RecruitingNCT06241729

Prospective Observational Study of Diffuse Large-cell B Lymphoma

Supervised Machine Learning for the Prediction of Primary Refractory Status in Patients With Diffuse Large Cell B Lymphoma in a Monocentric Cohort at the Grand Hôpital de Charleroi


Sponsor

Grand Hôpital de Charleroi

Enrollment

50 participants

Start Date

Jan 3, 2023

Study Type

OBSERVATIONAL

Conditions

Summary

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.


Eligibility

Min Age: 18 Years

Plain Language Summary

Simplified for easier understanding

This study is a prospective observational study following patients newly diagnosed with diffuse large B-cell lymphoma (DLBCL) — the most common type of aggressive blood cancer — to track how they respond to treatment and what factors influence their outcomes. No experimental treatment is involved; this study observes standard care. **You may be eligible if...** - You have been diagnosed with diffuse large B-cell lymphoma and are receiving treatment at the Grand Hôpital de Charleroi (Belgium) for the first time - You are 18 years or older - You can understand the information provided and are able to sign a consent form **You may NOT be eligible if...** - You are under 18 years old - You have previously been treated at this hospital for this condition Talk to your doctor to see if this trial is right for you.

This summary was AI-generated to explain the trial in plain language. It is not medical advice. Always discuss eligibility with your doctor before enrolling in a clinical trial.

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Interventions

OTHERAlgorithms 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


Locations(1)

Grand Hôpital de Charleroi

Charleroi, Hainaut, Belgium

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NCT06241729


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