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# Representation of High-Dimensional Cancer Cell Morphodynamics in 2-D Latent Space
[Paper - TBD](https://void)
TODO: Fill in figures
## Overview
### Figure 1
![Latent Representation Pipeline](figures/Figure1.png "Latent Representation Pipeline")
### Examples
#### Spheroid
![Spheroid Invasions](figures/Figure2.png "Spheroid Invasions")
#### Drug Treatments
![Drug Treatments](figures/DrugTreatments.png "CN03 & Y27632 Drug Treatment")
### Latent Dimensions
![Model Training per Dimension](figures/SI_model_training.png "Model Training")
## Usage
Example notebooks can be found in [notebooks/](notebooks/). Source code can be found in [code/](code/). Briefly, the [Tensorflow](https://www.tensorflow.org/) implementation is found in [code/sunlab/sunflow/](code/sunlab/sunflow) and the [PyTorch](https://pytorch.org/) implementation can be found in [code/sunlab/sunflow/](code/sunlab/suntorch). Environments used can be found in the source Yaml files ready to be used with [Anaconda](https://www.anaconda.com/) or related technology.
## Training
An example of training a standard autoencoder can be found in [notebooks/Autoencoder.ipynb](notebooks/Autoencoder.ipynb).
TODO: More implementations
## Pretrained Model Information
The MaxAbsScaler contains the scaling factors to transform the morphological features to the normalized features. The morphological features were derived from 1024x1024 pixel images on a confocal microscope (0.4NA, 10x objective) with a pixel to micron ratio of ??.
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