| Literature DB >> 25557400 |
Abstract
The promise of 'personalized cancer care' with therapies toward specific molecular aberrations has potential to improve outcomes. However, there is recognized heterogeneity within any given tumor-type from patient to patient (inter-patient heterogeneity), and within an individual (intra-patient heterogeneity) as demonstrated by molecular evolution through space (primary tumor to metastasis) and time (after therapy). These issues have become hurdles to advancing cancer treatment outcomes with novel molecularly targeted agents. Classic trial design paradigms are challenged by heterogeneity, as they are unable to test targeted therapeutics against low frequency genomic 'oncogenic driver' aberrations with adequate power. Usual accrual difficulties to clinical trials are exacerbated by low frequencies of any given molecular driver. To address these challenges, there is need for innovative clinical trial designs and strategies implementing novel diagnostic biomarker technologies to account for inter-patient molecular diversity and scarce tissue for analysis. Importantly, there is also need for pre-defined treatment priority algorithms given numerous aberrations commonly observed within any one individual sample. Access to multiple available therapeutic agents simultaneously is crucial. Finally intra-patient heterogeneity through time may be addressed by serial biomarker assessment at the time of tumor progression. This report discusses various 'next-generation' biomarker-driven trial designs and their potentials and limitations to tackle these recognized molecular heterogeneity challenges. Regulatory hurdles, with respect to drug and companion diagnostic development and approval, are considered. Focus is on the 'Expansion Platform Design Types I and II', the latter demonstrated with a first example, 'PANGEA: Personalized Anti-Neoplastics for Gastro-Esophageal Adenocarcinoma'. Applying integral medium-throughput genomic and proteomic assays along with a practical biomarker assessment and treatment algorithm, 'PANGEA' attempts to address the problem of heterogeneity towards successful implementation of molecularly targeted therapies.Entities:
Keywords: Esophagogastric cancer; Esophagus cancer; Expansion Platform Designs; Gastric cancer; Gastroesophageal cancer; Inter-patient heterogeneity; Intra-patient heterogeneity; Molecular heterogeneity; Next-generation clinical trials; PANGEA
Mesh:
Year: 2014 PMID: 25557400 PMCID: PMC4402102 DOI: 10.1016/j.molonc.2014.09.011
Source DB: PubMed Journal: Mol Oncol ISSN: 1574-7891 Impact factor: 6.603
General properties of major classes of targeted therapeutics.
| Targeted therapy class | Properties | Advantages | Disadvantages | |
|---|---|---|---|---|
| Monoclonal Antibodies | ‘Naked’ | • Highly specific • IV • ADCC • Long clearance half‐life | • Can be easily combined with cytotoxics • Specific to epitope • Can elicit immune response (ADCC) | • Infusion reactions • Often require concomitant classic cytotoxics for optimal benefit |
| Antibody– drug conjugate | • Specific • IV • Targeted delivery of cytotoxic agents | • Can target cytotoxics to tumor cells with potential to increase the therapeutic index | • Ocular/corneal toxicities • Infusion reactions • Less ADCC than naked due to lower numbers of antibody molecules | |
| Small molecules(Kinase inhibitors) | • Usually oral • Often ‘promiscuous’ | • Oral administration is appealing • Potential for preemptive inhibition of parallel signaling with one compound | • Compliance • Off‐target effects (promiscuity) lead to toxicity and difficulties in defining accurate predictive biomarkers • Difficult to combine with cytotoxics | |
| RNA interference | • Technical difficulties • siRNA‐based technologies are improving | • Can target currently ‘undruggable’ targets (e.g. KRAS) | • Stability • Off‐target effects • Immunostimulation • Delivery problems | |
IV, intravenous; ADCC, Antibody‐Dependent Cell‐mediated Cytotoxicity; ‘cytotoxics’, refers to classic chemotherapy directed at inhibiting DNA synthesis and cell division apparatus.
Recent clinical trials with/without biomarker selection for advanced gastroesophageal cancer.
Inter‐patient molecular heterogeneity demonstrated by next‐generation targeted exome sequencingТ.
Figure 1The “run‐away 18‐wheeler truck” metaphor of cancer and current therapeutic strategies. ©Ion Medical Designs, LLC 2014. (A) In the untreated scenario, cancer is like a run‐away truck without brakes (loss of tumor suppressor) quickly and inappropriately accelerating down a hill. (B) In an attempt to slow down the truck (cancer cell), altering the slope (tumor environment) to ‘uphill’ has been employed {eg. anti‐angiogenesis}. (C) Stopping the driver from pushing the gas pedal {targeted inhibition towards the function of the oncogenic genomic driver} may relieve the inappropriate acceleration {eg. trastuzumab for HER2 gene amplification}, if only temporarily until another mechanism (inherent or acquired) to maintain the acceleration stimulus (oncogenic driver) moves to replace it. (D) Although loss of any back wheel (downstream effector) will likely not slow the truck given the presence of numerous wheels (redundant parallel escape signals), some wheels downstream can be critical, like when inducing a flat front tire (critical downstream hub) {eg. inhibition of DNA synthesis: classic cytotoxics; or inhibition of key protein: estrogen/androgen receptor antagonists}. (E) Reversing mechanisms of police (immune) evasion can re‐establish the ability to recognize and eliminate the abnormal ‘speedy truck’ {immunomodulation}. A combination of the strategies in (B–E) may be optimal to slow with significant magnitude and duration.
Figure 2Intra‐patient tumor molecular evolution through space and/or time. (A) Intra‐patient heterogeneity ‘through space’ of Met by IHC (left) and MET gene copy by FISH (right) within the primary tumor (upper panel) to metastatic lymph node (lower panel. (Catenacci et al., 2014a) (B) Intra‐patient heterogeneity ‘through space’ of Her2 by IHC (left) and HER2 gene copy by FISH (right) from primary tumor (upper panel) to metastatic lymph node (lower panel). (Catenacci et al., 2014a) (C) Intra‐patient heterogeneity ‘through space’ of KRAS gene copy by FISH in primary tumor (upper panel) to metastatic peritoneal ascites (lower panel). (Catenacci et al., 2013) (D) Intra‐patient heterogeneity ‘through space and time’ of tumor cells and stromal elements within the primary tumor at diagnosis (upper panel) and metastatic peritoneal carcinomatosis implant after cisplatin/5FU chemotherapy (lower panel). FGFR2 is gene amplified only in the primary tumor, and MET is gene amplified only in the metastatic deposit. (Catenacci et al., 2014b) (E) Intra‐patient heterogeneity ‘through space and time’ of KRAS gene copy and expression prior to anti‐Met antibody therapy (upper panel, normal gene copy) and after (lower panel, gene amplified) suggesting a mechanism of resistance. (Catenacci et al., 2011a, 2014a; Catenacci et al., 2013).
Figure 3Inter–patient tumor molecular heterogeneity. (Left panel) Genomic profiling using a ∼240 gene next‐generation sequencing (NGS) platform of a cohort of 50 stage IV GEC samples (upper panel) revealing few high frequency events (peak) and numerous low frequency events (tail); pie chart revealing profound inter‐patient molecular heterogeneity (see Table 3). (Catenacci et al., 2014a) (Right panel) Proteomic expression profiling of 100 GEC samples using multi‐plex (8 peptides shown) selected reaction monitoring (SRM) mass spectrometry (MS) revealing clear inter‐patient heterogeneity. (Catenacci et al., 2014a,b; Hembrough et al., 2012).
Properties of various biomarker‐driven clinical trial designs.
| Biomarker trial design | Advantages | Disadvantages |
|---|---|---|
| Retrospective‐prospective | • Utilize prior trials retrospectively (e.g. RAS for colon cancer therapy) • Useful for exploratory biomarkers not known at time of trial execution • Expedient results for biomarkers | • Tissue availability often not adequate in unplanned trials leading to selection bias • Multiple ‘à la carte’ biomarker assays exhaust limited tissue samples – unable to evaluate true inter‐patient heterogeneity • One molecular ‘snap‐shot’, often not immediately prior to treatment • Requires large numbers of patients for adequate power • Requires high frequency of the biomarker for adequate power |
| Classic population enriched | • Prospectively select for a biomarker | • High screen failure rates for lower incidence events = wasted tissue/patients • Multiple ‘à la carte’ biomarker assays exhaust limited tissue samples – unable to evaluate true inter‐patient heterogeneity • High patient drop out while awaiting multiple tandem biomarker screenings |
| • Histology Dependent | • Tumor‐specific outcomes clear path to FDA approval if event is relatively frequent (e.g. HER2 breast, GEC) | • Difficult to accrue for rare events for large phase III trial • Difficult for FDA approval if rare event • A trade‐off of added patient heterogeneity (ethnicity/geography) to enhance accrual via large international trials |
| • Histology Independent | • Enrich only for a rare ‘driver’ event without attention to tumor site of origin • Enhanced accrual for that aberration | • Heterogenous tumor types, treatments (cytotoxics), and outcomes • Still difficult to accrue very rare events • Difficult to reach statistical significance and path to FDA approval |
| Biomarker stratified | • Ideal to prove specificity of benefit only to those with biomarker present by including both patients with and without the biomarker • Easier to accrue to given no selection at enrollment • Adaptive randomization can decrease drug exposure of biomarker‐negative patients | • Large sample sizes needed to test the biomarker interaction • Biomarker‐negative patients treated that are hypothesized to not benefit • Wasteful of patients having tumors with other biomarkers that could be better treated with a more appropriate inhibitor • Off‐target effects for ‘promiscuous’ inhibitors will bias the biomarker status interaction towards the null |
| Exploratory platforme.g. ‘BATTLE’, ‘I‐SPY’ | • Ideal to assist in identifying the best molecular subset for a drug, if this is previously unknown, in phase I‐IIb trials • Can address inter‐patient molecular heterogeneity with multiple drug ‘bins’, with efficient prospective biomarker testing • Adaptive statistical design to confirm early efficacy signals in later stages of the trial • Can theoretically spin‐off ‘winning combinations’ of new biomarker‐drug matches to confirm in a larger phase III trial, with clear path to FDA approval • Dynamic and iterative – add/remove drugs | • Requires very high numbers of patients for adequate power from start to FDA approval of a drug • Difficult to accrue for follow up large phase III trials if biomarker is rare, as in ‘Population Enriched’ cohorts above • Initially not truly personalized (randomized to each drug bin) for many patients • Not ideal if a strong preclinical or clinical association between a biomarker and drug is already established (e.g. trastuzumab and HER2 amplification) • Ideally, biomarker subsets are chosen beforehand, so they must be known, but design is flexible to add newly identified molecular subsets • Requires multiple drug cohorts and therefore extensive coordination between various pharmaceutical collaborations |
| Expansion platform | • Umbrella biomarker enrichment that addresses inter‐patient heterogeneity with efficient molecular profiling and treatment assignment • Ideal if biomarker‐drug association is already established | • Assumes drug is only useful for a certain biomarker, or at least best suited for that biomarker |
| • Type IA: Global and compartmentalized Histology dependent: e.g. ‘FOCUS‐4’ | • Can test defined biomarker subsets within a cancer with a drug (or drug combination) thought best matched to that biomarker cohort in an organized global approach for that specific tumor type • Each biomarker cohort is run as its own phase IIa or b trial (compartmentalized), likely with a separate principal investigator • Dynamic and iterative – can add/remove cohorts and matched drugs in real‐time • Treatment has (or should have) a prioritized scheme, acknowledging multiple aberrations in a given tumor | • Requires top‐down coordination and centralization (feasible in centralized health care systems like the United Kingdom or in large cooperative groups/NCI‐CTEP or large pharmaceutical companies with many drugs) • Requires very high numbers of patients as each cohort is considered its own separate trial with individual statistical endpoints – infrequent biomarker incidence is not adequately addressed, particularly for less common tumor types • Arguably, still requires a confirmatory phase III trial for each of the cohorts that have positive signals at the randomized phase IIb setting, requiring even more patients in the population enrichment phase III design • Treatment algorithm can be considered arbitrary and may not have consensus amongst investigators |
| • Type IB: Global and compartmentalized Histology agnostic: eg. ‘NCI‐MATCH’, & ‘Signature’ | • Can test defined biomarker subsets in any tumor type with a drug (or drug combination) thought best matched to that biomarker cohort in an organized global approach for that specific tumor type • Each biomarker cohort is run as its own phase IIa or b trial (compartmentalized) with a separate principal investigator • Dynamic and iterative – can add/remove cohorts and matched drugs • Wide participation (including private oncology clinics), central IRB and screening can screen large numbers of patients | • Requires top‐down coordination and centralization (feasible in centralized health care systems like the United Kingdom or in large cooperative groups/NCI‐CTEP or large pharmaceutical companies with many drugs) • Requires very high numbers of patients as each cohort is considered its own separate trial with individual statistical endpoints – i.e. infrequent biomarker incidence is not specifically addressed, particularly for less common tumor types • There is a trend of using the weaker primary endpoint of response rate in phase IIa trials (Signature) • Arguably, still requires a confirmatory phase III trial for each of the cohorts that have positive signals at the randomized phase II setting, requiring even more patients in the population enrichment phase III design (and decision whether or not to select for specific histology) • There is not a treatment algorithm and therefore tumors with multiple mutations are randomly selected to one of many possible biomarker groups • Assumes aberrations are identical across differing tumor histologies, which is not always confirmed (e.g. BRAF mt in melanoma vs colon) |
| • Type IIA: Grass‐Roots and Holistic eg. ‘PANGEA’ | • A holistic approach to a specific cancer type within one trial, drastically reducing the total number of patients required • Treating one tumor type with tumor‐specific cytotoxics, strategies, and diagnostics • All patients are eligible, given relegation tiers • One center can run pilot phase IIa trials • Randomized phase IIb iterations can be accomplished with small collaborative groups • A number of ongoing trials can be done at various centers, testing various aspects of the personalized approach (Table 5) • Positive phase IIb trials can move to the phase III setting to test the ‘Holistic’ approach OR positive cohorts within the phase IIb can spin‐off to their own phase III trial | • Multiple treatment arms within one trial, which is challenging to negotiate different companion diagnostics and drugs for each identified biomarker subset • Treatment algorithm can be considered arbitrary and may not have consensus amongst investigators, but given the low numbers required, the algorithm can be tested quickly with one/few sites, while other algorithms can be tested simultaneously within separate parallel Type IIA trials performed at other sites. • Despite rationale for such a design, regulatory structure and FDA approval of a trial encompassing multiple molecular subsets each treated with a matched therapy towards one common statistical endpoint is uncertain currently, deterring Pharma and Companion Diagnostics company participation |
| • Type IIB: Grass‐Roots and Holistic *With ‘Biologic Beyond Progression’ (BBP) e.g. PANGEA‐BBP | • The only biomarker‐driven trial to address intra‐patient tumor heterogeneity over time due to resistance in sequential fashion • Sequential nature of BBP allows for less confounding of post‐protocol therapies for overall survival endpoint, and also less selection bias at second or third line setting • A randomized phase IIb can evaluate overall survival of a ‘personalized holistic approach’ compared to standard therapy • Those positive phase IIb trials can move to the phase III setting to test the ‘Holistic’ approach OR positive cohorts within the phase IIb can spin‐off to their own phase III | • Multiple biopsies are required, a potential deterrent for some patients/physicians • Treatment algorithm can be considered arbitrary and may not have consensus amongst investigators, but given the low numbers required, the algorithm can be tested quickly with one/few sites, while other algorithms can be tested simultaneously within separate parallel Type IIA trials performed at other sites • Despite rationale for such a design, regulatory structure and FDA approval of a trial encompassing multiple molecular subsets each treated with a matched therapy towards one common statistical endpoint is currently uncertain, deterring Pharma and Companion Diagnostics company participation |
Figure 4Classic biomarker‐focused clinical trial designs. (A) Retrospective‐Prospective. (B) Population Enriched, Histology Dependent. (C) Population Enriched, Histology Independent. (D) Biomarker Stratified.
Figure 8Applications of next‐generation clinical trial designs, and total patients required, towards approval of ‘personalized’ treatment strategies that encompass both the drugs and companion diagnostics. Total numbers of patients required from phase II to phase III and FDA approval are approximated in the final right column, using a biomarker incidence of 20% and 7% as examples. For comparison purpose, the numbers reflect a median overall survival as the primary endpoint with target HR 0.67, two‐sided alpha 0.05, 80% power, randomization ratio 2:1, 12 month accrual and 24 month follow up. Total numbers for each trial design include estimated numbers for serial phase IIa, phase IIb, and then phase III trials in tandem. For the exploratory platform design, given the adaptive Bayesian statistics, a direct comparison is not possible. * The target total number for the ongoing BATTLE‐2 trial. **The target total number for the ongoing ISPY‐2 trial. ***Estimated numbers for a follow up randomized phase IIb trial for an identified biomarker/drug combination from either the phase IIa or Phase IIb Exploratory Platform design, with statistical endpoints as set above, performed prior to a full phase III. Numbers in parentheses indicate the target biomarker population subset that would be required to be identified from the entire patient population.
Figure 5Next‐generation clinical trial designs. (A) Exploratory Platform Design (e.g. ‘BATTLE’, ‘I‐SPY’). (B) Expansion Platform Design Type IA: Histology Dependent, Global, and Compartmentalized. (e.g. ‘FOCUS‐4’) (C) Expansion Platform Design Type IB: Histology Agnostic, Global, and Compartmentalized (e.g. ‘NCI‐MATCH’, ‘Signature’). (D) Expansion Platform Design Type IIA: Histology Dependent, Grass‐Roots, Holistic (e.g. PANGEA). (E) Expansion Platform Design Type IIB with Biologic Beyond Progression: Histology Dependent, Grass‐Roots, Holistic (e.g. PANGEA‐BBP). After first progression (PD1) patients undergo repeat biopsy of a progressing lesion and undergo repeat molecular testing and treatment assignment, which may allow cross‐over to a more appropriate biological group as directed by the prioritization algorithm (Figure 7). Patients on placebo remain on placebo at each progression point.
Figure 7The biomarker and treatment assignment algorithm is premised on optimizing the inhibition of ‘driver‐biology’. This 9‐point algorithm serves to prioritize treatment assignment should multiple aberrations (genomic and proteomic) be observed in an individual sample. Should multiple aberrations be present, priority could be given to higher allele frequency (for mutations) or higher gene copy/expression. The algorithm acts as a filter to create 5 distinct biomarker categories (with 9 tiers) that will receive 5 specific and most‐appropriately matched targeted therapies. Approximate hazard ratios (HR) anticipated for each categorized tier, as well as the aggregate HR (the primary endpoint of PANGEA), are indicated. This first iteration of the ‘PANGEA’ strategy is a compromise within the spectrum between the two extremes of ‘one‐size‐fits‐all’ and completely individualized therapy or ‘N‐of‐1’ (bottom panel). Rather than being a ‘tailored suit’, PANGEA can be considered fitting to ‘X‐large, large, medium, small and X‐small’. Future iterations could include more biomarker categories and treatment arms, consequently moving closer towards the ‘N‐of‐1’ limit.
Figure 6The ‘Expansion Platform Design Type II with BBP – PANGEA’. (A) Schema of the ongoing pilot ‘phase IIa’ trial called ‘PANGEA‐IMBBP’. (B) A planned future randomized placebo‐controlled phase IIb trial ‘PANGEA‐IIMBBP’ should the pilot trial meet endpoints. Molecular categorization is a stratification factor to ensure equal distribution between Arms A and B. HER2+ patients would receive trastuzumab in the first line, per clinical standards, then proceed with placebo for second/third line therapy.
Characteristics, options, and variables within the design of next‐generation clinical trials.a
| Variable/Characteristic | Exploratory platform design e.g. ‘BATTLE‐1’ | Expansion platform design type IA e.g. ‘FOCUS’ | Expansion platform design type IB e.g. ‘Signature’ | Expansion platform design type II e.g. ‘PANGEA‐IM’ | Expansion platform design type II with BBP e.g. ‘PANGEA‐IMBBP’ |
|---|---|---|---|---|---|
| Reflecting this ‘Classic’ biomarker design: | Biomarker stratified | Population enriched | Population enriched | Population enriched | Population enriched |
| Histology dependent | Histology agnostic | Histology dependent | Histology dependent | ||
| Biomarker enriched: | NA | Compartmentalized | Compartmentalized | Holistic | Holistic |
| Compartmentalized vs holistic | Testing each group with individual endpoints and stats | Testing each group with individual endpoints and stats | Testing the personalized treatment strategy | Testing the personalized treatment strategy | |
| No. Biomarker groups | 4 | 5 | 5 (more planned) | 5 | 5 |
| Biomarker groups | 1 EGFR mt 2 KRAS/BRAF mt 3 VEGF/VEGFR2 4 RXR/CCND1 | 1 BRAF mt 2 PIK3CA mt/PTEN‐ 3 RAS mt 4 All Wild type 5 None of above | 1 PIK3CA mt/PTEN‐ 2 FGFR/PDFR/VEGF/FLT3/CSFR1/TRKA/RET 3 RAS/MEK/NF1 4 BRAF 5 SMO/PTCH1 | 1 HER2 2 MET 3 EGFR 4 FGFR2 5 RAS/PI3K ‘like’ | 1 HER2 2 MET 3 EGFR 4 FGFR2 5 RAS/PI3K ‘like’ |
| Targeted agents | 1 erlotinib 2 vandetanib 3 erlotinib + bexarotere 4 sorafenib | 1 TBD 2 TBD 3 TBD 4 TBD 5 capecitabine | 1 buliparib 2 dovitinib 3 Mek162 4 LGX818 5 LDE225 | 1 anti‐HER2 Ab 2 anti‐HGF/MET Ab 3 anti‐EGFR Ab 4 anti‐FGFR2 Ab 5 anti‐VEGFR2 Ab | 1 anti‐HER2 Ab 2 anti‐HGF/MET Ab 3 anti‐EGFR Ab 4 anti‐FGFR2 Ab 5 anti‐VEGFR2 Ab |
| Targeted agent properties | TKI | TBD | TKI | Monoclonal Ab | Monoclonal Ab |
| No. targeted agents per group | 1 or 2 | TBD | 1 | 1 | 1 |
| Combination with standard therapies | No | No | No | Yes | Yes |
| Line of therapy | ≥2L | Maintenance after 1L | ≥2L | 1L | 1L→2L→3L |
| Phase of proposed trial | Phase IIa | Phase IIb | Phase IIa | Phase IIa | Phase IIa |
| Estimated total patients required for screening for the trial actually proposed (see Figure 8) | 341 (Battle‐1) | ∼1375 (∼275/arm × 5) | 350 (70/arm × 5) | 68 | 68 |
| 450 (Batte‐2) | |||||
| 800(I‐SPY 2) | (180 × 5 = ∼900if phase IIa) | (NCI‐MATCH ∼3000 patients screened for ∼1000 enrolled) | |||
| Primary endpoint | DCR at 8 weeks | PFS | CBR at 8 weeks | PFS | OS |
| Randomization ratio for proposed trial (2:1 etc) | NA | TBD | NA | NA | NA |
| Potential for RCT Phase IIb and placebo with this design | Yes if control group included (e.g. I‐SPY 2 standard therapy arm) | Yes | Yesb | Yes | Yes |
| Future phase IIb required? | Yes | No | Yes | Yes | Yes |
| (optional biomarker‐stratified)c | Phase IIb randomized 2:1 for future trial | Phase IIb randomized 2:1 for future trial | |||
| Future phase III confirmatory trial? | Yes | Yesc | Yesb | Yesd | Yesd |
| Future phase III trial design type | Classic biomarker enriched(Histology dependent) | Classic biomarker enriched(Histology dependent) | Classic biomarker enriched(Histology agnostic) | Expansion platform Type IIA(Histology dependent) | Expansion platform Type IIB‐BBP(Histology dependent) |
| Total patients to be screened for eligibility | Manye | ∼2500 (∼550/arm × 5)f | Manyg | ∼600d | ∼600d |
| All‐comers included | Yes | Yesk | No | Yes | Yes |
| Coordination | Global | Global | Global | Grass‐Roots | Grass‐Roots |
| Treatment assignment prioritization algorithmh | Norandom assignment, then adaptive randomization | Yesh | No | Yesh | Yesh |
| Addresses resistance within the same trial | No | No | No | No | Yes (i.e. BBP) |
| If yes, BBP treatment priority algorithm | NA | NA | NA | NA | Yes |
| If yes, treatment algorithm same as prior line (static)i or altered (fluid)j | NA | NA | NA | NA | Static algorithm |
| Trial design subject to confounding of OS endpoint due to post‐trial treatment | NA | Yes | Yes | Yes | No |
| Ability to drop/add biomarker groups and/or paired drugs on a rolling basis | Yes | Yes | Yes | NoRefine future trials based on previous completed trials | NoRefine future trials based on previous completed trials |
BBP, biologic therapy beyond progression; NSCLC, non‐small cell lung cancer; GEC, gastro‐esophageal adenocarcinoma; mt, mutant; PTEN‐, PTEN loss; TBD, to be decided; Ab, antibody; TKI, tyrosine kinase inhibitor; 2L, second line; 1L, first line; 1L→2L→3L, including first, second and third line therapy; DCR, disease control rate; PFS, progression‐free survival; CBR, ‘clinical benefit rate’ (=∼ DCR); OS, overall survival; NA, not applicable.
Numerous variables within each trial design can distinguish different trials within the same design (e.g. BATTLE‐1 vs BATTLE‐2 vs I‐SPY 2 within the Exploratory Platform Design), while specific variables may not be applicable to certain design types. Representative trials within each trial design type are exemplified with their actual characteristics.
Difficulty in randomizing patients with various tumor types complicates randomized histology agnostic trials, for both phase IIb and Phase III designs. Stratification by tumor type may be plausible, but if combining with standard therapies (e.g. if first line) greatly complicates this design since standard therapies are diverse across tumor types.
A biomarker stratified design (phase IIb) could follow the phase IIb biomarker enriched design (if there is question as to benefit of the investigational drug in the biomarker‐negative patients), or it could proceed directly to a confirmatory phase III population enriched design.
A phase III trial could be designed holistically testing ‘personalized treatment’ versus control, pooling the subgroups together towards the primary endpoint, with the advantage of requiring significantly fewer patients. The caveat is that all biomarker subgroups along with matched targeted agents chosen must contribute to the overall benefit observed (ie. the HR for each subgroup, although not required to be equal, should all be < 0.8, and the aggregate HR must meet the primary overall endpoint – see Figure 7). The power to detect benefit of each subgroup will be limited, unless the benefit observed is large.
Depending on the frequency of the biomarker subset within the population studied (Histology Dependent), the ability to identify the benefit in that subgroup, if small, in the exploratory platform design may not have adequate power, unless initial trial sizes are substantially larger. Moreover, once the second adaptive randomization phase establishes benefit (which requires more patients), the confirmatory phase III trial would still require very inflated numbers of patients screened to identify the infrequent biomarker + patients.
Screening 2500 patients (after the initial 1375 patients in the phase IIB) may be plausible with global coordination (eg Research UK and Medical Research Council Clinical Trials Unit) for a high incident tumor such as colorectal cancer. However, many tumor types do not have this ‘luxury’ of high incidence and would have difficulty with such high numbers required for screening/accrual.
Depending on the frequency of the biomarker subset within the population studied (histology Independent), the ability to identify benefit in a phase IIb trial would require high patient numbers to identify infrequent biomarkers (despite searching across tumor types), and the ensuing confirmatory phase III would also need many patients. Also see point b above regarding histology agnostic designs.
The treatment assignment algorithm is an effort to address inter‐patient heterogeneity and multiple concurrent aberrations within the tumor sample. Despite best efforts to incorporate current biologic understanding and rationale, ultimately this algorithm is arbitrary.
Intra‐patient tumor heterogeneity over time (ie treatment resistance) can be assessed by repeat biopsy (or surrogate via serum/urine assays) of a progressing lesion, re‐evaluating biomarker status, and re‐assignment by the treatment algorithm. Allowing cross‐over to the new biomarker/drug group as appropriate may enhance the personalized strategy.
The treatment algorithm can be held constant at each progression time‐point in the Type BBP design, (e.g. if there is still HER2 amplification, but a newly acquired MET amplification observed at the time of progression, continued anti‐HER2 therapy would be indicated because HER2 is first in the priority tree), or the algorithm could be fluid (e.g. if in the same scenario, if there has been progression on anti‐HER2 therapy, a fluid algorithm could exclude eligibility from the prior biomarker group, and proceed to the next groups, or a fluid algorithm could allow for continued anti‐HER2 but also addition of other targeted therapies directed at the newly acquired molecular aberration, in this case an anti‐MET agent.).
FOCUS‐4 includes a relegation cohort (E) that is negative for inclusion in cohorts A‐D. However, other Type IA designs do not necessarily include such a relegation category (e.g. NCI‐MATCH), and therefore not all screened patients would be eligible.
Figure 9The ‘PANGEA’ strategy addressing inter–and intra–patient tumor molecular heterogeneity. The expansion platform type II design with biologics beyond progression is testing the ‘PANGEA personalized treatment strategy’. Obtaining baseline biopsies of metastatic disease and serially biopsies at each progression time‐point within the trial with repeat molecular testing and treatment assignment to match targeted therapies in real‐time may improve clinical outcomes, compared to a historical (phase IIa) or placebo (phase IIb) controlled standard therapy. Upon completion of each trial, an iterative process will allow to refine the treatment strategy (biomarker assays, molecular categories, treatment algorithms, and therapeutic agents) using knowledge gained from each previous trial and new technology and drugs developed in the interim.
Figure 10Comparison of one‐size‐fits‐all accepted design strategy and the ‘Expansion Platform Type II Holistic Design’. (A) In the classic clinical trial design, administering an investigational agent to all‐comers versus placebo will lead to approval, should statistical endpoints be met. Often, statistical endpoints are met with only marginal clinical improvement in overall survival (∼1–2 months). Approval of agents in this scenario leads to large numbers of patients treated with the new agent that do not derive any benefit (top and bottom bracket at any time‐point (t) along the x‐axis). Often targeted agents applied using this trial design fail since only a small subset derive benefit which is not recognized due to dilutional effects of the other biomarker‐negative patients, along with too few numbers within the subset analysis for adequate statistical power. (B) The Expansion Platform Design Type II (with/without biologics beyond progression) uses targeted agents for targeted populations (middle panel), in attempt to improve (red line) over the natural outcome observed for each specific molecular group treated without the targeted agent (black line). Three of the 5 subgroups of PANGEA are shown here as theoretical outcomes that are hypothesized. Due to the large number of patients that would be required should each of the molecular groups within PANGEA be run as an individual compartmentalized stand‐alone trial (ie an Expansion Platform Design Type IA or B), the advantage of the type II design is that all patients screened are placed in a group that is most appropriate for them within the one trial, reducing total patients required. Results are pooled (right panel) for the primary endpoint of ‘personalized treatment strategy’ versus standard control to limit exposure of any agent to any patient not expected to derive benefit, while maximizing exposure to those that will (bracket). Since the total effect size is hypothesized to be large, particularly in the higher tiers of the algorithm (see Figure 7), fewer total patients are required for statistical endpoints.
(continued)