Literature DB >> 27782854

Molecular profiling of advanced solid tumors and patient outcomes with genotype-matched clinical trials: the Princess Margaret IMPACT/COMPACT trial.

Tracy L Stockley1,2,3, Amit M Oza4,5, Hal K Berman1,2, Natasha B Leighl4,5, Jennifer J Knox4,5, Frances A Shepherd4,5, Eric X Chen4,5, Monika K Krzyzanowska4,5, Neesha Dhani4,5, Anthony M Joshua4,5, Ming-Sound Tsao1,2,6, Stefano Serra1,2, Blaise Clarke1,2, Michael H Roehrl1,2,6, Tong Zhang1, Mahadeo A Sukhai1, Nadia Califaretti7,8, Mateya Trinkaus9, Patricia Shaw1,2, Theodorus van der Kwast1,2, Lisa Wang10, Carl Virtanen3,11, Raymond H Kim3,4,5, Albiruni R A Razak4,5, Aaron R Hansen4,5, Celeste Yu3, Trevor J Pugh3,6,11, Suzanne Kamel-Reid1,2,3,6, Lillian L Siu3,4,5, Philippe L Bedard12,13,14.   

Abstract

BACKGROUND: The clinical utility of molecular profiling of tumor tissue to guide treatment of patients with advanced solid tumors is unknown. Our objectives were to evaluate the frequency of genomic alterations, clinical "actionability" of somatic variants, enrollment in mutation-targeted or other clinical trials, and outcome of molecular profiling for advanced solid tumor patients at the Princess Margaret Cancer Centre (PM).
METHODS: Patients with advanced solid tumors aged ≥18 years, good performance status, and archival tumor tissue available were prospectively consented. DNA from archival formalin-fixed paraffin-embedded tumor tissue was tested using a MALDI-TOF MS hotspot panel or a targeted next generation sequencing (NGS) panel. Somatic variants were classified according to clinical actionability and an annotated report included in the electronic medical record. Oncologists were provided with summary tables of their patients' molecular profiling results and available mutation-specific clinical trials. Enrolment in genotype-matched versus genotype-unmatched clinical trials following release of profiling results and response by RECIST v1.1 criteria were evaluated.
RESULTS: From March 2012 to July 2014, 1893 patients were enrolled and 1640 tested. After a median follow-up of 18 months, 245 patients (15 %) who were tested were subsequently treated on 277 therapeutic clinical trials, including 84 patients (5 %) on 89 genotype-matched trials. The overall response rate was higher in patients treated on genotype-matched trials (19 %) compared with genotype-unmatched trials (9 %; p < 0.026). In a multi-variable model, trial matching by genotype (p = 0.021) and female gender (p = 0.034) were the only factors associated with increased likelihood of treatment response.
CONCLUSIONS: Few advanced solid tumor patients enrolled in a prospective institutional molecular profiling trial were treated subsequently on genotype-matched therapeutic trials. In this non-randomized comparison, genotype-enrichment of early phase clinical trials was associated with an increased objective tumor response rate. TRIAL REGISTRATION: NCT01505400 (date of registration 4 January 2012).

Entities:  

Keywords:  Clinical trials; DNA sequencing; Molecular profiling; Precision medicine; Solid tumors

Mesh:

Substances:

Year:  2016        PMID: 27782854      PMCID: PMC5078968          DOI: 10.1186/s13073-016-0364-2

Source DB:  PubMed          Journal:  Genome Med        ISSN: 1756-994X            Impact factor:   11.117


Background

Molecular profiling can provide diagnostic, prognostic, or treatment-related information to guide cancer patient management. Advances in next-generation sequencing (NGS) have enabled multiplex testing to overcome the constraints associated with sequential single-analyte testing [1-3]. Large-scale research projects have elucidated genomic landscapes of many cancers but have provided limited insight into the clinical utility of genomic testing. Our aim was to evaluate if targeted DNA profiling improves outcomes for patients assigned to clinical trials based on knowledge of actionable somatic mutations. At the Princess Margaret Cancer Centre (PM), the Integrated Molecular Profiling in Advanced Cancers Trial (IMPACT) and Community Molecular Profiling in Advanced Cancers Trial (COMPACT) are prospective studies that provide molecular characterization data to oncologists to match patients with advanced solid tumors to clinical trials with targeted therapies. Here, we report the frequency of alterations, clinical “actionability” of the somatic variants, clinical trial enrollment, and outcome based upon molecular profiling results.

Methods

Patient cohort

For IMPACT, patients with advanced solid tumors treated at PM were prospectively consented for molecular profiling during a routine clinical visit. For COMPACT, patients with advanced solid tumors treated at other hospitals in Ontario were referred to a dedicated weekly clinic at PM for eligibility review, consent, and blood sample collection. Eligible patients had advanced solid tumors, were aged ≥18 years, had Eastern Cooperative Oncology Group (ECOG) performance status ≤1, and had available formalin-fixed paraffin-embedded (FFPE) archival tumor tissue. The University Health Network Research Ethics Board approved this study (#11-0962-CE). Enrollment for IMPACT began on 1 March 2012 and for COMPACT on 16 November 2012 and ended on 31 July 2014 for this analysis.

Specimens

DNA was extracted from sections of FFPE tumor specimens from biopsies or surgical resections. If multiple archival tumor specimens were available, the most recent archival FFPE specimen was reviewed, with a minimum acceptable tumor cellularity of 10 %. Tumor regions were isolated by 1–2 × 1 mm punch from FFPE blocks or manual macrodissection of unstained material from 15–20 slides. FFPE samples were deparaffinized, cells lysed with proteinase K, and DNA extracted using the QIAmp DNA FFPE Tissue Kit (Qiagen, Germantown, MD, USA). DNA was quantified using the Qubit dsDNA Assay kit on the Qubit 2.0 Fluorometer (ThermoFisher Scientific, Waltham, MA, USA). Participants provided a peripheral blood sample (5 mL in EDTA-coated tubes) as a source of matched germline DNA. DNA was extracted using either standard manual phenol/chloroform extraction methods or automated extraction (MagAttract DNA Mini M48 kit; Qiagen). Patients were offered return of pathogenic germline results at the time of consent and asked to identify a family member delegate who could receive results on their behalf if required.

Molecular profiling assays

All testing was performed in a laboratory accredited by the College of American Pathologists (CAP) and certified to meet Clinical Laboratory Improvement Amendments (CLIA). Three molecular profiling assays were used over the study period: a custom multiplex genotyping panel on a matrix-assisted laser desorption/ionization time-of-flight (MALDI-TOF) mass-spectrometry platform (MassARRAY, Agena Bioscience, San Diego, CA, USA) to genotype 279 mutations within 23 genes (Additional file 1: Table S1); the TruSeq Amplicon Cancer Panel (TSACP, Illumina) on the MiSeq sequencer (Illumina) covering regions of 48 genes (Additional file 1: Table S2); and the Ion AmpliSeq Cancer Panel (ASCP, ThermoFisher Scientific) on the Ion Proton sequencer (ThermoFisher Scientific) covering regions of 50 genes (Additional file 1: Table S3). For more in-depth methodology on molecular profiling assays, including sequence alignment and base calling, see Additional file 1: Supplementary Methods.

Variant assessment and classification

Variants were assessed and classified according to the classification scheme of Sukhai et al. [4]. Briefly, a five-class scheme was used to sort variants according to actionability (defined as providing information on prognosis, prediction, diagnosis, or treatment), recurrence of variants in specific tumor sites, and known or predicted deleterious effects on protein function. Interpretation and data integration were performed using Alamut v.2.4.5 (Interactive Biosoftware, Rouen, France). Primary review, assessment, and classification of all variants were independently performed by a minimum of two assessors followed by a third review prior to reporting, with cases where assessors disagreed resolved by group discussion.

Immunohistochemistry (IHC)

Phosphatase and tensin homolog (PTEN) IHC was performed using rabbit monoclonal Ab 138G6 (Cell Signaling Technology, Danvers, MA, USA) on a Dako platform using a dilution of 1:50 and Flex + 30 protocol. Complete absence of tumor cell staining with positive staining of surrounding tumor stroma fibroblasts/endothelial cells was used to denote PTEN deficiency [5].

Return of testing results

The molecular profiling report was included in the electronic medical record and returned to the treating oncologist. The clinical significance of profiling results was discussed with PM patients during a routine clinic visit by their treating oncologist. A PM oncologist reviewed results with patients treated at other hospitals by telephone. All oncologists were provided with regular summary tables of testing results and mutation-specific clinical trial listings available at PM. A monthly genomic tumor board was convened at PM to establish consensus treatment recommendations for patients with complex profiling results. A committee consisting of a molecular geneticist, medical geneticist, genetic councilor, and medical oncologist reviewed pathogenic germline variants before return of germline testing results. Germline results were disclosed to the patient or designate by a genetic counselor or medical geneticist.

Clinical data collection

For each patient, baseline patient and tumor characteristics, treatment regimen(s), time on treatment(s) and survival were retrieved from medical records and updated every three months. Therapeutic clinical trial enrollment was evaluated from the date of reporting molecular profiling results until 9 January 2015. Genotype-matched trials were defined as studies with eligibility criteria restricted to patients with specific somatic mutations, those with a targeted drug with enriched clinical or preclinical activity in a patient’s genotype, or those with a drug that inhibited a pathway directly linked to the somatic mutation. Decisions about trial enrollment were based upon trial availability, patient or physician preference, and did not follow a pre-specified algorithm. Targeted lesion measurements and RECIST 1.1 [6] assessments were performed by radiologists.

Statistics

Descriptive statistics were used to summarize patient characteristics, profiling results, and anti-tumor activity. Comparisons between patients with profiling results treated on genotype-matched and genotype-unmatched trials were performed using a generalized estimating equation (GEE) model [7]. A multi-variable GEE model for response included trial matching by genotype, gender, trial phase, number of lines of prior systemic therapy, investigational agent class, age, tumor type, and sequencing platform. A mixed model was used to compare time on treatment, defined as the date of trial enrollment until the date of discontinuation of investigational treatment. A robust score test was used to compare overall survival following trial enrolment between genotype-matched and genotype-unmatched groups [8]. These comparisons accounted for individual patients who were included on multiple therapeutic trials [8]. Differences with p values of < 0.05 were considered statistically significant.

Results

A total of 1893 patients were enrolled, including gynecological (23 %), breast (18 %), lung (18 %), colorectal (17 %), pancreatobiliary (8 %), upper aerodigestive (6 %), genitourinary (5 %), and other (5 %) cancers (Table 1). The median age was 59 years (age range, 18–89 years); patients were predominantly female (69 %); had received a median of 2 prior systemic treatments (range, 1–18), and had excellent performance status (43 % PS0 and 56 % PS1). Of 253 (13 %) screen failures, 10 % were for insufficient tissue or DNA and 3 % for clinical deterioration or other reasons. The median follow-up from reporting results was 18 months (range, 1–33 months). A total of 651 (40 %) patients were deceased at the time of the database lock.
Table 1

Characteristics of patients enrolled into IMPACT/COMPACT (n = 1893)

Patients enrolledPatients enrolledPatients profiledPatients profiled enrolled on any therapeutic trialsPatients profiled enrolled on genotype-matched trials
Median age (range)59 (18–89)58 (18–89)58 (18–81)58 (24–81)
Female/Male1303/590 (59 %)/(31 %)1166/479 (71 %)/(29 %)205/72 (74 %)/(26 %)64/25 (72 %)/(28 %)
Median lines of prior treatment (range)2 (1–18)2 (1–18)2 (1–16)2 (1–11)
ECOG performance status (0/1/2)43 %/56 %/<1 %44 %/55 %/<1 %78 %/22 %/0 %78 %/22 %/0 %
Median time from collection of archival tumor sample to profiling report in years (range)1.6 (0.1-24.9)1.7 (0.1-18.9)1.9 (0.1-18.9)
Primary lesion/Metastatic lesion profiled1080/560193/8466/23
(66 %)/(34 %)(70 %)/(30 %)(74 %)/(26 %)
Tumor types
 Breast341 (18 %)310 (19 %)41/310 (13 %)19/310 (6 %)
 Colorectal326 (17 %)299 (18 %)38/299 (13 %)18/299 (6 %)
 Gynecological430 (23 %)405 (25 %)80/405 (20 %)20/405 (5 %)
 Lung339 (18 %)256 (16 %)43/256 (17 %)18/256 (7 %)
 Genitourinary92 (5 %)74 (5 %)9/74 (12 %)4/74 (5 %)
 Pancreatobiliary151 (8 %)104 (6 %)9/104 (9 %)1/104 (1 %)
 Upper aerodigestive115 (6 %)102 (6 %)8/102 (8 %)2/102 (2 %)
 Other99 (5 %)81 (5 %)17/81 (21 %)2/81 (2 %)
 TOTAL18931640245/1640 (15 %)84/1640 (5 %)
Characteristics of patients enrolled into IMPACT/COMPACT (n = 1893)

Molecular profiling

Successful molecular profiling was achieved in 1640 patients (87 %), 827 (50 %) had samples tested by MALDI-TOF MS, 792 (48 %) by TSACP, and 21 (1 %) by ASCP (Fig. 1). One or more somatic mutations were detected in 341 (41 %) patients tested by MALDI-TOF MS, 583 (74 %) by TSACP, and 14 (67 %) by ASCP. Median laboratory turnaround time (sample receipt to report) was 32 days (range, 6–228 days). Of patient samples tested by MALDI-TOF MS, KRAS (21 %) was the most frequently mutated gene, followed by PIK3CA (12 %), with additional genes in the range of 1–5 % frequency. Of samples tested by the TSACP, TP53 had the highest mutation frequency (47 % of all identified variants), followed by KRAS, PIK3CA, and APC with mutation frequencies in the range of 5–15 % and the remainder <5 % (Fig. 2). We attribute the difference in mutation landscape between these two platforms to inclusion of TP53 in the TSACP assay but not in MALDI-TOF (see Additional file 1: Supplemental Methods).
Fig. 1

CONSORT diagram

Fig. 2

Mutation frequency by gene from results of (a) MALDI-TOF, n = 827, and (b) TruSeq Amplicon Cancer Panel, n = 792. Mutation frequency was calculated as number of variant occurrences within each gene divided by the total number of patients

CONSORT diagram Mutation frequency by gene from results of (a) MALDI-TOF, n = 827, and (b) TruSeq Amplicon Cancer Panel, n = 792. Mutation frequency was calculated as number of variant occurrences within each gene divided by the total number of patients Class 1 and 2 variants are the most clinically significant with known actionability for the specific variant in the tumor site tested (Class 1) or a different tumor site (Class 2) [4]. More than 20 % of patients with breast, colorectal, gynecologial, lung, or pancreatobiliary cancers had Class 1 or 2 variants detected by TSACP or MALDI-TOF (Fig. 3). Of patients with genitourinary cancers, only 9 % had actionable variants identified on TSACP and 3 % on MALDI-TOF. For patients with other solid tumors, 25 % had actionable variants identified on TSACP and 18 % on MALDI-TOF. PTEN protein expression was lost by IHC for 122/788 (15 %) tumors tested. PTEN gene mutations were detected by NGS in 14/122 (11.5 %) tumors that were PTEN-negative by IHC.
Fig. 3

Distribution of patients by tumor site and most actionable variant identified [4]. Cases tested with TruSeq Amplicon Cancer Panel (TSACP; n = 792) are shown in (a) and (b); cases tested by MALDI-TOF MS (n = 827) are shown in (c) and (d). a Proportion and number of variants by tumor site, TSACP. b Actionability of variants by tumor site, TSACP. c Proportion and number of variants by tumor site, MALDI-TOF. d Actionability of variants per case by tumor site, MALDI-TOF. Patients with more than one variant were counted once by their most actionable variant class. Total number of patients is indicated by value within or below each bar section. “Gyne-other” includes cervical, endometrial, fallopian tube, uterine, and vulvar

Distribution of patients by tumor site and most actionable variant identified [4]. Cases tested with TruSeq Amplicon Cancer Panel (TSACP; n = 792) are shown in (a) and (b); cases tested by MALDI-TOF MS (n = 827) are shown in (c) and (d). a Proportion and number of variants by tumor site, TSACP. b Actionability of variants by tumor site, TSACP. c Proportion and number of variants by tumor site, MALDI-TOF. d Actionability of variants per case by tumor site, MALDI-TOF. Patients with more than one variant were counted once by their most actionable variant class. Total number of patients is indicated by value within or below each bar section. “Gyne-other” includes cervical, endometrial, fallopian tube, uterine, and vulvar

Clinical trials and outcomes

Of the 1640 patients with molecular profiling results, 245 (15 %) were subsequently enrolled in 277 therapeutic clinical trials, including 84 (5 %) treated on 89 genotype-matched trials (Table 2). Patients with pancreatobiliary, upper aerodigestive tract, and other solid tumors were least likely to be treated on genotype-matched trials. Somatic mutations in four genes (PIK3CA, KRAS, BRAF, and EGFR) accounted for 76/89 (85 %) of genotype-matched trial enrollments: including PIK3CA for breast cancer (20/22); BRAF (5/18) and KRAS (9/18) for colorectal cancer; KRAS (9/18) and EGFR (7/18) for non-small cell lung cancer; and KRAS (14/22) and PIK3CA (7/22) for gynecological cancers. A complete list of genotype-matched clinical trials by drug class, somatic genotype (variant level), and tumor type are summarized in Table 3.
Table 2

Characteristics of patients enrolled in therapeutic trials following molecular profiling

All trialsGenotype-matchedGenotype-unmatched p value
Median age (range)58 (18–81)58 (24–81)58.5 (18–80)NS
Female/Male205/7264/25141/47NS
Median prior systemic therapies (range)2 (1–16)2 (1–11)2 (1–16)NS
Tumor type (number of patients)
 Breast472225NS
 Colorectal431825
 Lung481830
 Gynecological912269
 Other48939
Genotyping platform (number of patients)
 MALDI-TOF MS panel17661115NS
 TruSeq Amplicon cancer panel1012873
 Ampliseq cancer panel000
Trial phase (number of patients)
 Phase I1587286<0.001
 Phase II67958
 Phase III52844
Investigational agent(s) (number of patients)
 Targeted monotherapy1122389<0.001
 Targeted drug combination875928
 Targeted drug and chemotherapy43736
 Immunotherapy34034
 Radiotherapy101

NS not significant

Table 3

Genotype-matched clinical trials by drug class, somatic genotypes (variant level), and tumor type (n = 89)

Tumor typeSomatic genotype (variant)Genotype-matching trial drug classTarget lesion percent change
Colorectal No mutations (KRAS wildtype) EGFR−100 %
Breast PIK3CA E545K PI3K, Endocrine−90 %
Colorectal BRAF V600E BRAF, PI3K, EGFR−85 %
Colorectal BRAF V600E BRAF, PI3K, EGFR−81 %
TP53 S215G
Gynecological KRAS G13D PI3K, MEK−70 %
Gynecological PIK3CA H1047R VEGF−64 %
KRAS G12D
Gynecological KRAS G12V PI3K, MEK−63 %
Breast PIK3CA H1047R PI3K, IGF1R−61 %
Lung EGFR E746_A750del EGFR−58 %
EGFR T790M
Lung KRAS G13D MEK−54 %
Breast PIK3CA H1047R PI3K−50 %
Lung EGFR L858R EGFR−47 %
EGFR T790M
CTNNB1 S37C
Gynecological KRAS G12D MEK−47 %
Gynecological KRAS G12V PI3K, IGF1R−45 %
NRAS Q61R
Gynecological KRAS G12A PI3K, MEK−38 %
Breast PIK3CA N345K ANG2, MTOR−37 %
Lung KRAS G12D PI3K, MEK−37 %
Gynecological PIK3CA H1047R PI3K, MEK−37 %
KRAS G12D
Lung KRAS G12C MEK−28 %
Gynecological TP53 K132N WEE1−26 %
Gynecological KRAS G12D PI3K, MEK−25 %
Colorectal BRAF V600E BRAF, PI3K, EGFR−24 %
TP53 R273C
PIK3CA Q546K
APC E1544X
Breast ERBB2 D769H HER2−23 %
PIK3CA N345K
Upper aerodigestive BRAF V600E MEK−20 %
Lung KRAS G12S MEK−20 %
Gynecological KRAS G12D MEK, PI3K−20 %
Colorectal BRAF V600E BRAF, PI3K, EGFR−20 %
TP53 R175H
TP53 Q165X
Breast FGFR2 Y376C FGFR−19 %
Breast PIK3CA H1047L PI3K−18 %
Other GNAQ Q209P MEK−18 %
Lung EGFR L858R HER3, EGFR−18 %
Lung KRAS G12A PI3K, MEK−17 %
Lung EGFR L858R HER3, EGFR−17 %
Colorectal KRAS G12D PI3K, MEK−16 %
PIK3CA E545K
Gynecological KRAS G12V PI3K, MEK−16 %
Gynecological BRAF V600E MEK−15 %
Gynecological KRAS G12D PI3K, MEK−15 %
Lung KRAS G12V PI3K, MEK−13 %
Colorectal KRAS G12S MEK, EGFR−13 %
Gynecological NRAS Q61K PI3K, MEK−13 %
Pancreatobiliary KRAS G12V PI3K, IGF1R−13 %
Gynecological PIK3CA H1047R ANG2, mTOR−9 %
Breast PIK3CA E545K AKT−7 %
Colorectal KRAS G12V MEK, EGFR−7 %
Breast ERBB2 D769H PI3K, IGF1R−7 %
PIK3CA N345K
Lung KRAS G12V MEK−6 %
Colorectal ERBB2 L755S VEGF, ANG2−6 %
BRAF N581S
ERBB2 L755S
APC Q1429fs
Genitourinary No mutations PI3K−5 %
PTEN negative on IHC
Lung EGFR L858R EGFR−4 %
Lung EGFR L858R EGFR−4 %
Lung EGFR E746_A750del EGFR−3 %
Breast PIK3CA H1047R AKT−3 %
Upper aerodigestive KRAS G12V PI3K, MEK−2 %
Gynecological KRAS G12D PI3K, MEK−2 %
Colorectal KRAS G13D MEK, EGFR−0.6 %
Genitourinary No mutations PI3K0 %
PTEN negative on IHC
Breast PIK3CA H1047R PI3K0 %
Colorectal PIK3CA E542K PI3K+0.5 %
KRAS G12V
Colorectal No Mutations (KRAS wildtype) MEK, EGFR+2 %
Colorectal KRAS G13D PI3K, MEK+2 %
PIK3CA E545K
Breast PIK3CA H1047L PI3K, IGF1R+4 %
Genitourinary No mutations PI3K+4 %
PTEN negative on IHC
Gynecological PIK3CA E545K MTOR+5 %
Breast PIK3CA N345K PI3K, IGF1R+6 %
Breast PIK3CA N345K PI3K, MEK+6 %
NRAS G12D
Gynecological PIK3CA C420R FGFR, PI3K+8 %
Colorectal KRAS G12D MEK, EGFR+9 %
Lung PIK3CA E545K PI3K, IGF1R+11 %
Colorectal No mutations (KRAS wildtype) MEK, EGFR+11 %
Colorectal KRAS G12D PI3K, MEK+12 %
PIK3CA Q546K
Gynecological PIK3CA H1047R PI3K, IGF1R+12 %
Breast PIK3CA p.Glu545Gly AKT+28 %
PTEN p.Leu320X
PIK3CA p.Arg93Gln
Gynecological TP53 R175H PI3K+29 %
PIK3CA R93W
FBXW7 R479Q
Colorectal KRAS G12D PI3K, MEK+30 %
PIK3CA E545K
Genitourinary PIK3CA p.Asn345Lys PI3K+31 %
Breast PIK3CA E545K FGFR, PI3K+32 %
Breast PIK3CA H1047R PI3K, IGF1R+39 %
Colorectal No mutations (KRAS wildtype) MEK, EGFR+55 %
Breast PIK3CA E542K PI3K, Endocrine+66 %
Breast PIK3CA N345K PI3K, IGF1RNE
Lung KRAS G12C PI3K, MEKNE
Breast PIK3CA H1047R PI3K, IGF1RNE
Lung KRAS G12A MEKNE
PIK3CA H1047R
Gynecological KRAS G12A PI3K, IGF1RNE
Breast PIK3CA E545K PI3KNE
TP53 L252del
BRAF c.1315-4C > G
Gynecological KRAS G12V MEKNE
Lung BRAF V600E MEKNE
Breast PIK3CA H1047L PI3KNE
TP53 C238Y
Other KIT V559A PI3K, EGFRNE
Characteristics of patients enrolled in therapeutic trials following molecular profiling NS not significant Genotype-matched clinical trials by drug class, somatic genotypes (variant level), and tumor type (n = 89) The age and sex distribution, as well as the number of lines of prior systemic therapy, were similar between the genotype-matched and genotype-unmatched trial patient cohorts (Table 2). There was no difference in the proportion of trials that were genotype-matched between patients profiled on MALDI-TOF MS (61/176 [35 %]) compared with TSACP (28/101 [28 %]; p = 0.24). A higher proportion of genotype-matched trial patients were treated in phase I studies (81 %) compared with genotype-unmatched trials (46 %; p < 0.001). Genotype-matched trial patients were more likely to be treated with targeted drug combinations without chemotherapy or immunotherapy. The overall response rate was higher in patients treated on genotype-matched trials (19 %) compared with genotype-unmatched trials (9 %; p = 0.026) (Fig. 4). In multi-variable analysis, trial matching according to genotype (p = 0.021) and female gender (p = 0.034) were the only statistically significant factors associated with response (Additional file 1: Table S4). Genotype-matched trial patients were more likely to achieve a best response of any shrinkage in the sum of their target lesions (62 %) compared with genotype-unmatched trial patients (32 %; p < 0.001). There was no difference in the time on treatment (15 months versus 15 months; p = 0.12) or overall survival (16 months versus 13 months; p = 0.10) for patients treated on genotype-matched versus genotype-unmatched trials.
Fig. 4

a Waterfall plot of best tumor shrinkage of target lesions by RECIST for patients treated on (a) genotype-matched clinical trials (n = 79) and (b) genotype-unmatched clinical trials (n = 150)

a Waterfall plot of best tumor shrinkage of target lesions by RECIST for patients treated on (a) genotype-matched clinical trials (n = 79) and (b) genotype-unmatched clinical trials (n = 150)

Germline testing

Of the patients who were asked during consent about return of incidental pathogenic germline mutations, 658/698 (94.3 %) indicated that they wished to receive these results. Two patients were identified with TP53 variants in DNA extracted from blood. The first patient was a 36-year-old woman diagnosed with metastatic breast cancer, with a prior papillary thyroid cancer at the age of 28 years, who had a heterozygous germline TP53 c.817C > T (p.Arg273Cys) pathogenic mutation. Her family history was notable for her mother who died from cancer of unknown primary at the age of 63 years and a maternal aunt with breast cancer at the age of 62 years. The second patient, a 77-year-old woman diagnosed with metastatic cholangiocarcinoma, had no family history of malignancy. We detected a heterozygous TP53 c.524G > A (p.Arg175His) pathogenic mutation at 15 % allele frequency in the blood that was not present in tumor. This finding is not consistent with inherited Li-Fraumeni syndrome (LFS), but may represent either clonal mosaicism or an age-related or treatment-related mutation limited to blood.

Discussion

We demonstrated that molecular profiling with mass-spectrometry-based genotyping or targeted NGS can be implemented in a large academic cancer center to identify patients with advanced solid tumors who are candidates for genotype-matched clinical trials. The rapid enrolment to our study reflects the high level of motivation of patients and their oncologists to pursue genomic testing that has been previously reported by our group [9, 10] and others [1, 11–13]. Disappointingly, only 5 % of patients who underwent successful molecular profiling in our study were subsequently treated on genotype-matched clinical trials, consistent with other centers. For comparison, the MD Anderson institutional genomic testing protocol matched 83/2000 (4 %) of patients [1], the SAFIR-01 breast cancer trial matched 28/423 (7 %) [14], and the British Columbia Cancer Agency Personalized Oncogenomics Trial matched 1/100 (1 %) [15]. To facilitate trial accrual, we incorporated multidisciplinary tumor board discussions, physician-directed email alerts with genotype-matched trial listings available at our institution, and individual physician summaries of profiling results. In spite of these efforts, the rate of genotype-matched clinical trial enrolment was low, due to patient deterioration, lack of available clinical trials, and unwillingness of patients to travel for clinical trial participation. There was no difference in proportion of patients treated on genotype-matched trials who underwent profiling using MALDI-TOF or a larger targeted NGS panel. This highlights how few somatic mutations are truly “druggable” through clinical trial matching, even in a large academic cancer center with a broad portfolio of phase I/II trials. A key finding of our study is that patients in genotype-matched trials were more likely to achieve response than patients in genotype-unmatched trials. Albeit a non-randomized comparison, this finding comprises an important metric and distinguishes our molecular profiling program from other prospective studies that have not tracked longitudinal clinical outcome [1, 16, 17]. Von Hoff and colleagues were the first to report clinical outcome from a prospective molecular profiling (MP) study, with 18/66 (27 %) of patients who received treatment guided by MP data, including RNA-expression profiling and immunohistochemistry (IHC) or fluorescence in situ hybridization (FISH) testing for 11 markers, achieving a progression-free survival (PFS) ratio on MP-selected therapy/PFS on prior therapy) of ≥ 1.3 [18]. This study was performed prior to the era of multiplex mutation testing and many patients received MP-guided therapy with cytotoxic therapy using biomarker data that has not been shown to influence treatment response. An analysis of 1114 patients treated on investigational clinical trials at the Clinical Center for Targeted Therapy at MD Anderson Cancer Center reported that the response rate for patients with ≥1 molecular alteration treated on trials with matched therapy was higher (27 % versus 5 %, p < 0.0001) and the time to treatment failure was longer (5.2 versus 3.1 months; p < 0.0001) than those who received non-matched therapy [19]. Limitations of this study were that some patients underwent molecular testing after trial assignment and different sequential molecular tests such as polymerase chain reaction-based sequencing, IHC, and FISH, were performed based upon the patient’s tumor type. The same investigators from MD Anderson recently reported the results of their prospective genomic profiling study that enrolled 500 patients with advanced refractory solid tumors assessed in their phase I program [20]. They utilized the FoundationOne™ 236-gene targeted sequencing panel and standard of care biomarker test results (such as ER, PR, and HER2 IHC for breast cancer) to inform treatment selection for commercially available therapies and clinical trial enrollment. A numerically higher rate of prolonged disease control (complete response, partial response, or stable disease ≥ 6 months) was observed in patients who received matched therapy (122/500) compared with those who received unmatched therapy (66/500) (19 % versus 8 %, p = 0.061). Higher matching scores, calculated based on the number of drug matches and genomic aberrations per patient, were independently associated with a greater frequency of prolonged disease control (22 % [high scores] versus 9 % [low scores], p = 0.024), longer time-to-treatment failure (hazard ratio [HR] = 0.52, 95 % confidence interval [CI] = 0.36–0.74, p = 0.0003), and survival (HR = 0.65, CI = 0.43–1.0, p = 0.05). Likewise, a retrospective review of 347 consecutive patients with advanced solid malignancies treated at the UC San Diego Moores Cancer Center who had targeted sequencing of archival tumor tissue using an earlier version of Foundation One™ (182-gene panel) reported a higher rate of disease control ≥ 6 months (34.5 %) for patients (87/342) treated with matched therapy compared with patients (93/342) treated with unmatched therapy [21]. In both of these studies, the rate of treatment matching (25 %) was significantly greater than our study (5 %). This may be due to the use of larger gene panels that include copy number alterations and recurrent translocations that may identify more “druggable” alterations for matched therapy; analysis of patient outcomes beyond therapeutic clinical trials that included off-label treatment matching; and varying definitions of genomic alteration and treatment-matching pairs. For instance, the UC San Diego Moores matched therapy cohort included 11 patients (13 %) with breast cancer who received endocrine therapy based on ER expression and 11 patients (13 %) with breast cancer who received HER2-directed therapy based on ERBB2 (HER2) amplification. Since ER and HER2 testing are routinely performed in breast cancer patients to guide standard therapies, these patients would not have been included in our matched therapy cohort if the ER and HER2 status were known prior to enrollment in our molecular profiling study. The only randomized trial that has prospectively assessed the utility of molecular profiling (SHIVA) reported no difference in objective response or PFS for patients treated with genotype-matched versus standard treatments [13]. More than 40 % of patients randomized in the SHIVA trial did not have genomic alterations identified and were included based upon expression of hormone receptors. Patients were matched to a limited range of approved targeted agents following a predefined algorithm that did not include best-in-class investigational agents that are being tested in early phase clinical trials. Despite the negative results of SHIVA, enthusiasm to conduct genomic-based clinical trials such as NCI-MATCH [12] [NCT02465060], and LUNG-MAP [22] [NCT02154490] remains strong to further define the value of precision medicine. The findings of our study, in which the majority of patients treated on genotype-matched trials were enrolled in phase I targeted therapy trials, are consistent with a recent meta-analysis of phase I trials that demonstrated a higher overall response rate (30.6 % versus 4.9 %, p < 0.001) and median PFS (5.7 months versus 2.95 months, p < 0.001) for targeted therapy trials that used biomarker-selection compared with those that did not [23]. Measuring the clinical utility of molecular profiling is difficult [3]. We did not comprehensively capture how testing results influenced clinical decisions outside of therapeutic clinical trial enrolment, such as reclassification of tumor subtype and site of primary based on mutation results. For example, we enrolled a patient with an unknown primary cancer with intra-abdominal metastases that was found to harbor a somatic IDH1 p.Arg132Cys variant, leading to the reclassification as a likely intrahepatic cholangiocarcinoma. We also did not fully evaluate the use of testing results to avoid ineffective standard treatments (i.e. KRAS exon 4 somatic variants in colorectal cancer to inform decision not to use EGFR monoclonal antibody treatment) and treatment with approved targeted agents outside of their approved indications. Few patients in our study received targeted treatments based upon profiling results outside of clinical trials, due to limited access to targeted drugs outside of publicly funded standard-of-care indications in Ontario. New technological advances are being studied in molecular profiling programs—including larger gene panels [2, 17]; whole exome [16], whole genome (WGS) or RNA sequencing (RNA-Seq) [24, 25]; and integrative systems biology analyses of deregulated cellular pathways [26]. Greater access to clinical trials for genomically characterized patients, such as umbrella and basket trial designs [27], may also improve the success of genotype-treatment matching. To assess whether decision support tools integrated at the point of care can improve enrollment of patients on genotype-matched trials, we are piloting a smart phone application to help physicians identify genotype-matched trials for their patients with profiling data. There are several limitations of our study. Only a single archival sample was profiled for each patient, often obtained many years prior to molecular testing. Fresh biopsy of a current metastatic lesion for molecular profiling at the time of study enrolment may have yielded different results due to clonal evolution or tumor heterogeneity [28]. Our genomic testing was limited to hotspot point mutation testing or limited targeted sequencing and did not include gene copy number alterations or recurrent translocations that may be important for the selection of genotype-matched therapy. There were patients identified with potentially “druggable” mutations who were candidates for genotype-matched trials; however, they could not be enrolled because of the constraints of slot allocation in early phase clinical trials across multiple institutions or were deemed ineligible due to trial-specific exclusion criteria. Our study population also included many patients with heavily pre-treated metastatic disease who were not well enough for further therapy when results of molecular testing were reported. In addition, tumor response is an imperfect surrogate endpoint to assess therapeutic benefit in early phase clinical trials that should interpreted with caution [28]. We did not observe a difference in time on treatment or overall survival for patients treated on genotype-matched versus genotype-unmatched clinical trials. PFS data were not available in our cohort precluding a comparison of the outcome of genotype-matched therapy with the immediate prior line of treatment, as has been reported by other investigators [13, 14, 21].

Conclusions

We provide preliminary evidence that genotype-matched trial treatment selected on the basis of molecular profiling was associated with increased tumor shrinkage, although only a small proportion of profiled patients benefitted from this approach. Through this initiative, we have created a valuable repository of data and tumor samples that are amenable to additional research and data sharing initiatives. Greater efforts should be made to expand opportunities for genotype-trial matching and further studies are needed to evaluate the clinical utility of targeted NGS profiling.
  26 in total

1.  Pilot study using molecular profiling of patients' tumors to find potential targets and select treatments for their refractory cancers.

Authors:  Daniel D Von Hoff; Joseph J Stephenson; Peter Rosen; David M Loesch; Mitesh J Borad; Stephen Anthony; Gayle Jameson; Susan Brown; Nina Cantafio; Donald A Richards; Tom R Fitch; Ernesto Wasserman; Cristian Fernandez; Sylvan Green; William Sutherland; Michael Bittner; Arlet Alarcon; David Mallery; Robert Penny
Journal:  J Clin Oncol       Date:  2010-10-04       Impact factor: 44.544

2.  Challenges in initiating and conducting personalized cancer therapy trials: perspectives from WINTHER, a Worldwide Innovative Network (WIN) Consortium trial.

Authors:  J Rodon; J C Soria; R Berger; G Batist; A Tsimberidou; C Bresson; J J Lee; E Rubin; A Onn; R L Schilsky; W H Miller; A M Eggermont; J Mendelsohn; V Lazar; R Kurzrock
Journal:  Ann Oncol       Date:  2015-04-23       Impact factor: 32.976

3.  Precision Oncology: The UC San Diego Moores Cancer Center PREDICT Experience.

Authors:  Maria Schwaederle; Barbara A Parker; Richard B Schwab; Gregory A Daniels; David E Piccioni; Santosh Kesari; Teresa L Helsten; Lyudmila A Bazhenova; Julio Romero; Paul T Fanta; Scott M Lippman; Razelle Kurzrock
Journal:  Mol Cancer Ther       Date:  2016-02-12       Impact factor: 6.261

Review 4.  European perspective for effective cancer drug development.

Authors:  Denis Lacombe; Sabine Tejpar; Roberto Salgado; Fatima Cardoso; Vassilis Golfinopoulos; Daniela Aust; Gunnar Folprecht; Arnaud Roth; Roger Stupp
Journal:  Nat Rev Clin Oncol       Date:  2014-06-17       Impact factor: 66.675

5.  Genomic testing in cancer: patient knowledge, attitudes, and expectations.

Authors:  Phillip S Blanchette; Anna Spreafico; Fiona A Miller; Kelvin Chan; Jessica Bytautas; Steve Kang; Philippe L Bedard; Andrea Eisen; Larissa Potanina; Jack Holland; Suzanne Kamel-Reid; John D McPherson; Albiruni R Razak; Lillian L Siu
Journal:  Cancer       Date:  2014-06-24       Impact factor: 6.860

6.  Personalized medicine in a phase I clinical trials program: the MD Anderson Cancer Center initiative.

Authors:  Apostolia-Maria Tsimberidou; Nancy G Iskander; David S Hong; Jennifer J Wheler; Gerald S Falchook; Siqing Fu; Sarina Piha-Paul; Aung Naing; Filip Janku; Rajyalakshmi Luthra; Yang Ye; Sijin Wen; Donald Berry; Razelle Kurzrock
Journal:  Clin Cancer Res       Date:  2012-09-10       Impact factor: 12.531

7.  Loss of phosphatase and tensin homolog protein expression is an independent poor prognostic marker in lung adenocarcinoma.

Authors:  Naoki Yanagawa; Charles Leduc; Derek Kohler; Mauro A Saieg; Thomas John; Jenna Sykes; Maisa Yoshimoto; Melania Pintilie; Jeremy Squire; Frances A Shepherd; Ming-Sound Tsao
Journal:  J Thorac Oncol       Date:  2012-10       Impact factor: 15.609

8.  Intratumor heterogeneity and branched evolution revealed by multiregion sequencing.

Authors:  Marco Gerlinger; Andrew J Rowan; Stuart Horswell; James Larkin; David Endesfelder; Eva Gronroos; Pierre Martinez; Nicholas Matthews; Aengus Stewart; Charles Swanton; M Math; Patrick Tarpey; Ignacio Varela; Benjamin Phillimore; Sharmin Begum; Neil Q McDonald; Adam Butler; David Jones; Keiran Raine; Calli Latimer; Claudio R Santos; Mahrokh Nohadani; Aron C Eklund; Bradley Spencer-Dene; Graham Clark; Lisa Pickering; Gordon Stamp; Martin Gore; Zoltan Szallasi; Julian Downward; P Andrew Futreal
Journal:  N Engl J Med       Date:  2012-03-08       Impact factor: 91.245

9.  Whole-exome sequencing and clinical interpretation of formalin-fixed, paraffin-embedded tumor samples to guide precision cancer medicine.

Authors:  Eliezer M Van Allen; Nikhil Wagle; Petar Stojanov; Danielle L Perrin; Kristian Cibulskis; Sara Marlow; Judit Jane-Valbuena; Dennis C Friedrich; Gregory Kryukov; Scott L Carter; Aaron McKenna; Andrey Sivachenko; Mara Rosenberg; Adam Kiezun; Douglas Voet; Michael Lawrence; Lee T Lichtenstein; Jeff G Gentry; Franklin W Huang; Jennifer Fostel; Deborah Farlow; David Barbie; Leena Gandhi; Eric S Lander; Stacy W Gray; Steven Joffe; Pasi Janne; Judy Garber; Laura MacConaill; Neal Lindeman; Barrett Rollins; Philip Kantoff; Sheila A Fisher; Stacey Gabriel; Gad Getz; Levi A Garraway
Journal:  Nat Med       Date:  2014-05-18       Impact factor: 53.440

10.  Lessons learned from the application of whole-genome analysis to the treatment of patients with advanced cancers.

Authors:  Janessa Laskin; Steven Jones; Samuel Aparicio; Stephen Chia; Carolyn Ch'ng; Rebecca Deyell; Peter Eirew; Alexandra Fok; Karen Gelmon; Cheryl Ho; David Huntsman; Martin Jones; Katayoon Kasaian; Aly Karsan; Sreeja Leelakumari; Yvonne Li; Howard Lim; Yussanne Ma; Colin Mar; Monty Martin; Richard Moore; Andrew Mungall; Karen Mungall; Erin Pleasance; S Rod Rassekh; Daniel Renouf; Yaoqing Shen; Jacqueline Schein; Kasmintan Schrader; Sophie Sun; Anna Tinker; Eric Zhao; Stephen Yip; Marco A Marra
Journal:  Cold Spring Harb Mol Case Stud       Date:  2015-10
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  91 in total

1.  OCTANE (Ontario-wide Cancer Targeted Nucleic Acid Evaluation): a platform for intraprovincial, national, and international clinical data-sharing.

Authors:  E R Malone; R R Saleh; C Yu; L Ahmed; T Pugh; J Torchia; J Bartlett; C Virtanen; S J Hotte; J Hilton; S Welch; A Robinson; E McCready; B Lo; B Sadikovic; H Feilotter; T P Hanna; S Kamel-Reid; T L Stockley; L L Siu; P L Bedard
Journal:  Curr Oncol       Date:  2019-10-01       Impact factor: 3.677

2.  Referrals to a Phase I Clinic and Trial Enrollment in the Molecular Screening Era.

Authors:  Tira Tan; Michael Rheaume; Lisa Wang; Helen Chow; Anna Spreafico; Aaron R Hansen; Albiruni R A Razak; Lillian L Siu; Philippe L Bedard
Journal:  Oncologist       Date:  2019-03-04

3.  Clinical Utility of Prospective Molecular Characterization in Advanced Endometrial Cancer.

Authors:  Tara E Soumerai; Mark T A Donoghue; Barry S Taylor; David M Hyman; Chaitanya Bandlamudi; Preethi Srinivasan; Matthew T Chang; Dmitriy Zamarin; Karen A Cadoo; Rachel N Grisham; Roisin E O'Cearbhaill; William P Tew; Jason A Konner; Martee L Hensley; Vicky Makker; Paul Sabbatini; David R Spriggs; Tiffany A Troso-Sandoval; Alexandra Snyder Charen; Claire Friedman; Mila Gorsky; Sarah J Schweber; Sumit Middha; Rajmohan Murali; Sarah Chiang; Kay J Park; Robert A Soslow; Marc Ladanyi; Bob T Li; Jennifer Mueller; Britta Weigelt; Ahmet Zehir; Michael F Berger; Nadeem R Abu-Rustum; Carol Aghajanian; Deborah F DeLair; David B Solit
Journal:  Clin Cancer Res       Date:  2018-08-01       Impact factor: 12.531

4.  A Canadian guideline on the use of next-generation sequencing in oncology.

Authors:  S Yip; A Christofides; S Banerji; M R Downes; I Izevbaye; B Lo; A MacMillan; J McCuaig; T Stockley; G M Yousef; A Spatz
Journal:  Curr Oncol       Date:  2019-04-01       Impact factor: 3.677

Review 5.  Review of precision cancer medicine: Evolution of the treatment paradigm.

Authors:  Apostolia M Tsimberidou; Elena Fountzilas; Mina Nikanjam; Razelle Kurzrock
Journal:  Cancer Treat Rev       Date:  2020-03-31       Impact factor: 12.111

6.  Phase II Trial of Cabozantinib in Recurrent/Metastatic Endometrial Cancer: A Study of the Princess Margaret, Chicago, and California Consortia (NCI9322/PHL86).

Authors:  Neesha C Dhani; Hal W Hirte; Lisa Wang; Julia V Burnier; Angela Jain; Marcus O Butler; Stephen Welch; Gini F Fleming; Jean Hurteau; Koji Matsuo; Daniela Matei; Waldo Jimenez; Carolyn Johnston; Mihaela Cristea; Katia Tonkin; Prafull Ghatage; Stephanie Lheureux; Anjali Mehta; Judy Quintos; Qian Tan; Suzanne Kamel-Reid; Olga Ludkovski; Ming-Sound Tsao; John J Wright; Amit M Oza
Journal:  Clin Cancer Res       Date:  2020-01-28       Impact factor: 12.531

7.  Clinical Use of Precision Oncology Decision Support.

Authors:  Amber Johnson; Yekaterina B Khotskaya; Lauren Brusco; Jia Zeng; Vijaykumar Holla; Ann M Bailey; Beate C Litzenburger; Nora Sanchez; Md Abu Shufean; Sarina Piha-Paul; Vivek Subbiah; David Hong; Mark Routbort; Russell Broaddus; Kenna R Mills Shaw; Gordon B Mills; John Mendelsohn; Funda Meric-Bernstam
Journal:  JCO Precis Oncol       Date:  2017-09-13

Review 8.  Personalised medicine and population health: breast and ovarian cancer.

Authors:  Steven A Narod
Journal:  Hum Genet       Date:  2018-10-17       Impact factor: 4.132

Review 9.  Beyond the message: advantages of snapshot proteomics with single-cell mass cytometry in solid tumors.

Authors:  Akshitkumar M Mistry; Allison R Greenplate; Rebecca A Ihrie; Jonathan M Irish
Journal:  FEBS J       Date:  2019-01-07       Impact factor: 5.542

Review 10.  Accelerating Therapeutic Development through Innovative Trial Design in Colorectal Cancer.

Authors:  Michael Lam; Jonathan M Loree; Allan Anderson Lima Pereira; Yun Shin Chun; Scott Kopetz
Journal:  Curr Treat Options Oncol       Date:  2018-02-27
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