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UnknownNCT04913181

Artificial Intelligence for Sepsis Prediction in ICU

Application of Artificial Intelligence Sepsis Prediction Model to Assist ICU Clinical Decision

Status
Unknown
Phase
Study type
Observational
Enrollment
2,000 (estimated)
Sponsor
Second Affiliated Hospital, School of Medicine, Zhejiang University · Academic / Other
Sex
All
Age
16 Years – 100 Years
Healthy volunteers
Not accepted

Summary

The development of sepsis prediction model in line with Chinese population, and extended to clinical, assist clinicians for early identification, early intervention, has a good application prospect. This study is a prospective observational study, mainly to evaluate the accuracy of the previously established sepsis prediction model. The occurrence of sepsis was determined by doctors' daily clinical judgment, and the results of the sepsis prediction model were matched and corrected to improve the clinical accuracy and applicability of the sepsis prediction model.

Detailed description

The sepsis prediction model adopted in this study has been completed in the preliminary preparation, which was constructed on 7,000 patients since the establishment of comprehensive ICU, and the sepsis 3.0 diagnostic standard was adopted.The sepsis prediction model was built using Python platform and XGBoost algorithm, which was used to predict the incidence of sepsis in ICU patients within 24 hours. The overall accuracy was 82%, and the area under the Auroc curve was 0.854. Patients who met the inclusion and exclusion criteria were given a daily prediction of sepsis model, and a quantitative checklist was formed based on the test results.There are two kinds of forecast outcomes: low risk and high risk.Quantitative checklists are available to attending physicians to improve diagnostic efficiency.The results were kept confidential to the clinician. All patients were diagnosed with sepsis by two senior attending physicians at a fixed time. The diagnosis consisted of two types: yes and no.If two attending physicians have different opinions, the third attending physician will be included for correction diagnosis, and the presence of sepsis will be determined in a 2:1 manner.The attending physicians are independent of each other. When the diagnosis results of the attending physician are input into the system, the prediction results of yesterday's sepsis prediction model are compared and calculated to determine the accuracy of the prediction model

Conditions

Interventions

TypeNameDescription
DIAGNOSTIC_TESTArtificial intelligence sepsis prediction modelThe main purpose of this paper is to evaluate the accuracy of the sepsis prediction model established in the early stage. The occurrence of sepsis is determined by the daily clinical judgment of doctors, and the results of sepsis prediction model are matched and corrected.

Timeline

Start date
2021-06-01
Primary completion
2022-06-01
Completion
2023-06-01
First posted
2021-06-04
Last updated
2021-06-04

Source: ClinicalTrials.gov record NCT04913181. Inclusion in this directory is not an endorsement.