Multiscale PHATE identifies multimodal signatures of COVID-19

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Kuchroo, Manik / Huang, Jessie / Wong, Patrick / Grenier, Jean-Christophe / Shung, Dennis / Tong, Alexander / Lucas, Carolina / Klein, Jon / Burkhardt, Daniel B. / Gigante, Scott / Godavarthi, Abhinav / Rieck, Bastian / Israelow, Benjamin / Simonov, Michael / Mao, Tianyang / Oh, Ji Eunresearcher / Silva, Julio / Takahashi, Takehiro / Odio, Camila D. / Casanovas-Massana, Arnau / Fournier, John / Obaid, Abeer / Moore, Adam / Lu-Culligan, Alice / Nelson, Allison / Brito, Anderson / Nunez, Angela / Martin, Anjelica / Wyllie, Anne L. / Watkins, Annie / Park, Annsea / Venkataraman, Arvind / Geng, Bertie / Kalinich, Chaney / Vogels, Chantal B. F. / Harden, Christina / Todeasa, Codruta / Jensen, Cole / Kim, Daniel / McDonald, David / Shepard, Denise / Courchaine, Edward / White, Elizabeth B. / Song, Eric / Silva, Erin / Kudo, Eriko / DeIuliis, Giuseppe / Wang, Haowei / Rahming, Harold / Park, Hong-Jai / Matos, Irene / Ott, Isabel M. / Nouws, Jessica / Valdez, Jordan / Fauver, Joseph / Lim, Joseph / Rose, Kadi-Ann / Anastasio, Kelly / Brower, Kristina / Glick, Laura / Sharma, Lokesh / Sewanan, Lorenzo / Knaggs, Lynda / Minasyan, Maksym / Batsu, Maria / Tokuyama, Maria / Muenker, M. Cate / Petrone, Mary / Kuang, Maxine / Nakahata, Maura / Campbell, Melissa / Linehan, Melissa / Askenase, Michael H. / Simonov, Michael / Smolgovsky, Mikhail / Grubaugh, Nathan D. / Sonnert, Nicole / Naushad, Nida / Vijayakumar, Pavithra / Lu, Peiwen / Earnest, Rebecca / Martinello, Rick / Herbst, Roy / Datta, Rupak / Handoko, Ryan / Bermejo, Santos / Lapidus, Sarah / Prophet, Sarah / Bickerton, Sean / Velazquez, Sofia / Mohanty, Subhasis / Alpert, Tara / Rice, Tyler / Schulz, Wade / Khoury-Hanold, William / Peng, Xiaohua / Yang, Yexin / Cao, Yiyun / Strong, Yvette / Farhadian, Shelli / Dela Cruz, Charles S. / Ko, Albert I. / Hirn, Matthew J. / Wilson, F. Perry / Hussin, Julie G. / Wolf, Guy / Iwasaki, Akiko / Krishnaswamy, Smita
Disease signatures in high-dimensional biomedical data are detected with a visualization algorithm. As the biomedical community produces datasets that are increasingly complex and high dimensional, there is a need for more sophisticated computational tools to extract biological insights. We present Multiscale PHATE, a method that sweeps through all levels of data granularity to learn abstracted biological features directly predictive of disease outcome. Built on a coarse-graining process called diffusion condensation, Multiscale PHATE learns a data topology that can be analyzed at coarse resolutions for high-level summarizations of data and at fine resolutions for detailed representations of subsets. We apply Multiscale PHATE to a coronavirus disease 2019 (COVID-19) dataset with 54 million cells from 168 hospitalized patients and find that patients who die show CD16(hi)CD66b(lo) neutrophil and IFN-gamma(+) granzyme B+ Th17 cell responses. We also show that population groupings from Multiscale PHATE directly fed into a classifier predict disease outcome more accurately than naive featurizations of the data. Multiscale PHATE is broadly generalizable to different data types, including flow cytometry, single-cell RNA sequencing (scRNA-seq), single-cell sequencing assay for transposase-accessible chromatin (scATAC-seq), and clinical variables.
Publisher
NATURE PORTFOLIO
Issue Date
2022-05
Language
English
Article Type
Article
Citation

NATURE BIOTECHNOLOGY, v.40, no.5, pp.681 - 691

ISSN
1087-0156
DOI
10.1038/s41587-021-01186-x
URI
http://hdl.handle.net/10203/301455
Appears in Collection
MSE-Journal Papers(저널논문)
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