Projects/laydi
Projects
/
laydi
Archived
7
0
Fork 0
This repository has been archived on 2024-07-04. You can view files and clone it, but cannot push or open issues or pull requests.
laydi/scripts/lpls/plots_lpls.py

88 lines
2.9 KiB
Python

import pylab
import matplotlib
import networkx as nx
import scipy
def plot_corrloads(R, pc1=0,pc2=1,s=20, c='b', zorder=5,expvar=None,ax=None,drawback=True, labels=None):
""" Correlation loading plot."""
# background
if ax==None or drawback==True:
radius = 1
center = (0,0)
c100 = matplotlib.patches.Circle(center,radius=radius,
facecolor='gray',
alpha=.1,
zorder=1)
c50 = matplotlib.patches.Circle(center, radius=radius/2.0,
facecolor='gray',
alpha=.1,
zorder=2)
ax = pylab.gca()
ax.add_patch(c100)
ax.add_patch(c50)
ax.axhline(lw=1.5,color='k')
ax.axvline(lw=1.5,color='k')
# corrloads
ax.scatter(R[:,pc1], R[:,pc2], s=s, c=c,zorder=zorder)
ax.set_xlim([-1,1])
ax.set_ylim([-1,1])
if expvar!=None:
xstring = "Comp: %d expl.var: %.1f " %(pc1+1, expvar[pc1])
pylab.xlabel(xstring)
ystring = "Comp: %d expl.var.: %.1f " %(pc2+1, expvar[pc2])
pylab.ylabel(ystring)
if labels!=None:
assert(len(labels)==R.shape[0])
for name, r in zip(labels, R):
pylab.text(r[pc1], r[pc2], " " + name)
#pylab.show()
def plot_dag(edge_dict, node_color='b', node_size=30,labels=None,nodelist=None,pos=None):
# networkx does not play well with colon in node names
clean_edges = {}
for head, neigb in edge_dict.items():
head = head.replace(":", "_")
nei = [i.replace(":", "_") for i in neigb]
clean_edges[head] = nei
if pos==None:
G = nx.from_dict_of_lists(clean_edges, nx.DiGraph(name='GO'))
pos = nx.pydot_layout(G, prog='dot')
G = nx.from_dict_of_lists(edge_dict, nx.DiGraph(name='GO'))
if len(node_color)>1:
assert(len(node_color)==len(nodelist))
if labels!=None:
with_labels=True
nx.draw_networkx(G,pos, with_labels=with_labels, node_size=node_size, node_color=node_color, nodelist=nodelist)
def plot_ZXcorr(gene_ids, term_ids, gene2go, X, D, scale=True):
""" Plot correlation/covariance between genes as a function of
semantic difference.
input: X (n, p) data matrix
D (p, p) gene-gene sematic similarity matrix
"""
D = scipy.corrcoef(X)
term2ind = dict(enumerate(term_ids))
for i, gene_i in enumerate(gene_ids):
for j, gene_j in enumerate(gene_ids):
if j<i:
r2 = D[i,j]
terms_i = gene2go[gene_i]
terms_j = gene2go[gene_j]
for ti, term in enumerate(term_ids):
if term in terms_i:
pass
def clustering_index(T, Yg):
pass