Mercurial > repos > goeckslab > squidpy_scatter
view squidpy_spatial.py @ 1:b84c324b58bd draft default tip
planemo upload for repository https://github.com/goeckslab/tools-mti/tree/main/tools/squidpy commit ed118f79326f83eff1315f735b4e0e1a45a5e02c
author | goeckslab |
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date | Thu, 31 Oct 2024 17:55:17 +0000 |
parents | 6fe0d4f464f4 |
children |
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import argparse import ast import json import warnings import pandas as pd import squidpy as sq from anndata import read_h5ad def main(inputs, anndata, output, output_plot): """ Parameter --------- inputs : str File path to galaxy tool parameter. anndata : str File path to anndata containing phenotyping info. output : str File path to output. output_plot: str or None File path to save the plotting image. """ warnings.simplefilter('ignore') with open(inputs, 'r') as param_handler: params = json.load(param_handler) adata = read_h5ad(anndata) if 'spatial' not in adata.obsm: try: adata.obsm['spatial'] = adata.obs[['X_centroid', 'Y_centroid']].values except Exception as e: print(e) tool = params['analyses']['selected_tool'] tool_func = getattr(sq.gr, tool) options = params['analyses']['options'] for k, v in options.items(): if not isinstance(v, str): continue if v in ('', 'none'): options[k] = None continue if k == 'genes': # for spatial_autocorr and sepal options[k] = [e.strip() for e in v.split(',')] elif k == 'radius': # for spatial_neighbors options[k] = ast.literal_eval(v) elif k == 'interactions': # for ligrec options[k] = pd.read_csv(v, sep="\t") elif k == 'max_neighs': options[k] = int(v) # for sepal cluster_key = params['analyses'].get('cluster_key') if cluster_key: tool_func(adata, cluster_key, **options) else: tool_func(adata, **options) if output_plot: plotting_options = params['analyses']['plotting_options'] for k, v in plotting_options.items(): if not isinstance(v, str): continue if v in ('', 'none'): plotting_options[k] = None continue if k == 'figsize': options[k] = ast.literal_eval(v) elif k in ('palette', 'score', 'source_groups', 'target_groups'): options[k] = [e.strip() for e in v.split(',')] elif k == 'means_range': # ligrec v = v.strip() if v[0] == '(': v = v[1:] if v[-1] == ')': v = v[:-1] options[k] = tuple([float(e.strip()) for e in v.split(',', 1)]) plotting_func = getattr(sq.pl, tool) if cluster_key: plotting_func(adata, cluster_key, save=output_plot, **plotting_options) else: # TODO Remove this, since all plottings need cluster key plotting_func(adata, save=output_plot, **plotting_options) adata.write(output) if __name__ == '__main__': aparser = argparse.ArgumentParser() aparser.add_argument("-i", "--inputs", dest="inputs", required=True) aparser.add_argument("-e", "--output", dest="output", required=True) aparser.add_argument("-a", "--anndata", dest="anndata", required=True) aparser.add_argument("-p", "--output_plot", dest="output_plot", required=False) args = aparser.parse_args() main(args.inputs, args.anndata, args.output, args.output_plot)