A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting

Abstract Background Thyroid nodules are highly prevalent, but a robust, feasible method for malignancy differentiation has not yet been well documented. This study aimed to establish a practical model for thyroid nodule discrimination. Methods Records for 2984 patients who underwent thyroidectomy we...

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Main Authors: Jia Liu, Dongmei Zheng, Qiang Li, Xulei Tang, Zuojie Luo, Zhongshang Yuan, Ling Gao, Jiajun Zhao
Format: Article
Language:English
Published: BMC 2018-03-01
Series:BMC Endocrine Disorders
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12902-018-0241-7
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spelling doaj-abd368d3c7a6463399e3d18b1fd0dd0e2020-11-25T03:54:29ZengBMCBMC Endocrine Disorders1472-68232018-03-011811710.1186/s12902-018-0241-7A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center settingJia Liu0Dongmei Zheng1Qiang Li2Xulei Tang3Zuojie Luo4Zhongshang Yuan5Ling Gao6Jiajun Zhao7Department of Endocrinology, Shandong Provincial Hospital Affiliated to Shandong UniversityDepartment of Endocrinology, Shandong Provincial Hospital Affiliated to Shandong UniversityDepartment of Endocrinology and Metabolism, the Second Affiliated Hospital of Harbin Medical UniversityDepartment of Endocrinology, the First Hospital of Lanzhou UniversityDepartment of Endocrinology, the First Affiliated Hospital of Guangxi UniversityDepartment of Biostatistics, School of Public Health, Shandong UniversityShandong Clinical Medical Center of Endocrinology and MetabolismDepartment of Endocrinology, Shandong Provincial Hospital Affiliated to Shandong UniversityAbstract Background Thyroid nodules are highly prevalent, but a robust, feasible method for malignancy differentiation has not yet been well documented. This study aimed to establish a practical model for thyroid nodule discrimination. Methods Records for 2984 patients who underwent thyroidectomy were analyzed. Clinical, laboratory, and US variables were assessed retrospectively. Multivariate logistic regression analysis was performed and a mathematical model was established for malignancy prediction. Results The results showed that the malignant group was younger and had smaller nodules than the benign group (43.5 ± 11.6 vs. 48.5 ± 11.5 y, p < 0.001; 1.96 ± 1.16 vs. 2.75 ± 1.70 cm, p < 0.001, respectively). The serum thyrotropin (TSH) level (median = 1.63 mIU/L, IQR (0.89–2.66) vs. 1.19 (0.59–2.10), p < 0.001) was higher in the malignant group than in the benign group. Patients with malignancies tested positive for anti-thyroglobulin antibody (TGAb) and anti-thyroid peroxidase antibody (TPOAb) more frequently than those with benign nodules (TGAb, 30.3% vs. 15.0%, p < 0.001; TPOAb, 25.6% vs. 18.0%, p = 0.028). The prevalence of ultrasound (US) features (irregular shape, ill-defined margin, solid structure, hypoechogenicity, microcalcifications, macrocalcifications and central intranodular flow) was significantly higher in the malignant group. Multivariate logistic regression analysis confirmed that age (OR = 0.963, 95% CI = 0.934–0.993, p = 0.017), TGAb (OR = 4.435, 95% CI = 1.902–10.345, p = 0.001), hypoechogenicity (OR = 2.830, 95% CI = 1.113–7.195, p = 0.029), microcalcifications (OR = 4.624, 95% CI = 2.008–10.646, p < 0.001), and central intranodular flow (OR = 2.155, 95% CI = 1.011–4.594, p < 0.05) were independent predictors of thyroid malignancy. A predictive model including four variables (age, TGAb, hypoechogenicity and microcalcification) showed an optimal discriminatory accuracy (area under the curve, AUC) of 0.808 (95% CI = 0.761–0.855). The best cut-off value for prediction was 0.52, achieving sensitivity and specificity of 84.6% and 76.3%, respectively. Conclusion A predictive model of malignancy that combines clinical, laboratory and sonographic characteristics would aid clinicians in avoiding unnecessary procedures and making better clinical decisions.http://link.springer.com/article/10.1186/s12902-018-0241-7Thyroid nodulesMalignancyPredictive model
collection DOAJ
language English
format Article
sources DOAJ
author Jia Liu
Dongmei Zheng
Qiang Li
Xulei Tang
Zuojie Luo
Zhongshang Yuan
Ling Gao
Jiajun Zhao
spellingShingle Jia Liu
Dongmei Zheng
Qiang Li
Xulei Tang
Zuojie Luo
Zhongshang Yuan
Ling Gao
Jiajun Zhao
A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
BMC Endocrine Disorders
Thyroid nodules
Malignancy
Predictive model
author_facet Jia Liu
Dongmei Zheng
Qiang Li
Xulei Tang
Zuojie Luo
Zhongshang Yuan
Ling Gao
Jiajun Zhao
author_sort Jia Liu
title A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
title_short A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
title_full A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
title_fullStr A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
title_full_unstemmed A predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
title_sort predictive model of thyroid malignancy using clinical, biochemical and sonographic parameters for patients in a multi-center setting
publisher BMC
series BMC Endocrine Disorders
issn 1472-6823
publishDate 2018-03-01
description Abstract Background Thyroid nodules are highly prevalent, but a robust, feasible method for malignancy differentiation has not yet been well documented. This study aimed to establish a practical model for thyroid nodule discrimination. Methods Records for 2984 patients who underwent thyroidectomy were analyzed. Clinical, laboratory, and US variables were assessed retrospectively. Multivariate logistic regression analysis was performed and a mathematical model was established for malignancy prediction. Results The results showed that the malignant group was younger and had smaller nodules than the benign group (43.5 ± 11.6 vs. 48.5 ± 11.5 y, p < 0.001; 1.96 ± 1.16 vs. 2.75 ± 1.70 cm, p < 0.001, respectively). The serum thyrotropin (TSH) level (median = 1.63 mIU/L, IQR (0.89–2.66) vs. 1.19 (0.59–2.10), p < 0.001) was higher in the malignant group than in the benign group. Patients with malignancies tested positive for anti-thyroglobulin antibody (TGAb) and anti-thyroid peroxidase antibody (TPOAb) more frequently than those with benign nodules (TGAb, 30.3% vs. 15.0%, p < 0.001; TPOAb, 25.6% vs. 18.0%, p = 0.028). The prevalence of ultrasound (US) features (irregular shape, ill-defined margin, solid structure, hypoechogenicity, microcalcifications, macrocalcifications and central intranodular flow) was significantly higher in the malignant group. Multivariate logistic regression analysis confirmed that age (OR = 0.963, 95% CI = 0.934–0.993, p = 0.017), TGAb (OR = 4.435, 95% CI = 1.902–10.345, p = 0.001), hypoechogenicity (OR = 2.830, 95% CI = 1.113–7.195, p = 0.029), microcalcifications (OR = 4.624, 95% CI = 2.008–10.646, p < 0.001), and central intranodular flow (OR = 2.155, 95% CI = 1.011–4.594, p < 0.05) were independent predictors of thyroid malignancy. A predictive model including four variables (age, TGAb, hypoechogenicity and microcalcification) showed an optimal discriminatory accuracy (area under the curve, AUC) of 0.808 (95% CI = 0.761–0.855). The best cut-off value for prediction was 0.52, achieving sensitivity and specificity of 84.6% and 76.3%, respectively. Conclusion A predictive model of malignancy that combines clinical, laboratory and sonographic characteristics would aid clinicians in avoiding unnecessary procedures and making better clinical decisions.
topic Thyroid nodules
Malignancy
Predictive model
url http://link.springer.com/article/10.1186/s12902-018-0241-7
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