Artificial Intelligence Clinical Trial
— ABCOfficial title:
Appropriate Use of Blood Cultures in the Emergency Department Through Machine Learning: a Randomized Controlled Trial
The goal of this clinical trial is to study whether the use of our blood culture prediction tool is non-inferior to current practice and if it can improve certain outcomes in all adult patients presenting to the emergency department with a clinical indication for a blood culture analysis (according to the treating physician). The primary endpoint is 30-day mortality. Key secondary outcomes are: - hospital admission rates - in-hospital mortality - hospital length-of-stay. In the intervention group, the physician will follow the advice of our blood culture prediction tool. In the comparison group all patients will undergo a blood culture analysis.
Status | Recruiting |
Enrollment | 7584 |
Est. completion date | July 2027 |
Est. primary completion date | January 2027 |
Accepts healthy volunteers | Accepts Healthy Volunteers |
Gender | All |
Age group | 18 Years and older |
Eligibility | Inclusion Criteria: - Age >= 18 years - Have a clinical indication for a blood culture analysis (according to the treating physician) - Have sufficient data recorded (laboratory results and vital sign measurements) for a prediction to be made (at least 20% of the needed parameters) Exclusion Criteria: - Central Venous Line (CVL) or Peripherally Inserted Central Catheter (PICC) in situ - Neutrophil count < 0.5 * 109/L - Candidemia or S. aureus bacteraemia in the past 3 months. - Most likely diagnosis of endocarditis/spondylodiscitis/infected prosthetic material - Pregnant or breastfeeding patients - Not capable of giving informed consent |
Country | Name | City | State |
---|---|---|---|
Netherlands | Amsterdam UMC - location AMC | Amsterdam |
Lead Sponsor | Collaborator |
---|---|
Amsterdam UMC, location VUmc |
Netherlands,
Boerman AW, Schinkel M, Meijerink L, van den Ende ES, Pladet LC, Scholtemeijer MG, Zeeuw J, van der Zaag AY, Minderhoud TC, Elbers PWG, Wiersinga WJ, de Jonge R, Kramer MH, Nanayakkara PWB. Using machine learning to predict blood culture outcomes in the e — View Citation
Schinkel M, Boerman AW, Bennis FC, Minderhoud TC, Lie M, Peters-Sengers H, Holleman F, Schade RP, de Jonge R, Wiersinga WJ, Nanayakkara PWB. Diagnostic stewardship for blood cultures in the emergency department: A multicenter validation and prospective ev — View Citation
Type | Measure | Description | Time frame | Safety issue |
---|---|---|---|---|
Other | 30-day readmission rates | 30 days | ||
Other | Length of stay in the ED in hours | 2 days | ||
Other | Percentage of blood cultures avoided in the intervention group | 90 days | ||
Other | 90 day mortality | 90 days | ||
Other | Number of blood cultures on each day of hospital stay (in admitted patients) | 90 days | ||
Other | Percentage of positive blood cultures in each group | 90 days | ||
Other | Total number of laboratory- and microbiology tests in the ED | 2 days | ||
Other | Total number of laboratory- and microbiology test on each day of hospital stay (in admitted patients) | 90 days | ||
Other | Percentage of patients receiving antibiotics in the ED | 2 days | ||
Other | Duration of antibiotic therapy | 90 days | ||
Other | Types of antibiotics given in the ED | 2 days | ||
Other | Model performance (AUC) during the trial | 3 years | ||
Other | Model performance in subgroup of Immunocompromised patients (triple immunosuppressive therapy) | 3 years | ||
Other | Model performance in subgroup of transplanted patients | 3 years | ||
Primary | 30-day mortality | 30 days | ||
Secondary | hospital admission rates | 1 day | ||
Secondary | in-hospital mortality | 90 days | ||
Secondary | hospital length-of-stay | 90 days |
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