Jong Lynn-Jade S, Post Anouk L, Veluponnar Dinusha, Geldof Freija, Sterenborg Henricus J C M, Ruers Theo J M, Dashtbozorg Behdad
Department of Surgery, Netherlands Cancer Institute, Plesmanlaan 121, 1066 CX Amsterdam, The Netherlands.
Department of Nanobiophysics, Faculty of Science and Technology, University of Twente, Drienerlolaan 5, 7522 NB Enschede, The Netherlands.
Cancers (Basel). 2023 May 9;15(10):2679. doi: 10.3390/cancers15102679.
(1) Background: Assessing the resection margins during breast-conserving surgery is an important clinical need to minimize the risk of recurrent breast cancer. However, currently there is no technique that can provide real-time feedback to aid surgeons in the margin assessment. Hyperspectral imaging has the potential to overcome this problem. To classify resection margins with this technique, a tissue discrimination model should be developed, which requires a dataset with accurate ground-truth labels. However, establishing such a dataset for resection specimens is difficult. (2) Methods: In this study, we therefore propose a novel approach based on hyperspectral unmixing to determine which pixels within hyperspectral images should be assigned to the ground-truth labels from histopathology. Subsequently, we use this hyperspectral-unmixing-based approach to develop a tissue discrimination model on the presence of tumor tissue within the resection margins of ex vivo breast lumpectomy specimens. (3) Results: In total, 372 measured locations were included on the lumpectomy resection surface of 189 patients. We achieved a sensitivity of 0.94, specificity of 0.85, accuracy of 0.87, Matthew's correlation coefficient of 0.71, and area under the curve of 0.92. (4) Conclusion: Using this hyperspectral-unmixing-based approach, we demonstrated that the measured locations with hyperspectral imaging on the resection surface of lumpectomy specimens could be classified with excellent performance.
(1) 背景:在保乳手术中评估手术切缘是降低乳腺癌复发风险的一项重要临床需求。然而,目前尚无技术能够提供实时反馈以辅助外科医生进行切缘评估。高光谱成像有潜力克服这一问题。要使用该技术对手术切缘进行分类,应开发一种组织判别模型,这需要一个带有准确真实标签的数据集。然而,为切除标本建立这样一个数据集很困难。(2) 方法:因此,在本研究中,我们提出一种基于高光谱解混的新方法,以确定高光谱图像中的哪些像素应被赋予来自组织病理学的真实标签。随后,我们使用这种基于高光谱解混的方法,针对离体乳腺肿块切除标本手术切缘内肿瘤组织的存在情况开发一种组织判别模型。(3) 结果:总共189例患者的肿块切除手术切面上纳入了372个测量位置。我们实现了灵敏度为0.94、特异性为0.85、准确率为0.87、马修斯相关系数为0.71以及曲线下面积为0.92。(4) 结论:使用这种基于高光谱解混的方法,我们证明了在肿块切除标本手术切面上进行高光谱成像的测量位置能够以优异的性能进行分类。