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US Patent 11514289 Generating machine learning models using genetic data

Patent 11514289 was granted and assigned to Freenome on November, 2022 by the United States Patent and Trademark Office.

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Contents

Is a
Patent
Patent

Patent attributes

Patent Applicant
Freenome
Freenome
Current Assignee
Freenome
Freenome
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11514289
Date of Patent
November 29, 2022
Patent Application Number
15455110
Date Filed
March 9, 2017
Patent Citations
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US Patent 10689697 Analysis of a polymer
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US Patent 10712334 Massively parallel DNA sequencing apparatus
...
Patent Citations Received
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US Patent 11781959 Methods and systems for sample extraction
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US Patent 12080426 Functional deep neural network for high-dimensional data analysis
0
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US Patent 12112558 Learning model generation method, identification method, learning model generation system, identification system, and non-transitory computer-readable storage medium
0
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US Patent 12119103 GANs for latent space visualizations
0
Patent Primary Examiner
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Miranda M Huang
CPC Code
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C12N 15/1096
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C12Q 1/6806
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G06N 3/086
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C12Q 2600/118
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C12Q 2560/00
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G06N 20/00
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G06N 3/00
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G06N 3/123
...

Systems, methods, and apparatuses for generating and using machine learning models using genetic data. A set of input features for training the machine learning model can be identified and used to train the model based on training samples, e.g., for which one or more labels are known. As examples, the input features can include aligned variables (e.g., derived from sequences aligned to a population level or individual references) and/or non-aligned variables (e.g., sequence content). The features can be classified into different groups based on the underlying genetic data or intermediate values resulting from a processing of the underlying genetic data. Features can be selected from a feature space for creating a feature vector for training a model. The selection and creation of feature vectors can be performed iteratively to train many models as part of a search for optimal features and an optimal model.

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