| Literature DB >> 28497027 |
David Azria1, Ariane Lapierre1, Sophie Gourgou1, Dirk De Ruysscher2,3, Jacques Colinge1, Philippe Lambin2, Muriel Brengues1, Tim Ward4, Søren M Bentzen5, Hubert Thierens6, Tiziana Rancati7, Christopher J Talbot8, Ana Vega9, Sarah L Kerns10, Christian Nicolaj Andreassen11, Jenny Chang-Claude12,13, Catharine M L West14, Corey M Gill15,16, Barry S Rosenstein15,16.
Abstract
The ability to stratify patients using a set of biomarkers, which predict that toxicity risk would allow for radiotherapy (RT) modulation and serve as a valuable tool for precision medicine and personalized RT. For patients presenting with tumors with a low risk of recurrence, modifying RT schedules to avoid toxicity would be clinically advantageous. Indeed, for the patient at low risk of developing radiation-associated toxicity, use of a hypofractionated protocol could be proposed leading to treatment time reduction and a cost-utility advantage. Conversely, for patients predicted to be at high risk for toxicity, either a more conformal form or a new technique of RT, or a multidisciplinary approach employing surgery could be included in the trial design to avoid or mitigate RT when the potential toxicity risk may be higher than the risk of disease recurrence. In addition, for patients at high risk of recurrence and low risk of toxicity, dose escalation, such as a greater boost dose, or irradiation field extensions could be considered to improve local control without severe toxicities, providing enhanced clinical benefit. In cases of high risk of toxicity, tumor control should be prioritized. In this review, toxicity biomarkers with sufficient evidence for clinical testing are presented. In addition, clinical trial designs and predictive models are described for different clinical situations.Entities:
Keywords: biomarkers; patient selection; radiotherapy; toxicity tests; trial design
Year: 2017 PMID: 28497027 PMCID: PMC5406456 DOI: 10.3389/fonc.2017.00083
Source DB: PubMed Journal: Front Oncol ISSN: 2234-943X Impact factor: 6.244
STROGAR 18-item checklist for reporting radiogenomic studies from Kerns et al. (.
| Item number | Recommendations | |
|---|---|---|
| Title and abstract | 1 | Include the primary outcome(s) and type of study [whether genome-wide association studies (GWASs) or gene-specific]; provide an informative summary of the study including study design, whether discovery or validation, sample size, main end points, and major results. |
| Background/rationale | 2 | Note if the study is a GWAS or a candidate gene/SNP study and, if candidate gene study, rationale for choice of genes/SNPs; give a general description of the study setting. |
| Objectives | 3 | Define the primary/main outcome(s) of interest; describe the overall/long-term goal of the study; note if it is a discovery, validation, or multistage study. Use terminology and definitions from National Cancer Institute biomarker study guidelines ( |
| Study design | 4 | Specify the study design (case–control, cohort); whether data were collected under a controlled trial setting; whether data were collected retrospectively or prospectively. Report power and sample size considerations. |
| Patient population | 5 | Specify the source(s) of the patients and, if multiple sources, whether they are pooled or treated as separate cohorts; define inclusion/exclusion criteria; report whether comorbidities and medications were assessed by self-report or medical records; define methods/system used for tumor staging; describe the larger patient population from which the study sample was drawn; define how major changes in treatment protocol were handled in the analysis. |
| Radiation exposure | 6 | Specify details of radiation treatment parameters including: organ(s)-at-risk, dose–time fractionation; dose rate, target volume selection (e.g., breast + boost), dose to critical substructures, dose–volume metric used, the type of treatment and treatment setting, radiation modality (e.g., external beam vs. brachytherapy), whether single or combined treatment modalities were used, whether primary treatment or salvage therapy, imaging and planning details, ICRU recommendations followed and note relaxation of criteria, note any changes in dose or treatment protocol over the time course of enrollment and whether there were any interruptions in treatment. |
| Phenotype(s) | 7 | Specify how intrapatient or pretreatment assessment was made and whether it is accounted for in defining phenotype(s); note whether patient-reported outcomes or physician-assessed outcomes are being used to define phenotype(s); note which toxicity scoring system was used (if using a common/standard system); define the grading scales used and whether the phenotype(s) is/are defined as continuous, dichotomous or categorical; describe frequency of follow-up scheduling and diagnostic intensity; define the posttreatment time frame for assessment of toxicity outcomes; describe whether outcome(s) is/are based on a single time point or the maximum/worst time point out of a series of follow-up assessments; note if/how competing risks were handled (such as non-radiation-related manifestation of the phenotype); note any medical intervention that may influence study outcome(s). |
| Genotyping strategy and quality control (QC) | 8 | Specify DNA source and isolation methods; note the methods/platform used for genotyping; specify whether genotyping was done in one stage or multiple stages; note whether genotyping was done in more than one lab or batch, and if so, how batch effects were handled; describe methods for genotype calling and cite the algorithm used; note whether genotype calling was done for the whole study sample together or in batches; describe QC methods including concordance between duplicates, control samples, and checks for cryptic relatedness; describe methods for assessing population structure; describe SNP/CNP filtering methods including filtering on per-sample call rate, per-SNP call rate, minor allele frequency, and Hardy–Weinberg equilibrium; note whether imputation was used and, if so, describe methods. |
| Data analysis and statistical methods | 9 | Define the statistical methods and models used for association testing; cite the software and settings used; describe how censoring was handled; define model selection methods used for multivariable models; describe whether all samples are analyzed together or sequentially if the study involves multiple cohorts; for multistage studies, define methods for selecting variants to follow-up in subsequent stages; describe how missing data were handled; if multiple cohorts were included, describe data harmonization methods; note whether gene–gene interaction or gene–environment interaction was investigated; describe methods used to adjust for population structure; describe methods used to correct for multiple comparisons and/or control for risk of false-positive findings. |
| Patient characteristics | 10 | Report number of individuals at each stage of the study (e.g., numbers examined for eligibility, numbers confirmed eligible, included in study, completed follow-up, successfully genotyped and analyzed). Give reasons for non-participation at each stage. Give description of the included patient sample regarding demographic (e.g., age at start of therapy, sex, race/ethnicity) and clinical characteristics (e.g., site and stage of primary tumor, chemotherapy, hormone therapy), details of radiation exposure, where appropriate (e.g., type, dose, boost) and potential confounders and effect modifiers (e.g., lifestyle-related factors, comorbidities, and medications), including missing data; report length of follow-up and number of events and number of patients at risk at various follow-up times, e.g., yearly. It is recommended to include a flow diagram of patients included/excluded from the study, as proposed by the CONSORT statement. |
| Phenotype(s) | 11 | Report baseline function (if relevant); report numbers of responders and non-responders for dichotomous outcomes, descriptive statistics for quantitative outcome(s), or distributions for categorical outcomes. |
| Genotypes | 12 | Report call rates; numbers of samples and numbers of SNPs excluded on the basis of QC filters; if imputation was used, note which variants are imputed and which are genotyped directly; report genetically determined racial/ethnic groups or other population clusters; report genomic inflation factor as well as corrected genomic inflation factor after controlling for population structure. |
| Primary associations | 13 | For each SNP/CNP, report: common identifier (such as dbSNP rs number), minor allele identity and frequency, phenotype by genotype category, effect size (with 95% confidence interval) and p-value; genetic inheritance model(s) used; for multivariable analyses, report unadjusted and adjusted estimate and note which covariates were included in the model(s). |
| Secondary analyses | 14 | Report subgroup analyses and/or secondary outcomes of interest. |
| Key results | 15 | Summarize key results in the context of the study objectives given in Section “ |
| Limitations | 16 | Discuss limitations of the study in the context of bias (noting both direction and size), confounding, sample size and power, and representativeness of study population. |
| Interpretation | 17 | Provide an overall interpretation of the findings in the context of previous clinical studies, genetic association studies, and biological studies of radiation response. |
| Generalizability and clinical utility | 18 | Comment on the potential clinical utility of the findings in the context of the patient populations to which the results may apply. |
Available assays for radiosensitivity assessment with their respective level of evidence adapted from Simon et al. (.
| Assay | Available studies | Level of evidence |
|---|---|---|
| rs17599026 and rs7720298 SNPs for prostate cancer | Meta-analysis for radiation-induced toxicity ( | I |
| SNPs for breast cancer | Observational studies ( | II |
| SNPs for lung cancer | Observational studies ( | |
| RILA | Prospective multicenter study for breast cancer ( | I |
| Fibroblast-based assay | Retrospective studies only ( | IV |
| G2 metaphase | Retrospective studies only ( | IV |
| G0 micronuclei | Retrospective studies only ( | IV |
| Residual γ-H2AX foci | No validation studies available ( | IV |
SNP, single nucleotide polymorphism; RILA, radiation-induced lymphocyte apoptosis.
Level of evidence based on REMARK guidelines (.
Suggested treatment adaptations based on TCP and NTCP.
| Cancer type | Suggested treatment adaptations | |||
|---|---|---|---|---|
| High NTCP | High NTCP | Low NTCP | Low NTCP | |
| Low TCP | High TCP | Low TCP | High TCP | |
| Breast | Consider the risk of recurrence first If possible, discussion of a mastectomy ± reconstructive surgery without adjuvant RT | Consider no adjuvant RT if elderly Limit large RT fields (consider partial breast RT or IORT) | Increase treatment fields (IMC, axilla) Consider hypofractionation | Consider no adjuvant RT or IORT if elderly Consider hypofractionation and accelerated RT ± partial breast RT or IORT |
| Prostate | Discuss possibility of surgery RT with rectal spacer RT with transponders Discuss indication of pelvic RT Discuss interest of proton therapy | Active surveillance Focal therapy Brachytherapy RT with rectal spacer RT with transponders with reduced margins | Dose escalation (boost brachytherapy if indicated) Pelvic RT if indicated | Active surveillance Hypofractionation SBRT |
| Lung | Surgery if possible Discuss hyperfractionation if large volumes | Surgery Very limited SBRT in case of non-operable lesions | Dose escalation Increase nodal volume (ENI) if indicated | SBRT |
| Rectum Esophagus | Consider the risk of recurrence first Reduce the volume of fields if possible discuss interest of proton therapy | Involved field RT Discuss the need of RT | Dose escalation if boost indicated | Involved field RT Contact therapy |
| Head and neck | Consider the risk of recurrence first Reduce the volume of fields if possible discuss interest of proton therapy | Involved field RT | Dose escalation Discuss the use of radiosensitizers (e.g., nimorazole) | Involved field RT Hypofractionation |
| Gynecological tumors | Consider the risk of recurrence first Reduce the volume of fields if possible discuss interest of proton therapy | Involved field RT No adjuvant RT in adjuvant setting | Dose escalation | Involved field RT Hypofractionation |
| CNS | Consider the risk of recurrence first Proton therapy is mandatory | Involved field RT No adjuvant RT | Dose escalation | Involved field RT Hypofractionation SBRT |
TCP, tumor control probability; NTCP, normal tissue complication probability; IORT, intraoperative radiotherapy; RT, radiotherapy; IMC, internal mammary chain; SBRT, stereotactic body radiation therapy; ENI, elective nodal irradiation; CNS, central nervous system.