Cerebrospinal fluid-induced stable and reproducible SERS sensing for various meningitis discrimination assisted with machine learning

IF 10.7 1区 生物学 Q1 BIOPHYSICS Biosensors and Bioelectronics Pub Date : 2024-09-10 DOI:10.1016/j.bios.2024.116753
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Abstract

Cerebrospinal fluid (CSF)-based pathogen or biochemical testing is the standard approach for clinical diagnosis of various meningitis. However, misdiagnosis and missed diagnosis always occur due to the shortages of unusual clinical manifestations and time-consuming shortcomings, low sensitivity, and poor specificity. Here, for the first time, we propose a simple and reliable CSF-induced SERS platform assisted with machine learning (ML) for the diagnosis and identification of various meningitis. Stable and reproducible SERS spectra are obtained within 30 s by simply mixing the colloidal silver nanoparticles (Ag NPs) with CSF sample, and the relative standard deviation of signal intensity is achieved as low as 2.1%. In contrast to conventional salt agglomeration agent-induced irreversible aggregation for achieving Raman enhancement, a homogeneous and dispersed colloidal solution is observed within 1 h for the mixture of Ag NPs/CSF (containing 110–140 mM chloride), contributing to excellent SERS stability and reproducibility. In addition, the interaction processes and potential enhancement mechanisms of different Ag colloids-based SERS detection induced by CSF sample or conventional NaCl agglomeration agents are studied in detail through in-situ UV–vis absorption spectra, SERS analysis, SEM and optical imaging. Finally, an ML-assisted meningitis classification model is established based on the spectral feature fusion of characteristic peaks and baseline. By using an optimized KNN algorithm, the classification accuracy of autoimmune encephalitis, novel cryptococcal meningitis, viral meningitis, or tuberculous meningitis could be reached 99%, while an accuracy value of 68.74% is achieved for baseline-corrected spectral data. The CSF-induced SERS detection has the potential to provide a new type of liquid biopsy approach in the fields of diagnosis and early detection of various cerebral ailments.

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利用机器学习辅助脑脊液诱导的稳定且可重现的 SERS 传感技术鉴别各种脑膜炎
基于脑脊液(CSF)的病原体或生化检测是临床诊断各种脑膜炎的标准方法。然而,由于缺乏异常临床表现和耗时长、灵敏度低、特异性差等缺点,误诊和漏诊时有发生。在这里,我们首次提出了一种简单可靠的脑脊液诱导 SERS 平台,并将其与机器学习(ML)相结合,用于诊断和鉴定各种脑膜炎。只需将胶体银纳米粒子(Ag NPs)与 CSF 样品混合,就能在 30 秒内获得稳定且可重复的 SERS 光谱,而且信号强度的相对标准偏差低至 2.1%。与传统的盐凝集剂诱导的不可逆凝集实现拉曼增强不同,Ag NPs/CSF 混合物(含 110-140 mM 氯化物)在 1 小时内就能观察到均匀分散的胶体溶液,这有助于实现出色的 SERS 稳定性和可重复性。此外,通过原位紫外可见吸收光谱、SERS 分析、扫描电镜和光学成像,详细研究了 CSF 样品或传统 NaCl 凝聚剂诱导的不同银胶体 SERS 检测的相互作用过程和潜在增强机制。最后,基于特征峰和基线的光谱特征融合,建立了一个 ML 辅助脑膜炎分类模型。通过使用优化的 KNN 算法,自身免疫性脑炎、新型隐球菌脑膜炎、病毒性脑膜炎或结核性脑膜炎的分类准确率可达 99%,而基线校正光谱数据的准确率值为 68.74%。CSF 诱导的 SERS 检测有望为各种脑部疾病的诊断和早期检测提供一种新型的液体活检方法。
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来源期刊
Biosensors and Bioelectronics
Biosensors and Bioelectronics 工程技术-电化学
CiteScore
20.80
自引率
7.10%
发文量
1006
审稿时长
29 days
期刊介绍: Biosensors & Bioelectronics, along with its open access companion journal Biosensors & Bioelectronics: X, is the leading international publication in the field of biosensors and bioelectronics. It covers research, design, development, and application of biosensors, which are analytical devices incorporating biological materials with physicochemical transducers. These devices, including sensors, DNA chips, electronic noses, and lab-on-a-chip, produce digital signals proportional to specific analytes. Examples include immunosensors and enzyme-based biosensors, applied in various fields such as medicine, environmental monitoring, and food industry. The journal also focuses on molecular and supramolecular structures for enhancing device performance.
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