RecruitingNCT05856565

Generation of an Artificial Intelligence Algorithm Based on the Analysis of Melanoma Peri-scar Dermatoheliosis, as a Predictive Factor of Response to Anti-PD-1


Sponsor

Nantes University Hospital

Enrollment

700 participants

Start Date

Jul 24, 2023

Study Type

OBSERVATIONAL

Conditions

Summary

In the last decade, the advent of immunotherapies with inhibitors of immune checkpoints, such as anti-PD-1 and anti-CTLA-4, has revolutionized the treatment of advanced or metastatic melanoma. However, the clinical benefit remains limited to a subset of patients. Identifying the patients most likely to benefit from these novel therapies (and avoiding unnecessary toxicity in non-responding patients) is therefore critical. Previous studies found a significant link between the high mutational load of a tumor (TMB) and its response to anti-PD-1 monotherapy, regardless of the histological type of cancer. Unfortunately, TMB measurement is expensive, and requires extensive sequencing approaches difficult to implement in clinical practice. I have shown that melanomas known to be secondary to mutagenic ultraviolet rays (UVR) often carry a high TMB. The cumulative UVR damage translates into visible stigmas termed "dermatoheliosis" on patients' skin, easy to recognize with the naked eye of the clinician around the scar of the primary melanoma. My project proposes to establish, for the first time, dermatoheliosis as a novel predictive factor of response to anti-PD-1 immunotherapy, to be used within multidisciplinary tumor boards as a powerful decision-support tool to select the best treatment option. Specifically, I will 1) develop, validate and test in a prospective manner, an artificial intelligence (AI)-based algorithm, to assess features of pericicatricial dermatoheliosis based on a collection of photographs obtained from patients with unresectable locally advanced or metastatic melanoma 2) demonstrate the link between dermatoheliosis, TMB, immune and treatment response by characterizing pericicatricial skin single cell transcriptomics, as well as tumor DNA, RNA and host immunological profiles of the patients. This directly accessible, non-invasive, surrogate marker for TMB will be a game changer in clinical practice and will subsequently be translated to other skin cancers.


Eligibility

Min Age: 18 Years

Plain Language Summary

Simplified for easier understanding

This study is using artificial intelligence (AI) to analyze patterns in skin photos near melanoma scars (called dermatoheliosis — sun-damaged skin) to predict whether a patient's melanoma or skin cancer will respond to immunotherapy (anti-PD-1 drugs). **You may be eligible if...** - You are an adult with inoperable stage III or IV melanoma, or inoperable squamous cell or basal cell skin carcinoma - For the retrospective group: you have already received systemic (body-wide) treatment for at least 3 months with at least 6 months of follow-up - For the prospective group: you are about to start immunotherapy for the first time for your melanoma - You consent to participate and agree to having photos taken **You may NOT be eligible if...** - You received adjuvant immunotherapy within 6 months before starting curative treatment - Your primary skin cancer site cannot be photographed (e.g., uveal or mucosal melanomas in inaccessible areas) Talk to your doctor to see if this trial is right for you.

This is a simplified summary. Always discuss eligibility with your doctor before enrolling in a clinical trial.

Interventions

OTHERPhoto

Photography intake


Locations(4)

Besancon University Hospital

Besançon, Bourgogne-Franche-Comté, France

Brest University Hospital

Brest, Finistère, France

Angers University Hospital

Angers, Maine-et-Loire, France

Nantes University Hospital

Nantes, France

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NCT05856565


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