Fu Dai, Chuanliang Zhao, Jingdong Yang, Yifei Meng, Shiwang Tan, Yue Qian, Shaoqing Yu
Department of Otorhinolaryngology, Antin Hospital, Shanghai, China.
Department of Otorhinolaryngology-Head and Neck Surgery, Tongji Hospital, Tongji University School of Medicine, Shanghai, China.
Asia Pac Allergy. 2024 Jun;14(2):56-62. doi: 10.5415/apallergy.0000000000000126. Epub 2023 Dec 18.
The diagnosis of allergic rhinitis (AR) primarily relies on symptoms and laboratory examinations. Due to limitations in outpatient settings, certain tests such as nasal provocation tests and nasal secretion smear examinations are not routinely conducted. Although there are clear diagnostic criteria, an accurate diagnosis still requires the expertise of an experienced doctor, considering the patient's medical history and conducting examinations. However, differences in physician knowledge and limitations of examination methods can result in variations in diagnosis.
Artificial intelligence is a significant outcome of the rapid advancement in computer technology today. This study aims to present an intelligent diagnosis and detection method based on ensemble learning for AR.
We conducted a study on AR cases and 7 other diseases exhibiting similar symptoms, including rhinosinusitis, chronic rhinitis, upper respiratory tract infection, etc. Clinical data, encompassing medical history, clinical symptoms, allergen detection, and imaging, was collected. To develop an effective classifier, multiple models were employed to train on the same batch of data. By utilizing ensemble learning algorithms, we obtained the final ensemble classifier known as adaptive random forest-out of bag-easy ensemble (ARF-OOBEE). In order to perform comparative experiments, we selected 5 commonly used machine learning classification algorithms: Naive Bayes, support vector machine, logistic regression, multilayer perceptron, deep forest (GC Forest), and extreme gradient boosting (XGBoost).To evaluate the prediction performance of AR samples, various parameters such as precision, sensitivity, specificity, G-mean, F1-score, and area under the curve (AUC) of the receiver operating characteristic curve were jointly employed as evaluation indicators.
We compared 7 classification models, including probability models, tree models, linear models, ensemble models, and neural network models. The ensemble classification algorithms, namely ARF-OOBEE and GC Forest, outperformed the other algorithms in terms of the comprehensive classification evaluation index. The accuracy of G-mean and AUC parameters improved by nearly 2% when compared to the other algorithms. Moreover, these ensemble classifiers exhibited excellent performance in handling large-scale data and unbalanced samples.
The ARF-OOBEE ensemble learning model demonstrates strong generalization performance and comprehensive classification abilities, making it suitable for effective application in auxiliary AR diagnosis.
变应性鼻炎(AR)的诊断主要依靠症状和实验室检查。由于门诊环境的限制,某些检查如鼻激发试验和鼻分泌物涂片检查并非常规进行。尽管有明确的诊断标准,但考虑到患者的病史并进行检查后,准确的诊断仍需要经验丰富的医生的专业知识。然而,医生知识的差异和检查方法的局限性可能导致诊断的差异。
人工智能是当今计算机技术快速发展的一项重要成果。本研究旨在提出一种基于集成学习的AR智能诊断与检测方法。
我们对AR病例以及7种表现出相似症状的其他疾病进行了研究,这些疾病包括鼻窦炎、慢性鼻炎、上呼吸道感染等。收集了包括病史、临床症状、过敏原检测和影像学检查在内的临床数据。为了开发一个有效的分类器,使用多个模型对同一批数据进行训练。通过利用集成学习算法,我们获得了最终的集成分类器,即自适应随机森林-袋外-简易集成(ARF-OOBEE)。为了进行对比实验,我们选择了5种常用的机器学习分类算法:朴素贝叶斯、支持向量机、逻辑回归、多层感知器、深度森林(GC Forest)和极端梯度提升(XGBoost)。为了评估AR样本的预测性能,则联合使用各种参数,如精度、灵敏度、特异性、G均值、F1分数以及接收者操作特征曲线的曲线下面积(AUC)作为评估指标。
我们比较了7种分类模型,包括概率模型、树模型、线性模型、集成模型和神经网络模型。集成分类算法,即ARF-OOBEE和GC Forest,在综合分类评估指标方面优于其他算法。与其他算法相比,G均值和AUC参数的准确率提高了近2%。此外,这些集成分类器在处理大规模数据和不平衡样本方面表现出优异的性能。
ARF-OOBEE集成学习模型具有很强的泛化性能和综合分类能力,适用于在AR辅助诊断中有效应用。