Literature DB >> 33074897

Accelerating Surgical Site Infection Abstraction With a Semi-automated Machine-learning Approach.

Steven J Skube1, Zhen Hu2, Gyorgy J Simon3, Elizabeth C Wick4, Elliot G Arsoniadis1,2, Clifford Y Ko5,6, Genevieve B Melton1,2.   

Abstract

OBJECTIVE: To demonstrate that a semi-automated approach to health data abstraction provides significant efficiencies and high accuracy.
BACKGROUND: Surgical outcome abstraction remains laborious and a barrier to the sustainment of quality improvement registries like ACS-NSQIP. A supervised machine learning algorithm developed for detecting SSi using structured and unstructured electronic health record data was tested to perform semi-automated SSI abstraction.
METHODS: A Lasso-penalized logistic regression model with 2011-3 data was trained (baseline performance measured with 10-fold cross-validation). A cutoff probability score from the training data was established, dividing the subsequent evaluation dataset into "negative" and "possible" SSI groups, with manual data abstraction only performed on the "possible" group. We evaluated performance on data from 2014, 2015, and both years.
RESULTS: Overall, 6188 patients were in the 2011-3 training dataset and 5132 patients in the 2014-5 evaluation dataset. With use of the semi-automated approach, applying the cut-off score decreased the amount of manual abstraction by >90%, resulting in < 1% false negatives in the "negative" group and a sensitivity of 82%. A blinded review of 10% of the "possible" group, considering only the features selected by the algorithm, resulted in high agreement with the gold standard based on full chart abstraction, pointing towards additional efficiency in the abstraction process by making it possible for abstractors to review limited, salient portions of the chart.
CONCLUSION: Semi-automated machine learning-aided SSI abstraction greatly accelerates the abstraction process and achieves very good performance. This could be translated to other post-operative outcomes and reduce cost barriers for wider ACS-NSQIP adoption.
Copyright © 2020 Wolters Kluwer Health, Inc. All rights reserved.

Entities:  

Mesh:

Year:  2020        PMID: 33074897     DOI: 10.1097/SLA.0000000000004354

Source DB:  PubMed          Journal:  Ann Surg        ISSN: 0003-4932            Impact factor:   13.787


  2 in total

1.  Artificial Intelligence-Assisted Surgical Quality Assessment: Hype or Hope?

Authors:  Brian T Bucher
Journal:  J Am Coll Surg       Date:  2021-06       Impact factor: 6.532

2.  Applying Machine Learning Across Sites: External Validation of a Surgical Site Infection Detection Algorithm.

Authors:  Ying Zhu; Gyorgy J Simon; Elizabeth C Wick; Yumiko Abe-Jones; Nader Najafi; Adam Sheka; Roshan Tourani; Steven J Skube; Zhen Hu; Genevieve B Melton
Journal:  J Am Coll Surg       Date:  2021-04-05       Impact factor: 6.532

  2 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.