Shirel Attia
Project Ownersuppervize the development of the new model.
SleepAI is revolutionizing sleep apnea diagnosis with an AI-powered software solution that leverages data from any oximetry-based device. Unlike traditional methods that are expensive, cumbersome, and limited to single-night assessments, SleepAI enables reliable home-based diagnosis with multi-night monitoring, ensuring a more comprehensive evaluation of sleep disorders. Validated in a clinical trial, SleepAI delivers the best analytical performance ever achieved in the field, seamlessly integrating with any wearable to enhance its capabilities with cutting-edge AI-driven health insights, setting a new standard for sleep apnea early detection and long-term management.
New AI service
the two AI models created by SleepAI are described in the following publications: https://www.nature.com/articles/s41467-023-40604-3, https://ieeexplore.ieee.org/document/9965588
physiological data from a full night monitoring
The estimated AHI of the patient (severity index for sleep apnea) and the Sleep staging on the full nigh as an hypnogram, treatment recommendations and sleep metrics.
To ensure seamless deployment of SleepAI’s diagnostic models on smartphones, we will optimize the AI algorithms to efficiently utilize mobile processor resources while maintaining high accuracy. This involves reducing computational complexity through model quantization, pruning, and hardware-aware optimization to balance speed, efficiency, and power consumption. The milestone includes: Profiling AI models to assess resource usage on different smartphone architectures. Applying optimization techniques such as TensorFlow Lite, ONNX quantization, or specialized inference engines. Testing on real-world mobile devices to ensure responsiveness and real-time capability. Maintaining clinical-grade accuracy while reducing latency and energy consumption. This step is essential for making SleepAI’s technology accessible to a wider audience by enabling on-device processing, reducing reliance on cloud computing, and improving privacy and user experience.
The final deliverable will be a fully optimized AI model capable of running efficiently on smartphone processors without external computing power. It will include: Optimized AI model files (quantized and pruned versions) compatible with mobile inference frameworks. Benchmarking report detailing performance improvements in speed, memory usage, and power efficiency. Demonstration app showcasing real-time AI-driven sleep apnea detection on a smartphone. Validation results comparing model performance on mobile devices against cloud-based processing. The deliverable will ensure that SleepAI’s model is deployable, scalable, and clinically validated, allowing users to benefit from on-device AI-driven diagnostics.
$50,000 USD
If the optimized AI model: - Runs efficiently on a smartphone processor with low latency and minimal power consumption. - Maintains clinical-grade accuracy comparable to cloud-based inference. - Processes sleep data in near real-time. - Passes benchmarking tests on multiple mobile devices.
Reviews & Ratings
Please create account or login to write a review and rate.
Check back later by refreshing the page.
© 2024 Deep Funding
Join the Discussion (0)
Please create account or login to post comments.