Jacob Mathews, Bresler Yoram, Toronov Vlad, Zhang Xiaofeng, Webb Andrew
University of Illinois at Urbana-Champaign, Urbana, Illinois 61820, USA.
J Biomed Opt. 2006 Nov-Dec;11(6):064029. doi: 10.1117/1.2400595.
We introduce a new algorithm for the reconstruction of functional brain activations from near-infrared spectroscopic imaging (NIRSI) data. While NIRSI offers remarkable biochemical specificity, the attainable spatial resolution with this technique is rather limited, mainly due to the highly scattering nature of brain tissue and the low number of measurement channels. Our approach exploits the support-limited (spatially concentrated) nature of the activations to make the reconstruction problem well-posed. The new algorithm considers both the support and the function values of the activations as unknowns and estimates them from the data. The support of the activations is represented using a level-set scheme. We use a two-step alternating iterative scheme to solve for the activations. Since our approach uses the inherent nature of functional activations to make the problem well-posed, it provides reconstructions with better spatial resolution, fewer artifacts, and is more robust to noise than existing techniques. Numerical simulations and experimental data indicate a significant improvement in the quality (resolution and robustness to noise) over standard techniques such as truncated conjugate gradients (TCG) and simultaneous iterative reconstruction technique (SIRT) algorithms. Furthermore, results on experimental data obtained from simultaneous functional magnetic resonance imaging (fMRI) and optical measurements show much closer agreement of the optical reconstruction using the new approach with fMRI images than TCG and SIRT.
我们介绍了一种用于从近红外光谱成像(NIRSI)数据重建功能性脑激活的新算法。虽然NIRSI具有显著的生化特异性,但由于脑组织的高散射特性和测量通道数量较少,该技术可实现的空间分辨率相当有限。我们的方法利用激活的支持有限(空间集中)特性,使重建问题适定。新算法将激活的支持和函数值都视为未知数,并从数据中对其进行估计。激活的支持用水平集方案表示。我们使用两步交替迭代方案来求解激活。由于我们的方法利用功能性激活的固有特性使问题适定,它提供的重建具有更好的空间分辨率、更少的伪影,并且比现有技术对噪声更具鲁棒性。数值模拟和实验数据表明,与截断共轭梯度(TCG)和同时迭代重建技术(SIRT)算法等标准技术相比,在质量(分辨率和对噪声的鲁棒性)方面有显著提高。此外,从同步功能磁共振成像(fMRI)和光学测量获得的实验数据结果表明,与TCG和SIRT相比,使用新方法进行的光学重建与fMRI图像的一致性要高得多。