| Literature DB >> 31333584 |
Yangyang Hao1, Yoonha Choi1, Joshua E Babiarz1, Richard T Kloos2, Giulia C Kennedy1,2,3, Jing Huang1, P Sean Walsh1.
Abstract
Background: Fine needle aspiration (FNA) cytology, a diagnostic test central to thyroid nodule management, may yield indeterminate results in up to 30% of cases. The Afirma® Genomic Sequencing Classifier (GSC) was developed and clinically validated to utilize genomic material obtained during the FNA to accurately identify benign nodules among those deemed cytologically indeterminate so that diagnostic surgery can be avoided. A key question for diagnostic tests is their robustness under different perturbations that may occur in the lab. Herein, we describe the analytical performance of the Afirma GSC.Entities:
Keywords: Afirma GSC; RNA-Seq; analytical verification; clinical robustness; genomics; lab developed test; molecular diagnostics; thyroid cancer
Year: 2019 PMID: 31333584 PMCID: PMC6620518 DOI: 10.3389/fendo.2019.00438
Source DB: PubMed Journal: Front Endocrinol (Lausanne) ISSN: 1664-2392 Impact factor: 5.555
Figure 1Analytical verification study data generation workflow.
Figure 2Analytical sensitivity and specificity of the Afirma GSC BM classifier. The y-axis spans the observed score range of the classifier being tested. (A) Effect of input mass variation on Afirma GSC scores. Each box represents classifier scores of technical triplicates for either one benign sample or malignant sample. The x-axis shows the total input mass. Overall, GSC scores for each sample did not differ significantly with RNA input amount (p-value = 0.97). (B) Analytical specificity of the Afirma GSC BM classifier against genomic DNA (gDNA). The x-axis shows the percentage of gDNA spiked into 15 ng of total RNA samples before library preparation. Each box represents classifier scores of all technical replicates for either one benign or malignant sample. Overall, the Afirma GSC BM classifier scores of the same samples with 30% gDNA spike-in are not significantly different from the scores of the corresponding pure RNA samples (p-value = 0.064).
LOD in malignant FNA mixed with benign or adjacent normal tissue.
| BM | ANT + Malignant | 20% | 5% |
| BM | Benign + Malignant | 20% | 5% |
| MTC | Benign + MTC | 25% | 20% |
| PTA | Benign + PTA | 25% | 15% |
| RET-PTC | Benign + RET-PTC | 10% | |
ANT, Adjacent Normal Tissue.
Blood interference in Afirma GSC prediction.
| BM | Benign + Blood | 100% |
| BM | Malignant + Blood | 75% |
| 75% | ||
| MTC | MTC + Blood | 75% |
| PTA | PTA + Blood | 75% |
Afirma GSC classifier suite reproducibility result summary.
| BM | 8 | 191 | 1.452 (1.306–1.634) | 0.440 | 80 | 0.130 (0.114 −0.144) | 134 | 0.274 (0.228–0.310) | 134 | 0.069 (0.053–0.073) |
| 13 | 264 | 3.417 (3.189–3.698) | 0.640 | 42 | 0.298 (0.249–0.344) | 134 | 0.186 (0.169–0.202) | 134 | 0.133 (0.115–0.153) | |
| MTC | 12 | 211 | 2.912 (2.424–3.499) | 2.000 | 50 | 0.174 (0.088–0.253) | 53 | 0.189 (0.114–0.257) | 53 | 0.189 (0.081–0.214) |
| PTA | 10.5 | 195 | 1.242 (0.735–1.845) | 1.210 | 50 | 0.104 (0.090–0.117) | 36 | 0.105 (0.082–0.124) | 36 | 0.078 (0.040–0.079) |
“SD Specification” was derived by in-silico simulation on the training set scores for each classifier. “N” is the sample size for each study. 95% confidence interval is included for all SD estimates.
Figure 3Reproducibility results for Afirma GSC BM classifier. The left most is the biological variation calculated as the inter-class score SD between benign and malignant samples and was computed from all samples passing quality control criteria in the clinical validation study. On the right side, technical variability from different sources were listed. Dashed line: the maximum tolerable level of technical variation in GSC scores derived from simulation (0.44). Black dots: observed values. Vertical red lines: 95% CI. The sample size used to calculate the point estimate and the 95% CI is shown at the top.