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Main Authors: Alharthi, Abdullah, Alqurashi, Ahmed, Alharbi, Turki, Alammar, Mohammed, Aldosari, Nasser, Bouchekara, Houssem, Shaaban, Yusuf, Shahriar, Mohammad Shoaib, Ayidh, Abdulrahman Al
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2409.07347
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author Alharthi, Abdullah
Alqurashi, Ahmed
Alharbi, Turki
Alammar, Mohammed
Aldosari, Nasser
Bouchekara, Houssem
Shaaban, Yusuf
Shahriar, Mohammad Shoaib
Ayidh, Abdulrahman Al
author_facet Alharthi, Abdullah
Alqurashi, Ahmed
Alharbi, Turki
Alammar, Mohammed
Aldosari, Nasser
Bouchekara, Houssem
Shaaban, Yusuf
Shahriar, Mohammad Shoaib
Ayidh, Abdulrahman Al
contents The complex nature of disease mechanisms and the variability of patient symptoms pose significant challenges in developing effective diagnostic tools. Although machine learning (ML) has made substantial advances in medical diagnosis, the decision-making processes of these models often lack transparency, potentially jeopardizing patient outcomes. This review aims to highlight the role of Explainable AI (XAI) in addressing the interpretability issues of ML models in healthcare, with a focus on chronic conditions such as Parkinson's, stroke, depression, cancer, heart disease, and Alzheimer's disease. A comprehensive literature search was conducted across multiple databases to identify studies that applied XAI techniques in healthcare. The search focused on XAI algorithms used in diagnosing and monitoring chronic diseases. The review identified the application of nine trending XAI algorithms, each evaluated for their advantages and limitations in various healthcare contexts. The findings underscore the importance of transparency in ML models, which is crucial for improving trust and outcomes in clinical practice. While XAI provides significant potential to bridge the gap between complex ML models and clinical practice, challenges such as scalability, validation, and clinician acceptance remain. The review also highlights areas requiring further research, particularly in integrating XAI into healthcare systems. The study concludes that XAI methods offer a promising path forward for enhancing human health monitoring and patient care, though significant challenges must be addressed to fully realize their potential in clinical settings.
format Preprint
id arxiv_https___arxiv_org_abs_2409_07347
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle The Role of Explainable AI in Revolutionizing Human Health Monitoring: A Review
Alharthi, Abdullah
Alqurashi, Ahmed
Alharbi, Turki
Alammar, Mohammed
Aldosari, Nasser
Bouchekara, Houssem
Shaaban, Yusuf
Shahriar, Mohammad Shoaib
Ayidh, Abdulrahman Al
Signal Processing
Machine Learning
The complex nature of disease mechanisms and the variability of patient symptoms pose significant challenges in developing effective diagnostic tools. Although machine learning (ML) has made substantial advances in medical diagnosis, the decision-making processes of these models often lack transparency, potentially jeopardizing patient outcomes. This review aims to highlight the role of Explainable AI (XAI) in addressing the interpretability issues of ML models in healthcare, with a focus on chronic conditions such as Parkinson's, stroke, depression, cancer, heart disease, and Alzheimer's disease. A comprehensive literature search was conducted across multiple databases to identify studies that applied XAI techniques in healthcare. The search focused on XAI algorithms used in diagnosing and monitoring chronic diseases. The review identified the application of nine trending XAI algorithms, each evaluated for their advantages and limitations in various healthcare contexts. The findings underscore the importance of transparency in ML models, which is crucial for improving trust and outcomes in clinical practice. While XAI provides significant potential to bridge the gap between complex ML models and clinical practice, challenges such as scalability, validation, and clinician acceptance remain. The review also highlights areas requiring further research, particularly in integrating XAI into healthcare systems. The study concludes that XAI methods offer a promising path forward for enhancing human health monitoring and patient care, though significant challenges must be addressed to fully realize their potential in clinical settings.
title The Role of Explainable AI in Revolutionizing Human Health Monitoring: A Review
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2409.07347