Ligia F. Borges, Michael T. Barros, Michele Nogueira
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Using an information-theoretic approach, CELLEC mitigates errors in cellular channels with varying noise conditions. The characteristics of the cellular environment and different noise sources are modeled to evaluate the proposal. The additive white Gaussian tissue noise (AWGTN) produced by stochastic chemical reactions is theorized for healthy cells. The MC model also considers the noise of cells affected by one pathology that disrupts cells’ molecular equilibrium and causes them to become reactive (i.e., Alzheimer’s disease). Analyses show that reactive cells have a higher signal-to-noise ratio (21.4%) and path loss (33.05%) than healthy cells, highlighting the need for an adaptive technique to deal with cellular environment variability. 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引用次数: 0
摘要
分子通信(MC)允许植入式设备利用生物数据传输原理(如分子作为信息载体)进行通信。然而,由于分子噪声导致通信误差增加,分子通信面临着巨大挑战。因此,错误控制技术对可靠的体内网络至关重要。这些网络中的噪声管理和误差控制必须基于环境动态特性,即增加噪声的特征,如细胞间通道的随机行为和影响通信的病理存在。这项研究为基于细胞信号的 MC 信道(CELLECs)提出了一种自适应误差控制技术。利用信息论方法,CELLEC 可在噪声条件不断变化的蜂窝信道中减少误差。为评估该建议,对蜂窝环境和不同噪声源的特性进行了建模。随机化学反应产生的加性白高斯组织噪声(AWGTN)是健康细胞的理论基础。MC 模型还考虑了受一种病理学影响的细胞噪声,这种病理学破坏了细胞的分子平衡,导致细胞变得反应性(即阿尔茨海默病)。分析表明,与健康细胞相比,反应性细胞具有更高的信噪比(21.4%)和路径损耗(33.05%),这突出表明需要一种自适应技术来应对细胞环境的变化。结果表明,CELLEC降低了误码率(18%),从而改善了通信信道性能。
Cell signaling error control for reliable molecular communications
Molecular communication (MC) allows implantable devices to communicate using biological data-transmission principles (e.g., molecules as information carriers). However, MC faces significant challenges due to molecular noise, which leads to increased communication errors. Thus, error control techniques become critical for reliable intra-body networks. The noise management and error control in these networks must be based on the characterization of the environment dynamics, i.e., characteristics that increase noise, such as the stochastic behavior of the intercellular channels and the presence of pathologies that affect communication. This work proposes an adaptive error control technique for cell signaling–based MC channels (CELLECs). Using an information-theoretic approach, CELLEC mitigates errors in cellular channels with varying noise conditions. The characteristics of the cellular environment and different noise sources are modeled to evaluate the proposal. The additive white Gaussian tissue noise (AWGTN) produced by stochastic chemical reactions is theorized for healthy cells. The MC model also considers the noise of cells affected by one pathology that disrupts cells’ molecular equilibrium and causes them to become reactive (i.e., Alzheimer’s disease). Analyses show that reactive cells have a higher signal-to-noise ratio (21.4%) and path loss (33.05%) than healthy cells, highlighting the need for an adaptive technique to deal with cellular environment variability. Results show that CELLEC improves communication channel performance by lowering the bit error rate (18%).