Abstract
Diagnostic errors contribute to hospital complications that can lead to death. It is essential to create a favorable environment for implementing AI-related technologies to improve medical diagnostics. This study aims to present the different categories of A.I. diagnostic applications, as well as the organizational factors and policies, influencing the best adoption and implementation of A.I. applications. We conducted an online database search to identify peer-reviewed papers published between Jan 2009 and May 2019 that were related to A.I. applications in medical diagnostics. Papers were included as indexed in database PubMed if they contain any one of the following: (1) the research used Artificial Intelligence or Machine Learning or Deep Learning to perform medical diagnostics, and (2) the research conducted validation analysis or clinical trial. Additionally, we explored whether the study can promisingly improve social welfare or achieve cost-savings by improving clinical outcomes. 197 selected papers were explored that covered the following topics: types of diagnostic technology, medical application scenario, clinical outcome measurement, potential benefit, and how the AI-related diagnostics is improving the clinical outcome and produce economic value.
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