Sánchez-Vega F, Gotea V, Chen YC, Elnitski L. CpG island methylator phenotype in adenocarcinomas from the digestive tract: Methods, conclusions, and controversies. World J Gastrointest Oncol 2017; 9(3): 105-120 [PMID: 28344746 DOI: 10.4251/wjgo.v9.i3.105]
Corresponding Author of This Article
Laura Elnitski, PhD, Senior Investigator, Head, Genomic Functional Analysis Section, National Human Genome Research Institute, National Institutes of Health, 5625 Fishers Lane, Rockville, MD 20852, United States. elnitski@mail.nih.gov
Research Domain of This Article
Mathematical & Computational Biology
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Frontier
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This article is an open-access article which was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
Francisco Sánchez-Vega, Valer Gotea, Yun-Ching Chen, Laura Elnitski, Genomic Functional Analysis Section, National Human Genome Research Institute, National Institutes of Health, Rockville, MD 20852, United States
ORCID number: $[AuthorORCIDs]
Author contributions: Sánchez-Vega F, Gotea V, Chen YC and Elnitski L have all read and approved the final manuscript; Elnitski L developed the idea and supervised the research; Sánchez-Vega F, Gotea V and Chen YC generated and analyzed data; and all authors contributed to the writing and editing of the final manuscript; Sánchez-Vega F and Gotea V contributed equally to this work.
Conflict-of-interest statement: None.
Open-Access: This article is an open-access article which was selected by an in-house editor and fully peer-reviewed by external reviewers. It is distributed in accordance with the Creative Commons Attribution Non Commercial (CC BY-NC 4.0) license, which permits others to distribute, remix, adapt, build upon this work non-commercially, and license their derivative works on different terms, provided the original work is properly cited and the use is non-commercial. See: http://creativecommons.org/licenses/by-nc/4.0/
Correspondence to: Laura Elnitski, PhD, Senior Investigator, Head, Genomic Functional Analysis Section, National Human Genome Research Institute, National Institutes of Health, 5625 Fishers Lane, Rockville, MD 20852, United States. elnitski@mail.nih.gov
Telephone: +1-301-4510265 Fax: +1-301-4356170
Received: June 2, 2016 Peer-review started: June 6, 2016 First decision: September 2, 2016 Revised: November 3, 2016 Accepted: January 2, 2017 Article in press: January 3, 2017 Published online: March 15, 2017 Processing time: 280 Days and 10.3 Hours
Abstract
Over the last two decades, cancer-related alterations in DNA methylation that regulate transcription have been reported for a variety of tumors of the gastrointestinal tract. Due to its relevance for translational research, great emphasis has been placed on the analysis and molecular characterization of the CpG island methylator phenotype (CIMP), defined as widespread hypermethylation of CpG islands in clinically distinct subsets of cancer patients. Here, we present an overview of previous work in this field and also explore some open questions using cross-platform data for esophageal, gastric, and colorectal adenocarcinomas from The Cancer Genome Atlas. We provide a data-driven, pan-gastrointestinal stratification of individual samples based on CIMP status and we investigate correlations with oncogenic alterations, including somatic mutations and epigenetic silencing of tumor suppressor genes. Besides known events in CIMP such as BRAF V600E mutation, CDKN2A silencing or MLH1 inactivation, we discuss the potential role of emerging actors such as Wnt pathway deregulation through truncating mutations in RNF43 and epigenetic silencing of WIF1. Our results highlight the existence of molecular similarities that are superimposed over a larger backbone of tissue-specific features and can be exploited to reduce heterogeneity of response in clinical trials.
Core tip: Awareness of the CpG island methylator phenotype (CIMP) is growing for all adenocarcinomas. Here, we summarize previous work on the topic and discuss unanswered questions regarding commonalities and differences of CIMP tumors from esophageal, gastric, and colorectal adenocarcinomas, where data has been made available from the Cancer Genome Atlas. Our analysis includes a review of our pan-cancer method to stratify tumors based on CIMP and addresses the most frequent mutations found in those samples. We include new data implicating truncating mutations in RNF43 and silencing of WIF1I. We also describe in detail the methylation of CpG sites within the MLH1 promoter across these tumor types.
Citation: Sánchez-Vega F, Gotea V, Chen YC, Elnitski L. CpG island methylator phenotype in adenocarcinomas from the digestive tract: Methods, conclusions, and controversies. World J Gastrointest Oncol 2017; 9(3): 105-120
Aberrant patterns of DNA methylation occur in human cancers[1-3], with the most notable being a widespread and pronounced gain of methylation at CpG islands in tumor cells[4]. A prominent increase in global levels of CpG island methylation observed across multiple samples was first reported in a subset of patients with colorectal cancer (CRC) and it is now a clinically recognized characteristic of many types of tumor, referred to as the CpG island methylator phenotype (CIMP)[5]. In this commentary, we discuss the classification and functional ramifications of CIMP across four types of gastrointestinal adenocarcinomas (esophageal, gastric, colon and rectal), using data from The Cancer Genome Atlas (TCGA) to address lingering questions and identify novel areas of inquiry to spur future investigation. Finally, we explore CIMP’s potential application to cancer diagnostics and subtyping, while emphasizing that much remains unknown regarding the molecular mechanisms of tumor-associated DNA methylation, including CIMP generation and maintenance.
CpG islands play a crucial biological role in development and disease by acting as transcriptional regulatory elements in the genome and controlling the expression of ubiquitously expressed genes. Approximately 50% of all CpG islands are located within promoter regions[6], and approximately 70% of all annotated promoters are associated with a CpG island[7]. Hypermethylation of CpG dinucleotides within these regions results in the establishment or reinforcement of repressive chromatin and the steric occlusion of transcription factor binding[4,8], reducing gene expression. When promoters of tumor suppressor genes are methylated, repression can represent a critical “hit”, in the terminology of the double-hit theory of gene inactivation, conferring a selective advantage to affected cancer cells[9]. For example, the heterozygous silencing of BRCA1 via DNA methylation plays a critical role in breast cancer oncogenesis and tumor proliferation[10]. Other well-known examples of silencing involve MLH1 in CRCs[5,11] and MGMT silencing in gliomas[12]. In the case of MLH1, methylation-derived silencing inhibits DNA repair[11,13,14], which leads to microsatellite instability (MSI) and cascades into many other downstream functional consequences.
Researchers have identified reproducible, tissue-specific patterns of CpG island promoter hypermethylation in various types of tumors[15]. The specificity of hypermethylation appears to result from the precise targeting of CpG islands by polycomb repressors[16], resulting in the preferential deposition of DNA methyl groups during oncogenesis[17-19]. Because these patterns are frequently occurring in cancer patients, they have been used as novel, clinically relevant molecular markers for cancer diagnosis and prognosis[20]. To cite two examples, hypermethylation of the GSTP1 promoter in more than 90% of prostate adenocarcinomas has been used to improve diagnosis of this disease[21], whereas hypermethylation of SET pseudogene 9 allows researchers to differentiate among different stages of CRC[22].
The demonstration that tumors exhibiting CIMP represent a distinct clinical subtype of CRC[5] provided the first evidence that, by subdividing cancers into methylation subclasses, clinicians could potentially refine treatment outcomes. Numerous studies have since demonstrated the presence of CIMP in additional cancer types[23-25]. However, little overlap has been detected among these CIMP incarnations, indicating the tissue-specific nature of the effect. Current models indicate that tumorigenesis affects DNA methylation at CpG islands where repressive H3K27me3 modifications are already present[26], providing a more permanent layer of suppression in differentiated cells and explaining the origin of tissue-specific patterns. According to such models, aberrant DNA methylation is not a stochastic outcome, but a targeted, albeit abnormal, process. In this light, it becomes reasonable to speculate that distinct tumor types could use similar cellular pathways to target their own characteristic CpG islands for DNA methylation. Mechanistic congruity among different tumor types would allow us to understand multi-cancer and pan-cancer processes from a unified molecular perspective. However, testing this hypothesis requires us to use consistent methods to assess DNA methylation across tumor types and to analyze large numbers of samples to provide statistical power. In the rest of this article, we provide examples of such analyses.
EVALUATING CIMP: FROM GENE PANELS TO GENOME-WIDE METHYLATION PROFILES
A quick overview of important milestones in the study of CIMP within the context of gastrointestinal cancers is provided in Table 1. Given the diversity of methods for assessing DNA methylation, profiling has been performed over a wide range of technical depths and breadths. Initially, the implementation challenges of wide-scale methylation profiling limited the scope of CIMP evaluation. Researchers working on CRC employed panels of genes using a low-throughput approach, such as methylation-specific PCR. These panels varied in size from four[27] to several dozen genes[28], and invariably included subsets of the sequences originally employed by Toyota et al[5,29]. Although other CIMP-tumor characterizations have emerged, CRC remains the most heavily investigated tumor type with respect to CIMP subtypes. A variety of gene panels are still in use[30], some of which include MLH1[31-35] due to its aforementioned connections to MSI[36,37].
Table 1 Overview of previous studies of CpG island methylator phenotype in tumors from the gastrointestinal track.
Year
Event
Ref.
1999
CIMP is first reported in a set of CRC patients
[5]
2004
Nature Reviews paper discussing CIMP in a variety of tumors besides CRC
[23]
2006
Refined molecular subtyping includes CIMP-low and CIMP-0 categories in CRC, with associations to KRAS mutations
[47]
New insights are gained about the interplay between BRAF V600E mutations, MSI status, MLH1 promoter methylation and CIMP in CRC
[14]
2006-2012
High throughput DNA methylation arrays become widely available, enabling the use of larger gene panels for CIMP characterization
[45,46]
2014
TCGA marker paper on gastric cancer highlights the biological relevance of CIMP for molecular subtyping, exploring associations with EBV infection
[64]
A better mechanistic understanding of CIMP in CRC is gained through elucidation of the role of MAFG in the context of MLH1 silencing and BRAF V600E mutations
[76]
2015
Pan-cancer stratification of solid tumors reveals similarities in CIMP across a wide variety of cancer types
[51]
Following an increase in the scope of methylation studies, individual CpG sites started being used to detect aberrant methylation across multiple cancer types. For example, CDKN2A profiling has been used in at least 10 cancer types[24], and MLH1 profiling has been extended to pancreatic cancer[38], leukemia[39], ovarian cancer[40], endometrial cancer[41], gastric cancer[42], and lung cancer[43]. Although these sites are consistently differentially methylated in multiple tumor types, none of them are informative enough to classify samples as CIMP in an independent manner.
The limitations of these early ascertainment methods and lack of extensive overlaps across tumor types, coupled with a variable range of methylation at any given CpG site, fueled a debate over the relevance of CIMP in cancer[44]. The advent of array-based platforms for measuring DNA methylation, such as the Illumina Infinium HumanMethylation27 and HumanMethylation450 arrays[45], helped end this debate[46]. Recent genome-wide experiments using high-throughput data have not only corroborated the biological relevance of CIMP to CRC diagnostics and survival rates, but have led to finer subdivisions of methylation levels, such as CIMP-low and CIMP-zero[47-49]. These classifications better reflect global patterns of hypermethylation, which often fail to fit within “high” or “low” classes in colorectal and other cancers. For example, our early studies of gynecological tumor epigenomes showed a finely increasing signal of CpG island hypermethylation among ovarian and endometrial tumors, rather than a binary methylation signature[50]. This signature represented an intermediate ranking between the fully methylated and unmethylated states, where the CIMP intermediate group corresponded to the serous subtype with TP53 mutations. This observation weighed heavily into our recently demonstrated method to stratify DNA methylation patterns of most cancer types collected by TCGA at the time for CIMP classification. Categories that we defined include CIMP+, CIMP-intermediate (CIMPi), and CIMP-[51]. Such broad-scale analyses provide a means of subtyping individual tumor collections into relatively homogenous methylation subgroups, notwithstanding the fact that each subgroup can contain a gradient in methylation levels. The absence of a highly dichotomous methylation pattern suggests that a complex interplay of factors determines CIMP status, including tumor heterogeneity and clonality[52], multiple somatic/germline mutations[53], copy number variation, and mutation heterozygosity[54].
Within the ongoing effort to better the understanding of cancer biology, we argue that evaluating methylation on an epigenome-wide scale should be favored over the analysis of a few, select loci. For example, large-scale analyses have revealed the now widely recognized phenomenon that DNA methylation occurs at genes with a role in early development and morphogenesis, leading to the discovery that polycomb binding is a precursor to aberrant DNA methylation[25,55,56]. Also, a number of recent studies have highlighted important similarities in terms of somatic alterations and epigenetic patterns across cancers of different organs and tissues[51,57-59]. This type of multi-cancer or pan-cancer approach benefits from increased statistical power compared with smaller studies of individual cancer types, which, however, are better suited to capturing tissue-specific features. Researchers can harness the advantages of both approaches by studying related cancer types that occur in tissues derived from common cell lineages. A good example of this approach is provided by previous multi-cancer analyses of tumors of the gastrointestinal tract[60].
GENOMIC CHARACTERISTICS ASSOCIATED WITH CIMP IN GASTROINTESTINAL TUMORS
TCGA has used patterns of mutation to classify colorectal sample genomes into two large groups, non-hypermutated and hypermutated[61]. Colon and rectal tumor samples in the former class largely possess CIMP-low phenotypes and have almost indistinguishable molecular signatures in terms of copy number variation, mRNAs, and miRNAs. By contrast, hypermutated samples are predominantly tumors of the colon. Roughly three-quarters exhibit CIMP-high status, as well as ML H1 silencing and MSI, whereas the other quarter are characterized by mutations in other mismatch repair genes such as MLH3 and mutations in POLE. The contrast between samples exhibiting high chromosomal instability (CIN) and samples exhibiting large mutational load is not unique to CRCs, as it has been described in other cancer types, including the endometrioid vs serous subtypes of both ovarian and endometrial cancers[50,62]. Consistent with these observations, the importance of CIMP as a mutually exclusive alternative to CIN has been underscored in describing dysfunctional events in tumor genomes[63]. As we have reported previously[51], the MSI vs CIN duality largely corresponds to a CIMP+ vs CIMP- dichotomy. This can be extrapolated to a pan-cancer dichotomization of tumors into a “mutator” class, characterized by a large number of somatic mutations, closer to CIMP+, and a “copy number” class, characterized by an abundance of copy-number alterations but lacking excessive mutations, closer to CIMP-. This duality has been previously referred to as the cancer genome hyperbola[57].
Even if it is conceptually helpful, the simple high-level dichotomy assessed by mutations or copy number alterations fails to adequately represent all of the mechanisms of diversity in gastric tumors. For example, a comprehensive molecular study carried out by TCGA subdivided gastric tumors into four distinct subgroups[64]. Two distinct CIMP-high tumor subgroups were identified: One associated with Epstein-Barr virus (EBV), and one associated with MSI. Among 10 different cancer types analyzed by TCGA, the EBV-CIMP subgroup exhibited the highest frequency of DNA hypermethylation at gene promoters, highlighting the interplay, causative or correlational, between environmental exposures such as viral infection and DNA methylation of the tumor genome. Studies involving other infectious agents also suggest potentially relevant associations between presence of pathogens, gastric cancer prognosis and CIMP status. For example, in patients infected with Helicobacter pylori, CIMP+ tumors exhibit higher rates of recurrence and metastasis than CIMP- tumors[65].
Of the four types of gastrointestinal cancer examined in the present article, esophageal cancers have been the least thoroughly studied with regards to CIMP stratification. However, CIMP and its associated driver mutations have been investigated in the context of some esophageal tumor subtypes[66]. In particular, subsets of tumors exhibiting high levels of methylation have been reported in both esophageal adenocarcinoma and Barrett’s esophagus, a precursor lesion to esophageal adenocarcinoma[67]. Moreover, the overall amounts of DNA hypermethylation in Barrett’s esophagus predict progression to esophageal adenocarcinoma[68,69]. Genes such as CDKN2A, APC, CDH1, TAC1 and MGMT have been reported to exhibit increased methylation in esophageal adenocarcinomas, esophageal squamous cell carcinomas and Barrett’s esophagus when compared to normal esophageal DNA[70]. By contrast, MLH1 promoter methylation has been reported in esophageal squamous cell carcinomas, but not adenocarcinomas[70,71], confirming differences in methylation profiles between esophageal subtypes.
ANALYSES OF CIMP IN GASTROINTESTINAL CANCERS
Here, we investigated CIMP in four types of gastrointestinal adenocarcinoma (GIAD) samples provided by TCGA: Esophageal adenocarcinoma (EAC), which is a subset of esophageal carcinoma (or ESCA, using the TCGA nomenclature); stomach adenocarcinoma (STAD); colon adenocarcinoma (COAD); and rectal adenocarcinoma (READ). Using a previously described approach[51], we assessed mean methylation levels in tumor and healthy adjacent tissues and ranked samples using unsupervised clustering. Specifically, we measured DNA methylation levels at a set of informative probes (i.e., sets of loci that were differentially methylated between tumor and normal samples at statistically significant levels) using statistical selection criteria applied independently for each tumor collection (Table 2; see research). We then evaluated CIMP status by classifying samples according to average methylation levels across the set of informative probes. This type of CIMP stratification, in which samples with similar methylation intensity levels are grouped together, reduces heterogeneity within the full tumor collection and facilitates the identification of functional somatic alterations that may play a shared role across different cancer types (and subtypes).
Table 2 Gastrointestinal adenocarcinoma types, sample sizes, probe set sizes, and CpG island methylator phenotype status.
Cancer type
Differentially methylated probes
Control samples
Tumor samples
CIMP-
CIMPi
CIMP+
EAC
6717
11
87
26
31
30
STAD
1110
2
260
109
95
56
COAD
2656
38
274
96
92
86
READ
1255
7
96
31
39
26
After clustering based on average methylation levels across the probes, samples were categorized into three distinct groups: CIMP+, CIMPi, and CIMP-. CIMP- samples had CpG island methylation profiles that were closer to those observed in normal samples, whereas CIMP+ samples showed a reproducible pattern of DNA hypermethylation with respect to non-cancer controls (Figure 1A). CIMPi samples displayed methylation levels that fell between the CIMP+ and CIMP- groups. In subsequent analyses, we compared CIMP- and CIMP+ samples and excluded the intermediate group, to avoid borderline cases and to guarantee that the tumors being compared were sufficiently different from a molecular point of view.
Figure 1 CpG island methylator phenotype analysis of gastrointestinal adenocarcinoma samples from the Cancer Genome Atlas.
A: CIMP analysis for EAC, STAD, COAD, and READ samples. Each row represents a sample, and each column represents a probe. The two-color side bar shows tumor samples (red) and normal samples (blue). The four-color side bar indicates CIMP status: CIMP+ (gold), CIMP intermediate (CIMPi; magenta), CIMP- (green), and normal (blue). Samples were ranked vertically according to mean methylation levels across all of the probes shown in the heat map; B: Venn diagram showing the intersection of the selected, informative probes with regard to CIMP status across the four cancer types; C: CIMP analysis for the combined GIAD data set, in which samples from the four individual tumor types were pooled together. The side bars show (1) sample type (tumor vs adjacent tissue); (2) cancer type (EAC, STAD, COAD, or READ); (3) CIMP status based on the individual analyses shown in panel A; and (4) CIMP status based on the analysis using the pooled data set. CIMP: CpG island methylator phenotype; EAC: Esophageal adenocarcinoma; STAD: Stomach adenocarcinoma; COAD: Colon adenocarcinoma; READ: Rectal adenocarcinoma; GIAD: Gastrointestinal adenocarcinoma.
In a previous study, we showed that our CIMP+ and CIMP- assignments largely coincided with independent assignments by the TCGA for an overlapping sample set of CRC tumors[51]. Here, we compared our CIMP classification with the four molecular subtypes defined by TCGA for gastric tumors: (1) EBV+; (2) MSI; (3) genomically stable (GS); and (4) CIN[64] (Table 3). We observed a significant association between CIMP+ status and the EBV+ and MSI subtypes, in agreement with the extreme CIMP reported for these subtypes by TCGA. Highlighting the previously mentioned incompatibility of CIMP and CIN, CIN samples were significantly skewed toward CIMP- status. However, other samples also occupied the CIMP- category, including GS samples, which displayed few alterations in DNA methylation and lacked MSI.
Table 3 Comparison between our CpG island methylator phenotype classification of stomach adenocarcinomas and the four subtypes defined by The Cancer Genome Atlas Research Network1.
In addition to evaluating CIMP in each of the four cancer types independently, we combined all of the data into a single set. Here, the intersection of the loci selected in the four previous, independent analyses was considered informative (n = 151, Figure 1B). In this new classification of samples (Figure 1C), CIMP labels remained largely consistent with the previously assigned labels. Importantly, when samples in the pooled data set were ranked according to their average level of DNA methylation across the set of selected probes, they tended to cluster by CIMP status rather than tissue of origin. This novel finding implies commonalities in the underlying generation of aberrant methylation across cancer types.
CIMP AND MLH1 PROMOTER HYPERMETHYLATION
Early studies of CIMP established that the MLH1 promoter is consistently hypermethylated in CRC[5]. This observation has since been extended to other cancer types[72], and its importance is highlighted by the inclusion of MLH1 in many gene panels used to evaluate CIMP. The strong association between CIMP and MLH1 promoter hypermethylation continues to be reinforced by recent studies with large sample sizes, such as a pan-cancer analysis performed by our group[51] using a catalog of 479 somatic functional events (Ciriello et al[57], 2013). In this previous work, we investigated a cohort of 3299 samples that spanned 9 different cancer types and found that MLH1 promoter silencing was the single genomic functional event that displayed the strongest statistical association with CIMP.
Since promoter hypermethylation is usually associated with gene silencing[4,8], one could compare the effects of MLH1 promoter hypermethylation and disabling gene mutations, addressing parallels with loss-of-function. Indeed, MLH1 promoter silencing replicates the phenotype of MLH1 loss-of-function mutations in hereditary nonpolyposis colon cancer, which displays dinucleotide repeat instability[73]. Moreover, research in cell lines demonstrates that reversing MLH1 promoter hypermethylation increases transcription of the gene and restores mismatch repair capacity[11,74]. It is therefore tempting to hypothesize that MLH1 promoter hypermethylation, which is strongly associated with CIMP and displays the functional hallmarks of a loss-of-function mutation, is a causal event in the onset of CIMP. However, previous studies, including our own, have shown that CIMP can be observed in the absence of MLH1 promoter hypermethylation or mutation[51,61,75], implying either a relationship that is correlational but not causal, or multiple mechanisms underlying CIMP development.
Only recently has experimental evidence emerged to help elucidate the role of MLH1 promoter hypermethylation in CIMP. In CRC, Fang et al[76] have shown that the common BRAF V600E mutation leads to elevated levels of the protein MAFG. In turn, MAFG binds to the promoter of MLH1 and other genes, where it recruits a heterodimeric partner, BACH1; a chromatin remodeling factor, CHD8; and a DNA methyltransferase, DNMT3B - ultimately resulting in increased methylation at the target sites. These results suggest that mutations such as BRAF V600E orchestrate aberrant methylation patterns; therefore, MLH1 promoter hypermethylation might be thought of as part of the CIMP onset process rather than an initiating event.
Many interesting genes may fit into a model in which, following the onset of somatic mutations, a cascade of downstream methylation events occurs. For instance, CDKN2A promoter hypermethylation is also linked to BRAF mutations, through increased expression of the DNA methyltransferase DMNT3B[77]. Similarly, hypermethylation and silencing of the INK4-ARF locus (also known as CDKN2A and CDKN2B) occurs through KRAS activation of ZNF304, which recruits the DNA methyltransferase, DNMT1[78].
MLH1 PROMOTER METHYLATION IN GASTROINTESTINAL TUMOR DATA FROM TCGA
We analyzed GIAD data supplied by TCGA to learn more about the relationship between MLH1 promoter methylation and CIMP. First, we identified 41 probes from the Illumina Infinium HumanMethylation450 array located in the extended MLH1 promoter, operationally defined as 1.5 kb upstream and 500 bp downstream of the transcription start site (TSS) (Figure 2A). We then examined methylation levels for each cancer type, comparing CIMP+ to CIMP- samples, and found that COAD and STAD tumors displayed the strongest differences (Figure 2B). We next looked at the positions of differential methylation. A set of 24 probe sites were differentially methylated between the CIMP+ and CIMP- groups in COAD tumors, and an extended region of 38 probe sites were differentially methylated in STAD tumors (after Bonferroni correction for 41 positions). By contrast, we found no significantly differentially methylated positions in READ samples, and only three in EAC samples. The strongest association between MLH1 promoter hypermethylation and CIMP occurred in COAD tumors (Figure 2B): One-third (20/60) of CIMP+ samples in COAD exhibited MLH1 promoter hypermethylation, in contrast to less than 3% of CIMP- samples (2/71) (P = 2.1 × 10-6, Fisher’s exact test). At the other extreme, no READ CIMP+ samples exhibited hypermethylation of the MLH1 promoter.
Figure 2 MLH1 promoter methylation and somatic mutations.
A: Diagram of the MLH1 promoter region and the adjacent gene, EPM2AIP1, obtained from the UCSC Human Genome Browser. The probes in this region from the Illumina Infinium HumanMethylation450 array are shown with color bars relative to the CpG island present at this locus: The north shore (orange), the CpG island (red), and the south shore (dark red); B: Heat maps of GIADs showing DNA methylation status across a large genomic region that encompasses the MLH1 promoter. Probes are displayed from left to right, and samples are ordered from top to bottom by average methylation across the region. Color side bars indicate CIMP status: CIMP+ (gold), CIMP intermediate (CIMPi; magenta), CIMP- (green), and control tissue (blue); C: Distribution of 16 somatic mutations in the coding region of MLH1. Color boxes correspond to different functional domains, as specified in the cBioPortal at MSKCC[99], and the vertical axis shows the number of mutations affecting a given codon. GIADs: Gastrointestinal adenocarcinomas; CIMP: CpG island methylator phenotype.
We also examined the association between mutations that disable MLH1 and the presence of CIMP. First, we collected all somatic mutations mapped to MLH1 in samples whose CIMP status had been determined (Table 4 and Figure 2C). The most detrimental somatic alterations in MLH1 are frameshift mutations, which render large fractions of the protein product nonfunctional. We observed frameshift mutations in all three CIMP classes (CIMP+, CIMPi and CIMP-), without a significant bias toward CIMP+ samples. In fact, several truncating mutations within the DNA mismatch repair functional domain of the protein occurred in CIMPi and CIMP- samples. These data suggest that loss of function alterations at MLH1 might not be sufficient for the onset of CIMP.
Table 4 Somatic mutations found in the tumor suppressor gene MLH1 in gastrointestinal adenocarcinoma samples.
CIMP AND PROMOTER HYPERMETHYLATION OF TUMOR SUPPRESSOR GENES
The evidence pointing to MLH1 inactivation as a corollary to the appearance of CIMP suggests that other tumor suppressor genes could potentially be silenced through promoter hypermethylation and result in comparable functional vulnerabilities as well; moreover, the silencing of these genes could represent actionable clinical targets. We explored this concept by searching for known tumor suppressor genes that exhibited concerted promoter hypermethylation in all four GIAD cancer types. Using the TSGene database[79], we found that 26 of 634 tumor suppressor genes (4.1%) contained at least one probe site in the promoter region that exhibited methylation levels significantly different between CIMP+ and CIMP- samples across all four cancer types (Table 5). These genes included ERBB4, WT1, WIF1, and RASSF2. By contrast, only 2.4% of genes not included in the TSGene database exhibited concordant differential methylation in CIMP+ samples across the four cancer types (P = 0.007, hypergeometric test).
Table 5 Association between methylation and gene expression in tumor suppressor genes with significantly hypermethylated promoters in CpG island methylator phenotype + samples across four gastrointestinal adenocarcinoma types1.
Differential methylation
Correlation with expression
Gene symbol
Promoter probes
Significant probes per cancer type
EAC
STAD
COAD
READ
COAD
EAC
READ
STAD
cor
p-val
cor
p-val
cor
p-val
cor
p-val
TP73
24
18
3
2
23
-0.34
4.E-01
-0.24
1.E-01
-0.10
1.E+00
-0.20
1.E+00
MAL
8
6
5
2
7
-0.37
3.E-01
-0.46
2.E-07
-0.47
7.E-09
-0.45
3.E-02
C2orf40
8
5
3
1
7
-0.51
2.E-03
-0.57
5.E-13
-0.39
2.E-05
-0.24
6.E-01
TMEFF2
7
7
7
7
7
-0.54
2.E-03
-0.49
2.E-08
-0.41
2.E-03
-0.32
5.E-01
ERBB4
6
7
7
2
7
-0.26
5.E-01
-0.15
5.E-01
NA
1.E+00
-0.30
6.E-01
TWIST2
5
5
4
1
4
-0.26
3.E-01
-0.33
3.E-04
-0.38
2.E-06
-0.37
3.E-02
LRRC3B
13
9
7
1
12
-0.36
5.E-01
-0.38
2.E-04
-0.41
4.E-03
-0.11
1.E+00
HTRA3
10
6
3
1
6
0.02
1.E+00
-0.03
1.E+00
-0.10
1.E+00
-0.07
1.E+00
UNC5C
13
13
13
8
13
-0.38
7.E-02
-0.34
5.E-04
-0.43
4.E-08
-0.40
3.E-02
FAT4
13
13
9
2
13
-0.33
2.E-01
-0.44
4.E-07
-0.34
4.E-05
-0.28
4.E-01
IRX1
5
3
4
3
4
-0.37
2.E-01
-0.37
3.E-04
NA
1.E+00
NA
1.E+00
SCGB3A1
9
9
4
2
9
-0.27
4.E-01
-0.37
3.E-05
-0.22
3.E-01
-0.12
1.E+00
AKAP12
10
9
5
1
10
-0.19
1.E+00
-0.42
1.E-06
-0.42
7.E-08
-0.27
6.E-01
DFNA5
12
10
8
1
9
-0.75
0.E+00
-0.56
1.E-12
-0.36
1.E-05
-0.34
1.E-01
TFPI2
15
22
14
19
22
-0.49
3.E-03
-0.54
2.E-11
-0.38
4.E-06
-0.22
1.E+00
NRCAM
7
6
1
1
6
-0.52
3.E-04
-0.47
2.E-08
-0.19
8.E-02
-0.17
1.E+00
CNTNAP2
14
14
11
1
14
-0.14
1.E+00
-0.27
2.E-02
-0.14
1.E+00
-0.12
1.E+00
PAX6
12
12
5
3
11
-0.22
1.E+00
-0.18
6.E-01
-0.04
1.E+00
-0.32
3.E-01
WT1
12
12
12
3
12
-0.25
1.E+00
-0.04
1.E+00
-0.26
8.E-03
-0.23
1.E+00
PHOX2A
11
11
6
5
11
-0.26
1.E+00
-0.13
1.E+00
-0.38
3.E-03
-0.26
1.E+00
WIF1
8
5
5
3
7
-0.57
2.E-03
-0.32
5.E-03
-0.44
9.E-07
-0.56
2.E-04
SLC5A8
9
11
10
4
12
-0.26
1.E+00
-0.28
2.E-01
-0.17
1.E+00
-0.33
9.E-01
TBX5
17
11
7
1
16
-0.32
5.E-01
-0.09
1.E+00
0.03
1.E+00
-0.16
1.E+00
ATP8A2
8
5
4
2
5
-0.28
1.E-01
-0.37
2.E-05
-0.24
5.E-03
-0.24
3.E-01
ADAMTS18
8
7
5
3
7
-0.27
3.E-01
-0.36
6.E-05
-0.34
5.E-05
-0.30
2.E-01
GALR1
29
27
5
8
27
-0.17
1.E+00
-0.47
2.E-04
0.00
1.E+00
-0.14
1.E+00
RASSF2
5
6
4
3
6
-0.52
5.E-04
-0.31
1.E-03
-0.41
1.E-07
-0.40
2.E-02
CDH4
3
2
2
2
4
-0.17
6.E-01
-0.09
8.E-01
-0.16
3.E-01
-0.32
1.E-01
Furthermore, in affected tumor suppressor genes, such as DFNA5, RASSF2 and WIF1, promoter methylation was significantly negatively correlated with mRNA expression across several tumor types (Table 5), which is indicative of epigenetic silencing. DNFA5 is a tumor suppressor gene involved in apoptosis and response to DNA damage[80,81]. Its hypermethylation has been reported in colorectal and gastric cancer, where it is associated with EBV-positive status[82,83]. In addition, WIF1 and RASSF2, whose methylation and expression levels were significantly correlated across all four cancer types in our study, have been described in the context of CIMP in gastrointestinal adenocarcinomas[60,65,84-86]. These data suggest that, in a subset of genes, selective pressure may favor loss-of-function events caused by DNA methylation, facilitating tumor growth.
CIMP AND ASSOCIATED SOMATIC MUTATIONS
An outstanding question that remains is the causal connection between somatic mutations and the onset of CIMP. Over the years, extensive association analyses in colon and rectal cancers have been performed to address this problem[30,87]. The results have highlighted the diverse mutation spectrum across tissues, which refutes the hypothesis of a universal driver mutation being responsible for altered DNA methylation levels[51]. Mutations associated with CIMP have been found in CDKN2A, IDH1/2, TET2 and RB1, among other genes[25]. In addition, as discussed, mutations in BRAF directly lead to hypermethylation at specific loci[76,77], and their effects probably extend to myriad targets across the genome.
We further explored the association between somatic mutations and DNA methylation using data from TCGA. For this purpose, we compared the recurrence of somatic mutations in CIMP+ and CIMP- samples across the entire GIAD cohort. A decision tree analysis pointed to several alterations associated with CIMP+ status (Figure 3A and B). This approach ranks mutations in descending order of statistical significance based on their presence or absence in CIMP+ samples. The top-scoring mutation was a 1-bp deletion at chr17:56,435,161 (Figure 3A), which was present in 21 of 22 STAD CIMP+ samples (Figure 3B). This mutation causes a frameshift in the last exon of RNF43, a tumor suppressor that encodes a RING-type E3 ubiquitin ligase (p.G659fs*41). RNF43 is upregulated in colon cancer[88] and inhibits Wnt/β-catenin signaling in pancreatic cancer cells[89]. Two other top-scoring mutations affect APC, a tumor suppressor whose inactivation is associated with the onset of colon cancer. One was a nonsynonymous C-to-T substitution at chr5:112,175, 639, and the second was an AA insertion at chr5:112,175,951. Although these alterations were present in a relatively small number of samples (14 in total), they were observed almost exclusively in CIMP+ tumors (13 out of 14). Not surprisingly, we also found a BRAF V600E mutation (A-to-T change at chr7:140,453,136) that was significantly associated with CIMP+ status (Figure 3A). Together with a common KRAS mutation (C-to-T change at chr12:2,539,281; p.G13D), these represent the only two mutations significantly associated with CIMP+ in COAD samples; this is consistent with their already characterized presence in COAD[14,78]. Finally, a T insertion at chr1:6257785 affecting RPL22 was also significantly associated with CIMP+ status across GIAD samples, although the number of affected samples was relatively small (6 out of 7 were CIMP+). In the future, these associations may be explored further to investigate their potential functional role in the context of aberrant DNA methylation.
Figure 3 Binary decision trees for separating gastrointestinal adenocarcinomas into CpG island methylator phenotype categories.
Recursive partitioning of GIADs from TCGA using binary classification trees based on CIMP status and mutational profiles. Results are provided for A: The combined GIAD data set at the individual mutation level; B: The STAD and COAD data sets at the individual mutation level; C: The combined GIAD data set at the mutated gene level; D: The STAD and COAD data sets at the mutated gene level. Red and green branches illustrate whether a specific mutation is present or absent (or whether a given gene is mutated or not) in the corresponding subset of tumors. Terminal nodes show the number of samples and the associated CIMP+ vs CIMP- fractions, as well as the proportion of different cancer types represented in each subset. GIADs: Gastrointestinal adenocarcinomas; TCGA: The Cancer Genome Atlas; CIMP: CpG island methylator phenotype.
We also compared mutations in CIMP+ and CIMP- samples by aggregating point mutations at the gene level (Table 6). Amid the top scorers in this analysis, we found chromatin remodeling genes such as ARID1A, which is an important member of the SWI/SNF complex, and histone methyltransferase genes such as KMT2D (MLL2) and KMT2C (MLL3). These two MLL complexes are involved in H3K27 demethylation and H3K4 methylation, which regulate the transcription of many developmental genes, including the HOX gene family[90]. The list of genes whose mutation levels were associated with CIMP status was also significantly enriched for genes from the RTK/RAS/PI(3)K signaling pathway (FDR < 4 × 10-8), including ERBB2, ERBB3, ERBB4, KRAS, PIK3CA, NRAS, and PTEN. These results suggest that the cumulative signal of somatic mutations in coding genes could contribute to CIMP.
Table 6 Genes differentially mutated between CpG island methylator phenotype+ and CpG island methylator phenotype- gastrointestinal adenocarcinoma samples1.
Gene
Count CIMP+
% CIMP+
Count CIMP-
% CIMP-
P% Diff
P-value
FDR
Pathway
KMT2D
35
20.30%
10
4.30%
16.00%
6.22E-07
2.24E-05
Chromatin
ARID1A
60
34.90%
32
13.90%
21.00%
1.15E-06
2.24E-05
Chromatin
RNF43
42
24.40%
17
7.40%
17.10%
3.04E-06
3.79E-05
Wnt
CSF3R
19
11.00%
2
0.90%
10.20%
4.19E-06
3.79E-05
ERK
SOX7
14
8.10%
0
0.00%
8.10%
4.86E-06
3.79E-05
ERK
PIK3CA
48
27.90%
26
11.30%
16.70%
2.62E-05
1.70E-04
PI3K/RAS
PAX6
17
9.90%
2
0.90%
9.00%
3.96E-05
2.21E-04
Differentiation
ATM
37
21.50%
17
7.40%
14.20%
5.05E-05
2.46E-04
DNA damage
KRAS
52
30.20%
32
13.90%
16.40%
1.04E-04
4.53E-04
PI3K/RAS
EGR1
15
8.70%
2
0.90%
7.90%
1.63E-04
6.37E-04
Differentiation
GATA3
19
11.00%
5
2.20%
8.90%
2.22E-04
7.87E-04
NF-KB
KMT2C
38
22.10%
22
9.50%
12.60%
6.15E-04
2.00E-03
Chromatin
ALDH2
10
5.80%
1
0.40%
5.40%
1.18E-03
3.30E-03
Metabolic
CDK12
18
10.50%
6
2.60%
7.90%
1.18E-03
3.30E-03
PI3K/RAS
SAFB
15
8.70%
4
1.70%
7.00%
1.44E-03
3.73E-03
Chromatin
BCOR
19
11.00%
7
3.00%
8.00%
1.68E-03
4.09E-03
Chromatin
PTEN
24
14.00%
11
4.80%
9.20%
1.97E-03
4.32E-03
PI3K/RAS
AXIN2
21
12.20%
9
3.90%
8.30%
2.00E-03
4.32E-03
Wnt
CTCF
14
8.10%
4
1.70%
6.40%
2.73E-03
5.41E-03
Chromatin
PALB2
11
6.40%
2
0.90%
5.50%
2.77E-03
5.41E-03
DNA repair
ERBB3
18
10.50%
7
3.00%
7.40%
2.96E-03
5.49E-03
PI3K/RAS
ERBB4
29
16.90%
17
7.40%
9.50%
4.05E-03
6.97E-03
PI3K/RAS
FBXW7
32
18.60%
20
8.70%
9.90%
4.11E-03
6.97E-03
Notch
CIC
23
13.40%
12
5.20%
8.20%
6.55E-03
1.06E-02
Proliferation
HLA.A
17
9.90%
8
3.50%
6.40%
1.13E-02
1.71E-02
Immune
MSH6
19
11.00%
10
4.30%
6.70%
1.14E-02
1.71E-02
MMR
ERBB2
15
8.70%
8
3.50%
5.30%
2.98E-02
4.21E-02
PI3K/RAS
CASP8
13
7.60%
6
2.60%
5.00%
3.02E-02
4.21E-02
Apoptosis
SMAD4
27
15.70%
20
8.70%
7.00%
4.05E-02
5.45E-02
Wnt
TFE3
6
3.50%
1
0.40%
3.10%
4.53E-02
5.90E-02
Wnt
APC
82
47.70%
87
37.70%
10.00%
5.24E-02
6.60E-02
Wnt
NRAS
10
5.80%
5
2.20%
3.60%
6.55E-02
7.74E-02
PI3K/RAS
SMARCB1
10
5.80%
5
2.20%
3.60%
6.55E-02
7.74E-02
Chromatin
IGFBP7
3
1.70%
0
0.00%
1.70%
7.70E-02
8.65E-02
DNA Damage
TBL1XR1
6
3.50%
2
0.90%
2.60%
7.76E-02
8.65E-02
Wnt
Finally, we applied binary decision trees to identify combinations of mutated genes that correlate with CIMP+ or CIMP- status (Figure 3C and D). Using the pooled GIAD data set, our tree shows that KMT2D mutations recur in gastroesophageal (i.e., STAD and EAC) samples (Figure 3C). In fact, tumors with mutated KMT2D and wild-type TP53 consist exclusively of CIMP+ samples (n = 21). We observed a second set of samples (including representatives from all four histologies) that contained SOX7 mutations and lacked KMT2D mutations; all 11 of these tumors were CIMP+. Our trees from individual cancers (Figure 3D) show that KRAS and BRAF mutations in COAD, as well as RNF43, PIK3CA, and KRAS mutations in STAD, are associated with CIMP+ status.
CONFOUNDING FACTORS IN THE EVALUATION OF CIMP
Basing CIMP classification on mean methylation levels in tumor vs normal tissues allows us to separate cancer-related features from tissue-of-origin signals, but it also makes stratification vulnerable to a number of potential technical and biological artifacts. For example, our classification algorithm relies on the assumption of having a sufficiently large and sufficiently heterogeneous set of controls for each individual tumor type in order to guard against potentially confounding variables such as age, gender, race or anatomic location. Since only two non-tumor control samples were available for STAD, we may have encountered false positives in the probe selection process for this cancer type[51]. Another confounding effect may come from tumors’ stimulation of the immune response, leading leukocytes (including T cells, NK cells, and macrophages) to infiltrate cancerous tissues and skew the methylation signature[91]. Additionally, tumor samples often consist of a heterogeneous mixture of cancer cells and non-cancer cells from adjacent tissues, the latter unwittingly included as a result of some biopsy collection procedures. As of today, there are no universally accepted methods to correct for tumor heterogeneity in DNA methylation studies; however, estimates of tumor heterogeneity can be computed from molecular data, such as copy number changes and mRNA expression, and these estimates can be used to discard problematic samples or to eliminate potential biases in downstream analyses[92,93]. As an alternative, future studies may benefit from improved sample collection requirements (e.g., tumor microdissection) that lead to enhanced tumor purity and lower stromal contamination.
ASSESSING THE IMPACT OF TUMOR HETEROGENEITY ON CIMP CLASSIFICATION
We examined our CIMP classifications using the measure of tumor purity calculated with ABSOLUTE, a computational method based on the analysis of somatic DNA alterations[92]. As a proof of principle, we reclassified CIMP status for the STAD data set using only high-purity (i.e., ≥ 50%) samples, as determined by the purity estimates available through TCGA[64]. We then compared sets of selected probes and CIMP designations before and after filtering for purity. After removing low-purity samples, the number of differentially methylated probes increased from 1110 to 1610. This result is consistent with the removal of samples that added background noise and masked the methylation signal of tumor cells. Since the new set of differentially methylated probes encompassed the original probe set, the inclusion of low-purity samples does not appear to have appreciably impacted our precision for feature selection, although it may have impoverished recall due to an increased number of false negatives. After using the new probe set, only five samples changed status from CIMP+ to CIMPi, and 11 samples changed status from CIMPi to CIMP-. However, no sample changed from CIMP+ to CIMP- or vice versa. Thus, our CIMP classification system is robust in the presence of varying sample purity.
CONCLUSIONS AND PERSPECTIVES
Ever since the original study in CRC by Toyota et al[5,29], evaluation of CIMP status in cancer has been an active area of research. CIMP stratification has direct implications for patient treatment[24]. Because DNA methylation is potentially reversible, it represents an attractive target for therapies that can be tailored to individual cancer epigenomes[20,94]. Nucleoside analogs, such as 5-azacytidine, can be incorporated into DNA to reversibly block DNA methylation, and their effectiveness is being tested in numerous clinical trials.
In this commentary, we have provided evidence that supports refining the molecular profiles of gastrointestinal tumors based on CIMP status, to look beyond traditional tissue-of-origin interpretations. Our analysis of four types of gastrointestinal tumors not only confirms known CIMP associations but also leads to several new observations relevant to current models of DNA methylation and cancer. For example, we report recurrence of a frameshift mutation in RNF43 that is significantly associated with CIMP status in stomach and, to a lesser extent, colon tumors. A recent study linked RNF43 mutations to MSI in colorectal and endometrial tumors, which are Wnt-dependent[95]. The tumor suppressor function of this gene qualifies its mutations to be potential drivers of STAD, although mechanistic links to DNA methylation remain inconclusive. In addition, RNF43 mutations had been identified in endometrioid and mucinous ovarian carcinomas[96]; we have shown the former tumor subtype is largely CIMP+[50]. The RNF43 frameshift mutation that we highlighted in STAD samples in this paper is located within a 7-bp, CG-rich tract, and it may be created by the mismatch repair deficiency responsible for the MSI phenotype. Thus, the mutation’s connection to CIMP status may occur downstream of MSI. However, RNF43-truncating mutations, which are common in MSI+ colorectal tumors, display mutual exclusivity with inactivating APC mutations[95], suggesting a more direct role in oncogenesis. Furthermore, our results point to additional events that could target the Wnt signaling pathway, such as epigenetic silencing of WIF1, which is consistently observed across the four GIAD types, or several of the somatic mutations highlighted in Table 6.
We believe that subdividing samples according to CIMP status has the potential to reduce heterogeneity within cancer subtypes and lead to more uniform molecular and phenotypic characteristics, thus producing more uniform response rates in clinical trials. Whether employed within cohort analyses or individual-level assessments, CIMP profiles have the potential to orient researchers and clinicians toward the biological properties of a tumor through their associations with MSI phenotypes, specific mutational profiles, and the repression of important tumor suppressor genes. Each of these avenues could potentially identify complementary therapeutic modalities. Guided in this way, researchers may identify new candidates for synthetic lethal therapeutic targeting, in which bottlenecks in pathways necessary for tumor cell survival can be targeted, resulting in more precise interventions than many of the current standard-of-care regimens.
RESEARCH
Data
We downloaded level 3 DNA methylation data from TCGA’s data portal (https://tcga-data.nci.nih.gov/tcga/). Data had been acquired using the Illumina HumanMethylation 450K platform and pre-processed following TCGA standard protocols. We further normalized the data from each sample using the BMIQ method[97], which corrects for technical differences between type I and type II probes in the Illumina HumanMethylation platform. We also downloaded level 3 RNA-Seq data from the Broad Institute TCGA Genome Data Analysis Center (standard run dated 06/01/2015, http://dx.doi.org/10.7908/C1251HBG). For EAC, COAD, and READ, we used log2, normalized RSEM RNA-SeqV2 values. For STAD, we used log2 RPKM RNA-Seq values, since RSEM estimates were not available. In addition, somatic mutation data for all four cancer types were downloaded through the bulk download interface of the TCGA portal (https://tcga-data.nci.nih.gov/tcga/findArchives.htm). Finally, CpG island and transcript annotation data were downloaded from the UCSC genome browser (cpgIslandExt track for CpG islands, and refFlat and knownGene tracks for transcripts).
Algorithms and statistical analysis
All statistical analyses were done using the R statistical package. We used CpG island annotations from UCSC for hg19 and gene annotations provided by Illumina for the HumanMethylation 450K platform. Promoter regions were defined as 2-kb regions encompassing the TSS of protein-coding loci (1.5 kb upstream of the TSS and 500 bps downstream of the TSS). Our DNA methylation analysis was restricted to probes located within CpG islands. Within each individual cancer type, we discarded probes with low variance across samples (SD < 0.1, based on normalized β values between 0 and 1), as well as probes located on the X and Y chromosomes.
Discriminative probes were selected by requiring minimal methylation in control samples (average methylation in controls < 0.05) and increased methylation in tumor samples (average methylation in tumors > 0.25). After a set of discriminative probes had been chosen separately for each tumor type, samples were classified into CIMP categories using k-means clustering on the vector of average methylation values computed across the set of selected probes (k = 3, initial centroids chosen to match population quartiles). Binary decision trees were computed using the R package “partykit”[98-100].
Probe selection, CIMP classification, and decision tree analysis were performed as published in our previous pan-cancer study[51]. We computed Spearman correlation values between expression values for each of the 28 genes in Table 5 and methylation values for probes in the corresponding TSSs. P-values were adjusted using the Bonferroni correction to account for the multiple probes associated with each gene.
ACKNOWLEDGMENTS
We thank Kristin Harper for editorial assistance. This work was funded by the Intramural program of the National Human Genome Research Institute, the National Institutes of Health.
Footnotes
Manuscript source: Invited manuscript
Specialty type: Gastroenterology and hepatology
Country of origin: United States
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