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Automated Detection of Esophageal Dysplasia in In Vivo Optical Coherence Tomography Images of the Human Esophagus

机译:食管发育异常在人食管的体内光学相干断层扫描图像中的自动检测

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Catheter-based Optical Coherence Tomography (OCT) devices allow real-time and comprehensive imaging of the human esophagus. Hence, they provide the potential to overcome some of the limitations of endoscopy and biopsy, allowing earlier diagnosis and better prognosis for esophageal adenocarcinoma patients. However, the large number of images produced during every scan makes manual evaluation of the data exceedingly difficult. In this study, we propose a fully automated tissue characterization algorithm, capable of discriminating normal tissue from Barrett's Esophagus (BE) and dysplasia through entire three-dimensional (3D) data sets, acquired in vivo. The method is based on both the estimation of the scatterer size of the esophageal epithelial cells, using the bandwidth of the correlation of the derivative (COD) method, as well as intensity-based characteristics. The COD method can effectively estimate the scatterer size of the esophageal epithelium cells in good agreement with the literature. As expected, both the mean scatterer size and its standard deviation increase with increasing severity of disease (i.e. from normal to BE to dysplasia). The differences in the distribution of scatterer size for each tissue type are statistically significant, with a p value of < 0.0001. However, the scatterer size by itself cannot be used to accurately classify the various tissues. With the addition of intensity-based statistics the correct classification rates for all three tissue types range from 83 to 100 % depending on the lesion size.
机译:基于导管的光学相干断层扫描(OCT)设备可对人类食道进行实时且全面的成像。因此,它们为克服内窥镜检查和活检的某些局限性提供了潜力,从而可以为食管腺癌患者提供更早的诊断和更好的预后。但是,每次扫描过程中都会产生大量图像,因此手动评估数据非常困难。在这项研究中,我们提出了一种全自动的组织表征算法,该算法能够通过体内获得的整个三维(3D)数据集来区分正常组织与Barrett食管(BE)和发育不良。该方法基于使用导数(COD)方法的相关带宽以及基于强度的特征来估计食管上皮细胞的散射体大小。 COD方法可以有效地估计食管上皮细胞的散射体大小,与文献一致。如预期的那样,平均散射体大小及其标准偏差都随着疾病严重程度的增加(即从正常到BE到发育异常)而增加。每种组织类型的散射体大小分布差异具有统计学意义,p值<0.0001。然而,散射体的尺寸本身不能用于准确地分类各种组织。添加基于强度的统计信息后,根据病变大小,所有三种组织类型的正确分类率从83%到100%不等。

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