Classification in medical image analysis using adaptive metric k-NN

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningfagfællebedømt

Standard

Classification in medical image analysis using adaptive metric k-NN. / Chen, Chen; Chernoff, Konstantin; Karemore, Gopal; Lo, Pechin Chien Pau; Nielsen, Mads; Lauze, Francois Bernard.

Medical Imaging 2010: image processing. red. / Benoit M. Dawant; David R. Haynor. SPIE - International Society for Optical Engineering, 2010. 76230S (Progress in Biomedical Optics and Imaging; Nr. 33, Bind 11).

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningfagfællebedømt

Harvard

Chen, C, Chernoff, K, Karemore, G, Lo, PCP, Nielsen, M & Lauze, FB 2010, Classification in medical image analysis using adaptive metric k-NN. i BM Dawant & DR Haynor (red), Medical Imaging 2010: image processing., 76230S, SPIE - International Society for Optical Engineering, Progress in Biomedical Optics and Imaging, nr. 33, bind 11, SPIE Medical Imaging 2010, San Diego, USA, 13/02/2010. https://doi.org/10.1117/12.844338

APA

Chen, C., Chernoff, K., Karemore, G., Lo, P. C. P., Nielsen, M., & Lauze, F. B. (2010). Classification in medical image analysis using adaptive metric k-NN. I B. M. Dawant, & D. R. Haynor (red.), Medical Imaging 2010: image processing [76230S] SPIE - International Society for Optical Engineering. Progress in Biomedical Optics and Imaging Bind 11 Nr. 33 https://doi.org/10.1117/12.844338

Vancouver

Chen C, Chernoff K, Karemore G, Lo PCP, Nielsen M, Lauze FB. Classification in medical image analysis using adaptive metric k-NN. I Dawant BM, Haynor DR, red., Medical Imaging 2010: image processing. SPIE - International Society for Optical Engineering. 2010. 76230S. (Progress in Biomedical Optics and Imaging; Nr. 33, Bind 11). https://doi.org/10.1117/12.844338

Author

Chen, Chen ; Chernoff, Konstantin ; Karemore, Gopal ; Lo, Pechin Chien Pau ; Nielsen, Mads ; Lauze, Francois Bernard. / Classification in medical image analysis using adaptive metric k-NN. Medical Imaging 2010: image processing. red. / Benoit M. Dawant ; David R. Haynor. SPIE - International Society for Optical Engineering, 2010. (Progress in Biomedical Optics and Imaging; Nr. 33, Bind 11).

Bibtex

@inproceedings{2a37acd0226411df8ed1000ea68e967b,
title = "Classification in medical image analysis using adaptive metric k-NN",
abstract = "The performance of the k-nearest neighborhoods (k-NN) classifier is highly dependent on the distance metric used to identify the k nearest neighbors of the query points. The standard Euclidean distance is commonly used in practice. This paper investigates the performance of k-NN classifier with respect to different adaptive metrics in the context of medical imaging. We propose using adaptive metrics such that the structure of the data is better described, introducing some unsupervised learning knowledge in k-NN. We investigated four different metrics are estimated: a theoretical metric based on the assumption that images are drawn from Brownian Image Model (BIM), the normalized metric based on variance of the data, the empirical metric is based on the empirical covariance matrix of the unlabeled data, and an optimized metric obtained by minimizing the classification error. The spectral structure of the empirical covariance also leads to Principal Component Analysis (PCA) performed on it which results the subspace metrics. The metrics are evaluated on two data sets: lateral X-rays of the lumbar aortic/spine region, where we use k-NN for performing abdominal aorta calcification detection; and mammograms, where we use k-NN for breast cancer risk assessment. The results show that appropriate choice of metric can improve classification.",
author = "Chen Chen and Konstantin Chernoff and Gopal Karemore and Lo, {Pechin Chien Pau} and Mads Nielsen and Lauze, {Francois Bernard}",
year = "2010",
doi = "10.1117/12.844338",
language = "English",
series = "Progress in Biomedical Optics and Imaging",
publisher = "SPIE - International Society for Optical Engineering",
number = "33",
editor = "Dawant, {Benoit M.} and Haynor, {David R.}",
booktitle = "Medical Imaging 2010",
note = "null ; Conference date: 13-02-2010 Through 18-02-2010",

}

RIS

TY - GEN

T1 - Classification in medical image analysis using adaptive metric k-NN

AU - Chen, Chen

AU - Chernoff, Konstantin

AU - Karemore, Gopal

AU - Lo, Pechin Chien Pau

AU - Nielsen, Mads

AU - Lauze, Francois Bernard

N1 - Conference code: 2010

PY - 2010

Y1 - 2010

N2 - The performance of the k-nearest neighborhoods (k-NN) classifier is highly dependent on the distance metric used to identify the k nearest neighbors of the query points. The standard Euclidean distance is commonly used in practice. This paper investigates the performance of k-NN classifier with respect to different adaptive metrics in the context of medical imaging. We propose using adaptive metrics such that the structure of the data is better described, introducing some unsupervised learning knowledge in k-NN. We investigated four different metrics are estimated: a theoretical metric based on the assumption that images are drawn from Brownian Image Model (BIM), the normalized metric based on variance of the data, the empirical metric is based on the empirical covariance matrix of the unlabeled data, and an optimized metric obtained by minimizing the classification error. The spectral structure of the empirical covariance also leads to Principal Component Analysis (PCA) performed on it which results the subspace metrics. The metrics are evaluated on two data sets: lateral X-rays of the lumbar aortic/spine region, where we use k-NN for performing abdominal aorta calcification detection; and mammograms, where we use k-NN for breast cancer risk assessment. The results show that appropriate choice of metric can improve classification.

AB - The performance of the k-nearest neighborhoods (k-NN) classifier is highly dependent on the distance metric used to identify the k nearest neighbors of the query points. The standard Euclidean distance is commonly used in practice. This paper investigates the performance of k-NN classifier with respect to different adaptive metrics in the context of medical imaging. We propose using adaptive metrics such that the structure of the data is better described, introducing some unsupervised learning knowledge in k-NN. We investigated four different metrics are estimated: a theoretical metric based on the assumption that images are drawn from Brownian Image Model (BIM), the normalized metric based on variance of the data, the empirical metric is based on the empirical covariance matrix of the unlabeled data, and an optimized metric obtained by minimizing the classification error. The spectral structure of the empirical covariance also leads to Principal Component Analysis (PCA) performed on it which results the subspace metrics. The metrics are evaluated on two data sets: lateral X-rays of the lumbar aortic/spine region, where we use k-NN for performing abdominal aorta calcification detection; and mammograms, where we use k-NN for breast cancer risk assessment. The results show that appropriate choice of metric can improve classification.

U2 - 10.1117/12.844338

DO - 10.1117/12.844338

M3 - Article in proceedings

T3 - Progress in Biomedical Optics and Imaging

BT - Medical Imaging 2010

A2 - Dawant, Benoit M.

A2 - Haynor, David R.

PB - SPIE - International Society for Optical Engineering

Y2 - 13 February 2010 through 18 February 2010

ER -

ID: 18229907