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. 2024 May 2;19(5):e0301812.
doi: 10.1371/journal.pone.0301812. eCollection 2024.

Stone decision engine accurately predicts stone removal and treatment complications for shock wave lithotripsy and laser ureterorenoscopy patients

Affiliations

Stone decision engine accurately predicts stone removal and treatment complications for shock wave lithotripsy and laser ureterorenoscopy patients

Peter A Noble et al. PLoS One. .

Abstract

Kidney stones form when mineral salts crystallize in the urinary tract. While most stones exit the body in the urine stream, some can block the ureteropelvic junction or ureters, leading to severe lower back pain, blood in the urine, vomiting, and painful urination. Imaging technologies, such as X-rays or ureterorenoscopy (URS), are typically used to detect kidney stones. Subsequently, these stones are fragmented into smaller pieces using shock wave lithotripsy (SWL) or laser URS. Both treatments yield subtly different patient outcomes. To predict successful stone removal and complication outcomes, Artificial Neural Network models were trained on 15,126 SWL and 2,116 URS patient records. These records include patient metrics like Body Mass Index and age, as well as treatment outcomes obtained using various medical instruments and healthcare professionals. Due to the low number of outcome failures in the data (e.g., treatment complications), Nearest Neighbor and Synthetic Minority Oversampling Technique (SMOTE) models were implemented to improve prediction accuracies. To reduce noise in the predictions, ensemble modeling was employed. The average prediction accuracies based on Confusion Matrices for SWL stone removal and treatment complications were 84.8% and 95.0%, respectively, while those for URS were 89.0% and 92.2%, respectively. The average prediction accuracies for SWL based on Area-Under-the-Curve were 74.7% and 62.9%, respectively, while those for URS were 77.2% and 78.9%, respectively. Taken together, the approach yielded moderate to high accurate predictions, regardless of treatment or outcome. These models were incorporated into a Stone Decision Engine web application (http://peteranoble.com/webapps.html) that suggests the best interventions to healthcare providers based on individual patient metrics.

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Conflict of interest statement

NO authors have competing interests

Figures

Fig 1
Fig 1
AUCs for averaged predictions from ten ANN models trained on SMOTED SWL stone removal data set (A) and treatment complication (B) and tested with the entire data set (n = 15126 records). AUC for averaged predictions from ten ANN models trained on SMOTED URS stone removal data set (C) and treatment complication data set (D) and tested with the entire data set (n = 2116 records).

References

    1. Romero V, Akpinar H, Assimos DG. Kidney stones: a global picture of prevalence, incidence, and associated risk factors. Rev Urol. 2010. Spring;12(2–3):e86–96. ; PMCID: PMC2931286. - PMC - PubMed
    1. Scales CD Jr, Smith AC, Hanley JM, Saigal CS; Urologic Diseases in America Project. Prevalence of kidney stones in the United States. Eur Urol. 2012. Jul;62(1):160–5. doi: 10.1016/j.eururo.2012.03.052 Epub 2012 Mar 31. ; PMCID: PMC3362665. - DOI - PMC - PubMed
    1. Scales CD Jr, Tasian GE, Schwaderer AL, Goldfarb DS, Star RA, Kirkali Z. Urinary Stone Disease: Advancing Knowledge, Patient Care, and Population Health. Clin J Am Soc Nephrol. 2016. Jul 7;11(7):1305–12. doi: 10.2215/CJN.13251215 Epub 2016 Mar 10. ; PMCID: PMC4934851. - DOI - PMC - PubMed
    1. Joshi HB, Johnson H, Pietropaolo A, Raja A, Joyce AD, Somani B, et al.. Urinary Stones and Intervention Quality of Life (USIQoL): Development and Validation of a New Core Universal Patient-reported Outcome Measure for Urinary Calculi. Eur Urol Focus. 2021. Jan 8:S2405-4569(20)30313-8. doi: 10.1016/j.euf.2020.12.011 Epub ahead of print. . - DOI - PubMed
    1. Moudi E, Hosseini SR, Bijani A. Nephrolithiasis in elderly population; effect of demographic characteristics. J Nephropathol. 2017. Mar;6(2):63–68. doi: 10.15171/jnp.2017.11 Epub 2016 Dec 17. ; PMCID: PMC5418072. - DOI - PMC - PubMed

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