Department of Bioengineering (DBE), Instituto de Telecomunicações (IT), Instituto Superior Técnico (IST), Lisbon, Portugal.
Centro de Referência para a área de Epilepsia Refratária (Member of the ERN-EpiCARE) at the Department of Neurosciences and Mental Health of Hospital de Santa Maria, Centro Hospitalar Universitário Lisboa Norte, Lisbon, Portugal.
Epilepsia. 2023 Sep;64(9):2472-2483. doi: 10.1111/epi.17677. Epub 2023 Jun 21.
Epilepsy is a neurological disease that affects ~50 million people worldwide, 30% of which have refractory epilepsy and recurring seizures, which may contribute to higher anxiety levels and poorer quality of life. Seizure detection may contribute to addressing some of the challenges associated with this condition, by providing information to health professionals regarding seizure frequency, type, and/or location in the brain, thereby improving diagnostic accuracy and medication adjustment, and alerting caregivers or emergency services of dangerous seizure episodes. The main focus of this work was the development of an accurate video-based seizure-detection method that ensured unobtrusiveness and privacy preservation, and provided novel approaches to reduce confounds and increase reliability.
The proposed approach is a video-based seizure-detection method based on optical flow, principal component analysis, independent component analysis, and machine learning classification. This method was tested on a set of 21 tonic-clonic seizure videos (5-30 min each, total of 4 h and 36 min of recordings) from 12 patients using leave-one-subject-out cross-validation.
High accuracy levels were observed, namely a sensitivity and specificity of 99.06% ± 1.65% at the equal error rate and an average latency of 37.45 ± 1.31 s. When compared to annotations by health care professionals, the beginning and ending of seizures was detected with an average offset of 9.69 ± 0.97 s.
The video-based seizure-detection method described herein is highly accurate. Moreover, it is intrinsically privacy preserving, due to the use of optical flow motion quantification. In addition, given our novel independence-based approach, this method is robust to different lighting conditions, partial occlusions of the patient, and other movements in the video frame, thereby setting the base for accurate and unobtrusive seizure detection.
癫痫是一种影响全球约 5000 万人的神经系统疾病,其中 30%的患者患有难治性癫痫和反复发作的癫痫,这可能导致更高的焦虑水平和更差的生活质量。癫痫发作检测可以通过向医疗保健专业人员提供关于癫痫发作频率、类型和/或大脑位置的信息,从而提高诊断准确性和药物调整,并提醒护理人员或紧急服务部门癫痫发作的危险情况,从而有助于应对与这种情况相关的一些挑战。这项工作的主要重点是开发一种准确的基于视频的癫痫检测方法,该方法确保不引人注意和保护隐私,并提供新的方法来减少干扰因素并提高可靠性。
所提出的方法是一种基于光流、主成分分析、独立成分分析和机器学习分类的基于视频的癫痫检测方法。该方法在 12 名患者的 21 个强直阵挛性癫痫发作视频(每次 5-30 分钟,总记录时间为 4 小时 36 分钟)上进行了测试,采用留一受试者交叉验证。
观察到高精度水平,即在等错误率下的灵敏度和特异性为 99.06%±1.65%,平均潜伏期为 37.45±1.31 秒。与医疗保健专业人员的注释相比,癫痫发作的开始和结束被检测到的平均偏差为 9.69±0.97 秒。
本文描述的基于视频的癫痫检测方法具有很高的准确性。此外,由于使用了光流运动量化,它本质上是隐私保护的。此外,鉴于我们新颖的基于独立性的方法,该方法对不同的光照条件、患者的部分遮挡和视频帧中的其他运动具有鲁棒性,从而为准确和不引人注目的癫痫检测奠定了基础。