NeuroPace, Inc.
SYSTEMS AND METHODS FOR LABELING LARGE DATASETS OF PHYSIOLOGIAL RECORDS BASED ON UNSUPERVISED MACHINE LEARNING

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Abstract:

A deep learning model and dimensionality reduction are applied to each of a plurality of records of physiological information to derive a plurality of feature vectors. A similarities algorithm is applied to the plurality of feature vectors to form a plurality of clusters, each including a set of feature vectors. An output comprising information that enables a display of one or more of the plurality of clusters is provided, and a mechanism for selecting at least one feature vector within a selected cluster of the plurality of clusters is enabled. Upon selection of a feature vector, an output comprising information that enables a display of the record of physiological information corresponding to the selected feature vector is provided, and a mechanism for assigning a label to the displayed record is enabled. The assigned label is then automatically assigned to the records corresponding to the remaining feature vectors in the selected cluster.

Status:
Application
Type:

Utility

Filling date:

20 Feb 2020

Issue date:

27 Aug 2020