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An Artificial Tactile Neuron Enabling Spiking Representation of Stiffness and Disease Diagnosis

Junseok Lee, Seon‐Jeong Kim, Seongjin Park, Jae Sang Lee, Wonseop Hwang, Seong Won Cho, Kyuho Lee, Sun Mi Kim, Tae‐Yeon Seong, Cheolmin Park, Suyoun Lee, Hyunjung Yi

发表年份
2022
引用次数
52

摘要

Mechanical properties of biological systems provide useful information about the biochemical status of cells and tissues. Here, an artificial tactile neuron enabling spiking representation of stiffness and spiking neural network (SNN)-based learning for disease diagnosis is reported. An artificial spiking tactile neuron based on an ovonic threshold switch serving as an artificial soma and a piezoresistive sensor as an artificial mechanoreceptor is developed and shown to encode the elastic stiffness of pressed materials into spike frequency evolution patterns. SNN-based learning of ultrasound elastography images abstracted by spike frequency evolution rate enables the classification of malignancy status of breast tumors with a recognition accuracy up to 95.8%. The stiffness-encoding artificial tactile neuron and learning of spiking-represented stiffness patterns hold a great promise for the identification and classification of tumors for disease diagnosis and robot-assisted surgery with low power consumption, low latency, and yet high accuracy.

关键词

Spiking neural networkComputer scienceSomaArtificial intelligenceTactile sensorStiffnessMaterials scienceArtificial neural networkPattern recognition (psychology)Spike (software development)

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