Using machine learning to assist decision making in the assessment of mental health patients presenting to emergency departments

被引:0
|
作者
Higgins, Oliver [1 ,2 ,3 ]
Wilson, Rhonda L. [1 ,2 ,3 ]
Chalup, Stephan K. [4 ]
机构
[1] RMIT Univ, Sch Hlth & Biomed Sci, Melbourne, Australia
[2] Cent Coast Local Hlth Dist, Dept Mental Hlth, Gosford, NSW, Australia
[3] Cent Coast Res Inst, Gosford, NSW, Australia
[4] Univ Newcastle, Sch Informat & Phys Sci Comp Sci & Software Engn, Newcastle, Australia
来源
DIGITAL HEALTH | 2024年 / 10卷
关键词
Mental health; emergency department; first nation; aboriginal and torres strait islander;
D O I
10.1177/20552076241287364
中图分类号
R19 [保健组织与事业(卫生事业管理)];
学科分类号
摘要
Objective The objective of this study was to assess the predictability of admissions to a MH inpatient ward using ML models, based on routine data collected during triage in EDs. This research sought to identify the most effective ML model for this purpose while considering the practical implications of model interpretability for clinical use.Methods The study utilised existing data from January 2016 to December 2021. After data pre-processing, an exploratory analysis revealed the non-linear nature of the dataset. Six different ML models were tested: Random Forest, XGBoost, CatBoost, k-Nearest Neighbours (kNN), Explainable Boosting Machine (EBM) using InterpretML, and Support Vector Machine using Support Vector Classification (SVC). The performance of these models was evaluated using various metrics including the Matthews Correlation Coefficient (MCC).Results Among the models evaluated, the CatBoost model achieved the highest MCC score of 0.1952, demonstrating superior balanced accuracy and predictive power, particularly in correctly identifying positive cases. The InterpretML model also performed well, with an MCC score of 0.1914. While CatBoost showed strong predictive capabilities, its complexity poses challenges for clinical interpretation. Conversely, the InterpretML model, though slightly less powerful, offers better transparency and is more practical for clinical use.Conclusion The findings suggest that the CatBoost model is a compelling choice for scenarios prioritising the detection of positive cases. However, the InterpretML model's ease of interpretation makes it more suitable for clinical application. Integrating explanation methods like SHAP with non-linear models could enhance model transparency and foster clinician trust. Further research is recommended to refine non-linear models within decision support systems, explore multi-source data integration, understand clinician attitudes towards ML, and develop real-time data collection systems. This study highlights the potential of ML in predicting MH admissions from ED data while stressing the importance of interpretability, ethical considerations, and ongoing validation for successful clinical implementation.
引用
收藏
页数:17
相关论文
共 50 条
  • [21] Analysis of Emergency Department Length of Stay for Mental Health Patients at Ten Massachusetts Emergency Departments
    Pearlmutter, Mark D.
    Dwyer, Kristin H.
    Burke, Laura G.
    Rathlev, Niels
    Maranda, Louise
    Volturo, Greg
    ANNALS OF EMERGENCY MEDICINE, 2017, 70 (02) : 193 - 202
  • [22] The Oesophageal Cancer Multidisciplinary Team: Can Machine Learning Assist Decision-Making?
    Thavanesan, Navamayooran
    Vigneswaran, Ganesh
    Bodala, Indu
    Underwood, Timothy J. J.
    JOURNAL OF GASTROINTESTINAL SURGERY, 2023, 27 (04) : 807 - 822
  • [23] Difficulty of the decision-making process in emergency departments for end-of-life patients
    Douplat, Marion
    Berthiller, Julien
    Schott, Anne-Marie
    Potinet, Veronique
    Le Coz, Pierre
    Tazarourte, Karim
    Jacquin, Laurent
    JOURNAL OF EVALUATION IN CLINICAL PRACTICE, 2019, 25 (06) : 1193 - 1199
  • [24] The Oesophageal Cancer Multidisciplinary Team: Can Machine Learning Assist Decision-Making?
    Navamayooran Thavanesan
    Ganesh Vigneswaran
    Indu Bodala
    Timothy J. Underwood
    Journal of Gastrointestinal Surgery, 2023, 27 : 807 - 822
  • [25] Assessment of statewide initiative for children boarding in rural emergency departments with mental health concerns
    Pulcini, Christian D. D.
    Schneider, Samantha
    Wolfley, Hillary
    Collins, Bonnie
    Li, Joyce
    ACADEMIC EMERGENCY MEDICINE, 2024, 31 (01) : 86 - 88
  • [26] High utilisers of emergency departments: the profile and journey of patients with mental health issues
    Casey, Melissa
    Perera, Dinali
    Enticott, Joanne
    Vo, Hung
    Cubra, Stana
    Gravell, Ashlee
    Waerea, Moana
    Habib, George
    INTERNATIONAL JOURNAL OF PSYCHIATRY IN CLINICAL PRACTICE, 2021, 25 (03) : 316 - 324
  • [27] Optimal management of mental health patients in Australian emergency departments: Barriers and solutions
    Weiland, Tracey J.
    Mackinlay, Claire
    Hill, Nicole
    Gerdtz, Marie F.
    Jelinek, George A.
    EMERGENCY MEDICINE AUSTRALASIA, 2011, 23 (06) : 677 - 688
  • [28] GUESTING AREA: AN ALTERNATIVE FOR BOARDING MENTAL HEALTH PATIENTS SEEN IN EMERGENCY DEPARTMENTS
    Winokur, Elizabeth J.
    Senteno, John M.
    JOURNAL OF EMERGENCY NURSING, 2009, 35 (05) : 429 - 433
  • [29] Review article: Interventions for people presenting to emergency departments with a mental health problem: A systematic scoping review
    Johnston, Amy N. B.
    Spencer, Melinda
    Wallis, Marianne
    Kinner, Stuart A.
    Broadbent, Marc
    Young, Jesse T.
    Heffernan, Ed
    Fitzgerald, Gerry
    Bosley, Emma
    Keijzers, Gerben
    Scuffham, Paul
    Zhang, Ping
    Martin-Khan, Melinda
    Crilly, Julia
    EMERGENCY MEDICINE AUSTRALASIA, 2019, 31 (05) : 715 - 729
  • [30] Advance Resource Planning in Hospital Emergency Departments Using Machine Learning Techniques
    Rawat, Sandeep Singh
    Sultana, Rubeena
    INTERNATIONAL JOURNAL OF HUMAN CAPITAL AND INFORMATION TECHNOLOGY PROFESSIONALS, 2021, 12 (03) : 74 - 86