15. Exploring Population Metadata
Exploring Population Metadata
ND320 C2 L2 16 Exploring Population Metadata Video
Summary
Some metadata may come from the DICOM headers, patient history, and image labels. Once we have all of a dataset's metadata stored in a single place, we'll then want to explore data features.
Histograms
Histograms help us look at distributions of single variables. Sometimes we only want to look at distributions within a single class of our data.
Scatterplots
Scatterplots are useful for assessing relationships between two variables.
Pearson Correlation Coefficient
Pearson Correlation Coefficient measures how two variables are linearly related. The value ranges from -1 to 1. A value of 1 or -1 means the two variables are perfectly linearly related. A value of 0 implies there is no linear relationship between the two variables.
Co-Occurrence Matrices
Co-Occurrence Matrices are useful for assessing how frequently different classifications co-occur together.