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A stepwise protocol for neural network modeling of persistent postoperative facial pain in chronic rhinosinusitis

Identyfikatory
Warianty tytułu
Języki publikacji
EN
Abstrakty
EN
In the artificial neural network field, no universal algorithm of modeling ensures obtaining the best possible model for a given task. Researchers frequently regard artificial neural networks with suspicion caused by the lack of repeatability of single experiments. We propose a systematic approach that may increase the probability of finding the optimal network architecture. In the experiments, the average effectiveness in groups of networks rather than single networks should be compared. Such an approach facilitates the analysis of the results caused by changes in the network parameters, while the influence of chance effects becomes negligible. As an example of this protocol, we present optimization of a neural network applied for prediction of persistent facial pain in patients operated for chronic rhinosinusitis. In the stepwise approach, the percentage of correct predictions was gradually increased from 54% to 75% for the external validation set.
Rocznik
Strony
81--88
Opis fizyczny
Bibliogr. 30 poz., rys., wykr.
Twórcy
autor
  • Department of Otolaryngology, Jagiellonian University Medical College, Krakow, Poland
autor
  • Jerzy Haber Institute of Catalysis and Surface Chemistry, PAS, Krakow, Poland
autor
  • Department of Otolaryngology, Jagiellonian University Medical College, Krakow, Poland
Bibliografia
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  • 4. Szaleniec J, Skladzien J, Tadeusiewicz R, Oles K, Konior M, Przeklasa R. How can an otolaryngologist benefit from artificial neural networks? Otolaryngol Pol 2012;66:241–8.
  • 5. Szaleniec J, Wiatr M, Szaleniec M, Skladzien J, Tomik J, Oles K, et al. Artificial neural network modelling of the results of tympanoplasty in chronic suppurative otitis media patients. Comput Biol Med 2013;43:16–22.
  • 6. Tadeusiewicz R. Neural networks as a tool for modeling of biological systems. Bio-Algorithm Med-Syst 2015;11:135.
  • 7. Waligorski P, Szaleniec M. Prediction of white cabbage (Brassica oleracea var. capitata) self-incompatibility based on neural network and discriminant analysis of complex electrophoretic patterns. Comput Biol Chem 2010;34:115–21.
  • 8. Fokkens WJ, Lund VJ, Mullol J, Bachert C, Alobid I, Baroody F, et al. European position paper on rhinosinusitis and nasal polyps 2012. Rhinol Suppl 2012;3 p preceding table of contents, 1–298.
  • 9. Daudia AT, Jones NS. Facial migraine in a rhinological setting. Clin Otolaryngol Allied Sci 2002;27:521–5.
  • 10. Jones NS, Cooney TR. Facial pain and sinonasal surgery. Rhinology 2003;41:193–200.
  • 11. Tarabichi M. Characteristics of sinus-related pain. Otolaryngol Head Neck Surg 2000;122:842–7.
  • 12. Soler ZM, Mace J, Smith TL. Symptom-based presentation of chronic rhinosinusitis and symptom-specific outcomes after endoscopic sinus surgery. Am J Rhinol 2008;22:297–301.
  • 13. Deal RT, Kountakis SE. Significance of nasal polyps in chronić rhinosinusitis: symptoms and surgical outcomes. Laryngoscope 2004;114:1932–5.
  • 14. Bugten V, Nordgard S, Romundstad P, Steinsvag S. Chronic rhinosinusitis and nasal polyposis; indicia of heterogeneity. Rhinology 2008;46:40–4.
  • 15. Banerji A, Piccirillo JF, Thawley SE, Levitt RG, Schechtman KB, Kramper MA, et al. Chronic rhinosinusitis patients with polyps or polypoid mucosa have a greater burden of illness. Am J Rhinol 2007;21:19–26.
  • 16. de Loos DA, Hopkins C, Fokkens WJ. Symptoms in chronic rhinosinusitis with and without nasal polyps. Laryngoscope 2013;123:57–63.
  • 17. Poetker DM, Mendolia-Loffredo S, Smith TL. Outcomes of endoscopic sinus surgery for chronic rhinosinusitis associated with sinonasal polyposis. Am J Rhinol 2007;21:84–8.
  • 18. DelGaudio JM, Wise SK, Wise JC. Association of radiological evidence of frontal sinus disease with the presence of frontal pain. Am J Rhinol 2005;19:167–73.
  • 19. Krzeski A, Gromek I. Zapalenia zatok przynosowych. Gdańsk: Via Medica, 2008.
  • 20. Marks SC, Shamsa F. Evaluation of prognostic factors in endoscopic sinus surgery. Am J Rhinol 1997;11:187–91.
  • 21. Busaba NY, Sin HJ, Salman SD. Impact of gender on clinical presentation of chronic rhinosinusitis with and without polyposis. J Laryngol Otol 2008;122:1180–4.
  • 22. DiBaise JK, Olusola BF, Huerter JV, Quigley EM. Role of GERD in chronic resistant sinusitis: a prospective, open label, pilot trial. Am J Gastroenterol 2002;97:843–50.
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  • 24. Rogers D, Hopfinger AJ. Application of genetic function approximation to quantitative structure-activity relationships and quantitative structure-property relationships. J Chem Inf Comput Sci 1994;34:854–66.
  • 25. So S-S, Karplus M. Three-dimensional quantitative structureactivity relationships from molecular similarity matrices and genetic neural networks: 1. Method and validations. J Med Chem 1997;40:4347–59.
  • 26. So S-S, Karplus M. Genetic neural networks for quantitative structure-activity relationships: improvements and application of benzodiazepine affinity for benzodiazepine/GABAA receptors. J Med Chem 1996;39:5246–56.
  • 27. So S-S, Karplus M. Evolutionary optimization in quantitative structure-activity relationship: an application of genetic neural networks. J Med Chem 1996;39:1521–30.
  • 28. Andrea TA, Kalayeh H. Applications of neural networks in quantitative structure-activity relationships of dihydrofolate reductase inhibitors. J Med Chem 1991;34:2824–36.
  • 29. Burden FR. Robust QSAR models using Bayesian regularized neural networks. J Med Chem 1999;42:3183–7.
  • 30. Gonzalez MP, Caballero J, Tundidor-Camba A, Helguera AM, Fernandez M. Modeling of farnesyltransferase inhibition by some thiol and non-thiol peptidomimetic inhibitors using genetic neural networks and RDF approaches. Bioorg Med Chem 2006;14:200–13.
Uwagi
Opracowanie ze środków MNiSW w ramach umowy 812/P-DUN/2016 na działalność upowszechniającą naukę.
Typ dokumentu
Bibliografia
Identyfikator YADDA
bwmeta1.element.baztech-27471b7f-ed1f-4b8e-84e4-ae2b4856a044
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