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Evaluation of SARS-CoV-2 serology assays reveals a range of test performance.

Authors :
Whitman, Jeffrey D
Whitman, Jeffrey D
Hiatt, Joseph
Mowery, Cody T
Shy, Brian R
Yu, Ruby
Yamamoto, Tori N
Rathore, Ujjwal
Goldgof, Gregory M
Whitty, Caroline
Woo, Jonathan M
Gallman, Antonia E
Miller, Tyler E
Levine, Andrew G
Nguyen, David N
Bapat, Sagar P
Balcerek, Joanna
Bylsma, Sophia A
Lyons, Ana M
Li, Stacy
Wong, Allison Wai-Yi
Gillis-Buck, Eva Mae
Steinhart, Zachary B
Lee, Youjin
Apathy, Ryan
Lipke, Mitchell J
Smith, Jennifer Anne
Zheng, Tina
Boothby, Ian C
Isaza, Erin
Chan, Jackie
Acenas, Dante D
Lee, Jinwoo
Macrae, Trisha A
Kyaw, Than S
Wu, David
Ng, Dianna L
Gu, Wei
York, Vanessa A
Eskandarian, Haig Alexander
Callaway, Perri C
Warrier, Lakshmi
Moreno, Mary E
Levan, Justine
Torres, Leonel
Farrington, Lila A
Loudermilk, Rita P
Koshal, Kanishka
Zorn, Kelsey C
Garcia-Beltran, Wilfredo F
Yang, Diane
Astudillo, Michael G
Bernstein, Bradley E
Gelfand, Jeffrey A
Ryan, Edward T
Charles, Richelle C
Iafrate, A John
Lennerz, Jochen K
Miller, Steve
Chiu, Charles Y
Stramer, Susan L
Wilson, Michael R
Manglik, Aashish
Ye, Chun Jimmie
Krogan, Nevan J
Anderson, Mark S
Cyster, Jason G
Ernst, Joel D
Wu, Alan HB
Lynch, Kara L
Bern, Caryn
Hsu, Patrick D
Marson, Alexander
Whitman, Jeffrey D
Whitman, Jeffrey D
Hiatt, Joseph
Mowery, Cody T
Shy, Brian R
Yu, Ruby
Yamamoto, Tori N
Rathore, Ujjwal
Goldgof, Gregory M
Whitty, Caroline
Woo, Jonathan M
Gallman, Antonia E
Miller, Tyler E
Levine, Andrew G
Nguyen, David N
Bapat, Sagar P
Balcerek, Joanna
Bylsma, Sophia A
Lyons, Ana M
Li, Stacy
Wong, Allison Wai-Yi
Gillis-Buck, Eva Mae
Steinhart, Zachary B
Lee, Youjin
Apathy, Ryan
Lipke, Mitchell J
Smith, Jennifer Anne
Zheng, Tina
Boothby, Ian C
Isaza, Erin
Chan, Jackie
Acenas, Dante D
Lee, Jinwoo
Macrae, Trisha A
Kyaw, Than S
Wu, David
Ng, Dianna L
Gu, Wei
York, Vanessa A
Eskandarian, Haig Alexander
Callaway, Perri C
Warrier, Lakshmi
Moreno, Mary E
Levan, Justine
Torres, Leonel
Farrington, Lila A
Loudermilk, Rita P
Koshal, Kanishka
Zorn, Kelsey C
Garcia-Beltran, Wilfredo F
Yang, Diane
Astudillo, Michael G
Bernstein, Bradley E
Gelfand, Jeffrey A
Ryan, Edward T
Charles, Richelle C
Iafrate, A John
Lennerz, Jochen K
Miller, Steve
Chiu, Charles Y
Stramer, Susan L
Wilson, Michael R
Manglik, Aashish
Ye, Chun Jimmie
Krogan, Nevan J
Anderson, Mark S
Cyster, Jason G
Ernst, Joel D
Wu, Alan HB
Lynch, Kara L
Bern, Caryn
Hsu, Patrick D
Marson, Alexander
Source :
Nature biotechnology; vol 38, iss 10, 1174-1183; 1087-0156
Publication Year :
2020

Abstract

Appropriate use and interpretation of serological tests for assessments of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) exposure, infection and potential immunity require accurate data on assay performance. We conducted a head-to-head evaluation of ten point-of-care-style lateral flow assays (LFAs) and two laboratory-based enzyme-linked immunosorbent assays to detect anti-SARS-CoV-2 IgM and IgG antibodies in 5-d time intervals from symptom onset and studied the specificity of each assay in pre-coronavirus disease 2019 specimens. The percent of seropositive individuals increased with time, peaking in the latest time interval tested (>20 d after symptom onset). Test specificity ranged from 84.3% to 100.0% and was predominantly affected by variability in IgM results. LFA specificity could be increased by considering weak bands as negative, but this decreased detection of antibodies (sensitivity) in a subset of SARS-CoV-2 real-time PCR-positive cases. Our results underline the importance of seropositivity threshold determination and reader training for reliable LFA deployment. Although there was no standout serological assay, four tests achieved more than 80% positivity at later time points tested and more than 95% specificity.

Details

Database :
OAIster
Journal :
Nature biotechnology; vol 38, iss 10, 1174-1183; 1087-0156
Notes :
application/pdf, Nature biotechnology vol 38, iss 10, 1174-1183 1087-0156
Publication Type :
Electronic Resource
Accession number :
edsoai.on1367452115
Document Type :
Electronic Resource