Bioimaging Laboratory, Department of Bioengineering, Faculty of Engineering, National University of Singapore, 9 Engineering Drive 1, Singapore 117576.
Analyst. 2009 Jun;134(6):1232-9. doi: 10.1039/b811008e. Epub 2009 Jan 7.
In this work, we evaluated the diagnostic ability of near-infrared (NIR) Raman spectroscopy associated with the ensemble recursive partitioning algorithm based on random forests for identifying cancer from normal tissue in the larynx. A rapid-acquisition NIR Raman system was utilized for tissue Raman measurements at 785 nm excitation, and 50 human laryngeal tissue specimens (20 normal; 30 malignant tumors) were used for NIR Raman studies. The random forests method was introduced to develop effective diagnostic algorithms for classification of Raman spectra of different laryngeal tissues. High-quality Raman spectra in the range of 800-1800 cm(-1) can be acquired from laryngeal tissue within 5 seconds. Raman spectra differed significantly between normal and malignant laryngeal tissues. Classification results obtained from the random forests algorithm on tissue Raman spectra yielded a diagnostic sensitivity of 88.0% and specificity of 91.4% for laryngeal malignancy identification. The random forests technique also provided variables importance that facilitates correlation of significant Raman spectral features with cancer transformation. This study shows that NIR Raman spectroscopy in conjunction with random forests algorithm has a great potential for the rapid diagnosis and detection of malignant tumors in the larynx.
在这项工作中,我们评估了近红外(NIR)拉曼光谱与基于随机森林的集成递归分区算法相结合的诊断能力,用于识别喉部正常组织和癌症组织。利用快速采集 NIR 拉曼系统在 785nm 激发下进行组织拉曼测量,共使用了 50 个人喉组织标本(20 个正常;30 个恶性肿瘤)进行 NIR 拉曼研究。引入随机森林方法来开发有效的诊断算法,用于分类不同喉部组织的拉曼光谱。可以在 5 秒内从喉部组织中获得范围在 800-1800cm-1 内的高质量拉曼光谱。正常和恶性喉部组织的拉曼光谱存在显著差异。随机森林算法对组织拉曼光谱的分类结果显示,用于识别喉癌的诊断灵敏度为 88.0%,特异性为 91.4%。随机森林技术还提供了变量重要性,有助于将显著的拉曼光谱特征与癌症转化相关联。本研究表明,近红外拉曼光谱结合随机森林算法具有快速诊断和检测喉部恶性肿瘤的巨大潜力。