Independent Researcher.
World Journal of Advanced Research and Reviews, 2026, 29(01), 1719-1725
Article DOI: 10.30574/wjarr.2026.29.1.0235
Received on 21 December 2025; revised on 26 January 2026; accepted on 29 January 2026
Background: Goitre remains a high-signal global health indicator of thyroid dysfunction and population-level iodine status. Despite progress in salt iodization, early-stage thyroid enlargement is frequently under-detected in routine practice, especially when physical examination is confounded by body habitus and clinician subjectivity. Ultrasound is the preferred modality for early assessment, but interpretation is operator-dependent and increasingly burdened by rising thyroid nodule prevalence.
Objective: This review synthesizes evidence on Machine Learning (ML) and Artificial Intelligence (AI) methods for predicting thyroid dysfunction and diagnosing early goitre (WHO Grade 1), with a practical emphasis on multi-modal “holistic AI” systems that combine tabular laboratory markers with imaging features.
Methods: We summarize (i) supervised learning pipelines for structured clinical data (e.g., age, sex, TSH, T3, T4, T4U/FTI), (ii) deep learning architectures for ultrasound-based detection and segmentation (CNNs, U-Net variants, Vision Transformers), and (iii) deployment considerations including explainability, bias control, and reproducible benchmarking using open datasets. Following common clinical ML reporting practice, we emphasize confusion-matrixbased evaluation (precision/recall/F1/MCC) and strong ensemble baselines for tabular prediction. [30,31]
Results: For tabular prediction tasks, stacked ensembles and gradient-boosted trees repeatedly rank among the best-performing approaches, particularly when combined with careful feature engineering and imbalance mitigation. For imaging, segmentation-first pipelines that estimate thyroid volume (e.g., U-Net family) and classification models leveraging multi-channel inputs or self-attention mechanisms (e.g., ViTs) report high diagnostic performance in differentiating benign enlargement from suspicious nodular patterns. Emerging smartphone-assisted workflows and LLM-based clinical summarization show promise for low-resource settings but require rigorous validation.
Conclusion: AI can shift goitre management from late-stage detection to proactive screening by improving sensitivity for occult Grade 1 enlargement, standardizing ultrasound interpretation, and reducing unnecessary invasive procedures. Clinical adoption, however, depends on transparent explainability, external validation across diverse cohorts, and governance aligned with high-risk medical AI standards.
Goitre; Thyroid; Artificial Intelligence; Machine Learning; Ultrasound; Vision Transformer; U-Net; Explainable AI; Global Health
Get Your e Certificate of Publication using below link
Preview Article PDF
Kingdom Mutala Akugri, Prince Agbenyo, Marious Akugri and Lovelyn Keteku. Systematic Integration of Artificial Intelligence and Machine Learning in the Early Detection and Management of Goitre: A Global Epidemiological and Computational Framework. World Journal of Advanced Research and Reviews, 2026, 29(01), 1719-1725. Article DOI: https://doi.org/10.30574/wjarr.2026.29.1.0235.
Copyright © 2025 Author(s) retain the copyright of this article. This article is published under the terms of the Creative Commons Attribution Liscense 4.0