A method for measuring the distribution of the shortest telomeres in cells and tissues
Tsung-Po Lai,
Ning Zhang,
Jungsik Noh,
Ilgen Mender,
Enzo Tedone,
Ejun Huang,
Woodring E. Wright,
Gaudenz Danuser and
Jerry W. Shay ()
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Tsung-Po Lai: University of Texas Southwestern Medical Center
Ning Zhang: University of Texas Southwestern Medical Center
Jungsik Noh: University of Texas Southwestern Medical Center
Ilgen Mender: University of Texas Southwestern Medical Center
Enzo Tedone: University of Texas Southwestern Medical Center
Ejun Huang: University of Texas Southwestern Medical Center
Woodring E. Wright: University of Texas Southwestern Medical Center
Gaudenz Danuser: University of Texas Southwestern Medical Center
Jerry W. Shay: University of Texas Southwestern Medical Center
Nature Communications, 2017, vol. 8, issue 1, 1-14
Abstract:
Abstract Improved methods to measure the shortest (not just average) telomere lengths (TLs) are needed. We developed Telomere Shortest Length Assay (TeSLA), a technique that detects telomeres from all chromosome ends from
Date: 2017
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DOI: 10.1038/s41467-017-01291-z
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