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Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence

BACKGROUND: Accurate and robust pathological image analysis for colorectal cancer (CRC) diagnosis is time-consuming and knowledge-intensive, but is essential for CRC patients’ treatment. The current heavy workload of pathologists in clinics/hospitals may easily lead to unconscious misdiagnosis of CR...

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Autores principales: Wang, K. S., Yu, G., Xu, C., Meng, X. H., Zhou, J., Zheng, C., Deng, Z., Shang, L., Liu, R., Su, S., Zhou, X., Li, Q., Li, J., Wang, J., Ma, K., Qi, J., Hu, Z., Tang, P., Deng, J., Qiu, X., Li, B. Y., Shen, W. D., Quan, R. P., Yang, J. T., Huang, L. Y., Xiao, Y., Yang, Z. C., Li, Z., Wang, S. C., Ren, H., Liang, C., Guo, W., Li, Y., Xiao, H., Gu, Y., Yun, J. P., Huang, D., Song, Z., Fan, X., Chen, L., Yan, X., Huang, Z. C., Huang, J., Luttrell, J., Zhang, C. Y., Zhou, W., Zhang, K., Yi, C., Wu, C., Shen, H., Wang, Y. P., Xiao, H. M., Deng, H. W.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: BioMed Central 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7986569/
https://www.ncbi.nlm.nih.gov/pubmed/33752648
http://dx.doi.org/10.1186/s12916-021-01942-5
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author Wang, K. S.
Yu, G.
Xu, C.
Meng, X. H.
Zhou, J.
Zheng, C.
Deng, Z.
Shang, L.
Liu, R.
Su, S.
Zhou, X.
Li, Q.
Li, J.
Wang, J.
Ma, K.
Qi, J.
Hu, Z.
Tang, P.
Deng, J.
Qiu, X.
Li, B. Y.
Shen, W. D.
Quan, R. P.
Yang, J. T.
Huang, L. Y.
Xiao, Y.
Yang, Z. C.
Li, Z.
Wang, S. C.
Ren, H.
Liang, C.
Guo, W.
Li, Y.
Xiao, H.
Gu, Y.
Yun, J. P.
Huang, D.
Song, Z.
Fan, X.
Chen, L.
Yan, X.
Li, Z.
Huang, Z. C.
Huang, J.
Luttrell, J.
Zhang, C. Y.
Zhou, W.
Zhang, K.
Yi, C.
Wu, C.
Shen, H.
Wang, Y. P.
Xiao, H. M.
Deng, H. W.
author_facet Wang, K. S.
Yu, G.
Xu, C.
Meng, X. H.
Zhou, J.
Zheng, C.
Deng, Z.
Shang, L.
Liu, R.
Su, S.
Zhou, X.
Li, Q.
Li, J.
Wang, J.
Ma, K.
Qi, J.
Hu, Z.
Tang, P.
Deng, J.
Qiu, X.
Li, B. Y.
Shen, W. D.
Quan, R. P.
Yang, J. T.
Huang, L. Y.
Xiao, Y.
Yang, Z. C.
Li, Z.
Wang, S. C.
Ren, H.
Liang, C.
Guo, W.
Li, Y.
Xiao, H.
Gu, Y.
Yun, J. P.
Huang, D.
Song, Z.
Fan, X.
Chen, L.
Yan, X.
Li, Z.
Huang, Z. C.
Huang, J.
Luttrell, J.
Zhang, C. Y.
Zhou, W.
Zhang, K.
Yi, C.
Wu, C.
Shen, H.
Wang, Y. P.
Xiao, H. M.
Deng, H. W.
author_sort Wang, K. S.
collection PubMed
description BACKGROUND: Accurate and robust pathological image analysis for colorectal cancer (CRC) diagnosis is time-consuming and knowledge-intensive, but is essential for CRC patients’ treatment. The current heavy workload of pathologists in clinics/hospitals may easily lead to unconscious misdiagnosis of CRC based on daily image analyses. METHODS: Based on a state-of-the-art transfer-learned deep convolutional neural network in artificial intelligence (AI), we proposed a novel patch aggregation strategy for clinic CRC diagnosis using weakly labeled pathological whole-slide image (WSI) patches. This approach was trained and validated using an unprecedented and enormously large number of 170,099 patches, > 14,680 WSIs, from > 9631 subjects that covered diverse and representative clinical cases from multi-independent-sources across China, the USA, and Germany. RESULTS: Our innovative AI tool consistently and nearly perfectly agreed with (average Kappa statistic 0.896) and even often better than most of the experienced expert pathologists when tested in diagnosing CRC WSIs from multicenters. The average area under the receiver operating characteristics curve (AUC) of AI was greater than that of the pathologists (0.988 vs 0.970) and achieved the best performance among the application of other AI methods to CRC diagnosis. Our AI-generated heatmap highlights the image regions of cancer tissue/cells. CONCLUSIONS: This first-ever generalizable AI system can handle large amounts of WSIs consistently and robustly without potential bias due to fatigue commonly experienced by clinical pathologists. It will drastically alleviate the heavy clinical burden of daily pathology diagnosis and improve the treatment for CRC patients. This tool is generalizable to other cancer diagnosis based on image recognition. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12916-021-01942-5.
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spelling pubmed-79865692021-03-25 Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence Wang, K. S. Yu, G. Xu, C. Meng, X. H. Zhou, J. Zheng, C. Deng, Z. Shang, L. Liu, R. Su, S. Zhou, X. Li, Q. Li, J. Wang, J. Ma, K. Qi, J. Hu, Z. Tang, P. Deng, J. Qiu, X. Li, B. Y. Shen, W. D. Quan, R. P. Yang, J. T. Huang, L. Y. Xiao, Y. Yang, Z. C. Li, Z. Wang, S. C. Ren, H. Liang, C. Guo, W. Li, Y. Xiao, H. Gu, Y. Yun, J. P. Huang, D. Song, Z. Fan, X. Chen, L. Yan, X. Li, Z. Huang, Z. C. Huang, J. Luttrell, J. Zhang, C. Y. Zhou, W. Zhang, K. Yi, C. Wu, C. Shen, H. Wang, Y. P. Xiao, H. M. Deng, H. W. BMC Med Research Article BACKGROUND: Accurate and robust pathological image analysis for colorectal cancer (CRC) diagnosis is time-consuming and knowledge-intensive, but is essential for CRC patients’ treatment. The current heavy workload of pathologists in clinics/hospitals may easily lead to unconscious misdiagnosis of CRC based on daily image analyses. METHODS: Based on a state-of-the-art transfer-learned deep convolutional neural network in artificial intelligence (AI), we proposed a novel patch aggregation strategy for clinic CRC diagnosis using weakly labeled pathological whole-slide image (WSI) patches. This approach was trained and validated using an unprecedented and enormously large number of 170,099 patches, > 14,680 WSIs, from > 9631 subjects that covered diverse and representative clinical cases from multi-independent-sources across China, the USA, and Germany. RESULTS: Our innovative AI tool consistently and nearly perfectly agreed with (average Kappa statistic 0.896) and even often better than most of the experienced expert pathologists when tested in diagnosing CRC WSIs from multicenters. The average area under the receiver operating characteristics curve (AUC) of AI was greater than that of the pathologists (0.988 vs 0.970) and achieved the best performance among the application of other AI methods to CRC diagnosis. Our AI-generated heatmap highlights the image regions of cancer tissue/cells. CONCLUSIONS: This first-ever generalizable AI system can handle large amounts of WSIs consistently and robustly without potential bias due to fatigue commonly experienced by clinical pathologists. It will drastically alleviate the heavy clinical burden of daily pathology diagnosis and improve the treatment for CRC patients. This tool is generalizable to other cancer diagnosis based on image recognition. SUPPLEMENTARY INFORMATION: The online version contains supplementary material available at 10.1186/s12916-021-01942-5. BioMed Central 2021-03-23 /pmc/articles/PMC7986569/ /pubmed/33752648 http://dx.doi.org/10.1186/s12916-021-01942-5 Text en © The Author(s) 2021 Open AccessThis article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article's Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article's Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/. The Creative Commons Public Domain Dedication waiver (http://creativecommons.org/publicdomain/zero/1.0/) applies to the data made available in this article, unless otherwise stated in a credit line to the data.
spellingShingle Research Article
Wang, K. S.
Yu, G.
Xu, C.
Meng, X. H.
Zhou, J.
Zheng, C.
Deng, Z.
Shang, L.
Liu, R.
Su, S.
Zhou, X.
Li, Q.
Li, J.
Wang, J.
Ma, K.
Qi, J.
Hu, Z.
Tang, P.
Deng, J.
Qiu, X.
Li, B. Y.
Shen, W. D.
Quan, R. P.
Yang, J. T.
Huang, L. Y.
Xiao, Y.
Yang, Z. C.
Li, Z.
Wang, S. C.
Ren, H.
Liang, C.
Guo, W.
Li, Y.
Xiao, H.
Gu, Y.
Yun, J. P.
Huang, D.
Song, Z.
Fan, X.
Chen, L.
Yan, X.
Li, Z.
Huang, Z. C.
Huang, J.
Luttrell, J.
Zhang, C. Y.
Zhou, W.
Zhang, K.
Yi, C.
Wu, C.
Shen, H.
Wang, Y. P.
Xiao, H. M.
Deng, H. W.
Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title_full Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title_fullStr Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title_full_unstemmed Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title_short Accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
title_sort accurate diagnosis of colorectal cancer based on histopathology images using artificial intelligence
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7986569/
https://www.ncbi.nlm.nih.gov/pubmed/33752648
http://dx.doi.org/10.1186/s12916-021-01942-5
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