| International Journal of Health Geographics | |
| Incorporating geographical factors with artificial neural networks to predict reference values of erythrocyte sedimentation rate | |
| Miao Ge3  Kevin M Mwenda1  Qingsheng Yang2  | |
| [1] Department of Geography, University of California, Santa Barbara, CA, USA;Department of Geography, University of Lethbridge, Lethbridge, AB, Canada;Department of Geography, Shaanxi Normal University, Shaanxi, China | |
| 关键词: Back propagation; Artificial Neural Network; Geographical factors; ESR; | |
| Others : 810236 DOI : 10.1186/1476-072X-12-11 |
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| received in 2013-01-15, accepted in 2013-03-06, 发布年份 2013 | |
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【 摘 要 】
Background
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).
Methods and findings
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.
Conclusions
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.
【 授权许可】
2013 Yang et al; licensee BioMed Central Ltd.
【 预 览 】
| Files | Size | Format | View |
|---|---|---|---|
| 20140709035215510.pdf | 291KB | ||
| Figure 2. | 65KB | Image | |
| Figure 1. | 81KB | Image |
【 图 表 】
Figure 1.
Figure 2.
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