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  "documentTitle": "2020 Air Street Capital The State of AI Report 2020",
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      "text": "Viz.ai was granted a New Technology Add on Payment of up to $1,040 per use in patients with suspected strokes. The AI system scans computed tomography scans of the brain and pings the results to a specialist who can treat the patient before they suffer damage that leads to long-term disability. Several exclusion factor apply...",
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