Patents by Inventor Philippe Lambin

Philippe Lambin 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: 11972867
    Abstract: The present document describes a training method of a machine learning data processing model for determining a hypoxia status of a neoplasm, in particular a random forest model. The method comprises obtaining, for a plurality of neoplasms, at least one data sample comprising 3D imaging data. A hypoxic volume fraction is determined for each data sample, as well as a set of image features associated with the neoplasm. The method further iterates a sequence of training steps and each iteration includes: selecting a subset of image features and eliminating, for each data sample, the subset of image features to yield a reduced set of image features. The iteration also includes generating decision trees, providing a momentary random forest model based thereon, and submitting a test set of image features to the momentary random forest model to yield a performance value.
    Type: Grant
    Filed: December 16, 2020
    Date of Patent: April 30, 2024
    Assignee: Universiteit Maastricht
    Inventors: Sebastian Sanduleanu, Philippe Lambin
  • Publication number: 20230094681
    Abstract: The present document relates to providing a radiation treatment plan for treatment of a neoplasm, including the steps of: obtaining an image including the neoplasm and obtaining first segmentation data for segmenting at least one target-volume to be targeted with radiation. Further identifying any organs-at-risk and segmenting these. The method further comprises identifying lymphocyte-rich-organs in the image, and obtaining third segmentation data for segmenting the lymphocyte- rich-organs. The planning system then obtains radiation dose regime data, including first, second and third dose regime data.
    Type: Application
    Filed: February 26, 2021
    Publication date: March 30, 2023
    Inventors: Philippe LAMBIN, Ludwig Jerome DUBOIS
  • Publication number: 20210217525
    Abstract: The present document describes a training method of a machine learning data processing model for determining a hypoxia status of a neoplasm, in particular a random forest model. The method comprises obtaining, for a plurality of neoplasms, at least one data sample comprising 3D imaging data. A hypoxic volume fraction is determined for each data sample, as well as a set of image features associated with the neoplasm. The method further iterates a sequence of training steps and each iteration includes: selecting a subset of image features and eliminating, for each data sample, the subset of image features to yield a reduced set of image features. The iteration also includes generating decision trees, providing a momentary random forest model based thereon, and submitting a test set of image features to the momentary random forest model to yield a performance value.
    Type: Application
    Filed: December 16, 2020
    Publication date: July 15, 2021
    Inventors: Sebastian SANDULEANU, Philippe LAMBIN
  • Patent number: 10339653
    Abstract: An example method for analyzing quantitative information obtained from radiological images includes identifying a ROI or a VOI in a radiological image, segmenting the ROI or the VOI from the radiological image and extracting quantitative features that describe the ROI or the VOI. The method also includes creating a radiological image record including the quantitative features, imaging parameters of the radiological image and clinical parameters and storing the radiological image record in a data structure containing a plurality of radiological image records. In addition, the method includes receiving a request with the patient's radiological image or information related thereto, analyzing the data structure to determine a statistical relationship between the request and the radiological image records and generating a patient report with a diagnosis, a prognosis or a recommended treatment regimen for the patient's disease based on a result of analyzing the data structure.
    Type: Grant
    Filed: July 31, 2017
    Date of Patent: July 2, 2019
    Assignees: H. Lee Moffitt Cancer Center and Research Institute, Inc., The Board of Trustees of the Leland Stanford Junior University, Stichting Maastricht Radiation Oncology ‘Maastro Clinic’
    Inventors: Robert J. Gillies, Steven A. Eschrich, Robert A. Gatenby, Philippe Lambin, Andreas L. A. J. Dekker, Sandy A. Napel, Sylvia K. Plevritis, Daniel L. Rubin
  • Patent number: 10311571
    Abstract: The present invention relates to an image analysis method for providing information for supporting illness development prediction regarding a neoplasm in a human or animal body. The method includes receiving for the neoplasm first and second image data at a first and second moment in time, and deriving for a plurality of image features a first and a second image feature parameter value from the first and second image data. These feature parameter values being a quantitative representation of a respective image feature. Further, calculating an image feature difference value by calculating a difference between the first and second image feature parameter value, and based on a prediction model deriving a predictive value associated with the neoplasm for supporting treatment thereof. The prediction model includes a plurality of multiplier values associated with image features.
    Type: Grant
    Filed: October 17, 2014
    Date of Patent: June 4, 2019
    Assignee: Stichting Maastricht Radiation Oncology “Maastro-Clinic”
    Inventors: Philippe Lambin, Sara Joao Botelho de Carvalho, Ralph Theodoor Hubertina Leijenaar
  • Publication number: 20170358079
    Abstract: An example method for analyzing quantitative information obtained from radiological images includes identifying a ROI or a VOI in a radiological image, segmenting the ROI or the VOI from the radiological image and extracting quantitative features that describe the ROI or the VOI. The method also includes creating a radiological image record including the quantitative features, imaging parameters of the radiological image and clinical parameters and storing the radiological image record in a data structure containing a plurality of radiological image records. In addition, the method includes receiving a request with the patient's radiological image or information related thereto, analyzing the data structure to determine a statistical relationship between the request and the radiological image records and generating a patient report with a diagnosis, a prognosis or a recommended treatment regimen for the patient's disease based on a result of analyzing the data structure.
    Type: Application
    Filed: July 31, 2017
    Publication date: December 14, 2017
    Inventors: Robert J. Gillies, Steven A. Eschrich, Robert A. Gatenby, Philippe Lambin, Andreas L.A.J. Dekker, Sandy A. Napel, Sylvia K. Plevritis, Daniel L. Rubin
  • Patent number: 9811904
    Abstract: The present invention relates to a decision support system and an image analysis method for providing information for enabling determination of a phenotype of a neoplasm in a human or animal body for enabling prognostication, comprising the steps of: receiving, by a processing unit, image data of the neoplasm; and deriving, by the processing unit, a plurality of image feature parameter values from the image data, said image parameter values relating to image features associated with the neoplasm; and deriving, by said processing unit using a signature model, one or more neoplasm signature model values associated with the neoplasm from said image feature parameter values, wherein said signature model includes a functional relation between or characteristic values of said image feature parameter values for deriving said neoplasm signature model values.
    Type: Grant
    Filed: April 17, 2014
    Date of Patent: November 7, 2017
    Assignee: STICHTING MAASTRICHT RADIATION ONCOLOGY “MAASTRO-CLINIC”
    Inventors: Philippe Lambin, Hugo Johannes Wilhelmus Louis Aerts
  • Publication number: 20170236283
    Abstract: The present invention relates to an image analysis method for providing information for supporting illness development prediction regarding a neoplasm in a human or animal body. The method includes receiving for the neoplasm first and second image data at a first and second moment in time, and deriving for a plurality of image features a first and a second image feature parameter value from the first and second image data. These feature parameter values being a quantitative representation of a respective image feature. Further, calculating an image feature difference value by calculating a difference between the first and second image feature parameter value, and based on a prediction model deriving a predictive value associated with the neoplasm for supporting treatment thereof. The prediction model includes a plurality of multiplier values associated with image features.
    Type: Application
    Filed: October 17, 2014
    Publication date: August 17, 2017
    Inventors: Philippe Lambin, Sara Joao Botelho de Carvalho, Ralph Theodoor Hubertina Leijenaar
  • Patent number: 9721340
    Abstract: An example method for analyzing quantitative information obtained from radiological images includes identifying a ROI or a VOI in a radiological image, segmenting the ROI or the VOI from the radiological image and extracting quantitative features that describe the ROI or the VOI. The method also includes creating a radiological image record including the quantitative features, imaging parameters of the radiological image and clinical parameters and storing the radiological image record in a data structure containing a plurality of radiological image records. In addition, the method includes receiving a request with the patient's radiological image or information related thereto, analyzing the data structure to determine a statistical relationship between the request and the radiological image records and generating a patient report with a diagnosis, a prognosis or a recommended treatment regimen for the patient's disease based on a result of analyzing the data structure.
    Type: Grant
    Filed: August 13, 2014
    Date of Patent: August 1, 2017
    Assignee: H. Lee Moffitt Cancer Center and Research Institute, Inc.
    Inventors: Robert J. Gillies, Steven A. Eschrich, Robert A. Gatenby, Philippe Lambin, Andreas L. A. J. Dekker, Sandy A. Napel, Sylvia K. Plevritis, Daniel L. Rubin
  • Publication number: 20160203599
    Abstract: An example method for analyzing quantitative information obtained from radiological images includes identifying a ROI or a VOI in a radiological image, segmenting the ROI or the VOI from the radiological image and extracting quantitative features that describe the ROI or the VOI. The method also includes creating a radiological image record including the quantitative features, imaging parameters of the radiological image and clinical parameters and storing the radiological image record in a data structure containing a plurality of radiological image records. In addition, the method includes receiving a request with the patient's radiological image or information related thereto, analyzing the data structure to determine a statistical relationship between the request and the radiological image records and generating a patient report with a diagnosis, a prognosis or a recommended treatment regimen for the patient's disease based on a result of analyzing the data structure.
    Type: Application
    Filed: August 13, 2014
    Publication date: July 14, 2016
    Inventors: Robert J. Gillies, Steven A. Eschrich, Robert A. Gatenby, Philippe Lambin, Andreas L.A.J. Dekker, Sandy A. Napel, Sylvia K. Plevritis, Daniel L. Rubin
  • Publication number: 20160160287
    Abstract: The invention is in the art of medical treatments, in particular the treatment of tumors with ionizing radiation. It provides means and methods for predicting whether a subject is likely to develop radiation damage upon radiotherapy. The invention provides tools that allow individualized and optimized radiation treatment of a subject in need of a radiation treatment. The invention also provides methods of determining the risk of developing severe dyspnea after radiation treatment. More in particular, the invention relates to an in vitro method for predicting the risk of developing radiation induced toxicity comprising the steps of obtaining mitochondrial DNA from a sample of a subject, determining the number of non-synonymous variations present in at least one gene encoding a mitochondrial protein, attributing a value to the number of non-synonymous variations, wherein a higher value corresponds to a higher risk of developing radiation induced lung toxicity.
    Type: Application
    Filed: May 5, 2014
    Publication date: June 9, 2016
    Inventors: Philippe Lambin, Georgi Ilkov Nalbantov, Hubertus Julius Maria Smeets, An Mieke Voets
  • Publication number: 20160078613
    Abstract: The present invention relates to a decision support system and an image analysis method for providing information for enabling determination of a phenotype of a neoplasm in a human or animal body for enabling prognostication, comprising the steps of: receiving, by a processing unit, image data of the neoplasm; and deriving, by the processing unit, a plurality of image feature parameter values from the image data, said image parameter values relating to image features associated with the neoplasm; and deriving, by said processing unit using a signature model, one or more neoplasm signature model values associated with the neoplasm from said image feature parameter values, wherein said signature model includes a functional relation between or characteristic values of said image feature parameter values for deriving said neoplasm signature model values
    Type: Application
    Filed: April 17, 2014
    Publication date: March 17, 2016
    Applicant: Stichting Maastricht Radiation Oncology "Maastro-Clinic"
    Inventors: Philippe Lambin, Hugo Johannes Wilhelmus Louis Aerts
  • Publication number: 20150150849
    Abstract: The present invention concerns novel carbonic anhydrase IX inhibitors comprising a nitroimidazole moiety and their use in therapy of hypoxic conditions, in particular cancer treatment, especially chemotherapy and radiotherapy. The compounds of the invention have an increased specificity for the carbonic anhydrase IX enzyme compared to the art.
    Type: Application
    Filed: February 4, 2015
    Publication date: June 4, 2015
    Applicants: STICHTING MAASTRICHT RADIATION ONCOLOGY "MAASTRO- CLINIC", UNIVERSITE MONTPELLIER 2 Sciences et Techniques
    Inventors: Philippe Lambin, Jean-Yves Winum, Claudiu Supuran
  • Patent number: 8980932
    Abstract: The present invention concerns novel carbonic anhydrase IX inhibitors comprising a nitroimidazole moiety and their use in therapy of hypoxic conditions, in particular cancer treatment, especially chemotherapy and radiotherapy. The compounds of the invention have an increased specificity for the carbonic anhydrase IX enzyme compared to the art. The present invention relates to novel nitroimidazole derivates represented by formula (1).
    Type: Grant
    Filed: December 21, 2011
    Date of Patent: March 17, 2015
    Assignees: Stichting Maastricht Radiation Oncology “Maastro-Clinic”, Université Montpellier 2 Sciences et Techniques
    Inventors: Philippe Lambin, Jean-Yves Winum, Claudiu Supuran
  • Patent number: 8812240
    Abstract: Functional imaging information is used to determine a probability of residual disease given a treatment. The functional imaging information shows different characteristic levels for different regions of the tumor. The probability is output for planning use and/or used to automatically determine dose by region. Using the probability, the dose may be distributed by region so that some regions receive a greater dose than other regions. This distribution by region of dose more likely treats the tumor with a same dose, allows a lesser dose to sufficient treat the tumor, and/or allows a greater dose with a lesser or no increase in risk to normal tissue. The dose plan may account for personalized tumors as each patient may have distinct tumors. Probability of dose application accuracy may also be used, so that a combined treatment probability allows efficient dose planning.
    Type: Grant
    Filed: March 5, 2009
    Date of Patent: August 19, 2014
    Assignee: Siemens Medical Solutions USA, Inc.
    Inventors: Shipeng Yu, Glenn Fung, Steven Florian Petit, Hugo J. W. L. Aerts, Claudia Offermann, Michel Oellers, Philippe Lambin, Dirk de Ruysscher, Andreas Lubbertus Aloysius Johannes Dekker, Sriram Krishnan
  • Publication number: 20130274305
    Abstract: The present invention concerns novel carbonic anhydrase IX inhibitors comprising a nitroimidazole moiety and their use in therapy of hypoxic conditions, in particular cancer treatment, especially chemotherapy and radiotherapy. The compounds of the invention have an increased specificity for the carbonic anhydrase IX enzyme compared to the art. The present invention relates to novel nitroimidazole derivates represented by formula (1).
    Type: Application
    Filed: December 21, 2011
    Publication date: October 17, 2013
    Applicants: STICHTING MAASTRICHT RADIATION ONCOLOGY "MAASTRO-CLINIC", CNRS CENTRE NATIONAL DE LA RECHERCHE SCIENTIFIQUE
    Inventors: Philippe Lambin, Jean-Yves Winum, Claudiu Supuran
  • Publication number: 20130053392
    Abstract: A carbonic anhydrase IX (CA IX) inhibitor which comprises a compound of general formula: R—NH—CX—NH—(CH2)n—Ar-Q-SO2—NH2 or a pharmaceutically-acceptable salt, derivative or prodrug thereof; wherein n=0, 1 or 2; Q is O or NH; X is O or S; and R comprises an organic substituent group.
    Type: Application
    Filed: February 14, 2011
    Publication date: February 28, 2013
    Inventors: Peter Ebbesen, Claudlu T. Supuran, Andrea Scozzafava, Erik Olai Pettersen, Kaye Williams, Ludwig Dubois, Philippe Lambin
  • Patent number: 8250013
    Abstract: A computer-implemented method for privacy-preserving data mining to determine cancer survival rates includes providing a random matrix B agreed to by a plurality of entities, wherein each entity i possesses a data matrix Ai of cancer survival data that is not publicly available, providing a class matrix Di for each of the data matrices Ai, providing a kernel K(Ai, B) by each of said plurality of entities to allow public computation of a full kernel, and computing a binary classifier that incorporates said public full kernel, wherein said classifier is adapted to classify a new data vector according to a sign of said classifier.
    Type: Grant
    Filed: January 14, 2009
    Date of Patent: August 21, 2012
    Assignee: Siemens Medical Solutions USA, Inc.
    Inventors: Glenn Fung, R. Bharat Rao, Sriram Krishnan, Shipeng Yu, Cary Dehing-Oberije, Philippe Lambin, Dirk de Ruysscher
  • Patent number: 8078554
    Abstract: Knowledge-based interpretable predictive modeling is provided. Expert knowledge is used to seed training of a model by a machine. The expert knowledge may be incorporated as diagram information, which relates known causal relationships between predictive variables. A predictive model is trained. In one embodiment, the model operates even with a missing value for one or more variables by using the relationship between variables. For application, the model outputs a prediction, such as the likelihood of survival for two years of a lung cancer patient. A graphical representation of the model is also output. The graphical representation shows the variables and relationships between variables used to determine the prediction. The graphical representation is interpretable by a physician or other to assist in understanding.
    Type: Grant
    Filed: July 21, 2009
    Date of Patent: December 13, 2011
    Assignee: Siemens Medical Solutions USA, Inc.
    Inventors: Glenn Fung, Cary Dehing-Oberije, Andreas Lubbertus Aloysius Johannes Dekker, Philippe Lambin, Shipeng Yu, Kartik Jayasurya Komati
  • Patent number: 8032308
    Abstract: Modeling of prognosis of survivability, side-effect, or both is provided. For example, RILI is predicted using bullae information. The amount, volume or ratio of Bullae, even alone, may indicate the likelihood of complication, such as the likelihood of significant (e.g., stage 3) pneumonitis. As another example, RILI is predicted using uptake values of an imaging agent. Standardized uptake from a functional image (e.g., FDG uptake from a positron emission image), alone or in combination with other features, may indicate the likelihood of side-effect. In another example, survivability, such as two-year survivability, is predicted using blood biomarkers. The characteristics of a patient's blood may be measured and, alone or in combination with other features, may indicate the likelihood of survival. The modeling may be for survivability, side-effect, or both and may use one or more of the blood biomarker, uptake value, and bullae features.
    Type: Grant
    Filed: March 6, 2009
    Date of Patent: October 4, 2011
    Assignee: Siemens Medical Solutions USA, Inc.
    Inventors: Shipeng Yu, Glenn Fung, Cary Dehing-Oberije, Dirk de Ruysscher, Sriram Krishnan, R. Bharat Rao, Philippe Lambin