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Texture-based Treatment Prediction by Automatic Liver Tumor Segmentation on Computed Tomography

机译:基于纹理的治疗预测自动肝肿瘤分割对计算机断层扫描

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This study presents a novel approach to extracting discriminative texture features of a liver tumor in computed tomography (CT) scans, which are used to combine with medical records for survival prediction. The liver region is first located using an image segmentation method. A pre-learned tumor classifier follows to segment the tumors in the liver region. Next, two sets of feature points are detected: (1) feature points in the liver region; (2) randomly sampling several points in the tumor region. Using each feature point as the center of a region of interest (ROI), this study computes Gray-level Co-occurrence Matrix (GLCM) which is further used to derive the texture features of the ROI. Multiple ROIs and thus multiple texture feature vectors are derived in an input CT image. These textures are collected and clustered into four clusters, where each of them is represented by a representative texture feature vector. To further enhance the discriminative powder of the texture features, for each CT image, we select two representative texture feature vectors which are from the two clusters with the highest probability belonging to the tumor region and the liver region, respectively. The resulting tumor (liver) texture feature vector is then labeled as a positive (negative) example in order to train a tumor Support Vector Machine (SVM) classifier. In the diagnosis stage, the tumor SVM classifies an input texture feature vector and the classification result locates the liver tumors in a CT image. Given CT images of 72 patients, to associate the detected tumor texture feature vectors with the medical records, a treatment prediction dataset is constructed for mining the survival prediction model using logistic regression. In the testing stage, to input a tumor texture feature vector and the possible treatments to the survival prediction model, the system computes the survival probabilities and generates a treatment prediction report, which suggests the most suitable treatment for the patient. Experimental results show that the proposed method gives good performance in terms of the accuracy of survival prediction.
机译:该研究提出了一种提取计算机断层扫描(CT)扫描中肝肿瘤的鉴别质纹理特征的新方法,这些方法用于将用于生存预测的医学记录结合。肝脏区域首先使用图像分割方法定位。预先学习的肿瘤分类器遵循肝脏区域中的肿瘤。接下来,检测到两组特征点:(1)肝脏区域中的特征点; (2)随机取样肿瘤区的几个点。使用每个特征点作为感兴趣区域(ROI)的中心,本研究计算灰度级共生矩阵(GLCM),该矩阵(GLCM)进一步用于导出ROI的纹理特征。多个ROI和因此多个纹理特征向量导出在输入CT图像中。将这些纹理收集并聚集到四个集群中,其中每个集群由代表性纹理特征向量表示。为了进一步增强纹理特征的辨别粉末,对于每个CT图像,我们选择两个代表性的纹理特征向量,它们分别来自具有属于肿瘤区域和肝脏区域的最高概率的两个簇。然后将得到的肿瘤(肝脏)纹理特征向量标记为正(负)示例,以便训练肿瘤支撑载体机(SVM)分类器。在诊断阶段,肿瘤SVM对输入纹理特征向量进行分类,分类结果在CT图像中定位肝脏肿瘤。给定72名患者的CT图像,将检测到的肿瘤纹理特征向量与医疗记录相关联,构造一种处理预测数据集用于使用逻辑回归进行生存预测模型。在测试阶段,为了输入肿瘤纹理特征向量和对生存预测模型的可能治疗,系统计算存活概率并产生治疗预测报告,这表明对患者最合适的治疗方法。实验结果表明,该方法在存活预测的准确性方面具有良好的性能。

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