Literature DB >> 19924296

Profiling critical cancer gene mutations in clinical tumor samples.

Laura E MacConaill1, Catarina D Campbell, Sarah M Kehoe, Adam J Bass, Charles Hatton, Lili Niu, Matt Davis, Keluo Yao, Megan Hanna, Chandrani Mondal, Lauren Luongo, Caroline M Emery, Alissa C Baker, Juliet Philips, Deborah J Goff, Michelangelo Fiorentino, Mark A Rubin, Kornelia Polyak, Jennifer Chan, Yuexiang Wang, Jonathan A Fletcher, Sandro Santagata, Gianni Corso, Franco Roviello, Ramesh Shivdasani, Mark W Kieran, Keith L Ligon, Charles D Stiles, William C Hahn, Matthew L Meyerson, Levi A Garraway.   

Abstract

BACKGROUND: Detection of critical cancer gene mutations in clinical tumor specimens may predict patient outcomes and inform treatment options; however, high-throughput mutation profiling remains underdeveloped as a diagnostic approach. We report the implementation of a genotyping and validation algorithm that enables robust tumor mutation profiling in the clinical setting.
METHODOLOGY: We developed and implemented an optimized mutation profiling platform ("OncoMap") to interrogate approximately 400 mutations in 33 known oncogenes and tumor suppressors, many of which are known to predict response or resistance to targeted therapies. The performance of OncoMap was analyzed using DNA derived from both frozen and FFPE clinical material in a diverse set of cancer types. A subsequent in-depth analysis was conducted on histologically and clinically annotated pediatric gliomas. The sensitivity and specificity of OncoMap were 93.8% and 100% in fresh frozen tissue; and 89.3% and 99.4% in FFPE-derived DNA. We detected known mutations at the expected frequencies in common cancers, as well as novel mutations in adult and pediatric cancers that are likely to predict heightened response or resistance to existing or developmental cancer therapies. OncoMap profiles also support a new molecular stratification of pediatric low-grade gliomas based on BRAF mutations that may have immediate clinical impact.
CONCLUSIONS: Our results demonstrate the clinical feasibility of high-throughput mutation profiling to query a large panel of "actionable" cancer gene mutations. In the future, this type of approach may be incorporated into both cancer epidemiologic studies and clinical decision making to specify the use of many targeted anticancer agents.

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Year:  2009        PMID: 19924296      PMCID: PMC2774511          DOI: 10.1371/journal.pone.0007887

Source DB:  PubMed          Journal:  PLoS One        ISSN: 1932-6203            Impact factor:   3.240


Introduction

Many tumors contain hallmark mutations within oncogenes or tumor suppressor (TS) genes that may confer a heightened susceptibility to targeted anticancer therapies. Well-established examples include KIT mutations in gastrointestinal stromal tumors (GISTs) that predict response to imatinib or nilotinib, and non-small cell lung cancers with EGFR mutations that are sensitive to erlotinib[1], [2], [3]. The presence of other mutations predicts a lack of response to targeted therapy. For example, lung and colorectal cancers that harbor mutations in the KRAS oncogene are unresponsive to treatment with anti-EGFR agents[4], and inactivating PTEN mutations (or protein loss) in glioblastomas predict resistance to erlotinib[5]. Thus, clinical decision-making based on tumor genetic information will increasingly be informed by the mutational status of multiple cancer genes. However, generating a comprehensive profile of target-able or otherwise “actionable” tumor DNA mutations in the clinical arena remains challenging. Recent technological advances make it feasible in principle to screen a tumor biopsy for many types of genomic changes. However, incorporation of such information into clinical decision-making requires reliable genomic profiling of frozen, paraffin-derived, and archival tumor DNA. In this context, nucleic acids are often subject to degradation and/or chemical modification, and the availability of tumor tissue may be limiting. We previously reported the adaptation of a high-throughput genotyping approach to interrogate key mutations in a panel of 17 known oncogenes. We now demonstrate the clinical feasibility of mass-spectrometric based cancer gene mutation profiling for a large panel of oncogene and TS gene mutations. To accomplish this, we generated an approach termed OncoMap, which employs an expanded collection of 460 assays interrogating known mutations in 33 cancer genes. Using this genomic profiling approach coupled to an analytical mutation-calling algorithm and orthogonal validation step, we identified numerous mutations present in genomic DNA from both frozen and FFPE tumor tissue. Moreover, the application of systematic mutation profiling to >120 pediatric low-grade astrocytomas reveals a clinically informative molecular stratification not previously recognized in this tumor type. Such information, if it became widely available, could inform both clinical decision making and optimal clinical trial design for targeted therapeutics.

Methods

Patients and Tumor Tissue Collection

Anonymized tumor specimens were obtained from the Cooperative Human Tissue Network (CHTN), Surgical Oncology University of Siena, Italy, and Dana-Farber Cancer Institute; human glioma samples were obtained from the clinical archives of the departments of Pathology at Children's Hospital Boston and Brigham and Women's Hospital. (The required tumor content was >70%; necrosis <10%.) Institutional review board (IRB) exemption was obtained for all samples from the Dana-Farber/Partners Cancer Care Office for the Protection of Research Subjects. DNA extraction was performed as described in Methods S1.

OncoMap Assay Design and Genotyping

Selection of cancer gene mutations for assay design and mass spectrometric genotyping were performed as previously described[6] with modifications indicated in Methods S1. Assay, primer and probe sequences are indicated in .

Sample Barcoding and Sequencing

Primers flanking KRAS codon 12 were used to PCR-amplify genomic DNA from 91 fresh frozen and 93 FFPE samples (primer sequences indicated in ). PCR amplicons were analyzed by Sanger sequencing. Alternatively, KRAS codon 12 was PCR-amplified with barcoded primers as described in Methods S1. PCR amplicons were pooled and analyzed (Illumina Genome Analyzer II; single lane). Sequence data was analyzed as described in Methods S1.

Results

Characteristics of Clinical Tumor Samples

A total of 903 clinical tumor specimens derived from 12 different tissue sites were assessed for this study ( ). The majority of samples were adenocarcinomas (n = 625) from tumors of the breast, lung, prostate, and GI tract. A collection of GISTs (n = 34) and gliomas (n = 155) were also included. Of these, 643 specimens were obtained from fresh frozen tissue and 260 derived from FFPE blocks. Estimated tumor content exceeded 70% in all samples as measured by pathological review (see Methods).
Table 1

Human tumor samples (fresh frozen and FFPE) investigated in this study.

Total Number of Samples TestedNumber of fresh frozen vs (FFPE) samplesTotal Number of Samples with MutationPercentage of samples with mutation
Brain 1550 (155)4428.40%
Breast 5320 (33)2139.60%
Colon 159113 (46)10264.20%
Endometrium 2323 (0)1878.30%
Esophagus 117117 (0)2924.80%
Gastric 233233 (0)9038.20%
Kidney 2626 (0)13.80%
Lung 260 (26)1557.70%
Ovary 99 (0)111.10%
Prostate 9595 (0)1010.50%
Thyroid 77 (0)457.10%
Total Numbers: 903 643 (260) 335 37.10%

Performance of the Tumor Mutation Profiling Algorithm

To facilitate cancer gene mutation profiling in clinical tumor specimens, we developed OncoMap, a panel of genotyping assays that assessed 396 unique mutations in 33 cancer genes. The complete mutation profiling algorithm ( ) involved mass spectrometric genotyping followed by both automated calling and manual review to generate a list of candidate mutations. These candidates were subjected to secondary genotyping validation (see Methods S1). Assuming that all primary profiling and assay validation reagents are in place, 7–10 days are required to complete the entire OncoMap sequence.
Figure 1

The OncoMap process and performance in fresh frozen and FFPE-derived DNA.

A. An overview of the OncoMap process from tumor to mutation profile. See text for details. B. Receiver operator characteristic curves (ROCs) show the sensitivity and specificity for various cutoff values on the sample score of the validation samples. ROCs are plotted for fresh frozen (left) and FFPE-derived (right) DNAs, using bidirectional KRAS assays and Illumina data as a truth-set (see Methods S1).

The OncoMap process and performance in fresh frozen and FFPE-derived DNA.

A. An overview of the OncoMap process from tumor to mutation profile. See text for details. B. Receiver operator characteristic curves (ROCs) show the sensitivity and specificity for various cutoff values on the sample score of the validation samples. ROCs are plotted for fresh frozen (left) and FFPE-derived (right) DNAs, using bidirectional KRAS assays and Illumina data as a truth-set (see Methods S1). OncoMap performance was assessed after determining the “ground-truth” mutational status at KRAS codon 12 using a DNA barcoding and massively parallel sequencing-by-synthesis strategy (see Methods S1) applied to 91 frozen and 93 FFPE-derived tumor DNAs. When these deep sequencing results were compared to genotyping assays interrogating the same KRAS codon, we found the OncoMap sensitivity and specificity to be 93.8% and 100%, respectively, in DNA from fresh/frozen tissue; and 89.3% and 99.4% in FFPE-derived DNA ( ). In contrast, the sensitivity of conventional Sanger sequencing was 83.3% for fresh frozen tissue and 76.0% for FFPE-derived DNA, confirming the heightened performance of genotyping-based mutation profiling [7]. OncoMap performance was evaluated more extensively by testing 215 fresh frozen tumor samples spanning multiple tumor types in which the mutational status for nucleotides interrogated by 52 OncoMap assays had been established previously. By this analysis, mutation profiling achieved a similarly high specificity of 99.8%. Assay sensitivity was optimal in tumor tissues where the tumor content exceeded 50% (data not shown). Although individual sensitivity values could not be determined for all mutations assayed, calculations using unidirectional KRAS assays (reflective of the majority of OncoMap assays) yielded nearly identical sensitivity and specificity values (). These results suggested that the genotyping-based mutation profiling platform was suitable for many clinical applications.

“Actionable” Cancer Gene Mutations across Diverse Cancer Types

Of the 903 clinical tumor specimens profiled, 37% (n = 335) contained one or more mutations. In total, 417 mutations were identified, with 63 samples exhibiting co-occurring mutations. Whereas 286 mutations were found by assays interrogating known or candidate oncogenes, 131 mutations were observed in TS genes. Thus, the OncoMap platform provided more extensive mutation information than earlier mutation profiling efforts which focused exclusively on oncogene mutations. As expected, the distribution of mutations reflected patterns previously observed in human tumors, although the frequency of TS mutations was lower (reflective of the reduced coverage of such mutations by OncoMap). Examples include PIK3CA (26%) and TP53 (13%) mutations in breast cancer; APC (11%), BRAF (10%), KRAS (38%), PIK3CA (11%) and TP53 (9%) mutations in colorectal cancer, and EGFR (12%), KRAS (23%) and STK11 (8%) mutations in lung cancer. The expected mutation distributions were observed in both fresh frozen and FFPE specimens, underscoring the potential utility of OncoMap in the clinical setting.

Mutations Predicting Response to Targeted Therapies

indicates a set of “actionable” cancer gene mutations identified herein. The OncoMap platform robustly detected mutations that constitute established markers of response to targeted therapies. For example, EGFR mutations predictive of response to erlotinib and gefitinib were identified at the expected frequency (12%) in non-small cell lung cancer, and KIT mutations linked to sensitivity to imatinib and nilotinib were detected in 76% of GISTs. Interestingly, ERBB2 mutations were detected in four gastric adenocarcinomas, raising the possibility of testing a HER-2 inhibitor such as trastuzumab in gastric cancer patients selected based on this genetic criterion [8].
Table 2

Druggable or actionable mutations identified in this study.

Tissue TypeGeneAmino acidN%
Brain (astrocytoma, ganglioglioma, glioblastoma)BRAFV600E2214.2
EGFRT263P10.6
PDGFRAD842V10.6
PIK3CAR88Q10.6
H1047R10.6
Breast (lobular and ductal carcinoma)AKT1E17K11.9
PIK3CAR88Q11.9
N345K11.9
E542K11.9
E545K23.8
H1047R917.0
Colon (adenocarcinoma)AKT1E17K10.6
BRAFD594G21.3
L597Q10.6
V600E138.2
KRASA146T10.6
G12A/C/D/S/V4528.3
G13C/D138.2
Q61H/L21.3
NRASQ61K10.6
PIK3CAR88Q10.6
E542K21.3
E545G/K138.2
H1047R21.3
PTENR130Q/*21.3
R233*21.3
K267fs*921.3
Endometrium (adenocarcinoma)AKT1E17K14.3
BRAFG466A14.3
FGFR2S252W14.3
C382R14.3
KRASG12A/V313.0
G13D14.3
PIK3CAR88Q14.3
C420R14.3
H701P14.3
H1047R417.4
PTENR130G/Q/*626.1
R173H14.3
N323fs*214.3
Esophagus (adenocarcinoma and squamous carcinoma)AKT1E17K10.9
PIK3CAE542K21.7
E545K10.9
H1047R10.9
Gastric (adenocarcinoma)AKT1E17K10.5
EGFRL858M10.5
ERBB2L755S31.5
V777L10.5
KRASG12C/D115.5
G13C/D52.5
PIK3CAR88Q10.5
C420R21.0
E542K84.0
E545K84.0
H1047R105.0
PTENK267fs*931.5
N323fs*210.5
N323fs*2110.5
GI tract (GIST)KITY503_F504insAY721.2
W557G26.1
W557_K558del26.1
W557_V559>C/F412.1
V559D13.0
V560D26.1
V560del26.1
L576P13.0
K642E26.1
V654A39.1
D816H13.0
N822K26.1
Y823D13.0
PDGFRAD842V13.0
Kidney (renal cell carcinoma)VHLL89H13.8
Lung (adenocarcinoma)EGFRL858R311.5
HRASQ61L13.8
KRASG12C/D415.4
Q61H27.7
Ovary (adenocarcinoma)BRAFV600E111.1
Prostate (adenocarcinoma)AKT1E17K11.1
FGFR3F384L11.1
PIK3CAH1047R11.1
G1049R11.1
PTENR173H11.1
Thyroid (papillary carcinoma)BRAFV600E457.1
Several tumors harbored mutations that may predict response to investigational agents. For example, BRAF mutations were identified in colorectal (n = 16), ovarian (n = 1), thyroid (n = 4) and endometrial (n = 1) cancers, as well as pediatric gangliogliomas (n = 22; see below). Tumors harboring these mutations may respond to a selective BRAF inhibitor[6], [9]. We also identified 96 samples across seven different cancer types (breast n = 14, colorectal n = 24, endometrial n = 15, esophageal n = 4, gastric n = 34, prostate n = 3, and pediatric astrocytoma n = 2) harboring mutations in either PIK3CA or PTEN. These mutations might be expected to enrich for tumors responsive to the PI3 kinase inhibitors currently in development.

Mutations Predicting Resistance to Targeted Therapies

Along with mutations that confer heightened sensitivity to targeted therapies, OncoMap robustly detected mutations associated with resistance to several agents. Established examples include KRAS mutations in non-small cell lung cancer (23%) and colorectal cancer (38%) that confer resistance to erlotinib, gefitinib (lung) or cetuximab (colorectal)[4], [10], [11]. While 94% of KRAS mutations identified localized to codons 12 or 13, 6% occurred elsewhere in the gene (most commonly at codon 61). Since most studies of KRAS-associated resistance have focused exclusively on codons 12 and 13[3], [12], [13], OncoMap identified additional KRAS mutations that may influence sensitivity to anti-EGFR treatment. OncoMap also identified an HRAS mutation in a lung adenocarcinoma and an NRAS mutation in a colorectal adenocarcinoma. Mutations involving alternate RAS isoforms are rare in these cancer types; conceivably, these might also confer resistance to anti-EGFR therapy. Mutation profiling also identified mutations that confer “secondary” resistance to targeted therapies (e.g., resistance alleles arising during the course of targeted therapy). In GIST tumors, where 31 KIT mutations were identified in 25 samples; both primary (imatinib-responsive) and secondary (imatinib-resistant) KIT mutations were observed, in keeping with prior mutation profiling studies [7]. In particular, several KIT mutations involving exon 9 (KIT Y503_or F504insAY; 5 cases) were detected in untreated GIST tumors. These mutations are associated with an increased drug requirement to elicit a clinical response [14], [15]. A PDGFRA mutation (D842V) predictive of resistance to imatinib [15] was also identified in one GIST sample. The AKT1 mutation has previously been reported in breast, colorectal and ovarian cancer. The OncoMap platform identified rare AKT1 mutations in these tumor types, as well as single AKT1 instances in endometrial, esophageal squamous, gastric, and prostate cancers. This mutation may predict resistance to PI3 kinase inhibition (and conceivably receptor tyrosine kinase inhibition) in some contexts [16].

Cancers with Co-Occurring “Actionable” Mutations

The presence of co-occurring mutations involving critical cancer genes may modify the clinical response to single-agent targeted therapy. Here, 20 adenocarcinomas (10 colorectal, two endometrial and 8 gastric) exhibited co-occurring PIK3CA and KRAS mutations. While coincident mutations in these genes have previously been reported in cancers of the large intestine [17], PIK3CA and KRAS mutations have typically exhibited a mutually exclusive pattern of occurrence in endometrial cancer [18], [19]. An endometrial adenocarcinoma with co-occurring FGFR2 and PTEN mutations was also identified. Two tumors harbored coincident BRAF and PTEN mutations (one endometrial, one colorectal), and an additional colorectal sample contained both a PIK3CA and a BRAF mutation. These tumors might be expected to exhibit resistance to receptor tyrosine kinase inhibition.

Molecular Classification of Pediatric Brain Tumors by Cancer Gene Mutation Profiling

The ability to perform robust mutation profiling of clinical and archival tumor tissue may promote systematic molecular characterization of “orphan” cancers, including some pediatric tumors where sufficient tissue is often lacking. To explore this hypothesis, OncoMap was used to query a series of pediatric low-grade gliomas (LGGs) whose mutation spectrum is incompletely defined. This analysis included genomic DNA from 127 pediatric and 28 adult gliomas (for comparison) spanning five histologic subtypes of pilocytic astrocytoma, ganglioglioma, and diffuse astrocytoma.

Candidate Prognostic or Therapeutic Targets in Pediatric Brain Tumors

Several potentially “actionable” cancer genes were found mutated in pediatric LGAs. Examples include PDGFRA (n = 1) and PIK3CA (n = 2), which may predict response to existing drugs (e.g., imatinib or nilotinib) or agents in development (e.g., PI3 kinase inhibitors). Two pediatric LGAs harbored mutations in MYC, a well established oncogene homologue of NMYC, which is amplified and indicative of poor prognosis in pediatric neuroblastoma [20], [21]. Thus, tumor mutation profiling may refine patient stratification and/or disease prognosis in some pediatric brain cancers.

BRAFV600E Mutations Are Common in Pediatric Gangliogliomas

Duplication of the BRAF locus has been reported as the most frequent aberration in pediatric LGAs (66% [18]), whereas activating point mutations in BRAF occur less commonly (4–6%) [22], [23]. We identified activating BRAF mutations in 11% (10/88) of pediatric LGAs—a higher percentage than previously reported [22], [23]. Interestingly, the BRAF mutation was most prevalent within the ganglioglioma subtype of pediatric LGAs (classical and non-classical; 8/14 tumors, p = 0.00005), as shown in . BRAF mutations were not identified in any of the adult tumors examined, although TP53 mutations commonly occurred in this setting (10/28 cases). Conversely, only 2 pediatric gliomas harbored a TP53 mutation; in both cases, this was coincident with another mutation (EGFR and FLNB, respectively). These results suggest that OncoMap might facilitate classification of low-grade astrocytomas and other rare tumor types based on genetic criteria.
Figure 2

BRAFV600E mutations detected in archival samples of pediatric gliomas.

Abbreviations: PA - pilocytic astrocytoma, WHO grade I; LGG, nos – low-grade glioma, not otherwise specified, WHO grade I or II; GG – ganglioglioma; A2 – astrocytoma, WHO grade II; HG – high-grade glioma, WHO grade III or IV. Parentheses indicate total number of samples (in chart) or number of samples with indicated mutation (outside chart).

BRAFV600E mutations detected in archival samples of pediatric gliomas.

Abbreviations: PA - pilocytic astrocytoma, WHO grade I; LGG, nos – low-grade glioma, not otherwise specified, WHO grade I or II; GG – ganglioglioma; A2 – astrocytoma, WHO grade II; HG – high-grade glioma, WHO grade III or IV. Parentheses indicate total number of samples (in chart) or number of samples with indicated mutation (outside chart).

Discussion

Clinical oncology is in the midst of transition from a treatment paradigm dictated primarily by the anatomic site of tumor origin to one in which genetic and/or molecular characteristics play a decisive role in guiding choice of therapy. Moreover, the proliferation of targeted agents in development and clinical practice necessitates concomitant implementation of companion diagnostic approaches that enrich for subpopulations most likely to respond to a drug. New diagnostic approaches are therefore needed to profile any tumor for pivotal genetic mutations in multiple cancer genes simultaneously, in contrast to most existing tests that focus on single genes (or proteins). In this study, we adapted genotyping-based mutation profiling for the characterization of both frozen and FFPE-derived tumor specimens spanning 12 cancer types. We robustly detected cancer gene mutations that direct clinical use and predict resistance to existing agents such as tyrosine kinase inhibitors (e.g., EGFR and KRAS mutations). We also identified multiple mutations that may guide the use of emerging agents. Finally, in a specific investigation of pediatric low-grade astrocytomas, we demonstrated the special value this platform may have for rare “orphan” cancers by identifying mutations that may inform molecular classification as well as new therapeutic avenues for children with these malignancies. Diagnostic interventions that successfully introduce tumor mutation profiling to clinical practice must circumvent several technical and logistical hurdles. Chief among these is the attainment of robust performance in samples derived from FFPE and/or archival tumor material. We found that the OncoMap platform achieved nearly 100% specificity in both fresh/frozen and FFPE-derived tumor DNA, indicating that false positive mutation calls are likely to be relatively rare with this approach. It should be noted, however, that achieving this level of specificity required the implementation of an analytical sequence in which raw genotyping data is subjected to automated base calling followed by manual review of candidate mutations and validation of all candidates using alternative genotyping chemistries. Thus, clinical implementation of OncoMap must incorporate both genomic data generation and bioinformatic analytical expertise into a molecular pathology or clinical diagnostic setting. The sensitivity of OncoMap is influenced by inherent technological parameters, individual mutation assay performance characteristics, and the quality and purity of tumor tissue. The 89–94% assay sensitivity observed in this study is sufficient for many translational and clinical applications; however, there are of course circumstances where even higher assay sensitivities will be desirable. Enrichment of tumor cells using core needle dissection or laser-capture microdissection prior to mutation profiling may offer one avenue to enhance sensitivity, particularly in tumors where the stromal or inflammatory content is high. At the same time, the sensitivity of OncoMap vastly exceeds that of Sanger sequencing, which remains the gold standard for many genetic diagnostic approaches. Furthermore, the breadth of cancer genes and specific mutations interrogated by OncoMap—supported by the aforementioned rigorous sensitivity and specificity determinations—substantially exceeds that of existing commercial mass spectrometric-based genomic profiling approaches[24]. Genomically guided therapies may play an especially prominent role in rare tumors where large randomized trials are often impractical. To test the ability of the OncoMap to identify uncommon and/or sample-limited tumors that may benefit from specific classes of therapeutic agents, we profiled a panel of pediatric low-grade gliomas for common cancer gene mutations. Knowledge of the genetic abnormalities present in pediatric LGAs is limited, though recent studies have identified BRAF translocations, chromosomal duplications, and occasional base mutations in low-grade astrocytomas[18], [25], as well as diverse mechanisms for activating the ERK/MAPK pathway in pilocytic astrocytomas [23]. These findings suggest that the small molecule inhibitors of BRAF already in adult trials may also represent promising therapeutics for subsets of these tumors. Our results indicate that the frequency of BRAF point mutations in pediatric LGAs as a whole may be higher than previously reported, and specifically that gangliogliomas possess BRAF V600E mutations at very high frequency. This observation may also aid in diagnostic identification of these tumors. Gangliogliomas, which tend to be indolent tumors, may therefore share some properties with cutaneous nevi, whose melanocyte precursors also derive from the nervous system (neural crest), exhibit indolent growth, and where the BRAF V600E mutation is also highly prevalent. We also identified several mutations not previously reported in pediatric astrocytoma, some of which (EGFR, PIK3CA, PDGFRA) represent potentially actionable targets. In concordance with previous reports [22], [26], [27] we observe that mutations in genes frequently observed in adult anaplastic astrocytomas and/or glioblastomas, such as TP53 or PTEN, are only rarely encountered in pediatric pilocytic and low-grade diffuse astrocytomas. Although our findings support the clinical feasibility of high-throughput tumor mutation profiling, we recognize that the mass spectrometric genotyping approach has certain limitations that may preclude its implementation as a definitive cancer diagnostics platform. These include the finite number of specific point mutations that can be assayed (designated a priori within a subset of cancer genes), difficulties in designing genotyping assays that identify small insertions or deletions (“in-dels”) larger than ∼50bp in size, an inability to detect most TS gene mutations (which may occur anywhere within the gene, not just “hotspot” regions) or additional genomic alterations such as high-level gene amplifications or deletions that may also affect key cancer genes, and the somewhat labor-intensive nature of manual review and orthogonal assay validation. Over the long term, the adaptation of new genomics technologies such as second generation sequencing may offer a unifying approach to comprehensive tumor mutation profiling. However, the OncoMap platform may offer one immediate avenue by which systematic mutation profiling might be initiated to guide clinical trial design as well as use of existing targeted agents across many cancer types. In summary, this study represents the first large-scale application of the OncoMap platform for tumor mutation profiling in the clinical and archival setting. These results therefore enliven a framework wherein systematic tumor profiling might emerge as a widely feasible means to guide patient stratification for rational cancer therapeutics. Despite the inherent complexity of cancer, incorporating the growing knowledge of the molecular basis of cancer into both large-scale molecular epidemiologic studies and, ultimately, clinical decision making should ultimately speed the advent of more effective anticancer therapies. Profiling critical cancer gene mutations in clinical tumor samples. (0.07 MB DOC) Click here for additional data file. OncoMap 3 core PCR primer and extension probe sequences. (0.13 MB XLS) Click here for additional data file. KRAS G12 PCR primer sequences used to generate amplicons for Sanger and Illumina sequencing. (0.03 MB XLS) Click here for additional data file. Performance of OncoMap in fresh frozen and FFPE-derived DNA. Receiver operator characteristic curves (ROCs) are plotted for fresh frozen (left panel) and FFPE-derived (right panel) DNAs, against unidirectional OncoMap KRAS assays, using Illumina data as a truth-set (see Methods S1). (0.06 MB PPT) Click here for additional data file.
  24 in total

1.  Mutations in the epidermal growth factor receptor and in KRAS are predictive and prognostic indicators in patients with non-small-cell lung cancer treated with chemotherapy alone and in combination with erlotinib.

Authors:  David A Eberhard; Bruce E Johnson; Lukas C Amler; Audrey D Goddard; Sherry L Heldens; Roy S Herbst; William L Ince; Pasi A Jänne; Thomas Januario; David H Johnson; Pam Klein; Vincent A Miller; Michael A Ostland; David A Ramies; Dragan Sebisanovic; Jeremy A Stinson; Yu R Zhang; Somasekar Seshagiri; Kenneth J Hillan
Journal:  J Clin Oncol       Date:  2005-07-25       Impact factor: 44.544

2.  Pilocytic astrocytomas do not show most of the genetic changes commonly seen in diffuse astrocytomas.

Authors:  Y Cheng; J C Pang; H K Ng; M Ding; S F Zhang; J Zheng; D G Liu; W S Poon
Journal:  Histopathology       Date:  2000-11       Impact factor: 5.087

3.  EGF receptor gene mutations are common in lung cancers from "never smokers" and are associated with sensitivity of tumors to gefitinib and erlotinib.

Authors:  William Pao; Vincent Miller; Maureen Zakowski; Jennifer Doherty; Katerina Politi; Inderpal Sarkaria; Bhuvanesh Singh; Robert Heelan; Valerie Rusch; Lucinda Fulton; Elaine Mardis; Doris Kupfer; Richard Wilson; Mark Kris; Harold Varmus
Journal:  Proc Natl Acad Sci U S A       Date:  2004-08-25       Impact factor: 11.205

4.  EGFR mutations in lung cancer: correlation with clinical response to gefitinib therapy.

Authors:  J Guillermo Paez; Pasi A Jänne; Jeffrey C Lee; Sean Tracy; Heidi Greulich; Stacey Gabriel; Paula Herman; Frederic J Kaye; Neal Lindeman; Titus J Boggon; Katsuhiko Naoki; Hidefumi Sasaki; Yoshitaka Fujii; Michael J Eck; William R Sellers; Bruce E Johnson; Matthew Meyerson
Journal:  Science       Date:  2004-04-29       Impact factor: 47.728

5.  Activating mutations in the epidermal growth factor receptor underlying responsiveness of non-small-cell lung cancer to gefitinib.

Authors:  Thomas J Lynch; Daphne W Bell; Raffaella Sordella; Sarada Gurubhagavatula; Ross A Okimoto; Brian W Brannigan; Patricia L Harris; Sara M Haserlat; Jeffrey G Supko; Frank G Haluska; David N Louis; David C Christiani; Jeff Settleman; Daniel A Haber
Journal:  N Engl J Med       Date:  2004-04-29       Impact factor: 91.245

6.  Amplification of N-myc in untreated human neuroblastomas correlates with advanced disease stage.

Authors:  G M Brodeur; R C Seeger; M Schwab; H E Varmus; J M Bishop
Journal:  Science       Date:  1984-06-08       Impact factor: 47.728

7.  Amplified DNA with limited homology to myc cellular oncogene is shared by human neuroblastoma cell lines and a neuroblastoma tumour.

Authors:  M Schwab; K Alitalo; K H Klempnauer; H E Varmus; J M Bishop; F Gilbert; G Brodeur; M Goldstein; J Trent
Journal:  Nature       Date:  1983 Sep 15-21       Impact factor: 49.962

8.  Duplication of 7q34 in pediatric low-grade astrocytomas detected by high-density single-nucleotide polymorphism-based genotype arrays results in a novel BRAF fusion gene.

Authors:  Angela J Sievert; Eric M Jackson; Xiaowu Gai; Hakon Hakonarson; Alexander R Judkins; Adam C Resnick; Leslie N Sutton; Phillip B Storm; Tamim H Shaikh; Jaclyn A Biegel
Journal:  Brain Pathol       Date:  2008-10-21       Impact factor: 6.508

9.  Efficacy and safety of imatinib mesylate in advanced gastrointestinal stromal tumors.

Authors:  George D Demetri; Margaret von Mehren; Charles D Blanke; Annick D Van den Abbeele; Burton Eisenberg; Peter J Roberts; Michael C Heinrich; David A Tuveson; Samuel Singer; Milos Janicek; Jonathan A Fletcher; Stuart G Silverman; Sandra L Silberman; Renaud Capdeville; Beate Kiese; Bin Peng; Sasa Dimitrijevic; Brian J Druker; Christopher Corless; Christopher D M Fletcher; Heikki Joensuu
Journal:  N Engl J Med       Date:  2002-08-15       Impact factor: 91.245

10.  The sequence of the human genome.

Authors:  J C Venter; M D Adams; E W Myers; P W Li; R J Mural; G G Sutton; H O Smith; M Yandell; C A Evans; R A Holt; J D Gocayne; P Amanatides; R M Ballew; D H Huson; J R Wortman; Q Zhang; C D Kodira; X H Zheng; L Chen; M Skupski; G Subramanian; P D Thomas; J Zhang; G L Gabor Miklos; C Nelson; S Broder; A G Clark; J Nadeau; V A McKusick; N Zinder; A J Levine; R J Roberts; M Simon; C Slayman; M Hunkapiller; R Bolanos; A Delcher; I Dew; D Fasulo; M Flanigan; L Florea; A Halpern; S Hannenhalli; S Kravitz; S Levy; C Mobarry; K Reinert; K Remington; J Abu-Threideh; E Beasley; K Biddick; V Bonazzi; R Brandon; M Cargill; I Chandramouliswaran; R Charlab; K Chaturvedi; Z Deng; V Di Francesco; P Dunn; K Eilbeck; C Evangelista; A E Gabrielian; W Gan; W Ge; F Gong; Z Gu; P Guan; T J Heiman; M E Higgins; R R Ji; Z Ke; K A Ketchum; Z Lai; Y Lei; Z Li; J Li; Y Liang; X Lin; F Lu; G V Merkulov; N Milshina; H M Moore; A K Naik; V A Narayan; B Neelam; D Nusskern; D B Rusch; S Salzberg; W Shao; B Shue; J Sun; Z Wang; A Wang; X Wang; J Wang; M Wei; R Wides; C Xiao; C Yan; A Yao; J Ye; M Zhan; W Zhang; H Zhang; Q Zhao; L Zheng; F Zhong; W Zhong; S Zhu; S Zhao; D Gilbert; S Baumhueter; G Spier; C Carter; A Cravchik; T Woodage; F Ali; H An; A Awe; D Baldwin; H Baden; M Barnstead; I Barrow; K Beeson; D Busam; A Carver; A Center; M L Cheng; L Curry; S Danaher; L Davenport; R Desilets; S Dietz; K Dodson; L Doup; S Ferriera; N Garg; A Gluecksmann; B Hart; J Haynes; C Haynes; C Heiner; S Hladun; D Hostin; J Houck; T Howland; C Ibegwam; J Johnson; F Kalush; L Kline; S Koduru; A Love; F Mann; D May; S McCawley; T McIntosh; I McMullen; M Moy; L Moy; B Murphy; K Nelson; C Pfannkoch; E Pratts; V Puri; H Qureshi; M Reardon; R Rodriguez; Y H Rogers; D Romblad; B Ruhfel; R Scott; C Sitter; M Smallwood; E Stewart; R Strong; E Suh; R Thomas; N N Tint; S Tse; C Vech; G Wang; J Wetter; S Williams; M Williams; S Windsor; E Winn-Deen; K Wolfe; J Zaveri; K Zaveri; J F Abril; R Guigó; M J Campbell; K V Sjolander; B Karlak; A Kejariwal; H Mi; B Lazareva; T Hatton; A Narechania; K Diemer; A Muruganujan; N Guo; S Sato; V Bafna; S Istrail; R Lippert; R Schwartz; B Walenz; S Yooseph; D Allen; A Basu; J Baxendale; L Blick; M Caminha; J Carnes-Stine; P Caulk; Y H Chiang; M Coyne; C Dahlke; A Deslattes Mays; M Dombroski; M Donnelly; D Ely; S Esparham; C Fosler; H Gire; S Glanowski; K Glasser; A Glodek; M Gorokhov; K Graham; B Gropman; M Harris; J Heil; S Henderson; J Hoover; D Jennings; C Jordan; J Jordan; J Kasha; L Kagan; C Kraft; A Levitsky; M Lewis; X Liu; J Lopez; D Ma; W Majoros; J McDaniel; S Murphy; M Newman; T Nguyen; N Nguyen; M Nodell; S Pan; J Peck; M Peterson; W Rowe; R Sanders; J Scott; M Simpson; T Smith; A Sprague; T Stockwell; R Turner; E Venter; M Wang; M Wen; D Wu; M Wu; A Xia; A Zandieh; X Zhu
Journal:  Science       Date:  2001-02-16       Impact factor: 47.728

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  173 in total

1.  Oncogene mutation profiling of pediatric solid tumors reveals significant subsets of embryonal rhabdomyosarcoma and neuroblastoma with mutated genes in growth signaling pathways.

Authors:  Neerav Shukla; Nabahet Ameur; Ismail Yilmaz; Khedoudja Nafa; Chyau-Yueh Lau; Angela Marchetti; Laetitia Borsu; Frederic G Barr; Marc Ladanyi
Journal:  Clin Cancer Res       Date:  2011-12-05       Impact factor: 12.531

Review 2.  Clinical implementation of comprehensive strategies to characterize cancer genomes: opportunities and challenges.

Authors:  Laura E MacConaill; Paul Van Hummelen; Matthew Meyerson; William C Hahn
Journal:  Cancer Discov       Date:  2011-09       Impact factor: 39.397

3.  Next-generation sequencing for cancer diagnostics: a practical perspective.

Authors:  Cliff Meldrum; Maria A Doyle; Richard W Tothill
Journal:  Clin Biochem Rev       Date:  2011-11

4.  Gene and drug matrix for personalized cancer therapy.

Authors:  Tim Harris
Journal:  Nat Rev Drug Discov       Date:  2010-08       Impact factor: 84.694

5.  The suitability of matrix assisted laser desorption/ionization time of flight mass spectrometry in a laboratory developed test using cystic fibrosis carrier screening as a model.

Authors:  Daniel H Farkas; Nicholas E Miltgen; Jay Stoerker; Dirk van den Boom; W Edward Highsmith; Lesley Cagasan; Ron McCullough; Reinhold Mueller; Lin Tang; John Tynan; Courtney Tate; Allan Bombard
Journal:  J Mol Diagn       Date:  2010-07-08       Impact factor: 5.568

6.  BRAF mutations in metanephric adenoma of the kidney.

Authors:  Toni K Choueiri; John Cheville; Emanuele Palescandolo; André P Fay; Philip W Kantoff; Michael B Atkins; Jesse K McKenney; Victoria Brown; Megan E Lampron; Ming Zhou; Michelle S Hirsch; Sabina Signoretti
Journal:  Eur Urol       Date:  2012-06-09       Impact factor: 20.096

Review 7.  Pediatric low-grade gliomas: how modern biology reshapes the clinical field.

Authors:  Guillaume Bergthold; Pratiti Bandopadhayay; Wenya Linda Bi; Lori Ramkissoon; Charles Stiles; Rosalind A Segal; Rameen Beroukhim; Keith L Ligon; Jacques Grill; Mark W Kieran
Journal:  Biochim Biophys Acta       Date:  2014-02-28

8.  CTLA4 blockade broadens the peripheral T-cell receptor repertoire.

Authors:  Lidia Robert; Jennifer Tsoi; Xiaoyan Wang; Ryan Emerson; Blanca Homet; Thinle Chodon; Stephen Mok; Rong Rong Huang; Alistair J Cochran; Begoña Comin-Anduix; Richard C Koya; Thomas G Graeber; Harlan Robins; Antoni Ribas
Journal:  Clin Cancer Res       Date:  2014-02-28       Impact factor: 12.531

9.  Somatic Mutations Drive Distinct Imaging Phenotypes in Lung Cancer.

Authors:  Emmanuel Rios Velazquez; Chintan Parmar; Ying Liu; Thibaud P Coroller; Gisele Cruz; Olya Stringfield; Zhaoxiang Ye; Mike Makrigiorgos; Fiona Fennessy; Raymond H Mak; Robert Gillies; John Quackenbush; Hugo J W L Aerts
Journal:  Cancer Res       Date:  2017-05-31       Impact factor: 12.701

10.  Genomic Characterization of Non-Small-Cell Lung Cancer in African Americans by Targeted Massively Parallel Sequencing.

Authors:  Luiz H Araujo; Cynthia Timmers; Erica Hlavin Bell; Konstantin Shilo; Philip E Lammers; Weiqiang Zhao; Thanemozhi G Natarajan; Clinton J Miller; Jianying Zhang; Ayse S Yilmaz; Tom Liu; Kevin Coombes; Joseph Amann; David P Carbone
Journal:  J Clin Oncol       Date:  2015-04-27       Impact factor: 44.544

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