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A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy

Considering the high rate of missed diagnosis and delayed treatments for thyroid cancer, an effective systematic model for the differential diagnosis is highly needed. Thus we analyzed the data on the clinicopathological characteristics, routine laboratory tests and imaging examinations in a cohort...

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Autores principales: Li, Tuo, Sheng, Jianguo, Li, Weiqin, Zhang, Xin, Yu, Hongyu, Chen, Xueyun, Zhang, Jianquan, Cai, Quancai, Shi, Yongquan, Liu, Zhimin
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Impact Journals LLC 2015
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4695072/
https://www.ncbi.nlm.nih.gov/pubmed/26325368
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author Li, Tuo
Sheng, Jianguo
Li, Weiqin
Zhang, Xin
Yu, Hongyu
Chen, Xueyun
Zhang, Jianquan
Cai, Quancai
Shi, Yongquan
Liu, Zhimin
author_facet Li, Tuo
Sheng, Jianguo
Li, Weiqin
Zhang, Xin
Yu, Hongyu
Chen, Xueyun
Zhang, Jianquan
Cai, Quancai
Shi, Yongquan
Liu, Zhimin
author_sort Li, Tuo
collection PubMed
description Considering the high rate of missed diagnosis and delayed treatments for thyroid cancer, an effective systematic model for the differential diagnosis is highly needed. Thus we analyzed the data on the clinicopathological characteristics, routine laboratory tests and imaging examinations in a cohort of 13,980 patients with thyroid cancer to establish a new diagnostic model for differentiating thyroid cancer in clinical practice. Here, we randomly selected two-thirds of the population to develop the thyroid malignancy risk scoring system (TMRS) for preoperative differentiation between thyroid cancer and benignant thyroid diseases, and then validated its differential diagnostic power in the rest one-third population. The 18 predictors finally enrolled in the TMRS included male gender, clinical manifestations (fever, neck sore, neck lump, palpitations or sweating), laboratory findings (TSH>1.56mIU/L, FT(3)>5.85pmol/L, TPOAb>14.97IU/ml, TgAb>48.00IU/ml, Tg>34.59μg/L, Ct>64.00ng/L, and CEA>0.41μg/L), and ultrasound features (tumor number≤ 23mm, site, size, echo texture, margins, and shape of neck lymphnodes). The TMRS is validated to be well-calibrated (P = 0.437) and excellently discriminated (AUC = 0.93, 95% CI [0.92, 0.94]), with an accuracy of 83.2%, a sensitivity of 89.3%, a specificity of 81.5%, positive and negative predictive values of 56.8% and 96.6%, positive and negative likelihood ratios of 4.83 and 0.13 in the development cohort, respectively. The TMRS highlights that this differential diagnostic system could help provide accurate preoperative risk stratification for thyroid cancer, and avoid unnecessary over- and under-treatment for such patients.
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spelling pubmed-46950722016-01-20 A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy Li, Tuo Sheng, Jianguo Li, Weiqin Zhang, Xin Yu, Hongyu Chen, Xueyun Zhang, Jianquan Cai, Quancai Shi, Yongquan Liu, Zhimin Oncotarget Clinical Research Paper Considering the high rate of missed diagnosis and delayed treatments for thyroid cancer, an effective systematic model for the differential diagnosis is highly needed. Thus we analyzed the data on the clinicopathological characteristics, routine laboratory tests and imaging examinations in a cohort of 13,980 patients with thyroid cancer to establish a new diagnostic model for differentiating thyroid cancer in clinical practice. Here, we randomly selected two-thirds of the population to develop the thyroid malignancy risk scoring system (TMRS) for preoperative differentiation between thyroid cancer and benignant thyroid diseases, and then validated its differential diagnostic power in the rest one-third population. The 18 predictors finally enrolled in the TMRS included male gender, clinical manifestations (fever, neck sore, neck lump, palpitations or sweating), laboratory findings (TSH>1.56mIU/L, FT(3)>5.85pmol/L, TPOAb>14.97IU/ml, TgAb>48.00IU/ml, Tg>34.59μg/L, Ct>64.00ng/L, and CEA>0.41μg/L), and ultrasound features (tumor number≤ 23mm, site, size, echo texture, margins, and shape of neck lymphnodes). The TMRS is validated to be well-calibrated (P = 0.437) and excellently discriminated (AUC = 0.93, 95% CI [0.92, 0.94]), with an accuracy of 83.2%, a sensitivity of 89.3%, a specificity of 81.5%, positive and negative predictive values of 56.8% and 96.6%, positive and negative likelihood ratios of 4.83 and 0.13 in the development cohort, respectively. The TMRS highlights that this differential diagnostic system could help provide accurate preoperative risk stratification for thyroid cancer, and avoid unnecessary over- and under-treatment for such patients. Impact Journals LLC 2015-06-29 /pmc/articles/PMC4695072/ /pubmed/26325368 Text en Copyright: © 2015 Li et al. http://creativecommons.org/licenses/by/2.5/ This is an open-access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Clinical Research Paper
Li, Tuo
Sheng, Jianguo
Li, Weiqin
Zhang, Xin
Yu, Hongyu
Chen, Xueyun
Zhang, Jianquan
Cai, Quancai
Shi, Yongquan
Liu, Zhimin
A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title_full A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title_fullStr A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title_full_unstemmed A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title_short A new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
title_sort new computational model for human thyroid cancer enhances the preoperative diagnostic efficacy
topic Clinical Research Paper
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC4695072/
https://www.ncbi.nlm.nih.gov/pubmed/26325368
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