Evgeny Yakirevich1, Nimesh R Patel1. 1. Department of Pathology, Rhode Island Hospital and Alpert Medical School at Brown University, Providence, RI, USA.
Cancer treatment has been revolutionized by characterizing the genomic landscape of tumors and developing targeted therapies through The Cancer Genome Atlas (TCGA) and comprehensive genomic profiling (CGP). Therapeutic antibodies against immune checkpoint inhibitors (ICPIs) cytotoxic T-lymphocyte-associated protein (CTLA-4), programmed death cell protein 1 (PD-1) and programmed death-ligand 1 (PD-L1) show considerable promise in a variety of malignancies, including renal cancer (1); however, durable clinical benefit is rarely achieved. Therefore, new avenues to guide immunotherapy-based treatments are a critical but currently unmet need. The relationship between tumor genotype and the biology of the immune microenvironment driving responses to ICPIs is not completely understood. A key challenge is the identification of tumor intrinsic/tumor microenvironment (TME) characteristics that can predict treatment response. Tumor mutational burden (TMB) is one such emerging approach in many cancers, including renal cell carcinoma (RCC). Extensive immunogenomic analysis of 336 clear cell RCC (CCRCC) patients from TCGA dataset reported by Zhang et al. in a previous issue of the Annals of Translational Medicine provides additional evidence of the relationship between TMB and immune infiltrates in CCRCC (2).
TMB and tumor neoantigens in RCC
The prevalence of somatic mutations, which include nucleotide substitutions and small insertions/deletions, is highly variable between and within cancer types, ranging from 0.001 per megabase (Mb) to more than 400 per Mb (3). On one side of the spectrum are tumors with low TMB, such as prostate and pancreatic cancer, and certain childhood tumors. On the other side, are tumors with high TMB, including genomically unstable tumors related to chronic mutagenic exposure, such as non-small cell lung carcinoma (NSCLC) and melanoma, or mismatch repair deficient tumors, such as microsatellite unstable (MSI) colorectal and noncolorectal cancer. Certain mutational signatures are associated with the age of the patient at cancer diagnosis; in general, TMB increases with patient age, showing a 2.4-fold difference between age 10 and 90 years (4).RCC is a tumor with a relatively low TMB, with a median of 1.1 mutations per Mb (3,5). Within the main RCC subtypes, chromophobe RCC carries the lowest TMB (<1 mutation per Mb), while CCRCC and papillary RCC exhibit a similar range of TMB (3). As compared to more hypermutated cancers, even the most heavily mutated RCC shows a relatively low TMB. Within each tumor type, including RCC, there is a substantial subset of cases with high TMB (4).TMB is most commonly estimated based on next generation sequencing (NGS) of formalin-fixed paraffin-embedded (FFPE) tissue samples using whole genome sequencing (WGS), whole exome sequencing (WES), and various CGP targeted gene panels. Although there is currently a lack of standardization, TMB is often calculated as the total number of single nucleotide variants (SNVs) and small insertions and deletions (indels) per one million bases (Mb) in a tumor based on NGS data. As with many studies based on WES data, Zhang et al. classified the CCRCC samples from TCGA dataset into low- and high-TMB groups according to median cutoff (2). In the clinical setting, CGP with targeted panels has proved to be suitable for TMB estimation. Chalmers et al. have demonstrated that a CGP assay targeting approximately 1.1 Mb of coding genome can accurately assess TMB compared with WES and used 20 mutations/Mb as a cutoff for high-TMB (4). However, there is also lack of standardization for differentiating high- from low-TMB.The vast majority of mutations in solid tumors included for calculation of TMB are SNVs, while indels account for approximately 4% in the TCGA pan-cancer cohort (6). Currently, there is no consensus as to whether gene fusions should be included in the calculation of TMB. Chalmers et al. exclude recurrent mutations occurring in tumors and truncating mutations of tumor suppressor genes from their TMB calculation to avoid overestimation of TMB, since gene panels are usually heavily targeted at recurrently mutated genomic regions (4).Zhang et al. have shown that SNVs occur more frequently than insertions or deletions in CCRCC, with C>T being the most common substitution (2). Based on the predominance of C>T substitutions, CCRCC are classified as signatures 1B and 6 tumors, with 1B observed in the majority (19 of 30) of cancer types (3). In another report, analysis of TCGA dataset demonstrates that in sharp contrast to other solid tumors, RCCs harbor the highest indel rate as a proportion of their total TMB and the highest overall number of indels, more than double the median proportion of indel mutations in all other cancer types (6). This unique feature is characteristic of clear cell RCC, papillary RCC, and chromophobe RCC, suggesting a possible tissue-specific mutational process contributing to the acquisition of indels in renal cancers. Indels may cause a frameshift, creating a novel open reading frame and producing a large amount of highly immunogenic neoantigenic peptides. Compared with SNV mutations, indels can generate three times more high-binding affinity neoantigens and nine times more mutant-specific binders. Immune gene expression analyses in the RCC cohort have revealed that the presence of mutant-specific neoantigens is associated with upregulation of antigen presenting genes, which strongly correlates with T-cell activation as measured by CD8-positive expression (6). However, more recent analysis has failed to confirm a higher frequency of indels in a larger randomized cohort of advanced metastatic RCC treated with ICPIs (7). Therefore, additional mechanisms of immunogenicity in RCC warrant further investigation. Among them are neoantigens from endogenous retroviruses (ERVs) integrated into the genome, which may be reactivated in tumors and contribute to anti-tumor immunity (8). A human ERV type E was found to be selectively expressed in most cases of CCRCC (8,9). Occasional cases of RCC harbor human papilloma virus (HPV) and hepatitis B virus (HBV) sequences (8,10). Although viral antigens provide new targets for T-cells, they do not contribute to high TMB status. Another potential source of tumor antigens is a unique set of genes, known as cancer testis (CT) antigens, which are not expressed in healthy tissues, except germ cells, but are aberrantly expressed in tumors and are associated with antigen-specific responses in patients harboring these tumors. One of these CT antigens, CSAG2, may be involved in anti-tumor immunity in CCRCC (8).
Predictive and prognostic role of TMB in RCC
Across different tumor types, tumors with high TMB, such as melanoma, non-small cell lung cancer (NSCLC), and urothelial cancer, are associated with improved response to ICPIs (11-13). In contrast, less-mutated tumor types, such as pancreatic and prostate cancer, are not responsive to immune blockade and are not considered as candidates for immunotherapy. Mechanistically, this may be explained by formation of larger number of neoantigens in tumors with higher TMB, which elicit T cell immunoreactivity and sensitivity to ICPIs (14). The latter are referred to as “hot tumors” (15). RCC is breaking the rule, being a tumor with a relatively low TMB, approximately ten times lower than melanoma, but manifesting response to ICPIs similarly to melanoma. This is why there are now 3 FDA-approved combination therapies with ICPIs in metastatic kidney cancer (1). One plausible hypothesis is that despite low overall TMB in RCC, frequent indel mutations cause a frameshift to create a large amount of neoantigenic peptides, which are more potent than those produced by the same number of SNVs (6). In patients with melanoma treated with ICPIs, frameshift indel burden appears to be a better predictor of response as compared with SNVs (6). Additional studies are needed in order to directly investigate the relationship between the indel mutation load and response to ICPIs in RCC, as indel mutation burden may be a potential biomarker of response to checkpoint blockade.Genomic data from the large cohort of patients with advanced cancers of different types treated with ICPIs have demonstrated the continuous association between higher TMB and superior overall survival (OS) (12). However, the trend of improved survival was observed only in RCC when high TMB was defined as the top 20% (cutoff 5.9 mutations/Mb in RCC). Decreasing the cutoff to the top 30% (4.9 mutations/Mb) shifted hazard ratio to shorter OS. Similarly, Zhang et al. have shown that high TMB correlates with poor survival in TCGA patients who were not treated with ICPIs, since high TMB occurs in high-grade advanced stage tumors (2). When another cohort of metastatic RCC patients who did not receive ICPIs was analyzed, no prognostic benefit was observed in the high TMB group (12). In a phase II clinical trial of atezolizumab (anti-PD-L1) in patients with metastatic RCC, TMB and neoantigen burden were not associated with progression free survival (7). Therefore, higher TMB does not appear to improve OS or predict benefit from ICPIs in patients with metastatic RCC.
Immune signatures of RCC
RCC, along with other tumors, such as melanoma, NSCLC, and head and neck carcinoma, contain high levels of tumor infiltrating lymphocytes and are therefore considered immunologically hot tumors, which are more likely to trigger a strong immune response (15). Based on the analysis of a T-cell-inflamed gene expression signature, CCRCC was found to be the most T-cell inflamed cancer across 31 solid tumor types from the TCGA dataset (16). Immune cytolytic activity as defined by transcript levels of 2 key cytotoxic effectors of activated CD8+ T-cells, granzyme A and perforin, was the highest in CCRCC among 18 solid tumor types (8).Historically, immune infiltrates in RCC were evaluated by immunohistochemical or flow cytometry analyses of the tumor tissues. The type (CD8+ cells), density, and location (intratumoral versus peritumoral) are considered critical factors in the assessment of immune infiltrates and in the determination of their prognostic impact. The TME in RCC is different from that of other tumor types. In most cancers, the increased number of cytotoxic CD8+ tumor-infiltrating lymphocytes is associated with improved prognosis (17). Paradoxically, both intratumoral and peritumoral CD8+ T-cell density in RCC is associated with poor outcome, possibly due to a positive association between the number of lymphocytes and tumor grade (18,19). High expression of B-cell signatures and decreased B-cell receptor (BCR) diversity predicts poor survival as well (20).While immunohistochemistry or flow cytometry suffer from limitations in phenotypic markers, computational methods for quantifying cell fractions from bulk tissue gene expression profiles can accurately estimate the immune composition of tumor tissue. Zhang et al. utilized CIBERSORT, a newly developed in silico algorithm for estimation of specific cell types in a mixed cell population using RNA-seq or microarray gene expression data (21). In contrast to previous studies (18,19), lower levels of CD8+ T cells and macrophages correlated with poor survival outcomes in CCRCC in the Zhang et al. study (2). These differences may be explained in part by transcriptomic analysis of the entire tumor sample versus protein expression analysis within different tumor compartments (intratumoral, peritumoral).
TMB and immune signatures in RCC
Data provided by Zhang et al. indicate that TMB may be closely related with the TME. Based on the expression levels of immune-related genes and gene sets, Zhang et al. compared 22 immune fractions between low- and high-TMB groups. Paradoxically, higher mutation rates in RCC are associated with immunologically cold (non-T-cell inflamed) phenotype. The infiltration levels of CD8+ T cells, CD4+ memory resting T cells, M1 and M2 macrophages, as well as dendritic resting cells in the high-TMB group were lower compared with that in the low-TMB group. In addition, the high-TMB group showed lower levels of immune genes mainly involved in neutrophil mediated immunity (2).In another study of 32 cancer types from TCGA dataset, Wang and Li compared expression levels of immune-related genes and gene-sets between high- and low-TMB groups in each cancer type using a different arbitrary cutoff for high TMB (scores higher than the third quartile value) (22). They found that association between TMB and infiltration densities of 16 different immune cell subpopulations was cancer-type dependent. In 12 cancer types, including CCRCC, expression levels of the immune cell subpopulation gene set were significantly higher in the lower-TMB group, as opposed to one cancer type in which expression levels of this gene-set were significantly higher in the higher-TMB group (22). The expression levels of the tumor-infiltrating lymphocytes (TILs) gene-set were significantly higher in the higher-TMB group in 9 cancer types, including CCRCC, while significantly higher in the lower-TMB group of 2 cancer types. Moreover, expression levels of immune checkpoint, cytokine and cytokine receptors, and pro-inflammatory genes were significantly higher in the lower-TMB group as opposed to higher-TMB group in CCRCC and several other cancer types (22). Therefore, the association between TMB and the immune signature is cancer-type dependent. In CCRCC and several other cancer types, high TMB appears to inhibit immune cell infiltration, creating immunologically cold phenotype, consistent with the findings of Zhang et al. (2). However, in a group of CCRCC with low TMB, an upregulated immune signature can potentially mediate anti-tumor immune response even with a limited number of neoantigens. One possible therapeutic strategy for high-TMB tumors that are immunologically cold may be improving ICPI blockage by promotion of intratumoral T-cell infiltration via oncolytic virotherapy (23).The mechanisms governing exclusion of T-cells from TME are under intense study. Tumor-intrinsic WNT/β-catenin signalling mediates immune exclusion in melanoma and across other human cancers with high TMB (16). Among 31 tumor types, differences in percentages of Wnt/β-catenin-activated patients between immunologically cold and hot tumors were most striking in CCRCC and reached 81% (16). MAPK signaling is another pathway associated with cancer cell immune evasion. In triple-negative breast cancer, potential activating mutations of MAPK signaling have been correlated with lower density of TILs in residual disease following neoadjuvant therapy (24). As reported by Zhang et al., the higher TMB RCC group correlated with Wnt/β-catenin and MAPK signaling, supporting this mechanism of immune exclusion in high-TMB RCC group. These data provide a strong rationale for the development of pharmacologic inhibitors of these pathways with the aim of restoring immune cell infiltration and augmenting immunotherapy.
Conclusions and future perspectives
There is accumulating evidence that higher TMB in RCC is associated with immune cell exclusion and creation of an immunologically cold phenotype. Therefore, the search for predictive biomarkers for immunotherapy may include a combination of TMB and immune signatures. Modulation of TME may be a reasonable therapeutic strategy in order to orchestrate genomic and immunophenotypic status. It is still to be determined whether CGP panels for clinical specimens should be expanded to evaluate immune signatures in addition to genomic analysis of tumor-intrinsic alterations. Integration of RNA- and DNA-sequencing is emerging; the addition of immuno-oncology analyses in assays such as Tempus xT (including TMB, PD-1/PD-L1 expression, microsatellite instability, and research-use only gene expression analysis of the TME and neoantigen prediction) may help to clarify this question (25). The role of TMB and TME in identifying patient groups who may benefit from immunotherapy should be determined in future randomized control trials. Combination strategies may ultimately emerge to convert high TMB non-T cell-inflamed tumors into T cell-inflamed tumors as a means to sensitize tumors to therapies dependent on T-cell killing.
Authors: Sherene Loi; Sathana Dushyanthen; Paul A Beavis; Roberto Salgado; Carsten Denkert; Peter Savas; Susan Combs; David L Rimm; Jennifer M Giltnane; Monica V Estrada; Violeta Sánchez; Melinda E Sanders; Rebecca S Cook; Mark A Pilkinton; Simon A Mallal; Kai Wang; Vincent A Miller; Phil J Stephens; Roman Yelensky; Franco D Doimi; Henry Gómez; Sergey V Ryzhov; Phillip K Darcy; Carlos L Arteaga; Justin M Balko Journal: Clin Cancer Res Date: 2015-10-29 Impact factor: 12.531
Authors: Samra Turajlic; Kevin Litchfield; Hang Xu; Rachel Rosenthal; Nicholas McGranahan; James L Reading; Yien Ning S Wong; Andrew Rowan; Nnennaya Kanu; Maise Al Bakir; Tim Chambers; Roberto Salgado; Peter Savas; Sherene Loi; Nicolai J Birkbak; Laurent Sansregret; Martin Gore; James Larkin; Sergio A Quezada; Charles Swanton Journal: Lancet Oncol Date: 2017-07-07 Impact factor: 41.316
Authors: Antoni Ribas; Reinhard Dummer; Igor Puzanov; Ari VanderWalde; Robert H I Andtbacka; Olivier Michielin; Anthony J Olszanski; Josep Malvehy; Jonathan Cebon; Eugenio Fernandez; John M Kirkwood; Thomas F Gajewski; Lisa Chen; Kevin S Gorski; Abraham A Anderson; Scott J Diede; Michael E Lassman; Jennifer Gansert; F Stephen Hodi; Georgina V Long Journal: Cell Date: 2017-09-07 Impact factor: 41.582
Authors: David F McDermott; Mahrukh A Huseni; Michael B Atkins; Robert J Motzer; Brian I Rini; Bernard Escudier; Lawrence Fong; Richard W Joseph; Sumanta K Pal; James A Reeves; Mario Sznol; John Hainsworth; W Kimryn Rathmell; Walter M Stadler; Thomas Hutson; Martin E Gore; Alain Ravaud; Sergio Bracarda; Cristina Suárez; Riccardo Danielli; Viktor Gruenwald; Toni K Choueiri; Dorothee Nickles; Suchit Jhunjhunwala; Elisabeth Piault-Louis; Alpa Thobhani; Jiaheng Qiu; Daniel S Chen; Priti S Hegde; Christina Schiff; Gregg D Fine; Thomas Powles Journal: Nat Med Date: 2018-06-04 Impact factor: 53.440
Authors: E Cherkasova; E Malinzak; S Rao; Y Takahashi; V N Senchenko; A V Kudryavtseva; M L Nickerson; M Merino; J A Hong; D S Schrump; R Srinivasan; W M Linehan; X Tian; M I Lerman; R W Childs Journal: Oncogene Date: 2011-05-23 Impact factor: 9.867
Authors: Nike Beaubier; Martin Bontrager; Robert Huether; Catherine Igartua; Denise Lau; Robert Tell; Alexandria M Bobe; Stephen Bush; Alan L Chang; Derick C Hoskinson; Aly A Khan; Emily Kudalkar; Benjamin D Leibowitz; Ariane Lozachmeur; Jackson Michuda; Jerod Parsons; Jason F Perera; Ameen Salahudeen; Kaanan P Shah; Timothy Taxter; Wei Zhu; Kevin P White Journal: Nat Biotechnol Date: 2019-09-30 Impact factor: 68.164
Authors: Michael S Lawrence; Petar Stojanov; Paz Polak; Gregory V Kryukov; Kristian Cibulskis; Andrey Sivachenko; Scott L Carter; Chip Stewart; Craig H Mermel; Steven A Roberts; Adam Kiezun; Peter S Hammerman; Aaron McKenna; Yotam Drier; Lihua Zou; Alex H Ramos; Trevor J Pugh; Nicolas Stransky; Elena Helman; Jaegil Kim; Carrie Sougnez; Lauren Ambrogio; Elizabeth Nickerson; Erica Shefler; Maria L Cortés; Daniel Auclair; Gordon Saksena; Douglas Voet; Michael Noble; Daniel DiCara; Pei Lin; Lee Lichtenstein; David I Heiman; Timothy Fennell; Marcin Imielinski; Bryan Hernandez; Eran Hodis; Sylvan Baca; Austin M Dulak; Jens Lohr; Dan-Avi Landau; Catherine J Wu; Jorge Melendez-Zajgla; Alfredo Hidalgo-Miranda; Amnon Koren; Steven A McCarroll; Jaume Mora; Brian Crompton; Robert Onofrio; Melissa Parkin; Wendy Winckler; Kristin Ardlie; Stacey B Gabriel; Charles W M Roberts; Jaclyn A Biegel; Kimberly Stegmaier; Adam J Bass; Levi A Garraway; Matthew Meyerson; Todd R Golub; Dmitry A Gordenin; Shamil Sunyaev; Eric S Lander; Gad Getz Journal: Nature Date: 2013-06-16 Impact factor: 49.962
Authors: Eleonora A Braga; Marina V Fridman; Elena A Filippova; Vitaly I Loginov; Irina V Pronina; Alexey M Burdennyy; Alexander V Karpukhin; Alexey A Dmitriev; Sergey G Morozov Journal: Int J Mol Sci Date: 2021-10-17 Impact factor: 5.923