Stone Kieran, Zwiggelaar Reyer, Jones Phil, Mac Parthaláin Neil
Department of Computer Science, Aberystwyth University, Ceredigion, SY23 3DB, Wales, United Kingdom.
Bronglais District General Hospital, Aberystwyth, Ceredigion, SY23 1ER, Wales, United Kingdom.
PLOS Digit Health. 2022 Apr 14;1(4):e0000017. doi: 10.1371/journal.pdig.0000017. eCollection 2022 Apr.
Hospital length of stay of patients is a crucial factor for the effective planning and management of hospital resources. There is considerable interest in predicting the LoS of patients in order to improve patient care, control hospital costs and increase service efficiency. This paper presents an extensive review of the literature, examining the approaches employed for the prediction of LoS in terms of their merits and shortcomings. In order to address some of these problems, a unified framework is proposed to better generalise the approaches that are being used to predict length of stay. This includes the investigation of the types of routinely collected data used in the problem as well as recommendations to ensure robust and meaningful knowledge modelling. This unified common framework enables the direct comparison of results between length of stay prediction approaches and will ensure that such approaches can be used across several hospital environments. A literature search was conducted in PubMed, Google Scholar and Web of Science from 1970 until 2019 to identify LoS surveys which review the literature. 32 Surveys were identified, from these 32 surveys, 220 papers were manually identified to be relevant to LoS prediction. After removing duplicates, and exploring the reference list of studies included for review, 93 studies remained. Despite the continuing efforts to predict and reduce the LoS of patients, current research in this domain remains ad-hoc; as such, the model tuning and data preprocessing steps are too specific and result in a large proportion of the current prediction mechanisms being restricted to the hospital that they were employed in. Adopting a unified framework for the prediction of LoS could yield a more reliable estimate of the LoS as a unified framework enables the direct comparison of length of stay methods. Additional research is also required to explore novel methods such as fuzzy systems which could build upon the success of current models as well as further exploration of black-box approaches and model interpretability.
患者的住院时间是医院资源有效规划和管理的关键因素。为了改善患者护理、控制医院成本并提高服务效率,人们对预测患者住院时间有着浓厚的兴趣。本文对相关文献进行了广泛综述,从优缺点方面审视了用于预测住院时间的方法。为了解决其中一些问题,提出了一个统一框架,以更好地归纳用于预测住院时间的方法。这包括对该问题中常规收集的数据类型进行调查,以及提出确保稳健且有意义的知识建模的建议。这个统一的通用框架能够直接比较住院时间预测方法之间的结果,并确保这些方法可在多个医院环境中使用。我们在PubMed、谷歌学术和科学网中进行了从1970年到2019年的文献检索,以识别回顾相关文献的住院时间调查。共识别出32项调查,从这32项调查中,人工识别出220篇与住院时间预测相关的论文。在去除重复项并查阅所纳入研究的参考文献列表后,剩下93项研究。尽管一直在努力预测和缩短患者的住院时间,但该领域目前的研究仍然是临时的;因此,模型调整和数据预处理步骤过于具体,导致目前很大一部分预测机制仅限于其应用的医院。采用统一框架进行住院时间预测可以得出更可靠的住院时间估计值,因为统一框架能够直接比较住院时间方法。还需要进行更多研究来探索新方法,如模糊系统,它可以借鉴当前模型的成功经验,以及进一步探索黑箱方法和模型可解释性。