ROC and AUC with (Sensitivity vs Specificity vs Accuracy)

Sdílet
Vložit
  • čas přidán 22. 01. 2024
  • ROC Receiver Operator Characteristics are used to measure properties of diagnostic tests by plotting the sensitivity vs one minus the specificity. A helpful summary of ROC studies is the Area Under the Curve (AUC). These are superior metrics to accuracy for diagnostic tests as the are less sensitive to the prevalence of the abnormalities in the population.
  • Věda a technologie

Komentáře • 6

  • @BadlndsBob
    @BadlndsBob Před 2 měsíci

    I don't do radiology, but this presentation is very helpful for some other subjects, i.e., other lab tests.

    • @HowRadiologyWorks
      @HowRadiologyWorks  Před 2 měsíci

      Great 👍, yeah you’re right this is general for any test procedure. Please share with others in your lab 😉

  • @anetter.gastelum7154
    @anetter.gastelum7154 Před 2 měsíci

    6:39 In which program can I make the graph of the decision parameters? Thank you very much for the video!!

    • @HowRadiologyWorks
      @HowRadiologyWorks  Před 2 měsíci

      This was written in python but any language that does plotting could be used like Matlab

  • @IllBeHonest1980
    @IllBeHonest1980 Před 6 dny

    if the disease is there and it predicts it is. Isn't that a True positive

    • @HowRadiologyWorks
      @HowRadiologyWorks  Před 5 dny

      Yes in my language that was True Abnormal and Observed Abnormal