Pas Kristofor, Benjamini Dan, Basser Peter, Rohde Gustavo
Department of Biomedical Engineering, University of Virginia.
Multiscale Imaging and Integrative Biophysics Unit, National Institute on Aging, NIH.
bioRxiv. 2025 Mar 29:2025.03.25.645236. doi: 10.1101/2025.03.25.645236.
Multidimensional MRI (MD-MRI) is an emerging technique that holds promise for identifying tissue characteristics that could be indicative of pathologies. Before these characteristics can be interpreted, MD-MRI measurements are converted into an spectrum. These spectra are then utilized to obtain some understanding of the underlying tissue microstructure, often through the use of statistical, machine learning, and mathematical modeling methods. The aim of this study was to compare outcomes of using unprocessed MDMRI signals for statistical regression in comparison to the corresponding spectra. Backed by a theoretical argument, we described an experimental procedure regressing both MDMRI signals and spectra to histological outcomes intrasubject. Through using multiple conventional ML methods, and a proposed method using convex sets, we aimed to see which yielded the highest accuracy. Both theory and experimental evidence suggest that, without information, statistical regression was best performed on the MDMRI signal. We conclude, barring any information regarding tissue changes, there is no significant advantage to performing regression analysis on reconstructed spectra in the process of biomarker identification.
多维磁共振成像(MD-MRI)是一种新兴技术,有望识别出可能指示病变的组织特征。在解释这些特征之前,MD-MRI测量值会被转换为频谱。然后,这些频谱通常通过使用统计、机器学习和数学建模方法来帮助了解潜在的组织微观结构。本研究的目的是比较使用未处理的MDMRI信号进行统计回归与相应频谱的结果。基于理论论证,我们描述了一种实验程序,将MDMRI信号和频谱都回归到受试者体内的组织学结果。通过使用多种传统的机器学习方法以及一种使用凸集的提议方法,我们旨在观察哪种方法能产生最高的准确性。理论和实验证据均表明,在没有额外信息的情况下,对MDMRI信号进行统计回归效果最佳。我们得出结论,除非有关于组织变化的任何额外信息,否则在生物标志物识别过程中对重建频谱进行回归分析没有显著优势。