EXPERIMENT AND MACHINE-LEARNING TECHNIQUES TO IDENTIFY AND GENERATE HIGH AFFINITY BINDERS

The present disclosure relates to in vitro experiments and in silico computation and machine-learning based techniques to iteratively improve a process for identifying binders that can bind any given molecular target. Particularly, aspects of the present disclosure are directed to obtaining sequence...

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Bibliographische Detailangaben
Hauptverfasser: Jung, Kenneth, Grubisic, Ivan, Nagatani, Ray, Weitz, Andrew, Poplin, Ryan, Keh, Lance Co Ting
Format: Patent
Sprache:eng
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Beschreibung
Zusammenfassung:The present disclosure relates to in vitro experiments and in silico computation and machine-learning based techniques to iteratively improve a process for identifying binders that can bind any given molecular target. Particularly, aspects of the present disclosure are directed to obtaining sequence data for aptamers that bind to a target, where the sequence data has a first signal to noise ratio, generating, by a search process, a first set of aptamer sequences derived from the sequence data, obtaining subsequent sequence data for subsequent aptamers that bind to the target, where the subsequent aptamers includes aptamers synthesized from the first set of aptamer sequences, and the subsequent sequence data has a second signal to noise ratio greater than the first signal to noise ratio, generating, by a linear machine-learning model, a second set of aptamer sequences derived from the subsequent sequence data, and outputting the second set of aptamer sequences.