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Automated patient summary for the medical chart

Abstractive Health uses NLP and machine learning to summarize clinical notes and improve healthcare.
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Narrative health summary

We condense hundreds of pages of medical notes into key sentences and alert clinicians of any follow-ups.

How we are improving healthcare

We are fixing interoperability in healthcare so that clinicians can quickly understand a patient’s complete medical history and their course of treatment.
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Reclaim More Time
Abstractive Health saves doctors 1-2 hours per day through automating health note documentation in the EHR.  
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Collect More Revenue
Doctors can capture more revenue through addressing more diagnoses and improving medical documentation for E&M codes.
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Reduce Patient Risks
Our product highlights diagnoses and follow-ups which helps clinicians find important information and improves patient care.

How it works

We display an electronic patient summary to clinicians with one click through electronic medical record (EMR) integration.
Image showing Abstractive Health Interface. Highlight words of clinical importance, integration with EMR and highlight words from extrinsic data Image showing Abstractive Health Interface. Highlight words of clinical importance, integration with EMR and highlight words from extrinsic data
Read our health abstract in real time
Make edits to the content
Push the summary to your EMR
Our medical summary can be used for outpatient, inpatient, and emergency care to automate clinical notes such as SOAP notes, progress notes, transition of care, ED Provider notes, and discharge summaries.

How we are different

Our model that we developed over two years has 97% accuracy at identifying clinical follow-up sentences.

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State-of-Art Performance
Our technology is built with NLP transformers and performs as good as leading models such as BERT, BART, and GPT developed by Google, Facebook and OpenAI.
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Robust Dataset
We developed and trained our algorithm on real data with an exclusive agreement with Weill Cornell.

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Patent Filed
We filed a patent to protect our novel natural language processing approach for summarization of healthcare data.
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The only narrative summary for the healthcare industry

Office Visit
Secure authentication
Full patient history
Follow-up alerts
Automated diagnoses capture
Chronic disease course
Automated note documentation

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Do you want to learn more about us?
Contact us if you want to know more about how we revolutionize the way physicians read and write clinical notes.
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