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1.
Article En | MEDLINE | ID: mdl-38335070

Deep learning (DL) has been used for electromyographic (EMG) signal recognition and achieved high accuracy for multiple classification tasks. However, implementation in resource-constrained prostheses and human-computer interaction devices remains challenging. To overcome these problems, this paper implemented a low-power system for EMG gesture and force level recognition using Zynq architecture. Firstly, a lightweight network model structure was proposed by Ultra-lightweight depth separable convolution (UL-DSC) and channel attention-global average pooling (CA-GAP) to reduce the computational complexity while maintaining accuracy. A wearable EMG acquisition device for real-time data acquisition was subsequently developed with size of 36mm×28mm×4mm. Finally, a highly parallelized dedicated hardware accelerator architecture was designed for inference computation. 18 gestures were tested, including force levels from 22 healthy subjects. The results indicate that the average accuracy rate was 94.92% for a model with 5.0k parameters and a size of 0.026MB. Specifically, the average recognition accuracy for static and force-level gestures was 98.47% and 89.92%, respectively. The proposed hardware accelerator architecture was deployed with 8-bit precision, a single-frame signal inference time of 41.9µs, a power consumption of 0.317W, and a data throughput of 78.6 GOP/s.

2.
ACS Appl Mater Interfaces ; 15(18): 21721-21745, 2023 May 10.
Article En | MEDLINE | ID: mdl-37098855

Flexible wearable devices have been widely used in biomedical applications, the Internet of Things, and other fields, attracting the attention of many researchers. The physiological and biochemical information on the human body reflects various health states, providing essential data for human health examination and personalized medical treatment. Meanwhile, physiological and biochemical information reveals the moving state and position of the human body, and it is the data basis for realizing human-computer interactions. Flexible wearable physiological and biochemical sensors provide real-time, human-friendly monitoring because of their light weight, wearability, and high flexibility. This paper reviews the latest advancements, strategies, and technologies of flexibly wearable physiological and biochemical sensors (pressure, strain, humidity, saliva, sweat, and tears). Next, we systematically summarize the integration principles of flexible physiological and biochemical sensors with the current research progress. Finally, important directions and challenges of physiological, biochemical, and multimodal sensors are proposed to realize their potential applications for human movement, health monitoring, and personalized medicine.


Wearable Electronic Devices , Humans , Sweat , Saliva , Tears
3.
ACS Nano ; 17(6): 5673-5685, 2023 03 28.
Article En | MEDLINE | ID: mdl-36716225

Pressure sensors with high sensitivity, a wide linear range, and a quick response time are critical for building an intelligent disease diagnosis system that directly detects and recognizes pulse signals for medical and health applications. However, conventional pressure sensors have limited sensitivity and nonideal response ranges. We proposed a multichannel flexible pulse perception array based on polyimide/multiwalled carbon nanotube-polydimethylsiloxane nanocomposite/polyimide (PI/MPN/PI) sandwich-structure pressure sensor that can be applied for remote disease diagnosis. Furthermore, we established a mechanical model at the molecular level and guided the preparation of MPN. At the structural level, we achieved high sensitivity (35.02 kPa-1) and a broad response range (0-18 kPa) based on a pyramid-like bilayer microstructure with different upper and lower surfaces. A 27-channel (3 × 9) high-density sensor array was integrated at the device level, which can extract the spatial and temporal distribution information on a pulse. Furthermore, two intelligent algorithms were developed for extracting six-dimensional pulse information and automatic pulse recognition (the recognition rate reaches 97.8%). The results indicate that intelligent disease diagnosis systems have great potential applications in wearable healthcare devices.


Nanocomposites , Nanotubes, Carbon , Wearable Electronic Devices , Perception
4.
J Heart Valve Dis ; 25(6): 742-744, 2016 11.
Article En | MEDLINE | ID: mdl-28290175

Congenitally corrected transposition of the great arteries (CTGA) is a rare congenital heart disease. In patients with functional CTGA with circumflex artery occlusion and mitral regurgitation (MR), the right ventricle functions as the left ventricle. Coronary artery bypass grafting with mitral valve replacement is an effective treatment for CTGA with concomitant myocardial infarction (MI) and MR.


Mitral Valve Insufficiency/complications , Mitral Valve Insufficiency/surgery , Myocardial Infarction/complications , Myocardial Infarction/surgery , Transposition of Great Vessels , Congenitally Corrected Transposition of the Great Arteries , Echocardiography, Doppler, Color , Humans , Magnetic Resonance Imaging , Male , Middle Aged , Mitral Valve Insufficiency/diagnostic imaging , Myocardial Infarction/diagnostic imaging , Transposition of Great Vessels/diagnostic imaging
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