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Abdominal Lymphadenopathy Detection using Random Forest

机译:使用随机森林进行腹部淋巴结病检测

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We propose a new method for detecting abdominal lymphadenopathy by utilizing a random forest statistical classifier to create voxel-level lymph node predictions, i.e. initial detection of enlarged lymph nodes. The framework permits the combination of multiple statistical lymph node descriptors and appropriate feature selection in order to improve lesion detection beyond traditional enhancement filters. We show that Hessian blobness measurements alone are inadequate for detecting lymph nodes in the abdominal cavity. Of the features tested here, intensity proved to be the most important predictor for lymph node classification. For initial detection, candidate lesions were extracted from the 3D prediction map generated by random forest. Statistical features describing intensity distribution, shape, and texture were calculated from each enlarged lymph node candidate. In the last step, a support vector machine (SVM) was trained and tested based on the calculated features from candidates and labels determined by two experienced radiologists. The computer-aided detection (CAD) system was tested on a dataset containing 30 patients with 119 enlarged lymph nodes. Our method achieved an AUC of 0.762±0.022 and a sensitivity of 79.8% with 15 false positives suggesting it can aid radiologists in finding enlarged lymph nodes.
机译:我们提出了一种通过利用随机森林统计分类器创建体素水平的淋巴结预测来检测腹部淋巴结肿大的新方法,即扩大淋巴结的初始检测。该框架允许多个统计淋巴结描述符和适当的特征选择相结合,以改善病变检测能力,使其超越传统的增强滤镜。我们表明,仅黑森州的斑点测量不足以检测腹腔中的淋巴结。在这里测试的特征中,强度被证明是淋巴结分类最重要的预测指标。为了进行初始检测,从随机森林生成的3D预测图中提取候选病变。从每个扩大的淋巴结候选者中计算出描述强度分布,形状和质地的统计特征。在最后一步中,根据由两名经验丰富的放射科医生确定的候选项和标签计算出的特征,对支持向量机(SVM)进行了培训和测试。该计算机辅助检测(CAD)系统在包含30个患者的119个淋巴结肿大的数据集上进行了测试。我们的方法获得的AUC为0.762±0.022,灵敏度为79.8%,假阳性为15,表明它可以帮助放射科医生发现淋巴结肿大。

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