Patents by Inventor Philip Charles Nelson
Philip Charles Nelson 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).
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Patent number: 11915134Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: GrantFiled: September 12, 2022Date of Patent: February 27, 2024Assignee: Google LLCInventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Publication number: 20240006027Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for obtaining data defining a sequence for an aptamer, the aptamer comprising a string of nucleobases; encoding the data defining the sequence for the aptamer as a neural network input; and processing the neural network input using a neural network to generate an output that characterizes how strongly the aptamer binds to a particular target molecule, wherein the neural network has been configured through training to receive the data defining the sequence and to process the data to generate predicted outputs that characterize how strongly the aptamer binds to the particular target molecule.Type: ApplicationFiled: April 26, 2023Publication date: January 4, 2024Inventors: Michelle Therese Hoerner Dimon, Marc Berndl, Marc Adlai Coram, Brian Trippe, Patrick F. Riley, Philip Charles Nelson
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Publication number: 20230260126Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing fundus images using fundus image processing machine learning models. One of the methods includes obtaining a model input comprising one or more fundus images, each fundus image being an image of a fundus of an eye of a patient; processing the model input using a fundus image processing machine learning model, wherein the fundus image processing machine learning model is configured to process the model input comprising the one or more fundus image to generate a model output; and processing the model output to generate health analysis data.Type: ApplicationFiled: April 24, 2023Publication date: August 17, 2023Inventors: Lily Hao Yi Peng, Dale R. Webster, Philip Charles Nelson, Varun Gulshan, Marc Adlai Coram, Martin Christian Stumpe, Derek Janme Wu, Arunachalam Narayanaswamy, Avinash Vaidyanathan Varadarajan, Katharine Blumer, Yun Liu, Ryan Poplin
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Patent number: 11670400Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for obtaining data defining a sequence for an aptamer, the aptamer comprising a string of nucleobases; encoding the data defining the sequence for the aptamer as a neural network input; and processing the neural network input using a neural network to generate an output that characterizes how strongly the aptamer binds to a particular target molecule, wherein the neural network has been configured through training to receive the data defining the sequence and to process the data to generate predicted outputs that characterize how strongly the aptamer binds to the particular target molecule.Type: GrantFiled: January 24, 2020Date of Patent: June 6, 2023Assignee: Google LLCInventors: Michelle Therese Hoerner Dimon, Marc Berndl, Marc Adlai Coram, Brian Trippe, Patrick F. Riley, Philip Charles Nelson
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Patent number: 11636601Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing fundus images using fundus image processing machine learning models. One of the methods includes obtaining a model input comprising one or more fundus images, each fundus image being an image of a fundus of an eye of a patient; processing the model input using a fundus image processing machine learning model, wherein the fundus image processing machine learning model is configured to process the model input comprising the one or more fundus image to generate a model output; and processing the model output to generate health analysis data.Type: GrantFiled: March 25, 2021Date of Patent: April 25, 2023Assignee: Google LLCInventors: Lily Hao Yi Peng, Dale R. Webster, Philip Charles Nelson, Varun Gulshan, Marc Adlai Coram, Martin Christian Stumpe, Derek Janme Wu, Arunachalam Narayanaswamy, Avinash Vaidyanathan Varadarajan, Katharine Blumer, Yun Liu, Ryan Poplin
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Publication number: 20230114552Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: ApplicationFiled: September 12, 2022Publication date: April 13, 2023Inventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Patent number: 11443190Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: GrantFiled: June 18, 2020Date of Patent: September 13, 2022Assignee: Google LLCInventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Patent number: 11200287Abstract: Configurations for providing a data feed of contact information updates, deletes, and additions to one or more clients are disclosed. A contact information server can maintain a log including respective log entries of different updates (e.g., in a log structure data store) performed on the contact information. The contact information server orders the log entries using associated timestamps in order to be consistent with the actual order of updates performed on the contact information. For synchronizing contact information, a client will submit a query and supply a timestamp to the contact information server to request the log of updates based on the timestamp (e.g., log entries corresponding to a set of updates since the included timestamp). The server will respond with one or more modifications to the contact information represented as the set of updates in respective log entries.Type: GrantFiled: August 23, 2012Date of Patent: December 14, 2021Assignee: Google LLCInventors: Chad Owen Yoshikawa, George Benjamin Michael van den Driessche, Mark Stephen Goodman, Philip Charles Nelson, Mark Edward Stahl
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Publication number: 20210209762Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing fundus images using fundus image processing machine learning models. One of the methods includes obtaining a model input comprising one or more fundus images, each fundus image being an image of a fundus of an eye of a patient; processing the model input using a fundus image processing machine learning model, wherein the fundus image processing machine learning model is configured to process the model input comprising the one or more fundus image to generate a model output; and processing the model output to generate health analysis data.Type: ApplicationFiled: March 25, 2021Publication date: July 8, 2021Inventors: Lily Hao Yi Peng, Dale R. Webster, Philip Charles Nelson, Varun Gulshan, Marc Adlai Coram, Martin Christian Stumpe, Derek Janme Wu, Arunachalam Narayanaswamy, Avinash Vaidyanathan Varadarajan, Katharine Blumer, Yun Liu, Ryan Poplin
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Patent number: 10970841Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing fundus images using fundus image processing machine learning models. One of the methods includes obtaining a model input comprising one or more fundus images, each fundus image being an image of a fundus of an eye of a patient; processing the model input using a fundus image processing machine learning model, wherein the fundus image processing machine learning model is configured to process the model input comprising the one or more fundus image to generate a model output; and processing the model output to generate health analysis data.Type: GrantFiled: August 18, 2017Date of Patent: April 6, 2021Assignee: Google LLCInventors: Lily Hao Yi Peng, Dale R. Webster, Philip Charles Nelson, Varun Gulshan, Marc Adlai Coram, Martin Christian Stumpe, Derek Janme Wu, Arunachalam Narayanaswamy, Avinash Vaidyanathan Varadarajan, Katharine Blumer, Yun Liu, Ryan Poplin
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Publication number: 20200320394Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: ApplicationFiled: June 18, 2020Publication date: October 8, 2020Inventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Patent number: 10692001Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: GrantFiled: May 14, 2018Date of Patent: June 23, 2020Assignee: Google LLCInventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Publication number: 20200160937Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for obtaining data defining a sequence for an aptamer, the aptamer comprising a string of nucleobases; encoding the data defining the sequence for the aptamer as a neural network input; and processing the neural network input using a neural network to generate an output that characterizes how strongly the aptamer binds to a particular target molecule, wherein the neural network has been configured through training to receive the data defining the sequence and to process the data to generate predicted outputs that characterize how strongly the aptamer binds to the particular target molecule.Type: ApplicationFiled: January 24, 2020Publication date: May 21, 2020Inventors: Michelle Therese Hoerner Dimon, Marc Berndl, Marc Adlai Coram, Brian Trippe, Patrick F. Riley, Philip Charles Nelson
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Patent number: 10546650Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for obtaining data defining a sequence for an aptamer, the aptamer comprising a string of nucleobases; encoding the data defining the sequence for the aptamer as a neural network input; and processing the neural network input using a neural network to generate an output that characterizes how strongly the aptamer binds to a particular target molecule, wherein the neural network has been configured through training to receive the data defining the sequence and to process the data to generate predicted outputs that characterize how strongly the aptamer binds to the particular target molecule.Type: GrantFiled: October 23, 2015Date of Patent: January 28, 2020Assignee: Google LLCInventors: Michelle Therese Hoerner Dimon, Marc Berndl, Marc Adlai Coram, Brian Trippe, Patrick F. Riley, Philip Charles Nelson
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Publication number: 20190180441Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing fundus images using fundus image processing machine learning models. One of the methods includes obtaining a model input comprising one or more fundus images, each fundus image being an image of a fundus of an eye of a patient; processing the model input using a fundus image processing machine learning model, wherein the fundus image processing machine learning model is configured to process the model input comprising the one or more fundus image to generate a model output; and processing the model output to generate health analysis data.Type: ApplicationFiled: August 18, 2017Publication date: June 13, 2019Inventors: Lily Hao Yi Peng, Dale R. Webster, Philip Charles Nelson, Varun Gulshan, Marc Adlai Coram, Martin Christian Stumpe, Derek Janme Wu, Arunachalam Narayanaswamy, Avinash Vaidyanathan Varadarajan, Katharine Blumer, Yun Liu, Ryan Poplin
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Publication number: 20180349770Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: ApplicationFiled: May 14, 2018Publication date: December 6, 2018Inventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Patent number: 9971966Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: GrantFiled: February 26, 2016Date of Patent: May 15, 2018Assignee: Google LLCInventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Publication number: 20170249548Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for processing cell images using neural networks. One of the methods includes obtaining data comprising an input image of one or more biological cells illuminated with an optical microscopy technique; processing the data using a stained cell neural network; and processing the one or more stained cell images using a cell characteristic neural network, wherein the cell characteristic neural network has been configured through training to receive the one or more stained cell images and to process the one or more stained cell images to generate a cell characteristic output that characterizes features of the biological cells that are stained in the one or more stained cell images.Type: ApplicationFiled: February 26, 2016Publication date: August 31, 2017Inventors: Philip Charles Nelson, Eric Martin Christiansen, Marc Berndl, Michael Frumkin
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Publication number: 20170116371Abstract: Methods, systems, and apparatus, including computer programs encoded on computer storage media, for obtaining data defining a sequence for an aptamer, the aptamer comprising a string of nucleobases; encoding the data defining the sequence for the aptamer as a neural network input; and processing the neural network input using a neural network to generate an output that characterizes how strongly the aptamer binds to a particular target molecule, wherein the neural network has been configured through training to receive the data defining the sequence and to process the data to generate predicted outputs that characterize how strongly the aptamer binds to the particular target molecule.Type: ApplicationFiled: October 23, 2015Publication date: April 27, 2017Applicant: GOOGLE INC.Inventors: Michelle Therese Hoerner Dimon, Marc Berndl, Marc Adlai Coram, Brian Trippe, Patrick F. Riley, Philip Charles Nelson
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Publication number: 20150207899Abstract: Configurations for providing a data feed of contact information updates, deletes, and additions to one or more clients are disclosed. A contact information server can maintain a log including respective log entries of different updates (e.g., in a log structure data store) performed on the contact information. The contact information server orders the log entries using associated timestamps in order to be consistent with the actual order of updates performed on the contact information. For synchronizing contact information, a client will submit a query and supply a timestamp to the contact information server to request the log of updates based on the timestamp (e.g., log entries corresponding to a set of updates since the included timestamp). The server will respond with one or more modifications to the contact information represented as the set of updates in respective log entries.Type: ApplicationFiled: August 23, 2012Publication date: July 23, 2015Inventors: Chad Owen Yoshikawa, George Benjamin Michael van den Driessche, Mark Stephen Goodman, Philip Charles Nelson, Mark Edward Stahl