Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach

The detection of Intradialytic hypotension (IDH) and hypertension (IDHTN) during hemodialysis treatment is necessary as these conditions can severely impact a patient's health and increase the risk of mortality. Early detection and intervention are crucial to prevent harm and ensure successful...

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Published in:8th International Conference on Recent Advances and Innovations in Engineering: Empowering Computing, Analytics, and Engineering Through Digital Innovation, ICRAIE 2023
Main Author: Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
Format: Conference paper
Language:English
Published: Institute of Electrical and Electronics Engineers Inc. 2023
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85189927935&doi=10.1109%2fICRAIE59459.2023.10468200&partnerID=40&md5=3035e40b3e1bd765e50f9d4acab3c96f
id 2-s2.0-85189927935
spelling 2-s2.0-85189927935
Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
2023
8th International Conference on Recent Advances and Innovations in Engineering: Empowering Computing, Analytics, and Engineering Through Digital Innovation, ICRAIE 2023


10.1109/ICRAIE59459.2023.10468200
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85189927935&doi=10.1109%2fICRAIE59459.2023.10468200&partnerID=40&md5=3035e40b3e1bd765e50f9d4acab3c96f
The detection of Intradialytic hypotension (IDH) and hypertension (IDHTN) during hemodialysis treatment is necessary as these conditions can severely impact a patient's health and increase the risk of mortality. Early detection and intervention are crucial to prevent harm and ensure successful treatment outcomes. However, gathering hemodialysis data can be challenging and time-consuming, which may lead to a small dataset. Moreover, this problem will be more complex when it involves other issues, such as inconsistent and missing data. Thus, this study aimed to adapt the data profiling technique to solve the mentioned problems the process involved three phases: structure discovery, content discovery, and relationship discovery the data profiling technique created five datasets through weight vector categorization: (1) Full Dataset, (2) Mid Moderate and Low Moderate (MMLM), (3) Strong and High Moderate (SHM), (4) combination of MLMM and SHM and (5) Strong Only. Four classifiers, Naive Bayes (NB), Support Vector Machine (SVM), Linear Regression (LR), and K-Nearest Neighbor (KNN), were used to predict the occurrence of IDH and IDHTN, and their accuracy was observed and evaluated the study found that KNN gave the best performance, with an average accuracy of 81.54% for all datasets, compared to the other three classifiers the study demonstrates the effectiveness of data profiling techniques in improving the accuracy of machine learning models, even with small datasets. Future research could expand the study by including more factors and data to provide a comprehensive view of patients and predict the occurrence of IDH and IDHTN. © 2023 IEEE.
Institute of Electrical and Electronics Engineers Inc.

English
Conference paper

author Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
spellingShingle Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
author_facet Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
author_sort Ahmad A.; Mohd Zaini M.N.; Akmal Kamaru-Zaman E.; Saidin R.
title Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
title_short Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
title_full Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
title_fullStr Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
title_full_unstemmed Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
title_sort Exploring Factors Influencing Intradialytic Hypotension and Hypertension in Small-Instances Hemodialysis Data: A Data Profiling Approach
publishDate 2023
container_title 8th International Conference on Recent Advances and Innovations in Engineering: Empowering Computing, Analytics, and Engineering Through Digital Innovation, ICRAIE 2023
container_volume
container_issue
doi_str_mv 10.1109/ICRAIE59459.2023.10468200
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85189927935&doi=10.1109%2fICRAIE59459.2023.10468200&partnerID=40&md5=3035e40b3e1bd765e50f9d4acab3c96f
description The detection of Intradialytic hypotension (IDH) and hypertension (IDHTN) during hemodialysis treatment is necessary as these conditions can severely impact a patient's health and increase the risk of mortality. Early detection and intervention are crucial to prevent harm and ensure successful treatment outcomes. However, gathering hemodialysis data can be challenging and time-consuming, which may lead to a small dataset. Moreover, this problem will be more complex when it involves other issues, such as inconsistent and missing data. Thus, this study aimed to adapt the data profiling technique to solve the mentioned problems the process involved three phases: structure discovery, content discovery, and relationship discovery the data profiling technique created five datasets through weight vector categorization: (1) Full Dataset, (2) Mid Moderate and Low Moderate (MMLM), (3) Strong and High Moderate (SHM), (4) combination of MLMM and SHM and (5) Strong Only. Four classifiers, Naive Bayes (NB), Support Vector Machine (SVM), Linear Regression (LR), and K-Nearest Neighbor (KNN), were used to predict the occurrence of IDH and IDHTN, and their accuracy was observed and evaluated the study found that KNN gave the best performance, with an average accuracy of 81.54% for all datasets, compared to the other three classifiers the study demonstrates the effectiveness of data profiling techniques in improving the accuracy of machine learning models, even with small datasets. Future research could expand the study by including more factors and data to provide a comprehensive view of patients and predict the occurrence of IDH and IDHTN. © 2023 IEEE.
publisher Institute of Electrical and Electronics Engineers Inc.
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language English
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