Diagnosing Progression in Glioblastoma-Tackling a Neuro-Oncology Problem Using Artificial-Intelligence-Derived Volumetric Change over Time on Magnetic Resonance Imaging to Examine Progression-Free Survival in Glioblastoma.
Mason J BelueStephanie A HarmonShreya ChappidiYing ZhugeErdal TasciSarisha JagasiaThomas JoyceKevin CamphausenBaris TurkbeyAndra Valentina KrauzePublished in: Diagnostics (Basel, Switzerland) (2024)
Glioblastoma (GBM) is the most aggressive and the most common primary brain tumor, defined by nearly uniform rapid progression despite the current standard of care involving maximal surgical resection followed by radiation therapy (RT) and temozolomide (TMZ) or concurrent chemoirradiation (CRT), with an overall survival (OS) of less than 30% at 2 years. The diagnosis of tumor progression in the clinic is based on clinical assessment and the interpretation of MRI of the brain using Response Assessment in Neuro-Oncology (RANO) criteria, which suffers from several limitations including a paucity of precise measures of progression. Given that imaging is the primary modality that generates the most quantitative data capable of capturing change over time in the standard of care for GBM, this renders it pivotal in optimizing and advancing response criteria, particularly given the lack of biomarkers in this space. In this study, we employed artificial intelligence (AI)-derived MRI volumetric parameters using the segmentation mask output of the nnU-Net to arrive at four classes (background, edema, non-contrast enhancing tumor (NET), and contrast-enhancing tumor (CET)) to determine if dynamic changes in AI volumes detected throughout therapy can be linked to PFS and clinical features. We identified associations between MR imaging AI-generated volumes and PFS independently of tumor location, MGMT methylation status, and the extent of resection while validating that CET and edema are the most linked to PFS with patient subpopulations separated by district rates of change throughout the disease. The current study provides valuable insights for risk stratification, future RT treatment planning, and treatment monitoring in neuro-oncology.
Keyphrases
- artificial intelligence
- big data
- deep learning
- contrast enhanced
- magnetic resonance imaging
- palliative care
- machine learning
- free survival
- radiation therapy
- magnetic resonance
- high resolution
- computed tomography
- primary care
- quality improvement
- poor prognosis
- stem cells
- gene expression
- squamous cell carcinoma
- convolutional neural network
- diffusion weighted imaging
- chronic pain
- multiple sclerosis
- pain management
- current status
- photodynamic therapy
- atrial fibrillation
- brain injury
- high intensity
- newly diagnosed
- left ventricular
- health insurance
- radiation induced
- long non coding rna
- subarachnoid hemorrhage
- bone marrow
- cerebral ischemia
- resting state
- smoking cessation