Litcius/Paper detail

POC Sensor Systems and Artificial Intelligence—Where We Are Now and Where We Are Going?

K. Prashanthi, Krishna Mohan Kovur, Dorsa Yahya Rayat, David S. Wishart

2025Biosensors13 citationsDOIOpen Access PDF

Abstract

Integration of machine learning (ML) and artificial intelligence (AI) into point-of-care (POC) sensor systems represents a transformative advancement in healthcare. This integration enables sophisticated data analysis and real-time decision-making in emergency and intensive care settings. AI and ML algorithms can process complex biomedical data, improve diagnostic accuracy, and enable early disease detection for better patient outcomes. Predictive analytics in POC devices supports proactive healthcare by analyzing data to forecast health issues and facilitating early intervention and personalized treatment. This review covers the key areas of ML and AI integration in POC devices, including data analysis, pattern recognition, real-time decision support, predictive analytics, personalization, automation, and workflow optimization. Examples of current POC devices that use ML and AI include AI-powered blood glucose monitors, portable imaging devices, wearable cardiac monitors, AI-enhanced infectious disease detection, and smart wound care sensors are also discussed. The review further explores new directions for POC sensors and ML integration, including mental health monitoring, nutritional monitoring, metabolic health tracking, and decentralized clinical trials (DCTs). We also examined the impact of integrating ML and AI into POC devices on healthcare accessibility, efficiency, and patient outcomes.

Topics & Concepts

WorkflowWearable computerComputer scienceArtificial intelligenceHealth careAnalyticsMachine learningWearable technologyTransformative learningProcess (computing)Decision support systemApplications of artificial intelligenceData scienceData integrationSystem integrationClinical decision support systemBench to bedsideMedicineIntervention (counseling)BiomedicineKey (lock)Risk analysis (engineering)Systems engineeringHealthcare systemPredictive analyticsHuman–computer interactionPatient careDeep learningIntensive careInfectious disease (medical specialty)Data acquisitionPrecision medicineSensor fusionNon-Invasive Vital Sign MonitoringHealthcare Technology and Patient MonitoringArtificial Intelligence in Healthcare