Kempfner Jacob, Sorensen Gertrud, Zoetmulder Marielle, Jennum Poul, Sorensen Helge B D
Department of Electrical Engineering, Technical University of Denmark, Kgs. Lyngby, Denmark.
Annu Int Conf IEEE Eng Med Biol Soc. 2010;2010:5093-6. doi: 10.1109/IEMBS.2010.5626212.
Abnormal skeleton muscle activity during REM sleep is characterized as REM Behaviour Disorder (RBD), and may be an early marker for different neurodegenerative diseases. Early detection of RBD is therefore highly important, and in this ongoing study a semi-automatic method for RBD detection is proposed by analyzing the motor activity during sleep.
A total number of twelve patients have been involved in this study, six normal controls and six patients diagnosed with Parkinsons Disease (PD) with RBD. All subjects underwent at least one ambulant polysomnographic (PSG) recording. The sleep recordings were scored, according to the new sleep-scoring standard from the American Academy of Sleep Medicine, by two independent sleep specialists. A follow-up analysis of the scoring consensus between the two specialists has been conducted. Based on the agreement of the two manual scorings, a computerized algorithm has been attempted implemented. By analysing the REM and non-REM EMG activity, using advanced signal processing tools combined with a statistical classifier, it is possible to discriminate normal and abnormal EMG activity. Due to the small number of patients, the overall performance of the algorithm was calculated using the leave-one-out approach and benchmarked against a previously published computerized/visual method.
Based on the available data and using optimal settings, it was possible to correctly classify PD subjects with RBD with 100% sensitivity, 100% specificity, which is an improvement compared to previous published studies.
The overall result indicates the usefulness of a computerized scoring algorithm and may be a feasible way of reducing scoring time. Further enhancement on additional data, i.e. subjects with idiopathic RBD (iRBD) and PD without RBD, is needed to validate its robustness and the overall result.
快速眼动睡眠期异常的骨骼肌活动被称为快速眼动睡眠行为障碍(RBD),可能是不同神经退行性疾病的早期标志物。因此,RBD的早期检测非常重要,在这项正在进行的研究中,通过分析睡眠期间的运动活动,提出了一种半自动的RBD检测方法。
本研究共纳入12名患者,6名正常对照者和6名被诊断为患有帕金森病(PD)伴RBD的患者。所有受试者均至少进行了一次便携式多导睡眠图(PSG)记录。根据美国睡眠医学学会的新睡眠评分标准,由两名独立的睡眠专家对睡眠记录进行评分。对两位专家之间的评分一致性进行了后续分析。基于两次人工评分的一致性,尝试实施一种计算机算法。通过使用先进的信号处理工具结合统计分类器分析快速眼动和非快速眼动肌电图活动,可以区分正常和异常的肌电图活动。由于患者数量较少,使用留一法计算算法的整体性能,并与之前发表的计算机化/视觉方法进行比较。
根据现有数据并使用最佳设置,可以以100%的敏感性和100%的特异性正确分类患有RBD的PD受试者,与之前发表的研究相比有了改进。
总体结果表明计算机化评分算法是有用的,可能是减少评分时间的可行方法。需要进一步增加其他数据,即特发性RBD(iRBD)受试者和无RBD的PD受试者,以验证其稳健性和总体结果。