10 results on '"Kuang-Che Chang-Chien"'
Search Results
2. Rapid image stitching and computer-aided detection for multipass automated breast ultrasound
- Author
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Kuang-Che Chang-Chien, Jeon-Hor Chen, Etsuo Takada, Chiun-Sheng Huang, Yi-Hong Chou, Ruey-Feng Chang, and Chen-Ming Kuo
- Subjects
medicine.medical_specialty ,medicine.diagnostic_test ,Image quality ,business.industry ,Computer science ,Cancer ,General Medicine ,medicine.disease ,Image stitching ,Speckle pattern ,Computer-aided diagnosis ,medicine ,Medical imaging ,Mammography ,Computer vision ,Radiology ,Artificial intelligence ,business ,Breast ultrasound - Abstract
Purpose: Breast ultrasound(US) is recently becoming more and more popular for detecting breast lesions. However, screening results in hundreds of USimages for each subject. This magnitude of images can lead to fatigue in radiologist, causing failure in the detection of lesions of a subtle nature. In this study, an image stitching technique is proposed for combining multipass images of the whole breast into a series of full-view images, and a fully automatic screening system that works off these images is also presented. Methods: Using the registration technique based on the simple sum of absolute block-mean difference (SBMD) measure, three-pass images were merged into full-view USimages. An automatic screening system was then developed for detecting tumors from these full-view images. The preprocessing step was used to reduce the tumor detection time of the system and to improve image quality. The gray-level slicing method was then used to divide images into numerous regions. Finally, seven computerized features—darkness, uniformity, width-height ratio, area size, nonpersistence, coronal area size, and region continuity—were defined and used to determine whether or not each region was a part of a tumor. Results: In the experiment, there was a total of 25 experimental cases with 26 lesions, and each case was composed of 252 images (three passes, 84 images/pass). The processing time of the proposed stitching procedure for each case was within 30 s with a Pentium IV 2.0 processor, and the detection sensitivity of the proposed CADsystem was 92.3% with 1.76 false positives per case. Conclusions: The proposed automatic screening system can be applied to the whole breast images stitched together via SBMD-based registration in order to detect tumors.
- Published
- 2010
- Full Text
- View/download PDF
3. Breast density analysis for whole breast ultrasound images
- Author
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Woo Kyung Moon, Nariya Cho, Kuang-Che Chang Chien, Jeon-Hor Chen, Etsuo Takada, Yi-Fa Wang, Ruey-Feng Chang, Chiun-Sheng Huang, and Jeffery H. K. Wu
- Subjects
medicine.medical_specialty ,medicine.diagnostic_test ,business.industry ,Concordance ,Ultrasound ,Speckle noise ,General Medicine ,medicine.disease ,Speckle pattern ,Breast cancer ,Medical imaging ,medicine ,Mammography ,Radiology ,skin and connective tissue diseases ,business ,Grading (tumors) - Abstract
Breast density has been established as an independent risk factor associated with the development of breast cancer. The terms mammographic density and breast density are often used interchangeably, since most breast density studies are performed with projection mammography. It is known that increase in mammographic density is associated with an increased cancer risk. A sensitive method that allows for the measurement of small changes in breast density may provide useful information for risk management. Despite the efforts to develop quantitative breast density measurements from projection mammograms, the measurements show large variability as a result of projection imaging, differing body position, differing levels of compression, and variation of the x-ray beam characteristics. This study used two separate computer-aided methods, threshold-based and proportion-based evaluations, to analyze breast density on whole breast ultrasound(US)imaging and to compare with the grading results of three radiologists using projection mammography. Thirty-two female subjects with 252 images per case were included in this study. Whole breast USimages were obtained from an Aloka SSD-5500 ultrasound machine with an ASU-1004 transducer (Aloka, Japan). Before analyzing breast density, an adaptive speckle reduction filter was used for removing speckle noise, and a robust thresholding algorithm was used to divide breast tissue into fatty or fibroglandular classifications. Then, the proposed approaches were applied for analysis. In the threshold-based method, a statistical model was employed to determine whether each pixel in the breast region belonged to fibroglandular or fatty tissue. The proportion-based method was based on three-dimensional information to calculate the volumetric proportion of fibroglandular tissue to the total breast tissue. The experimental cases were graded by the proposed analysis methods and compared with the ground standard density classification assigned by a majority voting of three experienced breast radiologists. For the threshold-based method, 28 of 32 US test cases and for the proportion-based density classifier, 27 of 32 US test cases were found to be in agreement with the radiologist “ground standard” mammographic interpretations, resulting in overall accuracies of 87.5% and 84.4%, respectively. Moreover, the concordance values of the proposed methods were between 0.0938 and 0.1563, which were less than the average interobserver concordance of 0.3958. The experiment result showed that the proposed methods could be a reference opinion and offer concordant and reliable quantification of breast density for the radiologist.
- Published
- 2009
- Full Text
- View/download PDF
4. Whole breast computer-aided screening using free-hand ultrasound
- Author
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Kuang Che Chang-Chien, Hao Jen Chen, Dar-Ren Chen, Woo Kyung Moon, Etsuo Takada, and Ruey-Feng Chang
- Subjects
medicine.medical_specialty ,business.industry ,Ultrasound ,CAD ,Pattern recognition ,General Medicine ,medicine.disease ,Test case ,Breast cancer ,Computer-aided ,medicine ,False positive paradox ,Whole breast ,Radiology ,Artificial intelligence ,business ,Statistic - Abstract
Ultrasound imaging plays an important role in the field of breast cancer diagnosis because of its convenience and non-invasive. Recently, the development of computer-aided diagnosis (CAD) provides a convenient way for doctors in detecting breast cancer using ultrasound images. However, the previous CAD systems have some limits with the requirements of human intervention. Hence, in this paper, a novel automatic CAD system is proposed to find suspicious frames among whole breast ultrasound images. After applying watershed segmentation, suspicious segmented regions can be identified through several criteria defined according to the statistic and geometric features of a tumour. By examining 13 US test cases, almost all the tumours and cysts could successfully be detected when an average of two false positives for each case is produced. The experimental results prove the accuracy of this proposed system.
- Published
- 2005
- Full Text
- View/download PDF
5. Rapid image stitching and computer-aided detection for multipass automated breast ultrasound
- Author
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Ruey-Feng, Chang, Kuang-Che, Chang-Chien, Etsuo, Takada, Chiun-Sheng, Huang, Yi-Hong, Chou, Chen-Ming, Kuo, and Jeon-Hor, Chen
- Subjects
Automation ,Time Factors ,ROC Curve ,Image Interpretation, Computer-Assisted ,Humans ,Breast Neoplasms ,Female ,Diagnosis, Computer-Assisted ,Ultrasonography, Mammary ,False Negative Reactions - Abstract
Breast ultrasound (US) is recently becoming more and more popular for detecting breast lesions. However, screening results in hundreds of US images for each subject. This magnitude of images can lead to fatigue in radiologist, causing failure in the detection of lesions of a subtle nature. In this study, an image stitching technique is proposed for combining multipass images of the whole breast into a series of full-view images, and a fully automatic screening system that works off these images is also presented.Using the registration technique based on the simple sum of absolute block-mean difference (SBMD) measure, three-pass images were merged into full-view US images. An automatic screening system was then developed for detecting tumors from these full-view images. The preprocessing step was used to reduce the tumor detection time of the system and to improve image quality. The gray-level slicing method was then used to divide images into numerous regions. Finally, seven computerized features--darkness, uniformity, width-height ratio, area size, nonpersistence, coronal area size, and region continuity--were defined and used to determine whether or not each region was a part of a tumor.In the experiment, there was a total of 25 experimental cases with 26 lesions, and each case was composed of 252 images (three passes, 84 images/pass). The processing time of the proposed stitching procedure for each case was within 30 s with a Pentium IV 2.0 processor, and the detection sensitivity of the proposed CAD system was 92.3% with 1.76 false positives per case.The proposed automatic screening system can be applied to the whole breast images stitched together via SBMD-based registration in order to detect tumors.
- Published
- 2010
6. Breast density analysis for whole breast ultrasound images
- Author
-
Jeon-Hor, Chen, Chiun-Sheng, Huang, Kuang-Che Chang, Chien, Etsuo, Takada, Woo Kyung, Moon, Jeffery H K, Wu, Nariya, Cho, Yi-Fa, Wang, and Ruey-Feng, Chang
- Subjects
Adult ,Humans ,Reproducibility of Results ,Female ,Signal Processing, Computer-Assisted ,Breast ,Ultrasonography, Mammary ,Middle Aged ,Algorithms ,Aged ,Mammography - Abstract
Breast density has been established as an independent risk factor associated with the development of breast cancer. The terms mammographic density and breast density are often used interchangeably, since most breast density studies are performed with projection mammography. It is known that increase in mammographic density is associated with an increased cancer risk. A sensitive method that allows for the measurement of small changes in breast density may provide useful information for risk management. Despite the efforts to develop quantitative breast density measurements from projection mammograms, the measurements show large variability as a result of projection imaging, differing body position, differing levels of compression, and variation of the x-ray beam characteristics. This study used two separate computer-aided methods, threshold-based and proportion-based evaluations, to analyze breast density on whole breast ultrasound (US) imaging and to compare with the grading results of three radiologists using projection mammography. Thirty-two female subjects with 252 images per case were included in this study. Whole breast US images were obtained from an Aloka SSD-5500 ultrasound machine with an ASU-1004 transducer (Aloka, Japan). Before analyzing breast density, an adaptive speckle reduction filter was used for removing speckle noise, and a robust thresholding algorithm was used to divide breast tissue into fatty or fibroglandular classifications. Then, the proposed approaches were applied for analysis. In the threshold-based method, a statistical model was employed to determine whether each pixel in the breast region belonged to fibroglandular or fatty tissue. The proportion-based method was based on three-dimensional information to calculate the volumetric proportion of fibroglandular tissue to the total breast tissue. The experimental cases were graded by the proposed analysis methods and compared with the ground standard density classification assigned by a majority voting of three experienced breast radiologists. For the threshold-based method, 28 of 32 US test cases and for the proportion-based density classifier, 27 of 32 US test cases were found to be in agreement with the radiologist "ground standard" mammographic interpretations, resulting in overall accuracies of 87.5% and 84.4%, respectively. Moreover, the concordance values of the proposed methods were between 0.0938 and 0.1563, which were less than the average interobserver concordance of 0.3958. The experiment result showed that the proposed methods could be a reference opinion and offer concordant and reliable quantification of breast density for the radiologist.
- Published
- 2009
7. Three Comparative Approaches for Breast Density Estimation in Digital and Screen Film Mammograms.
- Author
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Ruey-Feng Chang, Kuang-Che Chang-Chien, Takada, E., Suri, J.S., Woo Kyung Moon, Wu, J.H.K., Nariya Cho, Yi-Fa Wang, and Dar-Ren Chen
- Published
- 2006
- Full Text
- View/download PDF
8. Tamper Detection and Restoring System for Medical Images Using Wavelet-based Reversible Data Embedding.
- Author
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Kuo-Hwa Chiang, Kuang-Che Chang-Chien, Ruey-Feng Chang, and Hsuan-Yen Yen
- Subjects
MEDICAL imaging systems ,WAVELETS (Mathematics) ,EMBEDDINGS (Mathematics) ,DIGITAL images ,COUNTERFEIT money - Abstract
Over the past few years, the billows of the digital trends and the exploding growth of electronic networks, such as worldwide web, global mobility networks, etc., have drastically changed our daily lifestyle. In view of the widespread applications of digital images, medical images, which are produced by a wide variety of medical appliances, are stored in digital form gradually. These digital images are very easy to be modified imperceptively by malicious intruders for illegal purposes. The well-known adage that “seeing is believing” seems not always a changeless truth. Therefore, protecting images from being altered becomes an important issue. Based on the lossless data-embedding techniques, two detection and restoration systems are proposed to cope with forgery of medical images in this paper. One of them has the ability to recover the whole blocks of the image and the other enables to recover only a particular region where a physician will be interested in, with a better visual quality. Without the need of comparing with the original image, these systems have a great advantage of detecting and locating forged parts of the image with high possibility. And then it can also restore the counterfeited parts. Furthermore, once an image is announced authentic, the original image can be derived from the stego-image losslessly. The experimental results show that the restored version of a tampered image in the first method is extremely close to the original one. As to the second method, the region of interest selected by a physician can be recovered without any loss, when it is tampered. [ABSTRACT FROM AUTHOR]
- Published
- 2008
- Full Text
- View/download PDF
9. Complex defect inspection for transparent substrate by combining digital holography with machine learning.
- Author
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Kuang-Che Chang Chien and Han-Yen Tu
- Subjects
- *
HOLOGRAPHY , *MACHINE learning , *RECEIVER operating characteristic curves , *DIFFRACTION patterns , *VIRTUAL networks , *IMAGE segmentation - Abstract
We proposed a complex defect inspection (CDI) technique for quality control of transparent substrates that uses the diffraction characteristics of digital holograms and a machine learning algorithm. A complex pattern diffraction model was built to provide two diffraction criteria, the least separation of confusion and the effective diffraction distance, to extend depth of focus in the effective diffraction regime for numerical reconstruction. On the basis of an analysis of three-dimensional diffraction characteristics of complex images, defect identification was performed to detect and classify defects (cracks, dusts, and watermarks) in transparent substrates using region-based segmentation and a machine learning algorithm. The experimental results indicated that the defect detection performance of the proposed CDI system was recall = 96.3% and precision = 92.8%. Moreover, overall multiclass classification accuracy = 95.3%, resulting in a discrimination area under the receiver operating characteristic curve (Az) of 0.96. [ABSTRACT FROM AUTHOR]
- Published
- 2019
- Full Text
- View/download PDF
10. Regional fringe analysis for improving depth measurement in phase-shifting fringe projection profilometry.
- Author
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Kuang-Che Chang Chien, Han-Yen Tu, Ching-Huang Hsieh, Chau-Jern Cheng, and Chun-Yen Chang
- Subjects
BATHYMETRY ,FUZZY measure theory - Abstract
This study proposes a regional fringe analysis (RFA) method to detect the regions of a target object in captured shifted images to improve depth measurement in phase-shifting fringe projection profilometry (PS-FPP). In the RFA method, region-based segmentation is exploited to segment the de-fringed image of a target object, and a multi-level fuzzy-based classification with five presented features is used to analyze and discriminate the regions of an object from the segmented regions, which were associated with explicit fringe information. Then, in the experiment, the performance of the proposed method is tested and evaluated on 26 test cases made of five types of materials. The qualitative and quantitative results demonstrate that the proposed RFA method can effectively detect the desired regions of an object to improve depth measurement in the PS-FPP system. [ABSTRACT FROM AUTHOR]
- Published
- 2018
- Full Text
- View/download PDF
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