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Urinary Tract Infection III: Diagnostic Studies and Interprofessional Care01:30

Urinary Tract Infection III: Diagnostic Studies and Interprofessional Care

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A healthcare provider can diagnose a urinary tract infection (UTI) through several methods:Medical History and Symptoms: The provider will take a detailed medical history and ask about symptoms such as frequent urination, burning sensation during urination, and lower abdominal pain.Urinalysis: A clean-catch urine sample is collected in a sterile container and tested for the presence of bacteria, white blood cells (leukocytes), nitrites, blood, and protein. The presence of leukocytes and...
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Urinary Tract Infection I: Introduction01:26

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Urinary tract infections (UTIs) impact various parts of the urinary system, including the kidneys, ureters, bladder, and urethra. These infections are generally bacterial, with Escherichia coli being the most common causative agent, often originating from the gastrointestinal tract. However, other bacteria, such as Staphylococcus saprophyticus, Klebsiella pneumoniae, and Proteus mirabilis, are also known to cause UTIs. The type, location, and underlying complexity of the UTI guide both...
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Urine Studies II: Urine Culture and Sensitivity Test01:26

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A urine culture and sensitivity test is a diagnostic procedure used to identify urinary tract bacterial infections and determine the most effective antibiotics for treatment. This test is generally preferred when a patient shows manifestations of a urinary tract infection, such as frequent or painful urination, cloudy or foul-smelling urine, or lower abdominal pain.Purpose of the TestThe primary goals of a urine culture and sensitivity test are to:Determine the specific bacteria causing the...
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Urinary Tract Infection II: Pathophysiology01:25

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The pathophysiology of urinary tract infections (UTIs) encompasses several progressive stages, beginning with bacterial colonization and culminating in potential systemic complications if untreated. UTIs are primarily initiated by bacteria, such as Escherichia coli, which often originate from the gastrointestinal tract and migrate to the urinary system through the periurethral area. This migration can occur via several routes, including improper hygiene practices, sexual activity, or...
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Urinary Tract Infection IV: Nursing Management01:17

Urinary Tract Infection IV: Nursing Management

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In managing urinary tract infections (UTIs) in nursing, a comprehensive assessment is essential. Begin by gathering subjective data, such as the patient’s complaints of dysuria (painful urination), urinary frequency, urgency, suprapubic pain, and any lower abdominal discomfort. This information can be complemented by questions regarding previous UTIs, sexual activity, and personal hygiene practices, which can provide insight into risk factors. Objective assessment should focus on signs...
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Urinary Tract Calculi I: Introduction01:28

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Renal calculi, or kidney stones, are solid deposits of minerals and salts formed inside the kidneys. In medical terminology, "calculus" refers to the stone itself, while "lithiasis" describes the process of stone formation. Depending on their location within the urinary system, these stones may be classified as either urolithiasis, when situated within the urinary tract, or nephrolithiasis, when located within the kidneys. Each term signifies the specific impact of the stone.Predisposition...
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Updated: Jan 8, 2026

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Multifactor machine learning models for predicting urinary tract infections: a pilot study.

Fabio Grizzi1,2, Mohamed A A A Hegazi3, Marta Noemi Monari4

  • 1Department of Immunology and Inflammation, IRCCS Humanitas Research Hospital, Rozzano, Milan, Italy. fabio.grizzi@humanitasresearch.it.

International Urology and Nephrology
|December 12, 2025
PubMed
Summary
This summary is machine-generated.

Low vitamin D levels are associated with urinary tract infections (UTIs). Machine learning models using vitamin D levels, urine pH, age, and gender can predict UTIs with high accuracy.

Keywords:
Artificial intelligenceMachine learningModelsUrinary tract infectionUrineVitamin D

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Area of Science:

  • Immunology and Microbiology
  • Biochemistry
  • Artificial Intelligence in Healthcare

Background:

  • Vitamin D is crucial for immune function and calcium-phosphate homeostasis.
  • Vitamin D deficiency is linked to immune dysregulation, increasing risks of infections like UTIs.
  • Urinary 25-hydroxyvitamin D (25(OH)D) levels are explored as a potential biomarker for UTI risk.

Purpose of the Study:

  • To investigate the association between urinary 25(OH)D levels and UTI occurrence.
  • To develop and evaluate machine learning models for UTI prediction using demographic and biochemical data.

Main Methods:

  • Analysis of a cohort of 358 subjects with collected demographic, biochemical, and microbiological data.
  • Development of 12 machine learning models utilizing urinary 25(OH)D, urine pH, age, and gender.
  • Models were evaluated using metrics including accuracy, sensitivity, specificity, PPV, NPV, AUC-ROC, and F1 score.

Main Results:

  • Significant differences in urinary 25(OH)D levels were observed between individuals with positive and negative urine cultures (p < 0.001).
  • Machine learning models achieved accuracies ranging from 64% to 87%, with a stacking model reaching 88% accuracy.
  • The best-performing stacking model demonstrated 83% sensitivity, 94% specificity, and an AUC-ROC of 0.93.

Conclusions:

  • Lower urinary 25(OH)D levels are significantly associated with increased UTI occurrence.
  • Machine learning models show promise as adjunct tools for UTI diagnosis, complementing traditional methods.
  • Further validation and prospective studies are needed to assess the clinical impact of these predictive models.