用铂包覆金纳米颗粒和机器学习解决血液样本侧流分析中溶血引起的敏感性丧失问题

IF 6.7 1区 化学 Q1 CHEMISTRY, ANALYTICAL
Xingzhi Che, An T. H. Le, Maria Orlando, Svetlana M. Krylova, Vasily G. Panferov, Nikita A. Ivanov, Erez Freud, R. Shayna Rosenbaum and Sergey N. Krylov*, 
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引用次数: 0

摘要

呈红色的金纳米颗粒(GNPs)被广泛用作横向流动试验(LFAs)的标记,用于视觉检测。然而,在血液来源的样品中,由红细胞破裂和血红蛋白释放引起的溶血会产生红色背景,使检测线模糊不清,从而显著提高了检测限(LOD),降低了LFAs的诊断敏感性。由于血液采集技术的不同,例如手指刺压的不同,导致敏感性不一致,因此不同样品的溶血程度可能不同。溶血引起的敏感性损失的实际解决方案应该易于LFA制造商实施,而不会使分析的使用复杂化。我们建议将纳米粒子涂上铂,在金核周围形成一个铂壳,从而将GNPs的颜色从红色修改为黑色(GNPs@Pt)。这种简单且成本效益高的修饰产生黑色纳米粒子,增强了溶血样品中测试线和背景之间的对比度。使用基于人工阈值的图像分析(扫描测试条并计算信噪比作为参考技术),我们发现GNPs@Pt改善了溶血样品LFAs的LOD,在溶血水平较高时观察到更大的相对改善。在评估人类受试者视觉检测的实验中,GNPs@Pt显著优于标准GNPs;然而,人类识别测试线的准确性始终低于基于阈值的图像分析。为了解决基于人工阈值的图像分析的不实用性和视觉检测的不可靠性,我们开发了一个用于分析LFA测试条图像的机器学习(ML)模型。GNPs@Pt与基于ml的图像分析的集成实现了与基于人工阈值的图像分析相当的分析LOD性能,当以后者作为参考标准时,显示出100%的灵敏度和100%的特异性。考虑到用GNPs@Pt替代GNPs的便捷性,我们建议在涉及血液样本的分析中采用这种修改。此外,我们提倡使用ML模型,它可以集成到移动应用程序中,作为lfa的标准读出工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Addressing Hemolysis-Induced Loss of Sensitivity in Lateral Flow Assays of Blood Samples with Platinum-Coated Gold Nanoparticles and Machine Learning

Addressing Hemolysis-Induced Loss of Sensitivity in Lateral Flow Assays of Blood Samples with Platinum-Coated Gold Nanoparticles and Machine Learning

Gold nanoparticles (GNPs), which appear red, are widely used as labels in lateral flow assays (LFAs) for visual detection. However, in blood-derived samples, hemolysis─caused by the rupture of red blood cells and the release of hemoglobin─creates a red-colored background that obscures the test line, significantly raising the limit of detection (LOD) and reducing the diagnostic sensitivity of LFAs. The degree of hemolysis can vary across samples due to differences in blood collection techniques, such as varying finger prick pressure, leading to inconsistent sensitivity. A practical solution to hemolysis-induced sensitivity loss should be easy for LFA manufacturers to implement without complicating the assay’s use. We propose modifying the color of GNPs from red to black by coating the nanoparticles with platinum, creating a platinum shell around a gold core (GNPs@Pt). This simple and cost-effective modification produces black nanoparticles, enhancing the contrast between the test line and background in hemolyzed samples. Using manual threshold-based image analysis, (scanning test strips and calculating the signal-to-noise ratio as a reference technique), we found that GNPs@Pt improved the LOD in LFAs of hemolyzed samples, with greater relative improvements observed at higher levels of hemolysis. In experiments assessing visual detection by human subjects, GNPs@Pt significantly outperformed standard GNPs; however, human accuracy in recognizing the test line was consistently lower than that achieved with threshold-based image analysis. To address the impracticality of manual threshold-based image analysis and the unreliability of visual detection, we developed a machine learning (ML) model for analyzing images of the LFA test strips. The integration of GNPs@Pt with ML-based image analysis achieved an assay LOD performance comparable to manual threshold-based image analysis, demonstrating 100% sensitivity and 100% specificity when benchmarked against the latter as a reference standard. Given the ease of substituting GNPs with GNPs@Pt, we recommend adopting this modification for assays involving blood samples. Additionally, we advocate using ML models, which can be integrated into mobile applications, as a standard readout tool for LFAs.

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来源期刊
Analytical Chemistry
Analytical Chemistry 化学-分析化学
CiteScore
12.10
自引率
12.20%
发文量
1949
审稿时长
1.4 months
期刊介绍: Analytical Chemistry, a peer-reviewed research journal, focuses on disseminating new and original knowledge across all branches of analytical chemistry. Fundamental articles may explore general principles of chemical measurement science and need not directly address existing or potential analytical methodology. They can be entirely theoretical or report experimental results. Contributions may cover various phases of analytical operations, including sampling, bioanalysis, electrochemistry, mass spectrometry, microscale and nanoscale systems, environmental analysis, separations, spectroscopy, chemical reactions and selectivity, instrumentation, imaging, surface analysis, and data processing. Papers discussing known analytical methods should present a significant, original application of the method, a notable improvement, or results on an important analyte.
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