Prediction of cerebral blood flow and perfusion with arterial pulse wave applied machine learning
Recruiting
- Conditions
- Cerebrale autoregulatie onder algehele narcoseCerebral autoregulationcontrol mechanisms of brain blood flow
- Registration Number
- NL-OMON54402
- Lead Sponsor
- Academisch Medisch Centrum
- Brief Summary
Not available
- Detailed Description
Not available
Recruitment & Eligibility
- Status
- Recruiting
- Sex
- Not specified
- Target Recruitment
- 240
Inclusion Criteria
- >=18 years of age
- Informed consent
- Planned for any type of elective surgery/Requiring intubation/Requiring
tracheostomy
Exclusion Criteria
- Any right-sided structural pathology or reduced function (Tapse <1.5cm)
- Severe cardiac arrhythmias (with high heart rate), including atrial
fibrillation
- Abnormal anatomy of the fingers
- Allergy for medication used in study protocol
Study & Design
- Study Type
- Observational non invasive
- Study Design
- Not specified
- Primary Outcome Measures
Name Time Method <p>The primary aim of this study is data collection of continuous noninvasive<br /><br>arterial pressure waveform signals with the CS finger cuff, continuous invasive<br /><br>arterial pressure waveform signals when an arterial cannula is already<br /><br>available due to standard of care, continuous noninvasive cerebral oximetry<br /><br>signals, transcranial Doppler ultrasound, capnography and clinical data from<br /><br>patients EMR in surgical patients. These data will be used to predict the<br /><br>likelihood of derangement of physiologic parameters in awake patients before<br /><br>induction of anesthesia and to predict cerebral blood flow using machine<br /><br>learning.</p><br>
- Secondary Outcome Measures
Name Time Method <p>Not applicable.</p><br>