- Randolph, Gregory W;
- Sosa, Julie Ann;
- Hao, Yangyang;
- Angell, Trevor E;
- Shonka, David C;
- LiVolsi, Virginia A;
- Ladenson, Paul W;
- Blevins, Thomas C;
- Duh, Quan-Yang;
- Ghossein, Ronald;
- Harrell, Mack;
- Patel, Kepal Narendra;
- Shanik, Michael H;
- Traweek, S Thomas;
- Walsh, P Sean;
- Yeh, Michael W;
- Ahmed, Amr H Abdelhamid;
- Ho, Allen S;
- Wong, Richard J;
- Klopper, Joshua P;
- Huang, Jing;
- Kennedy, Giulia C;
- Kloos, Richard T;
- Sadow, Peter M
Background: Cytopathological evaluation of thyroid fine-needle aspiration biopsy (FNAB) specimens can fail to raise preoperative suspicion of medullary thyroid carcinoma (MTC). The Afirma RNA-sequencing MTC classifier identifies MTC among FNA samples that are cytologically indeterminate, suspicious, or malignant (Bethesda categories III-VI). In this study we report the development and clinical performance of this MTC classifier. Methods: Algorithm training was performed with a set of 483 FNAB specimens (21 MTC and 462 non-MTC). A support vector machine classifier was developed using 108 differentially expressed genes, which includes the 5 genes in the prior Afirma microarray-based MTC cassette. Results: The final MTC classifier was blindly tested on 211 preoperative FNAB specimens with subsequent surgical pathology, including 21 MTC and 190 non-MTC specimens from benign and malignant thyroid nodules independent from those used in training. The classifier had 100% sensitivity (21/21 MTC FNAB specimens correctly called positive; 95% confidence interval [CI] = 83.9-100%) and 100% specificity (190/190 non-MTC FNAs correctly called negative; CI = 98.1-100%). All positive samples had pathological confirmation of MTC, while all negative samples were negative for MTC on surgical pathology. Conclusions: The RNA-sequencing MTC classifier accurately identified MTC from preoperative thyroid nodule FNAB specimens in an independent validation cohort. This identification may facilitate an MTC-specific preoperative evaluation and resulting treatment.