Polytechnique Montréal, Department of Computer Engineering and Software Engineering, Montréal, Québe, Canada.
Centre de Recherche du Centre Hospitalier de l'Université de Montréal, Montréal, Québec, Canada.
J Biomed Opt. 2020 Apr;25(4):1-8. doi: 10.1117/1.JBO.25.4.040501.
Ensuring spectral quality is prerequisite to Raman spectroscopy applied to surgery. This is because the inclusion of poor-quality spectra in the training phase of Raman-based pathology detection models can compromise prediction robustness and generalizability to new data. Currently, there exists no quantitative spectral quality assessment technique that can be used to either reject low-quality data points in existing Raman datasets based on spectral morphology or, perhaps more importantly, to optimize the in vivo data acquisition process to ensure minimal spectral quality standards are met.
To develop a quantitative method evaluating Raman signal quality based on the variance associated with stochastic noise in important tissue bands, including C─C stretch, CH2 / CH3 deformation, and the amide bands.
A single-point hand-held Raman spectroscopy probe system was used to acquire 315 spectra from 44 brain cancer patients. All measurements were classified as either high or low quality based on visual assessment (qualitative) and using a quantitative quality factor (QF) metric. Receiver-operator-characteristic (ROC) analyses were performed to evaluate the performance of the quantitative metric to assess spectral quality and improve cancer detection accuracy.
The method can separate high- and low-quality spectra with a sensitivity of 89% and a specificity of 90% which is shown to increase cancer detection sensitivity and specificity by up to 20% and 12%, respectively.
The QF threshold is effective in stratifying spectra in terms of spectral quality and the observed false negatives and false positives can be linked to limitations of qualitative spectral quality assessment.
确保光谱质量是将拉曼光谱应用于手术的前提。这是因为在基于拉曼的病理检测模型的训练阶段包含质量差的光谱会影响预测的稳健性和对新数据的泛化能力。目前,没有一种定量的光谱质量评估技术可以用于根据光谱形态拒绝现有拉曼数据集中的低质量数据点,或者更重要的是,优化体内数据采集过程,以确保满足最小的光谱质量标准。
开发一种基于包括 C─C 伸缩、CH2/CH3 变形和酰胺带在内的重要组织带中的随机噪声相关方差来评估拉曼信号质量的定量方法。
使用单点手持式拉曼光谱探头系统从 44 名脑癌患者中采集了 315 个光谱。所有测量结果均根据视觉评估(定性)和使用定量质量因子(QF)指标进行分类为高质量或低质量。进行了接收者操作特征(ROC)分析,以评估定量指标评估光谱质量和提高癌症检测准确性的性能。
该方法可以分离高质量和低质量的光谱,其灵敏度为 89%,特异性为 90%,这表明可以分别提高 20%和 12%的癌症检测灵敏度和特异性。
QF 阈值可有效地根据光谱质量对光谱进行分层,观察到的假阴性和假阳性可以与定性光谱质量评估的局限性相关联。