Machine Learning Model to Predict Postoperative Respiratory Failure

NCT ID: NCT04527094

Last Updated: 2022-09-01

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

COMPLETED

Total Enrollment

22250 participants

Study Classification

OBSERVATIONAL

Study Start Date

2021-05-26

Study Completion Date

2022-06-25

Brief Summary

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The main objective of this study is to develop a machine learning model that predicts postoperative respiratory failure within 7 postoperative day using a real-world, local preoperative and intraoperative electronic health records, not administrative codes.

Detailed Description

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Postoperative pulmonary complications are known to increase the length of hospital stay and healthcare cost. One of the most serious form of these complications is postoperative respiratory failure, which is also associated with morbidity and mortality. A lot of risk stratification models have been developed for identifying patients at increased risk of postoperative respiratory failure. However, these models were built by using a traditional logistic regression analysis. A logistic regression analysis had disadvantages of assuming the relationship between dependent and independent variables as linear. Recent advances in artificial intelligence make it possible to manage and analyze big data. Prediction model using a machine learning technique and large-scale data can improve the accuracy of prediction performance than those of previous models using traditional statistics. Furthermore, a machine learning technique may be a useful adjuvant tool in making clinical decisions or real-time prediction if it is integrated into the healthcare system. However, to our knowledge, there was no study investigating the predictive factors of postoperative respiratory failure using a machine-learning approach. Therefore, the main objective of this study is to develop a machine learning model that predicts postoperative respiratory failure within 7 postoperative day using a real-world, local preoperative and intraoperative electronic health records, not administrative codes and evaluate its performance prospectively.

Conditions

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Noncardiac Surgery

Study Design

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Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Study Groups

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AI_PRF

Adults patients undergoing general anesthesia

Prediction of postoperative respiratory failure using a machine learning

Intervention Type DIAGNOSTIC_TEST

The performance of a machine learning model to predict postoperative respiratory failure after general anesthesia within postoperative day 7 was tested prospectively.

Interventions

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Prediction of postoperative respiratory failure using a machine learning

The performance of a machine learning model to predict postoperative respiratory failure after general anesthesia within postoperative day 7 was tested prospectively.

Intervention Type DIAGNOSTIC_TEST

Eligibility Criteria

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Inclusion Criteria

* Adults patients undergoing general anesthesia for noncardiac surgery

Exclusion Criteria

* Age under 18 years
* Surgery duration \< 1 hr
* Cardiac surgery
* Surgery performed only regional or local anesthesia, peripheral nerve block, or monitored anesthesia care
* Organ transplantation
* Patient with preoperative tracheal intubation
* Patients who had tracheostoma prior to surgery
* Patients scheduled for tracheostomy
* Surgery performed outside the operating room
* Length of hospital stay \< 24 h

If the patients had multiple surgeries during the same hospital stays, we included the first surgical cases in the dataset.
Minimum Eligible Age

18 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

No

Sponsors

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Seoul National University Hospital

OTHER

Sponsor Role lead

Responsible Party

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Hyun-Kyu Yoon

clinical assistant professor

Responsibility Role PRINCIPAL_INVESTIGATOR

Locations

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Hyun-Kyu Yoon

Seoul, , South Korea

Site Status

Countries

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South Korea

Other Identifiers

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AI_PRF

Identifier Type: -

Identifier Source: org_study_id

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