Related references
Note: Only part of the references are listed.Towards automatic recognition of pure and mixed stones using intra-operative endoscopic digital images
Vincent Estrade et al.
BJU INTERNATIONAL (2022)
Medical Treatment and Prevention of Urinary Stone Disease
Kyle Spradling et al.
UROLOGIC CLINICS OF NORTH AMERICA (2022)
In Vivo Feasibility Test of a New Flexible Ureteroscopic Robotic System, easyUretero, for Renal Stone Retrieval in a Porcine Model
Joonhwan Kim et al.
YONSEI MEDICAL JOURNAL (2022)
The First 100 Cases of Endoscopic Combined Intrarenal Surgery in Korea: Matched Cohort Analyses versus Shock-Wave Lithotripsy
Hae Do Jung et al.
YONSEI MEDICAL JOURNAL (2022)
Toward improved endoscopic examination of urinary stones: a concordance study between endoscopic digital pictures vs microscopy
Vincent Estrade et al.
BJU INTERNATIONAL (2021)
Large database study of urinary stone composition in South Korea: Korean Society of Endourology and Robotics (KSER) research series
Hae Do Jung et al.
INVESTIGATIVE AND CLINICAL UROLOGY (2021)
Deep learning computer vision algorithm for detecting kidney stone composition
Kristian M. Black et al.
BJU INTERNATIONAL (2020)
Metabolic Evaluation and Recurrence Prevention for Urinary Stone Patients: EAU Guidelines
Andreas Skolarikos et al.
EUROPEAN UROLOGY (2015)
Stone Composition as a Function of Age and Sex
John C. Lieske et al.
CLINICAL JOURNAL OF THE AMERICAN SOCIETY OF NEPHROLOGY (2014)
A Survey on Transfer Learning
Sinno Jialin Pan et al.
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING (2010)
Receiver Operating Characteristic Curve in Diagnostic Test Assessment
Jayawant N. Mandrekar
JOURNAL OF THORACIC ONCOLOGY (2010)
Renal geology (quantitative renal stone analysis) by 'Fourier transform infrared spectroscopy'
Iqbal Singh
INTERNATIONAL UROLOGY AND NEPHROLOGY (2008)
CMOS image sensors
A El Gamal et al.
IEEE CIRCUITS & DEVICES (2005)