Research on Delirium Recognition in Neurocritical Patients Based on Facial Expression Behavior Patterns
Status: Recruiting
Location: See location...
Study Type: Observational
SUMMARY
This research project employs machine learning algorithms integrated with computer vision, image processing, and pattern recognition technologies to perform digital analysis of facial expression behaviors in neurocritical care patients with delirium. By constructing multidimensional high-level features of delirium, the investigators have established a classification model based on behavioral. The primary objective of this study is to address the critical challenge of achieving precise and efficient delirium diagnosis in neurologically critically ill patients through automated facial expression behavior recognition.
Eligibility
Participation Requirements
Sex: All
Minimum Age: 18
Maximum Age: 80
Healthy Volunteers: f
View:
• Neurocritical patients admitted to the ICU, including postoperative neurosurgical patients, stroke patients, and those receiving ICU care due to other neurological conditions.
• Age over 18 years.
• Signed informed consent.
Locations
Other Locations
China
Beijing Tiantan Hospital
RECRUITING
Beijing
Contact Information
Primary
Huang Huawei, Doctoral degree
huanghw0403@163.com
+8613599058877
Time Frame
Start Date:2025-08-30
Estimated Completion Date:2026-01-30
Participants
Target number of participants:1000
Treatments
Neurocritical non-delirium patients
For neurocritical non-delirium patients, the investigators record facial expression videos, which are used during model development to compare with the facial expressions of delirium patients.
Neurocritical delirium patients
The investigators record facial expression videos of neurocritical delirium patients and perform frame sampling on the videos to analyze and extract the facial expression features specific to delirium. Based on this analysis, the investigators develop a model for delirium recognition in neurocritical patients.