This package is a memory efficient implementation of cryoCARE.
This setup trains a denoising U-Net for tomographic reconstruction according to the Noise2Noise training paradigm. Therefore the user has to provide two tomograms of the same sample. The simplest way to achieve this is with direct-detector movie-frames.
You can use Warp to generate two reconstructed tomograms based on the even/odd frames. Alternatively, the movie-frames can be split in two halves (e.g. with MotionCor2 -SplitSum 1
or with IMOD alignframes -debug 10000
) from which two identical, up to random noise, tomograms can be reconstructed.
These two (even and odd) tomograms can be used as input to this cryoCARE implementation.
cyroCARE_train
produces a compressed and more portable model. This model can be copied and shared with others without relying on a certain folder structure.cryoCARE_predict
supports to predict multiple tomograms in one run. Streamlined configuration with respect to the changes ofcryoCARE_train
.- Streamlined installation instructions
- CUDA 11 support
- Minor changes/ fixed couple of bugs:
- Proper padding of tomograms to avoid black frames in the denoised tomograms
- Fix computation of validation cut off for small tomograms
- Fix
cryoCARE_predict
if no tiling happens
Note: We assume that you have miniconda installed.
First you need to create a conda environment.
conda create -n cryocare_11 python=3.8 cudatoolkit=11.0 cudnn=8.0 -c conda-forge
conda activate cryocare_11
pip install tensorflow==2.4
pip install cryoCARE
conda create -n cryocare -c conda-forge -c anaconda python=3 keras-gpu=2.3.1
conda activate cryocare
pip install cryoCARE
cryoCARE uses .json
configuration files and is run in three steps:
To prepare the training data we have to provide all tomograms on which we want to train.
Create an empty file called train_data_config.json
, copy-paste the following template and fill it in.
{
"even": [
"/path/to/even.rec"
],
"odd": [
"/path/to/odd.rec"
],
"patch_shape": [
72,
72,
72
],
"num_slices": 1200,
"split": 0.9,
"tilt_axis": "Y",
"n_normalization_samples": 500,
"path": "./"
}
"even"
: List of all even tomograms."odd"
: List of all odd tomograms. Note the order has to be the same as in"even"
."patch_shape"
: Size of the sub-volumes used for training. Should not be smaller than64, 64, 64
."num_slices"
: Number of sub-volumes extracted per tomograms."tilt_axis"
: Tilt-axis of the tomograms. We split the tomogram along this axis to extract train- and validation data separately."n_normalization_samples"
: Number of sub-volumes extracted per tomograms, which are used to computemean
andstandard deviation
for normalization."path"
: The training and validation data are saved here.
After installation of the package we have access to built in Python-scripts which we can call.
To run the training data preparation we run the following command:
cryoCARE_extract_train_data.py --conf train_data_config.json
Create an empty file called train_config.json
, copy-paste the following template and fill it in.
{
"train_data": "./",
"epochs": 100,
"steps_per_epoch": 200,
"batch_size": 16,
"unet_kern_size": 3,
"unet_n_depth": 3,
"unet_n_first": 16,
"learning_rate": 0.0004,
"model_name": "model_name",
"path": "./",
"gpu_id": 0
}
"train_data"
: Path to the directory containing the train- and validation data. This should be the same as the"path"
from above."epochs"
: Number of epochs used to train the network."steps_per_epoch"
: Number of gradient steps performed per epoch."batch_size"
: Used training batch size."unet_kern_size"
: Convolution kernel size of the U-Net. Has to be an odd number."unet_n_depth"
: Depth of the U-Net."unet_n_first"
: Number of initial feature channels."learning_rate"
: Learning rate of the model training."model_name"
: Name of the model."path"
: Output path for the model."gpu_id"
: This is optional. Provide the GPU ID(s) of the GPUs you wish to use.
To run the training we run the following command:
cryoCARE_train.py --conf train_config.json
You will find a .tar.gz
file in the directory you specified as path
. This your model an will be used in the next step.
Create an empty file called predict_config.json
, copy-paste the following template and fill it in.
{
"path": "path/to/your/model/model_name.tar.gz",
"even": "/path/to/even.rec",
"odd": "/path/to/odd.rec",
"n_tiles": [1,1,1],
"output": "denoised.rec",
"overwrite": False,
"gpu_id": 0
}
"path"
: Path to your model file."even"
: Path to directory with even tomograms or a specific even tomogram or a list of specific even tomograms."odd"
: Path to directory with odd tomograms or a specific odd tomogram or a list of specific odd tomograms in the same order as the even tomograms."n_tiles"
: Initial tiles per dimension. Gets increased if the tiles do not fit on the GPU."output"
: Path where the denoised tomograms will be written."overwrite"
: Allow previous files to be overwritten."gpu_id"
: This is optional. Provide the GPU ID(s) of the GPUs you wish to use.
To run the training we run the following command:
cryoCARE_predict.py --conf predict_config.json
@inproceedings{buchholz2019cryo,
title={Cryo-CARE: content-aware image restoration for cryo-transmission electron microscopy data},
author={Buchholz, Tim-Oliver and Jordan, Mareike and Pigino, Gaia and Jug, Florian},
booktitle={2019 IEEE 16th International Symposium on Biomedical Imaging (ISBI 2019)},
pages={502--506},
year={2019},
organization={IEEE}
}
@article{buchholz2019content,
title={Content-aware image restoration for electron microscopy.},
author={Buchholz, Tim-Oliver and Krull, Alexander and Shahidi, R{\'e}za and Pigino, Gaia and J{\'e}kely, G{\'a}sp{\'a}r and Jug, Florian},
journal={Methods in cell biology},
volume={152},
pages={277--289},
year={2019}
}