100 Participants Needed

Machine Learning for Glioblastoma

Recruiting at 1 trial location
DM
Eric Leuthardt, M.D. profile photo
Overseen ByEric Leuthardt, M.D.
Age: 18+
Sex: Any
Trial Phase: Academic
Sponsor: Washington University School of Medicine
No Placebo GroupAll trial participants will receive the active study treatment (no placebo)

What You Need to Know Before You Apply

What is the purpose of this trial?

This trial explores a new method for planning brain surgery in individuals with glioblastoma. A computer program analyzes brain scans to predict the tumor's response to treatment. Participants will undergo a special type of MRI before surgery, and the results will guide doctors in determining the best approach for tumor removal. This trial may suit those diagnosed with a brain lesion resembling glioblastoma who are already planning an MRI before surgery. As a Phase 2 trial, the research measures the treatment's effectiveness in an initial, smaller group, allowing participants to contribute to significant advancements in glioblastoma treatment.

Do I need to stop my current medications for the trial?

The trial information does not specify whether you need to stop taking your current medications. It's best to discuss this with the trial coordinators or your doctor.

What prior data suggests that this computer algorithm is safe for analyzing brain scans?

Research has shown that using a computer program called Support Vector Machine (SVM) with resting-state MRI (rsfMRI) remains safe. Previous studies used this method to predict outcomes in brain conditions without reporting major safety issues. The SVM program analyzes brain scans to help doctors understand how a tumor might respond to treatment. This technique focuses on data analysis and does not involve drugs or invasive procedures, typically resulting in fewer side effects. No significant negative effects have been linked to this method so far.12345

Why are researchers excited about this trial?

Researchers are excited about this trial because it explores a novel way to navigate brain surgery using resting-state MRI combined with machine learning. Unlike traditional methods, which rely heavily on the surgeon's experience and standard imaging, this approach leverages the Support Vector Machine algorithm to analyze MRI data, potentially offering more precise surgical planning. This could lead to better outcomes by helping surgeons remove tumors more effectively while preserving healthy brain tissue.

What evidence suggests that the Support Vector Machine algorithm is effective for analyzing brain scans before surgery?

Research has shown that using a computer program with brain scans can help predict how brain tumors will respond to treatment. In this trial, the Support Vector Machine algorithm will analyze pre-surgical MRI scans to predict patient outcomes. Studies have found that this method can group patients based on survival chances, aiding doctors in selecting optimal treatments. By combining advanced brain imaging with computer analysis, doctors can predict outcomes and identify key factors affecting them. This approach may enhance surgical planning accuracy by identifying critical brain areas in real-time. Overall, early findings suggest that this method could improve surgical results for brain tumor patients.678910

Who Is on the Research Team?

DM

Dimitrios Mathios, M.D.

Principal Investigator

Washington University School of Medicine

Are You a Good Fit for This Trial?

Inclusion Criteria

Must be a new radiological diagnose of a lesion in the brain with characteristics consistent with glioblastoma multiforme. Diagnostic scan must have occurred no more than 1 month prior to enrollment.
Must be planning to undergo a clinical MRI.
Must be able to understand and willing to sign an IRB approved written informed consent document.

Timeline for a Trial Participant

Screening

Participants are screened for eligibility to participate in the trial

2-4 weeks

Pre-surgical MRI

Clinical pre-surgical MRI will be done using a standard pre-surgical tumor protocol. Resting-state functional MRI (rsfMRI) will be acquired and analyzed using the Support Vector Machine (SVM) algorithm.

1 week

Post-operative MRI

Patients will undergo post-operative MRI at approximately 8-12 weeks following surgical resection to evaluate extent of resection.

8-12 weeks

Follow-up

Patients will undergo subsequent MRI imaging every 2-3 months as part of routine clinical care to monitor for recurrence. Imaging features at recurrence will be recorded.

2 years

What Are the Treatments Tested in This Trial?

Interventions

  • Support Vector Machine
How Is the Trial Designed?
1Treatment groups
Experimental Treatment
Group I: Standard of care rsfMRI using the Support Vector Machine algorithmExperimental Treatment1 Intervention

Find a Clinic Near You

Who Is Running the Clinical Trial?

Washington University School of Medicine

Lead Sponsor

Trials
2,027
Recruited
2,353,000+

National Cancer Institute (NCI)

Collaborator

Trials
14,080
Recruited
41,180,000+

Citations

Machine Learning Analytics of Resting-State Functional ...In this study we determined the feasibility of resting-state functional connectivity (rsFC) to classify GBM patients into short-term and long-term survival ...
Predicting primary outcomes of brain tumor patients with ...This study showed that advanced neuroimaging data with machine learning methods can potentially predict patient outcomes and reveal influential factors driving ...
Machine learning of whole-brain resting-state fMRI signatures ...The 5-year relative survival rate after the diagnosis of brain tumors was 35.8%, of which the most aggressive polymorphinoblastoma had the ...
Machine Learning Analytics of Resting-State Functional ...In this study we determined the feasibility of resting-state functional connectivity (rsFC) to classify GBM patients into short-term and long- ...
Human Brain Mapping | Neuroimaging JournalThis study demonstrates the potential of real-time high-speed rsfMRI for presurgical mapping of eloquent cortex with real-time data quality ...
Machine learning of whole-brain resting-state fMRI signatures ...Resting state fMRI feature-based cerebral glioma grading by support vector machine. Int J Comput Assist Radiol Surg. 2015;10:1167–74 ...
rs-fMRI and machine learning for ASD diagnosisUsing Machine Learning classifiers based on resting-state fMRI (rs-fMRI) data is promising, but there is an ongoing need for further research on their accuracy ...
Predicting treatment outcome based on resting-state ...Our meta-analysis indicated that treatment outcome can be predicted based on resting-state functional connectivity, with a mean estimated balanced accuracy of ...
a resting-state fMRI and machine learning study inThis study revealed alterations in rs-fMRI metrics in TN patients compared to those in controls and is the first to show differences between CTN and ITN.
A Preliminary Machine Learning StudyThis study aimed at exploring potential preoperative brain biomarkers that can be used to diagnose and predict neurological recovery in CSM patients.
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