By using the anatomical basis of spherical harmonics (or spherical splines) instead of single dipoles the dimensionality of the inverse solution is greatly reduced without sacrificing the quality of the data fit. The smoothness of the resulting solution reduces the surface bias and scatter of the sources (incoherency) compared to the popular minimum-norm algorithms where single-dipole basis is used (MNE, depth-weighted MNE, dSPM, sLORETA, LORETA, IBF) and allows to efficiently reduce the effect of sensor noise. This approach, termed Harmony, performed well when applied to experimental data (two exemplars of early evoked potentials) and showed better localization precision and solution coherence than the other tested algorithms when applied to realistically simulated data.
基于“分布式解”的 EEG/MEG 源定位严重欠定,因为源的数量远远大于测量的数量。特别是,这使得解受到传感器噪声的强烈影响。本文提出了一种新的约束问题的方法。通过使用球形谐(或球形样条)的解剖基础代替单个偶极子,逆解的维数大大降低,而不会牺牲数据拟合的质量。与使用单偶极子基的流行的最小范数算法(MNE、深度加权 MNE、dSPM、sLORETA、LORETA、IBF)相比,所得解的平滑度降低了源的表面偏差和分散(不连贯性),并允许有效地降低传感器噪声的影响。当应用于实验数据(两个早期诱发电位的示例)时,该方法(称为 Harmony)表现良好,并在应用于真实模拟数据时表现出比其他测试算法更好的定位精度和解一致性。