LGSep 22, 2024

Prediction and Detection of Terminal Diseases Using Internet of Medical Things: A Review

arXiv:2410.00034v110 citationsh-index: 18Has Code
Originality Synthesis-oriented
AI Analysis

It addresses the problem of improving healthcare outcomes for patients with chronic diseases, but is incremental as it synthesizes existing research and identifies gaps without proposing new methods.

This review examines the use of AI and IoMT for predicting and detecting terminal diseases, noting that models like XGBoost and CNNs achieve over 98% accuracy for conditions such as heart disease and lung cancer, but face challenges in real-world clinical settings due to data quality and interoperability issues.

The integration of Artificial Intelligence (AI) and the Internet of Medical Things (IoMT) in healthcare, through Machine Learning (ML) and Deep Learning (DL) techniques, has advanced the prediction and diagnosis of chronic diseases. AI-driven models such as XGBoost, Random Forest, CNNs, and LSTM RNNs have achieved over 98\% accuracy in predicting heart disease, chronic kidney disease (CKD), Alzheimer's disease, and lung cancer, using datasets from platforms like Kaggle, UCI, private institutions, and real-time IoMT sources. However, challenges persist due to variations in data quality, patient demographics, and formats from different hospitals and research sources. The incorporation of IoMT data, which is vast and heterogeneous, adds complexities in ensuring interoperability and security to protect patient privacy. AI models often struggle with overfitting, performing well in controlled environments but less effectively in real-world clinical settings. Moreover, multi-morbidity scenarios especially for rare diseases like dementia, stroke, and cancers remain insufficiently addressed. Future research should focus on data standardization and advanced preprocessing techniques to improve data quality and interoperability. Transfer learning and ensemble methods are crucial for improving model generalizability across clinical settings. Additionally, the exploration of disease interactions and the development of predictive models for chronic illness intersections is needed. Creating standardized frameworks and open-source tools for integrating federated learning, blockchain, and differential privacy into IoMT systems will also ensure robust data privacy and security.

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