Introduction
Breast cancer is the most frequently diagnosed female cancer in the United States with a lifetime risk of 12% and an expected number of 268,600 new cases and 41,760 deaths in 2019 (American Cancer Society
2019a). Triple-negative breast cancer (TNBC) occurs in 12–17% of breast cancer and is a subtype that does not express estrogen receptor (ER), progesterone receptor (PR) or human epidermal growth factor receptor 2 (HER2) (Foulkes et al.
2010). TNBC is an aggressive disease with high rates of metastasis and/or recurrence and has worse prognosis compared to HER2 + and ER + subtypes. Since TNBC patients do not respond to hormonal treatment or HER2-directed therapy, treatment options are restricted to chemotherapy such as platinum/taxane or alkylating agents.
Ovarian cancer represents the fifth most frequently diagnosed female cancer in the United States with a lifetime risk of 1.3% and an estimated number of 22,530 new cases and 13,980 deaths in 2019 (American Cancer Society
2019b). Advanced stage high-grade serous ovarian cancer (HGSOC) occurs in 70% of these patients (Koonings et al.
1989). Standard treatment for HGSOC consists of surgery followed by platinum/taxane chemotherapy. Despite these measures, the prognosis remains grim. 25% of HGSOC recur within the first 6 months after treatment and a 5-year overall survival (OS) of 31% has been reported (Jemal et al.
2009).
On the genomic level, TNBC and HGSOC share similar alterations, including widespread genomic instability, p53 mutations, deficiency in DNA damage repair and homologous recombination as well as PI3-kinase pathway activation (Cancer Genome Atlas Network
2012; Bell et al.
2011). Prior analyses indicate that PI3-kinase suppression can further inhibit homologous DNA double-strand break repair by impairing the non-oxidative pentose phosphate pathway (PPP) which physiologically provides ribose-5-phosphate for nucleoside synthesis (Hu et al.
2016). This, along with preclinical data derived from a PDX mouse model (Juvekar et al.
2012), provides the rationale to examine buparlisib and olaparib as a dual strategy to block PI3-kinase signaling and DNA repair in both diseases.
We recently assessed the safety and efficacy of this approach in the context of a multicenter phase I trial for patients with recurrent TNBC and HGSOC. Clinical responses in this study were observed in 28% of TNBC and in 29% of HGSOC patients (Matulonis et al.
2017).
Over the past years, the emergence of next-generation sequencing (NGS) technologies has dramatically transformed our ability to comprehensively assess genomic features and their impact on cancer pathogenesis and outcome. Amongst others, NGS allows for the study of fusion genes which result from translocations, interstitial deletions or chromosomal inversions of two separate genes (Mertens et al.
2015).
These genes can be therapeutically relevant if they result in constitutive activation of fused oncogenes or repression of fused tumor suppressor genes. This is exemplified by the oncogenic
BCR–
ABL1 fusion gene, which was first detected in patients with chronic myelogenous leukemia (CML). The inhibition of BCR–ABL1 by the tyrosine kinase inhibitor imatinib led to dramatically improved molecular responses and survival of CML patients (Roy et al.
2006). Fusion genes have also been reported in solid tumors, e.g.,
TMPRSS2‐
ERG in prostate cancer,
EML4‐
ALK in lung cancer and
EWS‐
FL1 in Ewing’s sarcoma (Tomlins et al.
2005; Soda et al.
2007; Owen et al.
2008). In female cancers, the
ETV6‐
NTRK3 fusion gene has previously been described, but its prevalence is exclusively limited to secretory breast cancer in which it may be detected in > 90% of all cases (Tognon et al.
2002). The prevalence and therapeutic potential of fusion genes in TNBC and HGSOC remain unexplored.
In the present study, we investigate the fusion gene landscape in the transcriptome of 18 TNBC and HGSOC patients who were treated with buparlisib and olaparib in the aforementioned phase I trial using RNA sequencing. We identify fused genes, assess in silico whether the resulting product is still functional, and investigate whether fusion genes result in differential expression of the respective genes involved. We correlate our findings with the reported clinical outcomes and evaluate if fusion genes are associated with clinical outcomes.
Discussion
In this study, transcriptome sequencing was applied to identify gene fusions in a cohort of 18 TNBC and HGSOC patients. Fusion events were detected by the use of the FusionCatcher algorithm, a tool validated to confirm true-positive gene fusions with reported filtering rates of ~ 40% (Nicorici et al.
2014; Engqvist et al.
2018; Parris et al.
2018). To further minimize the number of false-positive events in our analysis, we applied additional filtering steps. In total, this resulted in a number of 156/792 (20%) fusions which were kept for further exploration. This number compares to a similar filtering strategy reported in a 2018 study by Fimereli and colleagues, which reported a fraction of 316/1222 (26%) true fusion events identified by the deFuse algorithm with Ensemble release 62 (reference genome hg19, 22).
The mean number of fusion transcripts per patient in our study was reported at 8.7 ± 1.9 (± SEM). The prevalence of fusion genes was not significantly different between both tumor types (
P = 0.62). Previous reports using FusionCatcher have reported a mean rate of 132.7 ± 31.0 (± SEM, range 12–613) and 34.7 ± 4.4 (± SEM, range 0–266) fusion events per sample in breast and ovarian cancers, respectively (Engqvist et al.
2018; Parris et al.
2018). It must be noted that the cohorts in those studies were not exclusively restricted to TNBC and HGSOC and are thus not entirely comparable to our analysis. Similarly, Fimereli and colleagues did not preselect their breast cancer cohort for TNBC patients and observed that the number of fusion genes per sample ranged between 0 and 31 with a mean of 6.7 fusion genes, noting the highest prevalence in HER2-positive tumors, which were not part of our study (Fimereli et al.
2018).
Overall, 109/156 (68%) fusion genes in our study had one gene partner with a non-CDS, but only 7/156 (4%) were confirmed to be CDS-complete. Engqvist and colleagues recently reported a comparable rate of 76% non-CDS fusion genes in a cohort of 96 early-stage ovarian cancer patients (Engqvist et al.
2018). A similar rate of 86% non-CDS fusion genes has been reported by Parris and colleagues for a cohort of 185 breast cancer patients (Parris et al.
2018). Our data thus suggest that non-CDS fusion gene partners seem to be similarly prevalent in TNBC and HGSOC as previously confirmed for the aforementioned unselected populations of breast and ovarian cancers.
It has been described that the rate of recurrent fusion genes in breast and ovarian cancers is low and may be even more limited in tumors with high genomic instability (Mertens et al.
2015; Yoshihara et al.
2015). Correspondingly, only 44/156 (28%) fusion genes in our cohort were detected in more than two patients. None of these fusion genes have been previously detected in the TCGA cohort for breast and ovarian cancers (Yoshihara et al.
2015). At the same time, 59/88 (67%) of the individual genes we identified had also been reported by Yoshihara and colleagues in their extensive interrogation of 4366 tumor samples (Yoshihara et al.
2015). Our analysis thus supports prior studies indicating that the majority of gene fusions in epithelial cancers are most likely private passenger events with low recurrence across samples (Mertens et al.
2015).
The majority of fusion genes in our study involved at least one partner gene located on chromosome 11. Such chromosomal hotspots for fusion genes have been reported. The study by Fimereli and colleagues has observed fusion hotspots in breast cancer on chromosomes 17, 8 and 20 (Fimereli et al.
2018). Similar to our observation, the majority of fusion transcripts in the studies by Engqvist et al. (
2018) and Parris et al. (
2018) equally involved chromosome 11 as predominant fusion hotspot. This striking relationship was mostly attributable to fusion transcripts involving the lncRNA
MALAT1 located on chromosome 11.
Long non-coding RNAs are defined by having a length exceeding 200 nucleotides (Mendell
2016). The human genome encodes many thousands of these lncRNAs but their role in cancer remains to be comprehensively characterized.
MALAT1 was one of the first human lncRNAs to be discovered in samples of metastatic lung cancer cells (Ji et al.
2003). Since then, it has been shown to be associated with metastasis and poor survival in multiple malignancies including breast cancer (Gutschner et al.
2013). Its exact molecular function, however, still remains poorly understood.
MALAT1 fusion genes were previously detected in breast cancer and ovarian cancer samples (Engqvist et al.
2018; Parris et al.
2018). In these samples,
MALAT1 was determined to be highly promiscuous with over 400 partner genes, indicating that the majority of
MALAT1 fusions may occur at the RNA level (Parris et al.
2018).
In our cohort, MALAT1 was involved in 97/156 (62%) fusion genes and partnered with 68 different gene partners. 55/74 (74%) fusion genes in TNBC and 42/82 (51%) fusion genes in HGSOC involved MALAT1 as one of their partnering genes. Overall, MALAT1 fusions were detectable in six TNBC and seven HGSOC patients. Since lncRNAs do not generate a corresponding fusion protein but may influence the expression of the respective fusion partner, further research is necessary to elucidate their role for tumor formation.
The expression of partner genes involved in gene fusions may be substantially altered once fused to a partner gene with promoter activity (Juric et al.
2007). To examine how fusion genes affected differential gene expression of both partner genes in our cohort, we next performed differential gene expression analysis for the 19 most common fusion partner genes in our cohort. Among these,
FOXP1,
MUC16 and
DST showed a significantly altered expression in those patients who carried a respective fusion transcript as compared to those without. Notably, and in contrast to prior reports in ovarian cancer, no such relationship was observed for
MALAT1 (Engqvist et al.
2018).
MUC16 is a mucin family gene that codes for Cancer Antigen 125 (CA-125). CA-125 has been used to monitor ovarian cancer in the clinic for many years (NIH consensus conference
1995). Expectedly,
MUC16 was determined to be a frequent driver fusion transcript in the ovarian cancer study by Engqvist and colleagues (Engqvist et al.
2018) and was similarly prevalent in 3/9 (33%) of HGSOC patients in our cohort.
The most notable candidate gene in our study, however,
FOXP1, was involved in fusion genes of a total of four TNBC patients (one case with two detectable
FOXP1 fusion genes) and one HGSOC patient. The presence of
FOXP1 fusion genes corresponded to a significant overexpression of
FOXP1. Correlation studies with clinical endpoints need to remain exploratory, mostly since only one HGSOC patient was tested positive for carrying a
FOXP1 fusion gene. However, the median OS in
FOXP1 fusion positive patients was 17.2 years as compared to a median OS of 6.2 years in
FOXP1 fusion negative patients (
P = 0.08). The potential role of
FOXP1 as a prognostic marker in oncology remains controversial. High
FOXP1 expression has previously been linked to metastasis and poor five-year OS in a cohort of 101 non-small cell lung cancer patients (Feng et al.
2012). At the same time, other studies have reported an association between
FOXP1 overexpression and inferior outcome in the context of hematologic malignancies such as follicular lymphoma and diffuse-large B-cell lymphoma (Mottok et al.
2018; Barrans et al.
2004).
Our observation may be in line with previous studies in breast cancer that observed high
FOXP1 protein expression to be a favorable prognostic marker in patients with estrogen receptor (ER)-positive breast cancer (Bates et al.
2008; Fox et al.
2004; Rayoo et al.
2009). Our analysis expands the scope of these latter studies by investigating the presence of
FOXP1 fusion genes in TNBC and HGSOC. Notably, as 83% of the identified
FOXP1 fusion genes in our cohort have been detected in TNBC patients, we conclude that
FOXP1 may act as a tumor suppressor independently of ER expression. The correlation detected in this study should be treated with caution given the small sample size inherent to a phase I study. Similarly, the comparison between fusion-positive (
n = 5) and fusion-negative (
n = 13) patients was not balanced in numbers and thus biased for a greater variation (
P = 0.02). More comprehensive analyses will be needed to confirm the prognostic value of
FOXP1 fusion genes.
The limited sample size in our study remains an inevitable shortcoming of this analysis. Tumor tissue from initial diagnosis was only available for 18/69 patients of the entire study cohort meaning that our analysis might not have been powered to detect significant differences. It must also be noted that, despite its merits and meticulous filtering, RNA-seq may not detect some fusion genes including those involving non-transcribed enhancer or
promoter elements (Kim and Salzberg
2011). Future approaches will thus have to complement transcriptome analysis by whole-genome-sequencing and RT-PCR.
In summary, our analysis provides the first comprehensive analysis of the fusion gene landscape in a homogeneously treated cohort of TNBC and HGSOC patients. We provide evidence for the low frequency of recurrent fusion genes in both cancer types. The lncRNA MALAT1 was a highly prevalent fusion partner in our analysis, but larger studies will have to further determine its potential as prognostic biomarker in TNBC and HGSOC. Interestingly, three fusion gene partners showed a significantly altered expression in patients carrying the respective fusion. Among these, FOXP1 fusions seem to be associated with a favorable prognosis in TNBC and HGSOC patients. Such observations may help to increase our understanding on the role of fusion genes in female cancer. This seems particularly relevant for cancers with limited treatment options such as TNBC and HGSOC, for which a better mechanistic understanding of how fusion genes interfere with functional gene expression may provide vital clues to finding new and innovative therapeutic strategies.
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