A framework for evaluating biomarkers for early detection: validation of biomarker panels for ovarian cancer.
Abstract
A panel of biomarkers may improve predictive performance over individual markers. Although many biomarker panels have been described for ovarian cancer, few studies used prediagnostic samples to assess the potential of the panels for early detection. We conducted a multisite systematic evaluation of biomarker panels using prediagnostic serum samples from the Prostate, Lung, Colorectal, and Ovarian Cancer (PLCO) screening trial. Using a nested case-control design, levels of 28 biomarkers were measured laboratory-blinded in 118 serum samples obtained before cancer diagnosis and 951 serum samples from matched controls. Five predictive models, each containing 6 to 8 biomarkers, were evaluated according to a predetermined analysis plan. Three sequential analyses were conducted: blinded validation of previously established models (step 1); simultaneous split-sample discovery and validation of models (step 2); and exploratory discovery of new models (step 3). Sensitivity, specificity, sensitivity at 98% specificity, and AUC were computed for the models and CA125 alone among 67 cases diagnosed within one year of blood draw and 476 matched controls. In step 1, one model showed comparable performance to CA125, with sensitivity, specificity, and AUC at 69.2%, 96.6%, and 0.892, respectively. Remaining models had poorer performance than CA125 alone. In step 2, we observed a similar pattern. In step 3, a model derived from all 28 markers failed to show improvement over CA125. Thus, biomarker panels discovered in diagnostic samples may not validate in prediagnostic samples; utilizing prediagnostic samples for discovery may be helpful in developing validated early detection panels.
Biomarkers
The following biomarkers make reference to this publication:
- AFP
- APOA1
- B2M
- CA125
- CA15-3
- CA19-9
- CA72-4
- CCL11
- CEACAM5
- CHI3L1
- CXCL8
- Cramer 5 marker panel for ovarian cancer
- EGFR
- ERBB2
- FSH
- GDF15
- GH1
- HAMP
- HE4
- ICAM1
- IGF2
- IGFBP1
- IGFBP2
- IL10
- IL2RA
- IL6
- IL6R
- ITIH4
- KLK6
- KLK8
- KRT19
- LEP
- LHB
- MIF
- MMP2
- MMP3
- MMP7
- MMP9
- MPO
- MSLN
- Osteopontin
- PPBP
- PRL
- SERPINE1
- SLPI
- SMRP
- SPON2
- TF
- TNF
- TNFRSF1A
- TNFRSF1B
- TSHB
- TTR
- VCAM1
- VTCN1
Authors
- Bast RC
- Berg CD
- Buys SS
- Cramer DW
- Fung ET
- Hartge P
- Lokshin AE
- Lomakin A
- Lu KH
- Marrangoni AM
- McIntosh MW
- Moore LE
- Mor G
- Patriotis C
- Pfeiffer RM
- Pinsky PF
- Ransohoff DF
- Scholler N
- Skates SJ
- Sluss PM
- Srivastava S
- Symanowski JT
- Urban N
- Vitonis A
- Ward DC
- Zhang Z
- Zhu CS