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Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms

The thermoanalytical technique differential scanning calorimetry (DSC) has been applied to characterize protein denaturation patterns (thermograms) in blood plasma samples and relate these to a subject’s health status. The analysis and classification of thermograms is challenging because of the high...

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Autores principales: Rai, Shesh N., Srivastava, Sudhir, Pan, Jianmin, Wu, Xiaoyong, Rai, Somesh P., Mekmaysy, Chongkham S., DeLeeuw, Lynn, Chaires, Jonathan B., Garbett, Nichola C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6701772/
https://www.ncbi.nlm.nih.gov/pubmed/31430304
http://dx.doi.org/10.1371/journal.pone.0220765
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author Rai, Shesh N.
Srivastava, Sudhir
Pan, Jianmin
Wu, Xiaoyong
Rai, Somesh P.
Mekmaysy, Chongkham S.
DeLeeuw, Lynn
Chaires, Jonathan B.
Garbett, Nichola C.
author_facet Rai, Shesh N.
Srivastava, Sudhir
Pan, Jianmin
Wu, Xiaoyong
Rai, Somesh P.
Mekmaysy, Chongkham S.
DeLeeuw, Lynn
Chaires, Jonathan B.
Garbett, Nichola C.
author_sort Rai, Shesh N.
collection PubMed
description The thermoanalytical technique differential scanning calorimetry (DSC) has been applied to characterize protein denaturation patterns (thermograms) in blood plasma samples and relate these to a subject’s health status. The analysis and classification of thermograms is challenging because of the high-dimensionality of the dataset. There are various methods for group classification using high-dimensional data sets; however, the impact of using high-dimensional data sets for cancer classification has been poorly understood. In the present article, we proposed a statistical approach for data reduction and a parametric method (PM) for modeling of high-dimensional data sets for two- and three- group classification using DSC and demographic data. We compared the PM to the non-parametric classification method K-nearest neighbors (KNN) and the semi-parametric classification method KNN with dynamic time warping (DTW). We evaluated the performance of these methods for multiple two-group classifications: (i) normal versus cervical cancer, (ii) normal versus lung cancer, (iii) normal versus cancer (cervical + lung), (iv) lung cancer versus cervical cancer as well as for three-group classification: normal versus cervical cancer versus lung cancer. In general, performance for two-group classification was high whereas three-group classification was more challenging, with all three methods predicting normal samples more accurately than cancer samples. Moreover, specificity of the PM method was mostly higher or the same as KNN and DTW-KNN with lower sensitivity. The performance of KNN and DTW-KNN decreased with the inclusion of demographic data, whereas similar performance was observed for the PM which could be explained by the fact that the PM uses fewer parameters as compared to KNN and DTW-KNN methods and is thus less susceptible to the risk of overfitting. More importantly the accuracy of the PM can be increased by using a greater number of quantile data points and by the inclusion of additional demographic and clinical data, providing a substantial advantage over KNN and DTW-KNN methods.
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spelling pubmed-67017722019-09-04 Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms Rai, Shesh N. Srivastava, Sudhir Pan, Jianmin Wu, Xiaoyong Rai, Somesh P. Mekmaysy, Chongkham S. DeLeeuw, Lynn Chaires, Jonathan B. Garbett, Nichola C. PLoS One Research Article The thermoanalytical technique differential scanning calorimetry (DSC) has been applied to characterize protein denaturation patterns (thermograms) in blood plasma samples and relate these to a subject’s health status. The analysis and classification of thermograms is challenging because of the high-dimensionality of the dataset. There are various methods for group classification using high-dimensional data sets; however, the impact of using high-dimensional data sets for cancer classification has been poorly understood. In the present article, we proposed a statistical approach for data reduction and a parametric method (PM) for modeling of high-dimensional data sets for two- and three- group classification using DSC and demographic data. We compared the PM to the non-parametric classification method K-nearest neighbors (KNN) and the semi-parametric classification method KNN with dynamic time warping (DTW). We evaluated the performance of these methods for multiple two-group classifications: (i) normal versus cervical cancer, (ii) normal versus lung cancer, (iii) normal versus cancer (cervical + lung), (iv) lung cancer versus cervical cancer as well as for three-group classification: normal versus cervical cancer versus lung cancer. In general, performance for two-group classification was high whereas three-group classification was more challenging, with all three methods predicting normal samples more accurately than cancer samples. Moreover, specificity of the PM method was mostly higher or the same as KNN and DTW-KNN with lower sensitivity. The performance of KNN and DTW-KNN decreased with the inclusion of demographic data, whereas similar performance was observed for the PM which could be explained by the fact that the PM uses fewer parameters as compared to KNN and DTW-KNN methods and is thus less susceptible to the risk of overfitting. More importantly the accuracy of the PM can be increased by using a greater number of quantile data points and by the inclusion of additional demographic and clinical data, providing a substantial advantage over KNN and DTW-KNN methods. Public Library of Science 2019-08-20 /pmc/articles/PMC6701772/ /pubmed/31430304 http://dx.doi.org/10.1371/journal.pone.0220765 Text en https://creativecommons.org/publicdomain/zero/1.0/ This is an open access article, free of all copyright, and may be freely reproduced, distributed, transmitted, modified, built upon, or otherwise used by anyone for any lawful purpose. The work is made available under the Creative Commons CC0 (https://creativecommons.org/publicdomain/zero/1.0/) public domain dedication.
spellingShingle Research Article
Rai, Shesh N.
Srivastava, Sudhir
Pan, Jianmin
Wu, Xiaoyong
Rai, Somesh P.
Mekmaysy, Chongkham S.
DeLeeuw, Lynn
Chaires, Jonathan B.
Garbett, Nichola C.
Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title_full Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title_fullStr Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title_full_unstemmed Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title_short Multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
title_sort multi-group diagnostic classification of high-dimensional data using differential scanning calorimetry plasma thermograms
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6701772/
https://www.ncbi.nlm.nih.gov/pubmed/31430304
http://dx.doi.org/10.1371/journal.pone.0220765
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