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A Novel Multiinstance Learning Approach for Liver Cancer Recognition on Abdominal CT Images Based on CPSO-SVM and IO

机译:基于CPSO-SVM和IO的腹部CT图像肝癌识别的多实例学习新方法

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摘要

A novel multi-instance learning (MIL) method is proposed to recognize liver cancer with abdominal CT images based on instance optimization (IO) and support vector machine with parameters optimized by a combination algorithm of particle swarm optimization and local optimization (CPSO-SVM). Introducing MIL into liver cancer recognition can solve the problem of multiple regions of interest classification. The images we use in the experiments are liver CT images extracted from abdominal CT images. The proposed method consists of two main steps: (1) obtaining the key instances through IO by texture features and a classification threshold in classification of instances with CPSO-SVM and (2) predicting unknown samples with the key instances and the classification threshold. By extracting the instances equally based on the entire image, the proposed method can ignore the procedure of tumor region segmentation and lower the demand of segmentation accuracy of liver region. The normal SVM method and two MIL algorithms, Citation-kNN algorithm and WEMISVM algorithm, have been chosen as comparing algorithms. The experimental results show that the proposed method can effectively recognize liver cancer images from two kinds of cancer CT images and greatly improve the recognition accuracy.
机译:提出了一种基于实例优化(IO)和支持向量机的腹部肿瘤CT图像识别的多实例学习(MIL)方法,该算法通过粒子群优化和局部优化(CPSO-SVM)算法相结合来优化参数。将MIL引入肝癌识别可以解决多个感兴趣区域分类的问题。我们在实验中使用的图像是从腹部CT图像中提取的肝脏CT图像。所提出的方法包括两个主要步骤:(1)通过CPSO-SVM在实例分类中通过纹理特征和分类阈值通过IO获取关键实例,以及(2)通过关键实例和分类阈值预测未知样本。通过基于整个图像均等地提取实例,该方法可以忽略肿瘤区域分割的过程,降低了肝脏区域分割精度的要求。选择了常规SVM方法和两种MIL算法(Citation-kNN算法和WEMISVM算法)作为比较算法。实验结果表明,该方法可以有效地从两种癌症CT图像中识别出肝癌图像,大大提高了识别率。

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