A deep learning-based feature detection tool for feature detection in Liquid Chromotography-Mass Spectrometry (LC-MS). Details available in Deep Learning Based MS2 Feature Detection for Data-Independent Shotgun Proteomics. The folder for Faster-RCNN framework is forked from here.
- python==3.8
- torch==1.11.0
- torchvision==0.12.0
- opencv-python==4.6.0.66
- jupyter==1.0.0
- numpy==1.22.4
- tqdm==4.64.0
- Put source .mzml files into the
data_prep/src
folder - Run
mzml_to_img.ipynb
jupyter notebook - Adjust the height and width parameters in the first two lines
generate_windows.ipynb
for the sizes of the sliding windows. The default of 240x270 has been applied as stated in the paper. - Run the first 4 cells of
generate_windows.ipynb
. You should expect the windows in the folder namedimg_(height)_(width)
. - Execute
predict.py
, changing line 11 to the folder generated from the last step.