An Explainable Artificial Intelligence Framework for the Predictive Analysis of Hypo and Hyper Thyroidism Using Machine Learning Algorithms

被引:2
|
作者
Md. Bipul Hossain
Anika Shama
Apurba Adhikary
Avi Deb Raha
K. M. Aslam Uddin
Mohammad Amzad Hossain
Imtia Islam
Saydul Akbar Murad
Md. Shirajum Munir
Anupam Kumar Bairagi
机构
[1] Noakhali Science and Technology University,Department of Information and Communication Engineering
[2] Khulna University,Computer Science and Engineering Discipline
[3] Mandy Dental College and Hospital,School of Computer Science and Computer Engineering
[4] The University of Southern Mississippi,Department of Electrical and Computer Engineering
[5] Old Dominion University,Department of System Engineering
[6] University of South Alabama,undefined
来源
Human-Centric Intelligent Systems | 2023年 / 3卷 / 3期
关键词
Machine learning; Classification algorithm; Thyroid disease; Hypothyroidism; Hyperthyroidism; Explainable artificial intelligence (XAI);
D O I
10.1007/s44230-023-00027-1
中图分类号
学科分类号
摘要
The thyroid gland is the crucial organ in the human body, secreting two hormones that help to regulate the human body’s metabolism. Thyroid disease is a severe medical complaint that could be developed by high Thyroid Stimulating Hormone (TSH) levels or an infection in the thyroid tissues. Hypothyroidism and hyperthyroidism are two critical conditions caused by insufficient thyroid hormone production and excessive thyroid hormone production, respectively. Machine learning models can be used to precisely process the data generated from different medical sectors and to build a model to predict several diseases. In this paper, we use different machine-learning algorithms to predict hypothyroidism and hyperthyroidism. Moreover, we identified the most significant features, which can be used to detect thyroid diseases more precisely. After completing the pre-processing and feature selection steps, we applied our modified and original data to several classification models to predict thyroidism. We found Random Forest (RF) is giving the maximum evaluation score in all sectors in our dataset, and Naive Bayes is performing very poorly. Moreover selecting the feature by using the feature importance method RF provides the best accuracy of 91.42%, precision of 92%, recall of 92% and F1-score of 92%. Further, by analyzing the characteristics and behavior of the dataset, we identified the most important features (TSH, T3, TT4, and FTI) of the dataset. In terms of accuracy and other performance evaluation criteria, this study could advocate the use of effective classifiers and features backed by machine learning algorithms to detect and diagnose thyroid disease. Finally, we did some explainability analysis of our best classifier to understand the internal black-box of our machine learning model and datasets. This study could further pave the way for the researcher as well as healthcare professionals to analyze thyroid disease in real time applications.
引用
收藏
页码:211 / 231
页数:20
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