Diagnostic Accuracy Comparison of Artificial Immune Algorithms for Primary Headaches

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Abstract

The present study evaluated the diagnostic accuracy of immune system algorithms with the aim of classifying the primary types of headache that are not related to any organic etiology. They are divided into four types: migraine, tension, cluster, and other primary headaches. After we took this main objective into consideration, three different neurologists were required to fill in the medical records of 850 patients into our web-based expert system hosted on our project web site. In the evaluation process, Artificial Immune Systems (AIS) were used as the classification algorithms. The AIS are classification algorithms that are inspired by the biological immune system mechanism that involves significant and distinct capabilities. These algorithms simulate the specialties of the immune system such as discrimination, learning, and the memorizing process in order to be used for classification, optimization, or pattern recognition. According to the results, the accuracy level of the classifier used in this study reached a success continuum ranging from 95% to 99%, except for the inconvenient one that yielded 71% accuracy.

Figures

  • Figure 1: B-cell and T-cell pattern recognition of an antigen or pathogen.
  • Table 1: Neurologists’ headache diagnoses.
  • Figure 2: Immunos-81 algorithm. (a) General version of training. (b) Summary of the classification.
  • Figure 3: Immunos-99 algorithm. Classification and training process.
  • Figure 4: AIRS classification.
  • Table 3: Detailed accuracy by class for the Immunos-2 algorithm.
  • Table 7: Detailed accuracy by class for the AIRS2-Parallel algorithm.
  • Table 2: Detailed accuracy by class for the Immunos-1 algorithm.

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CITATION STYLE

APA

Çelik, U., Yurtay, N., Koç, E. R., Tepe, N., Güllüoʇlu, H., & Ertaş, M. (2015). Diagnostic Accuracy Comparison of Artificial Immune Algorithms for Primary Headaches. Computational and Mathematical Methods in Medicine, 2015. https://doi.org/10.1155/2015/465192

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