WSEAS Transactions on Computers
Print ISSN: 1109-2750, E-ISSN: 2224-2872
Volume 22, 2023
Exploring the Potential of Machine Learning in Healthcare Accuracy Improvement
Authors: , ,
Abstract: Machine learning techniques have shown great potential in the medical industry, particularly in the field of neuroimaging and the identification of neurological illnesses such as Autism Spectrum Disorder (ASD). By utilizing machine learning algorithms, researchers aim to predict the type of disability and analyze the predicted variations using different types of predictive models. These predictive models can be trained on neuroimaging data to identify patterns and markers that are indicative of ASD. By analyzing these patterns, machine learning algorithms can help in accurately predicting the presence and type of ASD in individuals. This can be immensely valuable in early diagnosis and intervention, leading to better outcomes for individuals with ASD. Furthermore, the applications of machine learning in the healthcare industry extend beyond just prediction. Machine learning algorithms can also be used to analyze large amounts of medical data, identify trends, and assist in decision-making processes. This can help healthcare professionals in providing more accurate diagnoses, personalized treatment plans, and improved patient care. It is important to note that the success and accuracy of machine learning models in the healthcare industry depend on various factors, including the quality and quantity of data available, the choice of algorithms, and the expertise of the researchers. Ongoing research and advancements in machine learning techniques hold great promise for improving the accuracy and effectiveness of medical diagnoses and treatments.
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Keywords: Autism Diagnostic Observation Schedule (ADOS), Autism Spectrum Disorder (ASD), Autism Diagnostic Interview-Revised (ADI-R), Classification Algorithms, Machine Learning(ML), Support Vector Machine (SVM), Decision Tree (DT), K Nearest Neighbors (KNN), Naive Bayes (NB), Logistic Regression (LR), Random Forest Classifier (RFC)
Pages: 374-379
DOI: 10.37394/23205.2023.22.42