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Lesion detection of gastroscopic images based on cost-sensitive boosting

机译:基于成本敏感提升的胃镜图像病变检测

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Gastroscopy is widely used for clinical examination of gastric cancer which is one of the most serious diseases. Computer-aided detection can help physicians to identify suspicious regions to reduce false negative diagnosis which costs too much more than false positive diagnosis. Three cost-sensitive boosting algorithms are compared in this paper in the task of lesion detection of gastroscopic images. The optimal cost structure is selected for each boosting algorithm. Threshold obtained adaptively from training set is adopted to get the final result of a novel sample instead of the sign function. Classification performance becomes better after adaptive threshold is used. Experimental results show that Cost-sensitive AdaBoost performs the best for lesion detection of gastroscopic images achieving a sensitivity of 77.34% with the threshold obtained on training set at a target detection rate of 80%. Lesion detection based on cost-sensitive AdaBoost can outline the lesion area more completely and accurately than AdaBoost method.
机译:胃镜检查被广泛用于胃癌的临床检查,胃癌是最严重的疾病之一。计算机辅助检测可以帮助医生识别可疑区域,以减少假阴性诊断,而假阴性诊断的成本要比假阳性诊断高得多。在胃镜图像的病变检测任务中,对三种成本敏感的增强算法进行了比较。为每种提升算法选择最佳成本结构。采用从训练集自适应获得的阈值来获得新样本的最终结果,而不是符号函数。使用自适应阈值后,分类性能会更好。实验结果表明,成本敏感型AdaBoost在胃镜图像病变检测方面表现最佳,灵敏度达到77.34%,而在训练中获得的阈值设置为80%的目标检测率。与AdaBoost方法相比,基于成本敏感型AdaBoost的病变检测可以更完整,更准确地勾勒出病变区域。

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