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A Study on the Optimal Artificial Intelligence Model for Determination of Urolithiasisopen access

Authors
은성종윤명석황보택근김계환
Issue Date
Sep-2022
Publisher
대한배뇨장애요실금학회
Keywords
Urolithiasis; Ureter stones; ResNet-50; Fast R-CNN; Surgical support technology
Citation
International Neurourology Journal, v.26, no.3, pp.210 - 218
Journal Title
International Neurourology Journal
Volume
26
Number
3
Start Page
210
End Page
218
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87398
DOI
10.5213/inj.2244202.101
ISSN
2093-4777
Abstract
Purpose: This paper aims to develop a clinical decision support system (CDSS) that can help detect the stone that is most im portant to the diagnosis of urolithiasis. Among them, especially for the development of artificial intelligence (AI) models that support a final judgment in CDSS, we would like to study the optimal AI model by comparing and evaluating them. Methods: This paper proposes the optimal ureter stone detection model using various AI technologies. The use of AI technol ogy compares and evaluates methods such as machine learning (support vector machine), deep learning (ResNet-50, Fast R CNN), and image processing (watershed) to find a more effective method for detecting ureter stones. Results: The final value of sensitivity, which is calculated using true positive (TP) and false negative and is a measure of the probability of TP results, showed high recognition accuracy, with an average value of 0.93 for ResNet-50. This finding con firmed that accurate guidance to the stones area was possible when the developed platform was used to support actual surgery. Conclusions: The general situation in the most effective way to the detection stone can be found. But a variety of variables may be slightly different the difference through the term could tell. Future works, on urological diseases, are diverse and the research will be expanded by customizing AI models specialized for those diseases.
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