Cascade translates calcium imaging ΔF/F traces into spiking probabilities or discrete spikes.
Cascade is described in detail in the main paper. There is an additional paper which describes the application of Cascade to spinal cord data.
Cascade's toolbox consists of
- A large and continuously updated ground truth database spanning brain regions, calcium indicators, species
- A deep network that is trained to predict spike rates from calcium data
- Procedures to resample the training ground truth such that noise levels and frame rates of calcium recordings are matched
- A large set of pre-trained deep networks for various conditions
- Tools to quantify the out-of-dataset generalization for a given model and noise level
- A tool to transform inferred spike rates into discrete spikes
Get started quickly with the following two Colaboratory Notebooks:
Upload your calcium data, use Cascade to process the data, download the inferred spike rates.
Spike inference with Cascade improves the temporal resolution, denoises the recording and provides an absolute spike rate estimate.
No parameter tuning, no installation required.
You will get started within few minutes.
Spike inference from calcium data
2024-08-22 - New models pretrained with GCaMP8 ground truth are now available for Cascade. They are briefly described in this blog post with a coarse comparison of the model with previous Cascade models. A more detailed analysis of these models and their application to GCaMP8 data will follow in a few months!
2024-07-23 - A new preprint about Cascade, where it is applied to calcium imaging data from spinal cord. Cascade models pretrained on spinal cord ground truth are already available, and the ground truth with both excitatory and inhibitory spinal cord neurons is already part of this repository's ground truth database (datasets #40 and #41).
2024-06-26 - Peter Rupprecht presents a poster at the FENS conference in Vienna about ongoing work on spike inference with GCaMP8, and about spike inference in spinal cord in mice.
2024-06-02 - Models and ground truth datasets for GCaMP6s in spinal cord in mice (excitatory/inhibitory transgenic) are added (datasets #40 and #41), trained for imaging rates of 2.5, 3 and 30 Hz. Additional models for spinal cord datasets are trained upon request. A preprint on the datasets and models will be released within the next months.
2024-02-08 - Models and ground truth datasets for GCaMP7f and GCaMP8f/m/s will be added in a few months. See issue #43 for a preliminary discussion on GCaMP7f.
2021-12-01 - Spike times for dataset #1 were found to be misaligned (see issue #28). The corrected dataset was uploaded and replaced the previous dataset #1.
2021-12-01 - Some neurons in dataset #15 exhibited a systematic delay with calcium signals with respect to spike times. This delay was corrected based on inspection of spike-triggered averages. Dataset #15 was replaced with the corrected dataset.
2021-12-11 - Neuron #8 in dataset #20 was removed since calcium signals were found to be unrelated to simultaneously recorded spike patterns. Most likely, calcium imaging and electrophysiology were performed from two different neurons.
Explore the 27 ground truth data sets and browse through the 298 neurons.
Zoom into single events and observe calcium responses (or lack thereof) to single spikes.
Indicators: GCaMP6f, GCaMP6s, R-CaMP, jRCaMP, jRGECO, GCaMP5k, OGB-1, Cal-520.
Mouse pyramidal cells in visual and somatosensory cortices, interneurons, hippocampal principal cells; zebrafish forebrain and olfactory bulb.
Exploration of the ground truth database
Just click on the link or the images!
If you want to try out the algorithm, just open this online Colaboratory Notebook, as advertised above. With the Notebook, you can apply the algorithm to existing test datasets, or you can apply pre-trained models to your own data. No installation will be required since the entire algorithm runs in the cloud (Colaboratory Notebook hosted by Google servers; a Google account is required). The entire Notebook is designed to be easily accessible for researchers with little background in Python, but it is also the best starting point for experienced programmers. The Notebook includes a comprehensive FAQ section. Try it out - within a couple of minutes, you can start using the algorithm!
If you want to modify the code, if you want to integrate the algorithm into your existing pipeline (e.g., with CaImAn or Suite2P), or if you want to train your own networks, an installation on your local machine is necessary. Important: Although Cascade is based on deep networks, GPU-support is not necessary, it runs smoothly without (of course, GPUs speed up the processing). Therefore, the installation is much easier than for typical deep learning-based toolboxes that require GPU-based processing.
We recommend the following installation procedure, but many other options are possible as well:
-
Download / clone the repository to your local computer
-
Install the Python environment Anaconda with Python 3 (https://www.anaconda.com/distribution/)
-
Use the Anaconda prompt (Windows) or the console to navigate to the main folder where you downloaded Cascade
-
Create a new Anaconda environment with the required packages:
-
For a CPU installation (slower, recommended if you will not train a network):
conda create -n Cascade python=3.7 tensorflow==2.3 keras==2.3.1 h5py numpy scipy matplotlib seaborn ruamel.yaml spyder
. -
For a GPU installation (faster, recommended if you will train networks):
conda create -n Cascade python=3.7 tensorflow-gpu==2.4.1 keras h5py numpy scipy matplotlib seaborn ruamel.yaml spyder
(Linux)conda create -n Cascade python=3.7 tensorflow-gpu==2.3.0 keras h5py numpy scipy matplotlib seaborn ruamel.yaml spyder
(Windows)
Conda environments with Python 3.8 seem to work equally well. Earlier versions of Cascade (pre-2022) were based on Tensorflow 2.1. Installations with Tensorflow 2.1 can still work, but are deprecated, since there might arise problems when using newer pretrained models.
-
-
Activate the new environment using
conda activate Cascade
in Ubuntu andactivate Cascade
on Windows -
Use your editor of choice (e.g., Spyder or PyCharm) to get started with the demo files: type
spyder
in the console after activating the environment.
If you want to use the Jupyter demo Notebooks, you have to install ipython viapip install ipython ipykernel
and make it visible in the new environment viapython -m ipykernel install --user --name Cascade
. Then start the Jupyter notebook in the browser from the activated environment viajupyter notebook
, and do not forget to select the environment in the menu (Kernel -> Change Kernel -> Cascade). If you encounter problems, the internet is your friend (for example, here) -
Now you're ready to process your data on your local computer!
If you have an existing Python environment, you can also try simply installing the missing dependencies. Optionally, a Docker file together with instructions can be found in the etc
folder of the repository. If you are interested in training models from scratch and speed up processing in general, you should use a dedicated GPU and install a GPU-based version of the deep learning framework (for the extensive analyses in the paper, we used a GeForce RTX 2080 Ti). This procedure can be challenging for beginners. You will find instructions for that via Google search, but a good starting point is the tutorial provided by DeepLabCut.
For macOS, we provide instructions on how to run Cascade with the old (Intel) chips:
On macOS there is an issue with the Tensorflow build provided by Conda (see https://stackoverflow.com/questions/53014306/error-15-initializing-libiomp5-dylib-but-found-libiomp5-dylib-already-initial ). There are several workarounds, but it seems to be most reliable to install Tensorflow and Keras using pip
. To do so, download/clone the Github repository to your local computer, navigate to the main folder of the repository, and follow these steps:
- Create a new Anaconda environment with required base packages:
conda env create -f etc/environment_mac.yml
- Activate the environment:
conda activate Cascade
- Install Tensorflow / Keras:
pip install -r etc/requirements_mac.txt
- If you want to use the Jupyter demo Notebooks, make the new environment visible in Jupyter:
ipython kernel install --user --name=Cascade
This recipe has been tested on macOS 10.15 (Catalina).
For more recent Macbook versions, the Apple Silicon chip makes it challenging to install the packages recommended for Cascade. There is a related issue on this topic. We provide instructions to install Cacade with Rosetta that is compatible Apple Silicon chips: [https://github.com/HelmchenLabSoftware/Cascade/blob/master/etc/Instructions_Mac2024.md](Link to instructions).
The average user will only use pretrained models to produce predictions for his/her own data, and the Colaboratory Notebook should in most cases be sufficient. The description of the complete work flow (below) is not necessary but helpful to understand what the algorithm does.
Train a model with ground truth (optional)
This section can be reproduced with the Demo_train.py
file.
The user specifies the properties of the model: the sampling rate of the calcium imaging data, the ground truth datasets used for training, the range of noise levels, the smoothing of the ground truth and whether a causal kernel is used. For an explanation what the last two adjustments mean, please read the FAQ below.
Then, a folder is created, where the configuration parameters of the model and the trained deep networks are stored.
Finally, the real training procedure is started with cascade.train_model( model_name )
. For each noise level, the algorithm resamples the indicated ground truth datasets such that the resampled ground truth matches the target noise level and imaging rate. The resampled ground truth is then used to train the deep network, and the trained network is saved to disk. For each noise level, several models are trained to create more robust predictions (ensemble approach).
Make predictions with your data
This section can be reproduced with the Demo_predict.py
file.
First, a function is defined that loads the calcium traces. In the default configuration, the input data should be a matrix (number of neurons x time points) that has been saved as a *.-mat-file in Matlab or as a *.npy-file in Python. Usually, we name the variable dF_traces
. However, we also give instructions on how to easily adapt the function to your requirements.
Next, the user indicates the path of the file that should be processed and the frame rate. We recommend to plot example traces to see whether everything went well.
Now, the user indicates the model of the (already trained) model and performs the spike inference with the command spike_prob = cascade.predict( model_name, traces )
. The input (traces
) is processed by the model (model_name
) to produce the spiking probabilities as output (spike_prob
). The spiking probabilities are given at the same sampling rate as the input calcium recording.
Finally, the predictions are saved to disk.
Convert to discrete spikes (optional)
This section can be reproduced with the Demo_discrete_spikes.py
file.
In this section, the output from the previous step (spike_prob
) is loaded from disk. Single spikes are fitted into the smooth probabilities such that the most likely spike sequence is recovered. For optimal fitting, the parameters of the model used for spike predictions has to be loaded as well (model_name
). The result of the procedure are spike times. They are given with the same temporal precision as the sampling rate of the calcium recording.
We do not recommend discrete spike predictions except for outstanding high-quality recordings and refer to the FAQ and the paper (link, Fig. S7 and Supplementary Note 3) for a discussion.
Quantify expected performance of the model (optional)
This section can be reproduced with the Demo_benchmark_model.py
file.
To understand how good predictions are, it is important to quantify the performance of a given trained model. As discussed in depth in the paper, this is best measured by quantifying the performance when training the deep network on all except one ground truth dataset and test it on the held-out dataset.
To do this systematically, a lot of training and testing needs to performed, and we do not recommend this procedure for CPU-only installations.
The input of this step is the model (model_name
), while the output is a set of metrics (correlation, error, bias; see the paper for discussion and details) that quantify the expected performance of the algorithm when applied to unseen datasets.
If you want to understand how the code works, you will be surprised how simple the code is.
All main functions are described in the cascade2p/cascade.py
file, including the functions cascade.train()
and cascade.predict()
.
Some helper functions to load the ground truth data for training (which is a bit more challenging due to the initial diversity of ground truth datasets) and to plot results are contained in the cascade2p/utils.py
file. In addition, this file also contains the definition of the deep network define_model()
, which is only a few lines. If you want to use a different architecture for training (see Fig. S8 in the paper, it is very simple to modify or replace.
Functions used to convert spiking probabilities into discrete spikes can be found in the file cascade/utils_discrete_spikes.py
.
The cascade/config.py
contains the default model parameters. Fig. S4 in the paper shows that changing those parameters does not greatly affect the prediction quality, such that the user does not need to change any of the hyper-parameters.
The folder Ground_truth
contains all ground truth datasets. The folder also contains a Matlab script and a Python script which can be used to explore the ground truth data. Highly recommended, it's very interesting!
The folder Example_datasets
contains population calcium imaging datasets that can be used to test the algorithm if no own data are available.
The folder Pretrained_models
contains pre-trained models.
Any more questions? Probably you will find the answer below!
The output spike_prob is the expected number of spikes in this time bin, at the same resolution as the original calcium recording. This metric is also called spike probability for brevity in the paper and elsewhere. If you sum over the trace in time, you will get the estimated number of spikes. If you multiply the trace with the frame rate, you will get an estimate of the instantaneous spike rate. Spike probability and spike rates can therefore be converted by multiplication with the frame rate.
Yes. As described above ("What does the output of the algorithm mean?"), the output of the algorithm is strictly speaking not a probability and therefore not restricted to values between 0 and 1. A value >1 indicates that the estimated number of spikes in the time bin is larger than 1.
This depends on your frame rate (Hz) and on the smoothing (standard deviation, milliseconds) of your model. Use the following script to compute the spike probability shape for given parameters.
Smoothing is the standard deviation of the Gaussian used to smooth the ground truth spike rate before it is used for training. In the file name of a pretrained model, the smoothing parameter is indicated. Read below for more details.
from scipy.ndimage.filters import gaussian_filter
import numpy as np
sampling_rate = 30
smoothing = 50
single_spike = np.zeros(1001,)
single_spike[501] = 1
single_spike_smoothed = gaussian_filter(single_spike.astype(float), sigma=smoothing/1e3*sampling_rate)
gaussian_amplitude = np.round(np.max(single_spike_smoothed)*1000)/1000
gaussian_width = np.round(2*np.sqrt(2*np.log(2))*smoothing/1e3*100)/100
This depends mainly on the shot noise level of your dataset. If you want to compute how well the chosen model generalizes to unseen data for a given noise level, check out the Github repository and use the demo script which computes the performance of a given model.
To get a good idea about the quality of predictions to unseen data, check out Figure 3 and the associated discussion in the paper.
Yes. We have tested the global models with the new GCaMP8 datasets (available via the GCaMP8 paper). The standard pretrained models were in general good; the only caveat is that predictions were shifted in time - due to the fast rise time of GCaMP8, inferred spike rates occur earlier than true spike rates. We are currently (March 2024) in the process of making more in-depth analysis of spike inference with GCaMP8 data with systematic validation and benchmarking.
Good question! We think that providing spike times instead of spike rates or spiking probabilities is misleading, since it suggests a false precision and certainty of the spiking estimates. In addition, we found (Fig. S7 in the paper) that single-spike precision could not achieved with any of the ground truth datasets.
However, for some cases, discrete spikes still might be a good approach. We provide a Python function that converts the spiking probability into the most likely underlying discrete spikes (demo on Github).
The deep network uses a window that looks at the calcium trace around the current time point to better understand the context of the current time point. For the first and last points in time, the network is unable to look into the environment and therefore gives back NaNs. If the window size of the network is 64 datapoints (which is the default), the first and last 32 time points will be NaNs.
No! Check out issue #53.
For an illustration of different noise levels, check out Extended Data Fig. 3 in the paper. To give an example, the Allen Brain Observatory Visual Coding dataset is of very high imaging quality, with noise levels around 1, which is very good (unit:
). A noise level of 3-4 is still decent, especially for population imaging with many neurons. Noise levels above 5 indicates rather poor signal levels. For a definition of the noise level, check out the Methods of the preprint. However, even for excellent shot noise levels, the recording quality can be bad due to bad imaging resolution, neuropil contamination and, most importantly, movement artifacts. See Extended Data Fig. 5 in the paper and the associated text as well as the Discussion for more details.
Each model is trained on a resampled ground truth dataset, as described in the preprint. The training dataset is resampled at the desired frame rate and at multiple noise levels. The model automatically chooses the model with matching noise-levels for each neuron. You only have to select the correct frame rate (which is indicated in the model name).
If you do not have a specific ground truth for your dataset, it is typically best (see Fig. 3 and the associated discussion in the paper) to use a model that has been trained on all available datasets (called 'Global EXC Model').
There are two additional model specifications that you can choose, "causal" kernels and "smoothing". The choice of these specifications does not make a model better or worse, but better or less well suited for your needs. See the following two questions!
"Global EXC" indicates that the model has been trained on a diverse set of ground truth datasets from excitatory neurons. It should work very well on unseen data from excitatory neurons without any retraining (as described in Fig. 3 in the paper).
The datasets used to train the "Global EXC model" include diverse indicators (GCaMP6f, GCaMP6s, OGB-1, GCaMP5k, Cal-520, R-CaMP1.07 and jRCaMP) and diverse brain regions (visual cortex, somatosensory cortex, hippocampus, several areas in the zebrafish forebrain and olfactory bulb). The olfactory bulb dataset also includes some inhibitory neurons, which were included in the training dataset because their spike-to-calcium relationship is similar to the excitatory datasets. Interneuron datasets (datasets #22-#26) were not included in the training dataset because their inclusion would compromise the overall performance of the global model for excitatory neurons.
The ground truth which has been used to train the model has been slightly smoothed with a Gaussian kernel. This is a processing step which helps the deep network to learn quicker and more reliably. However, this also means that the predictions will be smoothed in a similar fashion. How to choose these parameters optimally?
From our experience, at a frame rate of 7.5 Hz, a smoothing kernel with standard deviation of 200 ms is appropriate; for nicely visible transients, also a value of 100 or 50 ms can be tried out, and we have had cases where this was the most satisfying choice of parameters. At 30 Hz, a smoothing kernel of 50 ms works well, but a smoothing kernel of 25 ms could be tried as well if the data quality is good and if one wants to avoid temporally smooth predictions. If the calcium imaging quality is not ideal, it can make sense to increase the smoothing kernel standard deviation. In the end, it is always a trade-off between reliability and optimal learning (more smoothing) and temporal precision (less smoothing of the ground truth). The impact of temporal smoothing on the quality of the inference is discussed in Extended Data Fig. 9 in the paper.
However, if you use our suggested default specifications, you should be good!
By default, the ground truth is smoothed symmetrically in time. This means, also the predicted spike probabilities are symetrically distributed in time around the true time point. In some cases, this can be a problem because this predicts non-zero neuronal spiking probability before the calcium event had even started. Especially when you want to analyze stimulus-triggered activity patterns, this is an important issue and a common problem for all deconvolution algorithms.
However, if the ground truth is smoothed not with a symmetric Gaussian but with a smooth causal kernel, this limitation can be circumvented (discussed in detail in Fig. S12 in the paper), and spiking activity is almost exclusively assigned to time points after the calcium event started. It must be noted that this reliable causal re-assignment of activity works well for high-quality datasets, but in case of higher noise levels, any deconvolution algorithm will assign activity to non-causal time points. Good to keep in mind when you interpret your results!
First of all, is this really true? For example, if you have recorded at 30.5 Hz, you can also use a model trained at 30 Hz imaging rates. A deviation by less than 5% of the imaging rate is totally okay in our experience!
If however you want to use an entirely different model, for example a model trained at a sampling rate of 2 Hz, or a model only trained with a specific ground truth dataset, you have two options. 1) You go to the Github page and follow the instructions on how to train you own model. This can be done even without GPU-support, but it will take some time (on the other hand, you only have to do this once). 2) You contact us via e-Mail and tell us what kind of model you would like to have. We will train it for you and upload it to our repository. Not only you, but everybody will then be able to use it further on.
You have two options.
Either you process the data yourself. You can inspect the ground truth datasets, which consist of Matlab structs saved as a file for each neuron from the ground truth. If you process your ground truth recordings into the same format, you can use it as a training set and train the model yourself. All instructions are indicated at the Github repository.
Or you can contact us, and we help to process your dataset if it meets certain quality standards. We can process raw calcium and ephys recordings, but of course extracted dF/F traces and spike times would be even better. Yes, we will do the work for you. But only under the condition that the processed dataset will then be integrated into the published set of ground truth datasets, where it is openly accessible to everybody. Please get in touch with us to discuss options on how to get credit for the recording of the dataset, which we will discuss case by case.
As mentioned, you can process the ground truth dataset yourself. However, we will only help you with the dataset is made public afterwards.
Can I use the algorithm also locally, e.g., within CaImAn, or in my own pipeline?
Sure! We have done this ourselves with CaImAn and our custom analysis pipelines. Your starting point to do this will not be the Colaboratory Notebook, but rather the Github repository. Check out the demo scripts. They are very easy to understand and will show you which functions you have to use and how. If you have successfully used the Colaboratory Notebook, understanding the demo scripts will be a piece of cake.
One of the key features of Cascade is that it infers absolute spike rates. To achieve this, it is necessary that dF/F values extracted from neuronal ROIs are approximately correct. For endoscopic 1p calcium imaging data, the background fluorescence is often extremely high, and complex methods for subtraction of global or local background activity are used (e.g., by CNMF-E). As also discussed in the CNMF-E paper, extraced traces therefore cannot be properly transformed into dF/F values in cases of high background. Quantitative deconvolution cannot be applied in such cases (be it with Cascade or another algorithm), but qualitative deconvolution of the timecourse is still possible with Cascade (recommended units are then "arbitrary units" instead of "estimated spike rate [Hz]").
We actually recommend this to anybody who is doing calcium imaging at cellular resolution. Looking at the ground truth data of simultaneous calcium and juxtacellular recording is very enlightening. In the Github repository, we have deposited an interactive tool to conveniently visualize all ground truth datasets. It is available as a Colaboratory Notebook.
Please cite the paper as a reference for Cascade:
Rupprecht P, Carta S, Hoffmann A, Echizen M, Blot A, Kwan AC, Dan Y, Hofer SB, Kitamura K, Helmchen F*, Friedrich RW*, A database and deep learning toolbox for noise-optimized, generalized spike inference from calcium imaging, Nature Neuroscience (2021).
(* = co-senior authors)
If you use the respective ground truth datasets directly, please also refer to the original papers and the associated dataset:
Rupprecht P, Carta S, Hoffmann A, Echizen M, Blot A, AC Kwan, Dan Y, Hofer SB, Kitamura K, Helmchen F*, Friedrich RW*, A database and deep learning toolbox for noise-optimized, generalized spike inference from calcium imaging, Nature Neuroscience (2021), for datasets #3-8, #19 and #27.
Schoenfeld G, Carta S, Rupprecht P, Ayaz A, Helmchen F, In vivo calcium imaging of CA3 pyramidal neuron populations in adult mouse hippocampus, eNeuro (2021), for dataset #18.
Chen TW, Wardill TJ, Sun Y, Pulver SR, Renninger SL, Baohan A, Schreiter ER, Kerr RA, Orger MB, Jayaraman V, Looger LL. Ultrasensitive fluorescent proteins for imaging neuronal activity, Nature (2013), for datasets #9 and #14.
Huang L, Ledochowitsch P, Knoblich U, Lecoq J, Murphy GJ, Reid RC, de Vries SE, Koch C, Zeng H., Buice MA, Waters J, Lu Li, Relationship between simultaneously recorded spiking activity and fluorescence signal in GCaMP6 transgenic mice, eLife (2021), for datasets #10, #11, #12 and #13.
Berens P, et al. Community-based benchmarking improves spike rate inference from two-photon calcium imaging data, PLoS Comp Biol (2018), for datasets #1, #15, #16.
Akerboom J, Chen TW, Wardill TJ, Tian L, Marvin JS, Mutlu S, Calderón NC, Esposti F, Borghuis BG, Sun XR, Gordus A. Optimization of a GCaMP calcium indicator for neural activity imaging, J Neuroscience (2012), for dataset #17.
Bethge P, Carta S, Lorenzo DA, Egolf L, Goniotaki D, Madisen L, Voigt FF, Chen JL, Schneider B, Ohkura M, Nakai J. An R-CaMP1.07 reporter mouse for cell-type-specific expression of a sensitive red fluorescent calcium indicator, PloS ONE (2017), for dataset #19.
Tada M, Takeuchi A, Hashizume M, Kitamura K, Kano M. A highly sensitive fluorescent indicator dye for calcium imaging of neural activity in vitro and in vivo, EJN (2014), for dataset #3.
Dana H, Mohar B, Sun Y, Narayan S, Gordus A, Hasseman JP, Tsegaye G, Holt GT, Hu A, Walpita D, Patel R. Sensitive red protein calcium indicators for imaging neural activity, Elife (2016), for datasets #20 and #21.
Khan AG, Poort J, Chadwick A, Blot A, Sahani M, Mrsic-Flogel TD, Hofer SB. Distinct learning-induced changes in stimulus selectivity and interactions of GABAergic interneuron classes in visual cortex, Nature Neuroscience (2018), for datasets #24-26.
Kwan AC, Dan Y. Dissection of cortical microcircuits by single-neuron stimulation in vivo, Current Biology (2012), for datasets #2 and #22-23.