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Sequencing and Optical Genome Mapping for the Adventurous Chemist

Elizabete Ruppeka Rupeika,Laurens D'Huys,Volker Leen,Johan Hofkens

Chemical & biomedical imaging(2024)

Faculty of Science

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Abstract
This review provides a comprehensive overview of the chemistries and workflows of the sequencing methods that have been or are currently commercially available, providing a very brief historical introduction to each method. The main optical genome mapping approaches are introduced in the same manner, although only a subset of these are or have ever been commercially available. The review comes with a deck of slides containing all of the figures for ease of access and consultation.
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