File:PGSPredictionPerformance VS sampleSize RabenLelloEtAl.svg
No file by this name exists.
✓
The source code of this SVG is valid.
Summary
Description |
PGS predictor performance increases with the dataset sample size available for training. Here illustrated for hypertension, hypothyroidism and type 2 diabetes. The x-axis labels number of cases (i.e. samples with the disease) present in the training data and uses a logarithmic scale. The entire range is from 1,000 cases up to over 100,000 cases. The numbers of controls (i.e. samples without the disease) in the training data were much larger than the numbers of cases. These particular predictors were trained using the LASSO algorithm. |
---|---|
Source |
adapted with permission from https://arxiv.org/abs/2101.05870 |
Date |
2021-01-14 |
Author |
Tim G. Raben, Louis Lello, Erik Widen and Stephen D.H. Hsu |
Permission (Reusing this file) |
CC BY 4.0 https://creativecommons.org/licenses/by/4.0/
|
Licensing
![]() ![]() | This work is licensed under the Creative Commons Attribution 4.0 License. |
File usage
The following page uses this file: