In vivo imaging using surface enhanced spatially offset raman spectroscopy (SESORS): balancing sampling frequency to improve overall image acquisition

Fay Nicolson, Bohdan Andreiuk, Eunah Lee, Bridget O’Donnell, Andrew Whitley, Nicole Riepl, Deborah L. Burkhart, Amy Cameron, Andrea Protti, Scott Rudder, Jiang Yang, Samuel Mabbott, Kevin M. Haigis
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Abstract

In the field of optical imaging, the ability to image tumors at depth with high selectivity and specificity remains a challenge. Surface enhanced resonance Raman scattering (SERRS) nanoparticles (NPs) can be employed as image contrast agents to specifically target cells in vivo; however, this technique typically requires time-intensive point-by-point acquisition of Raman spectra. Here, we combine the use of “spatially offset Raman spectroscopy” (SORS) with that of SERRS in a technique known as “surface enhanced spatially offset resonance Raman spectroscopy” (SESORRS) to image deep-seated tumors in vivo. Additionally, by accounting for the laser spot size, we report an experimental approach for detecting both the bulk tumor, subsequent delineation of tumor margins at high speed, and the identification of a deeper secondary region of interest with fewer measurements than are typically applied. To enhance light collection efficiency, four modifications were made to a previously described custom-built SORS system. Specifically, the following parameters were increased: (i) the numerical aperture (NA) of the lens, from 0.2 to 0.34; (ii) the working distance of the probe, from 9 mm to 40 mm; (iii) the NA of the fiber, from 0.2 to 0.34; and (iv) the fiber diameter, from 100 µm to 400 µm. To calculate the sampling frequency, which refers to the number of data point spectra obtained for each image, we considered the laser spot size of the elliptical beam (6 × 4 mm). Using SERRS contrast agents, we performed in vivo SESORRS imaging on a GL261-Luc mouse model of glioblastoma at four distinct sampling frequencies: par-sampling frequency (12 data points collected), and over-frequency sampling by factors of 2 (35 data points collected), 5 (176 data points collected), and 10 (651 data points collected). In comparison to the previously reported SORS system, the modified SORS instrument showed a 300% improvement in signal-to-noise ratios (SNR). The results demonstrate the ability to acquire distinct Raman spectra from deep-seated glioblastomas in mice through the skull using a low power density (6.5 mW/mm2) and 30-times shorter integration times than a previous report (0.5 s versus 15 s). The ability to map the whole head of the mouse and determine a specific region of interest using as few as 12 spectra (6 s total acquisition time) is achieved. Subsequent use of a higher sampling frequency demonstrates it is possible to delineate the tumor margins in the region of interest with greater certainty. In addition, SESORRS images indicate the emergence of a secondary tumor region deeper within the brain in agreement with MRI and H&E staining. In comparison to traditional Raman imaging approaches, this approach enables improvements in the detection of deep-seated tumors in vivo through depths of several millimeters due to improvements in SNR, spectral resolution, and depth acquisition. This approach offers an opportunity to navigate larger areas of tissues in shorter time frames than previously reported, identify regions of interest, and then image the same area with greater resolution using a higher sampling frequency. Moreover, using a SESORRS approach, we demonstrate that it is possible to detect secondary, deeper-seated lesions through the intact skull.

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利用表面增强型空间偏移拉曼光谱仪(SESORS)进行体内成像:平衡采样频率以改善整体图像采集效果
在光学成像领域,如何以高选择性和特异性对肿瘤进行深度成像仍然是一项挑战。表面增强共振拉曼散射(SERRS)纳米粒子(NPs)可用作图像对比剂,特异性地瞄准体内细胞;然而,这种技术通常需要耗费大量时间逐点采集拉曼光谱。在这里,我们将 "空间偏移拉曼光谱"(SORS)与 "表面增强空间偏移共振拉曼光谱"(SESORRS)技术相结合,对体内深层肿瘤进行成像。此外,通过考虑激光光斑的大小,我们报告了一种实验方法,它既能检测肿瘤的整体,又能随后高速划定肿瘤边缘,还能识别更深的次要感兴趣区,而且测量次数比通常应用的要少。为了提高光收集效率,我们对之前描述的定制 SORS 系统进行了四项修改。具体来说,增加了以下参数:(i) 镜头的数值孔径 (NA),从 0.2 增加到 0.34;(ii) 探头的工作距离,从 9 毫米增加到 40 毫米;(iii) 光纤的 NA,从 0.2 增加到 0.34;(iv) 光纤直径,从 100 微米增加到 400 微米。为了计算采样频率(即每幅图像获得的数据点光谱数量),我们考虑了椭圆光束的激光光斑大小(6 × 4 毫米)。我们使用 SERRS 造影剂,以四种不同的采样频率对胶质母细胞瘤 GL261-Luc 小鼠模型进行了活体 SESORRS 成像:平采样频率(采集 12 个数据点)、超频采样系数 2(采集 35 个数据点)、5(采集 176 个数据点)和 10(采集 651 个数据点)。与之前报告的 SORS 系统相比,改进后的 SORS 仪器在信噪比 (SNR) 方面提高了 300%。结果表明,利用低功率密度(6.5 mW/mm2)和比以前报告缩短 30 倍的积分时间(0.5 秒对 15 秒),能够通过头骨获取小鼠深部胶质母细胞瘤的独特拉曼光谱。只需 12 个光谱(总采集时间为 6 秒)就能绘制出小鼠整个头部的图像,并确定感兴趣的特定区域。随后使用更高的采样频率可以更准确地确定感兴趣区域的肿瘤边缘。此外,SESORRS 图像还显示在大脑更深处出现了继发性肿瘤区域,这与核磁共振成像和 H&E 染色结果一致。与传统的拉曼成像方法相比,这种方法由于在信噪比、光谱分辨率和深度采集方面的改进,能更好地检测体内几毫米深的深部肿瘤。与之前的报道相比,这种方法能在更短的时间内浏览更大的组织区域,确定感兴趣的区域,然后使用更高的采样频率以更高的分辨率对同一区域进行成像。此外,通过使用 SESORRS 方法,我们证明可以通过完整的头骨检测到更深层次的继发性病变。
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