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Specific Health Examination Data Prediction for Female Subjects with Unhealthy-Level Visceral Fat Using Self-Organizing Maps

机译:使用自组织映射的女性健康状况不佳的内脏脂肪的特定健康检查数据预测

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In this paper, a data-prediction method is presented for female subjects with unhealthy-level visceral fat, using self-organizing maps (SOMs). It assumes that the original data measured in successive three years are available for the subjects associated with training data for map learning. It introduces the standardization for original item values to prepare the data. When predicting original item values, the data of the subject to be explored is presented to the trained map to determine a winner. A set of the training data making that winner fire is picked up, and the differences between original data measured in the second year and that measured in the third year are calculated for each of the subjects with such training data. The proposed method adds the differences averaged over such subjects to the original data of the subject to be explored, to obtain prediction result. It is revealed that the favorable prediction accuracy is achieved for hemoglobin A1c.
机译:在本文中,提出了一种使用自组织映射(SOM)的女性健康水平不高的内脏脂肪的数据预测方法。假定连续三年中测得的原始数据可用于与地图学习训练数据相关的主题。它介绍了原始项目值的标准化,以准备数据。在预测原始项目值时,将要探索的主题的数据呈现给训练有素的地图,以确定获胜者。收集一组使获胜者兴奋的训练数据,并针对具有此类训练数据的每个对象,计算第二年测量的原始数据与第三年测量的原始数据之间的差异。所提出的方法将在这些对象上平均的差异添加到要探索的对象的原始数据中,以获得预测结果。揭示了对于血红蛋白A1c实现了良好的预测精度。

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