| Literature DB >> 35628861 |
Natalia Goździkiewicz1, Danuta Zwolińska2, Dorota Polak-Jonkisz2.
Abstract
Urinary tract infections (UTIs) are among the most common infections occurring across all age groups. UTIs are a well-known cause of acute morbidity and chronic medical conditions. The current diagnostic methods of UTIs remain sub-optimal. The development of better diagnostic tools for UTIs is essential for improving treatment and reducing morbidity. Artificial intelligence (AI) is defined as the science of computers where they have the ability to perform tasks commonly associated with intelligent beings. The objective of this study was to analyze current views regarding attempts to apply artificial intelligence techniques in everyday practice, as well as find promising methods to diagnose urinary tract infections in the most efficient ways. We included six research works comparing various AI models to predict UTI. The literature examined here confirms the relevance of AI models in UTI diagnosis, while it has not yet been established which model is preferable for infection prediction in adult patients. AI models achieve a high performance in retrospective studies, but further studies are required.Entities:
Keywords: artificial intelligence; machine learning; medical decision support system; urinary tract infections
Year: 2022 PMID: 35628861 PMCID: PMC9146683 DOI: 10.3390/jcm11102734
Source DB: PubMed Journal: J Clin Med ISSN: 2077-0383 Impact factor: 4.964
Figure 1Search strategy.
An overview of the current knowledge regarding various AI models in UTI diagnostics.
| Authors | Cohort | Research Type | Top Performing | Sensitivity (%) | Specificity | Predictors Used in Developing of AI |
|---|---|---|---|---|---|---|
| Taylor et al. [ | 80.387 | Retrospective cohort study | XGBoost | 61,7 | 94.9 | Age, gender, UA WBC (white blood cells), UA nitrates, UA leukocytes, UA bacteria, UA blood, UA epithelial cells, history of previous UTI, and dysuria |
| Burton et al. [ | 212.554 | Retrospective cohort study | XGBoost | 95.2 | 60.93 [+/−0.62] | Demographics, historical urine culture results, and clinical details |
| Ozkan et al. | 59 | Retrospective study | ANN | 97.77 | 100 | Pollacuria, suprapubic pain, and erythrocyturia |
| Advanced | 500 | Observational cohort study | NA | NA | NA | Age, gender, race, weight, SBP (percentile), dysuria, ACR, and current and prior antibiotics |
| Gadalla et al. | 183 | Retrospective cohort study | RF/SVM | NA | NA | Urine cloudness and urinary levels of |
| Heckerling et al. | 212 | Retrospective cohort study | ANN + genetic algorithm | 82.1 | 74.4 | Urinary frequency; dysuria; foul urine odor; symptom duration; history of diabetes; leukocyte esterase on a urine dipstick; and red blood, cells, epithelial cells, and bacteria upon urinalysis |
ACR—urine: albumin/creatine ratio; AI—artificial intelligence; ANN—artificial neutral networks; NA—not available; RF—random forest; SBP—systolic blood pressure; SVM—support vector machine; UA—urinalysis.