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R25 SECTION 6 - Natural Language Processing in Radiology

 
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Manage episode 198778374 series 1964439
Content provided by Yin Aphinyanaphongs. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Yin Aphinyanaphongs or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Papers discussed in this Section 6 Podcast:

  • H. Salehinejad, J. Barfett, S. Valaee, E. Colak, A. Mnatzakanian, and T. Dowdell. Interpretation of mammogram and chest radiograph reports using deep neural networks-preliminary results. arXiv preprint arXiv:1708.09254, 2017.
  • Hassanpour S, Langlotz CP. Predicting High Imaging Utilization Based on Initial Radiology Reports: A Feasibility Study of Machine Learning. Acad Radiol 2016; 23 (01) 84-89.
  • Pons E., Braun L.M.M., Hunink M.G.M. et al. (2016) Natural language processing in radiology: a systematic review. Radiology, 279, 329–343.
  • Trivedi, H., Mesterhazy, J., Laguna, B. et al. Automatic Determination of the Need for Intravenous Contrast in Musculoskeletal MRI Examinations Using IBM Watson’s Natural Language Processing Algorithm. J Digit Imaging (2017). https://doi.org/10.1007/s10278-017-0021-3

Podcast Contents

  • Why These Papers
  • NLP Review
    • Defining NLP
    • NLP Pipeline in Figure 1
    • Radlex
    • Evaluation Measures - F1
    • Types
      • Diagnostic Surveillance
      • Cohort Building
      • Query based case retrieval
      • Quality Assessment in radiologic practice
      • Communication of critical results
      • Clinical Support Services
    • Resources in Table 2
    • Operational Barriers
    • Future Research Needs
  • IV Contrast
    • Why Chosen?
    • Notes
      • Processing Time Discussion
      • Error analysis
      • Cloud Service
      • Passive Workflow integration.
  • Predicting High Imaging Utilization
    • Why Chosen?
    • Notes
      • SVM usage.
      • Document-Feature Matrix
      • Overfit
  • Interpretation of Mammograms
    • Why Chosen?
    • Notes
      • Bi-directional CNN
      • Passive Workflow Integration
      • Preprocessing
  • Why Deep Learning
  • Questions

  continue reading

6 episodes

Artwork
iconShare
 

Archived series ("Inactive feed" status)

When? This feed was archived on May 29, 2021 06:08 (3y ago). Last successful fetch was on November 02, 2019 01:26 (4+ y ago)

Why? Inactive feed status. Our servers were unable to retrieve a valid podcast feed for a sustained period.

What now? You might be able to find a more up-to-date version using the search function. This series will no longer be checked for updates. If you believe this to be in error, please check if the publisher's feed link below is valid and contact support to request the feed be restored or if you have any other concerns about this.

Manage episode 198778374 series 1964439
Content provided by Yin Aphinyanaphongs. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Yin Aphinyanaphongs or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Papers discussed in this Section 6 Podcast:

  • H. Salehinejad, J. Barfett, S. Valaee, E. Colak, A. Mnatzakanian, and T. Dowdell. Interpretation of mammogram and chest radiograph reports using deep neural networks-preliminary results. arXiv preprint arXiv:1708.09254, 2017.
  • Hassanpour S, Langlotz CP. Predicting High Imaging Utilization Based on Initial Radiology Reports: A Feasibility Study of Machine Learning. Acad Radiol 2016; 23 (01) 84-89.
  • Pons E., Braun L.M.M., Hunink M.G.M. et al. (2016) Natural language processing in radiology: a systematic review. Radiology, 279, 329–343.
  • Trivedi, H., Mesterhazy, J., Laguna, B. et al. Automatic Determination of the Need for Intravenous Contrast in Musculoskeletal MRI Examinations Using IBM Watson’s Natural Language Processing Algorithm. J Digit Imaging (2017). https://doi.org/10.1007/s10278-017-0021-3

Podcast Contents

  • Why These Papers
  • NLP Review
    • Defining NLP
    • NLP Pipeline in Figure 1
    • Radlex
    • Evaluation Measures - F1
    • Types
      • Diagnostic Surveillance
      • Cohort Building
      • Query based case retrieval
      • Quality Assessment in radiologic practice
      • Communication of critical results
      • Clinical Support Services
    • Resources in Table 2
    • Operational Barriers
    • Future Research Needs
  • IV Contrast
    • Why Chosen?
    • Notes
      • Processing Time Discussion
      • Error analysis
      • Cloud Service
      • Passive Workflow integration.
  • Predicting High Imaging Utilization
    • Why Chosen?
    • Notes
      • SVM usage.
      • Document-Feature Matrix
      • Overfit
  • Interpretation of Mammograms
    • Why Chosen?
    • Notes
      • Bi-directional CNN
      • Passive Workflow Integration
      • Preprocessing
  • Why Deep Learning
  • Questions

  continue reading

6 episodes

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