| Literature DB >> 30813545 |
Marina Bagnoli1, Ting Yan Shi2, Charlie Gourley3, Paul Speiser4, Alexander Reuss5, Hans W Nijman6, Carien L Creutzberg7, Suzy Scholl8, Anastassia Negrouk9, Mark F Brady10, Kosei Hasegawa11, Katsutoshi Oda12, Iain A McNeish13, Elise C Kohn14, Amit M Oza15, Helen MacKay16, David Millan17, Katherine Bennett18, Clare Scott19, Delia Mezzanzanica20.
Abstract
In the era of personalized medicine, the introduction of translational studies in clinical trials has substantially increased their costs, but provides the possibility of improving the productivity of trials with a better selection of recruited patients. With the overall goal of creating a roadmap to improve translational design for future gynecological cancer trials and of defining translational goals, a main discussion was held during a brainstorming day of the Gynecologic Cancer InterGroup (GCIG) Translational Research Committee and overall conclusions are here reported. A particular emphasis was dedicated to the new frontier of the immunoprofiling of gynecological cancers. The discussion pointed out that to maximize patients' benefit, translational studies should be integral to clinical trial design with standardization and optimization of procedures including a harmonization program of Standard Operating Procedures. Pathology-reviewed sample collection should be mandatory and ensured by dedicated funding. Biomarker validation and development should be made public and transparent to ensure rapid progresses with positive outcomes for patients. Guidelines/templates for patients' informed consent are needed. Importantly for the public, recognized goals are to increase the involvement of advocates and to improve the reporting of translational data in a forum accessible to patients.Entities:
Keywords: biomarkers definition; gynecological cancers; precision medicine; samples collection; translational studies design
Mesh:
Substances:
Year: 2019 PMID: 30813545 PMCID: PMC6468728 DOI: 10.3390/cells8030200
Source DB: PubMed Journal: Cells ISSN: 2073-4409 Impact factor: 6.600
Biomarker applications.
| Type of Biomarker | Question Addressed |
|---|---|
| Diagnostic | Cancer type/subtype identification |
| Prognostic | Cancer outcome definition |
| Predictive | Probability of response to a given drug |
| Pharmacodynamic | Definition of the optimal dose for efficient target engagement |
Biomarkers definition.
| Aims | Requirements | |
|---|---|---|
|
| Used for patient selection within a particular trial; its detection determines patient treatment. | Assessment has to be performed in a CLIA environment; it may require IDE and additional FDA approval. |
|
| Used for patient/tumor characterization; it should provide evidence of function/pathway alteration. | CLIA environment recommended; IDE is not required. |
|
| Descriptive biomarkers; used to explore other patient characteristics useful for alternative treatment(s). | No particular requirements to be performed. |
Abbreviations; CLIA: Clinical Laboratory Improvement Amendments; IDE: Investigational Device Exemption.
Figure 1Paradigm for use and definition of biomarkers in clinical trials. Validation of a biomarker to be considered integral to a clinical trial from its pre-clinical definition. Slide courtesy of Dr. A. Oza from his presentation to the Gynecologic Cancer InterGroup (GCIG) Translational Research brainstorming day.
Figure 2Application of integral, integrated and explorative biomarker analysis in the ENGOT-OV-NOVA16 trial design. (gBRCA: germline BRCA; mut: mutated; HRD: homologous recombination deficiency).
Biomarkers credentials.
| Biomarker-Enrichment Design | Biomarker-Stratified Designs | Adaptive Designs (Randomized Phase II/III Trial Design) | |
|---|---|---|---|
|
| • Biomarker positive subgroup is tested. | • Randomize for treatment both positive and negative patients. | • Combine phase II and phase III trials in a phase II/III trial. |
|
| • Solid knowledge of biomarker biology. | • A clinically significant effect in biomarker-negative patients cannot be ruled out. | • The treatment benefit should be definitively assessed; |
|
| • It does not provide information on the biomarker-negative population (off-target effects, multiple pathway targeting) | • They maintain a good statistical power even in the case of a homogeneous treatment effect across subgroups. | Critical are |