Objective
Thyroid carcinoma is one of the most common diseases with an increasing incidence
worldwide in recent years. In clinical diagnosis, medical practitioners normally take
a preliminary thyroid nodule grading so that highly suspected thyroid nodules can
be taken into the fine-needle aspiration (FNA) biopsy to evaluate the malignancy.
However, subjective misinterpretations might lead to ambiguous risk stratification
of thyroid nodules and unnecessary FNA biopsy.
Methods
We propose a thyroid carcinoma auxiliary diagnosis method for fine-needle aspiration
biopsy evaluation. Through integration of several deep learning models into a multibranch
network for thyroid nodule risk stratification in the Thyroid Imaging Reporting and
Data System (TIRADS) with pathological features and cascading of a discriminator,
our proposed method provides an intelligent auxiliary diagnosis to assist medical
practitioners in determining the necessity for further FNA.
Discussion
Experimental results revealed that not only was the rate at which nodules are falsely
diagnosed as malignant nodules effectively reduced, which avoids the unnecessary high
cost and pain of aspiration biopsy, but also previously missing detected cases were
identified with high possibility. By comparing the physicians’ diagnosis alone with
machine-assisted diagnosis, physicians' diagnostic performance improved with the aid
of our proposed method, illustrating that our model can be very helpful in clinical
practice.
Conclusion
Our proposed method might help medical practitioners avoid subjective interpretations
and inter-observer variability. For patients, reliable diagnosis is provided and unnecessary
painful diagnostics can be avoided. In other superficial organs such as metastatic
lymph nodes and salivary gland tumors, the proposed method might also provide a reliable
auxiliary diagnosis for risk stratification.
Keywords
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Article info
Publication history
Published online: February 14, 2023
Accepted:
January 1,
2023
Received in revised form:
December 22,
2022
Received:
May 8,
2022
Identification
Copyright
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