Abstract
. Thyroid diseases represent a significant global health concern, necessitating accurate and timely diagnostic methods for
effective treatment. Traditional diagnostic approaches often rely on complex blood tests and imaging techniques that can be
challenging to interpret. This paper explores the application of machine learning (ML) and deep learning (DL) techniques,
particularly Vision Transformers (ViT), for thyroid disease detection. We conducted a comprehensive literature survey that
highlights various studies employing ML and DL models, revealing high accuracy rates but also significant limitations such as
small sample sizes and dataset imbalances. Our research methodology involved creating a custom dataset, preprocessing images,
and developing robust models using both ML algorithms and advanced DL architectures. Furthermore, we discuss the
implications of our findings for clinical practice and propose future research directions to enhance diagnostic capabilities. This
study underscores the potential of leveraging AI technologies to improve the accuracy of thyroid disease detection while
addressing existing challenges in traditional diagnostic methods, ultimately contributing to better patient outcomes in thyroid
health management.