JOURNAL ARTICLE

Classification and Diagnosis of Residual Thyroid Tissue in SPECT Images Based on Fine-Tuning Deep Convolutional Neural Network

Abstract

Patients with thyroid cancer will take a small dose of 131 I after undergoing a total thyroidectomy. Single-photon emission computed tomography (SPECT) is used to diagnose whether thyroid tissue remains in the body. However, it is difficult for human eyes to observe the specificity of SPECT images in different categories, and it is difficult for doctors to accurately diagnose the residual thyroid tissue in patients based on SPECT images. At present, the research on the classification of thyroid tissue residues after thyroidectomy is still in a blank state. This paper proposes a ResNet-18 fine-tuning method based on the convolutional neural network model. First, preprocess the SPECT images to improve the image quality and remove background interference. Secondly, use the preprocessed image samples to fine-tune the pretrained ResNet-18 model to obtain better features and finally use the Softmax classifier to diagnose the residual thyroid tissue. The method has been tested on SPECT images of 446 patients collected by local hospital and compared with the widely used lightweight network SqueezeNet model and ShuffleNetV2 model. Due to the small data set, this paper conducted 10 random grouping experiments. Each experiment divided the data set into training set and test set at a ratio of 3:1. The accuracy and sensitivity rates of the model proposed in this paper are 96.69% and 94.75%, which are significantly higher than other models (p < 0.05). The specificity and precision rates are 99.6% and 99.96%, respectively, and there is no significant difference compared with other models. (p > 0.05). The area under the curve of the proposed model, SqueezeNet, and ShuffleNetv2 are 0.988 (95% CI, 0.941–1.000), 0.898 (95% CI, 0.819–0.951) (p = 0.0257), and 0.885 (95% CI, 0.803–0.941) (p = 0.0057) (p < 0.05). We prove that this thyroid tissue residue classification system can be used as a computer-aided diagnosis method to effectively improve the diagnostic accuracy of thyroid tissue residues. While more accurately diagnosing patients with residual thyroid tissue in the body, we try our best to avoid the occurrence of overtreatment, which reflects its potential clinical application value.

Keywords:
Convolutional neural network Softmax function Artificial intelligence Residual Pattern recognition (psychology) Computer science Nuclear medicine Thyroid Single-photon emission computed tomography Thyroid cancer Data set Radiology Medicine Algorithm Internal medicine

Metrics

10
Cited By
1.34
FWCI (Field Weighted Citation Impact)
33
Refs
0.78
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Citation History

Topics

Thyroid Cancer Diagnosis and Treatment
Health Sciences →  Medicine →  Endocrinology, Diabetes and Metabolism
Radiomics and Machine Learning in Medical Imaging
Health Sciences →  Medicine →  Radiology, Nuclear Medicine and Imaging
Dental Radiography and Imaging
Health Sciences →  Dentistry →  Oral Surgery

Related Documents

JOURNAL ARTICLE

Thyroid nodules classification and diagnosis in ultrasound images using fine‐tuning deep convolutional neural network

Olfa Ben MoussaHajer KhachnaouiRamzi GuetariNawrès Khlifa

Journal:   International Journal of Imaging Systems and Technology Year: 2019 Vol: 30 (1)Pages: 185-195
JOURNAL ARTICLE

Diagnosis of Thyroid Diseases Using SPECT Images Based on Convolutional Neural Network

Liyong MaChengkuan MaYuejun LiuXugang WangWei Xie

Journal:   Journal of Medical Imaging and Health Informatics Year: 2018 Vol: 8 (8)Pages: 1684-1689
JOURNAL ARTICLE

Thyroid Diagnosis from SPECT Images Using Convolutional Neural Network with Optimization

Liyong MaChengkuan MaYuejun LiuXuguang Wang

Journal:   Computational Intelligence and Neuroscience Year: 2019 Vol: 2019 Pages: 1-11
JOURNAL ARTICLE

Classification of Deep Convolutional Neural Network in Thyroid Ultrasound Images

Ran HuiJiaxing ChenYu LiuLin ShiChao FuOstfeld Ishsay

Journal:   Journal of Medical Imaging and Health Informatics Year: 2020 Vol: 10 (8)Pages: 1943-1948
© 2026 ScienceGate Book Chapters — All rights reserved.