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Morphometric Assessment of Confocal Laser Endomicroscopy for Pancreatic Ductal Adenocarcinoma an Ex-Vivo Pilot Study

机译:胰腺导管腺癌共聚焦激光子宫内膜瘤的形态测量评估EX-VIVO试验研究

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摘要

Ex-vivo freshly surgical removed pancreatic ductal adenocarcinoma (PDAC) specimens were assessed using pCLE and then processed for paraffin embeding and histopathological diagnostic in an endeavour to find putative image analysis algorithms that might recognise adenocarcinoma. Methods: Twelve patients diagnosed with PDAC on endoscopic ultrasound and FNA confirmation underwent surgery. Removed samples were sprayed with acriflavine as contrast agent, underwent pCLE with an experimental probe and compared with previous recordings of normal pancreatic tissue. Subsequently, all samples were subjected to cross-sectional histopathology, including surgical resection margins for controls. pCLE records, as well as corespondant cytokeratin-targeted immunohistochemistry images were processed using the same morphological classifiers in the Image ProPlus AMS image analysis software. Specific morphometric classifiers were automatically generated on all images: Area, Hole Area (HA), Perimeter, Roundness, Integrated Optical Density (IOD), Fractal Dimension (FD), Ferret max (Fmax), Ferret mean (Fmean), Heterogeneity and Clumpiness. Results: After histopathological confirmation of adenocarcinoma areas, we have found that the same morphological classifiers could clearly differentiate between tumor and non-tumor areas on both pathology and correspondand pCLE (area, roundness, IOD, ferret and heterogeneity (p < 0.001), perimeter and hole area (p < 0.05). Conclusions: This pilot study proves that classical morphometrical classifiers can clearly differentiate adenocarcimoma on pCLE data, and the implementation in a live image-analysis algorithm might help in improving the specificity of pCLE in vivo diagnostic.
机译:使用PCE来评估ex-Vivo新手术移除的胰腺导管腺癌(PDAC)样本,然后在努力中加工用于聚组嵌入和组织病理学诊断,以找到可能识别腺癌的推定的图像分析算法。方法:诊断出在内镜超声和FNA确认接受外科的PDAC患者。除去除去样品用Acriflavine作为造影剂,进行实验探针的循环,并与正常胰腺组织的先前记录相比。随后,对所有样品进行横截面组织病理学,包括用于对照的外科切除余量。在图像ProPlus AMS图像分析软件中使用相同的形态学分类,处理PCLE记录以及反应的细胞角蛋白靶向免疫组化图像。在所有图像上自动生成特定的形态学分类器:面积,孔面积(HA),周长,圆度,集成光密度(IOD),分形维数(FD),雪貂MAX(FMAX),雪貂平均值(FMEAN),异质性和褶皱。结果:在腺癌区域的组织病理学确认后,我们发现相同的形态分类机可以清楚地区分病理和对应的肿瘤和非肿瘤区域(面积,圆度,IOD,雪貂和异质性(P <0.001),周长和孔区域(P <0.05)。结论:该试点研究证明,经典的形态学分类器可以清楚地区分腺癌对PCLE数据,并且实时图像分析算法中的实现可能有助于提高VIVO诊断中的PCE的特异性。

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