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Automatic detection and segmentation of abdominopelvic lymph nodes on computed tomography scans

机译:计算机断层扫描扫描上腹腔淋巴结的自动检测和分割

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We proposed a local scale-based Hessian analysis method for automated lymph node detection in contrast-enhanced abdominopelvic CT scans. First, spine and pelvic girdle were automatically segmented to locate the abdominopelvic region. Blood vessels were then segmented to narrow the search region to the perivascular space where lymph nodes are located. Lymph node candidates were generated by scale-based Hessian analysis. The detected candidates were segmented by curve evolution. Characteristic features were calculated on the segmented nodes. Support vector machine was utilized for classification and false positive reduction. We applied our method to 22 patients with 37 enlarged lymph nodes. The system achieved 83% sensitivity at 5 false positives per patient. Our results indicated that computer-aided abdominopelvic lymph node detection is feasible with a high sensitivity and a relatively low FP rate.
机译:我们提出了一种基于局部规模的Hessian分析方法,用于对比度增强的腹腔瓣CT扫描中的自动淋巴结检测。首先,自动分割脊柱和骨盆腰带以定位腹腔瓣区域。然后将血管分段为将搜索区域缩小到淋巴结所在的血管内空间。淋巴结候选人是由基于规模的Hessian分析产生的。检测到的候选者被曲线演进分段。在分段节点上计算特征特征。支持向量机用于分类和误报。我们将方法应用于22例患有37名淋巴结患者。该系统以每位患者的5个误报率为83%的灵敏度。我们的结果表明,计算机辅助腹膜髓淋巴结检测具有高灵敏度和相对较低的FP速率。

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