The project aims at designing a machine learning solution able to recognize characteristics signals patterns of brain damages in full term babies born within a context of Hypoxic Ischemic Encephalopathy (HIE)
Retrospective study based on a digital EEG signal library intending to design, train and test an efficient AI solution for hypothermia protocol start indications. The output of the Project is to make available to pediatric resuscitation units an adequate tool to guide them in the decision of hypothermia protocol start in a general context of neurophysiologist competence scarcity. EEG signal that would allow the algorithm design will be based on several parameters of the conventional EEG and not only on signal amplitude
Study Type
OBSERVATIONAL
Enrollment
106
Decision of hypothermia thanks to EEG signal
Hôpital TROUSSEAU
Paris, France
Decision of hypothermia protocol start
Use of EEG signal in order to develop an algorithm
Time frame: 6 months
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