Enhancing data integrity in internet of things-based healthcare applications: a visualization approach for duplicate detection

This study addresses the critical issue of data duplication in healthcare-related internet of things (IoT) datasets, which can compromise the reliability of analyses and patient outcomes. A Python-based visualization framework using Pandas and Matplotlib was developed to detect and represent duplica...

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Bibliographic Details
Main Authors: Md Isa, Siti Noor Basirah, Emran, Nurul Akmar, Harum, Norharyati, Logenthiran, Machap, Nordin, Azlin
Format: Article
Language:en
en
Published: Institute of Advanced Engineering and Science 2025
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Online Access:http://irep.iium.edu.my/123798/7/123798_Enhancing%20data%20integrity%20in%20internet%20of%20things.pdf
http://irep.iium.edu.my/123798/8/123798_Enhancing%20data%20integrity%20in%20internet%20of%20things_Scopus.pdf
http://irep.iium.edu.my/123798/
https://beei.org/index.php/EEI/article/view/10063
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Summary:This study addresses the critical issue of data duplication in healthcare-related internet of things (IoT) datasets, which can compromise the reliability of analyses and patient outcomes. A Python-based visualization framework using Pandas and Matplotlib was developed to detect and represent duplicate records. The methodology was applied to six cancer-related datasets sourced from Kaggle, ranging from 300 to 55,000 records, encompassing numerical, textual, and categorical data types. The visualization technique provided clear insights into duplication patterns, identifying specific counts such as 7 duplicates in the wearable device dataset, 19 in the thyroid recurrence dataset, and 534 in the synthetic healthcare electronic health record (EHR) dataset. Compared to traditional detection methods, the visualization tool facilitated faster and more intuitive initial data assessment, demonstrating its effectiveness for rapid quality checks in healthcare datasets. However, scalability limitations were observed in larger datasets, where visual clarity declined. These findings highlight the value of visualization as a preliminary data quality assessment tool and suggest future integration with advanced detection algorithms to enhance robustness and scalability