Research paper
Predicting the Need for Therapeutic Intervention and Mortality in Acute Pancreatitis: A Two-Center International Study Using Machine Learning.
About this item
- Title
- Predicting the Need for Therapeutic Intervention and Mortality in Acute Pancreatitis: A Two-Center International Study Using Machine Learning.
- Content partner
- The University of Auckland Library
- Collection
- ResearchSpace@Auckland
- Description
BackgroundCurrent approaches to predicting intervention needs and mortality have reached 65-85% accuracy, which falls below clinical decision-making requirements in patients with acute pancreatitis (AP). We aimed to accurately predict therapeutic intervention needs and mortality on admission, in AP patients, using machine learning (ML).MethodsData were obtained from three databases of patients admitted with AP: one retrospective (Chengdu) and two prospective (Liverpool and Chengdu) databases....
- Format
- Research paper
- Research format
- Journal article
- Date created
- 2022-04
- Creator
- Shi, Na / Lan, Lan / Luo, Jiawei / Zhu, Ping / Ward, Thomas RW / Szatmary, Peter / Sutton, Robert / Huang, Wei / Windsor, John A / Zhou, Xiaobo / Xia, Qing
- URL
- https://hdl.handle.net/2292/62976
- Related subjects
- acute pancreatitis / interventions / machine learning / mortality / predictor / Patient Safety / 7.3 Management and decision making / 4.1 Discovery and preclinical testing of markers and technologies / 4 Detection, screening and diagnosis / 4.2 Evaluation of markers and technologies / 7 Management of diseases and conditions / 3 Good Health and Well Being / Science & Technology / Life Sciences & Biomedicine / Health Care Sciences & Services / Medicine, General & Internal / General & Internal Medicine / MINIMAL ACCESS RETROPERITONEAL / APACHE-II SCORE / ORGAN FAILURE / BIG DATA / SEVERITY / NECROSECTOMY / GUIDELINES / MARKERS / DYSFUNCTION / MANAGEMENT
What can I do with this item?
Check copyright status and what you can do with this item
Check informationReport this item
If you believe this item breaches our terms of use please report this item
Report this itemDigitalNZ brings together more than 30 million items from institutions so that they are easy to find and use. This information is the best information we could find on this item. This item was added on 26 February 2023, and updated 18 August 2023.
Learn more about how we work.
Share
What is the copyright status of this item?

Share, Modify, Use commercially
See below for specifics about how you may use this item.

More Information
The University of Auckland Library has this to say about the rights status of this item:
Items in ResearchSpace are protected by copyright, with all rights reserved, unless otherwise indicated. Previously published items are made available in accordance with the copyright policy of the publisher.
You can learn more about the rights status of this item at:
What can I do with this item?
You must always check with The University of Auckland Library to confirm the specific terms of use, but this is our understanding:

Non-infringing use
NZ Copyright law does not prevent every use of a copyright work. You should consider what you can and cannot do with a copyright work.

Share it
This item is suitable for copying and sharing with others, without further permission.

Modify it
This item is suitable for modifying, remixing and building upon, without further permission.

Use it commercially
This item is suitable for commercial use, without further permission.
What can I do with this item?
Check copyright status and what you can do with this item
Check informationReport this item
If you believe this item breaches our terms of use please report this item
Report this itemDigitalNZ brings together more than 30 million items from institutions so that they are easy to find and use. This information is the best information we could find on this item. This item was added on 26 February 2023, and updated 18 August 2023.
Learn more about how we work.
Share
Related items
Loading...