Thyroid Disease Prediction Using Machine Learning
DOI:
https://doi.org/10.62647/Keywords:
Thyroid, Machine Learning.Abstract
Thyroid disease is a common endocrine disorder affecting millions of people worldwide. The thyroid gland, a small butterfly-shaped organ located in the neck, plays a crucial role in regulating various metabolic processes in the body by secreting hormones such as thyroxine (T4) and triiodothyronine (T3). When the thyroid produces too much hormone (hyperthyroidism) or too little (hypothyroidism), it leads to metabolic imbalances that can significantly affect overall health. Early and accurate diagnosis of thyroid disorders is essential for effective treatment and management.
Traditional diagnostic methods rely heavily on clinical evaluations and lab-based test results such as TSH, T3, and T4 levels. However, interpreting these tests can sometimes be complex and prone to human error. Moreover, symptoms of thyroid disease often overlap with other conditions, making diagnosis challenging. In this context, Machine Learning (ML) offers a promising solution. By analyzing patterns in large datasets of patient information, ML algorithms can assist in the early detection and classification of thyroid conditions with high accuracy.
This project explores the development of a predictive model for thyroid disease using Machine Learning techniques. The model aims to classify whether a patient has a thyroid disorder based on clinical parameters, enabling faster diagnosis and treatment.
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Copyright (c) 2025 Ms. B Jyothsna, K Anupama Reddy, P Anya Reddy, I Ashwitha (Author)

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