Big data and artificial intelligence in future patient management. How is it all started? Where are we at now? Quo tendimus?

Author:

Mina Ashraf123

Affiliation:

1. NSW Health Pathology, Forensic & Analytical Science Service (FASS), Sydney, Australia

2. Affiliated Senior Clinical Lecturer, Faculty of Medicine and Health, Sydney University, Cameron Building, Macquarie Hospital, Badajoz Road, 2113, North Ryde, NSW, Australia

3. PO Box 53, North Ryde Mail Centre, North Ryde, 1670, NSW, Australia

Abstract

AbstractBackgroundThis article is focused on the understanding of the key points and their importance and impact on the future of early disease predictive models, accurate and fast diagnosis, patient management, optimise treatment, precision medicine, and allocation of resources through the applications of Big Data (BD) and Artificial Intelligence (AI) in healthcare.ContentBD and AI processes include learning which is the acquisition of information and rules for using the information, reasoning which is using rules to reach approximate or definite conclusions and self-correction. This can help improve the detection of diseases, rare diseases, toxicity, identifying health system barriers causing under-diagnosis. BD combined with AI, Machine Learning (ML), computing and predictive-modelling, and combinatorics are used to interrogate structured and unstructured data computationally to reveal patterns, trends, potential correlations and relationships between disparate data sources and associations.SummaryDiagnosis-assisted systems and wearable devices will be part and parcel not only of patient management but also in the prevention and early detection of diseases. Also, Big Data will have an impact on payers, devise makers and pharmaceutical companies. BD and AI, which is the simulation of human intelligence processes, are more diverse and their application in monitoring and diagnosis will only grow bigger, wider and smarter.OutlookBD connectivity and AI of diagnosis-assisted systems, wearable devices and smartphones are poised to transform patient and to change the traditional methods for patient management, especially in an era where is an explosion in medical data.

Publisher

Walter de Gruyter GmbH

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