| Literature DB >> 31988290 |
Shankha Satpathy1, Eric J Jaehnig2, Karsten Krug3, Beom-Jun Kim2, Alexander B Saltzman4, Doug W Chan2, Kimberly R Holloway2, Meenakshi Anurag2, Chen Huang2, Purba Singh2, Ari Gao2, Noel Namai2, Yongchao Dou2, Bo Wen2, Suhas V Vasaikar2, David Mutch5, Mark A Watson5, Cynthia Ma5, Foluso O Ademuyiwa5, Mothaffar F Rimawi2, Rachel Schiff2, Jeremy Hoog5, Samuel Jacobs6, Anna Malovannaya4, Terry Hyslop7, Karl R Clauser3, D R Mani3, Charles M Perou8, George Miles2, Bing Zhang2, Michael A Gillette3,9, Steven A Carr10, Matthew J Ellis11.
Abstract
Cancer proteogenomics promises new insights into cancer biology and treatment efficacy by integrating genomics, transcriptomics and protein profiling including modifications by mass spectrometry (MS). A critical limitation is sample input requirements that exceed many sources of clinically important material. Here we report a proteogenomics approach for core biopsies using tissue-sparing specimen processing and microscaled proteomics. As a demonstration, we analyze core needle biopsies from ERBB2 positive breast cancers before and 48-72 h after initiating neoadjuvant trastuzumab-based chemotherapy. We show greater suppression of ERBB2 protein and both ERBB2 and mTOR target phosphosite levels in cases associated with pathological complete response, and identify potential causes of treatment resistance including the absence of ERBB2 amplification, insufficient ERBB2 activity for therapeutic sensitivity despite ERBB2 amplification, and candidate resistance mechanisms including androgen receptor signaling, mucin overexpression and an inactive immune microenvironment. The clinical utility and discovery potential of proteogenomics at biopsy-scale warrants further investigation.Entities:
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Year: 2020 PMID: 31988290 PMCID: PMC6985126 DOI: 10.1038/s41467-020-14381-2
Source DB: PubMed Journal: Nat Commun ISSN: 2041-1723 Impact factor: 14.919
Fig. 1The Biopsy Trifecta EXTraction based proteogenomics workflow.
a In the Biopsy Trifecta EXTraction (BioTEXT) protocol, patient derived OCT-embedded core needlebiopsies are sectioned, followed up by extraction of DNA, RNA and proteins for deep-scale proteogenomics characterization and by immunohistochemistry-based imaging. b The Microscaled Proteomics (MiProt) workflow allows deep-scale proteomics and phosphoproteomics characterization with 25 μg of peptides per core-needle biopsy. MiProt uses a common reference that could be used for comparison across all samples within a single-TMT10/11 plex and across several TMT10/11 plexes spanning several core biopsies.
Fig. 2Evaluation of the BioText and MiProt workflow on preclinical PDX models.
a Non-adjacent, core needle biopsies were collected from 2 basal and 2 luminal PDX models followed by surgical removal of tumors. Proteomic and phosphoproteomic characterization of cores was performed using the MiProt workflow, and the bulk tissue was characterized using the CPTAC workflow described in Mertins et al[8]. b Venn-diagram shows the number of overlap between human and mouse or human proteins quantified in cores and bulk tissue. c Venn-diagram shows the overlap between human and mouse or human phosphosites. d Pearson correlation of TMT ratios for proteins (left) and phosphosites (right) between each sample from both cores and bulk across all 4 PDX models. e The heatmap shows the TMT ratios for key differentially regulated Luminal vs. Basal breast cancer associated proteins and phosphoproteins (average expression of identified phosphosites) identified across both bulk and cores experiments. f Gene-centric and phosphosite-centric pathway or kinase activity enrichment analysis was performed using GSEA (MSigDB “Cancer Hallmarks”, left) and PTM-SEA (PTMSigDB, right), respectively, for Luminal-Basal differences captured in bulk (y-axis) and core (x-axis) tissue. limma derived signed Log10 p-values were used to pre-rank differential features for both GSEA and PTM-SEA analysis. The pathway/phospho-signatures that are significant in both cores and bulk are indicated in brown.
Fig. 3Microscaled proteogenomics of the DP1 clinical trial.
a Overview of proteogenomics samples obtained from pre- and on-treatment core biopsies from the DP1 clinical trial. Each block indicates the data obtained from a separate core. b Microscaled proteogenomics achieves a high level of proteogenomics depth for the DP1 core needle biopsies. Table summarizing total proteogenomics coverage and numbers of mutated genes for all samples and average coverage across all analyzed cores is shown on the right. c The Venn-diagram shows the overlap between all genes identified across RNA-seq, proteomics and phosphoproteomics. d Heatmap summarizing proteogenomics features of the ERBB2 amplicon and adjacent genes at the level of CNA, RNA and protein expression. The set of genes in red make up the core of the ERBB2 amplicon and showed consistently high copy number amplification, RNA, and protein levels in all of the pCR cases (True ERBB2+ pCR set on the right) and in BCN1371 and 1369 (True ERBB2 + non-pCR set) but significantly lower protein levels in BCN1326 (False ERBB2+) and BCN1331 and BCN1335 (Psuedo ERBB2 + set). The arrow points to the amplified TOP2A gene in BCN1335. e The heatmap at the bottom shows corresponding Z-scores of RNA, protein, and phosphoprotein expression of ERBB1-4 across all 14 patients. ERBB3 protein and phosphoprotein and ERBB4 protein levels were also significantly lower in BCN1326, BCN1331 and BCN1335 than in the set of pCR cases.
Fig. 4Downregulation of ERBB2 and mTOR signaling in cases with pCR.
a Effect of anti-ERBB2 treatment on ERBB2 RNA, protein, and phosphoprotein levels for each patient with on-treatment data. p-values were calculated by paired Wilcoxon signed rank tests for on-treatment vs. pre-treatment ERBB2 expression for each group. The pCR vs. non-pCR p-values are derived from Wilcoxon rank sum tests comparing log2 fold changes of on-treatment to pre-treatment levels from pCR patients to those from non-pCR patients. For patients with multiple cores, the mean expression value was used. n = 3 for all non-pCR; n = 6 for pCR RNA or n = 7 for pCR protein and phosphoprotein. Boxplots are centered on the median and show first and third quartiles for each group. Asterisk indicates patient BCN1369 that didn’t receive Pertuzumab. b Scatter plot showing differential regulation of individual phosphosites before and after treatment in pCR and in non-pCR cases. Shown are the on-treatment vs. pre-treatment log2 fold changes in non-pCR (y-axis) vs. the log2 changes in pCR samples (x-axis) for phosphosites with p-value < 0.05 by limma analysis of differential expression in either group (n = 7 for pCR; n = 2 for non-pCR). Blue and green circles indicate phosphosites in pCR and non-pCR, respectively that show significant differential regulation in either group alone. Purple circles indicate significantly regulated phosphosites in both sets of patients. The orange diamond outlines highlight phosphosites on proteins in the KEGG ErbB signaling pathway (hsa04012). The transparency of each point reflects its significance after BH-adjustment (adjusted p < 0.05 is solid, and more transparent points have higher adjusted p-values). c PTM-SEA was applied to the signed -Log10 p-values from limma differential expression analysis of on- vs. pre-treatment phosphosite levels from pCR (upper panel) and non-pCR (lower panel) cases. The volcano plots show the Normalized Enrichment Scores (NES) for kinase signatures. Brown circles indicate signatures with significant FDR ( < 0.05).
Fig. 5Proteogenomics analysis of baseline untreated non-pCR cases.
a Outlier analysis was performed to identify differentially regulated mRNA, proteins or phosphoproteins in each pre-treatment sample from non-pCR cases relative to the set of pre-treatment samples from all pre-treated pCR cases. Shown is the ERBB2 protein distribution across all patients; brown and green bars indicate the frequencies for each protein level bin in pCR and non-pCR cores, respectively. The line shows the normal distribution of pCR samples from which the Z-score for each non-pCR sample was derived. Corresponding Z-scores levels are indicated in red. b Heatmap showing normalized enrichment scores (NES) from single sample Gene Set Enrichment Analysis (ssGSEA) of outlier Z-scores from non-pCR cases. Shown are a subset of differentially regulated pathways with false-discovery rate less than 25% (FDR < 0.25). c Heatmap showing expression levels of key immune-checkpoint and T-cell marker (CD3) genes and of RNA based immune and stroma scores from ESTIMATE, Cibersort, and xCell. d Photomicrographs showing anti-CD3 immunohistochemical staining profiles of non-pCR cases (original magnification: 20 × ). e Heatmap showing Mucin protein expression across all pre-treated patients. f WHIM8 and WHIM35 PDX models were treated with vehicle, trastuzumab, everolimus or the combination of trastuzumab and everolimus. The graph shows the mean-tumor volume at several timepoints (N = 15 (before 1 week), N = 12 (1 week to 4 weeks), N = 9 (after 4 weeks)) after tumor implantation and subsequent treatment, and error bars show standard error of mean.
Summary of proteogenomic features from non-pCR cases.
| Patient ID | RNAseq-PAM50 subtype and ER status | Druggable mutations | Differential pathways (relative to pCR cases) UP (upregulated), DOWN (downregulated) | TILs and immune microenviroment proteomics | Treatments received | |
|---|---|---|---|---|---|---|
| BCN1326 | Basal ER+ | Low ERBB2 expression | MYC UP Mitosis UP Interferon signaling UP | Infiltrating TILs PDL1 high Phospho-PD1 high | Doc, CP, T, P | |
| BCN1331 | HER2-E ER+ | Broad lower-level Low ERBB2 expression (pseudo-amplified) | ERBB2/3 UP MAPK UP PI3K UP mTOR UP Interferon signaling UP | Infiltrating TILs PD1 RNA and Phospho-PD1 high | Doc, CP, T, P | |
| BCN1335 | RNA failure ER+ | Amplicon driving Low ERBB2 expression (pseudo-amplified) | VAF = 30% | MYC UP Cell cycle UP | Peri-tumoral TILs | Doc, CP, T, P |
| BCN1371 | HER2-E ER- | Amplified | E545K VAF = 73.5% | AR transcription UP ERBB2/3 DOWN MAPK DOWN PI3K DOWN mTOR DOWN | No TILs | Doc, CP, T, P |
| BCN1369 | HER2-E ER- | Amplified | ERBB2/3 UP MAPK UP PI3K UP mTOR UP MUCIN expression UP | No TILs | Pac, T |
Doc Docetaxel, CP Carboplatin, T Trastuzumab, P Pertuzumab, Pac Paclitaxel