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Automated analysis of brain activity for seizure detection in zebrafish models of epilepsy. | LitMetric

Automated analysis of brain activity for seizure detection in zebrafish models of epilepsy.

J Neurosci Methods

Laboratory for Molecular Biodiscovery, KU Leuven, Campus Gasthuisberg, Herestraat 49, O&N II, 3000 Leuven, Belgium.

Published: August 2017

AI Article Synopsis

  • Epilepsy is a chronic condition affecting many, with zebrafish larvae offering a practical animal model for studying it due to their breeding efficiency and cost-effectiveness, although analyzing their seizures has been challenging.
  • A new automated algorithm has been developed to detect seizures in zebrafish by analyzing local field potential recordings, using energy and length to identify seizure segments, and employing machine learning for classification.
  • Testing has shown that this algorithm performs similarly to human visual analysis in identifying seizures and is more accurate than existing methods, making it a promising tool for quicker and more objective epilepsy research.

Article Abstract

Background: Epilepsy is a chronic neurological condition, with over 30% of cases unresponsive to treatment. Zebrafish larvae show great potential to serve as an animal model of epilepsy in drug discovery. Thanks to their high fecundity and relatively low cost, they are amenable to high-throughput screening. However, the assessment of seizure occurrences in zebrafish larvae remains a bottleneck, as visual analysis is subjective and time-consuming.

New Method: For the first time, we present an automated algorithm to detect epileptic discharges in single-channel local field potential (LFP) recordings in zebrafish. First, candidate seizure segments are selected based on their energy and length. Afterwards, discriminative features are extracted from each segment. Using a labeled dataset, a support vector machine (SVM) classifier is trained to learn an optimal feature mapping. Finally, this SVM classifier is used to detect seizure segments in new signals.

Results: We tested the proposed algorithm both in a chemically-induced seizure model and a genetic epilepsy model. In both cases, the algorithm delivered similar results to visual analysis and found a significant difference in number of seizures between the epileptic and control group.

Comparison With Existing Methods: Direct comparison with multichannel techniques or methods developed for different animal models is not feasible. Nevertheless, a literature review shows that our algorithm outperforms state-of-the-art techniques in terms of accuracy, precision and specificity, while maintaining a reasonable sensitivity.

Conclusion: Our seizure detection system is a generic, time-saving and objective method to analyze zebrafish LPF, which can replace visual analysis and facilitate true high-throughput studies.

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Source
http://dx.doi.org/10.1016/j.jneumeth.2017.05.024DOI Listing

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