| Literature DB >> 33655778 |
Ewout W Steyerberg1, Liesbeth C de Wreede1, David van Klaveren2,3, Patrick M M Bossuyt4.
Abstract
BACKGROUND: Genomic tests may improve upon clinical risk estimation with traditional prognostic factors. We aimed to explore how evidence on the prognostic strength of a genomic signature (clinical validity) can contribute to individualized decision making on starting chemotherapy for women with breast cancer (clinical utility).Entities:
Keywords: biomarker evaluation; breast cancer; clinical utility; genomic testing; risk stratification
Year: 2021 PMID: 33655778 PMCID: PMC7985855 DOI: 10.1177/0272989X21991173
Source DB: PubMed Journal: Med Decis Making ISSN: 0272-989X Impact factor: 2.583
Figure 1Simulated risk distribution of women enrolled in the MINDACT trial based on clinical and genomic risk, calibrated to MINDACT 5-y distant and metastasis free survival (DMFS), with and without chemotherapy (CT), assuming a relative risk reduction by CT of 20% (hazard ratio = 0.8). The median risks were 3.2% and 4.0% with and without chemotherapy, respectively (left panel), or a median benefit of 0.8% (right panel).
Results for the Discordant-Pairs Design as Applied in the MINDACT Trial versus Decision-Analytic Modeling of Individual Benefit
| Discordant Pairs: MINDACT RCT | Decision-Analytic Modeling | |
|---|---|---|
| Clinical risk | Low vs high Adjuvant!Online 10-y risk; pooled 5y DMFS 97.1% v. 92.7% | Continuous Adjuvant!Online risk |
| Genomic risk | Nonparametric: subgroups ( | Parametric: Cox regression analysis, HR = 2.4 |
| Treatment effect | Underpowered; inverse variance pooled estimate HR = 0.88 | From meta-analysis: HR = 0.8 |
| Interaction G × Tx | Nonparametric: subgroups | Assume constant relative effect |
| Indication for testing | C-high risk: 50% (3356/6693) | Threshold for benefit 3% implies C-risk >16.3%: 4% |
| Indication for treatment | 27% (1806/6693) | If threshold 3%: 3.4% |
| Further studies | Larger trial | Expand clinical risk calculator with genomic risk |
RCT, randomized controlled trial; C, clinical risk; G, genomic risk; ARR, absolute risk reduction; HR, hazard ratio.
Figure 2Distribution of predicted absolute benefit in terms of 5-y risk of mortality or distant metastases for women enrolled in MINDACT based on a relative risk reduction by chemotherapy of 20% (hazard ratio = 0.8). Subgroups were defined by combinations of clinical risk (C-low or C-high) and genomic risk (G-low or Ghigh). The median benefits were 0.4%, 1.1%, 0.8%, and 1.9%, respectively.
Figure 3Reclassification by genomic risk. If a 3% threshold (indicated with dotted lines) is used to decide on the use of chemotherapy, 4% of women should be tested for genomic risk, with 1.3% receiving chemotherapy, whereas they would not if decision making were based on clinical risk alone (red dots). In contrast, 0.3% would not receive chemotherapy, although while they would if decision making were based on clinical risk alone (green dots). Thus, the genomic risk would change decision making in 1.6% of the patients. The dots are for a random sample of 2000 hypothetical patients.
Fraction Tested, Receiving Chemotherapy, overall 5-y risk of death or Distant Metastasis, and Net Benefit of treatment in a simulated MINDACT population[a]
| Strategy | Tested | Chemotherapy | 5-y Risk | Net Benefit (per 1000 Women) | |
|---|---|---|---|---|---|
| C | C+G | ||||
| Main analyses | |||||
| Reference strategies | |||||
| Treat none | 0% | 0% | 5.98% | Reference | Reference |
| Treat all | 0% | 100% | 4.84% | −18.6 | −18.6 |
| MINDACT strategies | |||||
| Treat C-high | 0% | 50% | 5.16% | −6.8 | |
| Treat C-high/G-high | 50% | 27% | 5.36% | −1.9 | |
| Decision analytic | |||||
| Treat C if benefit >3% | 0% | 2.2% | 5.89% | +0.17 | |
| Treat C + G if benefit >3% | 4% | 3.3% | 5.86% | +0.18 | |
| Sensitivity analyses[ | |||||
| Decision threshold | |||||
| t = 1% | 70% | 39% | 5.20% | 3.2 | 3.9 |
| t = 2% | 25% | 17% | 5.54% | 0.7 | 1.1 |
| |
|
|
| 0.2 | 0.2 |
| t = 5% | 0% | 0% | 5.98% | 0 | 0 |
| Chemotherapy effect | |||||
| HR = 0.9 | 0% | 0% | 5.98% | 0 | 0 |
| |
|
|
| 0.2 | 0.2 |
| HR = 0.5 | 67% | 35% | 4.10% | 6.4 | 8.3 |
| Genomic risk effect | |||||
| HR = 1.8, AUC + 0.015 | 2% | 2% | 5.92% | 0.08 | 0.10 |
| |
|
|
| 0.2 | 0.2 |
| HR = 3.3, AUC + 0.045 | 7% | 6% | 5.78% | 0.3 | 0.3 |
| HR = 4.0, AUC + 0.054 | 8% | 7% | 5.74% | 0.3 | 0.4 |
| Reference model strength[ | |||||
| AUC = 0.62 | 0% | 0% | 5.98% | 0 | 0 |
| |
|
|
| 0.2 | 0.2 |
| AUC = 0.79 | 35% | 8% | 5.59% | 0.9 | 1.1 |
Results are shown for reference strategies, MINDACT strategies, and decision-analytic strategies, with various sensitivity analyses. NB = Benefit – Harms = ΔRisk –w×ΔTreated. Benefit is the difference in 5-y distant metastasis–free survival, and Harms is a weighted sum of treatments given to achieve the benefit. The weight w is the treatment threshold t. For example, a threshold of 3% implies that one 5-y event is worth 33 treatments.
Parameters were varied for the “decision analytic, treat C+G if benefit >3%” strategy. The decision threshold is based on the clinical consensus for the increase in absolute distant metastatic–free survival required to make the burden of chemotherapy worthwhile. Numbers were rounded for ease of interpretation.
The linear predictor in the reference model has a hazard ratio of 1 by definition; the prognostic effect could be halved for an area under the curve (AUC) of 0.62 rather than 0.69, or doubled, for an AUC of 0.79.
Figure 4Sensitivity analyses for the “decision analytic, treat C+G if benefit >3%” strategy in Table 2. The threshold was varied between 1% and 7%, with a hazard ratio (HR) for chemotherapy of 0.9, 0.8, or 0.5 (relative risk reductions of approximately 10%, 20%, and 50%, respectively). All numbers are scaled per 1000 women with early breast cancer. For example, for a threshold of 3%, nearly no patients are tested or treated differently with an HR for chemotherapy of 0.8. With an HR for chemotherapy of 0.5, we should test 667 patients (with clinical risk between 1.6% and 5.5%), which would lead to treatment of 20 fewer patients (350 rather than 370), an improvement in 5y DMFS (95.8% to 95.9%, +1.3 per 1000), and a net benefit of 1.9 patients with DMFS (1.3% to 3% × 20 = 1.3 + 0.6 = 1.9 per 1000).