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Inadequate treatment of infections frequently leads to complications that cause new visits to the doctor, lengthen hospital stays and can lead to sepsis, even causing the death of affected patients. Several scientific studies have documented that up to 20%-30% of antibiotic prescriptions are incorrect and do not cover the microorganism causing the infection. iAST® is a simple antibiotic prescribing aid tool that applies complex algorithms based on the latest artificial intelligence technologies to accurately predict the best specific antibiotic for a patient, before knowing the definitive microbiological results (bacterial identification and antibiogram). The objective of the present trial is to demonstrate the non-inferiority of iAST® with respect to physicians for the appropriate choice of empiric and semi-directed therapy of common infectious diseases, including sepsis, urinary tract infections and ventilator-associated pneumonias or tracheobronchitis. The adequacy of the medical prescription and the iAST® prediction will be compared taking the antibiogram report as a reference. The study design is retrospective, so that no intervention will be done on the patients. The investigators will conduct a retrospective search for infection cases and note the antibiotic treatment prescribed by the doctors. In parallel, they will enter basic patient data such as age, sex, service where they were treated, type of infection and microorganism (in the case of semi-directed treatment evaluation) into the iAST® software and will write down the first three treatment options recommended by the tool. The treatments of both arms (medical treatment and iAST® prediction) will be compared with the microbiological results and the success rate of each of them will be calculated.
Full description
Background:
Infections are one of the main causes of consultation in primary care and emergency services. In addition, a high percentage of the patients admitted to hospitals suffer from an infection during their stays. According to data from the European Center for Disease Prevention and Control (ECDC), approximately 11% of patients admitted to European hospitals suffer from a healthcare-associated infection. Moreover, according to this organization, 35% of patients admitted to European hospitals are under antibiotic therapy, with this percentage varying between 21.4% and 54.7% depending on the hospital and the country.
Inadequate treatment of infections often leads to complications associated with an extension in hospitalization periods or sepsis development, which finally could cause the death of the affected patients. Moreover, ineffective treatments due to an inappropriate antibiotic selection have an enormous cost and impact to health care systems. Conversely, there is extensive scientific evidence that early initiation of adequate antibiotic treatment greatly reduces the morbidity and mortality of infections and significantly reduces patient hospital stays. Previous studies have reported that 20-30% of antibiotic prescriptions are inadequate, leading to health complications, especially health care associated infections. Moreover, an adequate selection of antibiotic treatment avoids the spread of resistant bacteria strains, which has become an increasing problem in recent years.
As previously noted, infectious mortality increases enormously over time if an adequate antibiotic treatment is not initiated. Thus, obtaining microbiological results and identify the bacteria strain causing the infection is crucial to provide effective treatments to the subjects. The microbiological profile description is normally performed by microbiology laboratories, which support the doctors in the antibiotic treatment selection. Nevertheless, although reliable results are generated, there are usually obtained 48 hours after the initial patient evaluation.
Rationale:
Cumulative antibiogram data from multiple microorganisms and patients have great epidemiological and clinical value, since they allow monitoring and detecting variations in antimicrobial susceptibility trends. Besides, this data can also help to select the best empiric therapies from the different infectious syndromes. Clinical microbiologists traditionally carry out cumulative antibiogram reports of with a certain frequency (most times annually). These reports are made by selecting the available data for each antibiotic and each microorganism, counting the susceptible and resistant bacteria and calculating the percentage of sensitivity for each of them. However, these cumulative antibiograms are rarely consulted in real life by prescribing doctors and could be biased. For instance, sensitivity varies depending on the characteristics of the patients, the ward where they are treated, previous bacterial cultures, etc...
Due to the available technology in current microbiology, there is often a 24-hour lag between the identification of a microorganism from a clinical sample and the result of its antibiotic susceptibility profile. As soon as the bacterial identification is available, a "semi-targeted" treatment oriented to the specific pathogen can be established, which, with the help of the accumulated antibiograms reports, allows to initiate a prompt accurate treatment until the definitive antibiogram is known, significantly reducing the degree of empiricism with which treats infectious diseases.
Cumulative antibiograms data can be analyzed to extract behavioral patterns using machine learning techniques. Machine learning is a part of artificial intelligence focused on developing models based on data, applying techniques that allow computers to automatically learn the knowledge implicit in the data, detect patterns, transform data into predictive models, that help in decision making. In the last few years, some researchers have published works in which they evaluated the use of machine learning techniques for empiric susceptibility/resistance prediction. However, these works were evaluated in a research environment and were reduced to specific cases of a few infections and etiological agents.
Medical device overview:
In the last three years, Pragmatech AI Solutions has focused its research on the use of artificial intelligence and machine learning techniques to analyze cumulative antibiograms and to predict what are the best empiric and semi-targeted therapies for specific patients. This has materialized in a product that is in the pre-marketing phase called iAST®. The iAST® software is classified as a Class IIa medical device according to the European Union regulation 2017/745.
Study objective:
The iAST® tool have mathematically demonstrated that it can increase the probability of bacterial coverage in the early antibiotic management of infections in patients treated in hospitals.
In this sense, the primary objective of the present retrospective and observational study is the assessment of the accuracy of the iAST® software for the early adequate choice of the empiric and semi-targeted therapy of common infectious diseases in a real clinical setting.
Clinical Investigation Design:
The clinical investigation has been designed as a single center, retrospective and observational study. Antibiograms and hospital records will be retrospectively reviewed to identify patients who meet the inclusion criteria to analyze the primary and secondary endpoints of the study. Antibiograms that were used to set-up the artificial intelligence model will not be considered to assess the accuracy of the iAST® software. Only cases from February 2023 will be included. For each case, investigators will register the empirical and semi-targeted therapy that the physician prescribed (if applicable). The comparison of the success rate of both the iAST® software and the physicians with respect to the antibiogram will be carried out in two ways:
The appropriateness of antibiotic prescription of physicians and the iAST® prediction will be compared taking the antibiogram report as a reference. A subgroup analyses will be developed for each type of infection. According to this, the accuracy of iAST® for the hypothetical empiric and semi-targeted treatment prediction in comparison of doctors prescriptions will be evaluated through:
Investigators will register whether the antibiotics that the doctors prescribed or iAST® predicted in each case belonged to the access, watch or reserve groups of the World Health Organization AWARE classification. In this way, the rate of use/recommendation of each of these antibiotics in each arm (physician prescription vs iAST® prediction) will be calculated.
All data from the study will be registered by the investigators in an electronic Case Report Form (eCRF).
Definitions
Limitations:
The limitations of the study are those stemming from its design, given that it is a retrospective, non-interventional study. However, the study has been designed in order to reduce possible biases. Some of the measures aimed to bias minimization are:
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Inclusion criteria
Data for analysis should proceed from subjects over 18 years old that were admitted into HM Hospitals from 01Feb2023.
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325 participants in 1 patient group
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Data sourced from clinicaltrials.gov
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