The identification of addiction-related circuits is critical for explaining addiction processes and developing addiction treatments. And models of functional addiction circuits developed from functional imaging are an effective tool for discovering and verifying addiction circuits. However, analyzing functional imaging data of addiction and detecting functional addiction circuits still have challenges. We have developed a data-driven and end-to-end generative artificial intelligence(AI) framework to address these difficulties. The framework integrates dynamic brain network modeling and novel network architecture networks architecture, including temporal graph Transformer and contrastive learning modules. A complete workflow is formed by our generative AI framework: the functional imaging data, from neurobiological experiments, and computational modeling, to end-to-end neural networks, is transformed into dynamic nicotine addiction-related circuits. It enables the detection of addiction-related brain circuits with dynamic properties and reveals the underlying mechanisms of addiction.
翻译:与成瘾有关的电路的识别对于解释成瘾过程和发展成瘾治疗至关重要。功能成像所开发的功能成瘾电路模型是发现和核实成瘾电路的有效工具。然而,分析成瘾功能成像数据和检测成瘾功能性电路仍面临挑战。我们开发了一个数据驱动和端到端基因化人工智能框架来解决这些困难。这个框架整合了动态大脑网络建模和新型网络结构架构,包括时间图变形器和对比学习模块。一个完整的工作流程由我们的基因化AI框架形成:功能成像数据,从神经生物学实验和计算模型,到终端神经网络,都转化为动态的尼古丁成瘾相关电路。它能够发现具有动态特性的与成瘾有关的脑电路,并揭示成瘾的基本机制。