Literature DB >> 21626922

Massive-training support vector regression and Gaussian process for false-positive reduction in computer-aided detection of polyps in CT colonography.

Jian-Wu Xu1, Kenji Suzuki.   

Abstract

PURPOSE: A massive-training artificial neural network (MTANN) has been developed for the reduction of false positives (FPs) in computer-aided detection (CADe) of polyps in CT colonography (CTC). A major limitation of the MTANN is the long training time. To address this issue, the authors investigated the feasibility of two state-of-the-art regression models, namely, support vector regression (SVR) and Gaussian process regression (GPR) models, in the massive-training framework and developed massive-training SVR (MTSVR) and massive-training GPR (MTGPR) for the reduction of FPs in CADe of polyps.
METHODS: The authors applied SVR and GPR as volume-processing techniques in the distinction of polyps from FP detections in a CTC CADe scheme. Unlike artificial neural networks (ANNs), both SVR and GPR are memory-based methods that store a part of or the entire training data for testing. Therefore, their training is generally fast and they are able to improve the efficiency of the massive-training methodology. Rooted in a maximum margin property, SVR offers excellent generalization ability and robustness to outliers. On the other hand, GPR approaches nonlinear regression from a Bayesian perspective, which produces both the optimal estimated function and the covariance associated with the estimation. Therefore, both SVR and GPR, as the state-of-the-art nonlinear regression models, are able to offer a performance comparable or potentially superior to that of ANN, with highly efficient training. Both MTSVR and MTGPR were trained directly with voxel values from CTC images. A 3D scoring method based on a 3D Gaussian weighting function was applied to the outputs of MTSVR and MTGPR for distinction between polyps and nonpolyps. To test the performance of the proposed models, the authors compared them to the original MTANN in the distinction between actual polyps and various types of FPs in terms of training time reduction and FP reduction performance. The authors' CTC database consisted of 240 CTC data sets obtained from 120 patients in the supine and prone positions. The training set consisted of 27 patients, 10 of which had 10 polyps. The authors selected 10 nonpolyps (i.e., FP sources) from the training set. These ten polyps and ten nonpolyps were used for training the proposed models. The testing set consisted of 93 patients, including 19 polyps in 7 patients and 86 negative patients with 474 FPs produced by an original CADe scheme.
RESULTS: With the MTSVR, the training time was reduced by a factor of 190, while a FP reduction performance [by-polyp sensitivity of 94.7% (18/19) with 2.5 (230/93) FPs/patient] comparable to that of the original MTANN [the same sensitivity with 2.6 (244/93) FPs/patient] was achieved. The classification performance in terms of the area under the receiver-operating-characteristic curve value of the MTGPR (0.82) was statistically significantly higher than that of the original MTANN (0.77), with a two-sided p-value of 0.03. The MTGPR yielded a 94.7% (18/19) by-polyp sensitivity at a FP rate of 2.5 (235/93) per patient and reduced the training time by a factor of 1.3.
CONCLUSIONS: Both MTSVR and MTGPR improve the efficiency of the training in the massive-training framework while maintaining a comparable performance.

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Year:  2011        PMID: 21626922      PMCID: PMC3069995          DOI: 10.1118/1.3562898

Source DB:  PubMed          Journal:  Med Phys        ISSN: 0094-2405            Impact factor:   4.071


  40 in total

1.  Automated polyp detection at CT colonography: feasibility assessment in a human population.

Authors:  R M Summers; C D Johnson; L M Pusanik; J D Malley; A M Youssef; J E Reed
Journal:  Radiology       Date:  2001-04       Impact factor: 11.105

2.  Automated knowledge-guided segmentation of colonic walls for computerized detection of polyps in CT colonography.

Authors:  Janne Näppi; Abraham H Dachman; Peter MacEneaney; Hiroyuki Yoshida
Journal:  J Comput Assist Tomogr       Date:  2002 Jul-Aug       Impact factor: 1.826

3.  Extraction of left ventricular contours from left ventriculograms by means of a neural edge detector.

Authors:  Kenji Suzuki; Isao Horiba; Noboru Sugie; Michio Nanki
Journal:  IEEE Trans Med Imaging       Date:  2004-03       Impact factor: 10.048

4.  From point to local neighborhood: polyp detection in CT colonography using geodesic ring neighborhoods.

Authors:  Ju Lynn Ong; Abd-Krim Seghouane
Journal:  IEEE Trans Image Process       Date:  2010-09-13       Impact factor: 10.856

5.  Computer-aided diagnostic scheme for distinction between benign and malignant nodules in thoracic low-dose CT by use of massive training artificial neural network.

Authors:  Kenji Suzuki; Feng Li; Shusuke Sone; Kunio Doi
Journal:  IEEE Trans Med Imaging       Date:  2005-09       Impact factor: 10.048

Review 6.  CAD techniques, challenges, and controversies in computed tomographic colonography.

Authors:  H Yoshida; A H Dachman
Journal:  Abdom Imaging       Date:  2005 Jan-Feb

7.  Reduction of bias and variance for evaluation of computer-aided diagnostic schemes.

Authors:  Qiang Li; Kunio Doi
Journal:  Med Phys       Date:  2006-04       Impact factor: 4.071

8.  Symmetric curvature patterns for colonic polyp detection.

Authors:  Anna Jerebko; Sarang Lakare; Pascal Cathier; Senthil Periaswamy; Luca Bogoni
Journal:  Med Image Comput Comput Assist Interv       Date:  2006

9.  Reliable evaluation of performance level for computer-aided diagnostic scheme.

Authors:  Qiang Li
Journal:  Acad Radiol       Date:  2007-08       Impact factor: 3.173

10.  Classifier performance prediction for computer-aided diagnosis using a limited dataset.

Authors:  Berkman Sahiner; Heang-Ping Chan; Lubomir Hadjiiski
Journal:  Med Phys       Date:  2008-04       Impact factor: 4.071

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  8 in total

1.  Automated image-based colon cleansing for laxative-free CT colonography computer-aided polyp detection.

Authors:  Marius George Linguraru; Neil Panjwani; Joel G Fletcher; Ronald M Summers
Journal:  Med Phys       Date:  2011-12       Impact factor: 4.071

2.  Machine Learning in Computer-aided Diagnosis of the Thorax and Colon in CT: A Survey.

Authors:  Kenji Suzuki
Journal:  IEICE Trans Inf Syst       Date:  2013-04-01

3.  Computer-aided diagnosis systems for lung cancer: challenges and methodologies.

Authors:  Ayman El-Baz; Garth M Beache; Georgy Gimel'farb; Kenji Suzuki; Kazunori Okada; Ahmed Elnakib; Ahmed Soliman; Behnoush Abdollahi
Journal:  Int J Biomed Imaging       Date:  2013-01-29

Review 4.  Overview of deep learning in medical imaging.

Authors:  Kenji Suzuki
Journal:  Radiol Phys Technol       Date:  2017-07-08

5.  Separation of bones from soft tissue in chest radiographs: Anatomy-specific orientation-frequency-specific deep neural network convolution.

Authors:  Amin Zarshenas; Junchi Liu; Paul Forti; Kenji Suzuki
Journal:  Med Phys       Date:  2019-03-28       Impact factor: 4.071

6.  Quantitative radiology: automated measurement of polyp volume in computed tomography colonography using Hessian matrix-based shape extraction and volume growing.

Authors:  Mark L Epstein; Piotr R Obara; Yisong Chen; Junchi Liu; Amin Zarshenas; Nazanin Makkinejad; Abraham H Dachman; Kenji Suzuki
Journal:  Quant Imaging Med Surg       Date:  2015-10

7.  A review of computer-aided diagnosis in thoracic and colonic imaging.

Authors:  Kenji Suzuki
Journal:  Quant Imaging Med Surg       Date:  2012-09

8.  Pixel-based machine learning in medical imaging.

Authors:  Kenji Suzuki
Journal:  Int J Biomed Imaging       Date:  2012-02-28
  8 in total

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