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Trial Title:
Glioma Adaptive Radiotherapy With Development of an Artificial Intelligence Workflow
NCT ID:
NCT06492486
Condition:
Diffuse Glioma
Glioblastoma
Adaptive Radiotherapy
Artificial Intelligence
Conditions: Official terms:
Glioblastoma
Glioma
Study type:
Interventional
Study phase:
Phase 2
Overall status:
Not yet recruiting
Study design:
Allocation:
Non-Randomized
Intervention model:
Parallel Assignment
Intervention model description:
The proposed Phase II prospective study will be split into two strata: IDH-negative GBM
(stratum A) and IDH-mutant glioma (astrocytoma or oligodendroglioma) needing radiotherapy
(stratum B).
Primary purpose:
Treatment
Masking:
None (Open Label)
Intervention:
Intervention type:
Radiation
Intervention name:
Adaptive radiotherapy
Description:
Volumetric and biological adaptive radiotherapy will be delivered based on interval
imaging with MRI and PET scan during treatment.
Arm group label:
Stratum A (IDH-negative GBM)
Arm group label:
Stratum B (IDH-mutant astrocytoma or oligodendroglioma)
Summary:
Gliomas are common primary brain tumors in adults. Gliomas can be classified into
different types based on tumor grade, histopathological features, and molecular
characteristics. The common types of diffuse gliomas include glioblastoma, astrocytoma,
and oligodendroglioma. The standard treatment for diffuse gliomas includes surgery
followed by radiation and chemotherapy. As per standard institutional practice, a uniform
dose of radiation is delivered to the disease area and MRI is done before and after the
treatment. In this study, MRI and PET scan will be done before starting the treatment and
standard dose of radiation will be delivered. The interval imaging will be done twice
during the course of treatment with MRI and PET, followed by dose modifications. The CT,
MRI, and PET will be combined. Based on PET imaging, specific dose will be altered and
delivered to specific areas. Dose modification will be done with the help of artificial
intelligence. Participant's assessment will be done at regular intervals.
Modifications in radiation plans are done based on the changes in disease seen in scans
is likely to improve the accuracy of RT treatments. Dose modifications based on imaging
to resistant areas will help achieve better tumor control, reduce treatment-related
toxicities, precise delivery of the RT and adjusting doses to the organs at risk (OAR)
and changes in disease leading to better treatment compliance. Creating an artificial
intelligence framework in radiation oncology promises to improve quality of workflow,
treatment planning and RT delivery.
The aim of the study is to develop an artificial intelligence workflow for treatment of
glioma with adaptive radiotherapy. This study will be conducted in Tata Memorial Centre
on a population of 60 patients for a duration of 2 years. The total study duration is 4
years.
Detailed description:
Glioblastoma multiforme (GBM) represents grade 4 diffuse gliomas accounting for the most
common primary malignant central nervous system (CNS) tumors in adults . GBM is treated
with radiotherapy (RT) and concurrent chemotherapy following maximal safe resection, with
a median survival of approximately 15-18 months . GBM harbors significant intratumoral
heterogeneity with areas of multiclonal and hypoxic areas rendering higher chances of
disease relapse following standard RT .
Similarly, distinct compartments can be well appreciated on magnetic resonance imaging
(MRI): enhancing tumor core (TC) with central necrotic areas and the peritumoral region
(PTR), which consists of microscopic tumor infiltration and vasogenic edema . Similar to
regions of radioresistant areas within the TC, the microscopic disease in the PTR plays a
vital role in disease relapse . Other grade 2 and 3 diffuse gliomas include isocitrate
dehydrogenase (IDH) mutant astrocytoma and oligodendroglioma . In the recent World Health
Organization (WHO) classification of CNS tumors, molecular information is combined with
histopathological information for integrated classification. IDH-wildtype tumors are
further molecularly characterized and considered as GBM since the prognosis is shown to
be dismal. Oligodendrogliomas are confirmed based on the presence of deletion of 1p19q
chromosomal arms. Grade 2/3 diffuse gliomas are typically seen as tumors with T2-weighted
hyperintense tumors. The treatment is similar to GBM, with maximal safe resection
followed by radiation and concurrent and adjuvant chemotherapy.
Radiotherapy for Diffuse Gliomas Radiotherapy (RT) forms an integral role in the
multimodality management of diffuse gliomas . Radiation is indicated in low-grade gliomas
with high-risk features or high-grade gliomas following maximal safe resection . The
radiation (RT) in diffuse gliomas in GBM is delivered using conformal techniques to the
residual disease and cavity, called the gross tumor volume (GTV). The surrounding area is
included in the clinical target volume (CTV) to treat areas of microscopic disease. For
GBM, an expansion of 1.5 -2 cm is done from the GTV, which is identified as an enhancing
area on T1c sequences to include areas of PTR (T2w hyperintensity) and edited from
anatomical barriers like meninges and dural reflections . For IDH-mutant gliomas, the
residual tumor and cavity (identified as T2w hyperintensity region) are included as GTV
and further expansion of 5-10 mm is done to be included as CTV . The standard practice
involves delivering a uniform dose of radiation to the planning target volume (PTV),
which encompasses an isotropic margin expansion surrounding the CTV to account for set-up
uncertainties. In GBM and IDHmutant high-grade astrocytoma, the total dose of 59.4-60 Gy
is delivered over 6-7 weeks with 1.8-2 Gy per fraction. A relatively lower dose of
radiation, in the range of 54.0-59.4 Gy, is delivered over 6-7 weeks using 1.8-2 Gy per
fraction for oligodendrogliomas. As per the current paradigm, radiation is planned on
computed tomography (CT) for dose computation and MRI for visualization of target volumes
and organs at risk (OAR), done once before treatment, based on which fractionated
radiation is delivered over 6- 7 weeks. Recent evidence with MRI undertaken during the
course of treatment has demonstrated the changes in dynamics of the residual disease,
surgical cavity, and also the OARs in a proportion of patients, suggesting that treatment
is delivered based on imaging at a single time-point can lead to inaccuracies .Therefore,
adaptive radiotherapy (ART) to modify radiation plans based on the spatial changes of the
target volume and OAR is likely to improve the accuracy of RT treatments. Also, serial
imaging during treatment can be used to identify areas of tumor or PTR showing refractory
disease or vasogenic edema, with provisions for biological modifications of RT doses .
The use of conformal radiation techniques like intensity-modulated radiotherapy (IMRT),
volumetric modulated arc therapy (VMAT) can enable delivery of differential radiation
doses precisely to different areas of the target volume, known as dose painting .Positron
Emission Tomography (PET) Functional imaging with positron emission tomography (PET) has
attained wide popularity in oncology in disease staging, identifying hypoxic areas, and
guiding radiation planning . For gliomas, amino acid PET like O-(2-[18F] fluoroethyl)
-L-tyrosine (FET) or Fluorodopa (F-DOPA) has been proven effective with areas of a higher
tumor to white matter ratio, suggestive areas of active disease (19) . The use of PET
scans during treatment can help identify areas refractory to RT, reflected by higher
uptake of the radioisotope. Higher doses to such regions provide a window for biological
adaption and can potentially improve control rates. Similarly, quantitative analysis of
imaging (more popularly known as radiomics) can help differentiate areas of microscopic
tumor from vasogenic edema in the PTR, which otherwise appears similar to conventional
imaging . Artificial Intelligence The role of artificial intelligence in oncology is
increasingly recognized, ranging from optimization of healthcare resource utilization and
decision-making to quantitative image analysis for prognostication and the potential
ability to serve as a noninvasive biomarker . The practice of contemporary radiation
oncology heavily relies on the interaction of humans and machines in almost every
treatment planning process, including contouring of target volumes, OAR,
treatment-planning processes, and during treatment delivery. Creating an artificial
intelligence framework in radiation oncology promises to improve workflow efficiency and
accuracy and enable treatment planning and delivery rapidly and efficiently. The use of
adaptive radiotherapy will be further facilitated using machine learning algorithms with
appropriate identification of patients to be benefitted from volumetric or biological
adaptation, autosegmentation of target/OAR, automated treatment planning, and biological
modification based on spatial and temporal changes of quantitative imaging parameters.
Standard institutional practice The standard institutional practice includes a dose of
59.4 Gy in 33 fractions over 6.5 weeks for patients with glioblastoma and 55.8 Gy in 31
fractions over 6 weeks for patients with oligodendroglioma. Concurrent temozolomide is
used for all patients undergoing radiation at the dose of 75 mg/m 2 of body surface area
during the course of radiation with weekly monitoring on blood counts. All radiation
treatments are planned based on single time CT and MRI scan without any scheduled
interval scans during radiation, and no adaptation is done. Adjuvant chemotherapy with
temozolomide is started after 4 weeks of radiation completion at dose of 150 mg/m 2 for
five days and repeated on monthly basis and dose escalated to 200 mg/m 2 if tolerating
well and normal blood counts. As standard practice 6 and 12 cycles of temozolomide are
scheduled for GBM and IDH-mutant glioma (astrocytoma and oligodendroglioma) respectively.
After treatment completion clinical follow-up is scheduled every 3-6 months in the first
2 years and thereafter every 6-12 months for all the patients. Surveillance imaging is
scheduled every 6-12 months in the first 5 years and thereafter on annual basis or
interval imaging undertaken as prompted clinically.
Criteria for eligibility:
Criteria:
Inclusion Criteria:
- Histological diagnosis of diffuse glioma. Patients with IDH-negative GBM (stratum A)
and IDH-mutant glioma (astrocytoma or oligodendroglioma) need radiotherapy (stratum
B).
Age: 18-70 years. Karnofsky Performance Scale (KPS) ≥60
Exclusion Criteria:
- Multifocal or multicentric disease Not eligible for radical intent radiation. IDH
status is unknown or uninterpretable (IHC or gene sequencing). Use of prior
radiotherapy to the head-neck region or brain or chemotherapy.
Contraindication/unable to undergo MRI or PET scan during radiation.
Gender:
All
Minimum age:
18 Years
Maximum age:
70 Years
Healthy volunteers:
No
Start date:
August 1, 2024
Completion date:
July 30, 2028
Lead sponsor:
Agency:
Tata Memorial Centre
Agency class:
Other
Source:
Tata Memorial Centre
Record processing date:
ClinicalTrials.gov processed this data on November 12, 2024
Source: ClinicalTrials.gov page:
https://clinicaltrials.gov/ct2/show/NCT06492486