Department of Chemical and Biological Engineering, Monash University, Melbourne, Australia.
Department of Electrical and Computer Systems Engineering, Monash University, Melbourne, Australia.
Nat Nanotechnol. 2023 Aug;18(8):889-897. doi: 10.1038/s41565-023-01383-6. Epub 2023 Apr 27.
Resistive skin biosensors refer to a class of imperceptible wearable devices for health monitoring and human-machine interfacing, in which conductive materials are deposited onto or incorporated into an elastomeric polymeric sheet. A wide range of resistive skins has been developed so far to detect a wide variety of biometric signals including blood pressure, skin strain, body temperature and acoustic vibrations; however, they are typically non-specific, with one resistive signal corresponding to a single type of biometric data (one-mode sensors). Here we show a hierarchically resistive skin sensor made of a laminated cracked platinum film, vertically aligned gold nanowires and a percolated gold nanowire film, all integrated into a single sensor. As a result, hierarchically resistive skin displays a staircase-shaped resistive response to tensile strain, with distinct sensing regimes associated to a specific active material. We show that we can, through one resistive signal, identify up to five physical or physiological activities associated with the human throat speech: heartbeats, breathing, touch and neck movement (that is, a multimodal sensor). We develop a frequency/amplitude-based neural network, Deep Hybrid-Spectro, that can automatically disentangle multiple biometrics from a single resistive signal. This system can classify 11 activities-with different combinations of speech, neck movement and touch-with an accuracy of 92.73 ± 0.82% while simultaneously measuring respiration and heart rates. We validated the classification accuracy of several biometrics with an overall accuracy of >82%, demonstrating the generality of our concept.
电阻式皮肤生物传感器是一类用于健康监测和人机交互的隐形可穿戴设备,其中导电材料被沉积或嵌入到弹性聚合物片上。迄今为止,已经开发出了多种电阻式皮肤传感器,以检测包括血压、皮肤应变、体温和声振动在内的各种生物信号;然而,它们通常是特异性的,一个电阻信号对应于单一类型的生物计量数据(单模式传感器)。在这里,我们展示了一种由层压裂纹铂膜、垂直排列的金纳米线和渗流金纳米线膜组成的分层电阻式皮肤传感器,所有这些都集成到一个传感器中。结果,分层电阻式皮肤对拉伸应变显示出阶梯状的电阻响应,与特定的活性材料相关的具有不同的传感区域。我们表明,我们可以通过一个电阻信号识别与人类喉咙语音相关的多达五种物理或生理活动:心跳、呼吸、触摸和颈部运动(即多模式传感器)。我们开发了一种基于频率/幅度的神经网络,Deep Hybrid-Spectro,它可以自动从单个电阻信号中分离出多种生物计量数据。该系统可以以 92.73 ± 0.82%的准确率对 11 种活动(包括不同的语音、颈部运动和触摸组合)进行分类,同时测量呼吸和心率。我们使用总体准确率 >82%验证了几种生物计量的分类准确率,证明了我们概念的通用性。