Identifying Harm Events in Clinical Care through Medical Narratives

08/15/2017
by   Arman Cohan, et al.
0

Preventable medical errors are estimated to be among the leading causes of injury and death in the United States. To prevent such errors, healthcare systems have implemented patient safety and incident reporting systems. These systems enable clinicians to report unsafe conditions and cases where patients have been harmed due to errors in medical care. These reports are narratives in natural language and while they provide detailed information about the situation, it is non-trivial to perform large scale analysis for identifying common causes of errors and harm to the patients. In this work, we present a method based on attentive convolutional and recurrent networks for identifying harm events in patient care and categorize the harm based on its severity level. We demonstrate that our methods can significantly improve the performance over existing methods in identifying harm in clinical care.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/23/2017

A Neural Attention Model for Categorizing Patient Safety Events

Medical errors are leading causes of death in the US and as such, preven...
research
01/18/2020

Ranking Significant Discrepancies in Clinical Reports

Medical errors are a major public health concern and a leading cause of ...
research
05/15/2023

"Nothing Abnormal": Disambiguating Medical Reports via Contrastive Knowledge Infusion

Sharing medical reports is essential for patient-centered care. A recent...
research
07/05/2018

The TESTMED Project Experience. Process-aware Enactment of Clinical Guidelines through Multimodal Interfaces

Healthcare is one of the largest business segments in the world and is a...
research
01/11/2021

A Framework for Assurance of Medication Safety using Machine Learning

Medication errors continue to be the leading cause of avoidable patient ...

Please sign up or login with your details

Forgot password? Click here to reset