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The Prediction of Dry Weight for Chronic Hemodialysis Athletes Using a Machine Learning Approach: Sports Health Implications / La predicción del peso seco para atletas en hemodiálisis crónica mediante un enfoque de aprendizaje automático: implicaciones para la salud deportiva
Kim, Jae-Young; Kim, Ji-Hye; Kang, Ea-Wha; Chang, Tae-Ik; Lee, Yong-Kyu; Park, Kyung-Sook; So, Seok-Young; Kim, Seung-Hyun; Bae, Byung-Jun; Baek, Jeong-Yeol.
Affiliation
  • Kim, Jae-Young; Yonsei University. College of Medicine. Department of Internal Medicine. Seoul. Republic of Korea
  • Kim, Ji-Hye; Yonsei University. College of Medicine. Department of Internal Medicine. Seoul. Republic of Korea
  • Kang, Ea-Wha; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • Chang, Tae-Ik; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • Lee, Yong-Kyu; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • Park, Kyung-Sook; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • So, Seok-Young; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • Kim, Seung-Hyun; Ilsan Hospital. National Health Insurance Service Medical Canter. Department of Internal Medicine. Goyang-Si. Republic of Korea
  • Bae, Byung-Jun; The Corporation for medical data science. Seoul. Republic of Korea
  • Baek, Jeong-Yeol; The Corporation for medical data science. Seoul. Republic of Korea
Rev. psicol. deport ; 33(1): 68-82, 2024. ilus, tab, graf
Article in English | IBECS | ID: ibc-231716
Responsible library: ES1.1
Localization: ES15.1 - BNCS
ABSTRACT
This study seeks to evaluate the ability of machine learning methods to predict the dry weight of chronic hemodialysis athletes. The researcher has reached out to kidney patients who have had to give up sports and athletic careers due to chronic hemodialysis. This paper explores the development of medical prediction algorithms that combine image analysis with numerical data, which is widely used in the field of medicine. This deep learning method is widely employed to enhance the treatment of athletes who have kidney conditions. Regular hemodialysis is crucial for maintaining the health of athletes who have kidney disease. Accurately predicting dry weight is a crucial step in the process of performing hemodialysis. In this context, dry weight refers to the optimal moisture level at which excess water is effectively eliminated from the patient (athletes) through ultrafiltration during hemodialysis. In order to accurately determine the optimal amount of hemodialysis, predicting the correct dry weight is crucial. However, this task is quite challenging and often yields inaccurate results due to the extensive data analysis required by experienced nephrologists. This paper presents a deep learning methodology utilising the Artificial Neural Network (ANN) approach to efficiently address these issues. The proposed method aims to predict dry weight rapidly by analysing image values and clinical data from X-ray images obtained during routine check-ups. The current study has several theoretical and practical implications. This study contributes to the existing literature on chronic hemodialysis and the dry weight of athletes, offering valuable insights to sports health organisations. By doing so, these organisations can effectively prepare to proactively evaluate the atypical health conditions of athletes.(AU)
Subject(s)

Full text: Available Collection: National databases / Spain Database: IBECS Main subject: Sports / Sports Medicine / Renal Dialysis / Athletes / Psychology, Sports / Machine Learning Limits: Female / Humans / Male Language: English Journal: Rev. psicol. deport Year: 2024 Document type: Article Institution/Affiliation country: Ilsan Hospital/Republic of Korea / The Corporation for medical data science/Republic of Korea / Yonsei University/Republic of Korea
Full text: Available Collection: National databases / Spain Database: IBECS Main subject: Sports / Sports Medicine / Renal Dialysis / Athletes / Psychology, Sports / Machine Learning Limits: Female / Humans / Male Language: English Journal: Rev. psicol. deport Year: 2024 Document type: Article Institution/Affiliation country: Ilsan Hospital/Republic of Korea / The Corporation for medical data science/Republic of Korea / Yonsei University/Republic of Korea
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