import streamlit as st import pickle import pandas as pd import numpy as np # Page Title with Style st.markdown( f"""

🩸 Sepsis Prediction App

""", unsafe_allow_html=True ) # Welcome Message with Style (Centered) st.markdown( f"""

👋 Welcome to the Sepsis Prediction App!

""", unsafe_allow_html=True ) # Sepsis Information st.markdown( """ **Sepsis** is a critical medical condition triggered by the body's extreme response to an infection. It can lead to organ failure and, if not detected early, poses a serious threat to life. """ ) # Link to WHO Fact Sheet on Sepsis st.markdown("🔗 **Learn more about sepsis from [World Health Organization (WHO)](https://www.who.int/news-room/fact-sheets/detail/sepsis#:~:text=Overview,problems%20are%20at%20higher%20risk.)**") st.markdown("---") st.image("https://dinizululawgroup.com/wp-content/uploads/2020/07/news.jpg", width=700) # Additional Information for Sample Prediction st.write("📊 To make a sample prediction, you can refer to the training dataset information available in the sidebar.") st.write("💉 Enter the medical data in the input fields below, then click 'Predict Sepsis', and get the patient's Sepsis status prediction.") # About Section with Style st.sidebar.title("ℹī¸ About") st.sidebar.info( "This app predicts sepsis onset using machine learning on medical data, aiding timely intervention by healthcare professionals. " "It utilizes a model trained on a sepsis dataset." ) # Load The Train Dataset train_df = pd.read_csv("Train.csv", index_col=None) # Training Dataset Information in the sidebar st.sidebar.markdown("📊 **Training Dataset Information:**") st.sidebar.write("The model is trained on a sepsis dataset. Here's an overview of the dataset:") st.sidebar.write(train_df.head()) # Auto-expand sidebar code st.markdown( """ """, unsafe_allow_html=True ) # Load the model and key components with open('model_and_key_components.pkl', 'rb') as file: loaded_components = pickle.load(file) loaded_model = loaded_components['model'] loaded_scaler = loaded_components['scaler'] # Data Fields data_fields = { "**PRG**": "**Number of Pregnancies (applicable only to females)**\n - The total number of pregnancies a female patient has experienced.", "**PL**": "**Plasma Glucose Concentration (mg/dL)**\n - The concentration of glucose in the patient's blood). It provides insights into the patient's blood sugar levels.", "**PR**": "**Diastolic Blood Pressure (mm Hg)**\n - The diastolic blood pressure, representing the pressure in the arteries when the heart is at rest between beats.", "**SK**": "**Triceps Skinfold Thickness (mm)**\n - The thickness of the skinfold on the triceps, measured in millimeters (mm). This measurement is often used to assess body fat percentage.", "**TS**": "**2-hour Serum Insulin (mu U/ml)**\n - The level of insulin in the patient's blood two hours after a meal, measured in micro international units per milliliter (mu U/ml).", "**M11**": "**Body Mass Index (BMI) (weight in kg / {(height in m)}^2)**\n - BMI provides a standardized measure that helps assess the degree of body fat and categorizes individuals into different weight status categories, such as underweight, normal weight, overweight, and obesity.", "**BD2**": "**Diabetes pedigree function (mu U/ml)**\n - The function provides information about the patient's family history of diabetes.", "**Age**": "**Age of the Patient (years)**\n - Age is an essential factor in medical assessments and can influence various health outcomes." } # Organize input fields into two columns col1, col2 = st.columns(2) # Initialize input_data dictionary input_data = {} # Function to preprocess input data def preprocess_input_data(input_data): numerical_cols = ['PRG', 'PL', 'PR', 'SK', 'TS', 'M11', 'BD2', 'Age'] input_data_scaled = loaded_scaler.transform([list(input_data.values())]) return pd.DataFrame(input_data_scaled, columns=numerical_cols) # Function to make predictions def make_predictions(input_data_scaled_df): y_pred = loaded_model.predict(input_data_scaled_df) sepsis_mapping = {0: 'Negative', 1: 'Positive'} return sepsis_mapping[y_pred[0]] # Input Data Fields in two columns with col1: input_data["PRG"] = st.slider("PRG: Number of Pregnancies", 0, 20, 0) input_data["PL"] = st.number_input("PL: Plasma Glucose Concentration (mg/dL)", value=0.0) input_data["PR"] = st.number_input("PR: Diastolic Blood Pressure (mm Hg)", value=0.0) input_data["SK"] = st.number_input("SK: Triceps Skinfold Thickness (mm)", value=0.0) with col2: input_data["TS"] = st.number_input("TS: 2-Hour Serum Insulin (mu U/ml)", value=0.0) input_data["M11"] = st.number_input("M11: Body Mass Index (BMI)", value=0.0) input_data["BD2"] = st.number_input("BD2: Diabetes Pedigree Function (mu U/ml)", value=0.0) input_data["Age"] = st.slider("Age: Age of the patient (years)", 0, 100, 0) # Predict Button with Style if st.button("🔮 Predict Sepsis"): try: input_data_scaled_df = preprocess_input_data(input_data) sepsis_status = make_predictions(input_data_scaled_df) # Display the sepsis prediction if sepsis_status == 'Negative': st.success(f"The predicted sepsis status is: {sepsis_status}") elif sepsis_status == 'Positive': st.error(f"The predicted sepsis status is: {sepsis_status}") # Add the sepsis prediction to the input DataFrame input_data['Sepsis'] = sepsis_status # Convert the input data to a pandas DataFrame input_df = pd.DataFrame([input_data]) # Display the input DataFrame st.markdown( f"""

Input Data with Sepsis Prediction

""", unsafe_allow_html=True ) st.table(input_df) except Exception as e: st.error(f"An error occurred: {e}") # Display Data Fields and Descriptions st.sidebar.title("🔍 Data Fields") for field, description in data_fields.items(): st.sidebar.markdown(f"{field}: {description}") # Copyright statement at the bottom st.markdown( """
Developed by Rasmo Wanyama.
""", unsafe_allow_html=True ) st.stop()