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Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling

Continuous monitoring of patients involves collecting and analyzing sensory data from a multitude of sources. To overcome communication overhead, ensure data privacy and security, reduce data loss, and maintain efficient resource usage, the processing and analytics are moved close to where the data...

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Autores principales: Navaz, Alramzana Nujum, Serhani, Mohamed Adel, El Kassabi, Hadeel T., Taleb, Ikbal
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10384464/
https://www.ncbi.nlm.nih.gov/pubmed/37514736
http://dx.doi.org/10.3390/s23146443
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author Navaz, Alramzana Nujum
Serhani, Mohamed Adel
El Kassabi, Hadeel T.
Taleb, Ikbal
author_facet Navaz, Alramzana Nujum
Serhani, Mohamed Adel
El Kassabi, Hadeel T.
Taleb, Ikbal
author_sort Navaz, Alramzana Nujum
collection PubMed
description Continuous monitoring of patients involves collecting and analyzing sensory data from a multitude of sources. To overcome communication overhead, ensure data privacy and security, reduce data loss, and maintain efficient resource usage, the processing and analytics are moved close to where the data are located (e.g., the edge). However, data quality (DQ) can be degraded because of imprecise or malfunctioning sensors, dynamic changes in the environment, transmission failures, or delays. Therefore, it is crucial to keep an eye on data quality and spot problems as quickly as possible, so that they do not mislead clinical judgments and lead to the wrong course of action. In this article, a novel approach called federated data quality profiling (FDQP) is proposed to assess the quality of the data at the edge. FDQP is inspired by federated learning (FL) and serves as a condensed document or a guide for node data quality assurance. The FDQP formal model is developed to capture the quality dimensions specified in the data quality profile (DQP). The proposed approach uses federated feature selection to improve classifier precision and rank features based on criteria such as feature value, outlier percentage, and missing data percentage. Extensive experimentation using a fetal dataset split into different edge nodes and a set of scenarios were carefully chosen to evaluate the proposed FDQP model. The results of the experiments demonstrated that the proposed FDQP approach positively improved the DQ, and thus, impacted the accuracy of the federated patient similarity network (FPSN)-based machine learning models. The proposed data-quality-aware federated PSN architecture leveraging FDQP model with data collected from edge nodes can effectively improve the data quality and accuracy of the federated patient similarity network (FPSN)-based machine learning models. Our profiling algorithm used lightweight profile exchange instead of full data processing at the edge, which resulted in optimal data quality achievement, thus improving efficiency. Overall, FDQP is an effective method for assessing data quality in the edge computing environment, and we believe that the proposed approach can be applied to other scenarios beyond patient monitoring.
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spelling pubmed-103844642023-07-30 Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling Navaz, Alramzana Nujum Serhani, Mohamed Adel El Kassabi, Hadeel T. Taleb, Ikbal Sensors (Basel) Article Continuous monitoring of patients involves collecting and analyzing sensory data from a multitude of sources. To overcome communication overhead, ensure data privacy and security, reduce data loss, and maintain efficient resource usage, the processing and analytics are moved close to where the data are located (e.g., the edge). However, data quality (DQ) can be degraded because of imprecise or malfunctioning sensors, dynamic changes in the environment, transmission failures, or delays. Therefore, it is crucial to keep an eye on data quality and spot problems as quickly as possible, so that they do not mislead clinical judgments and lead to the wrong course of action. In this article, a novel approach called federated data quality profiling (FDQP) is proposed to assess the quality of the data at the edge. FDQP is inspired by federated learning (FL) and serves as a condensed document or a guide for node data quality assurance. The FDQP formal model is developed to capture the quality dimensions specified in the data quality profile (DQP). The proposed approach uses federated feature selection to improve classifier precision and rank features based on criteria such as feature value, outlier percentage, and missing data percentage. Extensive experimentation using a fetal dataset split into different edge nodes and a set of scenarios were carefully chosen to evaluate the proposed FDQP model. The results of the experiments demonstrated that the proposed FDQP approach positively improved the DQ, and thus, impacted the accuracy of the federated patient similarity network (FPSN)-based machine learning models. The proposed data-quality-aware federated PSN architecture leveraging FDQP model with data collected from edge nodes can effectively improve the data quality and accuracy of the federated patient similarity network (FPSN)-based machine learning models. Our profiling algorithm used lightweight profile exchange instead of full data processing at the edge, which resulted in optimal data quality achievement, thus improving efficiency. Overall, FDQP is an effective method for assessing data quality in the edge computing environment, and we believe that the proposed approach can be applied to other scenarios beyond patient monitoring. MDPI 2023-07-16 /pmc/articles/PMC10384464/ /pubmed/37514736 http://dx.doi.org/10.3390/s23146443 Text en © 2023 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Navaz, Alramzana Nujum
Serhani, Mohamed Adel
El Kassabi, Hadeel T.
Taleb, Ikbal
Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title_full Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title_fullStr Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title_full_unstemmed Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title_short Empowering Patient Similarity Networks through Innovative Data-Quality-Aware Federated Profiling
title_sort empowering patient similarity networks through innovative data-quality-aware federated profiling
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10384464/
https://www.ncbi.nlm.nih.gov/pubmed/37514736
http://dx.doi.org/10.3390/s23146443
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