Chen Jing, Liu Aijun, Zhang Hongjun, Yang Shengyi, Zheng Hui, Zhou Ning, Li Peng
School of Internet of Things, Nanjing University of Posts and Telecommunications, Nanjing, 210023, China.
Baotou Teachers' College of Inner Mongolia University of Science and Technology, Baotou, 014030, Inner Mongolia, China.
Sci Rep. 2024 Jan 10;14(1):945. doi: 10.1038/s41598-023-50375-y.
With the rapid development of AI and big data mining technologies, computerized medical decision-making has become increasingly prominent. The aim of high-utility pattern mining (HUPM) is to discover meaningful patterns in medical databases that contribute to maximizing the utility from the perspective of diagnosis. However, HUPM pays less attention to the interpretability and explainability of these patterns in medical decision-making scenarios. This paper proposes a novel algorithm called the Improved fuzzy high-utility pattern mining (IF-HUPM) to address this problem. First, the paper applies a fuzzy preprocessing method to divide the fuzzy intervals of a medical quantitative data set, which enhances the fuzziness and interpretability of the data. Next, in the process of IF-HUPM, both fuzzy tree and list structures are employed to calculate fuzzy high-utility values. By combining the characteristics of the one-stage and two-stage algorithms of HUPM, an adaptive-phase Fuzzy HUPM hybrid frame is proposed. The experimental results demonstrate that the proposed IF-HUPM algorithm enhances both accuracy and efficiency and the mining process requires less time and space on average.
随着人工智能和大数据挖掘技术的快速发展,计算机化医疗决策变得越来越突出。高效用模式挖掘(HUPM)的目的是在医疗数据库中发现有意义的模式,从诊断的角度有助于实现效用最大化。然而,HUPM在医疗决策场景中较少关注这些模式的可解释性。本文提出了一种名为改进模糊高效用模式挖掘(IF-HUPM)的新算法来解决这个问题。首先,本文应用一种模糊预处理方法来划分医疗定量数据集的模糊区间,这增强了数据的模糊性和可解释性。接下来,在IF-HUPM过程中,同时使用模糊树和列表结构来计算模糊高效用值。通过结合HUPM的一阶段和两阶段算法的特点,提出了一种自适应阶段模糊HUPM混合框架。实验结果表明,所提出的IF-HUPM算法提高了准确性和效率,并且挖掘过程平均需要更少的时间和空间。