Artificial Intelligence in Medicine
Volume 43, Issue 2 , Pages 141-149, June 2008

Ensemble adaptive network-based fuzzy inference system with weighted arithmetical mean and application to diagnosis of optic nerve disease from visual-evoked potential signals

  • Bayram Akdemir

      Affiliations

    • Selcuk University, Department of Electrical & Electronics Engineering, 42075 Konya, Turkey
  • ,
  • Sadık Kara

      Affiliations

    • Fatih University, Department of Electrical and Electronics Engineering, 34500 Istanbul, Turkey
    • Corresponding Author InformationCorresponding author. Tel.: +90 212 90 8663300x5593; fax: +90 212 8663412.
  • ,
  • Kemal Polat

      Affiliations

    • Selcuk University, Department of Electrical & Electronics Engineering, 42075 Konya, Turkey
  • ,
  • Ayşegül Güven

      Affiliations

    • Erciyes University, Department of Biomedical Engineering, 38039, Kayseri, Turkey
  • ,
  • Salih Güneş

      Affiliations

    • Selcuk University, Department of Electrical & Electronics Engineering, 42075 Konya, Turkey

Received 22 March 2007; received in revised form 26 February 2008; accepted 19 March 2008.

Summary 

Objective

This paper presents a new method based on combining principal component analysis (PCA) and adaptive network-based fuzzy inference system (ANFIS) to diagnose the optic nerve disease from visual-evoked potential (VEP) signals. The aim of this study is to improve the classification accuracy of ANFIS classifier on diagnosis of optic nerve disease from VEP signals. With this aim, a new classifier ensemble based on ANFIS and PCA is proposed.

Methods and material

The VEP signals dataset include 61 healthy subjects and 68 patients suffered from optic nerve disease. First of all, the dimension of VEP signals dataset with 63 features has been reduced to 4 features using PCA. After applying PCA, ANFIS trained using three different training–testing datasets randomly with 50–50% training–testing partition.

Results

The obtained classification results from ANFIS trained separately with three different training–testing datasets are 96.87%, 98.43%, and 98.43%, respectively. And then the results of ANFIS trained with three different training–testing datasets randomly with 50–50% training–testing partition have been combined with three different ways including weighted arithmetical mean that proposed firstly by us, arithmetical mean, and geometrical mean. The classification results of ANFIS combined with three different ways are 98.43%, 100%, and 100%, respectively. Also, ensemble ANFIS has been compared with ANN ensemble. ANN ensemble obtained 98.43%, 100%, and 100% prediction accuracy with three different ways including arithmetical mean, geometrical mean and weighted arithmetical mean.

Conclusion

These results have shown that the proposed classifier ensemble approach based on ANFIS trained with different train–test datasets and PCA has produced very promising results in the diagnosis of optic nerve disease from VEP signals.

Keywords: Visual-evoked potential signals, Optic nerve disease, Adaptive network-based fuzzy inference system, Principal component analysis, Classifier ensemble, Weighted arithmetical mean

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PII: S0933-3657(08)00036-5

doi:10.1016/j.artmed.2008.03.007

Artificial Intelligence in Medicine
Volume 43, Issue 2 , Pages 141-149, June 2008