Uncertainty quantification in the radiogenomics modeling of EGFR amplification in glioblastoma.

Journal: Scientific reports
Published Date:

Abstract

Radiogenomics uses machine-learning (ML) to directly connect the morphologic and physiological appearance of tumors on clinical imaging with underlying genomic features. Despite extensive growth in the area of radiogenomics across many cancers, and its potential role in advancing clinical decision making, no published studies have directly addressed uncertainty in these model predictions. We developed a radiogenomics ML model to quantify uncertainty using transductive Gaussian Processes (GP) and a unique dataset of 95 image-localized biopsies with spatially matched MRI from 25 untreated Glioblastoma (GBM) patients. The model generated predictions for regional EGFR amplification status (a common and important target in GBM) to resolve the intratumoral genetic heterogeneity across each individual tumor-a key factor for future personalized therapeutic paradigms. The model used probability distributions for each sample prediction to quantify uncertainty, and used transductive learning to reduce the overall uncertainty. We compared predictive accuracy and uncertainty of the transductive learning GP model against a standard GP model using leave-one-patient-out cross validation. Additionally, we used a separate dataset containing 24 image-localized biopsies from 7 high-grade glioma patients to validate the model. Predictive uncertainty informed the likelihood of achieving an accurate sample prediction. When stratifying predictions based on uncertainty, we observed substantially higher performance in the group cohort (75% accuracy, n = 95) and amongst sample predictions with the lowest uncertainty (83% accuracy, n = 72) compared to predictions with higher uncertainty (48% accuracy, n = 23), due largely to data interpolation (rather than extrapolation). On the separate validation set, our model achieved 78% accuracy amongst the sample predictions with lowest uncertainty. We present a novel approach to quantify radiogenomics uncertainty to enhance model performance and clinical interpretability. This should help integrate more reliable radiogenomics models for improved medical decision-making.

Authors

  • Leland S Hu
    Department of Radiology at Mayo Clinic Arizona, Phoenix, AZ 85054 USA.
  • Lujia Wang
    H. Hilton Stewart School of Industrial and Systems Engineering, Georgia Institute of Technology, GA USA.
  • Andrea Hawkins-Daarud
    Mathematical Neuro-Oncology Lab in the Department of Neurosurgery at Mayo Clinic Arizona, Phoenix, AZ 85054 USA.
  • Jennifer M Eschbacher
    Department of Pathology, Barrow Neurological Institute-St. Joseph's Hospital and Medical Center, Phoenix, AZ, 85013, USA.
  • Kyle W Singleton
    Mathematical NeuroOncology Lab, Precision Neurotherapeutics Innovation Program, Mayo Clinic Arizona, 5777 East Mayo Blvd, Support Services Building Suite 2-700, Phoenix, AZ, 85054, USA.
  • Pamela R Jackson
    Mathematical NeuroOncology Lab, Precision Neurotherapeutics Innovation Program, Mayo Clinic Arizona, 5777 East Mayo Blvd, Support Services Building Suite 2-700, Phoenix, AZ, 85054, USA.
  • Kamala Clark-Swanson
    Mathematical NeuroOncology Lab, Precision Neurotherapeutics Innovation Program, Mayo Clinic Arizona, 5777 East Mayo Blvd, Support Services Building Suite 2-700, Phoenix, AZ, 85054, USA.
  • Christopher P Sereduk
    Department of Neurosurgery, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Sen Peng
    Cancer and Cell Biology Division, Translational Genomics Research Institute, Phoenix, AZ, 85004, USA.
  • Panwen Wang
    Department of Quantitative Health Sciences, Center for Individualized Medicine, Mayo Clinic Arizona, Scottsdale, AZ, 85259, USA.
  • Junwen Wang
    Department of Health Sciences Research and Center for Individualized Medicine, Mayo Clinic, Scottsdale, Arizona, USAWang.Junwen@mayo.edu.
  • Leslie C Baxter
    Department of Neuropsychology, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Kris A Smith
    Department of Neurosurgery, Barrow Neurological Institute-St. Joseph's Hospital and Medical Center, Phoenix, AZ, 85013, USA.
  • Gina L Mazza
    Department of Quantitative Health Sciences, Mayo Clinic Arizona, Scottsdale, AZ, 85259, USA.
  • Ashley M Stokes
    Department of Imaging Research, Barrow Neurological Institute-St. Joseph's Hospital and Medical Center, Phoenix, AZ, 85013, USA.
  • Bernard R Bendok
    Department of Neurosurgery, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Richard S Zimmerman
    Department of Neurosurgery, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Chandan Krishna
    Department of Neurosurgery, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Alyx B Porter
    Department of Neuro-Oncology, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Maciej M Mrugala
    Department of Neuro-Oncology, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Joseph M Hoxworth
    Department of Radiology, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Teresa Wu
    ASU-Mayo Center for Innovative Imaging, Tempe, Arizona, United States of America.
  • Nhan L Tran
    Department of Neurosurgery, Mayo Clinic Arizona, 5777 E. Mayo Blvd, Phoenix, AZ, 85054, USA.
  • Kristin R Swanson
    Mathematical Neuro-Oncology Lab in the Department of Neurosurgery at Mayo Clinic Arizona, Phoenix, AZ 85054 USA.
  • Jing Li
    Department of Neurosurgery, Tianjin Medical University General Hospital, Tianjin, China.