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Identification of lesion images from gastrointestinal endoscope based on feature extraction of combinational methods with and without learning process

机译:基于带有和不带有学习过程的组合方法的特征提取,从胃肠内窥镜上识别病变图像

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The gastrointestinal endoscopy in this study refers to conventional gastroscopy and wireless capsule endoscopy (WCE). Both of these techniques produce a large number of images in each diagnosis. The lesion detection done by hand from the images above is time consuming and inaccurate. This study designed a new computer-aided method to detect lesion images. We initially designed an algorithm named joint diagonalisation principal component analysis (JDPCA), in which there are no approximation, iteration or inverting procedures. Thus, JDPCA has a low computational complexity and is suitable for dimension reduction of the gastrointestinal endoscopic images. Then, a novel image feature extraction method was established through combining the algorithm of machine learning based on JDPCA and conventional feature extraction algorithm without learning. Finally, a new computer-aided method is proposed to identify the gastrointestinal endoscopic images containing lesions. The clinical data of gastroscopic images and WCE images containing the lesions of early upper digestive tract cancer and small intestinal bleeding, which consist of 1330 images from 291 patients totally, were used to confirm the validation of the proposed method. The experimental results shows that, for the detection of early oesophageal cancer images, early gastric cancer images and small intestinal bleeding images, the mean values of accuracy of the proposed method were 90.75%, 90.75% and 94.34%, with the standard deviations (SDs) of 0.0426, 0.0334 and 0.0235, respectively. The areas under the curves (ADCs) were 0.9471, 0.9532 and 0.9776, with the SDs of 0.0296, 0.0285 and 0.0172, respectively. Compared with the traditional related methods, our method showed a better performance. It may therefore provide worthwhile guidance for improving the efficiency and accuracy of gastrointestinal disease diagnosis and is a good prospect for clinical application. (C) 2016 Elsevier B.V. All rights reserved.
机译:本研究中的胃肠道内窥镜是指常规胃镜和无线胶囊内镜(WCE)。这两种技术在每次诊断中都会产生大量图像。从上面的图像中手工完成的病变检测既费时又不准确。这项研究设计了一种新的计算机辅助方法来检测病变图像。我们最初设计了一种称为联合对角化主成分分析(JDPCA)的算法,其中没有近似,迭代或求逆过程。因此,JDPCA具有低的计算复杂度,并且适合于胃肠道内窥镜图像的尺寸减小。然后,结合基于JDPCA的机器学习算法和传统的无学习特征提取算法,提出了一种新的图像特征提取方法。最后,提出了一种新的计算机辅助方法来识别包含病变的胃肠道内窥镜图像。胃镜图像和WCE图像包含早期上消化道癌病变和小肠出血的临床数据(共计291例患者的1330幅图像)被用于确认该方法的有效性。实验结果表明,对于早期食道癌图像,早期胃癌图像和小肠出血图像的检测,该方法的准确度平均值为90.75%,90.75%和94.34%,标准差为)分别为0.0426、0.0334和0.0235。曲线下的面积(ADC)为0.9471、0.9532和0.9776,SD分别为0.0296、0.0285和0.0172。与传统的相关方法相比,我们的方法具有更好的性能。因此,它可以为提高胃肠道疾病诊断的效率和准确性提供有价值的指导,并为临床应用提供良好的前景。 (C)2016 Elsevier B.V.保留所有权利。

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