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Deep learning to differentiate parkinsonian disorders separately using single midsagittal MR imaging: a proof of concept study.

Shigeru KiryuKoichiro YasakaHiroyuki AkaiYasuhiro NakataYusuke SugomoriSeigo HaraMaria SeoOsamu AbeKuni Ohtomo
Published in: European radiology (2019)
• Deep learning convolution neural network achieves differential diagnosis of PD, PSP, MSA-P, and normal controls with an accuracy of 96.8, 93.7, 95.2, and 98.4%, respectively. • The areas under the curves for distinguishing between PD, PSP, MSA-P, and normality were 0.995, 0.982, 0.990, and 1.000, respectively. • CNN may learn important features that humans not notice, and has a possibility to perform previously impossible diagnoses.
Keyphrases
  • neural network
  • deep learning
  • convolutional neural network
  • artificial intelligence
  • machine learning
  • computed tomography
  • magnetic resonance