Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.

Cancer marker discovery is an emerging topic in high-throughput quantitative proteomics. However, the omics technology usually generates a long list of marker candidates that requires a labor-intensive filtering process in order to screen for potentially useful markers. Specifically, various paramet...

Full description

Bibliographic Details
Main Authors: Su-Chien Chiang, Chia-Li Han, Kun-Hsing Yu, Yu-Ju Chen, Kun-Pin Wu
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2013-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3841220?pdf=render
id doaj-64a2c9271fb94b6c988688cec417d047
record_format Article
spelling doaj-64a2c9271fb94b6c988688cec417d0472020-11-25T01:32:08ZengPublic Library of Science (PLoS)PLoS ONE1932-62032013-01-01811e8107910.1371/journal.pone.0081079Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.Su-Chien ChiangChia-Li HanKun-Hsing YuYu-Ju ChenKun-Pin WuCancer marker discovery is an emerging topic in high-throughput quantitative proteomics. However, the omics technology usually generates a long list of marker candidates that requires a labor-intensive filtering process in order to screen for potentially useful markers. Specifically, various parameters, such as the level of overexpression of the marker in the cancer type of interest, which is related to sensitivity, and the specificity of the marker among cancer groups, are the most critical considerations. Protein expression profiling on the basis of immunohistochemistry (IHC) staining images is a technique commonly used during such filtering procedures. To systematically investigate the protein expression in different cancer versus normal tissues and cell types, the Human Protein Atlas is a most comprehensive resource because it includes millions of high-resolution IHC images with expert-curated annotations. To facilitate the filtering of potential biomarker candidates from large-scale omics datasets, in this study we have proposed a scoring approach for quantifying IHC annotation of paired cancerous/normal tissues and cancerous/normal cell types. We have comprehensively calculated the scores of all the 17219 tested antibodies deposited in the Human Protein Atlas based on their accumulated IHC images and obtained 457110 scores covering 20 different types of cancers. Statistical tests demonstrate the ability of the proposed scoring approach to prioritize cancer-specific proteins. Top 100 potential marker candidates were prioritized for the 20 cancer types with statistical significance. In addition, a model study was carried out of 1482 membrane proteins identified from a quantitative comparison of paired cancerous and adjacent normal tissues from patients with colorectal cancer (CRC). The proposed scoring approach demonstrated successful prioritization and identified four CRC markers, including two of the most widely used, namely CEACAM5 and CEACAM6. These results demonstrate the potential of this scoring approach in terms of cancer marker discovery and development. All the calculated scores are available at http://bal.ym.edu.tw/hpa/.http://europepmc.org/articles/PMC3841220?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Su-Chien Chiang
Chia-Li Han
Kun-Hsing Yu
Yu-Ju Chen
Kun-Pin Wu
spellingShingle Su-Chien Chiang
Chia-Li Han
Kun-Hsing Yu
Yu-Ju Chen
Kun-Pin Wu
Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
PLoS ONE
author_facet Su-Chien Chiang
Chia-Li Han
Kun-Hsing Yu
Yu-Ju Chen
Kun-Pin Wu
author_sort Su-Chien Chiang
title Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
title_short Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
title_full Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
title_fullStr Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
title_full_unstemmed Prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
title_sort prioritization of cancer marker candidates based on the immunohistochemistry staining images deposited in the human protein atlas.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2013-01-01
description Cancer marker discovery is an emerging topic in high-throughput quantitative proteomics. However, the omics technology usually generates a long list of marker candidates that requires a labor-intensive filtering process in order to screen for potentially useful markers. Specifically, various parameters, such as the level of overexpression of the marker in the cancer type of interest, which is related to sensitivity, and the specificity of the marker among cancer groups, are the most critical considerations. Protein expression profiling on the basis of immunohistochemistry (IHC) staining images is a technique commonly used during such filtering procedures. To systematically investigate the protein expression in different cancer versus normal tissues and cell types, the Human Protein Atlas is a most comprehensive resource because it includes millions of high-resolution IHC images with expert-curated annotations. To facilitate the filtering of potential biomarker candidates from large-scale omics datasets, in this study we have proposed a scoring approach for quantifying IHC annotation of paired cancerous/normal tissues and cancerous/normal cell types. We have comprehensively calculated the scores of all the 17219 tested antibodies deposited in the Human Protein Atlas based on their accumulated IHC images and obtained 457110 scores covering 20 different types of cancers. Statistical tests demonstrate the ability of the proposed scoring approach to prioritize cancer-specific proteins. Top 100 potential marker candidates were prioritized for the 20 cancer types with statistical significance. In addition, a model study was carried out of 1482 membrane proteins identified from a quantitative comparison of paired cancerous and adjacent normal tissues from patients with colorectal cancer (CRC). The proposed scoring approach demonstrated successful prioritization and identified four CRC markers, including two of the most widely used, namely CEACAM5 and CEACAM6. These results demonstrate the potential of this scoring approach in terms of cancer marker discovery and development. All the calculated scores are available at http://bal.ym.edu.tw/hpa/.
url http://europepmc.org/articles/PMC3841220?pdf=render
work_keys_str_mv AT suchienchiang prioritizationofcancermarkercandidatesbasedontheimmunohistochemistrystainingimagesdepositedinthehumanproteinatlas
AT chialihan prioritizationofcancermarkercandidatesbasedontheimmunohistochemistrystainingimagesdepositedinthehumanproteinatlas
AT kunhsingyu prioritizationofcancermarkercandidatesbasedontheimmunohistochemistrystainingimagesdepositedinthehumanproteinatlas
AT yujuchen prioritizationofcancermarkercandidatesbasedontheimmunohistochemistrystainingimagesdepositedinthehumanproteinatlas
AT kunpinwu prioritizationofcancermarkercandidatesbasedontheimmunohistochemistrystainingimagesdepositedinthehumanproteinatlas
_version_ 1725082996859469824