The Mind Research Network Albuquerque, New Mexico ; Department of ECE, University of New Mexico Albuquerque, New Mexico.
Brain Behav. 2013 May;3(3):229-42. doi: 10.1002/brb3.131. Epub 2013 Mar 13.
This study investigates the potential of independent component analysis (ICA) to provide a data-driven approach for group level analysis of magnetic resonance (MR) spectra. ICA collectively analyzes data to identify maximally independent components, each of which captures covarying resonances, including those from different metabolic sources. A comparative evaluation of the ICA approach with the more established LCModel method in analyzing two different noise-free, artifact-free, simulated data sets of known compositions is presented. The results from such ideal simulations demonstrate the ability of data-driven ICA to decompose data and accurately extract components resembling modeled basis spectra from both data sets, whereas the LCModel results suffer when the underlying model deviates from assumptions, thus highlighting the sensitivity of model-based approaches to modeling inaccuracies. Analyses with simulated data show that independent component weights are good estimates of concentrations, even of metabolites with low intensity singlet peaks, such as scyllo-inositol. ICA is also applied to single voxel spectra from 193 subjects, without correcting for baseline variations, line-width broadening or noise. The results provide evidence that, despite the presence of confounding artifacts, ICA can be used to analyze in vivo spectra and extract resonances of interest. ICA is a promising technique for decomposing MR spectral data into components resembling metabolite resonances, and therefore has the potential to provide a data-driven alternative to the use of metabolite concentrations derived from curve-fitting individual spectra in making group comparisons.
本研究探讨了独立成分分析(ICA)在磁共振(MR)光谱的组水平分析中提供数据驱动方法的潜力。ICA 共同分析数据以识别最大独立成分,每个成分都捕获协变的共振,包括来自不同代谢源的共振。对 ICA 方法与更成熟的 LCModel 方法在分析两个不同无噪声、无伪影、已知成分的模拟数据集的比较评估进行了介绍。来自这些理想模拟的结果表明,数据驱动的 ICA 能够分解数据,并从两个数据集准确提取类似于建模基础光谱的成分,而 LCModel 结果在基础模型偏离假设时会受到影响,从而突出了基于模型的方法对建模不准确的敏感性。使用模拟数据的分析表明,独立成分权重是浓度的良好估计值,即使是强度单峰的代谢物,如 scyllo-肌醇也是如此。ICA 还应用于 193 名受试者的单体素光谱,而无需校正基线变化、线宽展宽或噪声。结果提供了证据,表明尽管存在混杂伪影,但 ICA 可用于分析体内光谱并提取感兴趣的共振。ICA 是一种将 MR 光谱数据分解为类似于代谢物共振的成分的有前途的技术,因此有可能提供一种数据驱动的替代方法,替代使用从个体光谱拟合曲线获得的代谢物浓度进行组间比较。