A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero
In longitudinal epidemiological studies consisting of a baseline stage and a follow-up stage, observations at the baseline stage may contain a countable proportion of negative responses. The time-to-event outcomes of those observations corresponding to negative responses at baseline can be denoted a...
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sg-ntu-dr.10356-1549002022-01-13T04:32:41Z A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero Zhao, Jian Zhao, Yun Xiang, Liming Khanal, Vishnu Binns, Colin W Lee, Andy H. School of Physical and Mathematical Sciences Science::Biological sciences Clumping at Zero Frailty Model In longitudinal epidemiological studies consisting of a baseline stage and a follow-up stage, observations at the baseline stage may contain a countable proportion of negative responses. The time-to-event outcomes of those observations corresponding to negative responses at baseline can be denoted as zeros, which are excluded from standard survival analysis. Consequently, some important information on these subjects is therefore lost in the analysis. Furthermore, subjects are often clustered within hospitals, communities or health service centers, resulting in correlated observations. The framework of the two-part model has been developed and utilized widely to analyze semi-continuous data or count data with excess zeros, but its application to clustered time-to-event data with clumping at zero remains sparse. This study was partially supported by China Scholarship Council (Grant NO: 201406240008). 2022-01-13T04:32:41Z 2022-01-13T04:32:41Z 2020 Journal Article Zhao, J., Zhao, Y., Xiang, L., Khanal, V., Binns, C. W. & Lee, A. H. (2020). A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero. Support UsContactAdmin Computer Methods and Programs in Biomedicine, 187, 105196-. https://dx.doi.org/10.1016/j.cmpb.2019.105196 0169-2607 https://hdl.handle.net/10356/154900 10.1016/j.cmpb.2019.105196 31786451 2-s2.0-85075592764 187 105196 en Support UsContactAdmin Computer Methods and Programs in Biomedicine © 2019 Elsevier B.V. All rights reserved |
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Science::Biological sciences Clumping at Zero Frailty Model Zhao, Jian Zhao, Yun Xiang, Liming Khanal, Vishnu Binns, Colin W Lee, Andy H. A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
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In longitudinal epidemiological studies consisting of a baseline stage and a follow-up stage, observations at the baseline stage may contain a countable proportion of negative responses. The time-to-event outcomes of those observations corresponding to negative responses at baseline can be denoted as zeros, which are excluded from standard survival analysis. Consequently, some important information on these subjects is therefore lost in the analysis. Furthermore, subjects are often clustered within hospitals, communities or health service centers, resulting in correlated observations. The framework of the two-part model has been developed and utilized widely to analyze semi-continuous data or count data with excess zeros, but its application to clustered time-to-event data with clumping at zero remains sparse. |
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School of Physical and Mathematical Sciences |
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School of Physical and Mathematical Sciences Zhao, Jian Zhao, Yun Xiang, Liming Khanal, Vishnu Binns, Colin W Lee, Andy H. |
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Article |
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Zhao, Jian Zhao, Yun Xiang, Liming Khanal, Vishnu Binns, Colin W Lee, Andy H. |
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Zhao, Jian |
title |
A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
title_short |
A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
title_full |
A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
title_fullStr |
A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
title_full_unstemmed |
A two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
title_sort |
two-part mixed-effects model for analyzing clustered time-to-event data with clumping at zero |
publishDate |
2022 |
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https://hdl.handle.net/10356/154900 |
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1722355382205022208 |