Build-up Computed Assisted History Taking, Physical Examination and Diagnosis System of Emergency Patient Through Machine Learning (II)
- Conditions
- Internal Disease
- Interventions
- Diagnostic Test: Artificial intelligence
- Registration Number
- NCT05596929
- Lead Sponsor
- National Taiwan University Hospital
- Brief Summary
In emergency department(ED), physicians need to complete patient evaluation and management in a short time, which required different history taking, and physical examination skill in healthcare system.
Natural language processing(NLP) became easily accessible after the development of machine learning(ML). Besides, electronic medical record(EMR) had been widely applied in healthcare systems. There are more and more tools try to capture certain information from the EMR help clinical workers handle increasing patient data and improving patient care.
However, to err is human. Physicians might omit some important signs or symptoms, or forget to write it down in the record especially in a busy emergency room. It will lead to an unfavorable outcome when there were medical legal issue or national health insurance review. The condition could be limited by a EMR supporting system. The quality of care will also improve.
The investigators are planning to analyze EMR of emergency room by NLP and machine learning. To establish the linkage between triage data, chief complaint, past history, present illness and physical examination. The investigators will try to predict the tentative diagnosis and patient disposition after the relationship being found. Thereafter, the investigators could try to predict the key element of history taking and physical examination of the patient and inform the physician when the miss happened. The investigators hope the system may improve the quality of medical recording and patient care.
- Detailed Description
Not available
Recruitment & Eligibility
- Status
- RECRUITING
- Sex
- All
- Target Recruitment
- 3000
- Over twenty years old
- Non-traumatic patient
- Excluding the patients for administration reasons (issuing a medical certificate)
- Excluding the patients for non-emergency reasons like simply acupuncture, virus screening and prescription for medication.
- Excluding Patients who allocated to critical care station
Study & Design
- Study Type
- INTERVENTIONAL
- Study Design
- PARALLEL
- Arm && Interventions
Group Intervention Description Experimental Artificial intelligence -
- Primary Outcome Measures
Name Time Method Senior doctor appraisal 24 hours Senior doctor appraisal which measured by an established questionnaire. Senior doctor will fill an expert-verified clinical note quality evaluation questionnaire after junior doctor finished patient interview and clinical note recording. The questionnaire is designed to use 5 points likert scale and higher scores mean a better outcome.
- Secondary Outcome Measures
Name Time Method Rationality of diagnosis prediction 24 hours Senior doctors will assess rationality of predicted diagnosis.
Accuracy of diagnosis prediction patient discharge from ED, up to 1 week The percentage of predicted diagnosis match the final diagnosis.
Trial Locations
- Locations (1)
National Taiwan University Hospital
🇨🇳Taipei, Taiwan