Shorter Latency of Real-time Epileptic Seizure Detection via
Probabilistic Prediction
- URL: http://arxiv.org/abs/2301.03465v2
- Date: Wed, 28 Jun 2023 04:40:48 GMT
- Title: Shorter Latency of Real-time Epileptic Seizure Detection via
Probabilistic Prediction
- Authors: Yankun Xu, Jie Yang, Wenjie Ming, Shuang Wang, and Mohamad Sawan
- Abstract summary: We propose a novel deep learning framework intended for shortening epileptic seizure detection latency via probabilistic prediction.
We implement the proposed framework on two prevalent datasets -- CHB-MIT scalp EEG dataset and SWEC-ETHZ intracranial EEG dataset.
The obtained detection latencies are at least 50% shorter than state-of-the-art results reported in previous studies.
- Score: 6.480989310008518
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Although recent studies have proposed seizure detection algorithms with good
sensitivity performance, there is a remained challenge that they were hard to
achieve significantly short detection latency in real-time scenarios. In this
manuscript, we propose a novel deep learning framework intended for shortening
epileptic seizure detection latency via probabilistic prediction. We are the
first to convert the seizure detection task from traditional binary
classification to probabilistic prediction by introducing a crossing period
from seizure-oriented EEG recording and proposing a labeling rule using
soft-label for crossing period samples. And, a novel multiscale STFT-based
feature extraction method combined with 3D-CNN architecture is proposed to
accurately capture predictive probabilities of samples. Furthermore, we also
propose rectified weighting strategy to enhance predictive probabilities, and
accumulative decision-making rule to achieve significantly shorter detection
latency. We implement the proposed framework on two prevalent datasets --
CHB-MIT scalp EEG dataset and SWEC-ETHZ intracranial EEG dataset in
patient-specific leave-one-seizure-out cross-validation scheme. Eventually, the
proposed algorithm successfully detected 94 out of 99 seizures during crossing
period and 100% seizures detected after EEG onset, averaged 14.84% rectified
predictive ictal probability (RPIP) errors of crossing samples, 2.3 s detection
latency, 0.08/h false detection rate (FDR) on CHB-MIT dataset. Meanwhile, 84
out of 89 detected seizures during crossing period, 100% detected seizures
after EEG onset, 16.17% RPIP errors, 4.7 s detection latency, and 0.08/h FDR
are achieved on SWEC-ETHZ dataset. The obtained detection latencies are at
least 50% shorter than state-of-the-art results reported in previous studies.
Related papers
- SepsisLab: Early Sepsis Prediction with Uncertainty Quantification and Active Sensing [67.8991481023825]
Sepsis is the leading cause of in-hospital mortality in the USA.
Existing predictive models are usually trained on high-quality data with few missing information.
For the potential high-risk patients with low confidence due to limited observations, we propose a robust active sensing algorithm.
arXiv Detail & Related papers (2024-07-24T04:47:36Z) - Preictal Period Optimization for Deep Learning-Based Epileptic Seizure Prediction [0.0]
We develop a competitive deep learning model for seizure prediction using scalp electroencephalogram (EEG) signals.
We trained and evaluated our model on 19 pediatric patients of the open-access CHB-MIT dataset in a subject-specific manner.
Using the OPP of each patient, preictal and interictal segments were correctly identified with an average sensitivity of 99.31%, specificity of 95.34%, AUC of 99.35%, and F1- score of 97.46%.
arXiv Detail & Related papers (2024-07-20T13:49:14Z) - Uncertainty-Calibrated Test-Time Model Adaptation without Forgetting [55.17761802332469]
Test-time adaptation (TTA) seeks to tackle potential distribution shifts between training and test data by adapting a given model w.r.t. any test sample.
Prior methods perform backpropagation for each test sample, resulting in unbearable optimization costs to many applications.
We propose an Efficient Anti-Forgetting Test-Time Adaptation (EATA) method which develops an active sample selection criterion to identify reliable and non-redundant samples.
arXiv Detail & Related papers (2024-03-18T05:49:45Z) - Epilepsy Seizure Detection and Prediction using an Approximate Spiking
Convolutional Transformer [12.151626573534001]
This paper presents a neuromorphic Spiking Convolutional Transformer, named Spiking Conformer, to detect and predict epileptic seizure segments.
We report evaluation results from the Spiking Conformer model using the Boston Children's Hospital-MIT (CHB-MIT) EEG dataset.
Using raw EEG data as input, the proposed Spiking Conformer achieved an average sensitivity rate of 94.9% and a specificity rate of 99.3% for the seizure detection task.
arXiv Detail & Related papers (2024-01-21T19:23:56Z) - Hierarchical Semi-Supervised Contrastive Learning for
Contamination-Resistant Anomaly Detection [81.07346419422605]
Anomaly detection aims at identifying deviant samples from the normal data distribution.
Contrastive learning has provided a successful way to sample representation that enables effective discrimination on anomalies.
We propose a novel hierarchical semi-supervised contrastive learning framework, for contamination-resistant anomaly detection.
arXiv Detail & Related papers (2022-07-24T18:49:26Z) - SOUL: An Energy-Efficient Unsupervised Online Learning Seizure Detection
Classifier [68.8204255655161]
Implantable devices that record neural activity and detect seizures have been adopted to issue warnings or trigger neurostimulation to suppress seizures.
For an implantable seizure detection system, a low power, at-the-edge, online learning algorithm can be employed to dynamically adapt to neural signal drifts.
SOUL was fabricated in TSMC's 28 nm process occupying 0.1 mm2 and achieves 1.5 nJ/classification energy efficiency, which is at least 24x more efficient than state-of-the-art.
arXiv Detail & Related papers (2021-10-01T23:01:20Z) - An End-to-End Deep Learning Approach for Epileptic Seizure Prediction [4.094649684498489]
We propose an end-to-end deep learning solution using a convolutional neural network (CNN)
Overall sensitivity, false prediction rate, and area under receiver operating characteristic curve reaches 93.5%, 0.063/h, 0.981 and 98.8%, 0.074/h, 0.988 on two datasets respectively.
arXiv Detail & Related papers (2021-08-17T05:49:43Z) - Random Forest classifier for EEG-based seizure prediction [0.12183405753834559]
This paper presents a Machine Learning based method for epileptic seizure prediction which outperforms state-of-the art methods.
We assessed our method on 20 patients of the benchmark scalp EEG CHB-MIT dataset for a seizure prediction horizon (SPH) of 5 minutes and a seizure occurrence period (SOP) of 30 minutes.
Our approach achieves a sensitivity of 82.07 % and a low false positive rate (FPR) of 0.0799 /h.
arXiv Detail & Related papers (2021-06-02T15:46:35Z) - Real-Time Anomaly Detection in Edge Streams [49.26098240310257]
We propose MIDAS, which focuses on detecting microcluster anomalies, or suddenly arriving groups of suspiciously similar edges.
We further propose MIDAS-F, to solve the problem by which anomalies are incorporated into the algorithm's internal states.
Experiments show that MIDAS-F has significantly higher accuracy than MIDAS.
arXiv Detail & Related papers (2020-09-17T17:59:27Z) - Optimally Displaced Threshold Detection for Discriminating Binary
Coherent States Using Imperfect Devices [50.09039506170243]
We analytically study the performance of the generalized Kennedy receiver having optimally displaced threshold detection (ODTD) in a realistic situation with noises and imperfect devices.
We show that the proposed greedy search algorithm can obtain a lower and smoother error probability than the existing works.
arXiv Detail & Related papers (2020-07-21T21:52:29Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.