Patents by Inventor Alexander Zhebrak

Alexander Zhebrak has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11893498
    Abstract: The proposed model is a Variational Autoencoder having a learnable prior that is parametrized with a Tensor Train (VAE-TTLP). The VAE-TTLP can be used to generate new objects, such as molecules, that have specific properties and that can have specific biological activity (when a molecule). The VAE-TTLP can be trained in a way with the Tensor Train so that the provided data may omit one or more properties of the object, and still result in an object with a desired property.
    Type: Grant
    Filed: February 27, 2023
    Date of Patent: February 6, 2024
    Assignee: INSILICO MEDICINE IP LIMITED
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Daniil Polykovskiy, Maksim Kuznetsov, Yan Ivanenkov, Mark Veselov, Vladimir Aladinskiy, Evgeny Putin, Yuriy Volkov, Arip Asadulaev
  • Publication number: 20230331723
    Abstract: A method is provided for generating new objects having given properties, such as a specific bioactivity (e.g., binding with a specific protein). In some aspects, the method can include: (a) receiving objects (e.g., physical structures) and their properties (e.g., chemical properties, bioactivity properties, etc.) from a dataset; (b) providing the objects and their properties to a machine learning platform, wherein the machine learning platform outputs a trained model; and (c) the machine learning platform takes the trained model and a set of properties and outputs new objects with desired properties. The new objects are different from the received objects. In some aspects, the objects are molecular structures, such as potential active agents, such as small molecule drugs, biological agents, nucleic acids, proteins, antibodies, or other active agents with a desired or defined bioactivity (e.g., binding a specific protein, preferentially over other proteins).
    Type: Application
    Filed: June 16, 2023
    Publication date: October 19, 2023
    Inventors: Daniil Polykovskiy, Artur Kadurin, Aleksandr M. Aliper, Alexander Zhebrak, Aleksandrs Zavoronkovs
  • Publication number: 20230214662
    Abstract: The proposed model is a Variational Autoencoder having a learnable prior that is parametrized with a Tensor Train (VAE-TTLP). The VAE-TTLP can be used to generate new objects, such as molecules, that have specific properties and that can have specific biological activity (when a molecule). The VAE-TTLP can be trained in a way with the Tensor Train so that the provided data may omit one or more properties of the object, and still result in an object with a desired property.
    Type: Application
    Filed: February 27, 2023
    Publication date: July 6, 2023
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Daniil Polykovskiy, Maksim Kuznetsov, Yan Ivanenkov, Mark Veselov, Vladimir Aladinskiy, Evgeny Putin, Yuriy Volkov, Arip Asadulaev
  • Patent number: 11680063
    Abstract: A method is provided for generating new objects having given properties, such as a specific bioactivity (e.g., binding with a specific protein). In some aspects, the method can include: (a) receiving objects (e.g., physical structures) and their properties (e.g., chemical properties, bioactivity properties, etc.) from a dataset; (b) providing the objects and their properties to a machine learning platform, wherein the machine learning platform outputs a trained model; and (c) the machine learning platform takes the trained model and a set of properties and outputs new objects with desired properties. The new objects are different from the received objects. In some aspects, the objects are molecular structures, such as potential active agents, such as small molecule drugs, biological agents, nucleic acids, proteins, antibodies, or other active agents with a desired or defined bioactivity (e.g., binding a specific protein, preferentially over other proteins).
    Type: Grant
    Filed: September 5, 2019
    Date of Patent: June 20, 2023
    Assignee: INSILICO MEDICINE IP LIMITED
    Inventors: Daniil Polykovskiy, Artur Kadurin, Aleksandr M. Aliper, Alexander Zhebrak, Aleksandrs Zavoronkovs
  • Patent number: 11593660
    Abstract: The proposed model is a Variational Autoencoder having a learnable prior that is parametrized with a Tensor Train (VAE-TTLP). The VAE-TTLP can be used to generate new objects, such as molecules, that have specific properties and that can have specific biological activity (when a molecule). The VAE-TTLP can be trained in a way with the Tensor Train so that the provided data may omit one or more properties of the object, and still result in an object with a desired property.
    Type: Grant
    Filed: September 18, 2018
    Date of Patent: February 28, 2023
    Assignee: INSILICO MEDICINE IP LIMITED
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Daniil Polykovskiy, Maksim Kuznetsov, Yan Ivanenkov, Mark Veselov, Vladimir Aladinskiy, Evgeny Putin, Yuriy Volkov, Arip Asadulaev
  • Publication number: 20220391709
    Abstract: A method for generating an object includes: providing a dataset having object data and condition data; processing the object data to obtain latent object data and latent object-condition data; processing the condition data to obtain latent condition data and latent condition-object data; processing the latent object data and the latent object-condition data to obtain generated object data; processing the latent condition data and latent condition-object data to obtain generated condition data; comparing the latent object-condition data to the latent condition-object data to determine a difference; processing the latent object data and latent condition data and one of the latent object-condition data or latent condition-object data to obtain a discriminator value; and selecting a selected object based on the generated object data.
    Type: Application
    Filed: June 16, 2022
    Publication date: December 8, 2022
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Artur Kadurin, Daniil Polykovskiy, Rim Shayakhmetov
  • Patent number: 11403521
    Abstract: A method for generating an object includes: providing a dataset having object data and condition data; processing the object data to obtain latent object data and latent object-condition data; processing the condition data to obtain latent condition data and latent condition-object data; processing the latent object data and the latent object-condition data to obtain generated object data; processing the latent condition data and latent condition-object data to obtain generated condition data; comparing the latent object-condition data to the latent condition-object data to determine a difference; processing the latent object data and latent condition data and one of the latent object-condition data or latent condition-object data to obtain a discriminator value; and selecting a selected object based on the generated object data.
    Type: Grant
    Filed: June 22, 2018
    Date of Patent: August 2, 2022
    Assignee: INSILICO MEDICINE IP LIMITED
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Artur Kadurin, Daniil Polykovskiy, Rim Shayakhmetov
  • Publication number: 20200090049
    Abstract: The proposed model is a Variational Autoencoder having a learnable prior that is parametrized with a Tensor Train (VAE-TTLP). The VAE-TTLP can be used to generate new objects, such as molecules, that have specific properties and that can have specific biological activity (when a molecule). The VAE-TTLP can be trained in a way with the Tensor Train so that the provided data may omit one or more properties of the object, and still result in an object with a desired property.
    Type: Application
    Filed: September 18, 2018
    Publication date: March 19, 2020
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Daniil Polykovskiy, Maksim Kuznetsov, Yan Ivanenkov, Mark Veselov, Vladimir Aladinskiy, Evgeny Putin, Yuriy Volkov, Arip Asadulaev
  • Publication number: 20200082916
    Abstract: A method is provided for generating new objects having given properties, such as a specific bioactivity (e.g., binding with a specific protein). In some aspects, the method can include: (a) receiving objects (e.g., physical structures) and their properties (e.g., chemical properties, bioactivity properties, etc.) from a dataset; (b) providing the objects and their properties to a machine learning platform, wherein the machine learning platform outputs a trained model; and (c) the machine learning platform takes the trained model and a set of properties and outputs new objects with desired properties. The new objects are different from the received objects. In some aspects, the objects are molecular structures, such as potential active agents, such as small molecule drugs, biological agents, nucleic acids, proteins, antibodies, or other active agents with a desired or defined bioactivity (e.g., binding a specific protein, preferentially over other proteins).
    Type: Application
    Filed: September 5, 2019
    Publication date: March 12, 2020
    Inventors: Daniil Polykovskiy, Artur Kadurin, Aleksandr M. Aliper, Alexander Zhebrak, Aleksandrs Zavoronkovs
  • Publication number: 20190392304
    Abstract: A method for generating an object includes: providing a dataset having object data and condition data; processing the object data to obtain latent object data and latent object-condition data; processing the condition data to obtain latent condition data and latent condition-object data; processing the latent object data and the latent object-condition data to obtain generated object data; processing the latent condition data and latent condition-object data to obtain generated condition data; comparing the latent object-condition data to the latent condition-object data to determine a difference; processing the latent object data and latent condition data and one of the latent object-condition data or latent condition-object data to obtain a discriminator value; and selecting a selected object based on the generated object data.
    Type: Application
    Filed: June 22, 2018
    Publication date: December 26, 2019
    Inventors: Aleksandr Aliper, Aleksandrs Zavoronkovs, Alexander Zhebrak, Artur Kadurin, Daniil Polykovskiy, Rim Shayakhmetov