Literature DB >> 29795986

MC1R variants as melanoma risk factors independent of at-risk phenotypic characteristics: a pooled analysis from the M-SKIP project.

Elena Tagliabue1, Sara Gandini2, Rino Bellocco3,4, Patrick Maisonneuve2, Julia Newton-Bishop5, David Polsky6, DeAnn Lazovich7, Peter A Kanetsky8, Paola Ghiorzo9,10, Nelleke A Gruis11, Maria Teresa Landi12, Chiara Menin13, Maria Concetta Fargnoli14, Jose Carlos García-Borrón15,16, Jiali Han17, Julian Little18, Francesco Sera19, Sara Raimondi2.   

Abstract

PURPOSE: Melanoma represents an important public health problem, due to its high case-fatality rate. Identification of individuals at high risk would be of major interest to improve early diagnosis and ultimately survival. The aim of this study was to evaluate whether MC1R variants predicted melanoma risk independently of at-risk phenotypic characteristics.
MATERIALS AND METHODS: Data were collected within an international collaboration - the M-SKIP project. The present pooled analysis included data on 3,830 single, primary, sporadic, cutaneous melanoma cases and 2,619 controls from seven previously published case-control studies. All the studies had information on MC1R gene variants by sequencing analysis and on hair color, skin phototype, and freckles, ie, the phenotypic characteristics used to define the red hair phenotype.
RESULTS: The presence of any MC1R variant was associated with melanoma risk independently of phenotypic characteristics (OR 1.60; 95% CI 1.36-1.88). Inclusion of MC1R variants in a risk prediction model increased melanoma predictive accuracy (area under the receiver-operating characteristic curve) by 0.7% over a base clinical model (P=0.002), and 24% of participants were better assessed (net reclassification index 95% CI 20%-30%). Subgroup analysis suggested a possibly stronger role of MC1R in melanoma prediction for participants without the red hair phenotype (net reclassification index: 28%) compared to paler skinned participants (15%).
CONCLUSION: The authors suggest that measuring the MC1R genotype might result in a benefit for melanoma prediction. The results could be a valid starting point to guide the development of scientific protocols assessing melanoma risk prediction tools incorporating the MC1R genotype.

Entities:  

Keywords:  cutaneous melanoma; genetic epidemiology; melanocortin 1 receptor; pigmentation; pooled analysis

Year:  2018        PMID: 29795986      PMCID: PMC5958947          DOI: 10.2147/CMAR.S155283

Source DB:  PubMed          Journal:  Cancer Manag Res        ISSN: 1179-1322            Impact factor:   3.989


Introduction

Incidence rates of malignant cutaneous melanoma (CM) continue to rise in most European countries, whereas in other countries, rates have become rather stable in recent years.1 CM still represents an important public health problem for its high case-fatality rate,2 and thus, identification of individuals at high risk of developing melanoma would be of major interest to improve early diagnosis and ultimately survival. Known risk factors for CM include sun sensitivity, sun exposure, light hair and eye color, high number of melanocytic nevi, atypical nevi, and family history of melanoma.3–5 Knowledge of risk factors for CM is the basis for the development of risk prediction tools that may improve understanding and decision-making, leading to favorable behavior change and disease prevention.6–9 In addition to their clinical uses, these tools can assist in planning intervention trials and prevention strategies that target particular risk groups.7–9 Clinical risk prediction models for CM have been previously reviewed:10 their discrimination ranged from fair to very good (area under the receiver-operating characteristic curve [AUC] 0.62–0.86), comparable with those obtained for other cancers.10,11 The US Preventive Services Task Force considered the utility of these tools for population-based screening and concluded that the current evidence was insufficient to assess the balance of benefits and harms of visual skin examination by a primary care clinician or patient self-examination to screen for skin cancer of any type in adults.2,12 An accompanying editorial suggested that the Preventive Services Task Force statement should be viewed as an invitation to the scientific communities “to work together in executing well-designed studies … so future recommendations can be of greater public health benefit”.13 Since melanoma seems to be determined by complex interactions among host characteristics, environmental exposure, and genetic factors,14,15 the inclusion and evaluation of genetic markers in risk models may be warranted and has been considered an important step for further development and testing of prediction tools before they can be used routinely with confidence.10 MC1R is the most important gene found to play a role in predisposition to sporadic CM, and its association with CM has been replicated and confirmed by meta-analyses and genome-wide association studies.16–21 The MC1R gene is located on chromosome 16q24.3 and is a key regulator of skin pigmentation.22 It is highly polymorphic in populations of European origin, with more than 200 coding region variants described to date23 and a prevalence of any MC1R variant of ~60% in healthy controls.16 Some of these variants have been shown to reduce receptor function,24–26 result in a quantitative shift of melanin synthesis from eumelanin to phaeomelanin,27 and determine the red hair (RH) phenotype, characterized by the co-occurrence of fair skin, RH, freckles, and ultraviolet (UV) radiation sensitivity (poor tanning response and solar lentigines). Previous melanoma risk prediction models have included MC1R alongside base clinical risk factors15,28–31 and reported slight improvement in risk prediction with MC1R inclusion. However, because of the strong relationship between MC1R and phenotypic characteristics, their joint inclusion in the same model may generate biased estimates if the effect of MC1R on CM is mediated mainly by pigmentation. Therefore, before inclusion of MC1R in a risk prediction model in addition to phenotypic characteristics, it should be demonstrated that MC1R has a direct effect on CM development through biological pathways that are independent of pigmentation. There is some evidence for a wider biological role, as inherited variation at the MC1R locus has been reported to be associated with better melanoma survival overall,32 but to reduce therapeutic benefit from treatment with BRAF inhibitors.33 A stronger role of MC1R variants in increasing melanoma risk in darker pigmented individuals has been suggested,16,18,34,35 but the extent to which pigmentation and nonpigmentation pathways account for the association between MC1R and CM is still not clear. Therefore, the aims of this study were 1) to decompose the total risk estimate of MC1R on CM into two different effects: one due to the nonpigmentation pathway (direct effect) and one due to the pigmentation pathway (indirect effect); and 2) to evaluate whether the inclusion of MC1R variants in risk-prediction models increases their ability to predict CM in both the whole population and targeted subgroups of subjects with different phenotypic characteristics.

Materials and methods

Study population

Data were collected within the M-SKIP (melanocortin 1 receptor, skin cancer, and phenotypic characteristics) project, described in detail elsewhere.36 Briefly, we gathered original individual data from studies on MC1R variants and phenotypic characteristics in patients with sporadic CM and nonmelanoma skin cancer and/or in healthy controls. According to familial melanoma definition,37,38 sporadic melanoma cases were defined as subjects with no more than one first-degree relative or two any-degree relatives with melanoma. Since 2009, of 49 investigators contacted, 38 (78%) agreed to participate and sent their data along with a signed statement declaring that their original study was approved by an ethics committee. For the purpose of the present study, we excluded all the nonmelanoma skin cancer cases and included seven melanoma case–control studies18,30,34,39–43 according to inclusion criteria of the MC1R gene being sequenced and there being information available on hair color, skin phototype, and freckles, ie, the phenotypic characteristics used to define the RH phenotype. These phenotypic characteristics were those associated with MC1R genetic variants in our previous publication.44 The present study included data on 3,830 CM cases and 2,619 controls (Table 1).
Table 1

Description of the studies included in the analysis

StudyCountryCasesControlsControl typeaRH phenotypeb in controlsAvailable confoundersc
Kennedy et al39The Netherlands115377Hospital210 (56%)Sun exposure, sunburn, common and atypical nevi
Landi et al34Italy163169Healthy83 (49%)Sun exposure, sunburn, common nevi
Bishop et al40UK1567469Hospital314 (67%)Sunburnd
Kanetsky et al18USA766322Healthy262 (81%)Sun exposure, sunburn, atypical nevie
Menin et al41,fItaly118168Healthy70 (42%)Sunburn, common and atypical nevi
Ghiorzo et al42Italy236355Healthy224 (63%)Sunburnd
Penn et al30USA865759Healthy339 (45%)Sun exposure, sunburn, common nevi
Total3,8302,6191,502 (57%)

Notes:

Healthy controls were population controls, friends or partners of cases, outpatients, or hospital personnel.

Defined as presence of red hair, freckles, or skin type I/II;

Beyond age and sex, which were available in all seven studies. Confounders with more than 20% of missing data not listed. Sun exposure includes separate information on chronic and intermittent sun exposure.

Information on atypical nevi was also available, but with more than 20% of subjects with missing data.

Not included in risk model analysis because of missing data on common nevi.

Included an unpublished group of sporadic melanoma cases that were included in the present analysis. Study approach, control group, and genetic analysis were the same as described in Menin et al.41

Abbreviation: RH, red hair.

Statistical analysis

A complete description of statistical analysis methods is reported in the Supplementary material.

Mediation analysis

To estimate the independent contribution of MC1R variants on CM development, we performed a mediation analysis.45,46 We decomposed the overall risk estimate for CM associated with MC1R into a direct effect due to the nonpigmentation pathway and an indirect effect due to the pigmentation pathway. We estimated the direct effect of MC1R (any variant and the nine single common variants vs wild type [WT] on CM in the presence and in the absence of the RH phenotype (controlled direct effect [CDE]). Following our previous publication,44 RH phenotype was primarily defined as the presence of at least one of the characteristics of RH, freckles, and skin type I/II. Skin type is a measure of sun sensitivity of the skin and was defined in our study according to the known Fitzpatrick classification as type I (always burns, never tans), II (usually burns, tans minimally), III (sometimes mild burns, tans uniformly), and IV (never burns, tans easily). We also estimated the natural direct effect (NDE), which essentially averages CDE over the population and finally the indirect effect of MC1R mediated by RH phenotype (natural indirect effect [NIE]). Mediation analysis was separately applied to each of the seven studies, and ORs with 95% CIs were obtained for total effect (TE), NDE, NIE, and CDE using unconditional logistic regression models with the following covariates (when available) of age, sex, intermittent and chronic sun exposure, lifetime and childhood sunburns, family history of melanoma, common nevi count, and presence of atypical nevi. Following the two-stage analysis approach, we pooled study-specific ORs with a random effects model. We calculated I2-values to assess the percentage of total variation across studies that was attributable to heterogeneity rather than to chance.

Model comparison

We tested the prediction ability to identify CM participants by adding MC1R variants to a clinical base prediction model. Variables included in the base model were age, sex, sunburn, number of common nevi, and RH phenotype. These covariates were available in a subset of 4,390 (68%) participants from six studies. We used unconditional logistic regression to estimate the risk of CM according to the base clinical risk model and to the model including the MC1R gene, defined as the presence of any MC1R variants versus WT, the presence of only r variants and presence of at least one R variant versus WT, and the presence of each of the nine most common MC1R variants or rarer variants. R and r alleles have previously been defined according to their association with RH phenotype.17,22 We compared the predictive ability of the model with MC1R over the base clinical model by receiver-operating characteristic (ROC) curves, net reclassification improvement (NRI), and decision curve analysis. Analysis was carried out with the software SAS (version 9.2) and Stata (version 11.2).

Results

The main characteristics of the studies included are summarized in Table 1. Three studies were performed in Italy, two in the US, one in the UK, and one in the Netherlands. All studies included more than 97% Caucasians. Two studies included hospital-based controls,30,31 and five recruited healthy controls. One study41 included an unpublished group of sporadic melanoma cases. The study approach, control group, and genetic analysis were the same described in the corresponding published paper.

Direct and indirect effects of MC1R on CM development

The OR (95% CI) for the TE of any MC1R variants on CM risk was 1.71 (1.46–2.00; I2=0; Figure 1). When decomposed, the risk was primarily due to the NDE, independent of phenotypic characteristics (OR 1.60; 95% CI 1.36–1.88; I2=0; Figure 1); the NIE, which would be dependent on the pigmentation pathway, was smaller (OR 1.07; 95% CI 1.03–1.11; I2=0; Figure 1). When the CDE according to RH phenotype was examined, we found a direct, positive association between MC1R and CM in the absence of RH phenotype (OR 1.75; 95% CI 1.33–2.33; I2=0; Figure 2) and a smaller direct association between MC1R and CM in participants with the RH phenotype (OR 1.50; 95% CI 1.19–1.89; I2=37%; Figure 2).
Figure 1

Forest plot for NDE, NIE, and TE of any MC1R variant on melanoma risk.

Notes: CDE estimates the direct effect of MC1R on melanoma when the mediator is controlled at level 0 (absent) or 1 (present) uniformly in the population, NDE essentially averages CDE over the population, NIE estimates the indirect effect of MC1R mediated by RH phenotype, and TE is the overall melanoma risk estimate for MC1R carriers and in each study is the product of NDE and NIE.

Abbreviations: CDE, control direct effect; NDE, natural direct effect; NIE, natural indirect effect; PY, publication year; RH, red hair; SOR, summary OR; TE, total effect.

Figure 2

Forest plot for control direct effect of any MC1R variant on melanoma risk according to RH phenotype.*

Notes: *Defined as presence of red hair, freckles, or skin type I/II. Control direct effect estimates the direct effect of MC1R on melanoma when the mediator is controlled at level 0 (absent) or 1 (present) uniformly in the population.

Abbreviations: PY, publication year; RH, red hair; SOR, summary OR.

Looking at each of the nine most common MC1R variants (Table S1), we still found for all of them larger NDE than NIE, with significant NDE found for the R variants R142H, R151C, R160W, and D294K (ranging from OR 2.22; 95% CI 1.33–3.71 to OR 3.55; 95% CI 1.21–10.47) and significant NIE found only for the R variant R151C (OR 1.18; 95% CI 1.00–1.39). Furthermore, CDE was higher for non-RH-phenotype subjects than for RH-phenotype subjects for the most common variants (allele frequency ≥1.5%), while it was opposite for the three rarer MC1R variants D84E, R142H, and I155T (Table S1).

Risk models for CM prediction

Table 2 reports the ORs and 95% CIs for variables included in the base clinical risk model and for MC1R variants. Having more than 30 common nevi and RH phenotype increased CM risk in our population (Table 2). Independent of other risk factors, carriers of any MC1R variant had a higher risk of CM than noncarriers (OR 1.63; 95% CI 1.40–1.90). The OR slightly decreased when the analysis was restricted to RH participants, while it increased for non-RH participants (Table 2). When we considered a distinction between MC1R r and R variants, in comparison with WT, carriers of at least one R variant had a higher risk of CM (OR 2.08; 95% CI 1.76–2.46) than carriers of only r variants (OR 1.24; 95% CI 1.04–1.47). For RH participants, carrying only MC1R r variants did not increase CM risk, while the risk was increased for carriers of MC1R R variants. By contrast, both MC1R r and R variants were associated with a higher risk of CM in participants with the non-RH phenotype (Table 2). Similar results were found looking at each of the nine MC1R variants separately (Table S2).
Table 2

ORs with 95% CIs for melanoma risk according to a base clinical model and the same model with inclusion of MC1R variants

All participants (n=4,390)
RH participants (n=2,654)
Non-RH participants (n=1,736)
Base modelBase model + MC1RBase modelBase model + MC1RBase modelBase model + MC1R
Agea0.97 (0.94–1.00)0.97 (0.94–1.00)0.96 (0.92–0.99)0.96 (0.92–0.99)0.99 (0.94–1.04)0.99 (0.94–1.04)
Sex
Male1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)
Female1.01 (0.89–1.16)1.03 (0.91–1.18)0.92 (0.77–1.09)0.92 (0.77–1.10)1.18 (0.96–1.45)1.23 (1.00–1.52)
Sunburn
None1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)
Any1.15 (0.98–1.35)1.11 (0.94–1.30)1.16 (0.94–1.43)1.13 (0.91–1.39)1.13 (0.88–1.47)1.08 (0.84–1.41)
Common nevi
≤301.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)1.00 (reference)
>303.37 (2.90–3.92)3.40 (2.92–3.96)3.46 (2.86–4.18)3.47 (2.87–4.20)3.25 (2.53–4.16)3.30 (2.57–4.24)
Phenotype
Non-RH1.00 (reference)1.00 (reference)
RH1.64 (1.43–1.88)1.52 (1.32–1.75)
MC1R
None1.00 (reference)1.00 (reference)1.00 (reference)
Any variant1.63 (1.40–1.90)1.55 (1.25–1.92)1.76 (1.41–2.19)
Only r variants1.24 (1.04–1.47)1.07 (0.84–1.37)1.45 (1.14–1.86)
≥1 R variant2.08 (1.76–2.46)1.92 (1.53–2.41)2.25 (1.73–2.92)

Notes:

Per 5-year increase. Significant ORs are in bold. All models are adjusted for variables included in the table + study center. Two separate models were created for 1) any MC1R variant vs wild type and 2) only r variants and ≥1R variant vs wild type. R and r alleles were defined basing on their stronger or weaker association with the RH phenotype for the most common variants44,67–70 and on likely pathogenicity using the algorithm proposed by Davies et al32 for the less common variants.

Abbreviation: RH, red hair.

The clinical risk model yielded an AUC of 0.706 (95% CI 0.691–0.721; Table S3). The model including any MC1R variant showed slightly greater discrimination, with an AUC of 0.713 (95% CI 0.698–0.728; P=0.002) and an NRI of 24% (95% CI 20%–30%). Differentiation between r and R variants and considering each single variant further increased diagnostic accuracy by 1.5% and 1.9%, respectively, over the base clinical risk model, with an NRI of 37% (95% CI 32%–43%) and 34% (28%–39%), respectively. Subgroup analysis restricted to participants with the non-RH phenotype revealed that MC1R improved the AUC by 1.8% (from 0.678 to 0.696, P=0.0008; Figure 3; Table S3), suggesting a stronger role of MC1R in melanoma prediction for darker pigmented participants compared to RH participants. The NRI due to MC1R inclusion for participants with a non-RH phenotype was 28% (95% CI 19%–37%), while it was 15% (95% CI 9%–22%) for RH participants. The addiction of separate information on r and R MC1R variants and on single specific variants obtained a better model performance for both RH and non-RH participants. Decision curves showed a small increase in net benefit of MC1R testing for non-RH participants over almost the entire range of threshold probabilities (Figure S1), with an average increase in net benefit of 0.003 for the model with any MC1R variant and 0.005 for the model with r or R MC1R variant over the base clinical model.
Figure 3

ROC curve comparison between base clinical model and the same model with inclusion of MC1R variants for patients with no RH phenotype.*

Notes: (A) MC1R defined as the presence or absence of any MC1R variant and (B) as no MC1R variant, only r variants, and ≥1 R variants. *Non-RH patients defined as those without RH and freckles and with skin type III/IV. R and r alleles were respectively defined basing on their stronger or weaker association with the RH phenotype for the most common variants44,67–70 and on likely pathogenicity using the algorithm proposed by Davies et al32 for the less common variants.

Abbreviations: RH, red hair; ROC, receiver-operating characteristic.

Sensitivity analysis on a subset of 2,472 (38%) participants from four studies with additional information on atypical nevi provided similar results (not shown): having more than 30 common nevi, RH phenotype, and atypical nevi increased CM risk. In this sensitivity analysis, MC1R variants increased CM risk in non-RH participants, but not in RH participants. Sensitivity analysis with different definitions of RH phenotype provided similar results (not shown).

Discussion

Our pooled analysis showed that the presence of any MC1R variant had a direct effect on CM, conferring a 60% higher risk to carriers versus noncarriers. The pigmentation-mediated effect of MC1R on CM was smaller with any MC1R variant and each of the nine most common MC1R variants. This result confirms and expands the previous suggestion16–18,34 of the existence of a nonpigmentation pathway leading MC1R to CM development. Here, we give for the first time an estimate of the magnitude of total effect explained by each of the two (pigmentation and nonpigmentation) pathways. Recent studies and reviews47 have implicated MC1R signaling in a number of key biological pathways involved in cell-cycle control,48 apoptosis,49 and activation of DNA-repair mechanisms and antioxidant defenses.50 Production of pheomelanin pigments seems associated with increased oxidative DNA damage compared with synthesis of eumelanins.51 Further evidence for pheomelanin-associated increased cellular oxidative stress was obtained in studies of mice carrying a loss-of-function mutation of the Mc1r gene, which provided evidence in support that the pheomelanin-pigment pathway produces UV-independent carcinogenic contributions to melanomagenesis.52 Another recent study53 found a role of germ-line MC1R variants in influencing the somatic mutational landscape of melanoma, with an expected higher number of somatic C>T mutations in carriers of R alleles than those without R alleles. In this respect, it is worth noting that although the most relevant UV radiation-induced mutations are C>T transitions, highly recurrent mutations in key melanoma-driver genes, such as the V600E mutation in BRAF, are non-C>T changes. Importantly, significant increases in the rate of non-C>T changes, some of which might depend on oxidative DNA damage, have also been found in R allele carriers compared with noncarriers.53,54 Accordingly, associations of MC1R and genes frequently mutated in melanoma, such as BRAF or TERT, have been reported.55–57 We found that MC1R slightly improved risk prediction accuracy over a base clinical model, especially for non-RH participants: CM predictive accuracy increased by 1.8% and the CM risk of 28% of participants was better assessed. If a distinction is used in the model to differently score r and R variants, the benefit for the whole population increased from 24% of participants correctly reclassified with just presence/absence of MC1R variants to 37% of participants correctly reclassified with separate information on r and R variants. Distinction between r and R alleles, however, was more apparent for RH than for non-RH participants. In the study by Cust et al,15 the R variants were responsible for most of the improvement in risk prediction, but separate analysis for RH and non-RH participants was not performed. Previous melanoma risk prediction models have included MC1R with base clinical risk factors.15,28–30 Whiteman and Green28 did not report on predictive ability. Stefanaki et al29 found no improvement in AUC with the addition of eight melanoma-associated single-nucleotide polymorphisms (SNPs) to the base model. Both Cust et al15 and Penn et al30 reported slight improvement in AUC with the inclusion of MC1R. However, no previous paper has reported separate results according to fairer or darker phenotypic characteristics. This point seems in fact extremely important, because MC1R seems to have a stronger role in non-RH participants in both the present paper and in previously published stratified analyses.16,18,34 A more precise risk assessment, therefore, in participants with no RH, no freckles, and skin type III/IV could potentially change individual clinical follow-up schedules and perhaps UV-exposure behavior and indoor tanning habits. The application of risk prediction tools in cancer screening has been widely discussed. In particular, there have been concerns on the impact of genetic screening in clinical decision-making. For example, in a previous review,58 genetic screening was discussed using commercially available SNP panel tests in prostate cancer. Conclusions were that the investigated SNP panels had poor discriminative ability and clinical validity. In our study, adding the MC1R genotype resulted in a small yet significant improvement in predictive ability over the clinical model and a substantial change in the NRI, and it is worth noting that this improvement was based on a single gene, while risk indices for both prostate and breast cancer require several genetic markers to produce increases of similar magnitude.59–62 Decreasing genotyping costs and increasing use of genetic testing is making it more feasible to incorporate genetic risk factors into clinical risk prediction tools, and limiting testing to the non-RH participants with no other risk factors may result in a cost-effective strategy via better allocation of resources. However, translation into routine clinical practice requires several additional steps,63,64 and new studies are needed in order better to assess the clinical utility of these models, taking also into account the small increase in net benefit observed in our decision curve analysis. Our study has several strengths. We quantified for the first time the amount of total effect of MC1R on CM due to pigmentation and nonpigmentation pathways. Previous stratified analyses, including ours,16 have already suggested that the effect of MC1R was stronger in darker pigmented participants; however, stratified analyses are not conclusive, especially in the presence of genotype–phenotype interaction.46,65 Precise and powerful quantification of the effect of the two pathways was only feasible in the present analysis after inclusion of new studies.30,40,41 The large sample and international collaborative nature of the M-SKIP project make it possible to assess various populations and ancestries, thus providing results that are robust and consistent in different geographical areas. We were also able to create different predictive models according to the RH and non-RH phenotypes, which was not possible in previous studies. In our centralized statistical analysis, we were able to take into account all the available confounders, with a homogeneous plan of analysis and definition of covariables. Heterogeneity among different populations is a possible limitation of our study; therefore, this tool may require adjustments before being applicable to each specific population.10 However, it is not easy to develop a good and precise tool for each population due to the lack of power of single studies. Moreover, we did not observe any heterogeneity in risk estimates for MC1R and CM, suggesting that information on MC1R improves CM risk prediction in different populations of European origins. Following our previous publication,44 RH participants were defined as participants with either RH, freckles, or skin type I/II, and we are aware that other definitions may modify the results. However, in a sensitivity analysis using RH defined as a score obtained from multiple correspondence analysis,44 the results were similar. Phenotype misclassification is a possibility, although a previous study reported a good correlation between self-defined skin pigmentation and measured melanin density.66 In order to minimize phenotype misclassification, we performed a sensitivity analysis that included only extreme categories of the RH phenotype.5 Although this analysis was underpowered, we observed similar risk estimates to those reported for the main analysis in the present paper (results not shown). Finally, it should be noted that our analyses were performed on sporadic melanoma cases, and thus, generalization to familial melanoma is not appropriate.

Conclusion

We found a direct role of MC1R in melanoma risk independently of RH phenotype and demonstrated that adding the MC1R genotype to classical clinical risk factors results in a benefit for CM prediction. A change in clinical follow-up schedules and UV exposure and sun protection habits of identified at-risk individuals might favor early melanoma diagnosis and prevention. The application of risk prediction tools in cancer screening has been controversial, because of concerns on their impact in clinical decision-making. Our results could be a valid starting point to guide the development of scientific protocols assessing melanoma risk prediction tools incorporating the MC1R genotype, ideally with a prospective design and cost–benefit evaluation.
  67 in total

1.  A vision for the future of genomics research.

Authors:  Francis S Collins; Eric D Green; Alan E Guttmacher; Mark S Guyer
Journal:  Nature       Date:  2003-04-14       Impact factor: 49.962

2.  A risk prediction algorithm based on family history and common genetic variants: application to prostate cancer with potential clinical impact.

Authors:  Robert J Macinnis; Antonis C Antoniou; Rosalind A Eeles; Gianluca Severi; Ali Amin Al Olama; Lesley McGuffog; Zsofia Kote-Jarai; Michelle Guy; Lynne T O'Brien; Amanda L Hall; Rosemary A Wilkinson; Emma Sawyer; Audrey T Ardern-Jones; David P Dearnaley; Alan Horwich; Vincent S Khoo; Christopher C Parker; Robert A Huddart; Nicholas Van As; Margaret R McCredie; Dallas R English; Graham G Giles; John L Hopper; Douglas F Easton
Journal:  Genet Epidemiol       Date:  2011-07-18       Impact factor: 2.135

3.  Predicting the future of genetic risk prediction.

Authors:  Nilanjan Chatterjee; Ju-Hyun Park; Neil Caporaso; Mitchell H Gail
Journal:  Cancer Epidemiol Biomarkers Prev       Date:  2011-01       Impact factor: 4.254

4.  Association of Melanocortin-1 Receptor Variants with Pigmentary Traits in Humans: A Pooled Analysis from the M-Skip Project.

Authors:  Elena Tagliabue; Sara Gandini; José C García-Borrón; Patrick Maisonneuve; Julia Newton-Bishop; David Polsky; DeAnn Lazovich; Rajiv Kumar; Paola Ghiorzo; Leah Ferrucci; Nelleke A Gruis; Susana Puig; Peter A Kanetsky; Tomonori Motokawa; Gloria Ribas; Maria Teresa Landi; Maria Concetta Fargnoli; Terence H Wong; Alexander Stratigos; Per Helsing; Gabriella Guida; Philippe Autier; Jiali Han; Julian Little; Francesco Sera; Sara Raimondi
Journal:  J Invest Dermatol       Date:  2016-05-29       Impact factor: 8.551

Review 5.  Multigene panels in prostate cancer risk assessment: a systematic review.

Authors:  Julian Little; Brenda Wilson; Ron Carter; Kate Walker; Pasqualina Santaguida; Eva Tomiak; Joseph Beyene; Muhammad Usman Ali; Parminder Raina
Journal:  Genet Med       Date:  2015-10-01       Impact factor: 8.822

6.  Melanocortin-1 receptor, skin cancer and phenotypic characteristics (M-SKIP) project: study design and methods for pooling results of genetic epidemiological studies.

Authors:  Sara Raimondi; Sara Gandini; Maria Concetta Fargnoli; Vincenzo Bagnardi; Patrick Maisonneuve; Claudia Specchia; Rajiv Kumar; Eduardo Nagore; Jiali Han; Johan Hansson; Peter A Kanetsky; Paola Ghiorzo; Nelleke A Gruis; Terry Dwyer; Leigh Blizzard; Ricardo Fernandez-de-Misa; Wojciech Branicki; Tadeusz Debniak; Niels Morling; Maria Teresa Landi; Giuseppe Palmieri; Gloria Ribas; Alexander Stratigos; Lynn Cornelius; Tomonori Motokawa; Sumiko Anno; Per Helsing; Terence H Wong; Philippe Autier; José C García-Borrón; Julian Little; Julia Newton-Bishop; Francesco Sera; Fan Liu; Manfred Kayser; Tamar Nijsten
Journal:  BMC Med Res Methodol       Date:  2012-08-03       Impact factor: 4.615

7.  Distinct pigmentary and melanocortin 1 receptor-dependent components of cutaneous defense against ultraviolet radiation.

Authors:  Craig S April; Gregory S Barsh
Journal:  PLoS Genet       Date:  2006-12-01       Impact factor: 5.917

8.  An ultraviolet-radiation-independent pathway to melanoma carcinogenesis in the red hair/fair skin background.

Authors:  Devarati Mitra; Xi Luo; Ann Morgan; Jin Wang; Mai P Hoang; Jennifer Lo; Candace R Guerrero; Jochen K Lennerz; Martin C Mihm; Jennifer A Wargo; Kathleen C Robinson; Suprabha P Devi; Jillian C Vanover; John A D'Orazio; Martin McMahon; Marcus W Bosenberg; Kevin M Haigis; Daniel A Haber; Yinsheng Wang; David E Fisher
Journal:  Nature       Date:  2012-10-31       Impact factor: 49.962

9.  Management of melanoma families.

Authors:  Wilma Bergman; Nelleke A Gruis
Journal:  Cancers (Basel)       Date:  2010-04-16       Impact factor: 6.639

10.  MC1R variants increased the risk of sporadic cutaneous melanoma in darker-pigmented Caucasians: a pooled-analysis from the M-SKIP project.

Authors:  Elena Pasquali; José C García-Borrón; Maria Concetta Fargnoli; Sara Gandini; Patrick Maisonneuve; Vincenzo Bagnardi; Claudia Specchia; Fan Liu; Manfred Kayser; Tamar Nijsten; Eduardo Nagore; Rajiv Kumar; Johan Hansson; Peter A Kanetsky; Paola Ghiorzo; Tadeusz Debniak; Wojciech Branicki; Nelleke A Gruis; Jiali Han; Terry Dwyer; Leigh Blizzard; Maria Teresa Landi; Giuseppe Palmieri; Gloria Ribas; Alexander Stratigos; M Laurin Council; Philippe Autier; Julian Little; Julia Newton-Bishop; Francesco Sera; Sara Raimondi
Journal:  Int J Cancer       Date:  2014-06-18       Impact factor: 7.396

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  25 in total

1.  MC1R variants in childhood and adolescent melanoma: a retrospective pooled analysis of a multicentre cohort.

Authors:  Cristina Pellegrini; Francesca Botta; Daniela Massi; Claudia Martorelli; Fabio Facchetti; Sara Gandini; Patrick Maisonneuve; Marie-Françoise Avril; Florence Demenais; Brigitte Bressac-de Paillerets; Veronica Hoiom; Anne E Cust; Hoda Anton-Culver; Stephen B Gruber; Richard P Gallagher; Loraine Marrett; Roberto Zanetti; Terence Dwyer; Nancy E Thomas; Colin B Begg; Marianne Berwick; Susana Puig; Miriam Potrony; Eduardo Nagore; Paola Ghiorzo; Chiara Menin; Ausilia Maria Manganoni; Monica Rodolfo; Sonia Brugnara; Emanuela Passoni; Lidija Kandolf Sekulovic; Federica Baldini; Gabriella Guida; Alexandros Stratigos; Fezal Ozdemir; Fabrizio Ayala; Ricardo Fernandez-de-Misa; Pietro Quaglino; Gloria Ribas; Antonella Romanini; Emilia Migliano; Ignazio Stanganelli; Peter A Kanetsky; Maria Antonietta Pizzichetta; Jose Carlos García-Borrón; Hongmei Nan; Maria Teresa Landi; Julian Little; Julia Newton-Bishop; Francesco Sera; Maria Concetta Fargnoli; Sara Raimondi
Journal:  Lancet Child Adolesc Health       Date:  2019-03-12

2.  A randomized clinical trial of precision prevention materials incorporating MC1R genetic risk to improve skin cancer prevention activities among Hispanics.

Authors:  John Charles A Lacson; Scarlet H Doyle; Jocelyn Del Rio; Stephanie M Forgas; Rodrigo Carvajal; Guillermo Gonzalez-Calderon; Adriana Ramírez Feliciano; Youngchul Kim; Richard G Roetzheim; Steven K Sutton; Susan T Vadaparampil; Brenda Soto-Torres; Peter A Kanetsky
Journal:  Cancer Res Commun       Date:  2022-01-11

3.  Using the Prediction Model Risk of Bias Assessment Tool (PROBAST) to Evaluate Melanoma Prediction Studies.

Authors:  Isabelle Kaiser; Sonja Mathes; Annette B Pfahlberg; Wolfgang Uter; Carola Berking; Markus V Heppt; Theresa Steeb; Katharina Diehl; Olaf Gefeller
Journal:  Cancers (Basel)       Date:  2022-06-20       Impact factor: 6.575

4.  Ferroptosis: a new unexpected chance to treat metastatic melanoma?

Authors:  Mara Gagliardi; Valentina Saverio; Romina Monzani; Eleonora Ferrari; Mauro Piacentini; Marco Corazzari
Journal:  Cell Cycle       Date:  2020-08-20       Impact factor: 4.534

Review 5.  Melanoma Risk and Melanocyte Biology.

Authors:  Julie U Bertrand; Eirikur Steingrimsson; Fanélie Jouenne; Brigitte Bressac-de Paillerets; Lionel Larue
Journal:  Acta Derm Venereol       Date:  2020-06-03       Impact factor: 3.875

Review 6.  Melanoma Epidemiology and Sun Exposure.

Authors:  Sara Raimondi; Mariano Suppa; Sara Gandini
Journal:  Acta Derm Venereol       Date:  2020-06-03       Impact factor: 3.875

7.  Dysregulation of MITF Leads to Transformation in MC1R-Defective Melanocytes.

Authors:  Timothy J Lavelle; Tine Norman Alver; Karen-Marie Heintz; Patrik Wernhoff; Vegard Nygaard; Sigve Nakken; Geir Frode Øy; Sigurd Leinæs Bøe; Alfonso Urbanucci; Eivind Hovig
Journal:  Cancers (Basel)       Date:  2020-06-28       Impact factor: 6.639

8.  MC1R variants and cutaneous melanoma risk according to histological type, body site, and Breslow thickness: a pooled analysis from the M-SKIP project.

Authors:  Saverio Caini; Sara Gandini; Francesca Botta; Elena Tagliabue; Sara Raimondi; Eduardo Nagore; Ines Zanna; Patrick Maisonneuve; Julia Newton-Bishop; David Polsky; DeAnn Lazovich; Rajiv Kumar; Peter A Kanetsky; Veronica Hoiom; Paola Ghiorzo; Maria Teresa Landi; Gloria Ribas; Chiara Menin; Alexander J Stratigos; Giuseppe Palmieri; Gabriella Guida; Jose Carlos García-Borrón; Hongmei Nan; Julian Little; Francesco Sera; Susana Puig; Maria Concetta Fargnoli
Journal:  Melanoma Res       Date:  2020-10       Impact factor: 3.199

9.  MicroRNA-3662 targets ZEB1 and attenuates the invasion of the highly aggressive melanoma cell line A375.

Authors:  Lin Zhu; Zhifei Liu; Ruijia Dong; Xiaojun Wang; Mingzi Zhang; Xiao Guo; Nanze Yu; Ang Zeng
Journal:  Cancer Manag Res       Date:  2019-06-28       Impact factor: 3.989

Review 10.  Behind the Scene: Exploiting MC1R in Skin Cancer Risk and Prevention.

Authors:  Michele Manganelli; Stefania Guida; Anna Ferretta; Giovanni Pellacani; Letizia Porcelli; Amalia Azzariti; Gabriella Guida
Journal:  Genes (Basel)       Date:  2021-07-19       Impact factor: 4.096

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