Method for cycle detection in sparse, irregularly sampled, long-term neuro-behavioral timeseries: Basis pursuit denoising with polynomial detrending of long-term, inter-ictal epileptiform activity
Method for cycle detection in sparse, irregularly sampled, long-term neuro-behavioral timeseries: Basis pursuit denoising with polynomial detrending of long-term, inter-ictal epileptiform activity
Abstract Numerous physiological processes are cyclical, but sampling these processes densely enough to perform frequency decomposition and subsequent analyses can be challenging. Mathematical approaches for decomposition and reconstruction of sparsely and irregularly sampled signals are well established but have been under-utilized in physiological applications. We developed a basis pursuit denoising with polynomial detrending (BPWP) model that recovers oscillations and trends from sparse and irregularly sampled timeseries. We validated this model on a unique dataset of long-term inter-ictal epileptiform discharge (IED) rates from human hippocampus recorded with a novel investigational device with continuous local field potential sensing. IED rates have well established circadian and multiday cycles related to sleep, wakefulness, and seizure clusters. Given sparse and irregular samples of IED rates from multi-month intracranial EEG recordings from ambulatory humans, we used BPWP to compute narrowband spectral power and polynomial trend coefficients and identify IED rate cycles in three subjects. In select cases, we propose that random and irregular sampling may be leveraged for frequency decomposition of physiological signals. Author SummaryCircadian and multiday cycles are an important part of many long-term neuro-behavioral phenomena such as pathological inter-ictal epileptiform discharges (IEDs) in epilepsy. Long-term, ambulatory, neuro-behavioral monitoring in human patients involves complex recording systems that can be subject to intermittent, irregular data loss and storage limitations, resulting in sparse, irregularly sampled data. Cycle identification in sparse data or irregular data using traditional frequency decomposition techniques typically requires interpolation to create a regular timeseries. Using unique, long-term recordings of pathological brain activity in patients with epilepsy implanted with an investigational device, we developed a method to identify cycles in sparse, irregular neuro-behavioral data without interpolation. We anticipate this approach will enable retrospective cycle identification in sparse neuro-behavioral timeseries and support prospective sparse sampling in monitoring systems to enable long-term monitoring of patients and to extend storage capacity in a variety of ambulatory monitoring applications.
Yu Grace、Richner Thomas J.、Mivalt Filip、Sladky Vladimir、Gregg Nicholas M.、Gompel Jamie Van、Miller Kai、Worrell Gregory A.、Croarkin Paul E.、Kremen Vaclav、Trzasko Joshua、Balzekas Irena
Mayo Clinic Alix School of Medicine||Mayo Clinic Medical Scientist Training Programand Engineering Laboratory, Department of Neurology, Mayo Clinicand Engineering Laboratory, Department of Neurology, Mayo Clinic||Faculty of Electrical Engineering and Communication, Department of Biomedical Engineering, Brno University of Technologyand Engineering Laboratory, Department of Neurology, Mayo Clinic||Faculty of Biomedical Engineering, Czech Technical University in Prague||International Clinic Research Center, St. Anne?ˉs University Research Hospital||Faculty of Biomedical Engineering, Czech Technical University in Pragueand Engineering Laboratory, Department of Neurology, Mayo Clinicand Engineering Laboratory, Department of Neurology, Mayo Clinic||Department of Neurosurgery, Mayo ClinicDepartment of Neurosurgery, Mayo Clinicand Engineering Laboratory, Department of Neurology, Mayo ClinicDepartment of Psychiatry and Psychology, Mayo Clinicand Engineering Laboratory, Department of Neurology, Mayo Clinic||Czech Institute of Informatics Czech Technical University in PragueDepartment of Radiology, Mayo Clinicand Engineering Laboratory, Department of Neurology, Mayo Clinic||Mayo Clinic Graduate School of Biomedical Sciences||Mayo Clinic Alix School of Medicine||Mayo Clinic Medical Scientist Training Program
医学研究方法神经病学、精神病学生物科学研究方法、生物科学研究技术
Yu Grace,Richner Thomas J.,Mivalt Filip,Sladky Vladimir,Gregg Nicholas M.,Gompel Jamie Van,Miller Kai,Worrell Gregory A.,Croarkin Paul E.,Kremen Vaclav,Trzasko Joshua,Balzekas Irena.Method for cycle detection in sparse, irregularly sampled, long-term neuro-behavioral timeseries: Basis pursuit denoising with polynomial detrending of long-term, inter-ictal epileptiform activity[EB/OL].(2025-03-28)[2025-06-27].https://www.biorxiv.org/content/10.1101/2023.05.04.539355.点此复制
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