Your cart

Your Wishlist

Categories

📞 Working Hours: 9:30 AM to 6:30 PM (Mon-Sat) | +91 9739594609 | 🟢 WhatsApp

⏰ 9:30 AM - 6:30 PM |

Classification and Counting of Mycobacterium Tuberculosis from Sputum Microscopic Image using Fuzzy Logic
YouTube Video
Product Image
Product Preview

Advanced Health Monitoring System for Real Time Patient Tracking

Category: IoT Projects

Price: ₹ 11900 ₹ 14000 15% OFF

ABSTRACT
The advancement of web technologies and machine learning has revolutionized modern healthcare by enabling intelligent, real-time health monitoring systems. This project presents a smart health monitoring system using the Flask web framework, MySQL database, and machine learning models for predictive diagnostics. The system collects physiological parameters such as ECG, heart rate, SpO2, temperature, and sound from sensors, processes them through trained models, and provides health condition predictions. A secure user authentication mechanism using hashed passwords ensures user data privacy, and a role-based access system categorizes users into admin, doctor, and normal user types. Each user role has access to specific functionalities: admins manage users and view real-time data, doctors monitor patients and their prediction history, while users input or receive sensor data and view their own reports. The machine learning models are serialized using joblib and loaded into the Flask backend for real-time inference. Inputs are normalized using pre-fitted scalers and classified into categories such as normal, abnormal, or critical for each health parameter. The system includes a /realtime module that fetches the latest sensor reading from the database and performs automated prediction without manual input. Data sent via the /receive endpoint is automatically stored and used for detection, making it compatible with IoT sensor integration. The entire workflow, from data acquisition to prediction and storage, is seamless and automated. Results are stored in a structured MySQL table and displayed back to users through HTML templates rendered with Flask. Additionally, all user interactions and predictions are logged, allowing doctors to access patient history and assess trends. This application improves early detection of health risks, especially in remote or under-resourced environments. It reduces dependence on manual monitoring and supports proactive healthcare delivery. Its modular design allows for future enhancements such as integration with wearable devices, cloud storage, live alerts, and mobile applications. This smart health system offers a practical and scalable solution for remote patient monitoring using real-time data and machine learning.


OBJECTIVES
a. To develop a real-time health monitoring system that collects vital parameters such as ECG, heart rate, SpO₂, temperature, and ambient sound using IoT devices or manual input.
b. To implement machine learning models capable of accurately classifying the physiological data into diagnostic categories such as normal, abnormal, or critical, enabling early detection of health issues.
c. To build a secure, role-based web application using Flask, where users, doctors, and admins have differentiated access to functionalities such as data input, analysis, report viewing, and user management.
d. To enable real-time predictions by integrating an automatic /realtime route that fetches the latest sensor values and instantly provides health insights to the user and stores them in the database.
e. To ensure secure data handling and accessibility, using techniques such as password hashing, session management, and structured database storage to protect user data and maintain system integrity.

block-diagram

• Demo Video
• Complete project
• Full project report
• Source code
• Complete project support by online
• Life time access
• Execution Guidelines
• Immediate (Download)

Hardware Requirements:
ECG sensor module

Heart rate sensor (Pulse sensor or MAX30100/MAX30102)

SpO₂ sensor

Temperature sensor (e.g., LM35, DHT11)

Sound detection sensor

Microcontroller (e.g., Arduino/ESP32/NodeMCU)

Wi-Fi module (if not built-in)

Power supply or battery

Cables, breadboard, resistors, etc.

Software Requirements:
Python 3.x

Flask (Web framework)

MySQL (Database)

HTML/CSS (Frontend templates)

Scikit-learn (for ML models)

Joblib (for model serialization)

SQLAlchemy (optional ORM)

AJAX/JavaScript (for real-time updates)

Postman (for API testing)

Immediate Download:
1. Synopsis
2. Rough Report
3. Software code
4. Technical support

Hardware Kit Delivery:
1. Hardware kit will deliver 4-10 working days (based on state and city)
2. Packing and shipping changes applicable (based on kit size, state ,city)

Leave a Review

Only logged-in users can leave a review.

Customer Reviews

No reviews yet. Be the first to review this product!