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| import streamlit as st | |
| import pandas as pd | |
| import numpy as np | |
| from tensorflow.keras.models import Sequential | |
| from tensorflow.keras.layers import Dense, Dropout, Activation | |
| # Set up the Streamlit app | |
| st.title('Breast Cancer Prediction') | |
| # Default parameter values | |
| default_values = [17.99, 10.38, 122.8, 1001, 0.1184, 0.2776, 0.3001, 0.1471, 0.2419, 0.07871, | |
| 1.095, 0.9053, 8.589, 153.4, 0.006399, 0.04904, 0.05373, 0.01587, 0.03003, | |
| 0.006193, 25.38, 17.33, 184.6, 2019, 0.1622, 0.6656, 0.7119, 0.2654, 0.4601, 0.1189] | |
| # Create a DataFrame with default parameter values | |
| default_data = pd.DataFrame([default_values], | |
| columns=['radius_mean', 'texture_mean', 'perimeter_mean', 'area_mean', | |
| 'smoothness_mean', 'compactness_mean', 'concavity_mean', | |
| 'concave points_mean', 'symmetry_mean', 'fractal_dimension_mean', | |
| 'radius_se', 'texture_se', 'perimeter_se', 'area_se', 'smoothness_se', | |
| 'compactness_se', 'concavity_se', 'concave points_se', 'symmetry_se', | |
| 'fractal_dimension_se', 'radius_worst', 'texture_worst', 'perimeter_worst', | |
| 'area_worst', 'smoothness_worst', 'compactness_worst', 'concavity_worst', | |
| 'concave points_worst', 'symmetry_worst', 'fractal_dimension_worst']) | |
| # Display the input form with default values | |
| st.subheader('Input Parameters') | |
| user_input = st.form(key='user_input_form') | |
| input_data = user_input.dataframe(default_data) | |
| # Implementing ANN | |
| ann_model = Sequential() | |
| ann_model.add(Dense(16, input_dim=30, activation='relu')) | |
| ann_model.add(Dropout(0.2)) | |
| ann_model.add(Dense(1, activation='sigmoid')) | |
| # Compiling the model | |
| ann_model.compile(loss='binary_crossentropy', optimizer='adam', metrics=['accuracy']) | |
| # Load the saved model weights | |
| ann_model.load_weights('model_weights.h5') | |
| # Make predictions when the 'Predict' button is clicked | |
| if user_input.form_submit_button('Predict'): | |
| input_array = input_data.values.reshape(1, 30) # Convert DataFrame to NumPy array and reshape | |
| prediction = ann_model.predict(input_array) | |
| prediction_label = 'Malignant' if prediction[0] >= 0.5 else 'Benign' | |
| st.subheader('Prediction') | |
| st.write(f'The lesion is predicted to be: {prediction_label}') | |