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Clinical Trial Details — Status: Recruiting

Administrative data

NCT number NCT04647825
Other study ID # BIOING_02
Secondary ID
Status Recruiting
Phase
First received
Last updated
Start date April 1, 2021
Est. completion date January 30, 2023

Study information

Verified date April 2022
Source Neuromed IRCCS
Contact n/a
Is FDA regulated No
Health authority
Study type Observational

Clinical Trial Summary

For one-third of patients with drug-resistant epilepsy alternative approaches must be investigated in order to improve the quality of their life. A possible approach is to find automatic methods to detect/predict seizures, in order to adopt interventional actions to stop or abort the seizure or to limit its side effect. The main problem in this case is to evaluate the reproducibility of such methods and to standardize them, because there is a lack of availability of long-term electroencephalography (EEG) data. In this study we want to create a large long-term EEG database, called NEED (Neuromed Epilepsy EEG Database), whos aim is to give researchers a way to test their method in a large collection of data. The database will contain long-term EEG recordings of 200 patients as well as extensive metadata and standardized annotation of the data sets and will be made freely available for the download to the research community.


Description:

About 50 million people worldwide are affected by epilepsy, which is one of the most frequent neurological diseases. It is characterized by unpredictable and sudden seizures which could led to loss of consciousness and uncontrolled motor reactions, severely impacting the quality of life of epilepsy patients. Only two-thirds of epilepsy patients can control seizures with anti-epileptic drugs or through epilepsy surgery. For the remaining patients, other therapeutics approaches should be considered. These approaches include the development of interventional closed-loop device, able to detect seizures and trigger an interventional operation, such as administer anti-epileptic drugs or electrically stimulate the epileptogenic focus to abort the seizure. In order to provide efficient therapeutic approaches to these patients, in the last decades many efforts have been made to develop automatic methods to find reliable markers in electroencephalographic (EEG) signal, which is the gold standard for epilepsy diagnosis, able to predict or early detect seizures in EEG. Such methods are based on mathematical or computational approaches for EEG signal analysis, whose aim is to extract complex measures (the so-called "features") from EEG signal, which are not recognizable with classical visual inspection of EEG signals made by epileptologists during the diagnosis of epilepsy, in order to use such features as precursors of incoming seizures (seizure prediction) or as indicators of an ongoing seizure (seizure detection). Many methods have been proposed in the last years, using linear or non-linear, to extract features from EEG signal. Recently, some studies used also electrocardiographic signal (ECG), which is normally recorded together with EEG in epilepsy monitoring, in order to extract promising features from it. Although these studies showed promising results, nevertheless they suffer of many limitations. Among them, the use of a limited number of patients and seizures and the use of only recordings belonging to the phase preceding the seizures (the so - called pre-ictal period). Such limitations do not allow to determine, for example, the specificity of such algorithms, because they don't consider also recordings acquired in time intervals far from the seizures (inter-ictal data) and could led to a overfitting of the seizure prediction/detection model. The only thing on which all the researchers on epilepsy agree is the existence of a pre-ictal phase, which is the phase preceding the seizure, the ictal phase, where the seizure is "active" and inter-ictal phase, which is a period temporarily far from the seizure. Normally, automatic methods for seizure prediction/detection consist of three different phases: the pre-processing (artifact removal, band-pass filtering, data segmentation, …) of EEG signals, feature extraction and feature selection and classification. This last step usually consists in the use of machine-learning and statistical methods in order to make decision about the prediction/detection. Basically, these models should be able to classify each EEG instance in two classes, "seizure" or "no seizure", using the features extracted from EEG signal. The efficacy of these models highly depends on how efficiently they are trained and normally the more are the data used to trained them, the more they are able to take the right decision. Therefore, the availability of large database of data could allow to develop efficient models for epilepsy detection/prediction. The possibility for researchers to have access to large database of continuous and long-term EEG data of epilepsy patients could be a big opportunity to develop efficient and reliable automatic seizure prediction/detection methods. For these reasons, in the last years some research groups have proposed and shared public EEG database with researchers who wants to test their automated seizure detection/prediction models. In particular, such database have been proposed by Epilepsy Center of University of Bonn and Freiburg and also by Children's Hospital of Boston and have been made available for free downloading to researchers. These databases contain long-term EEG recordings acquired during pre-surgical monitor of epilepsy patients. The number of patients included in these databases is quite low (from a minimum of 5 to a maximum of 23 patients) and also the number of seizures is limited (from a minimum of 59 to a maximum of 189). Furthermore, the duration of the recordings ranges from 40 minutes to 142 hours and the number of metadata (other information about patients and seizures) is very low. The last database has been proposed in 2008 in the framework of a EU-founded project (EPILEPSIAE), in which 6 different partners (hospitals, universities, companies) of 4 different countries (Germany, Italy, France, Portugal) have been involved. This database is not free but is made available for the download upon payment in 2012. Nowadays, it is the largest epilepsy EEG database available worldwide (http://epilepsy-database.eu/). It contains data from 275 patients, including EEG and ECG recordings, metadata, clinical and technical annotations on the data and clinical information about the patients. Actually, only 60 out of 275 datasets are available for the download. The aim of this study is to create a long-term EEG database acquired on epilepsy patients during the non-invasive presurgical monitor at Epilepsy Surgery Unit at IRCCS Neuromed. The database will include, besides EEG and ECG recordings, clinical and technical annotations on the data made by expert epileptologists and also clinical information about the patient, including neuropsychological evaluations. All the data will be first anonymized, crypted and then made available for the free download. The database will include data from 200 epilepsy patients underwent non-invasive presurgical epilepsy monitoring at Epilepsy Surgery Unit at IRCCS Neuromed. At the end of non-invasive EEG monitoring, two expert epileptologists will inspect EEG/ECG data in order to identify the seizures, in particular the channels where the seizure starts and the time, and everything could be of interest for the project. All the recordings will be exported in ASCII (American Standard Code for Information Interchange) format using the DMS Data Management System (Nihon Kohden Europe Gmbh) software, version 2.9.8 and stored locally. At the same time, clinical and demographic (only gender and age) data will be acquired for each patient. In particular, for each patient the following data will be available: - Demographic data (gender and age); - Clinical information (epilepsy type, seizure frequency,…); - Neuropsychological data; - EEG data acquired according to international 10-20 system; - ECG data; - Information about the recordings and the seizures (start and end time, start and end time of each seizure, …) All data from all the patients will be included in a single database, and each patient will be stored in a single compressed archive. The database will be made available after the completation of a request which can be forwarded by each researcher using a dedicated URL, in which the researcher will fill in a form when it will be asked to provide the following data: - Information about the applicant (name, address, affiliation, …) - GDPR consent Once the request will be received, the compressed archive containing the whole database will be protected with an ad-hoc alphanumeric password. Such password will consist of two parts: the first part will be sent by email to the applicant, the second part will be sent using the regular mail service (two-way authentication).


Recruitment information / eligibility

Status Recruiting
Enrollment 200
Est. completion date January 30, 2023
Est. primary completion date December 31, 2022
Accepts healthy volunteers No
Gender All
Age group 18 Years and older
Eligibility Inclusion Criteria: - Patients with drug-resistant epilepsy candidate to the surgery underwent to non-invasive EEG monitoring - Patients with at least one recorded seizure during the EEG monitoring Exclusion Criteria: - Patients with drug-resistant epilepsy candidate to the surgery underwent to non-invasive EEG monitoring - Patients with no recorded seizure during the EEG monitoring

Study Design


Related Conditions & MeSH terms


Intervention

Other:
Collection of data from non-invasive epilepsy monitoring
Creation of a large long-term EEG database for seizure detection/prediction

Locations

Country Name City State
Italy Irccs Neuromed Pozzilli IS

Sponsors (1)

Lead Sponsor Collaborator
Neuromed IRCCS

Country where clinical trial is conducted

Italy, 

References & Publications (19)

D'Alessandro M, Vachtsevanos G, Esteller R, Echauz J, Cranstoun S, Worrell G, Parish L, Litt B. A multi-feature and multi-channel univariate selection process for seizure prediction. Clin Neurophysiol. 2005 Mar;116(3):506-16. Epub 2005 Jan 24. — View Citation

Delamont RS, Julu PO, Jamal GA. Changes in a measure of cardiac vagal activity before and after epileptic seizures. Epilepsy Res. 1999 Jun;35(2):87-94. — View Citation

Iasemidis LD, Sackellares JC, Zaveri HP, Williams WJ. Phase space topography and the Lyapunov exponent of electrocorticograms in partial seizures. Brain Topogr. 1990 Spring;2(3):187-201. — View Citation

Kerem DH, Geva AB. Forecasting epilepsy from the heart rate signal. Med Biol Eng Comput. 2005 Mar;43(2):230-9. — View Citation

Le Van Quyen M, Martinerie J, Baulac M, Varela F. Anticipating epileptic seizures in real time by a non-linear analysis of similarity between EEG recordings. Neuroreport. 1999 Jul 13;10(10):2149-55. — View Citation

Le Van Quyen M, Soss J, Navarro V, Robertson R, Chavez M, Baulac M, Martinerie J. Preictal state identification by synchronization changes in long-term intracranial EEG recordings. Clin Neurophysiol. 2005 Mar;116(3):559-68. Epub 2004 Dec 25. — View Citation

Lehnertz K, Elger CE. Spatio-temporal dynamics of the primary epileptogenic area in temporal lobe epilepsy characterized by neuronal complexity loss. Electroencephalogr Clin Neurophysiol. 1995 Aug;95(2):108-17. — View Citation

Martinerie J, Adam C, Le Van Quyen M, Baulac M, Clemenceau S, Renault B, Varela FJ. Epileptic seizures can be anticipated by non-linear analysis. Nat Med. 1998 Oct;4(10):1173-6. — View Citation

Mormann F, Andrzejak RG, Elger CE, Lehnertz K. Seizure prediction: the long and winding road. Brain. 2007 Feb;130(Pt 2):314-33. Epub 2006 Sep 28. Review. — View Citation

Morrell M. Brain stimulation for epilepsy: can scheduled or responsive neurostimulation stop seizures? Curr Opin Neurol. 2006 Apr;19(2):164-8. Review. — View Citation

Osorio I, Frei MG, Sunderam S, Giftakis J, Bhavaraju NC, Schaffner SF, Wilkinson SB. Automated seizure abatement in humans using electrical stimulation. Ann Neurol. 2005 Feb;57(2):258-68. — View Citation

Rogowski Z, Gath I, Bental E. On the prediction of epileptic seizures. Biol Cybern. 1981;42(1):9-15. — View Citation

Salant Y, Gath I, Henriksen O. Prediction of epileptic seizures from two-channel EEG. Med Biol Eng Comput. 1998 Sep;36(5):549-56. — View Citation

Stacey W, Le Van Quyen M, Mormann F, Schulze-Bonhage A. What is the present-day EEG evidence for a preictal state? Epilepsy Res. 2011 Dec;97(3):243-51. doi: 10.1016/j.eplepsyres.2011.07.012. Epub 2011 Aug 31. Review. — View Citation

Stacey WC, Litt B. Technology insight: neuroengineering and epilepsy-designing devices for seizure control. Nat Clin Pract Neurol. 2008 Apr;4(4):190-201. doi: 10.1038/ncpneuro0750. Epub 2008 Feb 26. Review. — View Citation

Stein AG, Eder HG, Blum DE, Drachev A, Fisher RS. An automated drug delivery system for focal epilepsy. Epilepsy Res. 2000 Apr;39(2):103-14. — View Citation

Sunderam S, Gluckman B, Reato D, Bikson M. Toward rational design of electrical stimulation strategies for epilepsy control. Epilepsy Behav. 2010 Jan;17(1):6-22. doi: 10.1016/j.yebeh.2009.10.017. Epub 2009 Nov 17. Review. — View Citation

Teixeira CA, Direito B, Feldwisch-Drentrup H, Valderrama M, Costa RP, Alvarado-Rojas C, Nikolopoulos S, Le Van Quyen M, Timmer J, Schelter B, Dourado A. EPILAB: a software package for studies on the prediction of epileptic seizures. J Neurosci Methods. 20 — View Citation

Theodore WH, Fisher R. Brain stimulation for epilepsy. Acta Neurochir Suppl. 2007;97(Pt 2):261-72. Review. — View Citation

* Note: There are 19 references in allClick here to view all references

Outcome

Type Measure Description Time frame Safety issue
Primary Number of collected patients December 2020 - December 2021