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机器学习在甲状腺滤泡性肿瘤鉴别超声图像中的应用。

Application of machine learning to ultrasound images to differentiate follicular neoplasms of the thyroid gland.

作者信息

Shin Ilah, Kim Young Jae, Han Kyunghwa, Lee Eunjung, Kim Hye Jung, Shin Jung Hee, Moon Hee Jung, Youk Ji Hyun, Kim Kwang Gi, Kwak Jin Young

机构信息

Department of Radiology, Severance Hospital, Research Institute of Radiological Science, Yonsei University College of Medicine, Seoul, Korea.

Department of Biomedical Engineering, Gachon University College of Medicine, Incheon, Korea.

出版信息

Ultrasonography. 2020 Jul;39(3):257-265. doi: 10.14366/usg.19069. Epub 2020 Feb 29.

Abstract

PURPOSE

This study was conducted to evaluate the diagnostic performance of machine learning in differentiating follicular adenoma from carcinoma using preoperative ultrasonography (US).

METHODS

In this retrospective study, preoperative US images of 348 nodules from 340 patients were collected from two tertiary referral hospitals. Two experienced radiologists independently reviewed each image and categorized the nodules according to the 2015 American Thyroid Association guideline. Categorization of a nodule as highly suspicious was considered a positive diagnosis for malignancy. The nodules were manually segmented, and 96 radiomic features were extracted from each region of interest. Ten significant features were selected and used as final input variables in our in-house developed classifier models based on an artificial neural network (ANN) and support vector machine (SVM). The diagnostic performance of radiologists and both classifier models was calculated and compared.

RESULTS

In total, 252 nodules from 245 patients were confirmed as follicular adenoma and 96 nodules from 95 patients were diagnosed as follicular carcinoma. As measures of diagnostic performance, the average sensitivity, specificity, and accuracy of the two experienced radiologists in discriminating follicular adenoma from carcinoma on preoperative US images were 24.0%, 84.0%, and 64.8%, respectively. The sensitivity, specificity, and accuracy of the ANN and SVM-based models were 32.3%, 90.1%, and 74.1% and 41.7%, 79.4%, and 69.0%, respectively. The kappa value of the two radiologists was 0.076, corresponding to slight agreement.

CONCLUSION

Machine learning-based classifier models may aid in discriminating follicular adenoma from carcinoma using preoperative US.

摘要

目的

本研究旨在评估机器学习利用术前超声(US)鉴别滤泡性腺瘤与癌的诊断性能。

方法

在这项回顾性研究中,从两家三级转诊医院收集了340例患者的348个结节的术前US图像。两名经验丰富的放射科医生独立审查每张图像,并根据2015年美国甲状腺协会指南对结节进行分类。将结节分类为高度可疑被视为恶性肿瘤的阳性诊断。对结节进行手动分割,并从每个感兴趣区域提取96个放射组学特征。基于人工神经网络(ANN)和支持向量机(SVM),选择了10个显著特征并将其用作我们内部开发的分类器模型的最终输入变量。计算并比较放射科医生和两种分类器模型的诊断性能。

结果

总共245例患者的252个结节被确认为滤泡性腺瘤,95例患者的96个结节被诊断为滤泡性癌。作为诊断性能的指标,两名经验丰富的放射科医生在术前US图像上鉴别滤泡性腺瘤与癌的平均敏感性、特异性和准确性分别为24.0%、84.0%和64.8%。基于ANN和SVM的模型的敏感性、特异性和准确性分别为32.3%、90.1%和74.1%以及41.7%、79.4%和69.0%。两名放射科医生的kappa值为0.076,对应轻微一致性。

结论

基于机器学习的分类器模型可能有助于利用术前US鉴别滤泡性腺瘤与癌。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8232/7315296/fe8de23c5986/usg-19069f1.jpg

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