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首页> 外文期刊>Surgical Endoscopy >Medical image analysis: computer-aided diagnosis of gastric cancer invasion on endoscopic images.
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Medical image analysis: computer-aided diagnosis of gastric cancer invasion on endoscopic images.

机译:医学图像分析:通过内窥镜图像对胃癌浸润的计算机辅助诊断。

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The aim of this study was to investigate the efficacy of diagnosing depth of wall invasion of gastric cancer on endoscopic images using computer-aided pattern recognition.The back propagation algorithm was used for computer training. Data of 344 patients who underwent gastrectomy or endoscopic tumor resection between 2001 and 2010 and their 902 endoscopic images were collected. The images were divided into ten groups among which the number of patients and images were almost equally distributed according to T staging. The computer learning was performed using about 800 images from all but one group, and the accuracy rate of diagnosing the depth of wall invasion of gastric cancer was calculated using the remaining group of about 90 images. The various numbers of input layers, hidden layers, and learning counts were updated, and the ideal setting was decided. Similar learning and diagnostic procedures were repeated ten times using every group and all 902 images were tested. The accuracy rate was calculated based on the ideal setting.The most appropriate setting was a resolution of 16 × 16, a hidden layer of 240, and a learning count of 50. In the next step, using all the images on the ideal setting, the overall accuracy rate was 64.7%. The diagnostic accuracy was 77.2, 49.1, 51.0, and 55.3% in the T1, T2, T3, and T4 stagings, respectively. The accuracy was 68.9% in T1a(M) staging and 63.6% in T1b(SM) staging. The positive predictive values were 80.1, 41.6, 51.4, and 55.8% in the T1, T2, T3, and T4 staging, respectively. It was 69.2% in T1a(M) staging and 68.3% in T1b(SM) staging.Computer-aided diagnosis is useful for diagnosing depth of wall invasion of gastric cancer on endoscopic images.
机译:这项研究的目的是研究使用计算机辅助模式识别在胃镜图像上诊断胃癌壁浸润深度的有效性。反向传播算法用于计算机训练。收集了2001年至2010年间344例行胃切除或内镜肿瘤切除术的患者及其902例内镜图像的数据。图像被分为十组,其中患者数量和图像根据T分期几乎均等地分布。使用除一组外的全部图像,约800张图像进行计算机学习,并使用其余约90张图像,计算出诊断胃癌壁浸润深度的准确率。更新了输入层,隐藏层和学习次数的各种数量,并确定了理想的设置。每组重复类似的学习和诊断程序十次,并测试了所有902张图像。准确率是根据理想设置计算得出的。最合适的设置是16×16的分辨率,240的隐藏层和50的学习计数。下一步,使用理想设置上的所有图像,总体准确率为64.7%。在T1,T2,T3和T4分期中,诊断准确性分别为77.2、49.1、51.0和55.3%。 T1a(M)分期的准确性为68.9%,T1b(SM)分期的准确性为63.6%。在T1,T2,T3和T4分期中,阳性预测值分别为80.1、41.6、51.4和55.8%。 T1a(M)分期为69.2%,T1b(SM)分期为68.3%。计算机辅助诊断可用于在内窥镜图像上诊断胃癌壁浸润深度。

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