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Deep learning model integrating radiologic and clinical data to predict mortality after ischemic stroke. | LitMetric

AI Article Synopsis

  • - The study aimed to develop and validate a deep learning model that predicts mortality in ischemic stroke patients by incorporating brain diffusion weighted imaging (DWI), apparent diffusion coefficient (ADC), and clinical factors.
  • - Data from a large group of stroke patients was divided into training, validation, and testing sets, with a new integrated model created that combined radiological and clinical data.
  • - The improved integrated model outperformed previous prediction methods, showing strong potential for accurately identifying high-risk patients within one year of their stroke.

Article Abstract

Objective: Most prognostic indexes for ischemic stroke mortality lack radiologic information. We aimed to create and validate a deep learning-based mortality prediction model using brain diffusion weighted imaging (DWI), apparent diffusion coefficient (ADC), and clinical factors.

Methods: Data from patients with ischemic stroke who admitted to tertiary hospital during acute periods from 2013 to 2019 were collected and split into training (n = 1109), validation (n = 437), and internal test (n = 654). Data from patients from secondary cardiovascular center was used for external test set (n = 507). The algorithm for predicting mortality, based on DWI and ADC (DLP_DWI), was initially trained. Subsequently, important clinical factors were integrated into this model to create the integrated model (DLP_INTG). The performance of DLP_DWI and DLP_INTG was evaluated by using time-dependent area under the receiver operating characteristic curves (TD AUCs) and Harrell concordance index (C-index) at one-year mortality.

Results: The TD AUC of DLP_DWI was 0.643 in internal test set, and 0.785 in the external dataset. DLP_INTG had a higher performance at predicting one-year mortality than premise score in internal dataset (TD- AUC: 0.859 vs. 0.746; p = 0.046), and in external dataset (TD- AUC: 0.876 vs. 0.808; p = 0.007). DLP_DWI and DLP_INTG exhibited strong discrimination for the high-risk group for one-year mortality.

Interpretation: A deep learning model using brain DWI, ADC and the clinical factors was capable of predicting mortality in patients with ischemic stroke.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11141274PMC
http://dx.doi.org/10.1016/j.heliyon.2024.e31000DOI Listing

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