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用于靶向癌症药物递送的智能深度学习模型。

Intelligent deep learning model for targeted cancer drug delivery.

作者信息

Kamal Islam R, El-Atty Saied M Abd, El-Zoghdy S F, Soliman Randa F

机构信息

Department of Computer Science, Faculty of Information Systems and Computer Science, October 6 University, Giza, 12585, Egypt.

Department of Electronics and Electrical Communications Engineering, Faculty of Electronic Engineering, Menoufia University, Menouf, 32952, Egypt.

出版信息

Sci Rep. 2025 May 30;15(1):19068. doi: 10.1038/s41598-025-96149-6.

Abstract

Nanotechnology and information communication technology (ICT) are being combined to develop innovative drug delivery systems for targeted sites, such as tumor cells. The particulate targeted drug delivery (PTDD) system involves drugs containing nanoparticles embedded in nanoscale devices (referred to as bio-nanomachines) that can cross vascular barriers, resulting in an increased concentration of the drug in the targeted cell or tumor. An artificial intelligence bio-cyber interface (AIBCI) operates in both forward and reverse directions, enabling the transfer or control of a desired drug dose without affecting healthy cells, facilitated by the Internet of Biological Nano Things (IoBNT). This paper proposes a multi-compartmental model with an AI bio-cyber interface based on molecular communication technology. The proposed model is formulated as a set of multi-differential equations designed to identify molecular communication-based bio-nanomachines, enabling the quantification of drug concentration at the targeted cell. Unlike conventional compartmental models, the present model is designed to connect both the exterior and interior of the human body. The results suggest that the model has the potential to improve the capacity of target cells to respond to therapeutic drugs while reducing adverse effects on healthy cells. The intra-body nanonetwork proposed in the present study proved superior performance in magnetifying the drug concentrations in diseased cells.

摘要

纳米技术与信息通信技术(ICT)正在相互结合,以开发针对肿瘤细胞等靶位点的创新药物递送系统。微粒靶向药物递送(PTDD)系统涉及将含有纳米颗粒的药物嵌入纳米级装置(称为生物纳米机器)中,这些装置能够穿过血管屏障,从而使药物在靶细胞或肿瘤中的浓度增加。人工智能生物网络接口(AIBCI)可双向运行,借助生物纳米物联网(IoBNT),在不影响健康细胞的情况下实现所需药物剂量的转移或控制。本文提出了一种基于分子通信技术的带有AI生物网络接口的多房室模型。所提出的模型被公式化为一组多微分方程,旨在识别基于分子通信的生物纳米机器,从而能够对靶细胞处的药物浓度进行量化。与传统的房室模型不同,本模型旨在连接人体的外部和内部。结果表明,该模型有潜力提高靶细胞对治疗药物的反应能力,同时减少对健康细胞的不良影响。本研究中提出的体内纳米网络在放大病变细胞中的药物浓度方面表现出卓越性能。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/7abd/12125324/5ff5308fa53a/41598_2025_96149_Fig1_HTML.jpg

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