Restricted accessResearch articleFirst published online 2020-06
Letter to the Editor RE: EL‐Nahas,Editorial Comment on: Predicting the Postoperative Outcome of Percutaneous Nephrolithotomy with Machine Learning System: Software Validation and Comparative Analysis with Guy's Stone Score and the CROES Nomogram by Aminsharifi et al. (J Endourol 2020;34(6):699–700;DOI: 10.1089/end.2020.0203)
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AminsharifiA, IraniD, TayebiS, JafariKafash T, ShabanianT, ParsaeiH.Predicting the postoperative outcome of percutaneous nephrolithotomy with machine learning system: Software validation and comparative analysis with Guy's stone score and the CROES nomogram. J Endourol, 2020; 34:692–699.
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EL-NahasA.Editorial comment on: Predicting the postoperative outcome of percutaneous nephrolithotomy with machine learning system: software validation and comparative analysis with Guy's stone score and the CROES nomogram by Aminsharifi et al.J Endourol, 2020; 34:699–700.