Applying Artificial Intelligence to Support the Detection and Treatment of Melasma

Authors

  • Van Lam Ho Faculty of Information Technology, Quy Nhon University, Binh Dinh, Vietnam.
  • Vu Tuan Anh Quyhoa National Leprosy Dermatology Hospital, Binh Dinh, Vietnam
  • Tran Xuan Viet Quyhoa National Leprosy Dermatology Hospital, Binh Dinh, Vietnam

DOI:

https://doi.org/10.15379/ijmst.v11i1.3568

Keywords:

Cat Boost algorithm, Melasma disease, Machine learning algorithm, Prediction Melasma model, Objects detection

Abstract

This study, we propose a solution to apply artificial intelligence to assist in detecting whether a person may have melasma or not through data sets related to information about a person's daily activities, then If we detect a person with a high likelihood of having melasma, we will apply machine learning to diagnose the type of melasma through a photo taken of that person. Through a machine learning model of predicting and diagnosing a person's melasma, we also suggest relevant prevention and treatment options based on the disease's prevention and treatment regimen. Our method build predict Melasma model based on Catboost machine learning algorithm on users' data combined with medical practice data commu-nity by dermatologists to predict the disease and make some necessary recommendations in the patient screening. Based on our dataset, we have statistically described the data characteristics as well as the correlated data parameters that may cause Melasma. The method using for diagnosing melasma disease based on machine learning algorithms with input data being facial images. we built a machine learning model for diagnosing melasma to detect melasma objects to support dermatologists in predicting the risk of melasma in a person after entering his/her facial image. Our dataset of facial images combined with the expertise of melasma experts to classify different types of melasma. We used YOLO V8 with machine learning algorithms to detect melasma objects to build a diagnostic model for whether a patient has melasma and with which type of melasma such as central melasma, butterfly-shaped melasma, or mandibular melasma.

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Published

2024-03-14

How to Cite

[1]
V. L. . Ho, V. T. . Anh, and T. X. Viet, “Applying Artificial Intelligence to Support the Detection and Treatment of Melasma ”, ijmst, vol. 11, no. 1, pp. 192-206, Mar. 2024.