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A Novel Hybrid Model for Visceral Adipose Tissue Prediction using Shape Descriptors

机译:一种新型混合模型,用于使用形状描述夹的内脏脂肪组织预测

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Obesity is gaining increasing attention in modern society since it is associated with various health issues. The visceral adipose tissue (VAT) deposits around the abdominal organs and is considered an extremely important indicator of health risk. VAT can be assessed through magnetic resonance imaging (MRI) or computed tomography (CT) accurately, but the cost is prohibitive. Shape-based body composition prediction has become a promising topic thanks to the prevalence of commodity optical body scan systems, from which numerous anthropometries can be extracted automatically. In this paper, we propose an innovative shape-based hybrid VAT prediction model. The most appealing benefit of our method is to robustly handle the lack of knowledge about gender and demographics. First, we train a baseline VAT prediction model for each gender separately. Second, we train a classifier to predict the gender likelihood and a classifier to predict the shape likelihood of being overestimated in VAT baseline prediction. Third, we integrate the gender likelihood and shape likelihood into the baseline models to derive one hybrid VAT prediction model. We compare our prediction model with other state-of-the-art VAT prediction methods. The result shows that our method outperforms the comparison methods by 21.8% on average.
机译:由于它与各种健康问题有关,肥胖正在越来越越来越受到现代社会的关注。内脏脂肪组织(VAT)沉积在腹部器官周围,被认为是一个极其重要的健康风险指标。可以通过磁共振成像(MRI)或计算机断层扫描(CT)来评估VAT,但成本令人望而却步。由于商品光学体扫描系统的流行,基于形状的身体成分预测已成为一个有希望的话题,可以自动提取许多人类化学测定。在本文中,我们提出了一种创新的基于形状的混合增值税预测模型。我们方法的最吸引人的好处是强大地处理对性别和人口统计数据的知识。首先,我们分别为每个性别训练基线增值税预测模型。其次,我们训练一个分类器来预测性别可能性和分类器,以预测在增值税基线预测中高估的形状可能性。第三,我们将性别可能性和形状可能性整合到基线模型中,以导出一个混合增值税预测模型。我们将我们的预测模型与其他最先进的增值税预测方法进行比较。结果表明,我们的方法平均优于比较方法21.8%。

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