Publication: A neural network-based algorithm for predicting the spontaneous passage of ureteral stones
| dc.contributor.author | Solakhan, Mehmet | |
| dc.contributor.author | Seçkiner, Serap Ulusam | |
| dc.contributor.author | Seçkiner, Ilker | |
| dc.contributor.institution | Solakhan, Mehmet, Department of Urology, Bahçeşehir Üniversitesi, Istanbul, Turkey | |
| dc.contributor.institution | Seçkiner, Serap Ulusam, Department of Industrial Engineering, Gaziantep Üniversitesi, Gaziantep, Turkey | |
| dc.contributor.institution | Seçkiner, Ilker, Department of Urology, Gaziantep Üniversitesi, Gaziantep, Turkey | |
| dc.date.accessioned | 2025-10-05T15:42:47Z | |
| dc.date.issued | 2020 | |
| dc.description.abstract | In this study, a prototype artificial neural network model (ANN) was used to estimate the stone passage rate and to determine the effectivity of predictive factors on this rate in patients with ureteral stones. The retrospective study included a total of 192 patients with ureteral stones, comprising 128 (66.7%) men and 64 (33.3%) women. Patients were divided into two groups. Group 1 (n: 125) consisted of people who spontaneously passed their stones, Group 2 (n: 67) consisted of people who could not pass stones spontaneously. The groups were compared with regard to the relationship between input data and stone passage rate by using both ANN and standard statistical tests. To implement the ANN, the patients were randomly divided into three groups: (a) training group (n = 132), (b) validation group (n = 30), and (c) test group (n = 30). The accuracy rate of ANN in the estimation of the stone passage ratio was 99.1% in the group a, 89.9% in the group b, and 87.3% in the group c. It was revealed that certain criteria (stone size, body weight, pain score, ESR, and CRP) were relatively more significant for saving treatment cost and time and for avoiding unnecessary treatment. ANN can be highly useful for the avoidance of unnecessary interventions in patients with ureteral stones as it showed remarkably high performance in the estimation of stone passage rate (99.16%). © 2020 Elsevier B.V., All rights reserved. | |
| dc.identifier.doi | 10.1007/s00240-019-01167-5 | |
| dc.identifier.endpage | 532 | |
| dc.identifier.issn | 21947236 | |
| dc.identifier.issn | 21947228 | |
| dc.identifier.issue | 6 | |
| dc.identifier.pubmed | 31667542 | |
| dc.identifier.scopus | 2-s2.0-85074697455 | |
| dc.identifier.startpage | 527 | |
| dc.identifier.uri | https://doi.org/10.1007/s00240-019-01167-5 | |
| dc.identifier.uri | https://hdl.handle.net/20.500.14719/10192 | |
| dc.identifier.volume | 48 | |
| dc.language.iso | en | |
| dc.publisher | Springer Science and Business Media Deutschland GmbH | |
| dc.relation.source | Urolithiasis | |
| dc.subject.authorkeywords | Artificial Neural Network | |
| dc.subject.authorkeywords | Decision-making | |
| dc.subject.authorkeywords | Prediction | |
| dc.subject.authorkeywords | Spontaneous Passage | |
| dc.subject.authorkeywords | Ureteral Stones | |
| dc.subject.authorkeywords | C Reactive Protein | |
| dc.subject.authorkeywords | C Reactive Protein | |
| dc.subject.authorkeywords | Adult | |
| dc.subject.authorkeywords | Article | |
| dc.subject.authorkeywords | Artificial Neural Network | |
| dc.subject.authorkeywords | Body Size | |
| dc.subject.authorkeywords | Body Weight | |
| dc.subject.authorkeywords | Controlled Study | |
| dc.subject.authorkeywords | Diabetes Mellitus | |
| dc.subject.authorkeywords | Disease Course | |
| dc.subject.authorkeywords | Disease Severity | |
| dc.subject.authorkeywords | Erythrocyte Sedimentation Rate | |
| dc.subject.authorkeywords | Female | |
| dc.subject.authorkeywords | Health Care Cost | |
| dc.subject.authorkeywords | Hematuria | |
| dc.subject.authorkeywords | Human | |
| dc.subject.authorkeywords | Hydronephrosis | |
| dc.subject.authorkeywords | Hypertension | |
| dc.subject.authorkeywords | Kidney Disease | |
| dc.subject.authorkeywords | Major Clinical Study | |
| dc.subject.authorkeywords | Male | |
| dc.subject.authorkeywords | Pain Assessment | |
| dc.subject.authorkeywords | Prediction | |
| dc.subject.authorkeywords | Priority Journal | |
| dc.subject.authorkeywords | Pyuria | |
| dc.subject.authorkeywords | Renal System Parameters | |
| dc.subject.authorkeywords | Retrospective Study | |
| dc.subject.authorkeywords | Smoking | |
| dc.subject.authorkeywords | Stone Passage Rate | |
| dc.subject.authorkeywords | Unnecessary Procedure | |
| dc.subject.authorkeywords | Ureter Stone | |
| dc.subject.authorkeywords | Ureteroscopy | |
| dc.subject.authorkeywords | Algorithm | |
| dc.subject.authorkeywords | Forecasting | |
| dc.subject.authorkeywords | Middle Aged | |
| dc.subject.authorkeywords | Randomization | |
| dc.subject.authorkeywords | Remission | |
| dc.subject.authorkeywords | Adult | |
| dc.subject.authorkeywords | Algorithms | |
| dc.subject.authorkeywords | Female | |
| dc.subject.authorkeywords | Forecasting | |
| dc.subject.authorkeywords | Humans | |
| dc.subject.authorkeywords | Male | |
| dc.subject.authorkeywords | Middle Aged | |
| dc.subject.authorkeywords | Neural Networks, Computer | |
| dc.subject.authorkeywords | Random Allocation | |
| dc.subject.authorkeywords | Remission, Spontaneous | |
| dc.subject.authorkeywords | Retrospective Studies | |
| dc.subject.authorkeywords | Ureteral Calculi | |
| dc.subject.indexkeywords | C reactive protein | |
| dc.subject.indexkeywords | adult | |
| dc.subject.indexkeywords | Article | |
| dc.subject.indexkeywords | artificial neural network | |
| dc.subject.indexkeywords | body size | |
| dc.subject.indexkeywords | body weight | |
| dc.subject.indexkeywords | controlled study | |
| dc.subject.indexkeywords | diabetes mellitus | |
| dc.subject.indexkeywords | disease course | |
| dc.subject.indexkeywords | disease severity | |
| dc.subject.indexkeywords | erythrocyte sedimentation rate | |
| dc.subject.indexkeywords | female | |
| dc.subject.indexkeywords | health care cost | |
| dc.subject.indexkeywords | hematuria | |
| dc.subject.indexkeywords | human | |
| dc.subject.indexkeywords | hydronephrosis | |
| dc.subject.indexkeywords | hypertension | |
| dc.subject.indexkeywords | kidney disease | |
| dc.subject.indexkeywords | major clinical study | |
| dc.subject.indexkeywords | male | |
| dc.subject.indexkeywords | pain assessment | |
| dc.subject.indexkeywords | prediction | |
| dc.subject.indexkeywords | priority journal | |
| dc.subject.indexkeywords | pyuria | |
| dc.subject.indexkeywords | renal system parameters | |
| dc.subject.indexkeywords | retrospective study | |
| dc.subject.indexkeywords | smoking | |
| dc.subject.indexkeywords | stone passage rate | |
| dc.subject.indexkeywords | unnecessary procedure | |
| dc.subject.indexkeywords | ureter stone | |
| dc.subject.indexkeywords | ureteroscopy | |
| dc.subject.indexkeywords | algorithm | |
| dc.subject.indexkeywords | forecasting | |
| dc.subject.indexkeywords | middle aged | |
| dc.subject.indexkeywords | randomization | |
| dc.subject.indexkeywords | remission | |
| dc.subject.indexkeywords | Adult | |
| dc.subject.indexkeywords | Algorithms | |
| dc.subject.indexkeywords | Female | |
| dc.subject.indexkeywords | Forecasting | |
| dc.subject.indexkeywords | Humans | |
| dc.subject.indexkeywords | Male | |
| dc.subject.indexkeywords | Middle Aged | |
| dc.subject.indexkeywords | Neural Networks, Computer | |
| dc.subject.indexkeywords | Random Allocation | |
| dc.subject.indexkeywords | Remission, Spontaneous | |
| dc.subject.indexkeywords | Retrospective Studies | |
| dc.subject.indexkeywords | Ureteral Calculi | |
| dc.title | A neural network-based algorithm for predicting the spontaneous passage of ureteral stones | |
| dc.type | Article | |
| dcterms.references | Campbell Walsh Urology, (2007), Segura, Joseph W., Ureteral stones clinical guidelines panel summary report on the management of ureteral calculi, Journal of Urology, 158, 5, pp. 1915-1921, (1997), Aldaqadossi, Hussein Abdelhameed, Stone expulsion rate of small distal ureteric calculi could be predicted with plasma C-reactive protein, Urological Research, 41, 3, pp. 235-239, (2013), Sfoungaristos, Stavros, Role of white blood cell and neutrophil counts in predicting spontaneous stone passage in patients with renal colic., BJU International, 110, 8 Pt B, pp. E339-E345, (2012), Ahmed, A. F., Factors predicting the spontaneous passage of a ureteric calculus of ≤10 mm, Arab Journal of Urology, 13, 2, pp. 84-90, (2015), Fazlıoğlu, Adem, The effect of smoking on spontaneous passage of distal ureteral stones, BMC Urology, 14, 1, (2014), Introduction to Neural Networks, (1994), Akinsal, Emre Can, Artificial neural network for the prediction of chromosomal abnormalities in azoospermic males, Urology Journal, 15, 3, pp. 44-47, (2018), Seçkiner, Ilker, A neural network - Based algorithm for predicting stone - Free status after ESWL therapy, International Braz J Urol, 43, 6, pp. 1110-1114, (2017), Aminsharifi, Alireza Reza, Artificial Neural Network System to Predict the Postoperative Outcome of Percutaneous Nephrolithotomy, Journal of Endourology, 31, 5, pp. 461-467, (2017) | |
| dspace.entity.type | Publication | |
| local.indexed.at | Scopus | |
| person.identifier.scopus-author-id | 16023181800 | |
| person.identifier.scopus-author-id | 8598456400 | |
| person.identifier.scopus-author-id | 16834089300 |
