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Perioperative Management of Risk Factors in the Elderly Patients

Primary Purpose

Perioperative Cardiavascular Complication, Peroperative Complication, Perioperative Pulmonary Complication

Status
Recruiting
Phase
Not Applicable
Locations
China
Study Type
Interventional
Intervention
Implementing risk management and control plan for the elderly during perioperative period
Sponsored by
Ailin Luo
About
Eligibility
Locations
Outcomes
Full info

About this trial

This is an interventional prevention trial for Perioperative Cardiavascular Complication focused on measuring the elderly population, frailty, perioperative visualization, perioperative ultrasound, perioperative monitoring, risk evaluation and prediction, sarcopenia, delirium, acute kidney injury, pneumonia, acute myocardial injury

Eligibility Criteria

65 Years - undefined (Older Adult)All SexesDoes not accept healthy volunteers

Inclusion Criteria:

  1. selective surgery
  2. aged over 65-years-old.

Exclusion Criteria:

  1. Participating in other clinical trials within 6 months
  2. Patients receiving local anesthesia
  3. Cases with unknown outcomes

Sites / Locations

  • TongjiHospitalRecruiting

Outcomes

Primary Outcome Measures

The incidence of perioperative adverse events in elderly patients

Secondary Outcome Measures

Full Information

First Posted
July 8, 2021
Last Updated
April 11, 2023
Sponsor
Ailin Luo
Collaborators
Renmin Hospital of Wuhan University, Beijing Hospital, Chinese Academy of Medical Sciences, Fuwai Hospital
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1. Study Identification

Unique Protocol Identification Number
NCT04967872
Brief Title
Perioperative Management of Risk Factors in the Elderly Patients
Official Title
Risk Management and Technical Measures and Evaluation Criteria for the Elderly During Perioperative Period
Study Type
Interventional

2. Study Status

Record Verification Date
April 2023
Overall Recruitment Status
Recruiting
Study Start Date
September 1, 2021 (Actual)
Primary Completion Date
April 30, 2024 (Anticipated)
Study Completion Date
December 31, 2024 (Anticipated)

3. Sponsor/Collaborators

Responsible Party, by Official Title
Sponsor-Investigator
Name of the Sponsor
Ailin Luo
Collaborators
Renmin Hospital of Wuhan University, Beijing Hospital, Chinese Academy of Medical Sciences, Fuwai Hospital

4. Oversight

Studies a U.S. FDA-regulated Drug Product
No
Studies a U.S. FDA-regulated Device Product
No
Data Monitoring Committee
Yes

5. Study Description

Brief Summary
In 2017, the number of operations on hospitalized patients in China was more than 57 million, of which more than 20 million were performed on elderly patients (≥65 years of age). As of the end of 2017, there were 143 million elderly people over 65 years old in China, of which 26 million people were 80 years old and over, accounting for 1.8% of the country's total population, and this proportion is increasing. More and more elderly patients need surgery. A study showed that compared with the 65-79-year-old population, the probability of myocardial infarction after orthopedic surgery in patients over 80 years of age increased by 2.7 times, the probability of lung infection increased by 3.5 times, and the mortality rate increased by 3.4 times. The inherent risks of surgery and increased postoperative complications in elderly patients are closely related to factors such as senile syndrome. Geriatric syndrome refers to the deterioration of the function of various organ systems as the age increases, and a series of non-specific symptoms and signs appear in the elderly, including weakness, comorbidities, cognitive dysfunction and so on. These symptoms increase with age, seriously impairing the quality of life of the elderly and increasing their perioperative risk. Taking frailty as an example, the incidence of frailty among the 65-70 years old population is 3.2%, 71-74 years old is 5.3%, 75-79 years old is 9.5%, 80-84 years old is 16.3%, and> 85 years old is 25.1. %. On the other hand, the physical functions of the elderly are constantly degrading with age. Take skeletal muscle as an example. After the age of 50, the skeletal muscle mass decreases by 1%-2% every year with the increase of age. The chronic muscle loss of people over 60 years old is estimated to be 30%, and the elderly people over 80 years old lose up to 50%. It can be seen that the elderly patients are a special group of elderly patients, which have their particularity compared with the low-age elderly groups. Therefore, the establishment of a perioperative risk warning and control system and technical system for elderly patients to deal with the unpredictable perioperative risks caused by their weakness, comorbidities, and physical hypofunction, and to provide safety guarantees for elderly surgical patients has become an urgent problem for geriatrics.
Detailed Description
Enhanced recovery after surgery (ERAS) is based on evidence-based medicine and optimizes the clinical path of perioperative management through the collaboration of multiple departments. The core is patient-centered promotion of rehabilitation. This concept is deeply rooted in the hearts of the people. In this context, the center intends to use the high incidence of hip fractures and lung cancer in elderly patients as a breakthrough, and combine the center's domestic leading visualization technology and artificial intelligence (AI) technology to create a complete perioperative evaluation system for elderly patients to reduce the perioperative risk of elderly patients. Visualization techniques include visualization of airway tools, ultrasound visualization, and visualization of brain function monitoring, etc., which are widely used in preoperative risk assessment, bedside rapid assessment, airway management, auxiliary vascular puncture, guided regional block anesthesia, postoperative analgesia, etc. Links, and achieved good clinical results. These technologies have their own advantages, but lack systematic integration and targeted optimization. Organically integrate various visualization technologies suitable for elderly patients to create a complete perioperative evaluation system for elderly patients, comprehensive and real-time dynamic evaluation of patients, and realize the perioperative mental, neurological, respiratory, and circulatory functions of elderly patients Precise management reduces the stress and damage of important organs (such as heart, lung, brain, kidney, etc.), achieves the holistic management of elderly patients during the perioperative period, and reduces the risk of elderly patients during the perioperative period. Artificial intelligence technology can deeply mine medical big data, integrate a large amount of complex data and have powerful comprehensive analysis functions. It is suitable for assisting elderly patients with complex preoperative evaluation, perioperative medical decision-making, and real-time warning of unpredictable adverse events. This technology has been widely used in various medical fields, including tumor imaging diagnosis, skin disease diagnosis, diabetes diagnosis, etc. At present, foreign scholars have combined the relevant clinical characteristics of patients and used artificial intelligence technology to develop an early warning system for intraoperative hypotension, a real-time early warning system for monitoring the death risk of inpatients, and an in-hospital cardiac arrest prediction system. Artificial intelligence is used to comprehensively assess and predict perioperative risks and real-time early warning, which will cover the entire perioperative period of elderly patients and implement effective risk control. The inherent risks of surgery and postoperative complications of elderly patients increase. To deal with the unpredictable perioperative risks caused by their weakness, comorbidities, and hypofunction, providing safety guarantees for elderly surgical patients has become a major issue in geriatrics. This project uses visualization technology for preoperative evaluation, anesthesia management, bedside real-time monitoring and intervention, etc., to achieve accurate perioperative management of elderly patients and whole-process whole-person management. AI technology is applied to perioperative risk prediction of elderly patients and real-time follow-up risk warning to guide the control of the depth of anesthesia and the maintenance of organ function. The above technologies are organically integrated around the various situations that increase the perioperative risk of elderly patients, and embedded in the closed loop of evaluation-diagnosis-intervention-re-evaluation to create a complete perioperative evaluation system for elderly patients. And through a multi-disciplinary team to optimize the clinical path of perioperative management, to demonstrate the whole-person risk management system for elderly patients during the perioperative period for further promotion.

6. Conditions and Keywords

Primary Disease or Condition Being Studied in the Trial, or the Focus of the Study
Perioperative Cardiavascular Complication, Peroperative Complication, Perioperative Pulmonary Complication, Perioperative Neurological Complication
Keywords
the elderly population, frailty, perioperative visualization, perioperative ultrasound, perioperative monitoring, risk evaluation and prediction, sarcopenia, delirium, acute kidney injury, pneumonia, acute myocardial injury

7. Study Design

Primary Purpose
Prevention
Study Phase
Not Applicable
Interventional Study Model
Parallel Assignment
Masking
None (Open Label)
Allocation
Non-Randomized
Enrollment
2650 (Anticipated)

8. Arms, Groups, and Interventions

Intervention Type
Other
Intervention Name(s)
Implementing risk management and control plan for the elderly during perioperative period
Intervention Description
Visualization technology is used for preoperative evaluation, anesthesia management, bedside real-time monitoring and intervention, etc., to achieve accurate perioperative management of elderly patients and whole-process whole-person management
Primary Outcome Measure Information:
Title
The incidence of perioperative adverse events in elderly patients
Time Frame
From the beginning of anesthesia induction to 30 days after surgery or discharged of hospital

10. Eligibility

Sex
All
Minimum Age & Unit of Time
65 Years
Accepts Healthy Volunteers
No
Eligibility Criteria
Inclusion Criteria: selective surgery aged over 65-years-old. Exclusion Criteria: Participating in other clinical trials within 6 months Patients receiving local anesthesia Cases with unknown outcomes
Central Contact Person:
First Name & Middle Initial & Last Name or Official Title & Degree
Ailin Luo, MD&PhD
Phone
+862783665480
Email
alluo@hust.edu.cn
Facility Information:
Facility Name
TongjiHospital
City
Wuhan
Country
China
Individual Site Status
Recruiting
Facility Contact:
First Name & Middle Initial & Last Name & Degree
Shiyong Li
Email
shiyongli@hust.edu.cn

12. IPD Sharing Statement

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Perioperative Management of Risk Factors in the Elderly Patients

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