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Artificial Intelligence in Medical Sensors for Clinical Decisions

Hossam Haick, Ning Tang

2021ACS Nano215 citationsDOI

Abstract

Due to the limited ability of conventional methods and the limited perspective of human diagnostics, patients are often diagnosed incorrectly or at a late stage as their disease condition progresses. They may then undergo unnecessary treatments due to inaccurate diagnoses. In this Perspective, we offer a brief overview on the integration of nanotechnology-based medical sensors and artificial intelligence (AI) for advanced clinical decision support systems to help decision-makers and healthcare systems improve how they approach information, insights, and the surrounding contexts, as well as to promote the uptake of personalized medicine on an individualized basis. Relying on these milestones, wearable sensing devices could enable interactive and evolving clinical decisions that could be used for evidence-based analysis and recommendations as well as for personalized monitoring of disease progress and treatment. We present and discuss the ongoing challenges and future opportunities associated with AI-enabled medical sensors in clinical decisions.

Topics & Concepts

Medical diagnosisClinical decision support systemWearable computerPrecision medicineDecision support systemPerspective (graphical)Computer sciencePersonalized medicineHealth careData scienceRisk analysis (engineering)Artificial intelligenceMedicineBioinformaticsPathologyEmbedded systemBiologyEconomic growthEconomicsBiosensors and Analytical DetectionIoT and Edge/Fog ComputingSARS-CoV-2 detection and testing
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