Kong Kenny, Zaabar Fazliyana, Rakha Emad, Ellis Ian, Koloydenko Alexey, Notingher Ioan
School of Physics and Astronomy, University of Nottingham, University Park, Nottingham, NG7 2RD, UK.
Phys Med Biol. 2014 Oct 21;59(20):6141-52. doi: 10.1088/0031-9155/59/20/6141. Epub 2014 Sep 25.
Breast-conserving surgery (BCS) is increasingly employed for the treatment of early stage breast cancer. One of the key challenges in BCS is to ensure complete removal of the tumour while conserving as much healthy tissue as possible. In this study we have investigated the potential of Raman micro-spectroscopy (RMS) for automated intra-operative evaluation of tumour excision. First, a multivariate classification model based on Raman spectra of normal and malignant breast tissue samples was built and achieved diagnosis of mammary ductal carcinoma (DC) with 95.6% sensitivity and 96.2% specificity (5-fold cross-validation). The tumour regions were discriminated from the healthy tissue structures based on increased concentration of nucleic acids and reduced concentration of collagen and fat. The multivariate classification model was then applied to sections from fresh tissue of new patients to produce diagnosis images for DC. The diagnosis images obtained by raster scanning RMS were in agreement with the conventional histopathology diagnosis but were limited to long data acquisition times (typically 10,000 spectra mm(-2), which is equivalent to ~5 h mm(-2)). Selective-sampling based on integrated auto-fluorescence imaging and Raman spectroscopy was used to reduce the number of Raman spectra to ~20 spectra mm(-2), which is equivalent to an acquisition time of ~15 min for 5 × 5 mm(2) tissue samples. This study suggests that selective-sampling Raman microscopy has the potential to provide a rapid and objective intra-operative method to detect mammary carcinoma in tissue and assess resection margins.
保乳手术(BCS)越来越多地用于早期乳腺癌的治疗。保乳手术的关键挑战之一是确保肿瘤完全切除,同时尽可能保留更多健康组织。在本研究中,我们研究了拉曼显微光谱(RMS)在肿瘤切除术中进行自动评估的潜力。首先,基于正常和恶性乳腺组织样本的拉曼光谱建立了多变量分类模型,对乳腺导管癌(DC)的诊断灵敏度为95.6%,特异性为96.2%(5折交叉验证)。基于核酸浓度增加以及胶原蛋白和脂肪浓度降低,将肿瘤区域与健康组织结构区分开来。然后将多变量分类模型应用于新患者新鲜组织的切片,以生成DC的诊断图像。通过光栅扫描RMS获得的诊断图像与传统组织病理学诊断结果一致,但数据采集时间较长(通常为10,000光谱·mm⁻²,相当于约5小时·mm⁻²)。基于集成自发荧光成像和拉曼光谱的选择性采样用于将拉曼光谱数量减少至约20光谱·mm⁻²,对于5×5 mm²组织样本,这相当于约15分钟的采集时间。本研究表明,选择性采样拉曼显微镜有潜力提供一种快速、客观的术中方法,用于检测组织中的乳腺癌并评估切除边缘。