Li Yupeng, Zhao Dong, Xu Zhangze, Heidari Ali Asghar, Chen Huiling, Jiang Xinyu, Liu Zhifang, Wang Mengmeng, Zhou Qiongyan, Xu Suling
College of Computer Science and Technology, Changchun Normal University, Changchun, Jilin, China.
College of Computer Science and Artificial Intelligence, Wenzhou University, Wenzhou, China.
Front Neuroinform. 2023 Jan 16;16:1063048. doi: 10.3389/fninf.2022.1063048. eCollection 2022.
Atopic dermatitis (AD) is an allergic disease with extreme itching that bothers patients. However, diagnosing AD depends on clinicians' subjective judgment, which may be missed or misdiagnosed sometimes.
This paper establishes a medical prediction model for the first time on the basis of the enhanced particle swarm optimization (SRWPSO) algorithm and the fuzzy K-nearest neighbor (FKNN), called bSRWPSO-FKNN, which is practiced on a dataset related to patients with AD. In SRWPSO, the Sobol sequence is introduced into particle swarm optimization (PSO) to make the particle distribution of the initial population more uniform, thus improving the population's diversity and traversal. At the same time, this study also adds a random replacement strategy and adaptive weight strategy to the population updating process of PSO to overcome the shortcomings of poor convergence accuracy and easily fall into the local optimum of PSO. In bSRWPSO-FKNN, the core of which is to optimize the classification performance of FKNN through binary SRWPSO.
To prove that the study has scientific significance, this paper first successfully demonstrates the core advantages of SRWPSO in well-known algorithms through benchmark function validation experiments. Secondly, this article demonstrates that the bSRWPSO-FKNN has practical medical significance and effectiveness through nine public and medical datasets.
The 10 times 10-fold cross-validation experiments demonstrate that bSRWPSO-FKNN can pick up the key features of AD, including the content of lymphocytes (LY), Cat dander, Milk, Dermatophagoides Pteronyssinus/Farinae, Ragweed, Cod, and Total IgE. Therefore, the established bSRWPSO-FKNN method practically aids in the diagnosis of AD.
特应性皮炎(AD)是一种伴有剧烈瘙痒的过敏性疾病,困扰着患者。然而,AD的诊断依赖于临床医生的主观判断,有时可能会出现漏诊或误诊。
本文首次基于增强粒子群优化(SRWPSO)算法和模糊K近邻(FKNN)建立了一种医学预测模型,称为bSRWPSO-FKNN,并在与AD患者相关的数据集上进行了实践。在SRWPSO中,将索博尔序列引入粒子群优化(PSO),使初始种群的粒子分布更加均匀,从而提高种群的多样性和遍历性。同时,本研究还在PSO的种群更新过程中添加了随机替换策略和自适应权重策略,以克服PSO收敛精度差和易陷入局部最优的缺点。在bSRWPSO-FKNN中,其核心是通过二进制SRWPSO优化FKNN的分类性能。
为证明该研究具有科学意义,本文首先通过基准函数验证实验成功展示了SRWPSO在知名算法中的核心优势。其次,本文通过九个公共和医学数据集证明了bSRWPSO-FKNN具有实际医学意义和有效性。
10次10折交叉验证实验表明,bSRWPSO-FKNN能够提取AD的关键特征,包括淋巴细胞(LY)含量、猫皮屑、牛奶、尘螨/粉螨、豚草、鳕鱼和总IgE。因此,所建立的bSRWPSO-FKNN方法在实际中有助于AD的诊断。