Author:
Sulaksono Nanang,Adi Kusworo,Isnanto dan Rizal
Abstract
Medical imaging is currently using artificial intelligence-based technologies to aid evaluate diagnostic information images, particularly in enforcing kidney stones. Artificial intelligence technology continues to develop, many studies show that deep learning is more widely used compared to traditional machine learning, so an Artificial intelligence system is needed to assist the accuracy of health diagnoses, thus helping in the field of radiology health. The aim of the research is to use artificial intelligence with deep learning models to help detect abnormalities in the kidneys. This research method is a literature review of Scopus data related to deep learning in medical imaging in detecting kidney stones. The results of using Artificial Intelligence in medical imaging can be used in diagnosing diseases including detecting Covid-19, musculoskeletal, calcium scores on Cardiac CT, liver tumors, urinary tract lesions, examination of the abdomen and kidney stones. Utilization of Artificial Intelligence in detecting kidney stones can be done with various classification models including XResNet-50, ExDark19, CystoNet, CNN, ANN. Using the right model and having a high accuracy value can help radiologists to accurately detect kidney stones.
Reference20 articles.
1. DeepLesion: automated mining of large-scale lesion annotations and universal lesion detection with deep learning
2. Jia W, He X, Hesamian MH, and Kennedy P. Medical Image Segmentation Using Deep Learning Techniques: Progress and Challenges. 582-96. J Digit Imaging. 2019 Aug 29. 32(4).
3. Ozturk T, Talo M, Yildirim EA, Baloglu UB, Rajendra Acharya U. automated COVID-19 case detection with X-ray pictures and deep neural networks. 121:103792 Comput Biol Med. 2020 Jun.
4. Roth HR, Shen C, Oda H, Oda M, Hayashi Y, Misawa K, et al. Deep learning and its application to medical image segmentation. March 23, 2018;
5. Kijowski R, Liu F, Caliva F, Pedoia V. Deep learning for injury detection, progression and prediction of musculoskeletal diseases. Magnetic Resonance Imaging Journal. 2020 December 25 52(6): 1607–19.