DeepLoop / predict_chromosome.py
edmundmiller's picture
refactor: Clean up "results" folder
25cd418 unverified
raw
history blame contribute delete
No virus
10.8 kB
import os
import sys
import argparse
from logging import getLogger
import pandas as pd
import numpy as np
import time
from tqdm import tqdm
from tensorflow.keras.models import model_from_json
from scipy.sparse import csr_matrix, triu
import streamlit as st
logger = getLogger(__name__)
def anchor_list_to_dict(anchors):
anchor_dict = {}
for i, anchor in enumerate(anchors):
anchor_dict[anchor] = i
return anchor_dict
def anchor_to_locus(anchor_dict):
def f(anchor):
return anchor_dict[anchor]
return f
def locus_to_anchor(anchor_list):
def f(locus):
return anchor_list[locus]
return f
def predict_tile(args):
model, shared_denoised, shared_overlap, matrix, window_x, window_y = args
tile = matrix[window_x, window_y].A # split matrix into tiles
if tile.shape == (small_matrix_size, small_matrix_size):
tile = np.expand_dims(tile, 0) # add channel dimension
tile = np.expand_dims(tile, 3) # add batch dimension
tmp_denoised = np.ctypeslib.as_array(shared_denoised)
tmp_overlap = np.ctypeslib.as_array(shared_overlap)
denoised = model.predict(tile).reshape((small_matrix_size, small_matrix_size))
denoised[denoised < 0] = 0 # remove any negative values
tmp_denoised[window_x, window_y] += denoised
tmp_overlap[window_x, window_y] += 1
def sparse_prediction_from_file(
model,
matrix,
anchor_list,
small_matrix_size=128,
step_size=64,
max_dist=384,
keep_zeros=True,
):
input_matrix_size = len(anchor_list)
denoised_matrix = np.zeros_like(matrix.A) # matrix to store denoised values
overlap_counts = np.zeros_like(
matrix.A
) # stores number of overlaps per ratio value
start_time = time.time()
for i in range(0, input_matrix_size, step_size):
for j in range(0, input_matrix_size, step_size):
if abs(i - j) > max_dist: # max distance from diagonal with actual values
continue
rows = slice(i, i + small_matrix_size)
cols = slice(j, j + small_matrix_size)
if i + small_matrix_size >= input_matrix_size:
rows = slice(input_matrix_size - small_matrix_size, input_matrix_size)
if j + small_matrix_size >= input_matrix_size:
cols = slice(input_matrix_size - small_matrix_size, input_matrix_size)
tile = matrix[rows, cols].A # split matrix into tiles
if tile.shape == (small_matrix_size, small_matrix_size):
tile = np.expand_dims(tile, 0) # add channel dimension
tile = np.expand_dims(tile, 3) # add batch dimension
denoised = model.predict(tile).reshape(
(small_matrix_size, small_matrix_size)
)
denoised[denoised < 0] = 0 # remove any negative values
denoised_matrix[
rows, cols
] += denoised # add denoised ratio values to whole matrix
overlap_counts[
rows, cols
] += 1 # add to all overlap values within tiled region
# print('Predicted matrix in %d seconds' % (time.time() - start_time))
# start_time = time.time()
denoised_matrix = np.divide(
denoised_matrix,
overlap_counts,
out=np.zeros_like(denoised_matrix),
where=overlap_counts != 0,
) # average all overlapping areas
denoised_matrix = (denoised_matrix + denoised_matrix.T) * 0.5 # force symmetry
np.fill_diagonal(denoised_matrix, 0) # set all diagonal values to 0
sparse_denoised_matrix = triu(denoised_matrix, format="coo")
if not keep_zeros:
sparse_denoised_matrix.eliminate_zeros()
# print('Averaging/symmetry, and converting to COO matrix in %d seconds' % (time.time() - start_time))
return sparse_denoised_matrix
def predict_and_write(
model,
full_matrix_dir,
input_name,
outdir,
anchor_dir,
chromosome,
small_matrix_size,
step_size,
dummy=5,
max_dist=384,
val_cols=["obs", "exp"],
keep_zeros=True,
matrices_per_tile=8,
):
start_time = time.time()
anchor_file = os.path.join(anchor_dir, chromosome + ".bed")
anchor_list = pd.read_csv(
anchor_file,
sep="\t",
usecols=[0, 1, 2, 3],
names=["chr", "start", "end", "anchor"],
) # read anchor list file
start_time = time.time()
logger.debug("anchor file")
logger.debug(os.path.join(full_matrix_dir, input_name))
chr_anchor_file = pd.read_csv(
os.path.join(full_matrix_dir, input_name),
delimiter="\t",
names=["anchor1", "anchor2"] + val_cols,
usecols=["anchor1", "anchor2"] + val_cols,
) # read chromosome anchor to anchor file
if "obs" in val_cols and "exp" in val_cols:
chr_anchor_file["ratio"] = (chr_anchor_file["obs"] + dummy) / (
chr_anchor_file["exp"] + dummy
) # compute matrix ratio value
assert (
"ratio" not in val_cols
), "Must provide either ratio column or obs and exp columns to compute ratio"
denoised_anchor_to_anchor = pd.DataFrame()
start_time = time.time()
anchor_step = matrices_per_tile * small_matrix_size
for i in tqdm(range(0, len(anchor_list), anchor_step)):
anchors = anchor_list[i : i + anchor_step]
# print(anchors)
anchor_dict = anchor_list_to_dict(
anchors["anchor"].values
) # convert to anchor --> index dictionary
chr_tile = chr_anchor_file[
(chr_anchor_file["anchor1"].isin(anchors["anchor"]))
& (chr_anchor_file["anchor2"].isin(anchors["anchor"]))
]
rows = np.vectorize(anchor_to_locus(anchor_dict))(
chr_tile["anchor1"].values
) # convert anchor names to row indices
cols = np.vectorize(anchor_to_locus(anchor_dict))(
chr_tile["anchor2"].values
) # convert anchor names to column indices
logger.debug(chr_tile)
sparse_matrix = csr_matrix(
(chr_tile["ratio"], (rows, cols)),
shape=(anchor_step, anchor_step),
) # construct sparse CSR matrix
sparse_denoised_tile = sparse_prediction_from_file(
model,
sparse_matrix,
anchors,
small_matrix_size,
step_size,
max_dist,
keep_zeros=keep_zeros,
)
if len(sparse_denoised_tile.row) > 0:
anchor_name_list = anchors["anchor"].values.tolist()
anchor_1_list = np.vectorize(locus_to_anchor(anchor_name_list))(
sparse_denoised_tile.row
)
anchor_2_list = np.vectorize(locus_to_anchor(anchor_name_list))(
sparse_denoised_tile.col
)
anchor_to_anchor_dict = {
"anchor1": anchor_1_list,
"anchor2": anchor_2_list,
"denoised": sparse_denoised_tile.data,
}
tile_anchor_to_anchor = pd.DataFrame.from_dict(anchor_to_anchor_dict)
tile_anchor_to_anchor = tile_anchor_to_anchor.round({"denoised": 4})
denoised_anchor_to_anchor = pd.concat(
[denoised_anchor_to_anchor, tile_anchor_to_anchor]
)
print("Denoised matrix in %d seconds" % (time.time() - start_time))
start_time = time.time()
denoised_anchor_to_anchor.to_csv(
os.path.join(outdir, chromosome + ".denoised.anchor.to.anchor"),
sep="\t",
index=False,
header=False,
)
return denoised_anchor_to_anchor
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument(
"--full_matrix_dir",
type=str,
help="directory containing chromosome interaction files to be used as input",
)
parser.add_argument(
"--input_name",
type=str,
help="name of file in full_matrix_dir that we want to feed into model",
)
parser.add_argument("--h5_file", type=str, help="path to model weights .h5 file")
parser.add_argument(
"--json_file",
type=str,
help="path to model architecture .json file (by default it is assumed to be the same as the weights file)",
)
parser.add_argument(
"--outdir",
type=str,
help="directory where the output interaction file will be stored",
)
parser.add_argument(
"--anchor_dir",
type=str,
help="directory containing anchor .bed reference files",
)
parser.add_argument(
"--chromosome", type=str, help="chromosome string (e.g chr1, chr20, chrX)"
)
parser.add_argument(
"--small_matrix_size",
type=int,
default=128,
help="size of input tiles (symmetric)",
)
parser.add_argument(
"--step_size",
type=int,
default=128,
help="step size when tiling matrix (overlapping values will be averaged if different)",
)
parser.add_argument(
"--max_dist",
type=int,
default=384,
help="maximum distance from diagonal (in pixels) where we consider interactions (default to ~2Mb)",
)
parser.add_argument(
"--dummy",
type=int,
default=5,
help="dummy value to compute ratio (obs + dummy) / (exp + dummy)",
)
parser.add_argument(
"--val_cols",
"--list",
nargs="+",
help="names of value columns in interaction files (not including a1, a2)",
default=["obs", "exp"],
)
parser.add_argument(
"--keep_zeros",
action="store_true",
help="if provided, the output file will contain all pixels in every tile, even if no value is present",
)
args = parser.parse_args()
full_matrix_dir = args.full_matrix_dir
input_name = args.input_name
h5_file = args.h5_file
if args.json_file is not None:
json_file = args.json_file
else:
json_file = args.h5_file.replace("h5", "json")
outdir = args.outdir
anchor_dir = args.anchor_dir
chromosome = args.chromosome
small_matrix_size = args.small_matrix_size
step_size = args.step_size
dummy = args.dummy
max_dist = args.max_dist
val_cols = args.val_cols
keep_zeros = args.keep_zeros
os.makedirs(outdir, exist_ok=True)
with open(json_file, "r") as f:
model = model_from_json(f.read()) # load model
model.load_weights(h5_file) # load model weights
predict_and_write(
model,
full_matrix_dir,
input_name,
outdir,
anchor_dir,
chromosome,
small_matrix_size,
step_size,
dummy,
max_dist,
val_cols,
keep_zeros,
)