TY - JOUR
T1 - Quantitative analysis of geometric-pattern features of interstitial infiltrates in digital chest radiographs
T2 - Preliminary results
AU - Katsuragawa, Shigehiko
AU - Doi, Kunio
AU - MacMahon, Heber
AU - Monnier-Cholley, Laurence
AU - Morishita, Junji
AU - Ishida, Takayuki
PY - 1996
Y1 - 1996
N2 - We are developing a computerized method for detection and characterization of interstitial diseases based on a quantitative analysis of geometric features of various infiltrate patterns in digital chest radiographs. In our approach, regions of interest (ROIs) with 128 × 128 matrix size (22.4 mm × 22.4 mm) are automatically selected, covering peripheral lung regions. Next, nodular and linear opacities, which are the basic components of interstitial infiltrates, are identified from two processed images obtained by use of a multiple-level thresholding technique and a line enhancement filter, respectively. Finally, the total area of nodular opacities and the total length of linear opacities in each ROI are determined as measures of geometric pattern features. We have applied this computer analysis to 72 ROIs with normal and abnormal patterns that were classified in advance by six chest radiologists. Preliminary results indicate that the distribution of measures of geometric-pattern features correlate well with radiologists' classification. These early results are encouraging, and further evaluation hopes to establish that this computerized method might prove useful to radiologists in their assessment of interstitial diseases.
AB - We are developing a computerized method for detection and characterization of interstitial diseases based on a quantitative analysis of geometric features of various infiltrate patterns in digital chest radiographs. In our approach, regions of interest (ROIs) with 128 × 128 matrix size (22.4 mm × 22.4 mm) are automatically selected, covering peripheral lung regions. Next, nodular and linear opacities, which are the basic components of interstitial infiltrates, are identified from two processed images obtained by use of a multiple-level thresholding technique and a line enhancement filter, respectively. Finally, the total area of nodular opacities and the total length of linear opacities in each ROI are determined as measures of geometric pattern features. We have applied this computer analysis to 72 ROIs with normal and abnormal patterns that were classified in advance by six chest radiologists. Preliminary results indicate that the distribution of measures of geometric-pattern features correlate well with radiologists' classification. These early results are encouraging, and further evaluation hopes to establish that this computerized method might prove useful to radiologists in their assessment of interstitial diseases.
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U2 - 10.1007/BF03168609
DO - 10.1007/BF03168609
M3 - Article
C2 - 8854264
AN - SCOPUS:0030201347
SN - 0897-1889
VL - 9
SP - 137
EP - 144
JO - Journal of Digital Imaging
JF - Journal of Digital Imaging
IS - 3
ER -