Recent efforts have sought to analyze major issues related to the diagnosis, treatment, and prognosis of Kawasaki disease patients using machine learning. Presentations have highlighted the application of image analysis related to clinical findings that correspond to the diagnostic criteria for Kawasaki disease, as well as the evaluation of coronary artery ultrasound images. Additionally, studies have aimed to utilize machine learning models based on numerical data to predict the diagnosis of Kawasaki disease, the occurrence of coronary artery lesions, and resistance to immunoglobulin treatment. Furthermore, it is anticipated that future research will increasingly employ machine learning for the categorization and classification of data types in studies that extensively incorporate genetic and immunological biomarkers.