Badnjevic Almir, Cifrek Mario, Koruga Dragan, Osmankovic Dinko
BMC Med Inform Decis Mak. 2015;15 Suppl 3(Suppl 3):S1. doi: 10.1186/1472-6947-15-S3-S1. Epub 2015 Sep 11.
This paper presents a system for classification of asthma and chronic obstructive pulmonary disease (COPD) based on fuzzy rules and the trained neural network.
Fuzzy rules and neural network parameters are defined according to Global Initiative for Asthma (GINA) and Global Initiative for chronic Obstructive Lung Disease (GOLD) guidelines. For neural network training more than one thousand medical reports obtained from database of the company CareFusion were used. Afterwards the system was validated on 455 patients by physicians from the Clinical Centre University of Sarajevo.
Out of 170 patients with asthma, 99.41% of patients were correctly classified. In addition, 99.19% of the 248 COPD patients were correctly classified. The system was 100% successful on 37 patients with normal lung function. Sensitivity of 99.28% and specificity of 100% in asthma and COPD classification were obtained.
Our neuro-fuzzy system for classification of asthma and COPD uses a combination of spirometry and Impulse Oscillometry System (IOS) test results, which in the very beginning enables more accurate classification. Additionally, using bronchodilatation and bronhoprovocation tests we get a complete patient's dynamic assessment, as opposed to the solution that provides a static assessment of the patient.
本文提出了一种基于模糊规则和训练后的神经网络对哮喘和慢性阻塞性肺疾病(COPD)进行分类的系统。
根据全球哮喘防治创议(GINA)和慢性阻塞性肺疾病全球倡议(GOLD)指南定义模糊规则和神经网络参数。使用从CareFusion公司数据库中获取的一千多份医学报告进行神经网络训练。之后,萨拉热窝大学临床中心的医生在455名患者身上对该系统进行了验证。
在170例哮喘患者中,99.41%的患者被正确分类。此外,在248例COPD患者中,99.19%的患者被正确分类。该系统对37例肺功能正常的患者的分类成功率为100%。在哮喘和COPD分类中获得了99.28%的灵敏度和100%的特异性。
我们用于哮喘和COPD分类的神经模糊系统结合了肺活量测定和脉冲振荡系统(IOS)测试结果,这从一开始就能实现更准确的分类。此外,与提供患者静态评估的解决方案不同,使用支气管扩张和支气管激发试验我们可以对患者进行全面的动态评估。