Impact of Healthcare Digitization: Systems Approach for Integrating Biosensor Devices and Electronic Health with Artificial Intelligence
Keywords:
Electronic health, mobile health, biosensors, precision medicine, artificial intelligence, patient monitoring, systems biology, bio-wearablesAbstract
Electronic health has revolutionized medical practices by seamlessly integrating digital tools and automated healthcare practices over recent years with the technological advancements of artificial intelligence. This multifaceted domain encompasses telemedicine, wearable technologies, electronic health records, and more, each with distinct subfields and innovative approaches. In this study, we provide a comprehensive overview of electronic health, delving into its diverse fields. We explore how artificial intelligence transforms medical imaging, informs clinical decisions, enables precision medicine, and empowers robot healthcare assistants. By shedding light on these hidden synergies, we aim to inspire researchers and practitioners to elevate their studies. Electronic health silently impacts our lives daily, and our work serves as a catalyst for recognizing its pervasive influence.
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