Announcement

Collapse
No announcement yet.

Construction of early warning model of influenza-like illness in Zhejiang Province based on support vector machine

Collapse
X
 
  • Filter
  • Time
  • Show
Clear All
new posts

  • Construction of early warning model of influenza-like illness in Zhejiang Province based on support vector machine

    Zhejiang Da Xue Xue Bao Yi Xue Ban. 2015 May 25;44(6):653-8.
    [Construction of early warning model of influenza-like illness in Zhejiang Province based on support vector machine].

    [Article in Chinese]
    Han-Ti LU1, Fu-Dong LI2, Jun-Fen L2, Fan HE2, Yi S1.
    Author information

    Abstract

    OBJECTIVE:

    To construct a forecasting model of influenza-like illness in Zhejiang Province.
    METHODS:

    The number of influenza-like cases and related pathogens among outpatients and emergency patients were obtained from 11 sentinel hospitals in Zhejiang Province during 2012 to 2013 (total 104 weeks), and corresponding meteorological factors were also collected. The epidemiological characteristics of influenza during the period were then analyzed. Linear correlation and rank correlation analyses were conducted to explore the association between influenza-like illness and related factors. Optimal parameters were selected by cross validation. Support vector machine was used to construct the forecasting model of influenza-like illness in Zhejiang Province and verified by the historical data.
    RESULTS:

    Correlation analysis indicated that 8 factors were associated with influenza-like illness occurred in one week. The results of cross validation showed that the optimal parameters were C=3, ε=0.009 and γ=0.4. The results of influenza-like illness forecasting model after verification revealed that support vector machine had the accuracy of 50.0% for prediction with the same level, while it reached 96.7% for prediction within the range of one level higher or lower.
    CONCLUSION:

    Support vector machine is suitable for early warning of influenza-like illness.


    PMID: 26822048 [PubMed - in process]
Working...
X