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1.
J Biomech ; 88: 25-32, 2019 May 09.
Article in English | MEDLINE | ID: mdl-30922611

ABSTRACT

Elderly people and people with epilepsy may need assistance after falling, but may be unable to summon help due to injuries or impairment of consciousness. Several wearable fall detection devices have been developed, but these are not used by all people at risk. We present an automated analysis algorithm for remote detection of high impact falls, based on a physical model of a fall, aiming at universality and robustness. Candidate events are automatically detected and event features are used as classifier input. The algorithm uses vertical velocity and acceleration features from optical flow outputs, corrected for distance from the camera using moving object size estimation. A sound amplitude feature is used to increase detector specificity. We tested the performance and robustness of our trained algorithm using acted data from a public database and real life data with falls resulting from epilepsy and with daily life activities. Applying the trained algorithm to the acted dataset resulted in 90% sensitivity for detection of falls, with 92% specificity. In the real life data, six/nine falls were detected with a specificity of 99.7%; there is a plausible explanation for not detecting each of the falls missed. These results reflect the algorithm's robustness and confirms the feasibility of detecting falls using this algorithm.


Subject(s)
Accidental Falls , Monitoring, Ambulatory/instrumentation , Video Recording , Acceleration , Aged , Algorithms , Automation , Databases, Factual , Humans
2.
Epilepsia ; 59 Suppl 1: 53-60, 2018 06.
Article in English | MEDLINE | ID: mdl-29638008

ABSTRACT

People with epilepsy need assistance and are at risk of sudden death when having convulsive seizures (CS). Automated real-time seizure detection systems can help alert caregivers, but wearable sensors are not always tolerated. We determined algorithm settings and investigated detection performance of a video algorithm to detect CS in a residential care setting. The algorithm calculates power in the 2-6 Hz range relative to 0.5-12.5 Hz range in group velocity signals derived from video-sequence optical flow. A detection threshold was found using a training set consisting of video-electroencephalogaphy (EEG) recordings of 72 CS. A test set consisting of 24 full nights of 12 new subjects in residential care and additional recordings of 50 CS selected randomly was used to estimate performance. All data were analyzed retrospectively. The start and end of CS (generalized clonic and tonic-clonic seizures) and other seizures considered desirable to detect (long generalized tonic, hyperkinetic, and other major seizures) were annotated. The detection threshold was set to the value that obtained 97% sensitivity in the training set. Sensitivity, latency, and false detection rate (FDR) per night were calculated in the test set. A seizure was detected when the algorithm output exceeded the threshold continuously for 2 seconds. With the detection threshold determined in the training set, all CS were detected in the test set (100% sensitivity). Latency was ≤10 seconds in 78% of detections. Three/five hyperkinetic and 6/9 other major seizures were detected. Median FDR was 0.78 per night and no false detections occurred in 9/24 nights. Our algorithm could improve safety unobtrusively by automated real-time detection of CS in video registrations, with an acceptable latency and FDR. The algorithm can also detect some other motor seizures requiring assistance.


Subject(s)
Computer Systems , Seizures/diagnosis , Seizures/physiopathology , Video Recording , Algorithms , Caregivers/psychology , Death, Sudden/prevention & control , Electroencephalography , Female , Humans , Male , Retrospective Studies
3.
Epileptic Disord ; 19(3): 307-314, 2017 Sep 01.
Article in English | MEDLINE | ID: mdl-28832005

ABSTRACT

Epilepsy is difficult to diagnose using routine EEG recordings of short duration in patients who have low seizure frequency. Long-term EEG may be useful but is impractical in an out-of-hospital setting. We investigated whether single-channel scalp EEG placed behind the earlobe is suitable for seizure identification during prolonged EEG monitoring. Scalp EEG samples were selected from subjects over 15 years of age, and comprised two segments of either background followed by seizure or background followed by background. Bipolar EEG derivations in three directions (F8-T8, C4-T8 and T8-P8) were evaluated for the presence of a seizure by two experienced reviewers. For each EEG segment containing a seizure, one pair of electrodes was oriented towards the suspected region of seizure onset, while two pairs of electrodes were oriented elsewhere. The EEG data contained five frontally localized seizures, five parietal, five temporal, two occipital, and four primary or secondary generalized seizures. The sensitivity and specificity for recognition of seizures was 86% and 95% for Reviewer 1, and 79% and 99% for Reviewer 2, respectively. When identifying a seizure with the lead orientation towards the region of seizure onset, both reviewers identified 20 out of 21 seizures (95%). When the lead was not oriented towards the region of seizure onset, the reviewers identified 34 and 30 out of 42 ictal records correctly, respectively. These results suggest that it is possible to identify epileptic seizures by bipolar EEG derivation using only two scalp electrodes. Lead orientation towards the suspected region of seizure onset is important for optimal detection sensitivity.


Subject(s)
Brain/physiopathology , Electroencephalography/methods , Seizures/diagnosis , Humans , Scalp/physiopathology , Seizures/physiopathology , Sensitivity and Specificity
4.
Clin Neurophysiol ; 128(1): 153-164, 2017 Jan.
Article in English | MEDLINE | ID: mdl-27912169

ABSTRACT

OBJECTIVE: We aimed to test the potential of auto-regressive model residual modulation (ARRm), an artefact-insensitive method based on non-harmonicity of the high-frequency signal, to identify epileptogenic tissue during surgery. METHODS: Intra-operative electrocorticography (ECoG) of 54 patients with refractory focal epilepsy were recorded pre- and post-resection at 2048Hz. The ARRm was calculated in one-minute epochs in which high-frequency oscillations (HFOs; fast ripples, 250-500Hz; ripples, 80-250Hz) and spikes were marked. We investigated the pre-resection fraction of HFOs and spikes explained by the ARRm (h2-index). A general ARRm threshold was set and used to compare the ARRm to surgical outcome in post-resection ECoG (Pearson X2). RESULTS: ARRm was associated strongest with the number of fast ripples in pre-resection ECoG (h2=0.80, P<0.01), but also with ripples and spikes. An ARRm threshold of 0.47 yielded high specificity (95%) with 52% sensitivity for channels with fast ripples. ARRm values >0.47 were associated with poor outcome at channel and patient level (both P<0.01) in post-resection ECoG. CONCLUSIONS: The ARRm algorithm might enable intra-operative delineation of epileptogenic tissue. SIGNIFICANCE: ARRm is the first unsupervised real-time analysis that could provide an intra-operative, 'on demand' interpretation per electrode about the need to remove underlying tissue to optimize the chance of seizure freedom.


Subject(s)
Electrocorticography/methods , Epilepsy/physiopathology , Epilepsy/surgery , Intraoperative Neurophysiological Monitoring/methods , Action Potentials/physiology , Adolescent , Electroencephalography/methods , Epilepsy/diagnosis , Female , Follow-Up Studies , Humans , Male , Retrospective Studies
5.
Int J Neural Syst ; 25(5): 1550015, 2015 Aug.
Article in English | MEDLINE | ID: mdl-25986751

ABSTRACT

A novel automated algorithm is proposed to approximate the seizure onset zone (SOZ), while providing reproducible output. The SOZ, a surrogate marker for the epileptogenic zone (EZ), was approximated from intracranial electroencephalograms (iEEG) of nine people with temporal lobe epilepsy (TLE), using three methods: (1) Total ripple length (TRL): Manually segmented high-frequency oscillations, (2) Rippleness (R): Area under the curve (AUC) of the autocorrelation functions envelope, and (3) Autoregressive model residual variation (ARR, novel algorithm): Time-variation of residuals from autoregressive models of iEEG windows. TRL, R, and ARR results were compared in terms of separability, using Kolmogorov-Smirnov tests, and performance, using receiver operating characteristic (ROC) curves, to the gold standard for SOZ delineation: visual observation of ictal video-iEEGs. TRL, R, and ARR can distinguish signals from iEEG channels located within the SOZ from those outside it (p < 0.01). The ROC AUC was 0.82 for ARR, while it was 0.79 for TRL, and 0.64 for R. ARR outperforms TRL and R, and may be applied to identify channels in the SOZ automatically in interictal iEEGs of people with TLE. ARR, interpreted as evidence for nonharmonicity of high-frequency EEG components, could provide a new way to delineate the EZ, thus contributing to presurgical workup.


Subject(s)
Brain/physiopathology , Electrocorticography/methods , Epilepsy, Temporal Lobe/physiopathology , Pattern Recognition, Automated/methods , Seizures/physiopathology , Adolescent , Adult , Algorithms , Anticonvulsants/therapeutic use , Area Under Curve , Brain/drug effects , Brain/pathology , Brain/surgery , Brain Mapping/methods , Electrocorticography/instrumentation , Electrodes, Implanted , Epilepsy, Temporal Lobe/drug therapy , Epilepsy, Temporal Lobe/pathology , Epilepsy, Temporal Lobe/surgery , Female , Humans , Male , Middle Aged , Periodicity , ROC Curve , Regression Analysis , Seizures/drug therapy , Seizures/pathology , Seizures/surgery , Young Adult
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