METHOD AND APPARATUS TO GUIDE MECHANICAL VENTILATION
20220168527 · 2022-06-02
Inventors
Cpc classification
A61M16/0003
HUMAN NECESSITIES
A61M2205/3379
HUMAN NECESSITIES
G16H20/40
PHYSICS
A61M16/026
HUMAN NECESSITIES
Y02T90/00
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
International classification
A61M16/00
HUMAN NECESSITIES
G16H20/40
PHYSICS
Abstract
A method and device for developing an automated digital cloning method to create an accurate, predictive and personalized virtual patient model enabling personalized precision mechanical ventilation care.
Claims
1. A method for managing the mechanical ventilation of a patient, comprising the following steps: a) placing a patient on a mechanical ventilator; b) measuring pressure, flow, and resulting volume of air delivered to the patient at a given ventilator setting and mode; c) constructing a patient specific lung mechanics model based upon the patient's breathing in response to the delivered air pressure, flow, and resulting volume; d) predicting a pressure-volume (PV) loop and lung elastance values of the patient's lung in response to changes in the ventilator settings or mode based on the patient specific lung mechanics model; e) adjusting the mechanical ventilator settings to maintain the patient's response within a desired range of one or more of pressure, flow, and volume values; f) monitoring changes to the patient's lung mechanics in real time; and g) repeating steps d) through f) to maintain one or more of patient pressure, flow, and volume values within a desired range until the patient can be removed from the ventilator.
2. The method claim 1, further comprising predicting a retained or lost end expiratory volume (V.sub.frc) when a PEEP is increased or decreased.
3. The method of claim 1, further comprising predicting distension of the lungs using a value of k2end.
4. The method of claim 1, further comprising collecting and aggregating data over time, patients, cohorts/sub-cohorts, or other groups to optimize models, methods and/or protocols for these groups.
5. The method of claim 2, where the value of V.sub.frc recruited or lost end expiratory lung volume as positive end expiratory pressure (PEEP) is used to determine ventilation care choices in whole or in part with other predicted or clinical variables.
6. The method of claim 3, where predicted values of distension and k2end are used to determine ventilation care choices in whole or in part with other predicted or clinical variables.
7. The method of claim 2, where predicted distension, k2end and/or V.sub.frc are used to determine ventilation care choices in whole or in part with other predicted or clinical variables.
8. The method of claim 1, further comprising estimating and reconstructing with additional modeling the PV loop unaffected by asynchrony.
9. The method of claim 8, where the reconstructed PV loop is compared to the PV loop to estimate an asynchrony magnitude.
10. The method of claim 8, further comprising compensating for the asynchrony when adjusting the mechanical ventilator settings.
11. A device for controlling mechanical ventilation of a patient, comprising: a processor programmed to develop a personalized lung mechanics model for forecasting individualized mechanical ventilator parameters configured to obtain real-time lung mechanics parameters based on the model; a memory; a data input; and a display.
12. The device of claim 11, wherein the personalized lung mechanics model incorporates a nonlinear hysteresis loop analysis.
13. The device of claim 11, wherein the personalized lung mechanics includes a measured PV loop.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
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DETAILED DESCRIPTION
[0033] Presented is a virtual patient or digital clone based on a computer or computational model of patient-specific lung physiology and mechanics capable of augmenting clinical data and enabling a more comprehensive picture of actual patient-specific state and potential response to care (
[0034] Disclosed is a method for managing the mechanical ventilation of a patient which includes the following steps:
[0035] a) placing a patient on a mechanical ventilator;
[0036] b) measuring pressure, flow, and resulting volume of air delivered to the patient at any given ventilator setting and mode;
[0037] c) constructing a patient specific lung mechanics model based upon the patient's breathing in response to the delivered air pressure, flow, and resulting air volume;
[0038] d) predicting a pressure-volume (PV) loop and lung elastance values of the patient's lung in response to any possible changes in the ventilator settings or mode based on the patient specific lung mechanics model;
[0039] e) adjusting the mechanical ventilator settings to maintain the patient's response within a desired, e.g., clinically set safe, range of pressure, flow, and/or volume values;
[0040] f) monitoring changes to the patient's lung mechanics in real time; and
[0041] g) repeating steps d) through f) to maintain patient pressure, flow, and/or volume values within a desired, e.g., clinically set safe, range until the patient recovers and can be removed from the ventilator.
[0042] Further identifying the presence of asynchrony in a breath, as well as its magnitude, and compensating for the asynchrony in the response prediction by using additional modeling to reconstruct the patient's PV loop for that breath in step b) above which is unaffected by the asynchronous breathing effort that alters the measured pressure, flow, and volume delivered by the ventilator due to patient breathing effort.
[0043] Steps a)-g) above are similar for all forms of invasive MV modes and can be extended to non-invasive ventilation by adding a model for spontaneous breathing effort.
[0044] The present invention relates to an automated digital cloning method to create an accurate, predictive, and personalized virtual patient model enabling personalized precision MV care. A nonlinear hysteresis loop model (HLM) is proposed from the perspective of mechanical-physiological relevance for the dynamic respiratory system as the foundation computational model to capture essential nonlinear lung mechanics. The virtual patient model is created with the identified HLM model and prediction functions using clinical measurements at a low or given PEEP level. The additional lung volume retained during a change of PEEP, denoted V.sub.frc, is clinically important and is also predicted using the virtual patient model. The current method includes personalized and patient-specific modeling of a mechanically ventilated patient which predicts the patient's lung mechanics and their response to changes in ventilation care in real-time.
[0045] In accordance with one aspect of the present invention, there is provided a method for guiding the mechanical ventilation of a patient including the steps of:
[0046] a) measuring the pressure and flow delivered to the patient by the ventilator, for example, either from the ventilator's sensors or from additional sensors added to the breathing circuit;
[0047] b) using nonlinear hysteresis analysis (HLA) to find compliances (1/stiffness values) and resistances for use in nonlinear hysteresis loop model (HLM), including identifying the presence of asynchrony;
[0048] c) using an algorithm, or other method, to create a patient specific lung mechanics model every breath or at any reasonable clinical interval for the patient, including the ability to predict the evolution of compliance (1/stiffness) using the HLM or any similar relevant model, including the ability to reconstruct the pressure-volume (PV) loop waveforms unaltered by asynchrony of any type to estimate asynchrony magnitude using this model;
[0049] d) predicting the pressure-volume (PV) loop response of the patient's lung to any changes in ventilator settings based on predicting the evolution of compliance;
[0050] e) adjusting mechanical ventilation (MV) mode or settings to optimize care to clinically specified guidelines;
[0051] f) monitoring the patient; and
[0052] g) repeating steps a) through f) at any clinically relevant interval until a desired state of health is achieved.
[0053] In an embodiment, the hysteresis loop analysis is based on clinical input data (
[0054] Next an HLM model is used with elastance evolution basis functions to predict parameters as a function of PEEP levels. This HLM model, or any similar relevant model, can also be used to reconstruct PV loops and waveforms unaltered by asynchrony, thus enabling identification of the underlying lung mechanics, as well as quantification of the magnitude of asynchrony as the area between the measured and reconstructed and unaltered PV loops, the differences in peak pressure and/or volume, or any similar metric of pressure, volume, flow, or energy difference in the work of breathing.
[0055] A dynamic equation of motion for a relevant and effective HLM lung mechanics model is defined:
where V is the volume of air delivered to the lungs, V.sub.h1 and V.sub.h2 are hysteretic volume response during inspiration and expiration, respectively, K.sub.e represents the alveolar recruitment elastance, named k2 in this approach, K.sub.1 and K.sub.2, are determined by two nonlinear hysteretic springs for alveolar hysteresis elastance during inspiration and expiration, respectively, R is the airway resistance, PEEP is the positive end-expiratory pressure, and f.sub.v(t) is the steady-state input force. This is shown in
[0056] The model developed with equation (1) is used to predict PV loop response of lung to changes in ventilator settings. Predicted PV loops can be examined to determine changes to minimize elastance and distension, while maximizing recruited lung volume and/or minimising risk of distension and VILI. Elastance (1/compliance) is the pressure required to inflate lungs per unit of lung inflation volume. Distension is swelling or stretching of alveoli or lung airways caused by excessive internal pressure. Recruited lung volume (V.sub.frc) can be maximized while distension is minimized, where V.sub.frc and distension are both variables which can be used to guide MV in addition to minimising recruitment elastance and peak pressures. An example output of the model is shown in
[0057] A measure of prediction accuracy can be seen in
[0058] In particular,
[0059] The model allows the clinician to make adjustments to settings to optimize care while minimizing any harm to the patient by predicting lung response and outcomes before changing settings, which reduces risk of unintended VILI or harm. The overall goal is to personalise and optimise care with the desired result of decreasing time on mechanical ventilation and improving patient outcomes, where decreased time of MV has been shown to result in decreased patient mortality.
[0060] The automated digital cloning method creates an accurate, predictive, and personalized virtual patient model enabling personalized precision MV care. A nonlinear hysteresis loop model (HLM) is proposed from the perspective of mechanical-physiological relevance for the dynamic respiratory system as the foundation computational model to capture essential nonlinear lung mechanics. The virtual patient model is created with the identified HLM model and prediction functions using clinical measurements at any given PEEP level. It can also be used to identify the incidence or presence of asynchrony, the type of asynchrony, and its magnitude by identifying additional HLA segments, as shown in
[0061] Given the values of lung stiffness and the HLM model, the PV loop and V.sub.frc can be predicted for any change in ventilator settings (pressures and/or flows and volumes delivered). These predictions can be used to adjust PEEP or pressure and flow inputs delivered to the patient to provide safer care, such as ventilating the patient at the PEEP associated with minimum lung elastance, and/or maximizing V.sub.frc, and/or minimizing peak inspiratory pressures or volumes to safe levels to minimise risk of ventilator induced lung injury (VILI), among many possibilities.
[0062] The disclosure will be further illustrated with reference to the following specific examples. It is understood that these examples are given by way of illustration and are not meant to limit the disclosure or the claims to follow.
[0063] Example 1: measured pressure and flow data of patient breathing were used to construct the PV loop at the baseline PEEP as PEEP1, as shown in
[0064] Example 2: as shown in
[0065] Although various embodiments have been depicted and described in detail herein, it will be apparent to those skilled in the relevant art that various modifications, additions, substitutions, and the like can be made without departing from the spirit of the disclosure and these are therefore considered to be within the scope of the disclosure as defined in the claims which follow.