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Learning multiple diagnosis codes for ICU patients with local disease correlation mining

journal contribution
posted on 2024-11-02, 17:34 authored by Sen Wang, Xue Li, Xiaojun ChangXiaojun Chang, Lina Yao, Quan Sheng, Guodong Long
In the era of big data, a mechanism that can automatically annotate disease codes to patients' records in the medical information system is in demand. The purpose of this work is to propose a framework that automatically annotates the disease labels of multi-source patient data in Intensive Care Units (ICUs). We extract features from two main sources, medical charts and notes. The Bag-of-Words model is used to encode the features. Unlike most of the existing multi-label learning algorithms that globally consider correlations between diseases, our model learns disease correlation locally in the patient data. To achieve this, we derive a local disease correlation representation to enrich the discriminant power of each patient data. This representation is embedded into a unified multi-label learning framework. We develop an alternating algorithm to iteratively optimize the objective function. Extensive experiments have been conducted on a real-world ICU database. We have compared our algorithm with representative multi-label learning algorithms. Evaluation results have shown that our proposed method has state-of-the-art performance in the annotation of multiple diagnostic codes for ICU patients. This study suggests that problems in the automated diagnosis code annotation can be reliably addressed by using a multi-label learning model that exploits disease correlation. The findings of this study will greatly benefit health care and management in ICU considering that the automated diagnosis code annotation can significantly improve the quality and management of health care for both patients and caregivers.

Funding

Effective Recommendations based on Multi-Source Data

Australian Research Council

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Cohort discovery and activity mining for policy impact prediction

Australian Research Council

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History

Related Materials

  1. 1.
    DOI - Is published in 10.1145/3003729
  2. 2.
    ISSN - Is published in 15564681

Journal

ACM Transactions on Knowledge Discovery from Data

Volume

11

Number

31

Issue

3

Start page

1

End page

21

Total pages

21

Publisher

Association for Computing Machinery

Place published

United States

Language

English

Copyright

© 2017 Association for Computing Machinery

Former Identifier

2006109439

Esploro creation date

2021-08-29

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