Araştırma Makalesi

Analysis of Cryotherapy Treatment of Verruca by Machine Learning

Cilt: 3 Sayı: 2 31 Aralık 2019
PDF İndir
TR EN

Analysis of Cryotherapy Treatment of Verruca by Machine Learning

Öz

There are several patient- and verruca-specific factors that determine treatment response to cryotherapy. A comprehensive analysis of these factors necessitates the use of a systematic and rational approach. The present study uses machine learning algorithms to analyze the clinical patient- and verruca-specific factors that affect the success of cryotherapy treatment. Machine learning algorithms were applied to the cryotherapy dataset. The best results in the prediction of treatment response to cryotherapy were achieved through the C&R Tree classification method, with a 96% accuracy rate, followed by the C5.0 Tree, CHAID Tree and the adjusted J48 Decision Tree algorithms, respectively. The C&R Tree classification method revealed that the most significant factors that affected treatment response in verrucae, in the order of importance, were the time to the first session, the patient’s age, the type of verruca, the number of verrucae and the region of the verruca. We believe that by identifying factors that affect treatment success and investigating the relations between variables, machine learning approaches can guide clinical treatment decisions for the more effective management of verruca treatment, which represent an important social and economic burden in public health.

Anahtar Kelimeler

Kaynakça

  1. [1] S. C. Bruggink, M. N. de Koning, J. Gussekloo, P. F. Egberts, J. ter Schegget, M. C. Feltkamp, J. N. Bavinck, W. G. Quint, W. J. Assendelft, J. A. Eekhof, “Cutaneous wart-associated HPV types: prevalence and relation with patient characteristics”, Journal of Clinical Virology, vol. 55, pp. 250-255, 2012.
  2. [2] M. D. Lynch, J. Cliffe, R. Morris-Jones, “Management of cutaneous viral warts”, Bmj, 348, g3339, 2014.
  3. [3] F. M. Van Haalen, S. C. Bruggink, J. Gussekloo, W. J. J. Assendelft and J. A. H. Eekhof, “Warts in primary schoolchildren: prevalence and relation with environmental factors”, The British Journal of Dermatology, 161, pp. 148-152, 2009.
  4. [4] R. J. Hay, N. E. Johns, H. C. Williams, I. W. Boliger, R. P. Dellavale, D. J. Margolis, R. Marks, L. Naldi, M. A. Weinstock, S. K. Wulf, C. Michaud et al., “The global burden of skin disease in 2010: an analysis of the prevalence and impact of skin conditions”, Journal of Investigative Dermatology, 134, pp. 1527-1534, 2014.
  5. [5] J. C. Sterling, S. Gibbs, S. S. Haque Hussain, M. F. Mohd Mustapa, S. E. Handfield-Jones, “British Association of Dermatologists' guidelines for the management of cutaneous warts” The British Journal of Dermatology, 171, pp. 696-712, 2014.
  6. [6] G. K. Hogendoorn, S. C. Bruggink, M. N. C. de Koning, J. A. H. Eekhof, K. E. Hermans,R. Rissmann, J. Burggraaf, R. Wolterbeek, K. D. Quint, S. T. P. Kouwenhoven et al., “Morphological characteristics and human papillomavirus genotype predict the treatment response in cutaneous warts”, The British Journal of Dermatology, 178, pp. 253-260, 2017.
  7. [7] G. Doğan, S. Şaşmaz, “Identification of the factors affecting the cryotherapy on warts (article in Turkish with an abstract in English)”. Journal Of Turgut Ozal Medical Center, 13, pp. 163-166, 2006.
  8. [8] P. L. Bencini, S. Guida, S. Cazzaniga, G. Pellacani, M. G. Galimberti, M. Bencini and L. Naldi, “Risk factors for recurrence after successful treatment of warts: the role of smoking habits”, The Journal of the European Academy of Dermatology and Venereology, 31, pp. 712-716, 2017.

Ayrıntılar

Birincil Dil

İngilizce

Konular

-

Bölüm

Araştırma Makalesi

Yayımlanma Tarihi

31 Aralık 2019

Gönderilme Tarihi

11 Kasım 2019

Kabul Tarihi

27 Aralık 2019

Yayımlandığı Sayı

Yıl 2019 Cilt: 3 Sayı: 2

Kaynak Göster

APA
Cihan, Ş., Karabulut, B., Kokoç, M., Arslan, G., & Gürel, G. (2019). Analysis of Cryotherapy Treatment of Verruca by Machine Learning. International Scientific and Vocational Studies Journal, 3(2), 56-66. https://izlik.org/JA48YS89EC
AMA
1.Cihan Ş, Karabulut B, Kokoç M, Arslan G, Gürel G. Analysis of Cryotherapy Treatment of Verruca by Machine Learning. ISVOS. 2019;3(2):56-66. https://izlik.org/JA48YS89EC
Chicago
Cihan, Şeyma, Bergen Karabulut, Melda Kokoç, Güvenç Arslan, ve Gülhan Gürel. 2019. “Analysis of Cryotherapy Treatment of Verruca by Machine Learning”. International Scientific and Vocational Studies Journal 3 (2): 56-66. https://izlik.org/JA48YS89EC.
EndNote
Cihan Ş, Karabulut B, Kokoç M, Arslan G, Gürel G (01 Aralık 2019) Analysis of Cryotherapy Treatment of Verruca by Machine Learning. International Scientific and Vocational Studies Journal 3 2 56–66.
IEEE
[1]Ş. Cihan, B. Karabulut, M. Kokoç, G. Arslan, ve G. Gürel, “Analysis of Cryotherapy Treatment of Verruca by Machine Learning”, ISVOS, c. 3, sy 2, ss. 56–66, Ara. 2019, [çevrimiçi]. Erişim adresi: https://izlik.org/JA48YS89EC
ISNAD
Cihan, Şeyma - Karabulut, Bergen - Kokoç, Melda - Arslan, Güvenç - Gürel, Gülhan. “Analysis of Cryotherapy Treatment of Verruca by Machine Learning”. International Scientific and Vocational Studies Journal 3/2 (01 Aralık 2019): 56-66. https://izlik.org/JA48YS89EC.
JAMA
1.Cihan Ş, Karabulut B, Kokoç M, Arslan G, Gürel G. Analysis of Cryotherapy Treatment of Verruca by Machine Learning. ISVOS. 2019;3:56–66.
MLA
Cihan, Şeyma, vd. “Analysis of Cryotherapy Treatment of Verruca by Machine Learning”. International Scientific and Vocational Studies Journal, c. 3, sy 2, Aralık 2019, ss. 56-66, https://izlik.org/JA48YS89EC.
Vancouver
1.Şeyma Cihan, Bergen Karabulut, Melda Kokoç, Güvenç Arslan, Gülhan Gürel. Analysis of Cryotherapy Treatment of Verruca by Machine Learning. ISVOS [Internet]. 01 Aralık 2019;3(2):56-6. Erişim adresi: https://izlik.org/JA48YS89EC


Creative Commons License
Creative Commons Atıf 4.0 It is licensed under an International License