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Computer-aided assessment of regional abdominal fat with food residue removal in CT

机译:计算机辅助评估腹部腹部脂肪并去除CT中的食物残渣

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Rationale and Objectives: Separate quantification of abdominal subcutaneous and visceral fat regions is essential to understand the role of regional adiposity as risk factor in epidemiological studies. Fat quantification is often based on computed tomography (CT) because fat density is distinct from other tissue densities in the abdomen. However, the presence of intestinal food residues with densities similar to fat may reduce fat quantification accuracy. We introduce an abdominal fat quantification method in CT with interest in food residue removal. Materials and Methods: Total fat was identified in the feature space of Hounsfield units and divided into subcutaneous and visceral components using model-based segmentation. Regions of food residues were identified and removed from visceral fat using a machine learning method integrating intensity, texture, and spatial information. Cost-weighting and bagging techniques were investigated to address class imbalance. Results: We validated our automated food residue removal technique against semimanual quantifications. Our feature selection experiments indicated that joint intensity and texture features produce the highest classification accuracy at 95%. We explored generalization capability using k-fold cross-validation and receiver operating characteristic (ROC) analysis with variable k. Losses in accuracy and area under ROC curve between maximum and minimum k were limited to 0.1% and 0.3%. We validated tissue segmentation against reference semimanual delineations. The Dice similarity scores were as high as 93.1 for subcutaneous fat and 85.6 for visceral fat. Conclusions: Computer-aided regional abdominal fat quantification is a reliable computational tool for large-scale epidemiological studies. Our proposed intestinal food residue reduction scheme is an original contribution of this work. Validation experiments indicate very good accuracy and generalization capability.
机译:原理和目的:腹部腹部皮下和内脏脂肪区域的单独定量对于了解区域性肥胖症在流行病学研究中作为危险因素的作用至关重要。脂肪定量通常基于计算机断层扫描(CT),因为脂肪密度与腹部其他组织密度不同。但是,密度与脂肪相似的肠道食物残渣的存在可能会降低脂肪定量的准确性。我们引入CT中的腹部脂肪定量方法,以去除食物残渣。材料和方法:在Hounsfield单位的特征空间中确定总脂肪,并使用基于模型的分割将其分为皮下和内脏成分。使用集成强度,质地和空间信息的机器学习方法,识别并从内脏脂肪中去除食物残留区域。研究了成本加权和套袋技术以解决班级不平衡问题。结果:我们通过半手工量化验证了我们的自动食品残留去除技术。我们的特征选择实验表明,关节强度和纹理特征可产生最高的分类精度,达到95%。我们使用k倍交叉验证和变量k的接收器工作特征(ROC)分析来探索泛化能力。最大和最小k之间的ROC曲线下的精度和面积损失限制为0.1%和0.3%。我们根据参考半手册描述验证了组织分割。皮下脂肪的Dice相似性得分高达93.1,内脏脂肪的Dice相似性得分高达85.6。结论:计算机辅助区域腹部脂肪定量是大规模流行病学研究的可靠计算工具。我们提出的减少肠内食物残渣的计划是这项工作的原始贡献。验证实验表明非常好的准确性和泛化能力。

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