VinaR - Repository of the Vinča Nuclear Institute
    • English
    • Српски
    • Српски (Serbia)
  • English 
    • English
    • Serbian (Cyrillic)
    • Serbian (Latin)
  • Login
View Item 
  •   Vinar
  • Vinča
  • Radovi istraživača
  • View Item
  •   Vinar
  • Vinča
  • Radovi istraživača
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment

Authorized Users Only
2023
Authors
Tasić, Danijela
Đorđević, Katarina Lj.
Galović, Slobodanka
Furundžić, Draško
Dimitrijević, Zorica
Article (Published version)
Metadata
Show full item record
Abstract
Acute kidney injury is a syndrome that occurs in different clinical situations, under the influence of different risk factors, in patients of all ages, especially those in the intensive care unit. The problem of acute kidney damage refers to numerous clinical situations, different disease mechanisms and poor outcomes. In addition, with the current definition of acute kidney injury, only one conventional marker is available for diagnosis in daily clinical practice. To recognize the disease promptly and start treatment, and thereby improving the outcome, the paper presents a model for recognizing acute kidney damage in the stage that requires hemodialysis treatment.The study included 86 hospitalized patients with acute renal impairment who were divided according to the stage of renal impairment at admission to hospital treatment into three groups. The assessment of acute renal impairment and the classification of disease stages were based on the diagnostic stages by the K / DIGO group. A...ll examined patients were over 18 years of age. In the first stage of the disease it was 12.79%, in the second stage it was 15.12%, and in the third 72.09% of patients. Test methods included clinical processing, laboratory evaluation, functional tests, and echosonographic examination. Clinical data included demographic, comorbidity and vital parameters, baseline full blood count, biochemistry and renal function tests. Further laboratory investigations were performed as indicated clinically thereafter. Spot blood and urine samples were collected from all patients in the morning after overnight fasting. The neural network was created in feed forward back propagation of the connection between the data of 69 patients with 31 parameters. In pattern recognition, the neural network learns to recognize the conditions in which it was decided to send the patient to dialysis 10 or to send to classical treatment 01. The training function analyzed the patients separated in three special categories 80% training, 10% test and 10% validation. The algorithm of the learning function is a scaling gradient that adapts the input data to the output data.The neural network achieved a performance of 0.14322 in 6 epochs. In a test with the data of 17 patients, it was shown that the neural network indicates for which patients dialysis treatment is a better option that fits with AKI stage 3. For patients with the first and second stages of the disease, conservative treatment is a better therapeutic choice.This paper deals with a current topic by analyzing data using a neural network algorithm to help assess the stage of the disease in high-risk hospitalized patients with acute kidney injury and select treatment modalities. The conclusions derived from this analysis should help with stage recognition and the selection of treatment modalities for patients with acute kidney injury.

Source:
Nephrology Dialysis Transplantation, 2023, 38, Supplement_1, #6830-

DOI: 10.1093/ndt/gfad063c_6830

ISSN: 0931-0509

WoS: 001022961103392

[ Google Scholar ]
URI
https://vinar.vin.bg.ac.rs/handle/123456789/11572
Collections
  • Radovi istraživača
Institution/Community
Vinča
TY  - JOUR
AU  - Tasić, Danijela
AU  - Đorđević, Katarina Lj.
AU  - Galović, Slobodanka
AU  - Furundžić, Draško
AU  - Dimitrijević, Zorica
PY  - 2023
UR  - https://vinar.vin.bg.ac.rs/handle/123456789/11572
AB  - Acute kidney injury is a syndrome that occurs in different clinical situations, under the influence of different risk factors, in patients of all ages, especially those in the intensive care unit. The problem of acute kidney damage refers to numerous clinical situations, different disease mechanisms and poor outcomes. In addition, with the current definition of acute kidney injury, only one conventional marker is available for diagnosis in daily clinical practice. To recognize the disease promptly and start treatment, and thereby improving the outcome, the paper presents a model for recognizing acute kidney damage in the stage that requires hemodialysis treatment.The study included 86 hospitalized patients with acute renal impairment who were divided according to the stage of renal impairment at admission to hospital treatment into three groups. The assessment of acute renal impairment and the classification of disease stages were based on the diagnostic stages by the K / DIGO group. All examined patients were over 18 years of age. In the first stage of the disease it was 12.79%, in the second stage it was 15.12%, and in the third 72.09% of patients. Test methods included clinical processing, laboratory evaluation, functional tests, and echosonographic examination. Clinical data included demographic, comorbidity and vital parameters, baseline full blood count, biochemistry and renal function tests. Further laboratory investigations were performed as indicated clinically thereafter. Spot blood and urine samples were collected from all patients in the morning after overnight fasting. The neural network was created in feed forward back propagation of the connection between the data of 69 patients with 31 parameters. In pattern recognition, the neural network learns to recognize the conditions in which it was decided to send the patient to dialysis 10 or to send to classical treatment 01. The training function analyzed the patients separated in three special categories 80% training, 10% test and 10% validation. The algorithm of the learning function is a scaling gradient that adapts the input data to the output data.The neural network achieved a performance of 0.14322 in 6 epochs. In a test with the data of 17 patients, it was shown that the neural network indicates for which patients dialysis treatment is a better option that fits with AKI stage 3. For patients with the first and second stages of the disease, conservative treatment is a better therapeutic choice.This paper deals with a current topic by analyzing data using a neural network algorithm to help assess the stage of the disease in high-risk hospitalized patients with acute kidney injury and select treatment modalities. The conclusions derived from this analysis should help with stage recognition and the selection of treatment modalities for patients with acute kidney injury.
T2  - Nephrology Dialysis Transplantation
T2  - Nephrology Dialysis TransplantationNephrology Dialysis Transplantation
T1  - Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment
VL  - 38
IS  - Supplement_1
SP  - #6830
DO  - 10.1093/ndt/gfad063c_6830
ER  - 
@article{
author = "Tasić, Danijela and Đorđević, Katarina Lj. and Galović, Slobodanka and Furundžić, Draško and Dimitrijević, Zorica",
year = "2023",
abstract = "Acute kidney injury is a syndrome that occurs in different clinical situations, under the influence of different risk factors, in patients of all ages, especially those in the intensive care unit. The problem of acute kidney damage refers to numerous clinical situations, different disease mechanisms and poor outcomes. In addition, with the current definition of acute kidney injury, only one conventional marker is available for diagnosis in daily clinical practice. To recognize the disease promptly and start treatment, and thereby improving the outcome, the paper presents a model for recognizing acute kidney damage in the stage that requires hemodialysis treatment.The study included 86 hospitalized patients with acute renal impairment who were divided according to the stage of renal impairment at admission to hospital treatment into three groups. The assessment of acute renal impairment and the classification of disease stages were based on the diagnostic stages by the K / DIGO group. All examined patients were over 18 years of age. In the first stage of the disease it was 12.79%, in the second stage it was 15.12%, and in the third 72.09% of patients. Test methods included clinical processing, laboratory evaluation, functional tests, and echosonographic examination. Clinical data included demographic, comorbidity and vital parameters, baseline full blood count, biochemistry and renal function tests. Further laboratory investigations were performed as indicated clinically thereafter. Spot blood and urine samples were collected from all patients in the morning after overnight fasting. The neural network was created in feed forward back propagation of the connection between the data of 69 patients with 31 parameters. In pattern recognition, the neural network learns to recognize the conditions in which it was decided to send the patient to dialysis 10 or to send to classical treatment 01. The training function analyzed the patients separated in three special categories 80% training, 10% test and 10% validation. The algorithm of the learning function is a scaling gradient that adapts the input data to the output data.The neural network achieved a performance of 0.14322 in 6 epochs. In a test with the data of 17 patients, it was shown that the neural network indicates for which patients dialysis treatment is a better option that fits with AKI stage 3. For patients with the first and second stages of the disease, conservative treatment is a better therapeutic choice.This paper deals with a current topic by analyzing data using a neural network algorithm to help assess the stage of the disease in high-risk hospitalized patients with acute kidney injury and select treatment modalities. The conclusions derived from this analysis should help with stage recognition and the selection of treatment modalities for patients with acute kidney injury.",
journal = "Nephrology Dialysis Transplantation, Nephrology Dialysis TransplantationNephrology Dialysis Transplantation",
title = "Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment",
volume = "38",
number = "Supplement_1",
pages = "#6830",
doi = "10.1093/ndt/gfad063c_6830"
}
Tasić, D., Đorđević, K. Lj., Galović, S., Furundžić, D.,& Dimitrijević, Z.. (2023). Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment. in Nephrology Dialysis Transplantation, 38(Supplement_1), #6830.
https://doi.org/10.1093/ndt/gfad063c_6830
Tasić D, Đorđević KL, Galović S, Furundžić D, Dimitrijević Z. Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment. in Nephrology Dialysis Transplantation. 2023;38(Supplement_1):#6830.
doi:10.1093/ndt/gfad063c_6830 .
Tasić, Danijela, Đorđević, Katarina Lj., Galović, Slobodanka, Furundžić, Draško, Dimitrijević, Zorica, "Application of the neural network algorithm in the assessment of the stage of acute kidney damage and the selection of treatment" in Nephrology Dialysis Transplantation, 38, no. Supplement_1 (2023):#6830,
https://doi.org/10.1093/ndt/gfad063c_6830 . .

DSpace software copyright © 2002-2015  DuraSpace
About the VinaR Repository | Send Feedback

re3dataOpenAIRERCUB
 

 

All of DSpaceCommunitiesAuthorsTitlesSubjectsThis institutionAuthorsTitlesSubjects

Statistics

View Usage Statistics

DSpace software copyright © 2002-2015  DuraSpace
About the VinaR Repository | Send Feedback

re3dataOpenAIRERCUB