Patents by Inventor Olivier Saidi

Olivier Saidi 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: 7933848
    Abstract: A method of producing a model for use in predicting time to an event includes obtaining multi-dimensional, non-linear vectors of information indicative of status of multiple test subjects, at least one of the vectors being right-censored, lacking an indication of a time of occurrence of the event with respect to the corresponding test subject, and performing regression using the vectors of information to produce a kernel-based model to provide an output value related to a prediction of time to the event based upon at least some of the information contained in the vectors of information, where for each vector comprising right-censored data, a censored-data penalty function is used to affect the regression, the censored-data penalty function being different than a non-censored-data penalty function used for each vector comprising non-censored data.
    Type: Grant
    Filed: January 30, 2009
    Date of Patent: April 26, 2011
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David A. Verbel
  • Publication number: 20100191685
    Abstract: Methods and systems are provided for feature selection in machine learning, in which the features selected for inclusion in a prediction rule are selected based on statistical metric(s) of feature contribution and/or model fitness.
    Type: Application
    Filed: August 11, 2009
    Publication date: July 29, 2010
    Applicant: Aureon Laboratories, Inc.
    Inventors: Marina Sapir, Faisal M. Khan, David A. Verbel, Olivier Saidi
  • Patent number: 7761240
    Abstract: Systems and methods are provided for automated diagnosis and grading of tissue images based on morphometric data extracted from the images by a computer. The morphometric data may include image-level morphometric data such as fractal dimension data, fractal code data, wavelet data, and/or color channel histogram data. The morphometric data may also include object-level morphometric data such as color, structural, and/or textural properties of segmented image objects (e.g., stroma, nuclei, red blood cells, etc.).
    Type: Grant
    Filed: August 9, 2005
    Date of Patent: July 20, 2010
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, Ali Tabesh, Mikhail Teverovskiy
  • Patent number: 7702598
    Abstract: Embodiments of the present invention are directed to methods and systems for training a neural network having weighted connections for classification of data, as well as embodiments corresponding to the use of such a neural network for the classification of data, including, for example, prediction of an event (e.g., disease). The method may include inputting input training data into the neural network, processing, by the neural network, the input training data to produce an output, determining an error between the output and a desired output corresponding to the input training data, rating the performance neural network using an objective function, wherein the objective function comprises a function C substantially in accordance with an approximation of the concordance index and adapting the weighted connections of the neural network based upon results of the objective function.
    Type: Grant
    Filed: February 21, 2008
    Date of Patent: April 20, 2010
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David Verbel, Lian Yan
  • Publication number: 20100088264
    Abstract: Methods and systems are provided that use clinical information, molecular information and computer-generated morphometric information in a predictive model for predicting the occurrence (e.g., recurrence) of a medical condition, for example, cancer. In an embodiment, a model that predicts prostate cancer recurrence is provided, where the model is based on features including one or more (e.g., all) of biopsy Gleason score, seminal vesicle invasion, extracapsular extension, preoperative PSA, dominant prostatectomy Gleason grade, the relative area of AR+ epithelial nuclei, a morphometric measurement of epithelial nuclei, and a morphometric measurement of epithelial cytoplasm. In another embodiment, a model that predicts clinical failure post-prostatectomy is provided, wherein the model is based on features including one or more (e.g.
    Type: Application
    Filed: April 7, 2008
    Publication date: April 8, 2010
    Applicant: Aureon Laboratories Inc.
    Inventors: Mikhail Teverovskiy, David A. Verbel, Olivier Saidi
  • Publication number: 20090262993
    Abstract: Embodiments of the present invention are directed to quantitative analysis of tissues enabling the measurement of objects and parameters of objects found in images of tissues including perimeter, area, and other metrics of such objects. Measurement results may be input into a relational database where they can be statistically analyzed and compared across studies. The measurement results may be used to create a pathological tissue map of a tissue image, to allow a pathologist to determine a pathological condition of the imaged tissue more quickly.
    Type: Application
    Filed: November 14, 2008
    Publication date: October 22, 2009
    Applicant: Aureon Laboratories, Inc.
    Inventors: Angeliki Kotsianti, Olivier Saidi, Mikhail Teverovskiy
  • Patent number: 7599893
    Abstract: Methods and systems are provided for feature selection in machine learning, in which the features selected for inclusion in a prediction rule are selected based on statistical metric(s) of feature contribution and/or model fitness.
    Type: Grant
    Filed: May 22, 2006
    Date of Patent: October 6, 2009
    Assignee: Aureon Laboratories, Inc.
    Inventors: Marina Sapir, Faisal M. Khan, David A. Verbel, Olivier Saidi
  • Patent number: 7505948
    Abstract: A method of producing a model for use in predicting time to an event includes obtaining multi-dimensional, non-linear vectors of information indicative of status of multiple test subjects, at least one of the vectors being right-censored, lacking an indication of a time of occurrence of the event with respect to the corresponding test subject, and performing regression using the vectors of information to produce a kernel-based model to provide an output value related to a prediction of time to the event based upon at least some of the information contained in the vectors of information, where for each vector comprising right-censored data, a censored-data penalty function is used to affect the regression, the censored-data penalty function being different than a non-censored-data penalty function used for each vector comprising non-censored data.
    Type: Grant
    Filed: November 17, 2004
    Date of Patent: March 17, 2009
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David A. Verbel
  • Patent number: 7483554
    Abstract: Embodiments of the present invention are directed to quantitative analysis of tissues enabling the measurement of objects and parameters of objects found in images of tissues including perimeter, area, and other metrics of such objects. Measurement results may be input into a relational database where they can be statistically analyzed and compared across studies. The measurement results may be used to create a pathological tissue map of a tissue image, to allow a pathologist to determine a pathological condition of the imaged tissue more quickly.
    Type: Grant
    Filed: November 17, 2004
    Date of Patent: January 27, 2009
    Assignee: Aureon Laboratories, Inc.
    Inventors: Angeliki Kotsianti, Olivier Saidi, Mikhail Teverovskiy
  • Patent number: 7467119
    Abstract: Methods and systems are provided that use clinical information, molecular information and computer-generated morphometric information in a predictive model for predicting the occurrence (e.g., recurrence) of a medical condition, for example, cancer.
    Type: Grant
    Filed: March 14, 2005
    Date of Patent: December 16, 2008
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David A. Verbel, Mikhail Teverovskiy
  • Publication number: 20080306893
    Abstract: Embodiments of the present invention are directed to methods and systems for training a neural network having weighted connections for classification of data, as well as embodiments corresponding to the use of such a neural network for the classification of data, including, for example, prediction of an event (e.g., disease). The method may include inputting input training data into the neural network, processing, by the neural network, the input training data to produce an output, determining an error between the output and a desired output corresponding to the input training data, rating the performance neural network using an objective function, wherein the objective function comprises a function C substantially in accordance with an approximation of the concordance index and adapting the weighted connections of the neural network based upon results of the objective function.
    Type: Application
    Filed: February 21, 2008
    Publication date: December 11, 2008
    Applicant: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David A. Verbel, Lian Yan
  • Patent number: 7461048
    Abstract: Methods and systems are provided that use clinical information, molecular information and computer-generated morphometric information in a predictive model for predicting the occurrence (e.g., recurrence) of a medical condition, for example, cancer. In an embodiment, a model that predicts prostate cancer recurrence is provided, where the model is based on features including seminal vesicle involvement, surgical margin involvement, lymph node status, androgen receptor (AR) staining index of tumor, a morphometric measurement of epithelial nuclei, and at least one morphometric measurement of stroma.
    Type: Grant
    Filed: October 13, 2006
    Date of Patent: December 2, 2008
    Assignee: Aureon Laboratories, Inc.
    Inventors: Mikhail Teverovskiy, David A. Verbel, Olivier Saidi
  • Patent number: 7321881
    Abstract: Embodiments of the present invention are directed to methods and systems for training a neural network having weighted connections for classification of data, as well as embodiments corresponding to the use of such a neural network for the classification of data, including, for example, prediction of an event (e.g., disease). The method may include inputting input training data into the neural network, processing, by the neural network, the input training data to produce an output, determining an error between the output and a desired output corresponding to the input training data, rating the performance neural network using an objective function, wherein the objective function comprises a function C substantially in accordance with an approximation of the concordance index and adapting the weighted connections of the neural network based upon results of the objective function.
    Type: Grant
    Filed: February 25, 2005
    Date of Patent: January 22, 2008
    Assignee: Aureon Laboratories, Inc.
    Inventors: Olivier Saidi, David A. Verbel, Lian Yan
  • Publication number: 20070112716
    Abstract: Methods and systems are provided for feature selection in machine learning, in which the features selected for inclusion in a prediction rule are selected based on statistical metric(s) of feature contribution and/or model fitness.
    Type: Application
    Filed: May 22, 2006
    Publication date: May 17, 2007
    Applicant: Aureon Laboratories, Inc.
    Inventors: Marina Sapir, Faisal Khan, David Verbel, Olivier Saidi
  • Publication number: 20070099219
    Abstract: Methods and systems are provided that use clinical information, molecular information and computer-generated morphometric information in a predictive model for predicting the occurrence (e.g., recurrence) of a medical condition, for example, cancer. In an embodiment, a model that predicts prostate cancer recurrence is provided, where the model is based on features including seminal vesicle involvement, surgical margin involvement, lymph node status, androgen receptor (AR) staining index of tumor, a morphometric measurement of epithelial nuclei, and at least one morphometric measurement of stroma.
    Type: Application
    Filed: October 13, 2006
    Publication date: May 3, 2007
    Applicant: Aureon Laboratories, Inc.
    Inventors: Mikhail Teverovskiy, David Verbel, Olivier Saidi
  • Publication number: 20060064248
    Abstract: Systems and methods are provided for automated diagnosis and grading of tissue images based on morphometric data extracted from the images by a computer. The morphometric data may include image-level morphometric data such as fractal dimension data, fractal code data, wavelet data, and/or color channel histogram data. The morphometric data may also include object-level morphometric data such as color, structural, and/or textural properties of segmented image objects (e.g., stroma, nuclei, red blood cells, etc.).
    Type: Application
    Filed: August 9, 2005
    Publication date: March 23, 2006
    Inventors: Olivier Saidi, Ali Tabesh, Mikhail Teverovskiy
  • Publication number: 20050262031
    Abstract: Methods and systems are provided that use clinical information, molecular information and computer-generated morphometric information in a predictive model for predicting the occurrence (e.g., recurrence) of a medical condition, for example, cancer.
    Type: Application
    Filed: March 14, 2005
    Publication date: November 24, 2005
    Inventors: Olivier Saidi, David Verbel, Mikhail Teverovskiy
  • Publication number: 20050197982
    Abstract: Embodiments of the present invention are directed to methods and systems for training a neural network having weighted connections for classification of data, as well as embodiments corresponding to the use of such a neural network for the classification of data, including, for example, prediction of an event (e.g., disease). The method may include inputting input training data into the neural network, processing, by the neural network, the input training data to produce an output, determining an error between the output and a desired output corresponding to the input training data, rating the performance neural network using an objective function, wherein the objective function comprises a function C substantially in accordance with an approximation of the concordance index and adapting the weighted connections of the neural network based upon results of the objective function.
    Type: Application
    Filed: February 25, 2005
    Publication date: September 8, 2005
    Inventors: Olivier Saidi, David Verbel, Lian Yan
  • Publication number: 20050165290
    Abstract: Embodiments of the present invention are directed to quantitative analysis of tissues enabling the measurement of objects and parameters of objects found in images of tissues including perimeter, area, and other metrics of such objects. Measurement results may be input into a relational database where they can be statistically analyzed and compared across studies. The measurement results may be used to create a pathological tissue map of a tissue image, to allow a pathologist to determine a pathological condition of the imaged tissue more quickly.
    Type: Application
    Filed: November 17, 2004
    Publication date: July 28, 2005
    Inventors: Angeliki Kotsianti, Olivier Saidi, Mikhail Teverovskiy
  • Publication number: 20050108753
    Abstract: A method of producing a model for use in predicting time to an event includes obtaining multi-dimensional, non-linear vectors of information indicative of status of multiple test subjects, at least one of the vectors being right-censored, lacking an indication of a time of occurrence of the event with respect to the corresponding test subject, and performing regression using the vectors of information to produce a kernel-based model to provide an output value related to a prediction of time to the event based upon at least some of the information contained in the vectors of information, where for each vector comprising right-censored data, a censored-data penalty function is used to affect the regression, the censored-data penalty function being different than a non-censored-data penalty function used for each vector comprising non-censored data.
    Type: Application
    Filed: November 17, 2004
    Publication date: May 19, 2005
    Inventors: Olivier Saidi, David Verbel