JPRN-UMIN000042965
Completed
未知
Development of a clinical prediction model for infective endocarditis among patients with undiagnosed fever: Multi-center based retrospective observational study. - Clinical prediction model for infective endocarditis
Department of General Medicine, Saga University Hospital, Japan0 sites320 target enrollmentMarch 1, 2021
Overview
- Phase
- 未知
- Intervention
- Not specified
- Conditions
- Infective endocarditis/fever of unknown origin
- Sponsor
- Department of General Medicine, Saga University Hospital, Japan
- Enrollment
- 320
- Status
- Completed
- Last Updated
- 2 years ago
Overview
Brief Summary
No summary available.
Investigators
Eligibility Criteria
Inclusion Criteria
- Not provided
Exclusion Criteria
- •1\. Non\-hospitalization 2\. Without fever before hospitalization 3\. Of I\-330 patients, nosocomial onset patients, patients with referral for valve surgery after treatment in previous hospital and on\-definite IE in modified Dukes criteria (DC). 4\. Of patients with R\-50\-9, patients with identifiable fever origin before hospitalization and patients without chest x\-ray, blood tests, and urinary tests before admission. 5\. Patients with definite non\-infectious disease despite modified DC being definite. 6\. Those who have announced that they will not participate in the research
Outcomes
Primary Outcomes
Not specified
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