Journal of Clinical Medicine (May 2019)

Machine Learning Application for Rupture Risk Assessment in Small-Sized Intracranial Aneurysm

  • Heung Cheol Kim,
  • Jong Kook Rhim,
  • Jun Hyong Ahn,
  • Jeong Jin Park,
  • Jong Un Moon,
  • Eun Pyo Hong,
  • Mi Ran Kim,
  • Seung Gyu Kim,
  • Seong Hwan Lee,
  • Jae Hoon Jeong,
  • Sung Won Choi,
  • Jin Pyeong Jeon

DOI
https://doi.org/10.3390/jcm8050683
Journal volume & issue
Vol. 8, no. 5
p. 683

Abstract

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The assessment of rupture probability is crucial to identifying at risk intracranial aneurysms (IA) in patients harboring multiple aneurysms. We aimed to develop a computer-assisted detection system for small-sized aneurysm ruptures using a convolutional neural network (CNN) based on images of three-dimensional digital subtraction angiography. A retrospective data set, including 368 patients, was used as a training cohort for the CNN using the TensorFlow platform. Aneurysm images in six directions were obtained from each patient and the region-of-interest in each image was extracted. The resulting CNN was prospectively tested in 272 patients and the sensitivity, specificity, overall accuracy, and receiver operating characteristics (ROC) were compared to a human evaluator. Our system showed a sensitivity of 78.76% (95% CI: 72.30%–84.30%), a specificity of 72.15% (95% CI: 60.93%–81.65%), and an overall diagnostic accuracy of 76.84% (95% CI: 71.36%–81.72%) in aneurysm rupture predictions. The area under the ROC (AUROC) in the CNN was 0.755 (95% CI: 0.699%–0.805%), better than that obtained from a human evaluator (AUROC: 0.537; p < 0.001). The CNN-based prediction system was feasible to assess rupture risk in small-sized aneurysms with diagnostic accuracy superior to human evaluators. Additional studies based on a large data set are necessary to enhance diagnostic accuracy and to facilitate clinical application.

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