Siqi
Ye
a,
Lei
Xing
a,
David
Myung
bc and
Fang
Chen
*b
aDepartment of Radiation Oncology, Stanford University, Stanford, CA 94305, USA. E-mail: yesiqi@stanford.edu; lei@stanford.edu
bSpencer Center for Vision Research, Byers Eye Institute, Department of Ophthalmology, Stanford University School of Medicine, Stanford, CA 94305, USA. E-mail: david.myung@stanford.edu; fachen@stanford.edu
cDepartment of Chemical Engineering, Stanford University, CA 94305, USA
First published on 16th March 2024
Efficient and robust quantification of the number of nanoparticles in solution is not only essential but also insufficient in nanotechnology and biomedical research. This paper proposes to use optical coherence tomography (OCT) to quantify the number of gold nanorods, which exemplify the nanoparticles with high light scattering signals. Additionally, we have developed an AI-enhanced OCT image processing to improve the accuracy and robustness of the quantification result.
Another typical quantification technique is electron microscopy (EM).22–24 The EM offers high-resolution visualization of particles at the nanometer scale. It is capable of measuring the size distribution of GNPs and revealing the sizes of a small anisotropic nanoparticle. However, EM is a cumbersome technique for particle concentration determination, requiring scanning the entire sample holder after adding a particle solution of known volume onto it. Moreover, particle stacking will cause inaccurate quantification. The morphology and size measured by EM, however, can be used to determine the volume of individual nanoparticles. This volume could be used to calculate the theoretical particle concentration when the density and mass concentration are known. The mass concentration of gold nanoparticles can be accurately measured by inductively coupled plasma-mass spectrometry (ICP-MS).25 The theoretical particle concentration will be the total volume of nanoparticles (the mass concentration divided by the density of gold) divided by the volume of a single nanoparticle. This theoretical particle concentration is more accurate for a monodispersed sample than samples with a broad size distribution. Of note, this calculation ignores the effect of aggregation on the actual particle concentration.
While nanoparticles have been widely investigated as contrast agents to improve biomedical imaging, here we propose to use biomedical imaging to characterize nanoparticles. Specifically, we demonstrate the quantification of gold nanorods (GNRs) based on their OCT signals.4–6,26,27 OCT utilizes low-coherence interferometry to capture cross-sectional images of tissues, enabling non-invasive and real-time capturing of scanned objects. OCT is considered an optical version of ultrasound imaging, but it has a much higher resolution (subcellular) when compared to ultrasound imaging. This method is efficient and can potentially apply to any nanoparticles with high light scattering properties, which is the source of the OCT signal. Moreover, we developed an artificial intelligence (AI) image enhancement method to improve the OCT images. Our results showed that the OCT-based approach took the effect of aggregation into account and reflected the real particle concentration. With an aggregation correction algorithm and AI enhancement, the resulting OCT-based particle concentration is almost identical to the theoretical particle concentration.
The sample-loaded glass tubes were positioned on a sample holder and scanned with a commercial SD-OCT system (SPECTRALIS®HRA+OCT w/OCT2 MultiColor model, Heidelberg). The OCT captured a sequence of 2D images at a non-perpendicular angle along the longitudinal axis of each tube. Images of samples to be compared were obtained within the same scan. We selected distinct sections from the recorded sequence of images as regions of interest (ROIs), delineating the 3D distribution of the solution within the tube. Fig. 1(a) shows the experimental setup described above. An example of images acquired at a specific ROI is shown in Fig. 1(b). The red box indicates the cropped ROI upon which our subsequent processes were based.
To improve the efficiency and standardization of the SR process, we cropped a square-shaped region of size 60 × 60 pixels located at the center of each ROI, as shown in Fig. 1(b). We assumed nanoparticles were uniformly distributed within the cropped ROI, representing the distribution of nanoparticles in the specific cross-section of the tube. The resolution of the cropped ROI was enhanced by two times, resulting in an image containing 120 × 120 pixels for the subsequent quantification process.
We also introduced an aggregation correction step to address the nanoparticle aggregation effect. The aggregation correction was based on the area of the detected nanoparticles. We assumed that each nanoparticle occupies only 1-pixel2 area on the original OCT image, and it occupies 4-pixel2 area on the AI-enhanced images with 2× resolution enhancement. This assumption is reasonable for any morphologies of the gold nanoparticles because the length of the long-axis of a gold nanoparticle usually ranges from 10–200 nm,30 which is significantly smaller than the approximate distance of several centimeters between the source of the reflected light to the detector.
The mass concentration of gold in the GNRs was found to be 0.92 mg mL−1 measured by ICP-MS. The average diameter and length of the GNRs were measured to be 18.0 nm and 74.6 nm respectively according to the transmission electron microscope analysis. The density of a GNR is 19.3 g mL−1. The theoretical concentration of the GNRs was calculated to be 2.51 × 1012 particles per mL, using the equation:
The theoretical particle concentrations of the 800×, 1600×, 3200×, 6400×, and 12800× diluted GNR solutions were calculated to be 3.14 × 109, 1.57 × 109, 7.85 × 108, 3.92 × 108, and 1.96 × 108 particles per mL.
Table 1 reports the quantification of GNRs under different dilutions using the originally acquired OCT images and the AI-enhanced OCT images, respectively. The quantifications under different dilutions were standardized to the initial concentration by multiplying the dilution-dependent quantifications with the corresponding dilution factors. Each ROI represents one B-scan at different positions of the glass capillary tubes. We adopted 7 ROIs for each diluted solution to make more accurate quantification. In an ideal situation, the standardized particle concentrations of the diluted solutions should be identical to the particle concentration of the initial solution. The factor that the dilution changed the resulting particle concentrations indicates the interference among OCT signals of individual GNR. The signal was saturated at higher concentrations (800× dilution), resulting in a low particle concentration. Indeed, excluding the 800× dilution in analyzing the linear regression between measured and theoretical particle concentrations improved the goodness of the fit. Specifically, the R2 metric of the fitting line was increased from 0.9584 to 0.9896 based on original OCT images, and increased from 0.9478 to 0.9940 with the AI-enhanced OCT images. Fig. 3a plots the fitting curve with the 800× dilution excluded. The linear fitting based on either the original OCT images, interpolated OCT images, or the AI-enhanced OCT images obtained close-to-one R2, meaning the high fidelity of the linear fitting with the OCT imaging-based quantification technique. Moreover, AI-enhanced OCT images enabled further improvement of the linear fitting, indicating more accurate and more robust quantification.
Dilution factor | 800× | 1600× | 3200× | 6400× | 12800× | |||||
---|---|---|---|---|---|---|---|---|---|---|
Method | Org-OCT | AI-OCT | Org-OCT | AI-OCT | Org-OCT | AI-OCT | Org-OCT | AI-OCT | Org-OCT | AI-OCT |
ROI #1 | 2.328 | 4.655 | 3.550 | 6.391 | 1.578 | 1.894 | 1.578* | 2.525 * | 0.631** | 0.631** |
ROI #2 | 3.353 | 5.917 | 4.103 | 8.363 | 2.367 | 3.629 | 1.894 | 3.787 | 1.262* | 2.525* |
ROI #3 | 5.602 | 9.429 | 6.628 | 12.545 | 4.892 | 11.677 | 2.840 | 4.418 | 2.525 | 2.525* |
ROI #4 | 6.628 | 10.691 | 9.862 | 15.701 | 7.259 | 14.675 | 2.840 | 7.890 | 5.050* | 6.312 |
ROI #5 | 6.628 | 10.612 | 7.890 | 14.675 | 7.890 | 14.044 | 3.787 | 10.730 | 0.631** | 1.262** |
ROI #6 | 8.087 | 11.638 | 12.466 | 18.541 | 13.886 | 21.461 | 9.152 | 19.567 | 5.050* | 8.206 |
ROI #7 | 7.772 | 12.111 | 11.914 | 18.226 | 12.782 | 21.776 | 11.36 | 22.407 | 9.468 | 14.518 |
Average | 5.771 | 9.293 | 8.059 | 13.492 | 7.236 | 12.737 | 4.779 | 10.189 | 3.236 | 5.140 |
STD | 2.182 | 2.888 | 3.549 | 4.687 | 4.772 | 7.799 | 3.863 | 7.915 | 3.218 | 4.962 |
RSD | 38% | 31% | 44% | 35% | 66% | 61% | 81% | 78% | 92% | 97% |
Another finding from Table 1 is that with higher dilution factors, the relative standard deviation (RSD) also increases, indicating increased variations during the quantification. We assume that at low concentrations, the signal interference was too weak to make the GNRs detectable and quantifiable. Indeed, the limit of detection (LOD) and the limit of quantification (LOQ)31 analysis showed that most ROIs of the 12800× dilution sample had inadequate GNRs for quantification (Table 1). The high percentage of non-detectable and non-quantifiable ROIs in all the analyzed ROIs indicates reduced reliability of the particle concentration quantification. Therefore, based on Table 1, we consider the suitable dilution factors to be between 1600 and 6400, which corresponds to the particle concentration range of 4 × 108–1.6 × 109 particles per mL. This range may vary depending on the OCT signal intensity of the nanoparticles, and higher OCT signal intensity could decrease the range of the suitable particle concentration.
Within the suitable quantification range, the RSD of standardized particle concentrations of the 1600×, 3200× and 6400× dilutions is 26% and 14% based on the original and AI-enhanced OCT images, respectively. The smaller RSD provided by AI-enhanced OCT images indicates the improved robustness of quantification with the proposed AI-enhanced OCT imaging technique. The averaged particle concentration quantified with AI-enhanced OCT images was higher than those with original OCT images. While the standard deviation (STD) of the former is slightly higher, its RSD is lower. Therefore, in all the ROIs and under various dilution situations, AI-enhanced OCT imaging enabled the detection and counting of more GNRs, as well as reduced the variation among ROIs compared with results based on the original OCT images.
The OCT-based quantification results were smaller than the theoretical particle concentration, regardless of AI enhancement on OCT images. This could be due to the aggregation of GNRs in the solutions (Fig. 2). The zoom-in boxes show the detected particles with large areas, indicating substantial particle aggregations, in which case several aggregated particles were considered a single particle. To reduce the effect of aggregation in concentration quantification, we developed an algorithm to eliminate the influence of aggregation on particle concentration (see section 3).
The aggregation-corrected particle concentration of the original and AI-enhanced OCT images of the 1600× dilution was 1.43 × 1012 and 2.50 × 1012 particles per mL, respectively. Thus, the AI-enhanced OCT image provides a higher accuracy in the particle concentration quantification.
The linear fitting based on the aggregation-corrected counting is shown in Fig. 3b. The 800× dilution was not included due to signal saturation, similar to what was done for uncorrected samples. In this aggregation correction case, more GNRs were detected and counted when the concentration was high. Using AI-enhanced images provides a slightly better linear relationship between the experimental and theoretical particle concentrations compared with the original and interpolated OCT images. In Fig. 3, only the aggregation-corrected particle concentration from the AI-enhanced OCT images showed a slope of approximately 1, indicating that the resulting and theoretical particle concentrations are almost identical in the tested range. The AI-enhanced OCT image evidently offers higher accuracy in particle concentration quantification.
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