Predictive Modeling of Hospital Readmission: Challenges and Solutions
- URL: http://arxiv.org/abs/2106.08488v1
- Date: Wed, 16 Jun 2021 00:00:27 GMT
- Title: Predictive Modeling of Hospital Readmission: Challenges and Solutions
- Authors: Shuwen Wang and Xingquan Zhu
- Abstract summary: Hospital readmission prediction is a study to learn models from historical medical data to predict probability of a patient returning to hospital in a certain period, 30 or 90 days, after the discharge.
The motivation is to help health providers deliver better treatment and post-discharge strategies, lower the hospital readmission rate, and eventually reduce the medical costs.
Due to inherent complexity of diseases and healthcare ecosystems, modeling hospital readmission is facing many challenges.
- Score: 11.954966895950163
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Hospital readmission prediction is a study to learn models from historical
medical data to predict probability of a patient returning to hospital in a
certain period, 30 or 90 days, after the discharge. The motivation is to help
health providers deliver better treatment and post-discharge strategies, lower
the hospital readmission rate, and eventually reduce the medical costs. Due to
inherent complexity of diseases and healthcare ecosystems, modeling hospital
readmission is facing many challenges. By now, a variety of methods have been
developed, but existing literature fails to deliver a complete picture to
answer some fundamental questions, such as what are the main challenges and
solutions in modeling hospital readmission; what are typical features/models
used for readmission prediction; how to achieve meaningful and transparent
predictions for decision making; and what are possible conflicts when deploying
predictive approaches for real-world usages. In this paper, we systematically
review computational models for hospital readmission prediction, and propose a
taxonomy of challenges featuring four main categories: (1) data variety and
complexity; (2) data imbalance, locality and privacy; (3) model
interpretability; and (4) model implementation. The review summarizes methods
in each category, and highlights technical solutions proposed to address the
challenges. In addition, a review of datasets and resources available for
hospital readmission modeling also provides firsthand materials to support
researchers and practitioners to design new approaches for effective and
efficient hospital readmission prediction.
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