| Literature DB >> 32369904 |
Claudia Mazo1,2,3, Stephen Barron3, Catherine Mooney1, William M Gallagher3,4.
Abstract
Determining which patients with early-stage breast cancer should receive chemotherapy is an important clinical issue. Chemotherapy has several adverse side effects, impacting on quality of life, along with significant economic consequences. There are a number of multi-gene prognostic signatures for breast cancer recurrence but there is less evidence that these prognostic signatures are predictive of therapy benefit. Biomarkers that can predict patient response to chemotherapy can help avoid ineffective over-treatment. The aim of this work was to assess if the OncoMasTR prognostic signature can predict pathological complete response (pCR) to neoadjuvant chemotherapy, and to compare its predictive value with other prognostic signatures: EndoPredict, Oncotype DX and Tumor Infiltrating Leukocytes. Gene expression datasets from ER-positive, HER2-negative breast cancer patients that had pre-treatment biopsies, received neoadjuvant chemotherapy and an assessment of pCR were obtained from the Gene Expression Omnibus repository. A total of 813 patients with 66 pCR events were included in the analysis. OncoMasTR, EndoPredict, Oncotype DX and Tumor Infiltrating Leukocytes numeric risk scores were approximated by applying the gene coefficients to the corresponding mean probe expression values. OncoMasTR, EndoPredict and Oncotype DX prognostic scores were moderately well correlated according to the Pearson's correlation coefficient. Association with pCR was estimated using logistic regression. The odds ratio for a 1 standard deviation increase in risk score, adjusted for cohort, were similar in magnitude for all four signatures. Additionally, the four signatures were significant predictors of pCR. OncoMasTR added significant predictive value to EndoPredict, Oncotype DX and Tumor Infiltrating Leukocytes signatures as determined by bivariable and trivariable analysis. In this in silico analysis, OncoMasTR, EndoPredict, Oncotype DX, and Tumor Infiltrating Leukocytes were significantly predictive of pCR to neoadjuvant chemotherapy in ER-positive and HER2-negative breast cancer patients.Entities:
Keywords: breast cancer; breast cancer treatment; multi-gene prognostic signature; neoadjuvant chemotherapy; pathological complete response
Year: 2020 PMID: 32369904 PMCID: PMC7281334 DOI: 10.3390/cancers12051133
Source DB: PubMed Journal: Cancers (Basel) ISSN: 2072-6694 Impact factor: 6.639
Figure 1A systematic search for breast cancer datasets. Left path corresponds to GEO search. Right path corresponds to related papers search.
GEO datasets included in the analysis *.
| GEO Dataset | Platform | Patients (N) | pCR (N) | Missing Genes | |||
|---|---|---|---|---|---|---|---|
| EP | RS | TILs | OM | ||||
| GSE16716 | Affymetrix Human Genome U133A Array | 140 | 7 | PTRPC, KLRK1, EOMES, KIR3DL2, XCL2, CD8B | ZNF367 | ||
| GSE20271 | Affymetrix Human Genome U133A Array | 89 | 6 | PTRPC, KLRK1, EOMES, KIR3DL2, XCL2, CD8B | ZNF367 | ||
| GSE25066 | Affymetrix Human Genome U133A Array | 278 | 30 | PTRPC, KLRK1, EOMES, KIR3DL2, XCL2, CD8B | ZNF367 | ||
| GSE32646 | Affymetrix Human Genome U133A Plus 2.0 Array | 55 | 5 | PTRPC, KLRK1, KIR3DL2, XCL2 | |||
| GSE34138 | Illumina Human WG 6 v3.0 expression bead chip | 119 | 4 | MYBL2 | PTRPC, KLRK1, TPSB2, XCL2, NCR1, FOXP3 | ZNF367 | |
| GSE41998 | Affymetrix Human U133A 2.0 Array | 93 | 10 | PTRPC, KLRK1, EOMES, KIR3DL2, XCL2, CD8B | ZNF367 | ||
| GSE22226 GPL1708 | Agilent 012391 Whole Human Genome Oligo Microarray G4112A (Feature Number version) | 39 | 4 | CCNB1 | MYBL2 | PTRPC, EOMES, TPSB2, TPSB1, MS4A2, KIR3DL2, CD3E | |
| 813 | 66 | ||||||
* OM corresponds to the OncoMasTR score, RS corresponds to the Oncotype DX Recurrence Score, EP corresponds to the EndoPredict score and TILs corresponds to the Tumor Infiltrating Leukocytes signature.
Correlation coefficient r among the four signatures * **.
| Signatures | Overall | Lowest | Highest |
|---|---|---|---|
| OM vs. RS |
| ||
| OM vs. EP |
| ||
| RS vs. EP |
| ||
| OM vs. TILs |
| ||
| EP vs. TILs |
| ||
| RS vs. TILs |
|
* Overall corresponds to the average of the seven datasets; Lowest and Highest correspond to the minimum and maximum, respectively. ** OM corresponds to the OncoMasTR score, RS corresponds to the Oncotype DX Recurrence Score, EP corresponds to the EndoPredict score and TILs corresponds to the Tumor Infiltrating Leukocytes signature.
Figure 2Correlation between risk scores by dataset. (a) OM vs. RS; (b) OM vs. EP; (c) RS vs. EP; (d) OM vs. TILs; (e) EP vs. TILs; (f) RS vs. TILs.
Odds ratio ( confidence intervals) for pCR by risk score * **.
| Signature | Odds Ratio ( | Model | |
|---|---|---|---|
| Univariable Analysis | |||
| OM |
| OM | |
| RS | < | RS | |
| EP | < | EP | |
| TILs |
| TILs | |
| Bivariable Analysis (adjusted for dataset or TILs) | |||
| OM | < | OM + Dataset | |
| RS | < | RS + Dataset | |
| EP | < | EP + Dataset | |
| TILs |
| TILs + Dataset | |
| OM |
| OM + TILs | |
| TILs |
| ||
| RS | < | RS + TILs | |
| TILs |
| ||
| EP | < | EP + TILs | |
| TILs |
| ||
| Trivariable Analysis (adjusted for dataset and TILs) | |||
| OM |
| OM + TILs + Dataset | |
| TILs |
| ||
| RS | < | RS + TILs + Dataset | |
| TILs |
| ||
| EP | < | EP + TILs + Dataset | |
| TILs |
| ||
* Odds ratio is for a 1 standard deviation increase in risk score. ** OM corresponds to the OncoMasTR score, RS corresponds to the Oncotype DX Recurrence Score, EP corresponds to the EndoPredict score and TILs corresponds to the Tumor Infiltrating Leukocytes signature.
Figure 3Predicted probability of pCR by risk score in 7 datasets (5 datasets missing ZNF367).
Figure 4Predicted probability of pCR by risk score in (a) datasets with complete OM genes (2 datasets); (b) datasets with incomplete OM genes (5 datasets missing ZNF367).
Figure 5Predicted probability of pCR by OM risk score using different dataset groups. Green line complete OM genes (2 datasets); Orange line incomplete OM genes (5 datasets missing ZNF367); Blue line combined datasets (7 datasets).
Deviance statistic by model *.
| Model | Null Deviance | df Null | LogLik | AIC | BIC | Deviance | df Residual |
|---|---|---|---|---|---|---|---|
| Univariable Analysis | |||||||
| OM | 457.95 | 812 | −221.16 | 446.33 | 455.73 | 442.33 | 811 |
| RS | 457.95 | 812 | −216.89 | 437.79 | 447.19 | 433.79 | 811 |
| EP | 457.95 | 812 | −219.27 | 442.53 | 451.93 | 438.53 | 811 |
| TILs | 457.95 | 812 | −225.80 | 455.59 | 464.99 | 451.59 | 811 |
| Bivariable Analysis (adjusted for dataset or TILs) | |||||||
| OM + Dataset | 457.95 | 812 | −215.84 | 447.68 | 485.29 | 431.68 | 805 |
| RS + Dataset | 457.95 | 812 | −211.59 | 439.18 | 476.78 | 423.18 | 805 |
| EP + Dataset | 457.95 | 812 | −213.94 | 443.89 | 481.49 | 427.89 | 805 |
| TILs + Dataset | 457.95 | 812 | −220.55 | 457.09 | 494.70 | 441.09 | 805 |
| OM + TILs | 457.95 | 812 | −218.65 | 443.30 | 457.41 | 437.30 | 810 |
| RS + TILs | 457.95 | 812 | −215.22 | 436.44 | 450.55 | 430.44 | 810 |
| EP + TILs | 457.95 | 812 | −217.86 | 441.71 | 455.82 | 435.71 | 810 |
| Trivariable Analysis (adjusted for dataset and TILs) | |||||||
| OM + TILs + Dataset | 457.95 | 812 | −213.21 | 444.43 | 486.73 | 426.43 | 804 |
| RS + TILs + Dataset | 457.95 | 812 | −209.80 | 437.60 | 479.90 | 419.60 | 804 |
| EP + TILs + Dataset | 457.95 | 812 | −212.40 | 442.80 | 485.11 | 424.80 | 804 |
* OM corresponds to the OncoMasTR score, RS corresponds to the Oncotype DX Recurrence Score, EP corresponds to the EndoPredict score and TILs corresponds to the Tumor Infiltrating. Leukocytes signature.