Abstract

The factors that determine Serum Thyrotropin (TSH) levels have been examined through different methods, using different covariates. However, the use of machine learning methods has so far not been studied in population databases like NHANES (National Health and Nutritional Examination Survey) to predict TSH. In this study, we performed a comparative analysis of different machine learning methods like Linear regression, Random forest, Support vector machine, multilayer perceptron and stacking regression to predict TSH and classify individuals with normal, low and high TSH levels. We considered Free T4, Anti-TPO antibodies, T3, Body Mass Index (BMI), Age and Ethnicity as the predictor variables. A total of 9818 subjects were included in this comparative analysis. We used coefficient of determination (r2) value to compare the results for predicting the TSH and show that the Random Forest, Gradient Boosting and Stacking Regression perform equally well in predicting TSH and achieve the highest r2 value = 0.13, with mean absolute error of 0.78. Moreover, we found that Anti-TPO is the most important feature in predicting TSH followed by Age, BMI, T3 and Free-T4 for the regression analysis. While classifying TSH into normal, high or low levels, our comparative analysis also shows that Random forest performs the best in the classification study, performed with individuals with normal, high and low levels of TSH. We found the following Areas Under Curve (AUC); for low TSH, AUC = 0.61, normal TSH, AUC = 0.61 and elevated TSH AUC = 0.69. Additionally, we found that Anti-TPO was the most important feature in classifying TSH. In this study, we suggest that artificial intelligence and machine learning methods might offer an insight into the complex hypothalamic-pituitary -thyroid axis and may be an invaluable tool that guides us in making appropriate therapeutic decisions (thyroid hormone dosing) for the individual patient.

Highlights

  • TSH (Thyroid Stimulating Hormone, called Thyrotropin) is secreted by the pituitary gland to stimulate the production of thyroid hormone by the thyroid

  • TSH is the main target of thyroid hormone replacement in primary hypothyroidism [2]

  • Each individual appears to have a predetermined optimal personal TSH level(may be genetically individualized) that is often unknowable, once primary hypothyroidism has developed as a clinical condition, and variations in assays, concurrent illness etc make it hard to achieve the right TSH level for the individual patient [3]

Read more

Summary

Introduction

TSH (Thyroid Stimulating Hormone, called Thyrotropin) is secreted by the pituitary gland to stimulate the production of thyroid hormone by the thyroid. Primary hypothyroidism (approximately 99% of the cases) is characterized by an elevated TSH level while secondary hypothyroidism is due to lack of stimulation of a normal thyroid gland, as result of TSH deficiency from hypothalamic or pituitary disease[1]. The goal of hypothyroidism treatment is, to relieve the symptoms of hypothyroidism and achieve normalization of TSH levels and thyroid hormones[2]. Normal TSH based on epidemiological data, ranges widely between 0.4 and 4.0 and within this range, there is substantial variation in the population with respect to the TSH levels[2]. Clinicians often find it challenging to alleviate the symptoms of hypothyroidism and target the TSH at the appropriate level simultaneously. Each individual appears to have a predetermined optimal personal TSH level(may be genetically individualized) that is often unknowable, once primary hypothyroidism has developed as a clinical condition, and variations in assays, concurrent illness etc make it hard to achieve the right TSH level for the individual patient [3]

Objectives
Methods
Results
Discussion
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call