Highly Sensitive Perovskite Photoplethysmography Sensor for Blood Glucose Sensing Using Machine Learning Techniques.
Yongjian ZhengZhenye ZhanQiulan ChenJianxin ChenJianwen LuoJuntao CaiYang ZhouKe ChenWeiguang XiePublished in: Advanced science (Weinheim, Baden-Wurttemberg, Germany) (2024)
Accurate non-invasive monitoring of blood glucose (BG) is a challenging issue in the therapy of diabetes. Here near-infrared (NIR) photoplethysmography (PPG) sensor based on a vapor-deposited mixed tin-lead hybrid perovskite photodetector is developed. The device shows a high detectivity of 5.32 × 10 12 Jones and a large linear dynamic range (LDR) of 204 dB under NIR light, guaranteeing accurate extraction of eleven features from the PPG signal. By a combination of machine learning, accurate prediction of blood glucose level with mean absolute relative difference (MARD) as small as 2.48% is realized. The self-powered PPG sensor also works for real-time outdoor healthcare monitors using sunlight as a light source. The potential for early diabetes diagnoses by the perovskite PPG sensor is demonstrated.
Keyphrases
- blood glucose
- glycemic control
- type diabetes
- room temperature
- machine learning
- high efficiency
- healthcare
- high resolution
- heart rate
- fluorescent probe
- solar cells
- cardiovascular disease
- photodynamic therapy
- blood pressure
- weight loss
- drug release
- fluorescence imaging
- insulin resistance
- air pollution
- stem cells
- artificial intelligence
- skeletal muscle
- mass spectrometry
- deep learning
- climate change
- bone marrow