Yu Shuhui, Guan Xin, Peng Xiaoyan, Zeng Yanzhao, Wang Zeyu, Liang Xinyi, Qin Tianqiao, Zhou Xiang
School of Creativity and Design, Guangzhou Huashang College, Guangzhou, China.
Faculty of Innovation and Design, City University of Macau, Macau, China.
PLoS One. 2025 Feb 25;20(2):e0317488. doi: 10.1371/journal.pone.0317488. eCollection 2025.
With the development of digital health, enhancing decision-making effectiveness has become a critical task. This study proposes an improved Artificial Bee Colony (ABC) algorithm aimed at optimizing decision-making models in the field of digital health. The algorithm draws inspiration from the dual-layer evolutionary space of cultural algorithms, combining normative knowledge from the credibility space to dynamically adjust the search range, thereby improving both convergence speed and exploration capabilities. Additionally, a population dispersion strategy is introduced to maintain diversity, effectively balancing global exploration with local exploitation. Experimental results show that the improved ABC algorithm exhibits a 96% convergence probability when approaching the global optimal solution, significantly enhancing the efficiency and accuracy of medical resource optimization, particularly in complex decision-making environments. Integrating this algorithm with the Chat Generative Pre-trained Transformer (ChatGPT) decision system can intelligently generate personalized decision recommendations and leverage natural language processing technologies to better understand and respond to user needs. This study provides an effective tool for scientific decision-making in digital healthcare and offers critical technical support for processing and analyzing large-scale medical data.
随着数字健康的发展,提高决策有效性已成为一项关键任务。本研究提出了一种改进的人工蜂群(ABC)算法,旨在优化数字健康领域的决策模型。该算法从文化算法的双层进化空间中汲取灵感,结合可信度空间中的规范知识来动态调整搜索范围,从而提高收敛速度和探索能力。此外,引入了种群分散策略以保持多样性,有效地平衡了全局探索和局部开发。实验结果表明,改进后的ABC算法在接近全局最优解时收敛概率为96%,显著提高了医疗资源优化的效率和准确性,特别是在复杂的决策环境中。将该算法与聊天生成预训练变换器(ChatGPT)决策系统相结合,可以智能地生成个性化决策建议,并利用自然语言处理技术更好地理解和响应用户需求。本研究为数字医疗中的科学决策提供了一种有效工具,并为处理和分析大规模医疗数据提供了关键技术支持。