Literature DB >> 28071987

A Computer-Aided Diagnosis System Using Artificial Intelligence for the Diagnosis and Characterization of Thyroid Nodules on Ultrasound: Initial Clinical Assessment.

Young Jun Choi1, Jung Hwan Baek1, Hye Sun Park1, Woo Hyun Shim1, Tae Yong Kim2, Young Kee Shong2, Jeong Hyun Lee1.   

Abstract

BACKGROUND: An initial clinical assessment is described of a new, commercially available, computer-aided diagnosis (CAD) system using artificial intelligence (AI) for thyroid ultrasound, and its performance is evaluated in the diagnosis of malignant thyroid nodules and categorization of nodule characteristics.
METHODS: Patients with thyroid nodules with decisive diagnosis, whether benign or malignant, were consecutively enrolled from November 2015 to February 2016. An experienced radiologist reviewed the ultrasound image characteristics of the thyroid nodules, while another radiologist assessed the same thyroid nodules using the CAD system, providing ultrasound characteristics and a diagnosis of whether nodules were benign or malignant. The diagnostic performance and agreement of US characteristics between the experienced radiologist and the CAD system were compared.
RESULTS: In total, 102 thyroid nodules from 89 patients were included; 59 (57.8%) were benign and 43 (42.2%) were malignant. The CAD system showed a similar sensitivity as the experienced radiologist (90.7% vs. 88.4%, p > 0.99), but a lower specificity and a lower area under the receiver operating characteristic (AUROC) curve (specificity: 74.6% vs. 94.9%, p = 0.002; AUROC: 0.83 vs. 0.92, p = 0.021). Classifications of the ultrasound characteristics (composition, orientation, echogenicity, and spongiform) between radiologist and CAD system were in substantial agreement (κ = 0.659, 0.740, 0.733, and 0.658, respectively), while the margin showed a fair agreement (κ = 0.239).
CONCLUSION: The sensitivity of the CAD system using AI for malignant thyroid nodules was as good as that of the experienced radiologist, while specificity and accuracy were lower than those of the experienced radiologist. The CAD system showed an acceptable agreement with the experienced radiologist for characterization of thyroid nodules.

Entities:  

Keywords:  computer-aided system; thyroid nodule; ultrasound

Mesh:

Year:  2017        PMID: 28071987     DOI: 10.1089/thy.2016.0372

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


  53 in total

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2.  Application of deep learning to the diagnosis of cervical lymph node metastasis from thyroid cancer with CT.

Authors:  Jeong Hoon Lee; Eun Ju Ha; Ju Han Kim
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3.  A computer-aided diagnosis system for the assessment and characterization of low-to-high suspicion thyroid nodules on ultrasound.

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4.  CAD system based on B-mode and color Doppler sonographic features may predict if a thyroid nodule is hot or cold.

Authors:  Ali Abbasian Ardakani; Ahmad Bitarafan-Rajabi; Afshin Mohammadi; Sepideh Hekmat; Aylin Tahmasebi; Mohammad Bagher Shiran; Ali Mohammadzadeh
Journal:  Eur Radiol       Date:  2019-01-09       Impact factor: 5.315

5.  Applications of machine learning and deep learning to thyroid imaging: where do we stand?

Authors:  Eun Ju Ha; Jung Hwan Baek
Journal:  Ultrasonography       Date:  2020-07-03

6.  Computer-aided diagnostic system for thyroid nodule sonographic evaluation outperforms the specificity of less experienced examiners.

Authors:  Daniele Fresilli; Giorgio Grani; Maria Luna De Pascali; Gregorio Alagna; Eleonora Tassone; Valeria Ramundo; Valeria Ascoli; Daniela Bosco; Marco Biffoni; Marco Bononi; Vito D'Andrea; Fabrizio Frattaroli; Laura Giacomelli; Yana Solskaya; Giorgia Polti; Patrizia Pacini; Olga Guiban; Raffaele Gallo Curcio; Marcello Caratozzolo; Vito Cantisani
Journal:  J Ultrasound       Date:  2020-04-03

7.  Ultrasonographic Thyroid Nodule Classification Using a Deep Convolutional Neural Network with Surgical Pathology.

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Review 8.  Machine learning for medical ultrasound: status, methods, and future opportunities.

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Journal:  Abdom Radiol (NY)       Date:  2018-04

9.  Software-Based Analysis of the Taller-Than-Wide Feature of High-Risk Thyroid Nodules.

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Journal:  Ann Surg Oncol       Date:  2021-01-03       Impact factor: 5.344

Review 10.  Updates on the Management of Thyroid Cancer.

Authors:  Katherine A Araque; Sriram Gubbi; Joanna Klubo-Gwiezdzinska
Journal:  Horm Metab Res       Date:  2020-02-10       Impact factor: 2.936

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