4.6 Article

Comparison of Shallow and Deep Learning Methods on Classifying the Regional Pattern of Diffuse Lung Disease

Journal

JOURNAL OF DIGITAL IMAGING
Volume 31, Issue 4, Pages 415-424

Publisher

SPRINGER
DOI: 10.1007/s10278-017-0028-9

Keywords

Interstitial lung disease; Convolution neural network; Deep architecture; Support vector machine; Interscanner variation

Funding

  1. Industrial Strategic Technology Development Program of the Ministry of Trade, Industry & Energy in the Republic of Korea [10041618]
  2. ICT R&D program of MSIP/IITP in the Republic of Korea [R6910-15-1023]
  3. Ministry of Public Safety & Security (MPSS), Republic of Korea [R6910-15-1023] Funding Source: Korea Institute of Science & Technology Information (KISTI), National Science & Technology Information Service (NTIS)

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This study aimed to compare shallow and deep learning of classifying the patterns of interstitial lung diseases (ILDs). Using high-resolution computed tomography images, two experienced radiologists marked 1200 regions of interest (ROIs), in which 600 ROIs were each acquired using a GE or Siemens scanner and each group of 600 ROIs consisted of 100 ROIs for subregions that included normal and five regional pulmonary disease patterns (ground-glass opacity, consolidation, reticular opacity, emphysema, and honeycombing). We employed the convolution neural network (CNN) with six learnable layers that consisted of four convolution layers and two fully connected layers. The classification results were compared with the results classified by a shallow learning of a support vector machine (SVM). The CNN classifier showed significantly better performance for accuracy compared with that of the SVM classifier by 6-9%. As the convolution layer increases, the classification accuracy of the CNN showed better performance from 81.27 to 95.12%. Especially in the cases showing pathological ambiguity such as between normal and emphysema cases or between honeycombing and reticular opacity cases, the increment of the convolution layer greatly drops the misclassification rate between each case. Conclusively, the CNN classifier showed significantly greater accuracy than the SVM classifier, and the results implied structural characteristics that are inherent to the specific ILD patterns.

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