Shao Yiran, Zhou Lipu, Zhou Yan, Li Yibo, Li Qingbo
School of Instrumentation and Optoelectronic Engineering, Precision Opto-Mechatronics Technology Key Laboratory of Education Ministry, Beihang University, Beijing 100191, China.
Department of Neurosurgery, Air Force Medical Center, PLA, Beijing 100142, China.
Anal Methods. 2025 Jul 3;17(26):5343-5354. doi: 10.1039/d5ay00792e.
As the most aggressive malignant tumours of the central nervous system, gliomas urgently require real-time intraoperative molecular diagnostic techniques to overcome the invasive limitations of conventional pathology and the uncertainties of imaging. Although Raman spectroscopy can provide non-invasive biomolecular fingerprinting information, its signal is susceptible to interference from baseline drift caused by tissue autofluorescence, resulting in masking of the effective information of the spectrum. Existing baseline correction methods (, polynomial fitting and asymmetric least squares) struggle to balance the challenges of noise suppression, feature preservation, and adaptation to heterogeneous tissue spectra. In this study, we propose an improved adaptive gradient-derived penalized least squares (IagPLS) method that integrates three innovative mechanisms: curvature-driven dynamic regularization, which dynamically adjusts the smoothing intensity through a gradient-sensitive penalty term and protects biomarker-rich regions while suppressing high-frequency noise; SHAP algorithm-guided feature protection, which identifies and diagnoses key Raman peaks and constructs region-specific weight constraints to avoid oversmoothing; and quantum-inspired global optimization, which models the weight update as a tunnelling potential well model and uses a Monte Carlo simulated annealing strategy to jump out of the local optimum. Based on the validation of 423 clinical Raman spectra (157 normal tissues/266 glioma tissues), IagPLS showed a significant advantage: the glioma identification accuracy of its corrected spectra reached 96.1% (tumour F1 score: 0.97) after random forest classification, which was significantly better than that of airPLS (89.4%) and agdPLS (87.0%). The key indicators show that the feature peak prominence of the spectra during IagPLS processing is improved by 82.05% compared to agdPLS, the negative residual area is reduced by 89.79% compared to airPLS, and the processing speed is improved by 43.64% compared to airPLS. SHAP interpretability analysis confirmed that the protected biomarker regions contributed 1.07-fold to classification and were highly compatible with glioma-specific spectral features. The algorithm takes less than 0.1 seconds for a single correction, combining biological interpretability with superior spectral correction to provide a reliable pre-processing tool for intraoperative optical biopsy systems. Its algorithmic framework can be extended to multimodal biomedical spectral analysis, such as near-infrared and mid-infrared spectroscopy, to promote the innovation of complex spectral pre-processing technology in precision medicine.
作为中枢神经系统中最具侵袭性的恶性肿瘤,胶质瘤迫切需要实时术中分子诊断技术,以克服传统病理学的侵袭性局限和影像学的不确定性。尽管拉曼光谱能够提供非侵入性生物分子指纹信息,但其信号易受组织自发荧光引起的基线漂移干扰,导致光谱有效信息被掩盖。现有的基线校正方法(如多项式拟合和非对称最小二乘法)难以平衡噪声抑制、特征保留以及适应异质组织光谱等挑战。在本研究中,我们提出了一种改进的自适应梯度罚最小二乘法(IagPLS),该方法集成了三种创新机制:曲率驱动的动态正则化,通过梯度敏感惩罚项动态调整平滑强度,在抑制高频噪声的同时保护富含生物标志物的区域;SHAP算法引导的特征保护,识别并诊断关键拉曼峰,构建区域特定的权重约束以避免过度平滑;量子启发的全局优化,将权重更新建模为隧穿势阱模型,并使用蒙特卡罗模拟退火策略跳出局部最优。基于对423例临床拉曼光谱(157例正常组织/266例胶质瘤组织)的验证,IagPLS显示出显著优势:经随机森林分类后,其校正光谱对胶质瘤的识别准确率达到96.1%(肿瘤F1分数:0.97),显著优于airPLS(89.4%)和agdPLS(87.0%)。关键指标表明,IagPLS处理过程中光谱的特征峰突出度相比agdPLS提高了82.05%,负残差面积相比airPLS减少了89.79%,处理速度相比airPLS提高了43.64%。SHAP可解释性分析证实,受保护的生物标志物区域对分类的贡献提高了1.07倍,且与胶质瘤特异性光谱特征高度兼容。该算法单次校正耗时不到0.1秒,将生物学可解释性与卓越的光谱校正相结合,为术中光学活检系统提供了可靠的预处理工具。其算法框架可扩展至多模态生物医学光谱分析,如近红外和中红外光谱,以推动精准医学中复杂光谱预处理技术的创新。