Artificial Intelligence-Guided Radiotherapy Planning for Glioblastoma
NCT ID: NCT06657027
Last Updated: 2024-10-24
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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NOT_YET_RECRUITING
40 participants
OBSERVATIONAL
2025-01-01
2027-06-30
Brief Summary
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Currently, radiotherapy treatment uses margins defined by population studies, without considering the individual characteristics of the patients. Although 80% of recurrences occur in peritumoral areas close to the surgical margins, treatment volumes are not customized owing to the lack of techniques that distinguish between edema and infiltrated tumor tissue.
Our recurrence probability maps address this limitation and could improve radiation planning. In this study, the volumes and doses of radiotherapy were adjusted according to the predictions of the model, with a focus on high-risk areas to optimize local control and reduce toxicity in healthy tissues.
Survival results will be compared between patients treated with personalized AI-guided radiotherapy and a historical cohort with standard treatment. In addition, the safety of the approach will be evaluated by adverse event analysis. Finally, an accessible online platform with the potential to transform glioblastoma treatment and improve patient survival will be developed to implement this predictive model.
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Detailed Description
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Conditions
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Study Design
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COHORT
PROSPECTIVE
Study Groups
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AI-Guided Radiotherapy Cohort
This cohort includes patients with newly diagnosed IDH wild-type glioblastoma, grade 4, according to the 2021 WHO classification of Central Nervous System Tumors. Patients in this group will undergo personalized radiotherapy guided by artificial intelligence (AI) and multiparametric MRI, using predictive models to adjust treatment volumes and doses according to areas of tumor infiltration. The AI model, developed from radiomic characteristics of postoperative MRI, predicts tumor recurrence and infiltration, enabling targeted dose escalation to high-risk areas while minimizing radiation exposure to healthy tissues.
No interventions assigned to this group
Eligibility Criteria
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Inclusion Criteria
* Ability to undergo MRI studies.
* Performance status with Karnofsky Performance Status (KPS) ≥ 60.
* Life expectancy ≥ 12 weeks.
* Laboratory results within the following ranges, obtained in the 14 days prior to enrollment:
* Leucocitos ≥ 3,000/µL.
* Absolute neutrophils ≥ 1,500/µL.
* Plaquetas ≥ 75,000/µL.
* Hemoglobin ≥ 9.0 g/dL (transfusion is allowed to reach the minimum level).
* Glutamic-oxaloacetic transaminase (SGOT) ≤ 2 times the upper limit of normal.
* Bilirubin ≤ 2 times the upper limit of normal.
* Creatinina ≤ 1.5 mg/dL.
* Women of childbearing age must present a negative pregnancy test ≤ 14 days prior to enrollment.
* Ability to understand and sign the informed consent.
* Willingness to refrain from other cytotoxic or noncytotoxic therapies against the tumor during the protocol.
Exclusion Criteria
* Significant medical illnesses that may compromise tolerance to treatment, at the discretion of the investigator.
* History of invasive cancer in the last 3 years, with few exceptions.
* Active infections or serious intercurrent illnesses.
* Previous treatments with cytotoxic, noncytotoxic, experimental agents, or cranial radiation therapy.
* Maximum radiation target volume (GTV3) greater than 65 cc.
15 Years
ALL
No
Sponsors
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Hospital del Rio Hortega
OTHER
Responsible Party
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Santiago Cepeda
Attending Neurosurgeon
Central Contacts
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Santiago Cepeda Principal Investigator, MD., PhD
Role: CONTACT
References
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Cepeda S, Luppino LT, Perez-Nunez A, Solheim O, Garcia-Garcia S, Velasco-Casares M, Karlberg A, Eikenes L, Sarabia R, Arrese I, Zamora T, Gonzalez P, Jimenez-Roldan L, Kuttner S. Predicting Regions of Local Recurrence in Glioblastomas Using Voxel-Based Radiomic Features of Multiparametric Postoperative MRI. Cancers (Basel). 2023 Mar 22;15(6):1894. doi: 10.3390/cancers15061894.
Other Identifiers
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PI-24-563-H
Identifier Type: -
Identifier Source: org_study_id
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