School of Resources and Environment, Guangdong University of Business Studies, Guangzhou, Guangdong, China.
Int J Health Geogr. 2013 Mar 12;12:11. doi: 10.1186/1476-072X-12-11.
The measurement of the Erythrocyte Sedimentation Rate (ESR) value is a standard procedure performed during a typical blood test. In order to formulate a unified standard of establishing reference ESR values, this paper presents a novel prediction model in which local normal ESR values and corresponding geographical factors are used to predict reference ESR values using multi-layer feed-forward artificial neural networks (ANN).
Local normal ESR values were obtained from hospital data, while geographical factors that include altitude, sunshine hours, relative humidity, temperature and precipitation were obtained from the National Geographical Data Information Centre in China.The results show that predicted values are statistically in agreement with measured values. Model results exhibit significant agreement between training data and test data. Consequently, the model is used to predict the unseen local reference ESR values.
Reference ESR values can be established with geographical factors by using artificial intelligence techniques. ANN is an effective method for simulating and predicting reference ESR values because of its ability to model nonlinear and complex relationships.
红细胞沉降率(ESR)值的测量是在典型的血液测试中进行的标准程序。为了制定建立参考 ESR 值的统一标准,本文提出了一种新的预测模型,该模型使用局部正常 ESR 值和相应的地理因素,使用多层前馈人工神经网络(ANN)预测参考 ESR 值。
从医院数据中获取局部正常 ESR 值,从中国国家地理数据信息中心获取包括海拔、日照小时数、相对湿度、温度和降水在内的地理因素。结果表明,预测值与测量值在统计学上是一致的。模型结果显示训练数据和测试数据之间有显著的一致性。因此,该模型用于预测未见过的局部参考 ESR 值。
可以使用地理因素和人工智能技术来建立参考 ESR 值。由于其模拟和预测参考 ESR 值的能力,ANN 是一种有效的方法,因为它能够模拟非线性和复杂的关系。