In [1]:
import os
import sys
sys.path.append(os.path.abspath("/users/amtseng/tfmodisco/src/"))
from tfmodisco.run_tfmodisco import import_shap_scores, import_tfmodisco_results
from motif.read_motifs import pfm_info_content, pfm_to_pwm, trim_motif_by_ic
from motif.match_motifs import match_motifs_to_database
from util import figure_to_vdom_image
import plot.viz_sequence as viz_sequence
import numpy as np
import h5py
import matplotlib.pyplot as plt
import vdom.helpers as vdomh
from IPython.display import display

Define constants and paths

In [2]:
# Define parameters/fetch arguments
tf_name = os.environ["TFM_TF_NAME"]
shap_scores_path = os.environ["TFM_SHAP_PATH"]
tfm_results_path = os.environ["TFM_TFM_PATH"]
hyp_score_key = os.environ["TFM_HYP_SCORE_KEY"]
if "TFM_MOTIF_CACHE" in os.environ:
    tfm_motifs_cache_dir = os.environ["TFM_MOTIF_CACHE"]
else:
    tfm_motifs_cache_dir = None

print("TF name: %s" % tf_name)
print("DeepSHAP scores path: %s" % shap_scores_path)
print("TF-MoDISco results path: %s" % tfm_results_path)
print("Importance score key: %s" % hyp_score_key)
print("Saved TF-MoDISco-derived motifs cache: %s" % tfm_motifs_cache_dir)
TF name: FOXA2
DeepSHAP scores path: /users/amtseng/tfmodisco/results/importance_scores/multitask_profile/FOXA2_multitask_profile_fold6/FOXA2_multitask_profile_fold6_imp_scores.h5
TF-MoDISco results path: /users/amtseng/tfmodisco/results/tfmodisco/multitask_profile/FOXA2_multitask_profile_fold6/FOXA2_multitask_profile_fold6_count_tfm.h5
Importance score key: count_hyp_scores
Saved TF-MoDISco-derived motifs cache: /users/amtseng/tfmodisco/results/reports/tfmodisco_results//cache/multitask_profile/FOXA2_multitask_profile_fold6/FOXA2_multitask_profile_fold6_count
In [3]:
# Define paths and constants
input_length = 2114
shap_score_center_size = 400
In [4]:
if tfm_motifs_cache_dir:
    os.makedirs(tfm_motifs_cache_dir, exist_ok=True)

Import SHAP scores and TF-MoDISco results

In [5]:
# Import SHAP coordinates and one-hot sequences
hyp_scores, _, one_hot_seqs, shap_coords = import_shap_scores(shap_scores_path, hyp_score_key, center_cut_size=shap_score_center_size)
# This cuts the sequences/scores off just as how TF-MoDISco saw them, but the coordinates are uncut
Importing SHAP scores: 100%|██████████| 174/174 [01:46<00:00,  1.63it/s]
In [6]:
# Import the TF-MoDISco results object
tfm_obj = import_tfmodisco_results(tfm_results_path, hyp_scores, one_hot_seqs, shap_score_center_size)

Plot some SHAP score tracks

Plot the central region of some randomly selected actual importance scores

In [7]:
plot_slice = slice(int(shap_score_center_size / 4), int(3 * shap_score_center_size / 4))
for index in np.random.choice(hyp_scores.shape[0], size=5, replace=False):
    viz_sequence.plot_weights((hyp_scores[index] * one_hot_seqs[index])[plot_slice], subticks_frequency=100)

Plot TF-MoDISco results

Plot all motifs by metacluster

In [8]:
motif_pfms, motif_hcwms, motif_cwms = [], [], []  # Save the trimmed PFMs, hCWMs, and CWMs
motif_pfms_short = []  # PFMs that are even more trimmed (for TOMTOM)
num_seqlets = []  # Number of seqlets for each motif
motif_seqlets = []  # Save seqlets of each motif
metaclusters = tfm_obj.metacluster_idx_to_submetacluster_results
num_metaclusters = len(metaclusters.keys())
if tfm_motifs_cache_dir:
    motif_hdf5 = h5py.File(os.path.join(tfm_motifs_cache_dir, "all_motifs.h5"), "w")
for metacluster_i, metacluster_key in enumerate(metaclusters.keys()):
    metacluster = metaclusters[metacluster_key]
    display(vdomh.h3("Metacluster %d/%d" % (metacluster_i + 1, num_metaclusters)))
    patterns = metacluster.seqlets_to_patterns_result.patterns
    if not patterns:
        break
    motif_pfms.append([])
    motif_hcwms.append([])
    motif_cwms.append([])
    motif_pfms_short.append([])
    num_seqlets.append([])
    motif_seqlets.append([])
    num_patterns = len(patterns)
    for pattern_i, pattern in enumerate(patterns):
        seqlets = pattern.seqlets
        display(vdomh.h4("Pattern %d/%d" % (pattern_i + 1, num_patterns)))
        display(vdomh.p("%d seqlets" % len(seqlets)))
        
        pfm = pattern["sequence"].fwd
        hcwm = pattern["task0_hypothetical_contribs"].fwd
        cwm = pattern["task0_contrib_scores"].fwd
        
        pfm_fig = viz_sequence.plot_weights(pfm, subticks_frequency=10, return_fig=True)
        hcwm_fig = viz_sequence.plot_weights(hcwm, subticks_frequency=10, return_fig=True)
        cwm_fig = viz_sequence.plot_weights(cwm, subticks_frequency=10, return_fig=True)
        pfm_fig.tight_layout()
        hcwm_fig.tight_layout()
        cwm_fig.tight_layout()
        
        motif_table = vdomh.table(
            vdomh.tr(
                vdomh.td("Sequence (PFM)"),
                vdomh.td(figure_to_vdom_image(pfm_fig))
            ),
            vdomh.tr(
                vdomh.td("Hypothetical contributions (hCWM)"),
                vdomh.td(figure_to_vdom_image(hcwm_fig))
            ),
            vdomh.tr(
                vdomh.td("Actual contributions (CWM)"),
                vdomh.td(figure_to_vdom_image(cwm_fig))
            )
        )
        display(motif_table)
        plt.close("all")  # Remove all standing figures
        
        # Trim motif based on information content
        short_trimmed_pfm = trim_motif_by_ic(pfm, pfm)
        motif_pfms_short[-1].append(short_trimmed_pfm)
        
        # Expand trimming to +/- 4bp on either side
        trimmed_pfm = trim_motif_by_ic(pfm, pfm, pad=4)
        trimmed_hcwm = trim_motif_by_ic(pfm, hcwm, pad=4)
        trimmed_cwm = trim_motif_by_ic(pfm, cwm, pad=4)
        
        motif_pfms[-1].append(trimmed_pfm)
        motif_hcwms[-1].append(trimmed_hcwm)
        motif_cwms[-1].append(trimmed_cwm)
        
        num_seqlets[-1].append(len(seqlets))
        
        if tfm_motifs_cache_dir:
            # Save results and figures
            motif_id = "%d_%d" % (metacluster_i, pattern_i)
            pfm_fig.savefig(os.path.join(tfm_motifs_cache_dir, motif_id + "_pfm_full.png"))
            hcwm_fig.savefig(os.path.join(tfm_motifs_cache_dir, motif_id + "_hcwm_full.png"))
            cwm_fig.savefig(os.path.join(tfm_motifs_cache_dir, motif_id + "_cwm_full.png"))
            motif_dset = motif_hdf5.create_group(motif_id)
            motif_dset.create_dataset("pfm_full", data=pfm, compression="gzip")
            motif_dset.create_dataset("hcwm_full", data=hcwm, compression="gzip")
            motif_dset.create_dataset("cwm_full", data=cwm, compression="gzip")
            motif_dset.create_dataset("pfm_trimmed", data=trimmed_pfm, compression="gzip")
            motif_dset.create_dataset("hcwm_trimmed", data=trimmed_hcwm, compression="gzip")
            motif_dset.create_dataset("cwm_trimmed", data=trimmed_cwm, compression="gzip")
            motif_dset.create_dataset("pfm_short_trimmed", data=short_trimmed_pfm, compression="gzip")

Metacluster 1/1

Pattern 1/9

10899 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 2/9

1554 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 3/9

640 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 4/9

192 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 5/9

132 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 6/9

117 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 7/9

115 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 8/9

68 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Pattern 9/9

55 seqlets

Sequence (PFM)
Hypothetical contributions (hCWM)
Actual contributions (CWM)

Summary of motifs

Motifs are trimmed based on information content, and presented in descending order by number of supporting seqlets. The motifs are separated by metacluster. The motifs are presented as hCWMs. The forward orientation is defined as the orientation that is richer in purines.

In [9]:
colgroup = vdomh.colgroup(
    vdomh.col(style={"width": "5%"}),
    vdomh.col(style={"width": "5%"}),
    vdomh.col(style={"width": "45%"}),
    vdomh.col(style={"width": "45%"})
)
header = vdomh.thead(
    vdomh.tr(
        vdomh.th("#", style={"text-align": "center"}),
        vdomh.th("Seqlets", style={"text-align": "center"}),
        vdomh.th("Forward", style={"text-align": "center"}),
        vdomh.th("Reverse", style={"text-align": "center"})
    )
)

for i in range(len(motif_hcwms)):
    display(vdomh.h3("Metacluster %d/%d" % (i + 1, num_metaclusters)))
    body = []
    for j in range(len(motif_hcwms[i])):
        motif = motif_hcwms[i][j]
        if np.sum(motif[:, [0, 2]]) > 0.5 * np.sum(motif):
            # Forward is purine-rich, reverse-complement is pyrimidine-rich
            f, rc = motif, np.flip(motif, axis=(0, 1))
        else:
            f, rc = np.flip(motif, axis=(0, 1)), motif
            
        f_fig = viz_sequence.plot_weights(f, figsize=(20, 4), return_fig=True)
        f_fig.tight_layout()
        rc_fig = viz_sequence.plot_weights(rc, figsize=(20, 4), return_fig=True)
        rc_fig.tight_layout()
        
        if tfm_motifs_cache_dir:
            # Save results and figures
            motif_id = "%d_%d" % (i, j)
            f_fig.savefig(os.path.join(tfm_motifs_cache_dir, motif_id + "_hcwm_trimmed_fwd.png"))
            rc_fig.savefig(os.path.join(tfm_motifs_cache_dir, motif_id + "_hcwm_trimmed_rev.png"))

        body.append(
            vdomh.tr(
                vdomh.td(str(j + 1)),
                vdomh.td(str(num_seqlets[i][j])),
                vdomh.td(figure_to_vdom_image(f_fig)),
                vdomh.td(figure_to_vdom_image(rc_fig))
            )
        )
    display(vdomh.table(colgroup, header, vdomh.tbody(*body)))
    plt.close("all")

Metacluster 1/1

#SeqletsForwardReverse
110899
21554
3640
4192
5132
6117
7115
868
955

Top TOMTOM matches for each motif

Here, the TF-MoDISco motifs are plotted as hCWMs, but the TOMTOM matches are shown as PWMs.

In [10]:
num_matches_to_keep = 10
num_matches_to_show = 5

header = vdomh.thead(
    vdomh.tr(
        vdomh.th("Motif ID", style={"text-align": "center"}),
        vdomh.th("q-val", style={"text-align": "center"}),
        vdomh.th("PWM", style={"text-align": "center"})
    )
)

for i in range(len(motif_pfms)):
    display(vdomh.h3("Metacluster %d/%d" % (i + 1, num_metaclusters)))
    
    # Compute TOMTOM matches for all motifs in the metacluster at once
    out_dir = os.path.join(tfm_motifs_cache_dir, "tomtom", "metacluster_%d" % i) if tfm_motifs_cache_dir else None
    tomtom_matches = match_motifs_to_database(motif_pfms_short[i], top_k=num_matches_to_keep, temp_dir=out_dir)
    
    for j in range(len(motif_pfms[i])):
        display(vdomh.h4("Motif %d/%d" % (j + 1, len(motif_pfms[i]))))
        viz_sequence.plot_weights(motif_hcwms[i][j])
    
        body = []
        for k, (match_name, match_pfm, match_qval) in enumerate(tomtom_matches[j]):
            fig = viz_sequence.plot_weights(pfm_to_pwm(match_pfm), return_fig=True)
            fig.tight_layout()
            if k < num_matches_to_show:
                body.append(
                    vdomh.tr(
                        vdomh.td(match_name),
                        vdomh.td(str(match_qval)),
                        vdomh.td(figure_to_vdom_image(fig))
                    )
                )
                if tfm_motifs_cache_dir:
                    # Save results and figures
                    motif_id = "%d_%d" % (i, j)
                    fig.savefig(os.path.join(out_dir, motif_id + ("_hit-%d.png" % (k + 1))))
            else:
                body.append(
                    vdomh.tr(
                        vdomh.td(match_name),
                        vdomh.td(str(match_qval)),
                        vdomh.td("Not shown")
                    )
                )
        if not body:
            display(vdomh.p("No TOMTOM matches passing threshold"))
        else:
            display(vdomh.table(header, vdomh.tbody(*body)))
        plt.close("all")

Metacluster 1/1

Motif 1/9

Motif IDq-valPWM
FOXA1_HUMAN.H11MO.0.A5.868250000000001e-10
FOXA2_HUMAN.H11MO.0.A7.83273e-09
FOXA3_HUMAN.H11MO.0.B7.83273e-09
MA0846.1_FOXC21.62016e-08
FOXF2_HUMAN.H11MO.0.D5.92169e-07
MA0847.2_FOXD25.92169e-07Not shown
FOXD3_HUMAN.H11MO.0.D7.613600000000001e-07Not shown
MA0032.2_FOXC17.99096e-07Not shown
FOXC1_HUMAN.H11MO.0.C3.6625199999999994e-06Not shown
MA0845.1_FOXB18.41691e-05Not shown

Motif 2/9

Motif IDq-valPWM
HNF4G_HUMAN.H11MO.0.B2.80063e-05
HNF4A_HUMAN.H11MO.0.A2.80063e-05
MA0677.1_Nr2f60.00022162
MA0856.1_RXRG0.00022162
MA0512.2_Rxra0.00022162
MA1537.1_NR2F1(var.2)0.00022162Not shown
MA1574.1_THRB0.00022162Not shown
MA1550.1_PPARD0.00022162Not shown
MA0115.1_NR1H2::RXRA0.000276266Not shown
MA0855.1_RXRB0.000276266Not shown

Motif 3/9

Motif IDq-valPWM
CEBPB_HUMAN.H11MO.0.A2.7352099999999995e-06
MA0466.2_CEBPB8.52971e-06
MA0837.1_CEBPE8.52971e-06
CEBPD_HUMAN.H11MO.0.C9.02622e-06
MA0838.1_CEBPG3.31727e-05
CEBPA_HUMAN.H11MO.0.A0.000142485Not shown
MA0836.2_CEBPD0.000210297Not shown
MA0025.2_NFIL30.000424668Not shown
MA0043.3_HLF0.0007359910000000001Not shown
MA0102.4_CEBPA0.000929899Not shown

Motif 4/9

Motif IDq-valPWM
HNF1A_HUMAN.H11MO.0.C8.447280000000001e-08
HNF1B_HUMAN.H11MO.0.A8.447280000000001e-08
MA0153.2_HNF1B8.447280000000001e-08
MA0046.2_HNF1A9.166730000000001e-08
HNF1B_HUMAN.H11MO.1.A5.02015e-05
ZFHX3_HUMAN.H11MO.0.D0.050953500000000006Not shown
MA0853.1_Alx40.13330699999999998Not shown
MEOX2_HUMAN.H11MO.0.D0.13330699999999998Not shown
MA1504.1_HOXC40.16726400000000002Not shown
PAX4_HUMAN.H11MO.0.D0.16726400000000002Not shown

Motif 5/9

Motif IDq-valPWM
MA1134.1_FOS::JUNB3.5154300000000002e-06
MA1135.1_FOSB::JUNB3.5154300000000002e-06
MA1138.1_FOSL2::JUNB3.5154300000000002e-06
MA1144.1_FOSL2::JUND3.5154300000000002e-06
MA0655.1_JDP21.10257e-05
MA0489.1_JUN(var.2)1.39901e-05Not shown
MA0099.3_FOS::JUN1.5031400000000001e-05Not shown
MA1101.2_BACH21.7099e-05Not shown
MA1130.1_FOSL2::JUN2.03592e-05Not shown
MA0841.1_NFE22.5702399999999996e-05Not shown

Motif 6/9

Motif IDq-valPWM
MA0466.2_CEBPB2.5291e-06
MA0837.1_CEBPE2.5291e-06
MA0838.1_CEBPG1.62349e-05
CEBPB_HUMAN.H11MO.0.A0.000546445
MA0836.2_CEBPD0.0009955230000000001
HXC10_HUMAN.H11MO.0.D0.00167425Not shown
DBP_HUMAN.H11MO.0.B0.00167425Not shown
MA0025.2_NFIL30.00223479Not shown
MA0679.2_ONECUT10.00241346Not shown
MA0639.1_DBP0.00241346Not shown

Motif 7/9

Motif IDq-valPWM
HNF4G_HUMAN.H11MO.0.B5.129e-07
HNF4A_HUMAN.H11MO.0.A5.62377e-07
MA1550.1_PPARD1.87775e-05
MA0677.1_Nr2f62.9370700000000003e-05
MA0856.1_RXRG3.03164e-05
MA0512.2_Rxra3.24504e-05Not shown
MA0855.1_RXRB6.47543e-05Not shown
MA1537.1_NR2F1(var.2)8.761520000000001e-05Not shown
MA1574.1_THRB8.761520000000001e-05Not shown
MA0115.1_NR1H2::RXRA0.000122921Not shown

Motif 8/9

Motif IDq-valPWM
HNF4A_HUMAN.H11MO.0.A0.00492876
MA0114.4_HNF4A0.00492876
MA0484.2_HNF4G0.00492876
HNF4G_HUMAN.H11MO.0.B0.00594369
MA1494.1_HNF4A(var.2)0.021481599999999997
FOXA1_HUMAN.H11MO.0.A0.0905806Not shown
FOXA3_HUMAN.H11MO.0.B0.09353819999999999Not shown
FOXK1_HUMAN.H11MO.0.A0.13517300000000002Not shown
NR2F6_HUMAN.H11MO.0.D0.142193Not shown
FOXF2_HUMAN.H11MO.0.D0.172799Not shown

Motif 9/9

Motif IDq-valPWM
DBP_HUMAN.H11MO.0.B0.000142022
CEBPD_HUMAN.H11MO.0.C0.000142022
CEBPB_HUMAN.H11MO.0.A0.00023339299999999998
MA0466.2_CEBPB0.000288358
MA0837.1_CEBPE0.000288358
MA0025.2_NFIL30.000379293Not shown
NFIL3_HUMAN.H11MO.0.D0.00100736Not shown
MA0838.1_CEBPG0.00100736Not shown
MA0043.3_HLF0.0010976Not shown
MA0836.2_CEBPD0.00146329Not shown