Department of Industrial Management, National Taiwan University of Science and Technology, No.43, Sec. 4, Keelung Rd., Da'an Dist., Taipei, 106, Taiwan, Republic of China.
Department of Sleep Center, Taipei Medical University, Taipei, Taiwan, 110, Republic of China.
J Med Syst. 2016 Apr;40(4):110. doi: 10.1007/s10916-016-0464-y. Epub 2016 Mar 1.
Obstructive sleep apnea (OSA) are linked to the augmented risk of morbidity and mortality. Although polysomnography is considered a well-established method for diagnosing OSA, it suffers the weakness of time consuming and labor intensive, and requires doctors and attending personnel to conduct an overnight evaluation in sleep laboratories with dedicated systems. This study aims at proposing an efficient diagnosis approach for OSA on the basis of anthropometric and questionnaire data. The proposed approach integrates fuzzy set theory and decision tree to predict OSA patterns. A total of 3343 subjects who were referred for clinical suspicion of OSA (eventually 2869 confirmed with OSA and 474 otherwise) were collected, and then classified by the degree of severity. According to an assessment of experiment results on g-means, our proposed method outperforms other methods such as linear regression, decision tree, back propagation neural network, support vector machine, and learning vector quantization. The proposed method is highly viable and capable of detecting the severity of OSA. It can assist doctors in pre-diagnosis of OSA before running the formal PSG test, thereby enabling the more effective use of medical resources.
阻塞性睡眠呼吸暂停(OSA)与发病率和死亡率的增加有关。尽管多导睡眠图被认为是诊断 OSA 的一种成熟方法,但它存在耗时和劳动强度大的弱点,并且需要医生和值班人员在具有专用系统的睡眠实验室中进行过夜评估。本研究旨在基于人体测量学和问卷调查数据为 OSA 提出一种有效的诊断方法。该方法将模糊集理论和决策树集成在一起,以预测 OSA 模式。共收集了 3343 名因临床怀疑患有 OSA 而就诊的患者(最终有 2869 名确诊为 OSA,474 名未确诊),然后根据严重程度进行分类。根据 g-均值的实验结果评估,我们提出的方法优于线性回归、决策树、反向传播神经网络、支持向量机和学习向量量化等其他方法。该方法具有高度可行性,能够检测 OSA 的严重程度。它可以帮助医生在进行正式 PSG 测试之前对 OSA 进行预诊断,从而更有效地利用医疗资源。