Literature DB >> 32781915

A Comparative Analysis of Two Machine Learning-Based Diagnostic Patterns with Thyroid Imaging Reporting and Data System for Thyroid Nodules: Diagnostic Performance and Unnecessary Biopsy Rate.

Chong-Ke Zhao1, Tian-Tian Ren2, Yi-Fei Yin1,3,4, Hui Shi1,3,4, Han-Xiang Wang1,3,4, Bo-Yang Zhou1,3,4, Xin-Rong Wang5, Xin Li5, Yi-Feng Zhang1,3,4, Chang Liu1,3,4, Hui-Xiong Xu1,3,4.   

Abstract

Background: The risk stratification system of the American College of Radiology Thyroid Imaging Reporting and Data System (ACR TI-RADS) for thyroid nodules is affected by low diagnostic specificity. Machine learning (ML) methods can optimize the diagnostic performance in medical image analysis. However, it is unknown which ML-based diagnostic pattern is more effective in improving diagnostic performance for thyroid nodules and reducing nodule biopsies. Therefore, we compared ML-assisted visual approaches and radiomics approaches with ACR TI-RADS in diagnostic performance and unnecessary fine-needle aspiration biopsy (FNAB) rate for thyroid nodules.
Methods: This retrospective study evaluated a data set of ultrasound (US) and shear wave elastography (SWE) images in patients with biopsy-proven thyroid nodules (≥1 cm) from the Shanghai Tenth People's Hospital (743 nodules in 720 patients from September 2017 to January 2019) and an independent test data set from the Ma'anshan People's Hospital (106 nodules in 102 patients from February 2019 to April 2019). Six US features and five SWE parameters from the radiologists' interpretation were used for building the ML-assisted visual approaches. The radiomics features extracted from the US and SWE images were used with ML methods for developing the radiomics approaches. The diagnostic performance for differentiating thyroid nodules and the unnecessary FNAB rate of the ML-assisted visual approaches and the radiomics approaches were compared with ACR TI-RADS.
Results: The ML-assisted US visual approach had the best diagnostic performance than the US radiomics approach and ACR TI-RADS (area under the curve [AUC]: 0.900 vs. 0.789 vs. 0.689 for the validation data set, 0.917 vs. 0.770 vs. 0.681 for the test data set). After adding SWE, the ML-assisted visual approach had a better diagnostic performance than US alone (AUC: 0.951 vs. 0.900 for the validation data set, 0.953 vs. 0.917 for the test data set). When applying the ML-assisted US+SWE visual approach, the unnecessary FNAB rate decreased from 30.0% to 4.5% in the validation data set and from 37.7% to 4.7% in the test data set in comparison to ACR TI-RADS. Conclusions: The ML-assisted dual modalities visual approach can assist radiologists to diagnose thyroid nodules more effectively and considerably reduce the unnecessary FNAB rate in the clinical management of thyroid nodules.

Entities:  

Keywords:  artificial intelligence; diagnosis; machine learning; shear wave elastography; thyroid nodules; ultrasound

Year:  2020        PMID: 32781915     DOI: 10.1089/thy.2020.0305

Source DB:  PubMed          Journal:  Thyroid        ISSN: 1050-7256            Impact factor:   6.568


  15 in total

1.  SuperSonic shear imaging for the differentiation between benign and malignant thyroid nodules: a meta-analysis.

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2.  A machine-learning algorithm for distinguishing malignant from benign indeterminate thyroid nodules using ultrasound radiomic features.

Authors:  Xavier M Keutgen; Hui Li; Kelvin Memeh; Julian Conn Busch; Jelani Williams; Li Lan; David Sarne; Brendan Finnerty; Peter Angelos; Thomas J Fahey; Maryellen L Giger
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Journal:  Nat Rev Endocrinol       Date:  2021-11-09       Impact factor: 43.330

7.  Nomogram Combining Radiomics With the American College of Radiology Thyroid Imaging Reporting and Data System Can Improve Predictive Performance for Malignant Thyroid Nodules.

Authors:  Xingzhi Huang; Zhenghua Wu; Aiyun Zhou; Xiang Min; Qi Qi; Cheng Zhang; Songli Chen; Pan Xu
Journal:  Front Oncol       Date:  2021-10-13       Impact factor: 6.244

Review 8.  Radiomics in Differentiated Thyroid Cancer and Nodules: Explorations, Application, and Limitations.

Authors:  Yuan Cao; Xiao Zhong; Wei Diao; Jingshi Mu; Yue Cheng; Zhiyun Jia
Journal:  Cancers (Basel)       Date:  2021-05-18       Impact factor: 6.639

9.  A Comparative Analysis of Six Machine Learning Models Based on Ultrasound to Distinguish the Possibility of Central Cervical Lymph Node Metastasis in Patients With Papillary Thyroid Carcinoma.

Authors:  Ying Zou; Yan Shi; Jihua Liu; Guanghe Cui; Zhi Yang; Meiling Liu; Fang Sun
Journal:  Front Oncol       Date:  2021-06-25       Impact factor: 6.244

10.  Pre-Operative Prediction of Mediastinal Node Metastasis Using Radiomics Model Based on 18F-FDG PET/CT of the Primary Tumor in Non-Small Cell Lung Cancer Patients.

Authors:  Kai Zheng; Xinrong Wang; Chengzhi Jiang; Yongxiang Tang; Zhihui Fang; Jiale Hou; Zehua Zhu; Shuo Hu
Journal:  Front Med (Lausanne)       Date:  2021-06-18
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