Literature DB >> 30810465

Targeted Workup after Initial Febrile Urinary Tract Infection: Using a Novel Machine Learning Model to Identify Children Most Likely to Benefit from Voiding Cystourethrogram.

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Abstract

PURPOSE: Significant debate persists regarding the appropriate workup in children with an initial urinary tract infection. Greatly preferable to all or none approaches in the current guideline would be a model to identify children at highest risk for a recurrent urinary tract infection plus vesicoureteral reflux to allow for targeted voiding cystourethrogram while children at low risk could be observed. We sought to develop a model to predict the probability of recurrent urinary tract infection associated vesicoureteral reflux in children after an initial urinary tract infection.
MATERIALS AND METHODS: We included subjects from the RIVUR (Randomized Intervention for Children with Vesico-Ureteral Reflux) and CUTIE (Careful Urinary Tract Infection Evaluation) trials in our study, excluding the prophylaxis treatment arm of the RIVUR. The main outcome was defined as recurrent urinary tract infection associated vesicoureteral reflux. Missing data were imputed using optimal tree imputation. Data were split into training, validation and testing sets. Machine learning algorithm hyperparameters were tuned by the validation set with fivefold cross-validation.
RESULTS: A total of 500 subjects, including 305 from the RIVUR and 195 from the CUTIE trials, were included in study. Of the subjects 90% were female and mean ± SD age was 21 ± 19 months. A recurrent urinary tract infection developed in 72 patients, of whom 53 also had vesicoureteral reflux (10.6% of the total). The final model included age, sex, race, weight, the systolic blood pressure percentile, dysuria, the urine albumin-to-creatinine ratio, prior antibiotic exposure and current medication. The model predicted recurrent urinary tract infection associated vesicoureteral reflux with an AUC of 0.761 (95% CI 0.714-0.808) in the testing set.
CONCLUSIONS: Our predictive model using a novel machine learning algorithm provided promising performance to facilitate individualized treatment of children with an initial urinary tract infection and identify those most likely to benefit from voiding cystourethrogram after the initial urinary tract infection. This would allow for more selective application of this test, increasing the yield while also minimizing overuse.

Entities:  

Keywords:  forecasting; machine learning; urinary bladder; urinary tract infection; vesico-ureteral reflux

Mesh:

Substances:

Year:  2019        PMID: 30810465     DOI: 10.1097/JU.0000000000000186

Source DB:  PubMed          Journal:  J Urol        ISSN: 0022-5347            Impact factor:   7.450


  5 in total

1.  Prediction Model for Urinary Tract Infection in Pediatric Urological Surgery Patients.

Authors:  Yi Chen; Xiao-Hua Ge; Qun Yu; Ying Wang; Sheng-Mei Zhu; Jia-Ni Yuan; Wen Zong
Journal:  Front Public Health       Date:  2022-06-22

Review 2.  Artificial Intelligence Applications in Urology: Reporting Standards to Achieve Fluency for Urologists.

Authors:  Andrew B Chen; Taseen Haque; Sidney Roberts; Sirisha Rambhatla; Giovanni Cacciamani; Prokar Dasgupta; Andrew J Hung
Journal:  Urol Clin North Am       Date:  2021-10-23       Impact factor: 2.766

Review 3.  The Use of Artificial Intelligence Algorithms in the Diagnosis of Urinary Tract Infections-A Literature Review.

Authors:  Natalia Goździkiewicz; Danuta Zwolińska; Dorota Polak-Jonkisz
Journal:  J Clin Med       Date:  2022-05-12       Impact factor: 4.964

Review 4.  Artificial Intelligence and Its Impact on Urological Diseases and Management: A Comprehensive Review of the Literature.

Authors:  B M Zeeshan Hameed; Aiswarya V L S Dhavileswarapu; Syed Zahid Raza; Hadis Karimi; Harneet Singh Khanuja; Dasharathraj K Shetty; Sufyan Ibrahim; Milap J Shah; Nithesh Naik; Rahul Paul; Bhavan Prasad Rai; Bhaskar K Somani
Journal:  J Clin Med       Date:  2021-04-26       Impact factor: 4.241

Review 5.  Urinary tract infection in pediatrics: an overview.

Authors:  Ana Cristina Simões E Silva; Eduardo A Oliveira; Robert H Mak
Journal:  J Pediatr (Rio J)       Date:  2019-11-26       Impact factor: 2.990

  5 in total

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