Literature DB >> 29594137

Artificial Intelligence for the Artificial Kidney: Pointers to the Future of a Personalized Hemodialysis Therapy.

Miguel Hueso1, Alfredo Vellido2, Nuria Montero1, Carlo Barbieri3, Rosa Ramos3, Manuel Angoso4, Josep Maria Cruzado1, Anders Jonsson5.   

Abstract

BACKGROUND: Current dialysis devices are not able to react when unexpected changes occur during dialysis treatment or to learn about experience for therapy personalization. Furthermore, great efforts are dedicated to develop miniaturized artificial kidneys to achieve a continuous and personalized dialysis therapy, in order to improve the patient's quality of life. These innovative dialysis devices will require a real-time monitoring of equipment alarms, dialysis parameters, and patient-related data to ensure patient safety and to allow instantaneous changes of the dialysis prescription for the assessment of their adequacy. The analysis and evaluation of the resulting large-scale data sets enters the realm of "big data" and will require real-time predictive models. These may come from the fields of machine learning and computational intelligence, both included in artificial intelligence, a branch of engineering involved with the creation of devices that simulate intelligent behavior. The incorporation of artificial intelligence should provide a fully new approach to data analysis, enabling future advances in personalized dialysis therapies. With the purpose to learn about the present and potential future impact on medicine from experts in artificial intelligence and machine learning, a scientific meeting was organized in the Hospital Universitari Bellvitge (L'Hospitalet, Barcelona). As an outcome of that meeting, the aim of this review is to investigate artificial intel ligence experiences on dialysis, with a focus on potential barriers, challenges, and prospects for future applications of these technologies. SUMMARY AND KEY MESSAGES: Artificial intelligence research on dialysis is still in an early stage, and the main challenge relies on interpretability and/or comprehensibility of data models when applied to decision making. Artificial neural networks and medical decision support systems have been used to make predictions about anemia, total body water, or intradialysis hypotension and are promising approaches for the prescription and monitoring of hemodialysis therapy. Current dialysis machines are continuously improving due to innovative technological developments, but patient safety is still a key challenge. Real-time monitoring systems, coupled with automatic instantaneous biofeedback, will allow changing dialysis prescriptions continuously. The integration of vital sign monitoring with dialysis parameters will produce large data sets that will require the use of data analysis techniques, possibly from the area of machine learning, in order to make better decisions and increase the safety of patients.

Entities:  

Keywords:  Artificial intelligence; Artificial kidney; Hemodialysis; Machine learning; Patient safety

Year:  2018        PMID: 29594137      PMCID: PMC5848485          DOI: 10.1159/000486394

Source DB:  PubMed          Journal:  Kidney Dis (Basel)        ISSN: 2296-9357


  43 in total

Review 1.  Advantages and disadvantages of using artificial neural networks versus logistic regression for predicting medical outcomes.

Authors:  J V Tu
Journal:  J Clin Epidemiol       Date:  1996-11       Impact factor: 6.437

Review 2.  Deep learning guided stroke management: a review of clinical applications.

Authors:  Rui Feng; Marcus Badgeley; J Mocco; Eric K Oermann
Journal:  J Neurointerv Surg       Date:  2017-09-27       Impact factor: 5.836

Review 3.  The role of technology in hemodialysis.

Authors:  C Ronco; P M Ghezzi; G La Greca
Journal:  J Nephrol       Date:  1999 Jul-Aug       Impact factor: 3.902

4.  Natural and Artificial Intelligence in Neurosurgery: A Systematic Review.

Authors:  Joeky T Senders; Omar Arnaout; Aditya V Karhade; Hormuzdiyar H Dasenbrock; William B Gormley; Marike L Broekman; Timothy R Smith
Journal:  Neurosurgery       Date:  2018-08-01       Impact factor: 4.654

5.  Optimization of anemia treatment in hemodialysis patients via reinforcement learning.

Authors:  Pablo Escandell-Montero; Milena Chermisi; José M Martínez-Martínez; Juan Gómez-Sanchis; Carlo Barbieri; Emilio Soria-Olivas; Flavio Mari; Joan Vila-Francés; Andrea Stopper; Emanuele Gatti; José D Martín-Guerrero
Journal:  Artif Intell Med       Date:  2014-07-19       Impact factor: 5.326

6.  Can extracellular fluid volume expansion in hemodialysis patients be safely reduced using the hemocontrol biofeedback algorithm? A randomized trial.

Authors:  Gihad E Nesrallah; Rita S Suri; Heather Thiessen-Philbrook; Paul Heidenheim; Robert M Lindsay
Journal:  ASAIO J       Date:  2008 May-Jun       Impact factor: 2.872

7.  Automatic control of blood volume trends during hemodialysis.

Authors:  A Santoro; E Mancini; F Paolini; M Spongano; P Zucchelli
Journal:  ASAIO J       Date:  1994 Jul-Sep       Impact factor: 2.872

8.  Prediction of the hemoglobin level in hemodialysis patients using machine learning techniques.

Authors:  José M Martínez-Martínez; Pablo Escandell-Montero; Carlo Barbieri; Emilio Soria-Olivas; Flavio Mari; Marcelino Martínez-Sober; Claudia Amato; Antonio J Serrano López; Marcello Bassi; Rafael Magdalena-Benedito; Andrea Stopper; José D Martín-Guerrero; Emanuele Gatti
Journal:  Comput Methods Programs Biomed       Date:  2014-07-14       Impact factor: 5.428

9.  Treatment of anemia in chronic kidney disease: known, unknown, and both.

Authors:  Robert N Foley
Journal:  J Blood Med       Date:  2011-08-01

10.  Predicting non-small cell lung cancer prognosis by fully automated microscopic pathology image features.

Authors:  Kun-Hsing Yu; Ce Zhang; Gerald J Berry; Russ B Altman; Christopher Ré; Daniel L Rubin; Michael Snyder
Journal:  Nat Commun       Date:  2016-08-16       Impact factor: 14.919

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  5 in total

Review 1.  Progress in the Development and Challenges for the Use of Artificial Kidneys and Wearable Dialysis Devices.

Authors:  Miguel Hueso; Estanislao Navarro; Diego Sandoval; Josep Maria Cruzado
Journal:  Kidney Dis (Basel)       Date:  2018-10-10

Review 2.  Leveraging Data Science for a Personalized Haemodialysis.

Authors:  Miguel Hueso; Lluís de Haro; Jordi Calabia; Rafael Dal-Ré; Cristian Tebé; Karina Gibert; Josep M Cruzado; Alfredo Vellido
Journal:  Kidney Dis (Basel)       Date:  2020-05-25

Review 3.  Using Artificial Intelligence Resources in Dialysis and Kidney Transplant Patients: A Literature Review.

Authors:  Alexandru Burlacu; Adrian Iftene; Daniel Jugrin; Iolanda Valentina Popa; Paula Madalina Lupu; Cristiana Vlad; Adrian Covic
Journal:  Biomed Res Int       Date:  2020-06-10       Impact factor: 3.411

4.  Development of an intelligent decision support system for ischemic stroke risk assessment in a population-based electronic health record database.

Authors:  Chen-Ying Hung; Ching-Heng Lin; Tsuo-Hung Lan; Giia-Sheun Peng; Chi-Chun Lee
Journal:  PLoS One       Date:  2019-03-13       Impact factor: 3.240

Review 5.  Machine learning in nephrology: scratching the surface.

Authors:  Qi Li; Qiu-Ling Fan; Qiu-Xia Han; Wen-Jia Geng; Huan-Huan Zhao; Xiao-Nan Ding; Jing-Yao Yan; Han-Yu Zhu
Journal:  Chin Med J (Engl)       Date:  2020-03-20       Impact factor: 2.628

  5 in total

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