Corpus ID: 211010782

Assessment of Amazon Comprehend Medical: Medication Information Extraction

@article{Guzman2020AssessmentOA,
  title={Assessment of Amazon Comprehend Medical: Medication Information Extraction},
  author={Benedict Guzman and Isabel Metzger and Yindalon Aphinyanagphongs and Himanshu Grover},
  journal={ArXiv},
  year={2020},
  volume={abs/2002.00481}
}
  • Benedict Guzman, Isabel Metzger, +1 author Himanshu Grover
  • Published 2020
  • Computer Science
  • ArXiv
  • In November 27, 2018, Amazon Web Services (AWS) released Amazon Comprehend Medical (ACM), a deep learning based system that automatically extracts clinical concepts (which include anatomy, medical conditions, protected health information (PH)I, test names, treatment names, and medical procedures, and medications) from clinical text notes. Uptake and trust in any new data product relies on independent validation across benchmark datasets and tools to establish and confirm expected quality of… CONTINUE READING
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