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  1. Unclassified
  2. Q969W9

  • Unclassified
    • A0FGR9
    • A0PK11
    • A6NC51
    • A6ND01
    • A6NDP7
    • A6NDV4
    • A6NFA1
    • A6NFX1
    • A6NGU5
    • A6NHS7
    • A6NIM6
    • A6NKB5
    • A7MBM2
    • A8MVS5
    • A8MVW0
    • A8MVW5
    • A8MXK1
    • B3SHH9
    • B4DS77
    • B6A8C7
    • B8ZZ34
    • O00526
    • O00592
    • O14511
    • O14525
    • O14788
    • O14944
    • O15165
    • O43291
    • O43490
    • O43493
    • O43921
    • O43934
    • O60279
    • O60500
    • O60609
    • O75121
    • O75129
    • O75443
    • O75445
    • O75487
    • O75882
    • O94779
    • O95150
    • O95196
    • O95274
    • O95497
    • O95498
    • O95866
    • O95867
    • O95868
    • P0CG37
    • P0DP58
    • P0DPA2
    • P08F94
    • P01135
    • P01730
    • P01732
    • P04156
    • P04233
    • P04921
    • P05067
    • P05362
    • P05538
    • P06729
    • P07204
    • P07911
    • P09326
    • P09564
    • P09603
    • P09693
    • P09758
    • P10747
    • P10966
    • P11717
    • P11912
    • P13385
    • P13598
    • P13726
    • P14207
    • P15328
    • P15391
    • P15514
    • P15529
    • P15941
    • P16070
    • P16150
    • P16284
    • P16410
    • P16422
    • P17643
    • P17813
    • P18627
    • P19256
    • P19320
    • P19440
    • P20023
    • P20645
    • P20827
    • P21583
    • P21754
    • P22303
    • P22794
    • P23510
    • P24071
    • P28906
    • P29965
    • P30203
    • P32970
    • P32971
    • P33681
    • P34910
    • P35070
    • P35613
    • P37088
    • P40200
    • P40259
    • P40967
    • P41597
    • P42658
    • P43121
    • P43307
    • P47871
    • P48023
    • P48060
    • P49768
    • P49771
    • P49810
    • P51168
    • P51170
    • P51172
    • P51674
    • P51681
    • P51693
    • P52797
    • P52798
    • P52803
    • P53801
    • P55082
    • P55259
    • P58335
    • P58418
    • P58658
    • P60201
    • P60852
    • P78348
    • P78423
    • Q0P6H9
    • Q1HG43
    • Q2KHT4
    • Q2M385
    • Q3KNS1
    • Q3KNT9
    • Q3ZCQ3
    • Q4G0T1
    • Q5DID0
    • Q5FWE3
    • Q5HYA8
    • Q5JRV8
    • Q5SQ64
    • Q5SSG8
    • Q5SZK8
    • Q5T4F4
    • Q5VU65
    • Q5VUB5
    • Q5VV43
    • Q5VV63
    • Q5VX71
    • Q5VZ72
    • Q6GTX8
    • Q6GV28
    • Q6MZM0
    • Q6N075
    • Q6NUS6
    • Q6P1J6
    • Q6P4Q7
    • Q6P9G4
    • Q6P995
    • Q6PCB8
    • Q6PIZ9
    • Q6PJF5
    • Q6UVK1
    • Q6UW56
    • Q6UW88
    • Q6UWB1
    • Q6UWJ1
    • Q6UWL2
    • Q6UWN5
    • Q6UX01
    • Q6UX71
    • Q6UX82
    • Q6UXB8
    • Q6UXC1
    • Q6UXD5
    • Q6UXU4
    • Q6UXV0
    • Q6UXZ0
    • Q6ZMB5
    • Q6ZMJ2
    • Q6ZNA5
    • Q6ZP29
    • Q6ZP80
    • Q6ZRH7
    • Q6ZSS7
    • Q6ZTQ4
    • Q6ZUK4
    • Q6ZVL6
    • Q6ZVN8
    • Q6ZW05
    • Q7RTM1
    • Q7Z2K6
    • Q7Z3B1
    • Q7Z3C6
    • Q7Z3D4
    • Q7Z3F1
    • Q7Z6A9
    • Q7Z7M0
    • Q7Z7N9
    • Q7Z402
    • Q7Z553
    • Q8IUH8
    • Q8IUK5
    • Q8IUW5
    • Q8IW00
    • Q8IWD5
    • Q8IWV2
    • Q8IYR6
    • Q8IZF0
    • Q8J025
    • Q8N0Z9
    • Q8N1N2
    • Q8N2G4
    • Q8N3F9
    • Q8N7C4
    • Q8N7P1
    • Q8N7X8
    • Q8N8F7
    • Q8N8Z6
    • Q8N131
    • Q8N271
    • Q8N387
    • Q8N441
    • Q8N608
    • Q8NA29
    • Q8NAU1
    • Q8NBL3
    • Q8NBM4
    • Q8NBN3
    • Q8NBR0
    • Q8NBT3
    • Q8NC42
    • Q8NC54
    • Q8NC67
    • Q8NCG7
    • Q8NCL8
    • Q8NCW0
    • Q8ND94
    • Q8NE01
    • Q8NE79
    • Q8NEA5
    • Q8NET5
    • Q8NFP4
    • Q8NFT8
    • Q8NFZ8
    • Q8NGA4
    • Q8NH89
    • Q8NI32
    • Q8TB96
    • Q8TBE3
    • Q8TBP5
    • Q8TCT9
    • Q8TCW7
    • Q8TDF5
    • Q8TDQ0
    • Q8TEB7
    • Q8TEM1
    • Q8TEQ8
    • Q8WTR4
    • Q8WV15
    • Q8WVN6
    • Q8WVP7
    • Q8WWF5
    • Q8WWG1
    • Q8WXI7
    • Q8WZ71
    • Q9BQ51
    • Q9BQS7
    • Q9BRK3
    • Q9BSN7
    • Q9BWQ8
    • Q9BX67
    • Q9BX97
    • Q9BXJ7
    • Q9BY79
    • Q9BYF1
    • Q9BZV3
    • Q9BZW8
    • Q9BZZ2
    • Q9C0I4
    • Q9H0V9
    • Q9H1E5
    • Q9H1U4
    • Q9H3R2
    • Q9H5I5
    • Q9H5V8
    • Q9H6D8
    • Q9H6L2
    • Q9H6X2
    • Q9H6Y7
    • Q9H8M5
    • Q9H9P2
    • Q9H195
    • Q9H295
    • Q9H330
    • Q9H665
    • Q9HBG7
    • Q9HBV2
    • Q9HC73
    • Q9HCC8
    • Q9HCJ1
    • Q9HCN6
    • Q9NPF0
    • Q9NPR9
    • Q9NPY3
    • Q9NQ25
    • Q9NQ34
    • Q9NQ60
    • Q9NR16
    • Q9NRR2
    • Q9NS62
    • Q9NS93
    • Q9NU53
    • Q9NUM4
    • Q9NUN5
    • Q9NV12
    • Q9NX61
    • Q9NY35
    • Q9NY37
    • Q9NYX4
    • Q9NZ53
    • Q9NZQ7
    • Q9NZV1
    • Q9P0T7
    • Q9P0V8
    • Q9P2B2
    • Q9P121
    • Q9P232
    • Q9UBS9
    • Q9UGT4
    • Q9UHC9
    • Q9UIB8
    • Q9UIK5
    • Q9UJ14
    • Q9UJ42
    • Q9UJQ1
    • Q9UKB5
    • Q9UKJ0
    • Q9UKJ1
    • Q9UKY0
    • Q9ULC0
    • Q9ULI3
    • Q9ULK6
    • Q9UM73
    • Q9UMF0
    • Q9UNN8
    • Q9UPI3
    • Q9UPZ6
    • Q9UQ52
    • Q9UQC9
    • Q9Y3P8
    • Q9Y4D2
    • Q9Y5F6
    • Q9Y5F7
    • Q9Y5G9
    • Q9Y5H2
    • Q9Y5I4
    • Q9Y5Y0
    • Q9Y5Y7
    • Q9Y6W8
    • Q9Y275
    • Q9Y487
    • Q9Y493
    • Q9Y625
    • Q9Y639
    • Q14CN2
    • Q14CZ8
    • Q17R55
    • Q17RY6
    • Q53EL9
    • Q68D85
    • Q68DH5
    • Q68DV7
    • Q75T13
    • Q86SP6
    • Q86SU0
    • Q86T13
    • Q86TG1
    • Q86UK5
    • Q86UP6
    • Q86UW1
    • Q86UW2
    • Q86V40
    • Q86V85
    • Q86VB7
    • Q86W33
    • Q86WC4
    • Q86WI1
    • Q86XM0
    • Q86XR5
    • Q86XT9
    • Q86XX4
    • Q86YD3
    • Q86YD5
    • Q96A25
    • Q96A28
    • Q96AP7
    • Q96BF3
    • Q96D42
    • Q96DD7
    • Q96DU3
    • Q96F05
    • Q96F81
    • Q96FE7
    • Q96FL8
    • Q96J42
    • Q96K49
    • Q96L08
    • Q96MU8
    • Q96N19
    • Q96NR3
    • Q96PB1
    • Q96PD2
    • Q96PJ5
    • Q96RD6
    • Q96RD7
    • Q96RD9
    • Q96RV3
    • Q685J3
    • Q969N2
    • Q969W9
    • Q01151
    • Q02246
    • Q02297
    • Q02505
    • Q03167
    • Q04900
    • Q05996
    • Q06481
    • Q08722
    • Q10589
    • Q12770
    • Q12836
    • Q12860
    • Q12907
    • Q13145
    • Q13286
    • Q13291
    • Q13449
    • Q13488
    • Q13491
    • Q13586
    • Q13740
    • Q14118
    • Q14773
    • Q14956
    • Q14982
    • Q15116
    • Q16553
    • Q16651
    • Q16653
    • Q30201
    • Q92508
    • Q92542
    • Q92824
    • Q92838
    • Q95460
    • Q99075
    • Q99102

  • Unclassified

On this page

  • General information
  • AlphaFold model
  • Surface representation - binding sites
  • All detected seeds aligned
  • Seed scores per sites
  • Binding site metrics
  • Binding site sequence composition
  • Download
  1. Unclassified
  2. Q969W9

Q969W9

Author

Hamed Khakzad

Published

August 10, 2024

General information

Code
import requests
import urllib3
urllib3.disable_warnings()

def fetch_uniprot_data(uniprot_id):
    url = f"https://rest.uniprot.org/uniprotkb/{uniprot_id}.json"
    response = requests.get(url, verify=False)  # Disable SSL verification
    response.raise_for_status()  # Raise an error for bad status codes
    return response.json()

def display_uniprot_data(data):
    primary_accession = data.get('primaryAccession', 'N/A')
    protein_name = data.get('proteinDescription', {}).get('recommendedName', {}).get('fullName', {}).get('value', 'N/A')
    gene_name = data.get('gene', [{'geneName': {'value': 'N/A'}}])[0]['geneName']['value']
    organism = data.get('organism', {}).get('scientificName', 'N/A')
    
    function_comment = next((comment for comment in data.get('comments', []) if comment['commentType'] == "FUNCTION"), None)
    function = function_comment['texts'][0]['value'] if function_comment else 'N/A'

    # Printing the data
    print(f"UniProt ID: {primary_accession}")
    print(f"Protein Name: {protein_name}")
    print(f"Organism: {organism}")
    print(f"Function: {function}")

# Replace this with the UniProt ID you want to fetch
uniprot_id = "Q969W9"
data = fetch_uniprot_data(uniprot_id)
display_uniprot_data(data)
UniProt ID: Q969W9
Protein Name: Protein TMEPAI
Organism: Homo sapiens
Function: Functions as a negative regulator of TGF-beta signaling and thereby probably plays a role in cell proliferation, differentiation, apoptosis, motility, extracellular matrix production and immunosuppression. In the canonical TGF-beta pathway, ZFYVE9/SARA recruits the intracellular signal transducer and transcriptional modulators SMAD2 and SMAD3 to the TGF-beta receptor. Phosphorylated by the receptor, SMAD2 and SMAD3 then form a heteromeric complex with SMAD4 that translocates to the nucleus to regulate transcription. Through interaction with SMAD2 and SMAD3, LDLRAD4 may compete with ZFYVE9 and SMAD4 and prevent propagation of the intracellular signal (PubMed:20129061, PubMed:24627487). Also involved in down-regulation of the androgen receptor (AR), enhancing ubiquitination and proteasome-mediated degradation of AR, probably by recruiting NEDD4 (PubMed:18703514)

More information:   

AlphaFold model

Surface representation - binding sites

The computed point cloud for pLDDT > 0.6. Each atom is sampled on average by 10 points.

To see the predicted binding interfaces, you can choose color theme “uncertainty”.

  • Go to the “Controls Panel”

  • Below “Components”, to the right, click on “…”

  • “Set Coloring” by “Atom Property”, and “Uncertainty/Disorder”

All detected seeds aligned

Seed scores per sites

Code
import re
import pandas as pd
import os
import plotly.express as px

ID = "Q969W9"
data_list = []

name_pattern = re.compile(r'name: (\S+)')
score_pattern = re.compile(r'score: (\d+\.\d+)')
desc_dist_score_pattern = re.compile(r'desc_dist_score: (\d+\.\d+)')

directory = f"/Users/hamedkhakzad/Research_EPFL/1_postdoc_project/Surfaceome_web_app/www/Surfaceome_top100_per_site/{ID}_A"

for filename in os.listdir(directory):
    if filename.startswith("output_sorted_") and filename.endswith(".score"):
        filepath = os.path.join(directory, filename)
        with open(filepath, 'r') as file:
            for line in file:
                name_match = name_pattern.search(line)
                score_match = score_pattern.search(line)
                desc_dist_score_match = desc_dist_score_pattern.search(line)
                
                if name_match and score_match and desc_dist_score_match:
                    name = name_match.group(1)
                    score = float(score_match.group(1))
                    desc_dist_score = float(desc_dist_score_match.group(1))
                    
                    simple_filename = filename.replace("output_sorted_", "").replace(".score", "")
                    data_list.append({
                        'name': name[:-1],
                        'score': score,
                        'desc_dist_score': desc_dist_score,
                        'file': simple_filename
                    })

data = pd.DataFrame(data_list)

fig = px.scatter(
    data,
    x='score',
    y='desc_dist_score',
    color='file',
    title='Score vs Desc Dist Score',
    labels={'score': 'Score', 'desc_dist_score': 'Desc Dist Score'},
    hover_data={'name': True}
)

fig.update_layout(
    legend_title_text='File',
    legend=dict(
        yanchor="top",
        y=0.99,
        xanchor="left",
        x=1.05
    )
)

fig.show()

Binding site metrics

Code
import pandas as pd
pd.options.mode.chained_assignment = None
import plotly.express as px

df_total = pd.read_csv('/Users/hamedkhakzad/Research_EPFL/1_postdoc_project/Surfaceome_web_app/www/database/df_flattened.csv')
df_plot = df_total[df_total['acc_flat'] == ID]
df_plot ['Total seeds'] = df_plot.loc[:,['seedss_a','seedss_b']].sum(axis=1)
df_plot.loc[:, ["acc_flat", "main_classs", "sub_classs", "seedss_a", "seedss_b", "areass", "bsss", "hpss"]]
acc_flat main_classs sub_classs seedss_a seedss_b areass bsss hpss
4243 Q969W9 Unclassified Unclassified 12 61 1338.071991 178 -13.0
Code
import math
import matplotlib.pyplot as plt

features = ['seedss_a', 'seedss_b', 'areass', 'hpss']
titles = ['Alpha seeds', 'Beta seeds', 'Area', 'Hydrophobicity']
num_features = len(features)

if len(df_plot) > 8:
    num_rows = 2
    num_cols = 2
else:
    num_rows = 1
    num_cols = 4

fig, axes = plt.subplots(nrows=num_rows, ncols=num_cols, figsize=(9, num_rows * 5))

axes = axes.flatten()
positions = range(1, len(df_plot) + 1)

for i, feature in enumerate(features):
    title = titles[i]
    axes[i].bar(positions, df_plot[feature], color=['blue', 'orange', 'green', 'red', 'purple', 'brown'])
    axes[i].set_title(title, fontsize=13)
    axes[i].set_xticks(positions)
    axes[i].set_xticklabels(df_plot['bsss'], rotation=90)
    axes[i].set_xlabel("Center residues", fontsize=13)
    axes[i].set_ylabel(title, fontsize=13)

for j in range(len(features), len(axes)):
    fig.delaxes(axes[j])

plt.tight_layout()
plt.show()

Binding site sequence composition

Code
amino_acid_map = {
    'ALA': 'A', 'ARG': 'R', 'ASN': 'N', 'ASP': 'D', 'CYS': 'C',
    'GLN': 'Q', 'GLU': 'E', 'GLY': 'G', 'HIS': 'H', 'ILE': 'I',
    'LEU': 'L', 'LYS': 'K', 'MET': 'M', 'PHE': 'F', 'PRO': 'P',
    'SER': 'S', 'THR': 'T', 'TRP': 'W', 'TYR': 'Y', 'VAL': 'V'
}

from collections import Counter
from ast import literal_eval
from matplotlib.gridspec import GridSpec
import warnings
warnings.filterwarnings("ignore", message="Attempting to set identical low and high xlims")

def convert_to_single_letter(aa_list):
    if type(aa_list) == str:
        aa_list = literal_eval(aa_list)
    return [amino_acid_map[aa] for aa in aa_list]

def create_sequence_visualizations(df, max_letters_per_row=20):
    for idx, row in df.iterrows():
        bsss = row['bsss']
        AAss = row['AAss']
        single_letter_sequence = convert_to_single_letter(AAss)
        
        freq_counter = Counter(single_letter_sequence)
        total_aa = len(single_letter_sequence)
        frequencies = {aa: freq / total_aa for aa, freq in freq_counter.items()}
        
        cmap = plt.get_cmap('viridis')
        norm = plt.Normalize(0, max(frequencies.values()) if frequencies else 1)
        
        n_rows = (len(single_letter_sequence) + max_letters_per_row - 1) // max_letters_per_row
        fig = plt.figure(figsize=(max_letters_per_row * 0.6, n_rows * 1.2 + 0.5))
        
        gs = GridSpec(n_rows + 1, 1, height_ratios=[1] * n_rows + [0.1], hspace=0.3)
        
        for row_idx in range(n_rows):
            start_idx = row_idx * max_letters_per_row
            end_idx = min((row_idx + 1) * max_letters_per_row, len(single_letter_sequence))
            ax = fig.add_subplot(gs[row_idx, 0])
            ax.set_xlim(0, max_letters_per_row)
            ax.set_ylim(0, 1)
            ax.axis('off')
            
            for i, aa in enumerate(single_letter_sequence[start_idx:end_idx]):
                freq = frequencies[aa]
                color = cmap(norm(freq))
                ax.text(i + 0.5, 0.5, aa, ha='center', va='center', fontsize=24, color=color, fontweight='bold')
        
        cbar_ax = fig.add_subplot(gs[-1, 0])
        sm = plt.cm.ScalarMappable(cmap=cmap, norm=norm)
        sm.set_array([])
        cbar = plt.colorbar(sm, cax=cbar_ax, orientation='horizontal')
        cbar.set_label('Frequency', fontsize=12)
        cbar.ax.tick_params(labelsize=12)
        
        plt.suptitle(f"Center residue {bsss}", fontsize=14)
        plt.subplots_adjust(left=0.1, right=0.9, top=0.9, bottom=0.1)
        plt.show()
            
create_sequence_visualizations(df_plot)

Download

To download all the seeds and score files for this entry Click Here!

Q969N2
Q01151