Title of article :
Testing Global Histogram Equalization and Unsharp Mask Algo-rithms for Processing Conventional Chest X-Ray Images.
Author/Authors :
Mohammadi، A نويسنده Associate Professor, Department of Radiology , , Aghazadeh، J نويسنده Assistant Professor, Department of Neurosurgery, Imam Khomeini Training Hospital, Urmia University of Medical Sciences, Urmia, Iran , , Ghate، AA نويسنده Associate Professor, Department of Radiology , , Moosavi-toomatari، Seyed-Babak نويسنده Medical Doctor, Students’ Research Committee, Urmia University of Medi-cal Sciences, Urmia, Iran , , Se-pehrvand، N نويسنده Medical Doctor, National Institute of Health Research, Tehran University of Medical Sciences, Tehran, Iran , , Moosavi-toomatari، SE نويسنده Medical Intern, Students’ Research Com-mittee, Tabriz University of Medical Sciences, Tabriz, Iran , , Mohammad Ghasemi-rad، M نويسنده Medical Doctor, Students’ Research Committee, Urmia University of Medi-cal Sciences, Urmia, Iran, ,
Issue Information :
فصلنامه با شماره پیاپی 48 سال 2011
Pages :
7
From page :
1
To page :
7
Abstract :
Introduction: Imaging methods are progressing in a rapidly manner, but the problem which we, as the health providers always encounter with is the expensive costs of different devices and our limited budget to provide them. Aims: The aim of this study is to evaluate the usefulness of Histogram Equalization (HE) and Unsharp Mask (UM) on the conventional CXR images. Methods and Material: In Urmia University of Medical Sciences, we designed a windows-based computer program that contains histogram equalization (HE), unsharp mask (UM) and com-bination of HE and UM algorithms with adjusted parameters to process conventional chest x-ray (CXR) images. Two series of CXR images including 49 images without major pulmonary disorder and 45 images with pulmonary parenchymal disorders were selected. After convert-ing them to digital format, images were processed with HE, UM and combination of HE and UM techniques. In each series, original and processed images were saved in 4 databases. Two board-certified general radiologists (with 6 and 5 years experience) analyzed images. Saved images were displayed to radiologists randomly and separately. Quality of each image was saved as a scale from 1 (very low quality) to 5 (excellent). We used a variance-based statistical technique to analyze quality. Statistical analysis used: To compare the quality of each algorithm (GHE, UM and combina-tion of GHE and UM), a variance-based statistical analysis was done. Results: In the first series images, HE and combination of HE and UM algorithms increased quality of images, but UM technique was not suitable, solely. Also, all three techniques increased quality of second series images. Conclusions: The use of digital image processing algorithms such as HE or UM on conventional CXR images can increase quality of images.
Journal title :
Shiraz Electronic Medical Journal
Serial Year :
2011
Journal title :
Shiraz Electronic Medical Journal
Record number :
1347924
Link To Document :
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