Yang Zhuolin, Zhang Lei, Aras Kedar, Efimov Igor R, Adam Gina C
Department of Electrical and Computer Engineering, The George Washington University, Washington, DC 20052, USA.
Department of Biomedical Engineering, The George Washington University, Washington, DC 20052, USA.
Adv Intell Syst. 2022 Aug;4(8). doi: 10.1002/aisy.202200032. Epub 2022 May 12.
Artificial intelligence algorithms are being adopted to analyze medical data, promising faster interpretation to support doctors' diagnostics. The next frontier is to bring these powerful algorithms to implantable medical devices. Herein, a closed-loop solution is proposed, where a cellular neural network is used to detect abnormal wavefronts and wavebrakes in cardiac signals recorded in human tissue is trained to achieve >96% accuracy, >92% precision, >99% specificity, and >93% sensitivity, when floating point precision weights are assumed. Unfortunately, the current hardware technologies for floating point precision are too bulky or energy intensive for compact standalone applications in medical implants. Emerging device technologies, such as memristors, can provide the compact and energy-efficient hardware fabric to support these efforts and can be reliably embedded with existing sensor and actuator platforms in implantable devices. A distributed design that considers the hardware limitations in terms of overhead and limited bit precision is also discussed. The proposed distributed solution can be easily adapted to other medical technologies that require compact and efficient computing, like wearable devices and lab-on-chip platforms.
人工智能算法正被用于分析医学数据,有望实现更快的解读以辅助医生诊断。下一个前沿领域是将这些强大的算法应用于可植入医疗设备。在此,提出了一种闭环解决方案,其中使用细胞神经网络来检测人体组织中记录的心脏信号中的异常波前和波峰,并进行训练,在假设为浮点精度权重时,实现了>96%的准确率、>92%的精确率、>99%的特异性和>93%的灵敏度。不幸的是,当前用于浮点精度的硬件技术对于医疗植入物中的紧凑型独立应用来说过于笨重或能耗过高。诸如忆阻器等新兴设备技术可以提供紧凑且节能的硬件架构来支持这些努力,并且可以可靠地嵌入可植入设备中的现有传感器和致动器平台。还讨论了一种考虑到硬件在开销和有限位精度方面限制的分布式设计。所提出的分布式解决方案可以很容易地适应其他需要紧凑高效计算的医疗技术,如可穿戴设备和芯片实验室平台。