Prospective Observational Study of Diffuse Large-cell B Lymphoma
NCT ID: NCT06241729
Last Updated: 2025-07-31
Study Results
The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.
Basic Information
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RECRUITING
50 participants
OBSERVATIONAL
2023-01-03
2026-12-31
Brief Summary
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Detailed Description
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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
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Study Design
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COHORT
PROSPECTIVE
Study Groups
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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
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
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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
Eligibility Criteria
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Inclusion Criteria
* able to understand the information and sign their consent form
Exclusion Criteria
18 Years
ALL
No
Sponsors
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Grand Hôpital de Charleroi
OTHER
Responsible Party
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Principal Investigators
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Delphine Pranger, MD
Role: PRINCIPAL_INVESTIGATOR
Grand Hôpital de Charleroi
Locations
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Grand Hôpital de Charleroi
Charleroi, Hainaut, Belgium
Countries
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Central Contacts
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Facility Contacts
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Other Identifiers
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LBDGC - refractory
Identifier Type: -
Identifier Source: org_study_id
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