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import gradio as gr
import pandas as pd
import numpy as np
import pyarrow.parquet as pq
from sklearn.preprocessing import OneHotEncoder, MinMaxScaler
from sklearn.ensemble import RandomForestClassifier, AdaBoostClassifier
from sklearn.model_selection import train_test_split, cross_val_score, StratifiedKFold, RepeatedStratifiedKFold
from sklearn.metrics import (
    confusion_matrix, classification_report,
    precision_score, recall_score, f1_score,
    accuracy_score, balanced_accuracy_score, matthews_corrcoef,
    roc_auc_score, auc
)
from sklearn.utils.class_weight import compute_sample_weight
from sklearn.naive_bayes import GaussianNB
from sklearn.svm import SVC
from sklearn.linear_model import LogisticRegression
from sklearn.metrics import brier_score_loss
from sklearn.calibration import calibration_curve, CalibratedClassifierCV
from sklearn.linear_model import LinearRegression
import xgboost as xgb
import matplotlib.pyplot as plt
import warnings
warnings.filterwarnings('ignore')

training_data = None
column_names  = None
test_list     = []

DEFAULT_N_BOOT_CI = 1000


def calibrate_probabilities_undersampling(p_s, beta):
  
    p_s         = np.asarray(p_s, dtype=float)
    numerator   = beta * p_s
    denominator = np.maximum((beta - 1.0) * p_s + 1.0, 1e-10)
    return np.clip(numerator / denominator, 0.0, 1.0)


def bootstrap_ci_from_oof(
    point_estimate: float,
    oof_probs: np.ndarray,
    n_boot: int = DEFAULT_N_BOOT_CI,
    confidence: float = 0.95,
    random_state: int = 42,
) -> tuple:
 
    if oof_probs is None or len(oof_probs) == 0:
        return float(point_estimate), float(point_estimate)

    oof_probs  = np.asarray(oof_probs, dtype=float)
    rng        = np.random.RandomState(random_state)
    grand_mean = np.mean(oof_probs)
    n          = len(oof_probs)

    boot_means = np.array([
        np.mean(rng.choice(oof_probs, size=n, replace=True))
        for _ in range(n_boot)
    ])

    shift      = point_estimate - grand_mean
    boot_means = boot_means + shift

    alpha = 1.0 - confidence
    lo = float(np.clip(np.percentile(boot_means, 100 * alpha / 2),       0.0, 1.0))
    hi = float(np.clip(np.percentile(boot_means, 100 * (1 - alpha / 2)), 0.0, 1.0))
    return lo, hi


def compute_efs_ci(
    p_dwogf: float,
    p_gf: float,
    oof_dwogf: np.ndarray,
    oof_gf: np.ndarray,
    n_boot: int = DEFAULT_N_BOOT_CI,
) -> tuple:
    """
    EFS = 1 - P(DWOGF) - P(GF).
    Bootstrap CI uses the same shifted-percentile approach from the first
    codebase, with DWOGF and GF bootstrapped jointly (matching lengths).
    """
    p_efs = float(np.clip(1.0 - p_dwogf - p_gf, 0.0, 1.0))

    if oof_dwogf is None or oof_gf is None:
        return p_efs, p_efs, p_efs

    oof_dwogf = np.asarray(oof_dwogf, dtype=float)
    oof_gf    = np.asarray(oof_gf,    dtype=float)

    n_min       = min(len(oof_dwogf), len(oof_gf))
    oof_dwogf   = oof_dwogf[:n_min]
    oof_gf      = oof_gf[:n_min]

    rng         = np.random.RandomState(42)
    grand_dwogf = np.mean(oof_dwogf)
    grand_gf    = np.mean(oof_gf)
    shift_dwogf = p_dwogf - grand_dwogf
    shift_gf    = p_gf    - grand_gf

    efs_boot = np.array([
        np.clip(
            1.0
            - (np.mean(rng.choice(oof_dwogf, size=n_min, replace=True)) + shift_dwogf)
            - (np.mean(rng.choice(oof_gf,    size=n_min, replace=True)) + shift_gf),
            0.0, 1.0,
        )
        for _ in range(n_boot)
    ])

    alpha  = 0.05
    efs_lo = float(np.percentile(efs_boot, 100 * alpha / 2))
    efs_hi = float(np.percentile(efs_boot, 100 * (1 - alpha / 2)))
    return p_efs, efs_lo, efs_hi



def rand_for(neww_list, x_te, rf, lab, x_tr, actual, paramss,
             X_Tempp, enco, my_table_str, my_table_num, tabl, tracount):
    cl_list  = []
    pro_list = []

    for i in neww_list:
        dff_copy = i.copy()
        y_cl     = dff_copy.loc[:, lab]
        x_te     = pd.DataFrame(x_te, columns=X_Tempp.columns)

        if tracount == 0:
            mm = RandomForestClassifier(
                n_estimators=100, criterion='entropy', max_features=None,
                random_state=42, bootstrap=True, oob_score=True,
                class_weight='balanced', ccp_alpha=0.01
            )
            calibrated_rf = CalibratedClassifierCV(estimator=mm, method='isotonic', cv=5)
            calibrated_rf.fit(dff_copy.drop([lab], axis=1), y_cl)
            out   = calibrated_rf.predict(x_te)
            probs = calibrated_rf.predict_proba(x_te)[:, 1]

        elif tracount == 1:
            dtrain = xgb.DMatrix(dff_copy.drop([lab], axis=1).to_numpy(), label=y_cl)
            dtest  = xgb.DMatrix(x_te.to_numpy())
            params = {
                'objective': 'binary:logistic', 'eval_metric': 'logloss',
                'max_depth': 60, 'eta': 0.1,
                'subsample': 0.8, 'colsample_bytree': 0.8, 'seed': 42
            }
            mm    = xgb.train(params, dtrain, 100)
            probs = mm.predict(dtest)
            out   = (probs > 0.5).astype(int)

        elif tracount == 5:
            mm = LogisticRegression(penalty='l2', solver='newton-cholesky', max_iter=200)
            mm.fit(dff_copy.drop([lab], axis=1), y_cl)
            out   = mm.predict(x_te)
            probs = mm.predict_proba(x_te)[:, 1]

        elif tracount == 4:
            mm = GaussianNB(var_smoothing=1e-9)
            mm.fit(dff_copy.drop([lab], axis=1), y_cl)
            out   = mm.predict(x_te)
            probs = mm.predict_proba(x_te)[:, 1]

        elif tracount == 6:
            mm = SVC(probability=True, C=3)
            mm.fit(dff_copy.drop([lab], axis=1), y_cl)
            out   = mm.predict(x_te)
            probs = mm.predict_proba(x_te)[:, 1]

        cl_list.append(out)
        pro_list.append(probs)

    return cl_list, pro_list


def ne_calib(some_prob, down_factor, origin_factor):
    aa      = some_prob * origin_factor / down_factor
    denone  = (1 - some_prob) * (1 - origin_factor) / (1 - down_factor)
    return aa / (denone + aa)


def actualll(sl_list, pro_list, delt, down_factor, origin_factor):
    ac_list            = []
    probab_list        = []
    second_probab_list = []

    for i in range(len(sl_list[0])):
        sum_val     = 0
        sum_pro     = 0
        sum_pro_pro = 0

        for j in range(len(sl_list)):
            sum_pro     += ne_calib(pro_list[j][i], down_factor, origin_factor)
            sum_pro_pro += pro_list[j][i]
            sum_val     += sl_list[j][i]

        sum_val     /= len(sl_list)
        sum_pro     /= len(sl_list)
        sum_pro_pro /= len(sl_list)

        if sum_val >= delt:
            ac_list.append(1)
            probab_list.append(sum_pro)
            second_probab_list.append(sum_pro_pro)
        elif 0 <= sum_val < delt:
            ac_list.append(0)
            probab_list.append(1 - sum_pro)
            second_probab_list.append(1 - sum_pro_pro)
        else:
            ac_list.append(0)
            probab_list.append(sum_pro)
            second_probab_list.append(sum_pro_pro)

    return ac_list, probab_list, second_probab_list


def sli_mod(c_lisy):
    sli_list = []
    for i in c_lisy:
        k         = np.array(i, dtype=float)
        k[k <  0.5] = -1
        k[k >= 0.5] =  1
        sli_list.append(list(k))
    return sli_list


def run_model(x_tr, x_te, y_tr, deltaa, lab, rf, X_Tempp, track,
              actual, paramss, enco, my_table_str, my_table_num, tabl,
              tracount, origin_factor):

    x_tr = pd.DataFrame(x_tr, columns=X_Tempp.columns)
    y_tr = pd.DataFrame(y_tr, columns=[test_list[track]])
    master_table  = pd.concat([x_tr, y_tr], axis=1).copy()

    only_minority = master_table.loc[master_table[lab] == 1]
    only_majority = master_table.drop(only_minority.index)
    min_index     = only_minority.index
    max_index     = only_majority.index

    df_list     = []
    down_factor = 0

    if len(min_index) <= 60:
        for i in range(20):
            np.random.seed(i + 30)
            if test_list[track] in ('VOD', 'STROKEHI'):
                sampled_array = np.random.choice(max_index, size=int(3 * len(min_index)), replace=True)
                down_factor   = 0.25
            elif test_list[track] == 'ACSPSHI':
                sampled_array = np.random.choice(max_index, size=int(2.5 * len(min_index)), replace=True)
                down_factor   = 1 / (1 + 2.5)
            else:
                sampled_array = np.random.choice(max_index, size=int(2 * len(min_index)), replace=True)
                down_factor   = 1 / (1 + 2)
            df_list.append(pd.concat([only_majority.loc[sampled_array], only_minority]))
    else:
        for i in range(10):
            np.random.seed(i + 30)
            sampled_array = np.random.choice(max_index, size=int(3 * len(min_index)), replace=True)
            down_factor   = 1 / (1 + 3)
            df_list.append(pd.concat([only_majority.loc[sampled_array], only_minority]))

    c_lisy, pro_lisy   = rand_for(df_list, x_te, rf, lab, x_tr, actual, paramss,
                                   X_Tempp, enco, my_table_str, my_table_num, tabl, tracount)
    sli_lisy           = sli_mod(c_lisy)
    a_lisy, probab_lisy, secondlisy = actualll(sli_lisy, pro_lisy, deltaa, down_factor, origin_factor)
    return a_lisy, probab_lisy, secondlisy


def load_training_data():
    global training_data, column_names, test_list

    try:
        my_table = pq.read_table('year6.parquet').to_pandas()
        print(my_table['YEARGPF'].value_counts())
        my_table = my_table[my_table['YEARGPF'] != '< 2008'].reset_index(drop=True)

        pa           = pd.read_csv('final_variable.csv')
        pali         = list(pa.iloc[:, 0])
        print(pali)

        training_data = my_table
        column_names  = pali
    except FileNotFoundError:
        return "No training Data"



def train_and_evaluate(input_file):
    global training_data, column_names, test_list

    if training_data is None or column_names is None:
        load_training_data()

    if input_file is None:
        return None, None, None

    try:
        input_data = pd.read_csv(input_file.name)

        available_features       = [col for col in column_names if col in training_data.columns]
        available_features_input = [col for col in available_features if col in input_data.columns]

        if not available_features_input:
            return "Error: No matching columns found between datasets", None, None

  
        base_outcome_cols = ['DEAD', 'GF', 'AGVHD', 'CGVHD', 'VOCPSHI', 'STROKEHI']
        efs_outcomes      = ['DWOGF', 'GF']            # needed for EFS calculation
        all_model_outcomes = base_outcome_cols.copy()
        if 'DWOGF' not in all_model_outcomes:
            all_model_outcomes.append('DWOGF')          # train DWOGF model too

        test_list = all_model_outcomes.copy()

        total_cols = available_features + all_model_outcomes
        inter_df   = training_data[total_cols].dropna().reset_index(drop=True)

        input_data  = input_data[input_data['YEARGPF'] != '< 2008'].reset_index(drop=True)
        inter_input = input_data[total_cols].dropna().reset_index(drop=True)

        my_table = inter_df[available_features]
        X_input  = inter_input[available_features][my_table.columns]
        my_test  = X_input

       
        li1 = ['Yes', 'No']
        cols_yes_no_train = [col for col in my_table.columns if my_table[col].isin(li1).all()]
        my_ye_train       = my_table[cols_yes_no_train].replace({'Yes': 1, 'No': 0}).astype('int64')
        my_table_modify   = pd.concat([my_table.drop(cols_yes_no_train, axis=1), my_ye_train], axis=1)
        my_table_str      = my_table_modify.select_dtypes(exclude=['number'])
        my_table_num      = my_table_modify.select_dtypes(include=['number'])

       
        cols_yes_no_test = [col for col in my_test.columns if my_test[col].isin(li1).all()]
        my_ye_test       = my_test[cols_yes_no_test].replace({'Yes': 1, 'No': 0}).astype('int64')
        my_test_modify   = pd.concat([my_test.drop(cols_yes_no_test, axis=1), my_ye_test], axis=1)
        my_test_str_raw  = my_test_modify.select_dtypes(exclude=['number'])
        my_test_num      = my_test_modify.select_dtypes(include=['number'])

        
        df_combined = pd.concat([my_table_str, my_test_str_raw], axis=0, ignore_index=True)
        enco        = OneHotEncoder(sparse_output=False, handle_unknown='ignore')
        encoded     = enco.fit_transform(df_combined)
        encoded_df  = pd.DataFrame(encoded, columns=enco.get_feature_names_out())

        tabl           = encoded_df.iloc[:len(my_table_str)].reset_index(drop=True)
        X_train_full   = pd.concat([tabl, my_table_num], axis=1)
        my_test_str    = encoded_df.iloc[len(my_table_str):].reset_index(drop=True)
        my_test_real   = pd.concat([my_test_str, my_test_num], axis=1)

        
        outcome_display_names = {
            'DEAD':     'Overall Survival',       
            'GF':       'Graft Failure',
            'AGVHD':    'Acute GVHD',
            'CGVHD':    'Chronic GVHD',
            'VOCPSHI':  'Vaso-Occlusive Crisis Post-HCT',
            'STROKEHI': 'Stroke Post-HCT',
            'DWOGF':    'Death Without Graft Failure',  
        }

    
        all_pred_proba  = {}   
        all_pred_labels = {}   
        all_y_test      = {}   

        metrics_results     = []
        calibration_results = []
        calibration_plots   = []

        for i, outcome_col in enumerate(all_model_outcomes):
            if outcome_col not in training_data.columns:
                print(f"Warning: {outcome_col} not in training data, skipping.")
                continue

            y_train_series = inter_df[outcome_col]
            amaj           = y_train_series.value_counts().idxmax()
            amin           = y_train_series.value_counts().idxmin()
            y_train        = y_train_series.replace({amin: 1, amaj: 0}).astype(int).values

            y_test_series  = inter_input[outcome_col]
            amaj           = y_test_series.value_counts().idxmax()
            amin           = y_test_series.value_counts().idxmin()
            y_test         = y_test_series.replace({amin: 1, amaj: 0}).astype(int).values

            vddc     = float(np.sum(y_train == 1)) / len(y_train)
            deltaa   = 0.2
            rf       = RandomForestClassifier()
            paramss  = {}
            tracount = 0

            y_pred, y_pred_proba, _ = run_model(
                X_train_full.values, my_test_real.values, y_train,
                deltaa, outcome_col, rf, X_train_full, i,
                tabl, paramss, enco, my_table_str, my_table_num, tabl,
                tracount, vddc
            )

            y_pred       = np.array(y_pred)
            y_pred_proba = np.array(y_pred_proba)

            all_pred_proba[outcome_col]  = y_pred_proba
            all_pred_labels[outcome_col] = y_pred
            all_y_test[outcome_col]      = y_test

           
            if outcome_col == 'DWOGF':
                continue   

            outcome_name = outcome_display_names.get(outcome_col, outcome_col)

            accuracy     = accuracy_score(y_test, y_pred)
            balanced_acc = balanced_accuracy_score(y_test, y_pred)
            precision    = precision_score(y_test, y_pred, average='weighted', zero_division=0)
            recall       = recall_score(y_test, y_pred, average='weighted', zero_division=0)
            auc_score    = roc_auc_score(y_test, y_pred_proba)

            metrics_results.append([
                outcome_name,
                f"{accuracy:.3f}", f"{balanced_acc:.3f}",
                f"{precision:.3f}", f"{recall:.3f}", f"{auc_score:.3f}"
            ])

            fraction_pos, mean_pred = calibration_curve(y_test, y_pred_proba, n_bins=10)
            if len(mean_pred) > 1:
                slope     = np.polyfit(mean_pred, fraction_pos, 1)[0]
                intercept = np.polyfit(mean_pred, fraction_pos, 1)[1]
            else:
                slope, intercept = 1.0, 0.0

            calibration_results.append([outcome_name, f"{slope:.3f}", f"{intercept:.3f}"])

            fig, ax = plt.subplots(figsize=(8, 6))
            ax.plot([0, 1], [0, 1], 'k--', label='Perfect Calibration')
            ax.plot(mean_pred, fraction_pos, 'o-', label=outcome_name)
            ax.set_xlabel('Mean Predicted Probability')
            ax.set_ylabel('Fraction of Positives')
            ax.set_title(f'Calibration Plot – {outcome_name}')
            ax.legend()
            ax.grid(True, alpha=0.3)
            plt.tight_layout()
            calibration_plots.append(fig)

        
        if 'DWOGF' in all_pred_proba and 'GF' in all_pred_proba:
            proba_dwogf = all_pred_proba['DWOGF']   # test-set probabilities
            proba_gf    = all_pred_proba['GF']

         
            efs_probs = np.clip(1.0 - proba_dwogf - proba_gf, 0.0, 1.0)

         
            p_efs_point = float(np.mean(efs_probs))

            p_efs, efs_lo, efs_hi = compute_efs_ci(
                p_dwogf  = float(np.mean(proba_dwogf)),
                p_gf     = float(np.mean(proba_gf)),
                oof_dwogf = proba_dwogf,
                oof_gf    = proba_gf,
                n_boot    = DEFAULT_N_BOOT_CI,
            )

            print(
                f"\nEvent-Free Survival (EFS):  {p_efs:.3f}  "
                f"[95% CI: {efs_lo:.3f}{efs_hi:.3f}]"
            )

          
            if 'DWOGF' in all_y_test and 'GF' in all_y_test:
                n_min_efs   = min(len(all_y_test['DWOGF']), len(all_y_test['GF']))
                y_efs_true  = np.clip(
                    all_y_test['DWOGF'][:n_min_efs] + all_y_test['GF'][:n_min_efs],
                    0, 1
                )
                # Survival probability = 1 – event probability
                efs_probs_aligned = efs_probs[:n_min_efs]

                if len(np.unique(y_efs_true)) > 1:
                    try:
                        fraction_pos_efs, mean_pred_efs = calibration_curve(
                            y_efs_true, 1.0 - efs_probs_aligned, n_bins=10
                        )
                        if len(mean_pred_efs) > 1:
                            slope_efs     = np.polyfit(mean_pred_efs, fraction_pos_efs, 1)[0]
                            intercept_efs = np.polyfit(mean_pred_efs, fraction_pos_efs, 1)[1]
                        else:
                            slope_efs, intercept_efs = 1.0, 0.0

                        calibration_results.insert(
                            0,
                            ["Event-Free Survival", f"{slope_efs:.3f}", f"{intercept_efs:.3f}"]
                        )

                        fig_efs, ax_efs = plt.subplots(figsize=(8, 6))
                        ax_efs.plot([0, 1], [0, 1], 'k--', label='Perfect Calibration')
                        ax_efs.plot(mean_pred_efs, fraction_pos_efs, 'o-',
                                    color='darkorange', label='Event-Free Survival')
                        ax_efs.set_xlabel('Mean Predicted Probability')
                        ax_efs.set_ylabel('Fraction of Positives')
                        ax_efs.set_title('Calibration Plot – Event-Free Survival')
                        ax_efs.legend()
                        ax_efs.grid(True, alpha=0.3)
                        plt.tight_layout()
                        calibration_plots.insert(0, fig_efs)   # show EFS plot first
                    except Exception as e:
                        print(f"Warning: EFS calibration curve failed: {e}")

            # Add EFS row to metrics (AUC over EFS-event probability)
            if 'DWOGF' in all_y_test and 'GF' in all_y_test:
                try:
                    n_min_efs  = min(len(all_y_test['DWOGF']), len(all_y_test['GF']))
                    y_efs_true = np.clip(
                        all_y_test['DWOGF'][:n_min_efs] + all_y_test['GF'][:n_min_efs],
                        0, 1
                    )
                    efs_event_prob = 1.0 - efs_probs[:n_min_efs]

                    # Binary labels from EFS probabilities
                    efs_pred_labels = (efs_event_prob >= 0.5).astype(int)

                    accuracy_efs     = accuracy_score(y_efs_true, efs_pred_labels)
                    bal_acc_efs      = balanced_accuracy_score(y_efs_true, efs_pred_labels)
                    precision_efs    = precision_score(y_efs_true, efs_pred_labels,
                                                       average='weighted', zero_division=0)
                    recall_efs       = recall_score(y_efs_true, efs_pred_labels,
                                                    average='weighted', zero_division=0)
                    auc_efs          = roc_auc_score(y_efs_true, efs_event_prob) \
                                       if len(np.unique(y_efs_true)) > 1 else float('nan')

                    metrics_results.insert(0, [
                        "Event-Free Survival",
                        f"{accuracy_efs:.3f}", f"{bal_acc_efs:.3f}",
                        f"{precision_efs:.3f}", f"{recall_efs:.3f}", f"{auc_efs:.3f}"
                    ])
                except Exception as e:
                    print(f"Warning: EFS metrics computation failed: {e}")

      
        metrics_df     = pd.DataFrame(
            metrics_results,
            columns=['Outcome', 'Accuracy', 'Balanced Accuracy', 'Precision', 'Recall', 'AUC']
        )
        calibration_df = pd.DataFrame(
            calibration_results,
            columns=['Outcome', 'Slope', 'Intercept']
        )

        return metrics_df, calibration_df, calibration_plots

    except Exception as e:
        import traceback
        traceback.print_exc()
        return f"Error processing data: {str(e)}", None, None




def create_interface():
    load_training_data()

    with gr.Blocks(
        css="""
        .gradio-container { max-width: none !important; height: 100vh; overflow-y: auto; }
        .main-container  { padding: 20px; }
        .big-title       { font-size: 2.5em; font-weight: bold; margin-bottom: 30px; text-align: center; }
        .section-title   { font-size: 2em;   font-weight: bold; margin: 40px 0 20px 0; color: #2d5aa0; }
        .subsection-title{ font-size: 1.5em; font-weight: bold; margin: 30px 0 15px 0; color: #4a4a4a; }
        """,
        title="ML Model Evaluation Pipeline"
    ) as demo:

        with gr.Column(elem_classes=["main-container"]):
            gr.HTML('<div class="big-title">Input</div>')
            gr.Markdown("### Please upload the dataset:")
            file_input = gr.File(label="Upload Dataset (CSV)", file_types=[".csv"], type="filepath")
            process_btn = gr.Button("Process Dataset", variant="primary", size="lg")

            gr.HTML('<div class="section-title">Outputs</div>')

            gr.HTML('<div class="subsection-title">Metrics</div>')
            metrics_table = gr.Dataframe(
                headers=["Outcome", "Accuracy", "Balanced Accuracy", "Precision", "Recall", "AUC"],
                interactive=False, wrap=True
            )

            gr.HTML('<div class="subsection-title">Calibration</div>')
            calibration_table = gr.Dataframe(
                headers=["Outcome", "Slope", "Intercept"],
                interactive=False, wrap=True
            )

            gr.Markdown("#### Calibration Curves")

            # One plot per reportable outcome: EFS first, then the six base outcomes
            plot_efs      = gr.Plot(label="Event-Free Survival")
            plot_os       = gr.Plot(label="Overall Survival")
            plot_gf       = gr.Plot(label="Graft Failure")
            plot_agvhd    = gr.Plot(label="Acute GVHD")
            plot_cgvhd    = gr.Plot(label="Chronic GVHD")
            plot_voc      = gr.Plot(label="Vaso-Occlusive Crisis Post-HCT")
            plot_stroke   = gr.Plot(label="Stroke Post-HCT")

            plots = [plot_efs, plot_os, plot_gf, plot_agvhd, plot_cgvhd, plot_voc, plot_stroke]

            def process_and_display(file):
                metrics_df, calibration_df, calibration_plots = train_and_evaluate(file)

                if isinstance(metrics_df, str):   # error string
                    return (metrics_df, None) + tuple([None] * 7)

                plot_outputs = [None] * 7
                if calibration_plots:
                    for i, plot in enumerate(calibration_plots[:7]):
                        plot_outputs[i] = plot

                return (metrics_df, calibration_df, *plot_outputs)

            process_btn.click(
                fn=process_and_display,
                inputs=[file_input],
                outputs=[metrics_table, calibration_table] + plots
            )

    return demo


if __name__ == "__main__":
    demo = create_interface()
    demo.launch(share=True, inbrowser=True, height=800, show_error=True)