Cargando…

Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring

Plasma cell-free DNA (cfDNA) is a noninvasive biomarker for cell death of all organs. Deciphering the tissue origin of cfDNA can reveal abnormal cell death because of diseases, which has great clinical potential in disease detection and monitoring. Despite the great promise, the sensitive and accura...

Descripción completa

Detalles Bibliográficos
Autores principales: Li, Shuo, Zeng, Weihua, Ni, Xiaohui, Liu, Qiao, Li, Wenyuan, Stackpole, Mary L., Zhou, Yonggang, Gower, Arjan, Krysan, Kostyantyn, Ahuja, Preeti, Lu, David S., Raman, Steven S., Hsu, William, Aberle, Denise R., Magyar, Clara E., French, Samuel W., Han, Steven-Huy B., Garon, Edward B., Agopian, Vatche G., Wong, Wing Hung, Dubinett, Steven M., Zhou, Xianghong Jasmine
Formato: Online Artículo Texto
Lenguaje:English
Publicado: National Academy of Sciences 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10334733/
https://www.ncbi.nlm.nih.gov/pubmed/37399400
http://dx.doi.org/10.1073/pnas.2305236120
_version_ 1785070919879753728
author Li, Shuo
Zeng, Weihua
Ni, Xiaohui
Liu, Qiao
Li, Wenyuan
Stackpole, Mary L.
Zhou, Yonggang
Gower, Arjan
Krysan, Kostyantyn
Ahuja, Preeti
Lu, David S.
Raman, Steven S.
Hsu, William
Aberle, Denise R.
Magyar, Clara E.
French, Samuel W.
Han, Steven-Huy B.
Garon, Edward B.
Agopian, Vatche G.
Wong, Wing Hung
Dubinett, Steven M.
Zhou, Xianghong Jasmine
author_facet Li, Shuo
Zeng, Weihua
Ni, Xiaohui
Liu, Qiao
Li, Wenyuan
Stackpole, Mary L.
Zhou, Yonggang
Gower, Arjan
Krysan, Kostyantyn
Ahuja, Preeti
Lu, David S.
Raman, Steven S.
Hsu, William
Aberle, Denise R.
Magyar, Clara E.
French, Samuel W.
Han, Steven-Huy B.
Garon, Edward B.
Agopian, Vatche G.
Wong, Wing Hung
Dubinett, Steven M.
Zhou, Xianghong Jasmine
author_sort Li, Shuo
collection PubMed
description Plasma cell-free DNA (cfDNA) is a noninvasive biomarker for cell death of all organs. Deciphering the tissue origin of cfDNA can reveal abnormal cell death because of diseases, which has great clinical potential in disease detection and monitoring. Despite the great promise, the sensitive and accurate quantification of tissue-derived cfDNA remains challenging to existing methods due to the limited characterization of tissue methylation and the reliance on unsupervised methods. To fully exploit the clinical potential of tissue-derived cfDNA, here we present one of the largest comprehensive and high-resolution methylation atlas based on 521 noncancer tissue samples spanning 29 major types of human tissues. We systematically identified fragment-level tissue-specific methylation patterns and extensively validated them in orthogonal datasets. Based on the rich tissue methylation atlas, we develop the first supervised tissue deconvolution approach, a deep-learning-powered model, cfSort, for sensitive and accurate tissue deconvolution in cfDNA. On the benchmarking data, cfSort showed superior sensitivity and accuracy compared to the existing methods. We further demonstrated the clinical utilities of cfSort with two potential applications: aiding disease diagnosis and monitoring treatment side effects. The tissue-derived cfDNA fraction estimated from cfSort reflected the clinical outcomes of the patients. In summary, the tissue methylation atlas and cfSort enhanced the performance of tissue deconvolution in cfDNA, thus facilitating cfDNA-based disease detection and longitudinal treatment monitoring.
format Online
Article
Text
id pubmed-10334733
institution National Center for Biotechnology Information
language English
publishDate 2023
publisher National Academy of Sciences
record_format MEDLINE/PubMed
spelling pubmed-103347332023-07-12 Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring Li, Shuo Zeng, Weihua Ni, Xiaohui Liu, Qiao Li, Wenyuan Stackpole, Mary L. Zhou, Yonggang Gower, Arjan Krysan, Kostyantyn Ahuja, Preeti Lu, David S. Raman, Steven S. Hsu, William Aberle, Denise R. Magyar, Clara E. French, Samuel W. Han, Steven-Huy B. Garon, Edward B. Agopian, Vatche G. Wong, Wing Hung Dubinett, Steven M. Zhou, Xianghong Jasmine Proc Natl Acad Sci U S A Biological Sciences Plasma cell-free DNA (cfDNA) is a noninvasive biomarker for cell death of all organs. Deciphering the tissue origin of cfDNA can reveal abnormal cell death because of diseases, which has great clinical potential in disease detection and monitoring. Despite the great promise, the sensitive and accurate quantification of tissue-derived cfDNA remains challenging to existing methods due to the limited characterization of tissue methylation and the reliance on unsupervised methods. To fully exploit the clinical potential of tissue-derived cfDNA, here we present one of the largest comprehensive and high-resolution methylation atlas based on 521 noncancer tissue samples spanning 29 major types of human tissues. We systematically identified fragment-level tissue-specific methylation patterns and extensively validated them in orthogonal datasets. Based on the rich tissue methylation atlas, we develop the first supervised tissue deconvolution approach, a deep-learning-powered model, cfSort, for sensitive and accurate tissue deconvolution in cfDNA. On the benchmarking data, cfSort showed superior sensitivity and accuracy compared to the existing methods. We further demonstrated the clinical utilities of cfSort with two potential applications: aiding disease diagnosis and monitoring treatment side effects. The tissue-derived cfDNA fraction estimated from cfSort reflected the clinical outcomes of the patients. In summary, the tissue methylation atlas and cfSort enhanced the performance of tissue deconvolution in cfDNA, thus facilitating cfDNA-based disease detection and longitudinal treatment monitoring. National Academy of Sciences 2023-07-03 2023-07-11 /pmc/articles/PMC10334733/ /pubmed/37399400 http://dx.doi.org/10.1073/pnas.2305236120 Text en Copyright © 2023 the Author(s). Published by PNAS. https://creativecommons.org/licenses/by-nc-nd/4.0/This open access article is distributed under Creative Commons Attribution-NonCommercial-NoDerivatives License 4.0 (CC BY-NC-ND) (https://creativecommons.org/licenses/by-nc-nd/4.0/) .
spellingShingle Biological Sciences
Li, Shuo
Zeng, Weihua
Ni, Xiaohui
Liu, Qiao
Li, Wenyuan
Stackpole, Mary L.
Zhou, Yonggang
Gower, Arjan
Krysan, Kostyantyn
Ahuja, Preeti
Lu, David S.
Raman, Steven S.
Hsu, William
Aberle, Denise R.
Magyar, Clara E.
French, Samuel W.
Han, Steven-Huy B.
Garon, Edward B.
Agopian, Vatche G.
Wong, Wing Hung
Dubinett, Steven M.
Zhou, Xianghong Jasmine
Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title_full Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title_fullStr Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title_full_unstemmed Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title_short Comprehensive tissue deconvolution of cell-free DNA by deep learning for disease diagnosis and monitoring
title_sort comprehensive tissue deconvolution of cell-free dna by deep learning for disease diagnosis and monitoring
topic Biological Sciences
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10334733/
https://www.ncbi.nlm.nih.gov/pubmed/37399400
http://dx.doi.org/10.1073/pnas.2305236120
work_keys_str_mv AT lishuo comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT zengweihua comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT nixiaohui comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT liuqiao comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT liwenyuan comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT stackpolemaryl comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT zhouyonggang comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT gowerarjan comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT krysankostyantyn comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT ahujapreeti comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT ludavids comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT ramanstevens comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT hsuwilliam comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT aberledeniser comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT magyarclarae comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT frenchsamuelw comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT hanstevenhuyb comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT garonedwardb comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT agopianvatcheg comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT wongwinghung comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT dubinettstevenm comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring
AT zhouxianghongjasmine comprehensivetissuedeconvolutionofcellfreednabydeeplearningfordiseasediagnosisandmonitoring