From Data to Insights: A Comprehensive Survey on Advanced Applications in Thyroid Cancer Research
Xinyu Zhang, Vincent CS Lee, Feng Liu

TL;DR
This comprehensive survey reviews 758 studies on AI applications in thyroid cancer, providing a taxonomy, analyzing trends, challenges, and future research directions to advance understanding and management of the disease.
Contribution
First in-depth review offering a structured taxonomy of machine learning applications in thyroid cancer research, covering diagnosis, prognosis, and pathogenesis.
Findings
Identified key AI techniques used in thyroid cancer research
Highlighted challenges and gaps in current applications
Proposed future research directions and opportunities
Abstract
Thyroid cancer, the most prevalent endocrine cancer, has gained significant global attention due to its impact on public health. Extensive research efforts have been dedicated to leveraging artificial intelligence (AI) methods for the early detection of this disease, aiming to reduce its morbidity rates. However, a comprehensive understanding of the structured organization of research applications in this particular field remains elusive. To address this knowledge gap, we conducted a systematic review and developed a comprehensive taxonomy of machine learning-based applications in thyroid cancer pathogenesis, diagnosis, and prognosis. Our primary objective was to facilitate the research community's ability to stay abreast of technological advancements and potentially lead the emerging trends in this field. This survey presents a coherent literature review framework for interpreting the…
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Taxonomy
TopicsThyroid Cancer Diagnosis and Treatment
