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Review
. 2024 May 18;15(1):172.
doi: 10.1007/s12672-024-01017-w.

Artificial intelligence assisted diagnosis of early tc markers and its application

Affiliations
Review

Artificial intelligence assisted diagnosis of early tc markers and its application

Laney Zhang et al. Discov Oncol. .

Abstract

Thyroid cancer (TC) is a common endocrine malignancy with an increasing incidence worldwide. Early diagnosis is particularly important for TC patients, because it allows patients to receive treatment as early as possible. Artificial intelligence (AI) provides great advantages for complex healthcare systems by analyzing big data based on machine learning. Nowadays, AI is widely used in the early diagnosis of cancer such as TC. Ultrasound detection and fine needle aspiration biopsy are the main methods for early diagnosis of TC. AI has been widely used in the detection of malignancy in thyroid nodules by ultrasound images, cytopathology images and molecular markers. It shows great potential in auxiliary medical diagnosis. The latest clinical trial has shown that the performance of AI models matches with the diagnostic efficiency of experienced clinicians, and more efficient AI tools will be developed in the future. Therefore, in this review, we summarized the recent advances in the application of AI algorithms in assessing the risk of malignancy in thyroid nodules. The objective of this review was to provide a data base for the clinical use of AI-assisted diagnosis in TC, as well as to provide new ideas for the next generation of AI-assisted diagnosis in TC.

Keywords: Artificial intelligence; Auxiliary diagnosis; Thyroid cancer.

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Conflict of interest statement

The authors declare that they have no competing interests.

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