Cargando…

Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study

OBJECTIVE: The objective of this retrospective study was to develop and validate a simple diagnostic prediction model by using ultrasound (US) features of thyroid nodules obtained from multicenter retrospective data. MATERIALS AND METHODS: Patient data were collected from 20 different institutions a...

Descripción completa

Detalles Bibliográficos
Autores principales: Kwak, Jin Young, Jung, Inkyung, Baek, Jung Hwan, Baek, Seon Mi, Choi, Nami, Choi, Yoon Jung, Jung, So Lyung, Kim, Eun-Kyung, Kim, Jeong-Ah, Kim, Ji-hoon, Kim, Kyu Sun, Lee, Jeong Hyun, Lee, Joon Hyung, Moon, Hee Jung, Moon, Won-Jin, Park, Jeong Seon, Ryu, Ji Hwa, Shin, Jung Hee, Son, Eun Ju, Sung, Jin Yong, Na, Dong Gyu
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Korean Society of Radiology 2013
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3542293/
https://www.ncbi.nlm.nih.gov/pubmed/23323040
http://dx.doi.org/10.3348/kjr.2013.14.1.110
_version_ 1782255487547342848
author Kwak, Jin Young
Jung, Inkyung
Baek, Jung Hwan
Baek, Seon Mi
Choi, Nami
Choi, Yoon Jung
Jung, So Lyung
Kim, Eun-Kyung
Kim, Jeong-Ah
Kim, Ji-hoon
Kim, Kyu Sun
Lee, Jeong Hyun
Lee, Joon Hyung
Moon, Hee Jung
Moon, Won-Jin
Park, Jeong Seon
Ryu, Ji Hwa
Shin, Jung Hee
Son, Eun Ju
Sung, Jin Yong
Na, Dong Gyu
author_facet Kwak, Jin Young
Jung, Inkyung
Baek, Jung Hwan
Baek, Seon Mi
Choi, Nami
Choi, Yoon Jung
Jung, So Lyung
Kim, Eun-Kyung
Kim, Jeong-Ah
Kim, Ji-hoon
Kim, Kyu Sun
Lee, Jeong Hyun
Lee, Joon Hyung
Moon, Hee Jung
Moon, Won-Jin
Park, Jeong Seon
Ryu, Ji Hwa
Shin, Jung Hee
Son, Eun Ju
Sung, Jin Yong
Na, Dong Gyu
author_sort Kwak, Jin Young
collection PubMed
description OBJECTIVE: The objective of this retrospective study was to develop and validate a simple diagnostic prediction model by using ultrasound (US) features of thyroid nodules obtained from multicenter retrospective data. MATERIALS AND METHODS: Patient data were collected from 20 different institutions and the data included 2000 thyroid nodules from 1796 patients. For developing a diagnostic prediction model to estimate the malignant risk of thyroid nodules using suspicious malignant US features, we developed a training model in a subset of 1402 nodules from 1260 patients. Several suspicious malignant US features were evaluated to create the prediction model using a scoring tool. The scores for such US features were estimated by calculating odds ratios, and the risk score of malignancy for each thyroid nodule was defined as the sum of these individual scores. Later, we verified the usefulness of developed scoring system by applying into the remaining 598 nodules from 536 patients. RESULTS: Among 2000 tumors, 1268 were benign and 732 were malignant. In our multiple regression analysis models, the following US features were statistically significant for malignant nodules when using the training data set: hypoechogenicity, marked hypoechogenicity, non-parallel orientation, microlobulated or spiculated margin, ill-defined margins, and microcalcifications. The malignancy rate was 7.3% in thyroid nodules that did not have suspicious-malignant features on US. Area under the receiver operating characteristic (ROC) curve was 0.867, which shows that the US risk score help predict thyroid malignancy well. In the test data set, the malignancy rates were 6.2% in thyroid nodules without malignant features on US. Area under the ROC curve of the test set was 0.872 when using the prediction model. CONCLUSION: The predictor model using suspicious malignant US features may be helpful in risk stratification of thyroid nodules.
format Online
Article
Text
id pubmed-3542293
institution National Center for Biotechnology Information
language English
publishDate 2013
publisher The Korean Society of Radiology
record_format MEDLINE/PubMed
spelling pubmed-35422932013-01-15 Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study Kwak, Jin Young Jung, Inkyung Baek, Jung Hwan Baek, Seon Mi Choi, Nami Choi, Yoon Jung Jung, So Lyung Kim, Eun-Kyung Kim, Jeong-Ah Kim, Ji-hoon Kim, Kyu Sun Lee, Jeong Hyun Lee, Joon Hyung Moon, Hee Jung Moon, Won-Jin Park, Jeong Seon Ryu, Ji Hwa Shin, Jung Hee Son, Eun Ju Sung, Jin Yong Na, Dong Gyu Korean J Radiol Neuroimaging and Head & Neck OBJECTIVE: The objective of this retrospective study was to develop and validate a simple diagnostic prediction model by using ultrasound (US) features of thyroid nodules obtained from multicenter retrospective data. MATERIALS AND METHODS: Patient data were collected from 20 different institutions and the data included 2000 thyroid nodules from 1796 patients. For developing a diagnostic prediction model to estimate the malignant risk of thyroid nodules using suspicious malignant US features, we developed a training model in a subset of 1402 nodules from 1260 patients. Several suspicious malignant US features were evaluated to create the prediction model using a scoring tool. The scores for such US features were estimated by calculating odds ratios, and the risk score of malignancy for each thyroid nodule was defined as the sum of these individual scores. Later, we verified the usefulness of developed scoring system by applying into the remaining 598 nodules from 536 patients. RESULTS: Among 2000 tumors, 1268 were benign and 732 were malignant. In our multiple regression analysis models, the following US features were statistically significant for malignant nodules when using the training data set: hypoechogenicity, marked hypoechogenicity, non-parallel orientation, microlobulated or spiculated margin, ill-defined margins, and microcalcifications. The malignancy rate was 7.3% in thyroid nodules that did not have suspicious-malignant features on US. Area under the receiver operating characteristic (ROC) curve was 0.867, which shows that the US risk score help predict thyroid malignancy well. In the test data set, the malignancy rates were 6.2% in thyroid nodules without malignant features on US. Area under the ROC curve of the test set was 0.872 when using the prediction model. CONCLUSION: The predictor model using suspicious malignant US features may be helpful in risk stratification of thyroid nodules. The Korean Society of Radiology 2013 2012-12-28 /pmc/articles/PMC3542293/ /pubmed/23323040 http://dx.doi.org/10.3348/kjr.2013.14.1.110 Text en Copyright © 2013 The Korean Society of Radiology http://creativecommons.org/licenses/by-nc/3.0/ This is an Open Access article distributed under the terms of the Creative Commons Attribution Non-Commercial License (http://creativecommons.org/licenses/by-nc/3.0/) which permits unrestricted non-commercial use, distribution, and reproduction in any medium, provided the original work is properly cited.
spellingShingle Neuroimaging and Head & Neck
Kwak, Jin Young
Jung, Inkyung
Baek, Jung Hwan
Baek, Seon Mi
Choi, Nami
Choi, Yoon Jung
Jung, So Lyung
Kim, Eun-Kyung
Kim, Jeong-Ah
Kim, Ji-hoon
Kim, Kyu Sun
Lee, Jeong Hyun
Lee, Joon Hyung
Moon, Hee Jung
Moon, Won-Jin
Park, Jeong Seon
Ryu, Ji Hwa
Shin, Jung Hee
Son, Eun Ju
Sung, Jin Yong
Na, Dong Gyu
Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title_full Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title_fullStr Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title_full_unstemmed Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title_short Image Reporting and Characterization System for Ultrasound Features of Thyroid Nodules: Multicentric Korean Retrospective Study
title_sort image reporting and characterization system for ultrasound features of thyroid nodules: multicentric korean retrospective study
topic Neuroimaging and Head & Neck
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC3542293/
https://www.ncbi.nlm.nih.gov/pubmed/23323040
http://dx.doi.org/10.3348/kjr.2013.14.1.110
work_keys_str_mv AT kwakjinyoung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT junginkyung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT baekjunghwan imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT baekseonmi imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT choinami imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT choiyoonjung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT jungsolyung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT kimeunkyung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT kimjeongah imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT kimjihoon imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT kimkyusun imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT leejeonghyun imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT leejoonhyung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT moonheejung imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT moonwonjin imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT parkjeongseon imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT ryujihwa imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT shinjunghee imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT soneunju imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT sungjinyong imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT nadonggyu imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy
AT imagereportingandcharacterizationsystemforultrasoundfeaturesofthyroidnodulesmulticentrickoreanretrospectivestudy