<p>Neural network and logistic regression diagnostic prediction models for giant cell arteritis: development and validation</p> Journal Articles uri icon

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abstract

  • PURPOSE: To develop and validate neural network (NN) vs logistic regression (LR) diagnostic prediction models in patients with suspected giant cell arteritis (GCA). Design: Multicenter retrospective chart review. METHODS: An audit of consecutive patients undergoing temporal artery biopsy (TABx) for suspected GCA was conducted at 14 international medical centers. The outcome variable was biopsy-proven GCA. The predictor variables were age, gender, headache, clinical temporal artery abnormality, jaw claudication, vision loss, diplopia, erythrocyte sedimentation rate, C-reactive protein, and platelet level. The data were divided into three groups to train, validate, and test the models. The NN model with the lowest false-negative rate was chosen. Internal and external validations were performed. RESULTS: Of 1,833 patients who underwent TABx, there was complete information on 1,201 patients, 300 (25%) of whom had a positive TABx. On multivariable LR age, platelets, jaw claudication, vision loss, log C-reactive protein, log erythrocyte sedimentation rate, headache, and clinical temporal artery abnormality were statistically significant predictors of a positive TABx (P≤0.05). The area under the receiver operating characteristic curve/Hosmer-Lemeshow P for LR was 0.867 (95% CI, 0.794, 0.917)/0.119 vs NN 0.860 (95% CI, 0.786, 0.911)/0.805, with no statistically significant difference of the area under the curves (P=0.316). The misclassification rate/false-negative rate of LR was 20.6%/47.5% vs 18.1%/30.5% for NN. Missing data analysis did not change the results. CONCLUSION: Statistical models can aid in the triage of patients with suspected GCA. Misclassification remains a concern, but cutoff values for 95% and 99% sensitivities are provided (https://goo.gl/THCnuU).

authors

  • Ing, Edsel B
  • Miller, Neil R
  • Nguyen, Angeline
  • Su, Wanhua
  • Bursztyn, Lulu LCD
  • Poole, Meredith
  • Kansal, Vinay
  • Toren, Andrew
  • Albreiki, Dana
  • Mouhanna, Jack G
  • Muladzanov, Alla
  • Bernier, Mikael
  • Gans, Mark
  • Lee, Dongho
  • Wendel, Colten
  • Sheldon, Claire
  • Shields, Marc
  • Bellan, Lorne
  • Lee-Wing, Matthew
  • Mohadjer, Yasaman
  • Nijhawan, Navdeep
  • Tyndel, Felix
  • Sundaram, Arun
  • ten Hove, Martin W
  • Chen, John
  • Rodriguez, Amadeo
  • Hu, Angela
  • Khalidi, Nader
  • Ing, Royce
  • Wong, Samuel WK
  • Torun, Nurhan

publication date

  • 2019