Uploaded image for project: 'NLST Data Requests'
  1. NLST Data Requests
  2. NDR-182

NLST-604 Request for CT Images

XMLWordPrintable

      https://cdas.cancer.gov/approved-projects/2420/

      special ID list CT only

       

      Deep learning models to predict lung cancer malignancy

      Principal Investigator

      Name
      Yufeng Deng
      Degrees
      Ph.D
      Institution
      Infervision US Inc.
      Position Title
      President
      Email
      dyufeng@infervision.com

      About this Project

      Study
      NLST (Learn more about this study)
      Project ID
      NLST-604
      Title
      Deep learning models to predict lung cancer malignancy
      Summary
      Lung cancer screening by LDCT is a Medicare-covered procedure to eligible patients. However, it is a difficult task to characterize nodules detected from the screening exams.
      The National Lung Screening Trial (NLST) contains LDCT images for patients with lung cancers and with benign nodules. We plan to utilize deep learning, radiomics, and clinical data to create an accurate prediction model to estimate lung nodule malignancy from LDCT images.
      Aims
      We aim to divide the data into training, validation, and testing set. Each set will contain malignant and benign nodules. We plan to train and validate a deep learning model that combines image features, radiomic features, and clinical features to accurately characterize nodule malignancy. We are aiming for sensitivity and specificity over 90%.
      Collaborators
      NA

            tracyn T Nolan
            tracyn T Nolan
            Votes:
            0 Vote for this issue
            Watchers:
            0 Start watching this issue

              Created:
              Updated:
              Resolved: