| Literature DB >> 30564197 |
Mark J C van Treijen1,2, Catharina M Korse2,3, Rachel S van Leeuwaarde1,2, Lisette J Saveur2,4, Menno R Vriens2,5, Wieke H M Verbeek2,4, Margot E T Tesselaar2,6, Gerlof D Valk1,2.
Abstract
Background: Available neuroendocrine biomarkers are considered to have insufficient accuracy to discriminate patients with gastro-entero-pancreatic neuroendocrine tumors (GEP-NETs) from healthy controls. Recent studies have demonstrated a potential role for circulating neuroendocrine specific transcripts analysis-the NETest-as a more accurate biomarker for NETs compared to available biomarkers. This study was initiated to independently validate the discriminative value of the NETest as well as the association between tumor characteristics and NETest score.Entities:
Keywords: NET; biomarker; carcinoid; chromogranin A; gastroenteropancreatic; multigene transcripts; neuroendocrine tumors
Year: 2018 PMID: 30564197 PMCID: PMC6288275 DOI: 10.3389/fendo.2018.00740
Source DB: PubMed Journal: Front Endocrinol (Lausanne) ISSN: 1664-2392 Impact factor: 5.555
Baseline characteristics of the neuroendocrine tumor patients and control group.
| 63 ± 15 | 52 ± 11 | <0.001 | |
| 75:65 (54%:46%) | 46:67 (41%:59%) | 0.04 | |
| N/A | |||
| Appendix | 1 (1%) | ||
| Caecum | 2 (1%) | ||
| Duodenum | 1 (1%) | ||
| Gastric / esophagus | 3 (2%) | ||
| Ileum | 89 (64%) | ||
| Pancreas | 28 (20%) | ||
| Colorectal | 5 (3%) | ||
| GEP-NET with unknown origin | 11 (8%) | ||
| N/A | |||
| 1 | 91 (65%) | ||
| 2 | 47 (34%) | ||
| 3 | 1 (1%) | ||
| Unknown | 1 (1%) | ||
| N/A | |||
| Loco regional disease | 8 (6%) | ||
| Distant metastasis | 132 (94%) | ||
| N/A | |||
| CT-scan | 94 (67%) | ||
| MRI | 4 (3%) | ||
| SSRS | 12 (9%) | ||
| 18F-FDG PET with low dose CT | 3 (2%) | ||
| 68Ga DOTATATE with low dose CT | 26 (19%) | ||
| Ultrasound | 1 (1%) | ||
| N/A | |||
| None | 62 (44%) | ||
| Chemotherapy | 1 (1%) | ||
| Anti-PD1 | 1 (1%) | ||
| SSA | 73 (52%) | ||
| Everolimus | 3 (2%) | ||
| Median (range) | 33.3 (13–93%) | 13,3 (0–80%) | <0.001 |
| Median (range) | 129 (12–143500) | 46 (20–713) | <0.001 |
M:F, male/female; NET, neuroendocrine tumor; SSRS, somatostatin receptor scintigraphy (.
Figure 1The distribution of the NETest in healthy volunteers and patients with GEP-NETs. The distribution of the NETest results is illustrated in both controls (Left) and GEP-NET patients (Right). The results inside the gray squares illustrate deviant results when using the optimal cut-off for our population (20%). The black spots reflect the median NETest outcome. Median NETest outcome in NET patients was 33% compared to 13% in controls (p < 0.001).
Figure 2AUROC of the NETest and CgA. The AUC for the NETest is 0.866 [CI 95% 0.822–0.911; (A)]. The optimal cut-off for our population was established at 20%. The AUC for CgA 0.759 [CI 95% 0.693–0.825; (B)].
NETest outcome in each group using the cut off of 14%.
| NETest positive | 130 | 50 | 180 |
| NETest negative | 10 | 63 | 73 |
| Total | 140 | 113 | 253 |
NET, neuroendocrine tumor.
Metrics of the NETest and CgA.
| NETest (ULN 14%) | 93 | 56 | 72 | 86 |
| NETest (ULN 20%) | 89 | 72 | 79 | 84 |
| NETest (ULN 27%) | 67 | 89 | 87 | 67 |
| CgA | 56 | 83 | 87 | 49 |
The NETest was compared with CgA for detecting GEP-NETs in 140 patients and 113, respectively, 70 controls. Multigene analysis identified GEP-NETs in 93% (N = 130) compared with 56% (N = 77) with CgA (McNemar: p < 0.001). Specificity was significantly better for CgA (83%) compared to the NETest 56% (McNemar: p < 0.001).
ULN, Upper limit of normal.
Figure 3The relationship between the NETest and CgA results for each GEP-NET patient. NETest and CgA results for each patient with proven GEP-NET (n = 138). In square A, both test are false negative (N = 6). Square B illustrates patients with a false negative CgA but a positive NETest (n = 55). In square C, both tests are true positive (N = 73). Square D illustrates the false negative NETest (n = 4) compared with positive CgA levels. Thus, the multigene analysis identified GEP-NETs in 93% (N = 125) compared with only 56% (N = 77) with CgA (McNemar: p < 0.001) when the suggested cut-off of 14% is respected. There was no correlation between CgA and NETest in the GEP-NET patient group (spearman correlation 0.087; p = 0.308) The alternative cut-off is illustrated at NETest activity score 20%.
Cut-off 20%. This is the most optimal cut-off in our population. Cut-off 14%. This cut-off is suggested in previous studies.