Use of Artificial Intelligence in Medical Classification for Hemiplegic Patients
Abstract
This study explores a machine learning-based neural network
system using MATLAB to classify hemiplegia, a condition
causing paralysis on one side of the body. Using data from the
specialized treatment center “El laboratorio de marcha en el
Hospital Ortopédico Infantil” in Caracas, Venezuela, the study
developed an algorithm to categorize patients into four
established hemiplegia types. Techniques such as Principal
Component Analysis (PCA) and Self-Organizing Maps
(SOMs) were used for dimensionality reduction and data
clustering, while a Convolutional Neural Network (CNN)
refined the classification. The algorithm identified distinct
subgroups within the categories, indicating a more complex
data structure. Despite promising results in aiding clinical
diagnosis, time constraints limited the exploration of these
subcategories. This research demonstrates the potential of AI
to enhance medical diagnostics, especially in resource-limited
settings.