Revolutionizing Healthcare with Remote Physiologic Monitoring (RPM) and AI-Powered Solutions
Remote Physiologic Monitoring (RPM) involves using digital health tools to remotely track and analyze patients’ physiological data. For instance, RPM codes enable healthcare providers to monitor oxygen saturation levels in patients with COVID-19, offering vital insights into their health status without requiring face-to-face visits.
Imagine having peace of mind, knowing that you can monitor your loved ones’ health from anywhere in the world. Whether it’s tracking your mother’s glucose levels or your son’s body temperature, our solution puts this vital information at your fingertips—for free. Support our mission by donating and receive a copy of our Life Without Diabetes eBook and a free T-shirt from Smart Health.
Medical emergencies often lead to costly treatments that might not fully restore the patient’s health. With your help, we can enhance preventive care and reduce the need for such interventions. Our goal is to bring advanced healthcare solutions to patients in developing countries with minimal or no cost.
Our target is to save 5,000 lives over the next five years by developing AI-driven software that predicts chronic disease complications, such as cardiac arrest, for free. Additionally, we focus on identifying pre-disease stages in family members, such as pre-diabetes, allowing for early lifestyle interventions.
The real benefit of our solution is the ability to predict when a patient’s condition is likely to deteriorate before it happens, enabling timely intervention. There is a significant difference between arriving at a hospital on your own versus being rushed in on a stretcher.
Our app is designed to minimize the risk of chronic complications for both diabetes and cardiovascular patients by continuously monitoring vital signs. Patients can use an affordable, FDA-approved all-in-one medical device that connects to the app via Bluetooth to measure vital signs. These measurements are automatically shared with registered clinicians or guardians in real time.
By accumulating patient data, we can apply AI technology to predict chronic conditions and help prevent complications. The app is equipped to provide real-time monitoring through a mobile platform, allowing both guardians and clinical teams to stay informed and take action when necessary.
Pre-diabetes is the initial stage in the development of diabetes and can be identified by a fasting glucose level of 100 to 125 mg/dL (5.6 to 6.9 mmol/L). Our solution also identifies pre-diabetes risks for family members based on BMI, glucose levels, and family history, enabling early preventive measures.
Solution Benefits: Bringing AI-Driven Healthcare to Developing Countries
Access to Advanced AI Technology:
Our app aims to make cutting-edge AI healthcare technology accessible to patients in developing countries, where such resources are often scarce.
AI Models for Disease Prediction and Insulin Dosing:
The app currently includes an AI model that predicts cardiovascular disease risk. We are also developing models to predict optimal insulin doses based on glucose levels, meals, and patient history, with a future goal of predicting glucose levels from eye images.
Support for Endocrinologists in Diabetes Management:
The app provides endocrinologists with accurate historical glucose data, enabling precise insulin dosage recommendations throughout the day.
Continuous Monitoring and Cost Reduction:
By keeping patients under continuous monitoring, the app helps reduce the risk of chronic complications, answers patient inquiries, and lowers healthcare costs for both insurance providers and government facilities.
Extending Care to Patient Family Members:
When diabetic patients use our app, we can assess the diabetes risk of their family members using AI. Clinicians can then suggest diet changes and weight management programs to prevent the onset of diabetes. Research has shown that BMI and fasting glucose levels can predict the pre-diabetes stage.
HbA1c Estimation and Glucose Visualization:
The app allows patients and clinicians to estimate HbA1c levels and visualize blood glucose trends, aiding in better diabetes management.
Reducing Government Healthcare Costs:
In the MENA region alone, there are 39 million diabetic patients—a number projected to rise to 108 million by 2045. Our app’s preventive approach can help governments manage this growing burden more effectively.
Integration with Weight Loss Applications:
Our app can track steps, calories burned, fat loss, distance, speed, and sleep quality, making it compatible with weight loss programs and applications.
Centralized Health Data Storage:
The app securely stores patient vital signs, which can be used by healthcare systems to predict both short-term and long-term healthcare costs.
Finding Affordable and Accurate Medical Devices:
Our primary challenge was identifying an FDA-cleared, reliable, and cost-effective medical device with a compatible SDK for integration. We tested over nine devices, investing thousands of dollars and more than 36,000 work hours.
Lack of SDK Documentation:
The device SDK we selected had minimal documentation, requiring us to spend weeks developing our own guides and instructions.
Managing a Lengthy Development Backlog:
With limited resources, we decided to leverage reputable open-source modules, customizing them to fit our app’s needs instead of building everything from scratch.
Real-Time Health Data Transmission:
Initially, sending patient data to the clinician’s app in real-time was challenging. We overcame this by refactoring the code for better efficiency and reliability.
Developing a Robust AI Framework:
Building an AI framework that could seamlessly integrate with mobile applications was complex. We relied on materials from Stanford University for guidance in creating a reliable and scalable solution.