Ann Dermatol.  2021 Aug;33(4):345-350. 10.5021/ad.2021.33.4.345.

The Application of Machine Learning in Predicting Outcome of Cryotherapy and Immunotherapy for Wart Removal

Affiliations
  • 1Department of Telehealth, School of Nursing and Public Health, University of KwaZulu-Natal, Durban, South Africa

Abstract

Background
Warts can be extremely painful conditions that may be associated with localised bleeding and discharge. They are commonly treated by cryotherapy or immunotherapy. However, each of these therapies have discomforting side effects and are no official dermatological guideline that exist that may be used to determine which of these methods would work on an individual patient.
Objective
This study aimed at developing a machine learning algorithm that improved the prediction of the outcome of wart removing using cryotherapy and immunotherapy.
Methods
Support vector machines, core vector machines, random forest, k-nearest neighbours, multilayer perceptron and binary logistic regression was applied on datasets in to create a model that predicted the outcome of an immunotherapy and cryotherapy treatments based on sex, age, time that has passed since last treatment, number of warts, type, area, diameter and result of treatment.
Results
The average accuracy of the immunotherapy prediction was 88.6%±8.0% while the same measure for cryotherapy prediction was 94.6%±4.0%. The most efficient immunotherapy and cryotherapy model had an accuracy of 100%, predicating the correct treatment outcome when applied to all test cases.
Conclusion
This study suc-cessfully created a machine learning model that improved the prediction ability of the outcome of immunotherapy and cryotherapy for wart removal. This model created a more in-depth guideline for understanding is immunotherapy would work and took a new approach to cryotherapy.

Keyword

Artificial intelligence; Cryotherapy; Immunotherapy; Medical informatics; Warts
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