Easy, robust CFI bounds detection and contrast enhancement
Project description
👁️ Retinalysis fundus preprocessing
Fundus / CFI bounds extraction, cropping and contrast enhancement
📦 Installation
pip install retinalysis-fundusprep
Basic usage: running from the command line
We include a command line utility for running fundus preprocessing. The prep command handles both directory and CSV input formats:
fundusprep prep <input_path> [OPTIONS]
Where <input_path> can be either:
- 📁 A directory containing fundus images to process
- 📄 A CSV/TXT file with a 'path' column containing image file paths
If a CSV file is provided and it contains an 'id' column, those values will be used as image identifiers instead of automatically generating them from filenames.
⚙️ Options
--rgb_path PATH: Directory where processed RGB images will be saved--ce_path PATH: Directory where contrast-enhanced images will be saved--bounds_path PATH: Path to save a CSV file containing image bounds information--n_jobs INTEGER: Number of parallel processing workers (default: 4)
📝 Notes
- All output paths are optional - files will only be written when the corresponding path is provided
- Missing image files will be reported but won't stop the processing of other images
- The bounds CSV contains information about how images were cropped for standardization
- All output images are saved in PNG format with the same filename as the input image.
💡 Examples
Processing Folder with RGB Images
To process a folder of fundus images and save only the RGB versions along with the bounds information:
fundusprep prep ./original_images \
--rgb_path ./processed_rgb \
--bounds_path ./metadata/bounds.csv
Processing with Contrast Enhancement
To process images with both RGB and contrast enhancement:
fundusprep prep ./original_images \
--rgb_path ./processed_rgb \
--ce_path ./contrast_enhanced \
--bounds_path ./metadata/bounds.csv
Processing Images Listed in a CSV (No Custom IDs)
Example CSV:
path
/data/images/patient1.jpg
/data/images/patient2.jpg
/data/images/patient3.png
To process images listed in a CSV file:
fundusprep prep ./image_list.csv \
--rgb_path ./processed_rgb \
--ce_path ./contrast_enhanced \
--bounds_path ./metadata/bounds.csv
The outputs will use the same filenames as the input images. For example, the RGB output for /data/images/patient2.jpg will be ./preprocessed_rgb/patient2.png. Note that all outputs will be stored in a single folder, and therefore filenames should be unique. If filenames are not unique, use custom image IDs.
Using Custom Image IDs
The CSV file must include:
- A
pathcolumn with absolute or relative paths to the image files - an
idcolumn to specify custom identifiers for each image
Example CSV:
path,id
/data/images/patient1.jpg,P1_left
/data/images/patient2.jpg,P2_right
Processing is done in the same way:
fundusprep prep ./patient_images.csv \
--rgb_path ./processed_rgb \
--ce_path ./contrast_enhanced \
--bounds_path ./metadata/bounds.csv
The RGB output for /data/images/patient2.jpg will be ./preprocessed_rgb/P2_right.png.
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