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A Quantized CNN-Based Microfluidic Lensless-Sensing Mobile Blood-Acquisition and Analysis System

机译:基于CNN的定量微流控无镜头移动血液采集和分析系统

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摘要

This paper proposes a microfluidic lensless-sensing mobile blood-acquisition and analysis system. For a better tradeoff between accuracy and hardware cost, an integer-only quantization algorithm is proposed. Compared with floating-point inference, the proposed quantization algorithm makes a tradeoff that enables miniaturization while maintaining high accuracy. The quantization algorithm allows the convolutional neural network (CNN) inference to be carried out using integer arithmetic and facilitates hardware implementation with area and power savings. A dual configuration register group structure is also proposed to reduce the interval idle time between every neural network layer in order to improve the CNN processing efficiency. We designed a CNN accelerator architecture for the integer-only quantization algorithm and the dual configuration register group and implemented them in field-programmable gate arrays (FPGA). A microfluidic chip and mobile lensless sensing cell image acquisition device were also developed, then combined with the CNN accelerator to build the mobile lensless microfluidic blood image-acquisition and analysis prototype system. We applied the cell segmentation and cell classification CNN in the system and the classification accuracy reached 98.44%. Compared with the floating-point method, the accuracy dropped by only 0.56%, but the area decreased by 45%. When the system is implemented with the maximum frequency of 100 MHz in the FPGA, a classification speed of 17.9 frames per second (fps) can be obtained. The results show that the quantized CNN microfluidic lensless-sensing blood-acquisition and analysis system fully meets the needs of current portable medical devices, and is conducive to promoting the transformation of artificial intelligence (AI)-based blood cell acquisition and analysis work from large servers to portable cell analysis devices, facilitating rapid early analysis of diseases.
机译:本文提出了一种微流控的无透镜传感移动式血液采集与分析系统。为了在精度和硬件成本之间更好地权衡,提出了仅整数量化算法。与浮点推理相比,所提出的量化算法进行了权衡,可以在保持高精度的同时实现小型化。量化算法允许使用整数算法进行卷积神经网络(CNN)推断,并有助于节省面积和功耗的硬件实现。还提出了双重配置寄存器组结构,以减少每个神经网络层之间的间隔空闲时间,以提高CNN的处理效率。我们为仅整数量化算法和双重配置寄存器组设计了CNN加速器架构,并在现场可编程门阵列(FPGA)中实现了它们。还开发了微流控芯片和移动式无透镜传感细胞图像采集装置,然后与CNN加速器结合,构建了移动式无透镜微流体血液图像采集与分析原型系统。我们在系统中应用了细胞分割和细胞分类CNN,分类准确率达到98.44%。与浮点方法相比,精度仅下降了0.56%,但面积下降了45%。当该系统在FPGA中以100 MHz的最大频率实现时,可获得17.9帧/秒(fps)的分类速度。结果表明,量化的CNN微流控无透镜传感血液采集与分析系统完全可以满足当前便携式医疗设备的需求,有利于推动基于人工智能(AI)的血细胞采集与分析工作的转型。服务器到便携式细胞分析设备的连接,有助于疾病的快速早期分析。

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