Predictive Model for Postoperative Complications in Hemi-hip Arthroplasty
Overview
The purpose of this study was to identify the major complications and their risk factors of elderly patients who had undergone Hemi-hip Arthroplasty.
Full Title of Study: “Predictive Model for Postoperative Complications in Elderly Patients With Hip Arthroplasty: Retrospective Study”
Study Type
- Study Type: Observational
- Study Design
- Time Perspective: Retrospective
- Study Primary Completion Date: December 31, 2015
Detailed Description
We retrospectively reviewed the medical records and reviewed the major complications and identify risk factors of elderly patients who had undergone Hemi-hip Arthroplasty for adults aged 60 years or older from January 2011 to December 2015.
Clinical Trial Outcome Measures
Primary Measures
- postoperative complications
- Time Frame: from operation day to postoperative 30 days
- we collect postoperative complications which include cardiac, pulmonary renal, cerebral, and other complications.
Participating in This Clinical Trial
Inclusion Criteria
- A patient scheduled to undergo spinal anesthesia for Hemi-hip Arthroplasty Exclusion Criteria:
- 1) Patients with acute infectious disease before surgery 2) Patients with fractures around the implant 3) Patients who underwent reoperation during hospitalization 4) During the study period, Duplicate patient who underwent the opposite side of the hip during hospitalization
Gender Eligibility: All
Minimum Age: 60 Years
Maximum Age: N/A
Are Healthy Volunteers Accepted: No
Investigator Details
- Lead Sponsor
- Seoul National University Hospital
- Provider of Information About this Clinical Study
- Sponsor
- Overall Official(s)
- Eunsu Choi, pf, Principal Investigator, Eulji University Hospital
- Overall Contact(s)
- Eunsu Choi, pf, 821032990658, potterydoll@hanmail.net
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