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Automatic Annotation of Radiological Observations in Liver CT Images

机译:肝脏CT图像中放射学观察的自动注释

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摘要

We aim to predict radiological observations using computationally-derived imaging features extracted from computed tomography (CT) images. We created a dataset of 79 CT images containing liver lesions identified and annotated by a radiologist using a controlled vocabulary of 76 semantic terms. Computationally-derived features were extracted describing intensity, texture, shape, and edge sharpness. Traditional logistic regression was compared to L1-regularized logistic regression (LASSO) in order to predict the radiological observations using computational features. The approach was evaluated by leave one out cross-validation. Informative radiological observations such as lesion enhancement, hypervascular attenuation, and homogeneous retention were predicted well by computational features. By exploiting relationships between computational and semantic features, this approach could lead to more accurate and efficient radiology reporting.
机译:我们的目的是使用从计算机断层扫描(CT)图像中提取的基于计算的成像特征来预测放射学观察结果。我们创建了79个CT图像的数据集,其中包含由放射科医生使用76个语义术语的受控词汇识别和注释的肝脏病变。提取了计算得出的特征,这些特征描述了强度,纹理,形状和边缘清晰度。将传统逻辑回归与L1规则逻辑回归(LASSO)进行了比较,以便使用计算功能预测放射学观察结果。通过留一法交叉验证来评估该方法。通过计算功能可以很好地预测信息性放射学观察结果,如病变增强,血管过度衰减和均质保留。通过利用计算和语义特征之间的关系,该方法可以导致更准确和有效的放射学报告。

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