As health monitoring becomes increasingly intricate, the demand for innovative solutions to predict and assess health status is more pressing than ever. This review focuses on the transformative potential of multi-sensor technologies in health monitoring, emphasizing their role in early health status prediction. By integrating diverse sensor types ranging from wearable fitness trackers to implantable devices and environmental monitors healthcare professionals can gain a richer, more nuanced understanding of an individual's physiological state. We analyze various configurations of multi-sensor networks and their efficacy in identifying early indicators of health issues, such as cardiovascular diseases, diabetes, and respiratory ailments. For example, the combination of biometric sensors that track vital signs with environmental data on pollutants can yield invaluable insights into a patient's overall health. This integrated approach not only improves the accuracy of health assessments but also facilitates timely interventions. Furthermore, we address the challenges inherent in multi-sensor systems, including data integration, device interoperability, and the need for advanced algorithms capable of processing complex datasets. Recent advancements in machine learning and artificial intelligence are underscored as pivotal in enhancing the capabilities of these technologies for predictive health analytics. Ultimately, this review highlights how multi-sensor systems can redefine early health status prediction, paving the way for proactive healthcare strategies that significantly improve patient outcomes and optimize healthcare delivery.
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