Using Artificial Intelligence Resources in Dialysis and Kidney Transplant Patients: A Literature Review

Author:

Burlacu Alexandru12ORCID,Iftene Adrian3,Jugrin Daniel4ORCID,Popa Iolanda Valentina25ORCID,Lupu Paula Madalina2,Vlad Cristiana26,Covic Adrian278ORCID

Affiliation:

1. Department of Interventional Cardiology-Cardiovascular Diseases Institute, Iasi, Romania

2. “Grigore T. Popa” University of Medicine, Iasi, Romania

3. Faculty of Computer Science, “Alexandru Ioan Cuza” University of Iasi, Romania

4. Center for Studies and Interreligious and Intercultural Dialogue, University of Bucharest, Romania

5. Institute of Gastroenterology and Hepatology, Iasi, Romania

6. Department of Internal Medicine-Nephrology, Iasi, Romania

7. Nephrology Clinic, Dialysis and Renal Transplant Center-‘C.I. Parhon’ University Hospital, Iasi, Romania

8. The Academy of Romanian Scientists (AOSR), Romania

Abstract

Background. The purpose of this review is to depict current research and impact of artificial intelligence/machine learning (AI/ML) algorithms on dialysis and kidney transplantation. Published studies were presented from two points of view: What medical aspects were covered? What AI/ML algorithms have been used? Methods. We searched four electronic databases or studies that used AI/ML in hemodialysis (HD), peritoneal dialysis (PD), and kidney transplantation (KT). Sixty-nine studies were split into three categories: AI/ML and HD, PD, and KT, respectively. We identified 43 trials in the first group, 8 in the second, and 18 in the third. Then, studies were classified according to the type of algorithm. Results. AI and HD trials covered: (a) dialysis service management, (b) dialysis procedure, (c) anemia management, (d) hormonal/dietary issues, and (e) arteriovenous fistula assessment. PD studies were divided into (a) peritoneal technique issues, (b) infections, and (c) cardiovascular event prediction. AI in transplantation studies were allocated into (a) management systems (ML used as pretransplant organ-matching tools), (b) predicting graft rejection, (c) tacrolimus therapy modulation, and (d) dietary issues. Conclusions. Although guidelines are reluctant to recommend AI implementation in daily practice, there is plenty of evidence that AI/ML algorithms can predict better than nephrologists: volumes, Kt/V, and hypotension or cardiovascular events during dialysis. Altogether, these trials report a robust impact of AI/ML on quality of life and survival in G5D/T patients. In the coming years, one would probably witness the emergence of AI/ML devices that facilitate the management of dialysis patients, thus increasing the quality of life and survival.

Funder

Unitatea Executiva pentru Finantarea Invatamantului Superior, a Cercetarii, Dezvoltarii si Inovarii

Publisher

Hindawi Limited

Subject

General Immunology and Microbiology,General Biochemistry, Genetics and Molecular Biology,General Medicine

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