Wart Treatment Selection with a Decision Tree-Based Approach

作者: Huseyin Yanik , Mustafa Comert

DOI: 10.1109/IDAP.2019.8875915

关键词: Common wartsReceiver operating characteristicDermatologySelection (genetic algorithm)Predictive valueWart treatmentCryotherapyPlantar wartsDecision treeMedicine

摘要: Warts are benign tumors caused by human papillomaviruses (HPVs). Although warts can grow in all parts of the body, plantar which most commonly known as warts, on soles hands and feet. Various types treatment methods be used to cure disease. Two common for wart is cryotherapy immunotherapy. Other than that, successful method could selected related patient attributes. Selection best an important topic researched many studies recent years. In this study, decision tree based algorithm was developed help physicians choose optimum treatment. Analyzing response patients underlying procedure algorithm. For purpose, a dataset that included 180 patients, with who had referred dermatology clinic Ghaem Hospital, Mashhad, Iran used. The proposed study gave good accuracy result both while predictive values ROC Curves were very high select Therefore, time cost will saved patients.

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