Patents by Inventor Benjamin Sellman Suutari

Benjamin Sellman Suutari 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: 11790171
    Abstract: A natural language understanding method begins with a radiological report text containing clinical findings. Errors in the text are corrected by analyzing character-level optical transformation costs weighted by a frequency analysis over a corpus corresponding to the report text. For each word within the report text, a word embedding is obtained, character-level embeddings are determined, and the word and character-level embeddings are concatenated to a neural network which generates a plurality of NER tagged spans for the report text. A set of linked relationships are calculated for the NER tagged spans by generating masked text sequences based on the report text and determined pairs of potentially linked NER spans. A dense adjacency matrix is calculated based on attention weights obtained from providing the one or more masked text sequences to a Transformer deep learning network, and graph convolutions are then performed over the calculated dense adjacency matrix.
    Type: Grant
    Filed: April 15, 2020
    Date of Patent: October 17, 2023
    Assignee: Covera Health
    Inventors: Ron Vianu, W. Nathaniel Brown, Gregory Allen Dubbin, Daniel Robert Elgort, Benjamin L. Odry, Benjamin Sellman Suutari, Jefferson Chen
  • Patent number: 11423538
    Abstract: For training data pairs comprising training text (a radiological report) and training images (radiological images associated with the radiological report), a first encoder network determines word embeddings for the training text. A concept is generated from the operation of layers of the first encoder network, which is regularized by a first loss between the generated concept and a labeled concept for the training text. A second encoder network determines features for the training image. A heatmap is generated from the operation of layers of the second encoder network, which is regularized by a second loss between the generated heatmap and a labeled heatmap for the training image. A categorical cross entropy loss is calculated between a diagnostic quality category (classified by an error encoder) and a labeled diagnostic quality category for the training data pair. A total loss function comprising the first, second, and categorical cross entropy losses is minimized.
    Type: Grant
    Filed: April 15, 2020
    Date of Patent: August 23, 2022
    Assignee: Covera Health
    Inventors: Ron Vianu, Tarmo Henrik Aijo, James Robert Browning, Xiaojin Dong, Bryce Eron Eakin, Daniel Robert Elgort, Richard J. Herzog, Benjamin L. Odry, JinHyeong Park, Benjamin Sellman Suutari, Gregory Allen Dubbin
  • Publication number: 20200334809
    Abstract: For training data pairs comprising training text (a radiological report) and training images (radiological images associated with the radiological report), a first encoder network determines word embeddings for the training text. A concept is generated from the operation of layers of the first encoder network, which is regularized by a first loss between the generated concept and a labeled concept for the training text. A second encoder network determines features for the training image. A heatmap is generated from the operation of layers of the second encoder network, which is regularized by a second loss between the generated heatmap and a labeled heatmap for the training image. A categorical cross entropy loss is calculated between a diagnostic quality category (classified by an error encoder) and a labeled diagnostic quality category for the training data pair. A total loss function comprising the first, second, and categorical cross entropy losses is minimized.
    Type: Application
    Filed: April 15, 2020
    Publication date: October 22, 2020
    Inventors: Ron Vianu, Tarmo Henrik Aijo, James Robert Browning, Xiaojin Dong, Bryce Eron Eakin, Daniel Robert Elgort, Richard J. Herzog, Benjamin L. Odry, JinHyeong Park, Benjamin Sellman Suutari, Gregory Allen Dubbin
  • Publication number: 20200334416
    Abstract: A natural language understanding method begins with a radiological report text containing clinical findings. Errors in the text are corrected by analyzing character-level optical transformation costs weighted by a frequency analysis over a corpus corresponding to the report text. For each word within the report text, a word embedding is obtained, character-level embeddings are determined, and the word and character-level embeddings are concatenated to a neural network which generates a plurality of NER tagged spans for the report text. A set of linked relationships are calculated for the NER tagged spans by generating masked text sequences based on the report text and determined pairs of potentially linked NER spans. A dense adjacency matrix is calculated based on attention weights obtained from providing the one or more masked text sequences to a Transformer deep learning network, and graph convolutions are then performed over the calculated dense adjacency matrix.
    Type: Application
    Filed: April 15, 2020
    Publication date: October 22, 2020
    Inventors: Ron Vianu, W. Nathaniel Brown, Gregory Allen Dubbin, Daniel Robert Elgort, Benjamin L. Odry, Benjamin Sellman Suutari, Jefferson Chen