Prospective Observational Study of Diffuse Large-cell B Lymphoma

NCT ID: NCT06241729

Last Updated: 2025-07-31

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

Get a concise snapshot of the trial, including recruitment status, study phase, enrollment targets, and key timeline milestones.

Recruitment Status

RECRUITING

Total Enrollment

50 participants

Study Classification

OBSERVATIONAL

Study Start Date

2023-01-03

Study Completion Date

2026-12-31

Brief Summary

Review the sponsor-provided synopsis that highlights what the study is about and why it is being conducted.

Diffuse large B-cell lymphoma (DLBCL) represents the most common type of non-Hodgkin lymphoma and is currently a curable malignant disease for many patients with immuno-chemotherapy frontline treatment. However, around 30-40 % of patients, are unresponsive or will experience early relapse. The prognosis of primary refractory patient is poor and the management and treatment are a significant challenge due to the disease heterogeneity and the complex genetic framework. The reasons for refractoriness are various and include genetic abnormalities, alterations in tumor and tumor microenvironment. Patient related factors such as comorbidities can also influence treatment outcome. Recently the progress in Machine learning (ML) showed its usefulness in the procedures used to analyze large and complex datasets. In medicine, machine learning is used to create some predictive tools based on data-driven analytic approach and integration of various risk factors and parameters. Machine learning, as a subdomain of artificial intelligence (AI), has the capability to autonomously uncover patterns within datasets. It offers algorithms that can learn from examples to perform a task automatically.The investigators tested in a previous study five machine learning algorithms to establish a model for predicting the risk of primary refractory DLBCL using parameters obtained from a monocentric dataset. The investigators observed that NB Categorical classifier was the best alternative for building a model in order to predict primary refractory disease in DLBCL patients and the second was XGBoost.The investigators plan to extend this previous study by further exploring the two best-performing models (NBC Classifier and XGBoost), progressively incorporating a larger number of patients in a prospective way.

Detailed Description

Dive into the extended narrative that explains the scientific background, objectives, and procedures in greater depth.

Primary refractory disease affects approximately 30-40% of patients diagnosed with DLBCL and is a challenge in the management of this disease due to its poor prognosis. The prediction of refractory status could be very useful in the treatment strategy allowing early intervention. Indeed, several options are now available depending on patient and disease characteristics such as salvage chemotherapy and autologous HSCT, targeted therapies or CAR T-cell therapy. Supervised machine learning techniques are able to predict outcomes in a medical context and therefore seem very suitable for this matter.

An approach with machine learning seems particularly interesting because there are currently no statistical models efficient enough to provide decision-making support to clinicians. The investigators showed in a previous study that algorithms can be effective in predicting the refractory status of the disease from structured data from the patient's medical record. Due to the large number of available and effective salvage therapies, intervening quickly in the patient's therapeutic pathway seems to be the right option and the most personalized way to maximize the chances of cure while reducing those of toxicity. Based on clinical judgment of physicians and the best algorithms predictions, the physicians could choose an early treatment strategy for primary refractory DLBCL.

The investigators found in a previous study two interesting models (NBC and XGBoost) for predicting refractory disease on the validation set. The application of machine learning techniques can significantly contribute to the management of DLBCL patients. These algorithms hold the potential to assist clinicians in making informed decisions regarding treatment strategies, allowing for the personalization of therapies based on each patient. This study aims to validate these findings on a broader scale in a prospective cohort and the value of this technology in the intricate management of primary refractory disease in DLBCL patients.

Conditions

See the medical conditions and disease areas that this research is targeting or investigating.

Lymphoma, B-Cell

Study Design

Understand how the trial is structured, including allocation methods, masking strategies, primary purpose, and other design elements.

Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Study Groups

Review each arm or cohort in the study, along with the interventions and objectives associated with them.

Patients with diffuse large-cell B lymphoma

Patients with diffuse large-cell B lymphoma in a single-centre cohort at Grand Hôpital de Charleroi

Algorithms to predict the probability of a primary refractory state

Intervention Type OTHER

Follow-up of a cohort of patients with diffuse large-cell B lymphoma from 2024 using algorithms to predict the probability of a primary refractory state

Interventions

Learn about the drugs, procedures, or behavioral strategies being tested and how they are applied within this trial.

Algorithms to predict the probability of a primary refractory state

Follow-up of a cohort of patients with diffuse large-cell B lymphoma from 2024 using algorithms to predict the probability of a primary refractory state

Intervention Type OTHER

Eligibility Criteria

Check the participation requirements, including inclusion and exclusion rules, age limits, and whether healthy volunteers are accepted.

Inclusion Criteria

* patients with diffuse large-cell B lymphoma treated in the haematology department at the Grand Hôpital de Charleroi for the first time
* able to understand the information and sign their consent form

Exclusion Criteria

* under 18 years old
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

No

Sponsors

Meet the organizations funding or collaborating on the study and learn about their roles.

Grand Hôpital de Charleroi

OTHER

Sponsor Role lead

Responsible Party

Identify the individual or organization who holds primary responsibility for the study information submitted to regulators.

Responsibility Role SPONSOR

Principal Investigators

Learn about the lead researchers overseeing the trial and their institutional affiliations.

Delphine Pranger, MD

Role: PRINCIPAL_INVESTIGATOR

Grand Hôpital de Charleroi

Locations

Explore where the study is taking place and check the recruitment status at each participating site.

Grand Hôpital de Charleroi

Charleroi, Hainaut, Belgium

Site Status RECRUITING

Countries

Review the countries where the study has at least one active or historical site.

Belgium

Central Contacts

Reach out to these primary contacts for questions about participation or study logistics.

Marie Detrait, MD, PhD

Role: CONTACT

0031 71 10 ext. 8456

Facility Contacts

Find local site contact details for specific facilities participating in the trial.

Delphine Pranger, MD

Role: primary

Other Identifiers

Review additional registry numbers or institutional identifiers associated with this trial.

LBDGC - refractory

Identifier Type: -

Identifier Source: org_study_id

More Related Trials

Additional clinical trials that may be relevant based on similarity analysis.