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A molecular computational model improves the preoperative diagnosis of thyroid nodules

Authors :
Tomei Sara
Marchetti Ivo
Zavaglia Katia
Lessi Francesca
Apollo Alessandro
Aretini Paolo
Di Coscio Giancarlo
Bevilacqua Generoso
Mazzanti Chiara
Source :
BMC Cancer, Vol 12, Iss 1, p 396 (2012)
Publication Year :
2012
Publisher :
BMC, 2012.

Abstract

Abstract Background Thyroid nodules with indeterminate cytological features on fine needle aspiration (FNA) cytology have a 20% risk of thyroid cancer. The aim of the current study was to determine the diagnostic utility of an 8-gene assay to distinguish benign from malignant thyroid neoplasm. Methods The mRNA expression level of 9 genes (KIT, SYNGR2, C21orf4, Hs.296031, DDI2, CDH1, LSM7, TC1, NATH) was analysed by quantitative PCR (q-PCR) in 93 FNA cytological samples. To evaluate the diagnostic utility of all the genes analysed, we assessed the area under the curve (AUC) for each gene individually and in combination. BRAF exon 15 status was determined by pyrosequencing. An 8-gene computational model (Neural Network Bayesian Classifier) was built and a multiple-variable analysis was then performed to assess the correlation between the markers. Results The AUC for each significant marker ranged between 0.625 and 0.900, thus all the significant markers, alone and in combination, can be used to distinguish between malignant and benign FNA samples. The classifier made up of KIT, CDH1, LSM7, C21orf4, DDI2, TC1, Hs.296031 and BRAF had a predictive power of 88.8%. It proved to be useful for risk stratification of the most critical cytological group of the indeterminate lesions for which there is the greatest need of accurate diagnostic markers. Conclusion The genetic classification obtained with this model is highly accurate at differentiating malignant from benign thyroid lesions and might be a useful adjunct in the preoperative management of patients with thyroid nodules.

Details

Language :
English
ISSN :
14712407
Volume :
12
Issue :
1
Database :
Directory of Open Access Journals
Journal :
BMC Cancer
Publication Type :
Academic Journal
Accession number :
edsdoj.041b2c06269c47da957d477ff8661bfd
Document Type :
article
Full Text :
https://doi.org/10.1186/1471-2407-12-396