Department of Pediatric Allergy and Immunology, The Second Affiliated Hospital and Yuying Children's Hospital of Wenzhou Medical University, Wenzhou, 325027, China.
Department of Pediatric Allergy and Immunology, The Second Affiliated Hospital and Yuying Children's Hospital of Wenzhou Medical University, Wenzhou, 325027, China.
Comput Biol Med. 2023 Nov;166:107544. doi: 10.1016/j.compbiomed.2023.107544. Epub 2023 Sep 29.
Bronchial asthma is a prevalent non-communicable disease among children. The study collected clinical data from 390 children aged 4-17 years with asthma, with or without rhinitis, who received allergen immunotherapy (AIT). Combining these data, this paper proposed a predictive framework for the efficacy of mite subcutaneous immunotherapy in asthma based on machine learning techniques. Introducing the dispersed foraging strategy into the Salp Swarm Algorithm (SSA), a new improved algorithm named DFSSA is proposed. This algorithm effectively alleviates the imbalance between search speed and traversal caused by the fixed partitioning pattern in traditional SSA. Utilizing the fusion of boosting algorithm and kernel extreme learning machine, an AIT performance prediction model was established. To further investigate the effectiveness of the DFSSA-KELM model, this study conducted an auxiliary diagnostic experiment using the immunotherapy predictive medical data collected by the hospital. The findings indicate that selected indicators, such as blood basophil count, sIgE/tIgE (Der p) and sIgE/tIgE (Der f), play a crucial role in predicting treatment outcome. The classification results showed an accuracy of 87.18% and a sensitivity of 93.55%, indicating that the prediction model is an effective and accurate intelligent tool for evaluating the efficacy of AIT.
支气管哮喘是儿童中常见的非传染性疾病。本研究收集了 390 名 4-17 岁患有哮喘(伴或不伴鼻炎)的儿童的临床数据,这些儿童接受了过敏原免疫治疗(AIT)。本文结合这些数据,基于机器学习技术提出了一种预测螨皮下免疫治疗在哮喘中的疗效的预测框架。引入分散觅食策略到沙蚕群算法(SSA)中,提出了一种新的改进算法,称为 DFSSA。该算法有效缓解了传统 SSA 中固定分区模式引起的搜索速度和遍历之间的不平衡。利用提升算法和核极限学习机的融合,建立了 AIT 性能预测模型。为了进一步研究 DFSSA-KELM 模型的有效性,本研究利用医院收集的免疫治疗预测医疗数据进行了辅助诊断实验。结果表明,血液嗜碱性粒细胞计数、sIgE/tIgE(Der p)和 sIgE/tIgE(Der f)等选定指标在预测治疗结果方面发挥着重要作用。分类结果显示准确率为 87.18%,灵敏度为 93.55%,表明预测模型是评估 AIT 疗效的有效、准确的智能工具。