Developing a prognostic model to predict mortality in patients with acute bacterial meningitis

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Abstract

Bacterial meningitis is one of the harmful and deadly infectious diseases, and any delay in its treatment will lead to death. In this paper, a prognostic model was developed to predict the risk of death amongst probable cases of bacterial meningitis. Our prognostic model was developed using a decision tree algorithm on the national meningitis registry of the Iranian Center for Disease and Prevention (ICDCP) containing 3,923 records of meningitis suspected cases in 2018-2019. The most important features have been selected for the model construction. This model can predict the mortality risk for the meningitis probable cases with 78% accuracy, 84% sensitivity, and 73% specificity. The identified variables in prognosis the death included age and CSF protein level. CSF protein level (mg/dl) >= 65 versus > 65 provided the first branch of our decision tree. The highest mortality risk (85.8%) was seen in the patients >65 CSF protein level with 30 years < of age. For the patients 137 (mg/dl), the mortality risk was 60%. The prognostic factors identified in the present study draw the attention of clinicians to provide early specific measures, such as the admission of patients with a higher risk of death to intensive care units (ICU). It could also provide a helpful risk score tool in decision-making in the early phases of admission in pandemics, decrease mortality rate and improve public health operations efficiently in infectious diseases. © 2021 European Federation for Medical Informatics (EFMI) and IOS Press.

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APA

Mirkhani, A., Roshanpoor, A., Pournik, O., Haddadi, H., Mirzaei, J., & Kaveh, F. (2021). Developing a prognostic model to predict mortality in patients with acute bacterial meningitis. In Public Health and Informatics: Proceedings of MIE 2021 (pp. 774–778). IOS Press. https://doi.org/10.3233/SHTI210280

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