Biomedical Engineering Researcher, Egyptian Armed Forces, Cairo, Egypt.
Demonstrator, Communications Department, Faculty of Engineering, Mansoura University, Mansoura, Egypt.
Photodiagnosis Photodyn Ther. 2023 Jun;42:103507. doi: 10.1016/j.pdpdt.2023.103507. Epub 2023 Mar 20.
Tissue-preserving surgery is utilized progressively in cancer therapy, where a clear surgical margin is critical to avoid cancer recurrence, specifically in breast cancer (BC) surgery. The Intraoperative pathologic approaches that rely on tissue segmenting and staining have been recognized as the ground truth for BC diagnosis. Nevertheless, these methods are constrained by its complication and timewasting for tissue preparation.
We present a non-invasive optical imaging system incorporating a hyperspectral (HS) camera to discriminate between cancerous and non-cancerous tissues in ex-vivo breast specimens, which could be an intraoperative diagnostic technique to aid surgeons during surgery and later a valuable tool to assist pathologists.
We have established a hyperspectral Imaging (HSI) system comprising a push-broom HS camera at wavelength 380∼1050 nm with source light 390∼980 nm. We have measured the investigated samples' diffuse reflectance (R), fixed on slides from 30 distinct patients incorporating mutually normal and ductal carcinoma tissue. The samples were divided into two groups, stained tissues during the surgery (control group) and unstained samples (test group), both captured with the HSI system in the visible and near-infrared (VIS-NIR) range. Then, to address the problem of the spectral nonuniformity of the illumination device and the influence of the dark current, the radiance data were normalized to yield the radiance of the specimen and neutralize the intensity effect to focus on the spectral reflectance shift for each tissue. The selection of the threshold window from the measured R is carried out by exploiting the statistical analysis by calculating each region's mean and standard deviation. Afterward, we selected the optimum spectral images from the HS data cube to apply a custom K-means algorithm and contour delineation to identify the regular districts from the BC regions.
We noticed that the measured spectral R for the malignant tissues of the investigated case studies versus the reference source light varies regarding the cancer stage, as sometimes the R is higher for the tumor or vice versa for the normal tissue. Later, from the analysis of the whole samples, we found that the most appropriate wavelength for the BC tissues was 447 nm, which was highly reflected versus the normal tissue. However, the most convenient one for the normal tissue was at 545 nm with high reflection versus the BC tissue. Finally, we implement a moving average filter for noise reduction and a custom K-means clustering algorithm on the selected two spectral images (447, 551 nm) to identify the various regions and effectively-identified spectral tissue variations with a sensitivity of 98.95%, and specificity of 98.44%. A pathologist later confirmed these outcomes as the ground truth for the tissue sample investigations.
The proposed system could help the surgeon and the pathologist identify the cancerous tissue margins from the non-cancerous tissue with a non-invasive, rapid, and minimum time method achieving high sensitivity up to 98.95%.
在癌症治疗中,越来越多地采用保留组织的手术,其中明确的手术切缘对于避免癌症复发至关重要,尤其是在乳腺癌(BC)手术中。依靠组织分段和染色的术中病理方法已被认为是 BC 诊断的“金标准”。然而,这些方法受到其复杂性和组织准备时间浪费的限制。
我们提出了一种非侵入性光学成像系统,该系统结合了高光谱(HS)相机,可在离体乳房标本中区分癌组织和非癌组织,这可能是一种术中诊断技术,可以帮助外科医生在手术期间进行诊断,并且以后成为协助病理学家的有价值的工具。
我们建立了一个高光谱成像(HSI)系统,该系统由波长为 380∼1050nm 的推扫 HS 相机和 390∼980nm 的光源组成。我们测量了 30 个不同患者的样本的漫反射(R),这些样本包含相互正常和导管癌组织。将样本分为两组,一组在手术中染色(对照组),另一组未染色(测试组),两组均在可见和近红外(VIS-NIR)范围内用 HSI 系统捕获。然后,为了解决光谱照明设备的非均匀性和暗电流的影响问题,对辐射率数据进行了归一化处理,以获得标本的辐射率,并消除强度效应,从而着重于每个组织的光谱反射率变化。通过计算每个区域的均值和标准差,利用统计分析来选择测量 R 的阈值窗口。之后,我们从 HS 数据立方体中选择最佳光谱图像,应用自定义 K-均值算法和轮廓描绘,以识别 BC 区域的规则区域。
我们注意到,针对所研究病例的恶性组织的测量光谱 R 与参考光源光因癌症阶段而异,有时肿瘤的 R 较高,或者正常组织的 R 较高。后来,从对所有样本的分析中,我们发现 BC 组织的最佳波长是 447nm,与正常组织相比,该波长的反射率较高。但是,正常组织的最佳波长是 545nm,与 BC 组织相比,该波长的反射率较高。最后,我们在选定的两个光谱图像(447nm、551nm)上实现了移动平均滤波器以减少噪声,并应用了自定义 K-均值聚类算法,以有效地识别各种区域并实现了 98.95%的高灵敏度和 98.44%的特异性的光谱组织变化。病理学家后来证实这些结果是组织样本研究的“金标准”。
所提出的系统可以帮助外科医生和病理学家通过一种非侵入性、快速且用时最短的方法,从非癌组织中识别癌组织边缘,达到高达 98.95%的高灵敏度。