Segmentation of ultrasound images of thyroid nodule for assisting fine needle aspiration cytology
Jie Zhao, Wei Zheng, Li Zhang, Hua Tian

TL;DR
This paper proposes a novel ultrasound image segmentation method for thyroid nodules by combining anisotropic diffusion with normalized cut, improving accuracy and reducing computational load for aiding fine needle aspiration diagnosis.
Contribution
It introduces an integrated approach that enhances ultrasound images and improves segmentation accuracy by reducing noise and computational complexity.
Findings
Enhanced segmentation accuracy demonstrated in experiments
Reduced noise and preserved edges in ultrasound images
Lower computational requirements compared to traditional methods
Abstract
The incidence of thyroid nodule is very high and generally increases with the age. Thyroid nodule may presage the emergence of thyroid cancer. The thyroid nodule can be completely cured if detected early. Fine needle aspiration cytology is a recognized early diagnosis method of thyroid nodule. There are still some limitations in the fine needle aspiration cytology, and the ultrasound diagnosis of thyroid nodule has become the first choice for auxiliary examination of thyroid nodular disease. If we could combine medical imaging technology and fine needle aspiration cytology, the diagnostic rate of thyroid nodule would be improved significantly. The properties of ultrasound will degrade the image quality, which makes it difficult to recognize the edges for physicians. Image segmentation technique based on graph theory has become a research hotspot at present. Normalized cut (Ncut) is a…
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Taxonomy
TopicsAI in cancer detection
