| Literature DB >> 32764673 |
Heng Ye1, Jing Hang2, Xiaowei Chen1, Jie Chen2, Xinhua Ye3, Dong Zhang4,5.
Abstract
This paper proposed a non-segmentation radiological method for classification of benign and malignant thyroid tumors using B mode ultrasound data. This method aimed to combine the advantages of morphological information provided by ultrasound and convolutional neural networks in automatic feature extraction and accurate classification. Compared with the traditional feature extraction method, this method directly extracted features from the data set without the need for segmentation and manual operations. 861 benign nodule images and 740 malignant nodule images were collected for training data. A deep convolution neural network VGG-16 was constructed to analyze test data including 100 malignant nodule images and 109 benign nodule images. A nine fold cross validation was performed for training and testing of the classifier. The results showed that the method had an accuracy of 86.12%, a sensitivity of 87%, and a specificity of 85.32%. This computer-aided method demonstrated comparable diagnostic performance with the result reported by an experienced radiologist based on American college of radiology thyroid imaging reporting and data system (ACR TI-RADS) (accuracy: 87.56%, sensitivity: 92%, and specificity: 83.49%). The automation advantage of this method suggested application potential in computer-aided diagnosis of thyroid cancer.Entities:
Mesh:
Year: 2020 PMID: 32764673 PMCID: PMC7410841 DOI: 10.1038/s41598-020-70159-y
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Detailed information of collected cases.
| Results | Diagnostic method | Detailed results | Number |
|---|---|---|---|
| Benign | FNA | Bethesda II | 132 |
| US findings | Cystic, spongy | 713 | |
| Surgery | Nodular goiter | 13 | |
| Adenoma | 106 | ||
| Hashimoto’s thyroiditis | 3 | ||
| Focal thyroiditis | 3 | ||
| Malignant | FNA | Bethesda VI | 293 |
| CNB | Squamous cell carcinoma | 1 | |
| Anaplastic thyroid carcinoma | 1 | ||
| Primary thyroid lymphoma | 4 | ||
| Surgery | Papillary carcinoma | 525 | |
| Medullar carcinoma | 4 | ||
| Follicular adenocarcinoma | 12 |
FNA fine needle aspiration, CNB core-needle biopsy.
The basic information of collected cases.
| Nodules | Training set | Test set |
|---|---|---|
| Benign | 861 images Female 494, 47.2 ± 13.4 years old Male 126, 50.8 ± 15.8 years old | 109 images Female 61, 46.7 ± 12.2 years old Male 15, 49.5 ± 14.6 years old |
| Malignant | 740 images Female 441, 42.7 ± 11.2 years old Male 182, 41.7 ± 11.9 years old | 100 images Female 59, 41.8 ± 12.2 years old Male 31, 43.7 ± 10.4 years old |
Mean data are mean ± standard deviation.
Figure 1Inclusion criteria for the initial cohorts and experiment procedure for the final study cohorts.
The result of training set.
| Round | Accuracy (%) | Sensitivity (%) | Specificity (%) | AUC |
|---|---|---|---|---|
| 1 | 90.34 | 89.77 | 90.91 | 0.9412 |
| 2 | 82.74 | 78.21 | 86.67 | 0.8615 |
| 3 | 84.15 | 81.08 | 86.67 | 0.877 |
| 4 | 89.44 | 85 | 93 | 0.9159 |
| 5 | 85.56 | 94.05 | 78.12 | 0.9149 |
| 6 | 87.63 | 90.20 | 84.78 | 0.9297 |
| 7 | 84.92 | 82.24 | 88.04 | 0.9051 |
| 8 | 88.54 | 90.29 | 86.52 | 0.9561 |
| 9 | 83.11 | 83.33 | 83.06 | 0.8474 |
Figure 2AUC of the proposed algorithm on the test dataset.
Figure 3The B mode ultrasonography and FNAs of thyroid nodules: (a) B mode ultrasound image of benign thyroid nodule; (b) B mode ultrasound image of malignant thyroid nodule; (c) micrograph of a FNA smear of benign thyroid nodule with magnification power 200; and (d) micrograph of a FNA smear of malignant thyroid nodule with magnification power 400.
Figure 4Network Structure of the intelligent platform.