An explainable machine learning approach for hospital emergency department visits forecasting using continuous training and multi-model regression

被引:2
|
作者
Pelaez-Rodriguez, C. [1 ]
Torres-Lopez, R. [1 ]
Perez-Aracil, J. [1 ]
Lopez-Laguna, N. [2 ,3 ]
Sanchez-Rodriguez, S.
Salcedo-Sanz, S. [1 ]
机构
[1] Univ Alcala, Dept Signal Proc & Commun, Alcala De Henares 28805, Spain
[2] Clin Univ Navarra Madrid, Emergency Dept, Madrid 28027, Spain
[3] Clin Univ Navarra Madrid, Operat Dept, Madrid 28027, Spain
关键词
Hospital emergency departments; Admissions forecast; Machine learning; Multi-step forecasting; Continuous-training algorithms; BIG DATA; TIME; DEMAND; CLASSIFICATION; MULTIVARIATE; OCCUPANCY; VARIABLES; CALENDAR; MODELS; LENGTH;
D O I
10.1016/j.cmpb.2024.108033
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
Background and Objective: In the last years, the Emergency Department (ED) has become an important source of admissions for hospitals. Since late 90s, the number of ED visits has been steadily increasing, and since Covid19 pandemic this trend has been much stronger. Accurate prediction of ED visits, even for moderate forecasting time -horizons, can definitively improve operational efficiency, quality of care, and patient outcomes in hospitals. Methods: In this paper we propose two different interpretable approaches, based on Machine Learning algorithms, to accurately forecast hospital emergency visits. The proposed approaches involve a first step of data segmentation based on two different criteria, depending on the approach considered: first, a thresholdbased strategy is adopted, where data is divided depending on the value of specific predictor variables. In a second approach, a cluster -based ensemble learning is proposed, in such a way that a clustering algorithm is applied to the training dataset, and ML models are then trained for each cluster. Results: The two proposed methodologies have been evaluated in real data from two hospital ED visits datasets in Spain. We have shown that the proposed approaches are able to obtain accurate ED visits forecasting, in short-term and also long-term prediction time -horizons up to one week, improving the efficiency of alternative prediction methods for this problem. Conclusions: The proposed forecasting approaches have a strong emphasis on providing explainability to the problem. An analysis on which variables govern the problem and are pivotal for obtaining accurate predictions is finally carried out and included in the discussion of the paper.
引用
收藏
页数:20
相关论文
共 50 条
  • [31] Predicting triage of pediatric patients in the emergency department using machine learning approach
    Halwani, Manal Ahmed
    Merdad, Ghada
    Almasre, Miada
    Doman, Ghadeer
    Alsharif, Shafiqa
    Alshiakh, Safinaz M.
    Mahboob, Duaa Yousof
    Halwani, Marwah A.
    Faqerah, Nojoud Adnan
    Mosuily, Mahmoud Talal
    INTERNATIONAL JOURNAL OF EMERGENCY MEDICINE, 2025, 18 (01)
  • [32] Using Machine Learning to Predict Hospital Disposition With Geriatric Emergency Department Innovation Intervention
    Bunney, Gabrielle
    Tran, Steven
    Han, Sae
    Gu, Carol
    Wang, Hanyin
    Luo, Yuan
    Dresden, Scott
    ANNALS OF EMERGENCY MEDICINE, 2023, 81 (03) : 353 - 363
  • [33] Identifying low acuity Emergency Department visits with a machine learning approach: The low acuity visit algorithms (LAVA)
    Chen, Angela T.
    Kuzma, Richard S.
    Friedman, Ari B.
    HEALTH SERVICES RESEARCH, 2024, 59 (04)
  • [34] Multi-model ensemble predictions of precipitation and temperature using machine learning algorithms
    Ahmed, Kamal
    Sachindra, D. A.
    Shahid, Shamsuddin
    Iqbal, Zafar
    Nawaz, Nadeem
    Khan, Najeebullah
    ATMOSPHERIC RESEARCH, 2020, 236
  • [35] A joint multi-model machine learning prediction approach based on confidence for ship stability
    Chaicheng Jiang
    Xianbo Xiang
    Gong Xiang
    Complex & Intelligent Systems, 2024, 10 : 3873 - 3890
  • [36] A joint multi-model machine learning prediction approach based on confidence for ship stability
    Jiang, Chaicheng
    Xiang, Xianbo
    Xiang, Gong
    COMPLEX & INTELLIGENT SYSTEMS, 2024, 10 (03) : 3873 - 3890
  • [37] Temperature Prediction for Stored Grain: A Multi-model Fusion Approach Based on Machine Learning
    Chen, Donghao
    Liu, Binkun
    2024 9TH INTERNATIONAL CONFERENCE ON ELECTRONIC TECHNOLOGY AND INFORMATION SCIENCE, ICETIS 2024, 2024, : 661 - 665
  • [38] Multi-Model Machine Learning Approach for Supporting Sri Lankan Veteran Mental Health
    Dharmapriya, I. S. C.
    Pathirana, S. G. B. V. R.
    Hettiarachchi, H. A. G. D.
    Warnakulasooriya, D. N.
    Thelijjagoda, Samantha
    Krishara, Jenny
    Giguruwa, Nishantha
    2024 IEEE INTERNATIONAL CONFERENCE ON AUTOMATIC CONTROL AND INTELLIGENT SYSTEMS, I2CACIS 2024, 2024, : 403 - 408
  • [39] A Machine Learning Model for Predicting Unscheduled 72 h Return Visits to the Emergency Department by Patients with Abdominal Pain
    Hsu, Chun-Chuan
    Chu, Cheng-C. J.
    Lin, Ching-Heng
    Huang, Chien-Hsiung
    Ng, Chip-Jin
    Lin, Guan-Yu
    Chiou, Meng-Jiun
    Lo, Hsiang-Yun
    Chen, Shou-Yen
    DIAGNOSTICS, 2022, 12 (01)
  • [40] Machine learning for developing a prediction model of hospital admission of emergency department patients: Hype or hope?
    De Hond, Anne
    Raven, Wouter
    Schinkelshoek, Laurens
    Gaakeer, Menno
    Ter Avest, Ewoud
    Sir, Ozcan
    Lameijer, Heleen
    Hessels, Roger Apa
    Reijnen, Resi
    De Jonge, Evert
    Steyerberg, Ewout
    Nickel, Christian H.
    De Groot, Bas
    INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2021, 152