Neuropsychiatric Disease and Treatment (Apr 2024)

Building and Validation of an Acute Event Prediction Model for Severe Mental Disorders

  • Wang T,
  • Wang L,
  • Yao Y,
  • Liu N,
  • Peng A,
  • Ling M,
  • Ye F,
  • Sun J

Journal volume & issue
Vol. Volume 20
pp. 885 – 896

Abstract

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Ting Wang,1,2,* Lin Wang,1,* Yunliang Yao,2,* Nan Liu,1 Aiqin Peng,1 Min Ling,2 Fei Ye,1 JiaoJiao Sun1 1Affliated WuTaiShan Hospital of Medical College of Yangzhou University, Yangzhou Mental Health Center, Yangzhou, Jiangsu, People’s Republic of China; 2School of Medicine & Nursing, Huzhou University, Huzhou, Zhejiang, People’s Republic of China*These authors contributed equally to this workCorrespondence: Fei Ye; Jiaojiao Sun, Affiliated WuTaiShan Hospital of Medical College of Yangzhou University, Yangzhou mental health center, Yangzhou, Jiangsu, 225000, People’s Republic of China, Tel +8613645251172 ; +8615150805127, Email [email protected]; [email protected]: The global incidence of acute events in psychiatric patients is intensifying, and models to successfully predict acute events have attracted much attention.Objective: To explore the influence factors of acute incident severe mental disorders (SMDs) and the application of Rstudio statistical software, and build and verify a nomogram prediction model.Methods: SMDs were taken as research objects. The questionnaire survey method was adopted to collect data. Patients with acute event independent factors were screened. R software multivariable Logistic regression model was constructed and a nomogram was drawn.Results: A total of 342 patients with SMDs were hospitalized, and the number of patients who encountered acute events was 64, which accounted for 18.70% of all patients. Statistical significances were found in many aspects (all P ˂ 0.05). Such aspects included Medication adherence, disease diagnosis, marital status, caregivers, social support and the hospitalization environment (odds ratio (OR) = 4.08, 11.62, 12.06, 10.52, 0.04 and 0.61, respectively) were independent risk factors for the acute events of patients with SMDs. The prediction model was modeled, and the AUC was 0.77 and 0.80. The calibration curve shows that the model has good calibration. The clinical decision curve shows that the model has a good clinical effect.Conclusion: The constructed risk prediction model shows good prediction effectiveness in the acute events of patients with SMDs, which is helpful for the early detection of clinical mental health staff at high risk of acute events.Keywords: SMDs, acute event, influencing factors, predictive model and nomogram

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