Frontiers in Neurology (Mar 2022)

Deep Learning-Enabled Clinically Applicable CT Planbox for Stroke With High Accuracy and Repeatability

  • Yang Wang,
  • Junkai Zhu,
  • Jinli Zhao,
  • Wenyi Li,
  • Xin Zhang,
  • Xiaolin Meng,
  • Taige Chen,
  • Ming Li,
  • Meiping Ye,
  • Renfang Hu,
  • Shidan Dou,
  • Huayin Hao,
  • Xiaofen Zhao,
  • Xiaoming Wu,
  • Wei Hu,
  • Cheng Li,
  • Xiaole Fan,
  • Liyun Jiang,
  • Xiaofan Lu,
  • Fangrong Yan

DOI
https://doi.org/10.3389/fneur.2022.755492
Journal volume & issue
Vol. 13

Abstract

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BackgroundComputed tomography (CT) plays an essential role in classifying stroke, quantifying penumbra size and supporting stroke-relevant radiomics studies. However, it is difficult to acquire standard, accurate and repeatable images during follow-up. Therefore, we invented an intelligent CT to evaluate stroke during the entire follow-up.MethodsWe deployed a region proposal network (RPN) and V-Net to endow traditional CT with intelligence. Specifically, facial detection was accomplished by identifying adjacent jaw positions through training and testing an RPN on 76,382 human faces using a preinstalled 2-dimensional camera; two regions of interest (ROIs) were segmented by V-Net on another training set with 295 subjects, and the moving distance of scanning couch was calculated based on a pre-generated calibration table. Multiple cohorts including 1,124 patients were used for performance validation under three clinical scenarios.ResultsCranial Automatic Planbox Imaging Towards AmeLiorating neuroscience (CAPITAL)-CT was invented. RPN model had an error distance of 4.46 ± 0.02 pixels with a success rate of 98.7% in the training set and 100% with 2.23 ± 0.10 pixels in the testing set. V-Net-derived segmentation maintained a clinically tolerable distance error, within 3 mm on average, and all lines presented with a tolerable angle error, within 3° on average in all boundaries. Real-time, accurate, and repeatable automatic scanning was accomplished with and a lower radiation exposure dose (all P < 0.001).ConclusionsCAPITAL-CT generated standard and reproducible images that could simplify the work of radiologists, which would be of great help in the follow-up of stroke patients and in multifield research in neuroscience.

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