US2024021323A1PendingUtilityA1

Methods, systems and devices for assessing wound healing

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Assignee: DECISIONQ CORPPriority: Oct 27, 2017Filed: Sep 22, 2023Published: Jan 18, 2024
Est. expiryOct 27, 2037(~11.3 yrs left)· nominal 20-yr term from priority
G16H 50/70A61B 5/7275G16H 50/30G16H 50/20G16H 10/60G01N 33/6887G16B 25/10A61B 5/0077A61B 5/445A61B 5/7267A61B 5/1073
60
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Claims

Abstract

The present disclosure generally relates to methods for determining the healing outcome of a wound, as well as related devices, systems and methods of treatment using a Bayesian Belief Network model that utilizes wound effluent biomarkers and clinical parameters for determining a patient-specific probability of the healing outcome of a wound.

Claims

exact text as granted — not AI-modified
1 . A computer-implemented method for determining a patient-specific wound healing probability, said method including:
 generating, by a processor, a training database comprising wound effluent biomarker levels and clinical parameters obtained from a plurality of patients having known wound healing outcomes;   generating, by the processor, a Bayesian Belief Network model using data from the training database, wherein the data includes an identification of at least one conditional dependence relationship between the known wound healing outcomes and the wound effluent biomarker levels and clinical parameters obtained from the plurality of patients;   receiving wound effluent biomarker levels and clinical parameters that have been collected for an individual patient into the Bayesian Belief Network model;   calculating, by the processor, a wound healing probability for the individual patient using the Bayesian Belief Network model, by comparing the wound effluent biomarker levels and clinical parameters of the individual patient to one or more reference profiles based upon the wound effluent biomarker levels and clinical parameters of the plurality of patients having known wound healing outcomes; and   outputting a patient-specific wound healing probability from the Bayesian Belief Network model to an interface or console of a computer or an electronic device for use by a clinician.   
     
     
         2 . The method of  claim 1 , wherein the wound effluent biomarker levels include cytokine expression levels for IL-2, IL-4, IL-15, IFN-γ, GM-CSF, or any combination thereof. 
     
     
         3 . The method of  claim 1 , wherein the clinical parameters include one or more of the following: wound size/volume; creatinine level and/or the presence of an abnormal creatinine level; anatomical main group; nutrition route for the patient and/or a need for peripheral IV nutrition; vacuum assisted closure; current or previously administered medication(s) given to the patient; or any subset thereof. 
     
     
         4 . The method of  claim 1 , wherein:
 the wound effluent biomarker levels include cytokine expression levels for IL-2, IL-4, IL-IFN-γ, GM-CSF, or any combination thereof; and   the clinical parameters include one or more of the following: wound size/volume; creatinine level and/or the presence of an abnormal creatinine level; anatomical main group; nutrition route for the patient and/or a need for peripheral IV nutrition; vacuum assisted closure; current or previously administered medication(s) given to the patient; or any subset thereof.   
     
     
         5 . The method of  claim 1 , further comprising:
 validating the Bayesian Belief Network model.   
     
     
         6 . The method of  claim 1 , wherein the Bayesian Belief Network model comprises a directed acyclic graph including a plurality of nodes, wherein each of the nodes includes at least two bins with each bin representing a value range of a wound effluent biomarker level or clinical parameter associated with that node. 
     
     
         7 . The method of  claim 1 , further comprising:
 updating the Bayesian Belief Network model using the wound effluent biomarker levels and clinical parameters for the individual patient and the patient-specific wound healing probability.   
     
     
         8 . The method of  claim 1 , wherein the wound healing probability comprises a prediction of wound closure success if the wound is closed at a next washout. 
     
     
         9 . The method according to  claim 1 , wherein wound effluent biomarker levels and clinical parameters that have been collected for an individual patient are received into the Bayesian Belief Network model using the graphical user interface of the computer or the electronic device. 
     
     
         10 . A system for determining a patient-specific wound healing probability, comprising:
 a processor configured to:
 generate a training database comprising wound effluent biomarker levels and clinical parameters obtained from a plurality of patients having known wound healing outcomes; 
 generate a Bayesian Belief Network model using data from the training database, wherein the data includes an identification of at least one conditional dependence relationship between the known wound healing outcomes and the wound effluent biomarker levels and clinical parameters obtained from the plurality of patients; 
 receive wound effluent biomarker levels and clinical parameters that have been collected for an individual patient into the Bayesian Belief Network model; 
 calculate a wound healing probability for the individual patient using the Bayesian Belief Network model by comparing the biomarker levels and clinical parameters of the individual patient to one or more reference profiles based upon the wound effluent biomarker levels and clinical parameters of the plurality of patients having known wound healing outcomes; and 
 output a patient-specific wound healing probability from the Bayesian Belief Network model to an interface or console of a computer or an electronic device for use by a clinician; and 
   a computer or an electronic device configured to:
 receive the output; and 
 display the received output to a clinician. 
   
     
     
         11 . A method of treating a wound in a patient in need thereof, comprising:
 obtaining wound effluent biomarker levels and clinical parameters for the patient;   providing the wound effluent biomarker levels and clinical parameters to a Bayesian Belief Network model which has been generated using data from a training database,   wherein the training database comprises wound effluent biomarker levels and clinical parameters obtained from a plurality of patients having known wound healing outcomes, and the data includes an identification of at least one conditional dependence relationship between known wound healing outcomes and the wound effluent biomarker levels and clinical parameters obtained from the plurality of patients;   receiving a recommended patient-specific wound closure time success probability calculated by the Bayesian Belief Network model; and   performing a wound closure procedure on the patient based on the received patient-specific wound closure time success probability.   
     
     
         12 . The method of  claim 11 , wherein the patient-specific wound closure success probability is received via an interface or console of an electronic device or computer. 
     
     
         13 . The method of  claim 11 , wherein:
 the wound effluent biomarker levels include cytokine expression levels for IL-2, IL-4, IL-IFN-γ, GM-CSF, or any combination thereof; and/or   the clinical parameters include one or more of the following: wound size/volume; creatinine level and/or the presence of an abnormal creatinine level; anatomical main group; nutrition route for the patient and/or a need for peripheral IV nutrition; vacuum assisted closure; current or previously administered medication(s) given to the patient; or any subset thereof.   
     
     
         14 . The method of  claim 11 , wherein the wound closure time comprises a prediction of whether a wound should be closed at a next washout. 
     
     
         15 . A method of treating a wound of a patient in need thereof, comprising: closing the wound based on the output of a Bayesian Belief Network model which has been trained using one or more wound effluent biomarker levels and clinical parameters obtained from a plurality of patients having known wound healing outcomes. 
     
     
         16 . The method of  claim 15 , wherein the:
 one or more wound effluent biomarker levels comprise cytokine expression levels for IL-2, IL-4, IL-15, IFN-γ, GM-CSF, or any combination thereof; and/or   one or more clinical parameters comprise: wound size/volume; wound severity; creatinine level and/or the presence of an abnormal creatinine level; anatomical main group; nutrition route for the patient and/or a need for peripheral IV nutrition; vacuum assisted closure; current or previously administered medication(s) given to the patient; or any subset thereof.   
     
     
         17 . The method of  claim 16 , wherein the closing of the wound occurs:
 within 24-48 hours of the generation of the output of the Bayesian Belief Network model and/or at a next washout of the wound.

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