Literature DB >> 11728961

Artificial intelligence: a new approach for prescription and monitoring of hemodialysis therapy.

A I Akl1, M A Sobh, Y M Enab, J Tattersall.   

Abstract

The effect of dialysis on patients is conventionally predicted using a formal mathematical model. This approach requires many assumptions of the processes involved, and validation of these may be difficult. The validity of dialysis urea modeling using a formal mathematical model has been challenged. Artificial intelligence using neural networks (NNs) has been used to solve complex problems without needing a mathematical model or an understanding of the mechanisms involved. In this study, we applied an NN model to study and predict concentrations of urea during a hemodialysis session. We measured blood concentrations of urea, patient weight, and total urea removal by direct dialysate quantification (DDQ) at 30-minute intervals during the session (in 15 chronic hemodialysis patients). The NN model was trained to recognize the evolution of measured urea concentrations and was subsequently able to predict hemodialysis session time needed to reach a target solute removal index (SRI) in patients not previously studied by the NN model (in another 15 chronic hemodialysis patients). Comparing results of the NN model with the DDQ model, the prediction error was 10.9%, with a not significant difference between predicted total urea nitrogen (UN) removal and measured UN removal by DDQ. NN model predictions of time showed a not significant difference with actual intervals needed to reach the same SRI level at the same patient conditions, except for the prediction of SRI at the first 30-minute interval, which showed a significant difference (P = 0.001). This indicates the sensitivity of the NN model to what is called patient clearance time; the prediction error was 8.3%. From our results, we conclude that artificial intelligence applications in urea kinetics can give an idea of intradialysis profiling according to individual clinical needs. In theory, this approach can be extended easily to other solutes, making the NN model a step forward to achieving artificial-intelligent dialysis control.

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Year:  2001        PMID: 11728961     DOI: 10.1053/ajkd.2001.29225

Source DB:  PubMed          Journal:  Am J Kidney Dis        ISSN: 0272-6386            Impact factor:   8.860


  7 in total

1.  Application of intelligent systems in asthma disease: designing a fuzzy rule-based system for evaluating level of asthma exacerbation.

Authors:  Maryam Zolnoori; Mohammad Hossein Fazel Zarandi; Mostafa Moin
Journal:  J Med Syst       Date:  2011-03-12       Impact factor: 4.460

2.  Dialysate-side urea kinetics. Neural network predicts dialysis dose during dialysis.

Authors:  E A Fernández; R Valtuille; P Willshaw; C A Perazzo
Journal:  Med Biol Eng Comput       Date:  2003-07       Impact factor: 2.602

Review 3.  Big Data in Nephrology.

Authors:  Navchetan Kaur; Sanchita Bhattacharya; Atul J Butte
Journal:  Nat Rev Nephrol       Date:  2021-06-30       Impact factor: 28.314

Review 4.  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 5.  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

Review 6.  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

7.  Dialysis adequacy predictions using a machine learning method.

Authors:  Hyung Woo Kim; Seok-Jae Heo; Jae Young Kim; Annie Kim; Chung-Mo Nam; Beom Seok Kim
Journal:  Sci Rep       Date:  2021-07-29       Impact factor: 4.379

  7 in total

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