AMP-Classifier / app.py
nonzeroexit's picture
Update app.py
dba0066 verified
raw
history blame
4.79 kB
import gradio as gr
import joblib
import numpy as np
import pandas as pd
from propy import AAComposition, Autocorrelation, CTD, PseudoAAC
from sklearn.preprocessing import MinMaxScaler
# Load model and scaler
model = joblib.load("RF.joblib")
scaler = joblib.load("norm (1).joblib")
# Feature list (KEEP THIS CONSISTENT)
selected_features = [
"_SolventAccessibilityC3", "_SecondaryStrC1", "_SecondaryStrC3", "_ChargeC1", "_PolarityC1",
"_NormalizedVDWVC1", "_HydrophobicityC3", "_SecondaryStrT23", "_PolarizabilityD1001",
"_PolarizabilityD2001", "_PolarizabilityD3001", "_SolventAccessibilityD1001",
"_SolventAccessibilityD2001", "_SolventAccessibilityD3001", "_SecondaryStrD1001",
"_SecondaryStrD1075", "_SecondaryStrD2001", "_SecondaryStrD3001", "_ChargeD1001",
"_ChargeD1025", "_ChargeD2001", "_ChargeD3075", "_ChargeD3100", "_PolarityD1001",
"_PolarityD1050", "_PolarityD2001", "_PolarityD3001", "_NormalizedVDWVD1001",
"_NormalizedVDWVD2001", "_NormalizedVDWVD2025", "_NormalizedVDWVD2050", "_NormalizedVDWVD3001",
"_HydrophobicityD1001", "_HydrophobicityD2001", "_HydrophobicityD3001", "_HydrophobicityD3025",
"A", "R", "D", "C", "E", "Q", "H", "I", "M", "P", "Y", "V",
"AR", "AV", "RC", "RL", "RV", "CR", "CC", "CL", "CK", "EE", "EI", "EL",
"HC", "IA", "IL", "IV", "LA", "LC", "LE", "LI", "LT", "LV", "KC", "MA",
"MS", "SC", "TC", "TV", "YC", "VC", "VE", "VL", "VK", "VV",
"MoreauBrotoAuto_FreeEnergy30", "MoranAuto_Hydrophobicity2", "MoranAuto_Hydrophobicity4",
"GearyAuto_Hydrophobicity20", "GearyAuto_Hydrophobicity24", "GearyAuto_Hydrophobicity26",
"GearyAuto_Hydrophobicity27", "GearyAuto_Hydrophobicity28", "GearyAuto_Hydrophobicity29",
"GearyAuto_Hydrophobicity30", "GearyAuto_AvFlexibility22", "GearyAuto_AvFlexibility26",
"GearyAuto_AvFlexibility27", "GearyAuto_AvFlexibility28", "GearyAuto_AvFlexibility29",
"GearyAuto_AvFlexibility30", "GearyAuto_Polarizability22", "GearyAuto_Polarizability24",
"GearyAuto_Polarizability25", "GearyAuto_Polarizability27", "GearyAuto_Polarizability28",
"GearyAuto_Polarizability29", "GearyAuto_Polarizability30", "GearyAuto_FreeEnergy24",
"GearyAuto_FreeEnergy25", "GearyAuto_FreeEnergy30", "GearyAuto_ResidueASA21",
"GearyAuto_ResidueASA22", "GearyAuto_ResidueASA23", "GearyAuto_ResidueASA24",
"GearyAuto_ResidueASA30", "GearyAuto_ResidueVol21", "GearyAuto_ResidueVol24",
"GearyAuto_ResidueVol25", "GearyAuto_ResidueVol26", "GearyAuto_ResidueVol28",
"GearyAuto_ResidueVol29", "GearyAuto_ResidueVol30", "GearyAuto_Steric18",
"GearyAuto_Steric21", "GearyAuto_Steric26", "GearyAuto_Steric27", "GearyAuto_Steric28",
"GearyAuto_Steric29", "GearyAuto_Steric30", "GearyAuto_Mutability23", "GearyAuto_Mutability25",
"GearyAuto_Mutability26", "GearyAuto_Mutability27", "GearyAuto_Mutability28",
"GearyAuto_Mutability29", "GearyAuto_Mutability30", "APAAC1", "APAAC4", "APAAC5",
"APAAC6", "APAAC8", "APAAC9", "APAAC12", "APAAC13", "APAAC15", "APAAC18", "APAAC19",
"APAAC24"
]
def extract_features(sequence):
dipeptide_features = AAComposition.CalculateAADipeptideComposition(sequence)
# 2. Calculate other features
auto_features = Autocorrelation.CalculateAutoTotal(sequence)
ctd_features = CTD.CalculateCTD(sequence)
pseudo_features = PseudoAAC.GetAPseudoAAC(sequence)
all_features = {**auto_features, **ctd_features, **pseudo_features,**dipeptide_features}
all_features = list(all_features.values())
all_features = np.array(all_features).reshape(-1, 1) #Correct shape
normalized_features = scaler.transform(all_features.T)
normalized_features = normalized_features.flatten()
selected_feature_dict = {feature: normalized_features[i] for i, feature in enumerate(selected_features) if feature in all_features}
selected_feature_df = pd.DataFrame([selected_feature_dict])
selected_feature_array = selected_feature_df.T.to_numpy()
return selected_feature_array
def predict(sequence):
"""Predicts whether the input sequence is an AMP."""
features = extract_features(sequence)
if features is None:
return "Error: Could not extract features."
prediction = model.predict(features)[0]
probabilities = model.predict_proba(features)[0]
if prediction == 0:
return f"{probabilities[0] * 100:.2f}% chance of being an Antimicrobial Peptide (AMP)"
else:
return f"{probabilities[1] * 100:.2f}% chance of being Non-AMP"
# Gradio interface
iface = gr.Interface(
fn=predict,
inputs=gr.Textbox(label="Enter Protein Sequence"),
outputs=gr.Label(label="Prediction"),
title="AMP Classifier",
description="Enter an amino acid sequence (e.g., FLPVLAGGL) to predict AMP."
)
iface.launch(share=True)