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from huggingface_hub import from_pretrained_keras
import gradio as gr
from rdkit import Chem, RDLogger
from rdkit.Chem.Draw import MolsToGridImage
import numpy as np
import tensorflow as tf
from tensorflow import keras
import pandas as pd

# Config 
class Featurizer:
    def __init__(self, allowable_sets):
        self.dim = 0
        self.features_mapping = {}
        for k, s in allowable_sets.items():
            s = sorted(list(s))
            self.features_mapping[k] = dict(zip(s, range(self.dim, len(s) + self.dim)))
            self.dim += len(s)

    def encode(self, inputs):
        output = np.zeros((self.dim,))
        for name_feature, feature_mapping in self.features_mapping.items():
            feature = getattr(self, name_feature)(inputs)
            if feature not in feature_mapping:
                continue
            output[feature_mapping[feature]] = 1.0
        return output


class AtomFeaturizer(Featurizer):
    def __init__(self, allowable_sets):
        super().__init__(allowable_sets)

    def symbol(self, atom):
        return atom.GetSymbol()

    def n_valence(self, atom):
        return atom.GetTotalValence()

    def n_hydrogens(self, atom):
        return atom.GetTotalNumHs()

    def hybridization(self, atom):
        return atom.GetHybridization().name.lower()


class BondFeaturizer(Featurizer):
    def __init__(self, allowable_sets):
        super().__init__(allowable_sets)
        self.dim += 1

    def encode(self, bond):
        output = np.zeros((self.dim,))
        if bond is None:
            output[-1] = 1.0
            return output
        output = super().encode(bond)
        return output

    def bond_type(self, bond):
        return bond.GetBondType().name.lower()

    def conjugated(self, bond):
        return bond.GetIsConjugated()


atom_featurizer = AtomFeaturizer(
    allowable_sets={
        "symbol": {"B", "Br", "C", "Ca", "Cl", "F", "H", "I", "N", "Na", "O", "P", "S"},
        "n_valence": {0, 1, 2, 3, 4, 5, 6},
        "n_hydrogens": {0, 1, 2, 3, 4},
        "hybridization": {"s", "sp", "sp2", "sp3"},
    }
)

bond_featurizer = BondFeaturizer(
    allowable_sets={
        "bond_type": {"single", "double", "triple", "aromatic"},
        "conjugated": {True, False},
    }
)

def molecule_from_smiles(smiles):
    # MolFromSmiles(m, sanitize=True) should be equivalent to
    # MolFromSmiles(m, sanitize=False) -> SanitizeMol(m) -> AssignStereochemistry(m, ...)
    molecule = Chem.MolFromSmiles(smiles, sanitize=False)

    # If sanitization is unsuccessful, catch the error, and try again without
    # the sanitization step that caused the error
    flag = Chem.SanitizeMol(molecule, catchErrors=True)
    if flag != Chem.SanitizeFlags.SANITIZE_NONE:
        Chem.SanitizeMol(molecule, sanitizeOps=Chem.SanitizeFlags.SANITIZE_ALL ^ flag)

    Chem.AssignStereochemistry(molecule, cleanIt=True, force=True)
    return molecule


def graph_from_molecule(molecule):
    # Initialize graph
    atom_features = []
    bond_features = []
    pair_indices = []

    for atom in molecule.GetAtoms():
        atom_features.append(atom_featurizer.encode(atom))

        # Add self-loops
        pair_indices.append([atom.GetIdx(), atom.GetIdx()])
        bond_features.append(bond_featurizer.encode(None))

        for neighbor in atom.GetNeighbors():
            bond = molecule.GetBondBetweenAtoms(atom.GetIdx(), neighbor.GetIdx())
            pair_indices.append([atom.GetIdx(), neighbor.GetIdx()])
            bond_features.append(bond_featurizer.encode(bond))

    return np.array(atom_features), np.array(bond_features), np.array(pair_indices)


def graphs_from_smiles(smiles_list):
    # Initialize graphs
    atom_features_list = []
    bond_features_list = []
    pair_indices_list = []

    for smiles in smiles_list:
        molecule = molecule_from_smiles(smiles)
        atom_features, bond_features, pair_indices = graph_from_molecule(molecule)

        atom_features_list.append(atom_features)
        bond_features_list.append(bond_features)
        pair_indices_list.append(pair_indices)

    # Convert lists to ragged tensors for tf.data.Dataset later on
    return (
        tf.ragged.constant(atom_features_list, dtype=tf.float32),
        tf.ragged.constant(bond_features_list, dtype=tf.float32),
        tf.ragged.constant(pair_indices_list, dtype=tf.int64),
    )
  
      
def prepare_batch(x_batch, y_batch):
    """Merges (sub)graphs of batch into a single global (disconnected) graph
    """

    atom_features, bond_features, pair_indices = x_batch

    # Obtain number of atoms and bonds for each graph (molecule)
    num_atoms = atom_features.row_lengths()
    num_bonds = bond_features.row_lengths()

    # Obtain partition indices (molecule_indicator), which will be used to
    # gather (sub)graphs from global graph in model later on
    molecule_indices = tf.range(len(num_atoms))
    molecule_indicator = tf.repeat(molecule_indices, num_atoms)

    # Merge (sub)graphs into a global (disconnected) graph. Adding 'increment' to
    # 'pair_indices' (and merging ragged tensors) actualizes the global graph
    gather_indices = tf.repeat(molecule_indices[:-1], num_bonds[1:])
    increment = tf.cumsum(num_atoms[:-1])
    increment = tf.pad(tf.gather(increment, gather_indices), [(num_bonds[0], 0)])
    pair_indices = pair_indices.merge_dims(outer_axis=0, inner_axis=1).to_tensor()
    pair_indices = pair_indices + increment[:, tf.newaxis]
    atom_features = atom_features.merge_dims(outer_axis=0, inner_axis=1).to_tensor()
    bond_features = bond_features.merge_dims(outer_axis=0, inner_axis=1).to_tensor()

    return (atom_features, bond_features, pair_indices, molecule_indicator), y_batch

        
def MPNNDataset(X, y, batch_size=32, shuffle=False):
    dataset = tf.data.Dataset.from_tensor_slices((X, (y)))
    if shuffle:
        dataset = dataset.shuffle(1024)
    return dataset.batch(batch_size).map(prepare_batch, -1).prefetch(-1)
   
       
model = from_pretrained_keras("keras-io/MPNN-for-molecular-property-prediction")


def predict(smiles, label):
    molecules = [molecule_from_smiles(smiles)]
    input = graphs_from_smiles([smiles])
    label = pd.Series([label])
    test_dataset = MPNNDataset(input, label)
    y_pred = tf.squeeze(model.predict(test_dataset), axis=1)
    legends = [f"y_true/y_pred = {label[i]}/{y_pred[i]:.2f}" for i in range(len(label))]
    MolsToGridImage(molecules, molsPerRow=1, legends=legends, returnPNG=False, subImgSize=(650, 650)).save("img.png")
    return 'img.png'

inputs = [
         gr.Textbox(label='Smiles of molecular'),
         gr.Textbox(label='Molecular permeability')
]

examples = [
            ["CO/N=C(C(=O)N[C@H]1[C@H]2SCC(=C(N2C1=O)C(O)=O)C)/c3csc(N)n3", 0],
            ["[C@H]37[C@H]2[C@@]([C@](C(COC(C1=CC(=CC=C1)[S](O)(=O)=O)=O)=O)(O)[C@@H](C2)C)(C[C@@H]([C@@H]3[C@@]4(C(=CC5=C(C4)C=N[N]5C6=CC=CC=C6)C(=C7)C)C)O)C", 1],
            ["CNCCCC2(C)C(=O)N(c1ccccc1)c3ccccc23", 1],
            ["O.N[C@@H](C(=O)NC1C2CCC(=C(N2C1=O)C(O)=O)Cl)c3ccccc3", 0],
            ["[C@@]4([C@@]3([C@H]([C@H]2[C@@H]([C@@]1(C(=CC(=O)CC1)CC2)C)[C@H](C3)O)CC4)C)(C(COC(C)=O)=O)OC(CC)=O", 1],
            ["[C@]34([C@H](C2[C@@](F)([C@@]1(C(=CC(=O)C=C1)[C@@H](F)C2)C)[C@@H](O)C3)C[C@H]5OC(O[C@@]45C(=O)COC(=O)C6CC6)(C)C)C", 1]
            
]
gr.Interface(
    fn=predict,
    title="Predict blood-brain barrier permeability of molecular",
    description = "Message-passing neural network (MPNN) for molecular property prediction",
    inputs=inputs,
    examples=examples,
    outputs="image",
    article = "Author: <a href=\"https://huggingface.co/vumichien\">Vu Minh Chien</a>. Based on the keras example from <a href=\"https://keras.io/examples/graph/mpnn-molecular-graphs/\">Alexander Kensert</a>",
).launch(debug=False, enable_queue=True)