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RECRUITING
NCT06341205
PHASE3

Personalized Rituximab Treatment Based on Artificial Intelligence in Membranous Nephropathy (iRITUX)

Sponsor: Centre Hospitalier Universitaire de Nice

View on ClinicalTrials.gov

Summary

Membranous nephropathy is an autoimmune disease affecting the kidney, and the most common cause of nephrotic syndrome in non-diabetic Caucasian adults. The course of this disease is highly variable from one individual to another, ranging from spontaneous remission to progressive chronic kidney disease. The identification of autoantibodies - e.g., the phospholipase A2 receptor type 1 (PLA2R1) - has promoted the use of immunosuppressive drugs such as rituximab which is now a safe and effective first-line treatment for the management of membranous nephropathy. However, up to 40% of patients do not respond to a first course of rituximab treatment. In nephrotic patients, due to urinary drug loss, rituximab blood level is lower than in other autoimmune diseases treated with rituximab without proteinuria. This high urinary drug loss decreases the drug exposure, potentially explaining why rituximab regimen with low dose infusions (375 mg/m2) did not demonstrate efficacy after month-6 compared to a non-immunosuppressive antiproteinuric treatment in a previous study. In contrast, a regimen of two 1-g infusions two weeks apart was associated with a significantly greater remission rate after 6 months. Recently, the investigators have shown that after two 1-g rituximab infusions, the rituximab blood level 3 months after the first rituximab infusion, was correlated with the likelihood of remission after 6 and 12 months of the rituximab treatment. Patients with positive rituximab blood level 3 months after treatment had a higher chance of remission at month-6 and at month-12 than patients with an undetectable rituximab level at month-3. Nowadays, machine learning algorithms are increasingly used in medicine, especially in pharmacology, to predict the exposure to a drug, the initial dose to administer or the interval between two infusions. The objective of this study is to use a machine learning algorithm predicting the risk of having an undetectable residual level of rituximab 3 months after treatment, in order to propose a personalized treatment management with early additional doses of rituximab for the patients at risk.

Official title: Study of Artificial Intelligence-based Personalized Rituximab Treatment Protocol in Membranous Nephropathy

Key Details

Gender

All

Age Range

18 Years - Any

Study Type

INTERVENTIONAL

Enrollment

120

Start Date

2025-02-04

Completion Date

2031-09-30

Last Updated

2025-09-11

Healthy Volunteers

No

Interventions

DRUG

RiTUXimab Injection

Dose administered will depend on randomisation and for experimental Arm on the risk of having undetectable rituximab level after 3 months

Locations (13)

CHU de BESANCON

Besançon, France

CHU de BORDEAUX - Hôpital Pellegrin

Bordeaux, France

CHU de CAEN

Caen, France

AP-HP - Hôpital H. Mondor

Créteil, France

HCL - Hôpital E. Herriot

Lyon, France

AP-HM - Hôpital de la Conception

Marseille, France

CHU de NICE

Nice, France

CHU de Nîmes - Hôpital CAREMEAU

Nîmes, France

AP-HP - Hôpital Européen Georges Pompidou

Paris, France

AP-HP - Hôpital Necker

Paris, France

CHU de TOULOUSE - Hôpital Rangueil

Toulouse, France

CHRU de TOURS - Hôpital Bretonneau

Tours, France

CH de Valenciennes

Valenciennes, France