Hyperspectral imaging for tumor detection in the resection surface of fresh lumpectomy specimens (Conference Presentation)

E. Kho, L. Boer, K. Vijver, H. Sterenborg, T. Ruers
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Abstract

Real-time intra-operative resection margin assessment during breast-conserving surgery (BCS) is important to prevent incomplete tumor removal. Nowadays, in up to 37% of the women undergoing BCS, tumor positive margin are found after surgery. We test the feasibility of hyperspectral imaging to predict these positive margins in fresh lumpectomy specimens, to prevent incomplete tumor removal. Hyperspectral diffuse reflectance images (900-1700 nm) were collected on fresh lumpectomy specimens. These specimens were obtained from women undergoing primary BCS, that did not get neo-adjuvant treatment. To ensure hyperspectral images of the entire resection surface, we treated the specimen as a cube and imaged it from six different sides. Next, a SVM classification algorithm, which we developed and tested with a different dataset, was applied to these hyperspectral images to predict positive margins. Finally, we compared the margin assessment performed with hyperspectral imaging with histopathology, the gold standard for margin assessment. It was found that hyperspectral imaging could be used in the clinical workflow. First, data acquisition of the entire resection side was fast and took only 20 seconds per resection side. Second, with the earlier developed classification algorithm, data analysis could be performed in the operating theater in limited amount of time. Third, with hyperspectral imaging we were able to find 12 out of 13 positive resection sides. The one positive resection side that was missed contained a single malignant pocket smaller than 1 mm2. These preliminary findings make hyperspectral imaging a promising technique for resection margin assessment during BCS.
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高光谱成像在新鲜乳房肿瘤切除术标本切除表面的肿瘤检测(会议报告)
保乳手术(BCS)术中实时切除边缘评估对防止肿瘤不完全切除具有重要意义。如今,在接受BCS的女性中,高达37%的人在手术后发现肿瘤阳性边缘。我们测试了高光谱成像在新鲜乳房肿瘤切除术标本中预测这些阳性边缘的可行性,以防止肿瘤不完全切除。采集新鲜乳房肿瘤切除标本的高光谱漫反射图像(900-1700 nm)。这些标本来自未接受新辅助治疗的原发性BCS患者。为了确保整个切除表面的高光谱图像,我们将标本作为立方体处理,并从六个不同的侧面进行成像。接下来,我们开发并使用不同的数据集测试了SVM分类算法,将其应用于这些高光谱图像以预测正边界。最后,我们比较了用高光谱成像进行的边缘评估与组织病理学,边缘评估的金标准。发现高光谱成像可用于临床工作流程。首先,整个切除侧的数据采集速度快,每个切除侧仅需20秒。其次,使用较早开发的分类算法,可以在有限的时间内在手术室进行数据分析。第三,通过高光谱成像,我们能够找到13个阳性切除侧中的12个。遗漏的一个阳性切除侧包含一个小于1mm2的恶性袋。这些初步发现使高光谱成像成为一种很有前途的技术,用于BCS的切除边缘评估。
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Front Matter: Volume 10856 An assessment of OCT plus micro-elastography for detection of close tumor margins following breast-conserving surgery (Conference Presentation) Characterization of oviduct ciliary beat frequency using spectrally encoded interferometric microscopy (Conference Presentation) Optical micro-mechanical mapping for studying the mechanobiology of breast cancer progression (Conference Presentation) Towards detection of positive resection margins with diffuse reflectance spectroscopy during breast conserving surgery (Conference Presentation)
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