Toward generalizing the use of artificial intelligence in nephrology and kidney transplantation

被引:0
作者
Samarra Badrouchi
Mohamed Mongi Bacha
Hafedh Hedri
Taieb Ben Abdallah
Ezzedine Abderrahim
机构
[1] Charles Nicolle Hospital,Department of Internal Medicine A
[2] University of Tunis El Manar,Faculty of Medicine of Tunis
[3] Charles Nicolle Hospital,Laboratory of Kidney Transplantation Immunology and Immunopathology (LR03SP01)
来源
Journal of Nephrology | 2023年 / 36卷
关键词
Artificial intelligence; Machine learning; Nephrology; Kidney transplantation;
D O I
暂无
中图分类号
学科分类号
摘要
With its robust ability to integrate and learn from large sets of clinical data, artificial intelligence (AI) can now play a role in diagnosis, clinical decision making, and personalized medicine. It is probably the natural progression of traditional statistical techniques. Currently, there are many unmet needs in nephrology and, more particularly, in the kidney transplantation (KT) field. The complexity and increase in the amount of data, and the multitude of nephrology registries worldwide have enabled the explosive use of AI within the field. Nephrologists in many countries are already at the center of experiments and advances in this cutting-edge technology and our aim is to generalize the use of AI among nephrologists worldwide. In this paper, we provide an overview of AI from a medical perspective. We cover the core concepts of AI relevant to the practicing nephrologist in a consistent and simple way to help them get started, and we discuss the technical challenges. Finally, we focus on the KT field: the unmet needs and the potential role that AI can play to fill these gaps, then we summarize the published KT-related studies, including predictive factors used in each study, which will allow researchers to quickly focus on the most relevant issues.
引用
收藏
页码:1087 / 1100
页数:13
相关论文
共 128 条
[1]  
Benjamens S(2020)The state of artificial intelligence-based FDA-approved medical devices and algorithms: an online database Npj Digit Med 3 118-11
[2]  
Dhunnoo P(2020)Artificial intelligence in colonoscopy: now on the market. What’s next? J Gastroenterol Hepatol 36 7-817
[3]  
Meskó B(2018)Artificial neural network model for predicting the bioavailability of tacrolimus in patients with renal transplantation PLoS ONE 13 e0191921-810
[4]  
Mori Y(2021)Machine learning for predicting long-term kidney allograft survival: a scoping review Irish J Med Sci 190 807-691
[5]  
Neumann H(2019)Artificial intelligence in nephrology: core concepts, clinical applications, and perspectives Am J Kidney Dis 74 803-26
[6]  
Misawa M(2022)Thirty years of the international banff classification for allograft pathology: the past, present, and future of kidney transplant diagnostics Kidney Int 101 678-472
[7]  
Kudo SE(2021)Forecasting of patient-specific kidney transplant function with a sequence-to-sequence deep learning model JAMA Netw Open 4 e2141617-832
[8]  
Bretthauer M(2022)Deep learning-based classification of kidney transplant pathology: a retrospective, multicentre, proof-of-concept study Lancet Digit Heal 4 e18-106
[9]  
Thishya K(2022)The ERA Registry Annual Report 2019: summary and age comparisons Clin Kidney J 15 452-92
[10]  
Vattam KK(2020)AdaCare: explainable clinical health status representation learning via scale-adaptive feature extraction and recalibration Proc AAAI Conf Artif Intell 3 825-65