首页> 外文期刊>Gastrointestinal Endoscopy >Differential diagnosis of pancreatic cancer from normal tissue with digital imaging processing and pattern recognition based on a support vector machine of EUS images.
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Differential diagnosis of pancreatic cancer from normal tissue with digital imaging processing and pattern recognition based on a support vector machine of EUS images.

机译:基于EUS图像的支持向量机的数字成像处理和模式识别与正常组织的胰腺癌鉴别诊断。

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BACKGROUND: EUS can detect morphologic abnormalities of pancreatic cancer with high sensitivity but with limited specificity. OBJECTIVE: To develop a classification model for differential diagnosis of pancreatic cancer by using a digital imaging processing (DIP) technique to analyze EUS images of the pancreas. DESIGN: A retrospective, controlled, single-center design was used. SETTING: The study took place at the Second Military Medical University, Shanghai, China. PATIENTS: There were 153 pancreatic cancer and 63 noncancer patients in this study. INTERVENTION: All patients underwent EUS-guided FNA and pathologic analysis. MAIN OUTCOME MEASUREMENTS: EUS images were obtained and correlated with cytologic findings after FNA. Texture features were extracted from the region of interest, and multifractal dimension vectors were introduced in the feature selection to the frame of the M-band wavelet transform. The sequential forward selection process was used for a better combination of features. By using the area under the receiver operating characteristic curve and other texture features based on separability criteria, a predictive model was built, trained, and validated according to the support vector machine theory. RESULTS: From 67 frequently used texture features, 20 better features were selected, resulting in a classification accuracy of 99.07% after being added to 9 other features. A predictive model was then built and trained. After 50 random tests, the average accuracy, sensitivity, specificity, positive predictive value, and negative predictive value for the diagnosis of pancreatic cancer were 97.98 +/- 1.23%, 94.32 +/- 0.03%, 99.45 +/- 0.01%, 98.65 +/- 0.02%, and 97.77 +/- 0.01%, respectively. LIMITATIONS: The limitations of this study include the small sample size and that the support vector machine was not performed in real time. CONCLUSION: The classification of EUS images for differentiating pancreatic cancer from normal tissue by DIP is quite useful. Further refinements of such a model could increase the accuracy of EUS diagnosis of tumors.
机译:背景:超声内镜可以高灵敏度但特异性有限地检测出胰腺癌的形态异常。目的:通过数字成像处理(DIP)技术分析胰腺EUS图像,建立胰腺癌鉴别诊断的分类模型。设计:采用回顾性,可控的单中心设计。地点:该研究在中国第二军医大学进行。患者:这项研究中有153例胰腺癌和63例非癌患者。干预:所有患者均接受EUS指导的FNA和病理分析。主要观察指标:获得超声图像,并与FNA后的细胞学检查结果相关。从感兴趣区域提取纹理特征,并将多分形维向量引入特征选择中的M带小波变换帧中。顺序的前向选择过程用于更好地组合功能。通过使用基于可分离性标准的接收器工作特性曲线和其他纹理特征下的区域,根据支持向量机理论构建,训练和验证了预测模型。结果:从67个常用纹理特征中选择了20个更好的特征,将其添加到其他9个特征后,分类精度为99.07%。然后建立了预测模型并进行了训练。经过50次随机测试,诊断胰腺癌的平均准确性,敏感性,特异性,阳性预测值和阴性预测值分别为97.98 +/- 1.23%,94.32 +/- 0.03%,99.45 +/- 0.01%,98.65 +/- 0.02%和97.77 +/- 0.01%。局限性:这项研究的局限性包括样本量小以及支持向量机未实时执行。结论:通过DIP对胰腺癌与正常组织进行鉴别的EUS图像分类非常有用。这种模型的进一步完善可以提高EUS诊断肿瘤的准确性。

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