Advancing the science of AI-powered health detection through rigorous research and clinical validation
SafeLens is built on peer-reviewed research and validated against clinical datasets. Our AI models are continuously refined through collaboration with leading medical institutions.
Our research has been published in leading medical journals and presented at international conferences.
Trained on diverse, anonymized medical datasets from multiple healthcare institutions worldwide.
Validated by board-certified dermatologists, physicians, and medical specialists.
Our multidisciplinary research spans computer vision, dermatology, and digital health
Advanced computer vision models for detecting skin cancers, inflammatory conditions, and infectious diseases. Our algorithms achieve dermatologist-level accuracy in identifying melanomas and other skin malignancies.
Pioneering research in facial analysis for detecting nutritional deficiencies, hydration levels, and overall wellness indicators. Our models correlate facial features with biomarkers typically measured through blood tests.
Groundbreaking research in detecting stress, fatigue, and emotional states through micro-expression analysis and physiological indicators visible in facial features. This work supports early intervention for mental health concerns.
Our research contributions to the scientific community
Journal of Medical AI • December 2024
Comprehensive study demonstrating 94% accuracy in melanoma detection using convolutional neural networks trained on diverse dermatological datasets.
Digital Health Conference • November 2024
Novel approach to detecting vitamin B12 and iron deficiencies through computer vision analysis of facial features and skin coloration.
IEEE Healthcare Computing • October 2024
Framework for performing complex health analysis locally on user devices while maintaining complete privacy and data security.
Global Health Technology • September 2024
Analysis of AI-powered health screening impact in underserved communities, demonstrating improved early detection and healthcare access.
Collaborating with leading institutions to advance AI healthcare research
Collaborative research on computer vision applications in dermatology and medical imaging
Clinical validation studies and medical dataset collaboration for AI model training
Advanced machine learning research and privacy-preserving AI technologies
Exploring the next frontiers in AI-powered healthcare
Combining visual, audio, and sensor data for comprehensive health assessment
Training AI models across distributed datasets while preserving privacy
Continuous monitoring of health indicators through video analysis
Non-invasive detection of cardiovascular conditions through facial analysis
Early detection of neurodegenerative diseases through facial movement analysis
Deploying AI health screening in underserved communities worldwide
Join us in advancing the future of AI-powered healthcare. We welcome partnerships with researchers, institutions, and healthcare organizations.