Systems and methods for automatically classifying wide complex tachycardias (wcts)
US-2024423549-A1 · Dec 26, 2024 · US
US9339241B2 · US · B2
| Field | Value |
|---|---|
| Publication number | US-9339241-B2 |
| Application number | US-201214353736-A |
| Country | US |
| Kind code | B2 |
| Filing date | May 25, 2012 |
| Priority date | May 27, 2011 |
| Publication date | May 17, 2016 |
| Grant date | May 17, 2016 |
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Real-time, short-term analysis of ECG, by using multiple signal processing and machine learning techniques, is used to determine counter shock success in defibrillation. Combinations of measures when used with machine learning algorithms readily predict successful resuscitation, guide therapy and predict complications. In terms of guiding resuscitation, they may serve as indicators and when to provide counter shocks and at what energy levels they should be provided as well as to serve as indicators of when certain drugs should be provided (in addition to their doses). For cardiac arrest, the system is meant to run in real time during all current resuscitation procedures including post-resuscitation care to detect deterioration for guiding care such as therapeutic hypothermia.
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What we claim is as follows: 1. A computer-implemented method for automated monitoring and online assessment of chances of survival for a patient in cardiac arrest, the method comprising: obtaining an ECG signal from the patient; preprocessing the ECG signal to remove high frequency noise and baseline jumps caused by noise and interference; performing, in a first processor, non-linear characterization of the preprocessed ECG signal and calculating a prototype distance of the preprocessed ECG signal; performing, in a second processor, feature extraction of the preprocessed ECG signal with a complex wavelet transform; performing, in a third processor, attribute extraction from the preprocessed ECG signal; performing, in a fourth processor, attribute extraction from an end tidal CO 2 (ETCO 2 ) signal; receiving distance values from non-linear characterization of the preprocessed ECG signal, extracted features of the preprocessed time-series ECG signal, attributes extracted from the ETCO 2 signal, and attributes extracted from Dual-Tree Complex Wavelet Decomposition of the pre-processed ECG signal, and performing a feature selection using the received data with a predictive model; using machine learning to classify results of the feature selection process; generating a shock success prediction, which results in return of spontaneous circulation (ROSC); generating decompensation and re-arrest prediction; and recommending therapeutic alternatives and medications for guiding therapy. 2. The method of claim 1 , further comprising integrating categorical data, comprising at least one of demographics, medical history and medication information, into the feature database. 3. The method of claim 1 , further comprising performing attribute extraction from other continuous physiologic signals, wherein the continuous physiologic signals comprises at least one of tissue impedance, vascular waveform data from piezoelectric sensors or other devices capable of obtaining vascular waveform data, tissue oxygenation signals from near infrared spectroscopy and other tissue oxygenation devices, and wherein the step of receiving includes receiving attributes extracted from other physiologic signals and categorical variables. 4. A system for automated monitoring and online assessment of chances of survival for a patient in cardiac arrest, the system comprising: an ECG device for providing an ECG signal from the patient; a filter for preprocessing the ECG signal to remove high frequency noise and baseline jumps caused by noise and interference; a first signal processor for performing non-linear characterization of the preprocessed ECG signal and calculating a prototype distance of the preprocessed ECG signal; a second signal processor for performing feature extraction of the preprocessed ECG signal with complex wavelet transform; a third signal processor for performing attribute extraction from the preprocessed ECG signal; a fourth signal processor for performing attribute extraction from an end tidal CO 2 (ETCO 2 ) signal; feature extraction means receiving distance values from non-linear characterization of the preprocessed ECG signal, extracted features of the preprocessed time-series ECG signal, attributes extracted from the ETCO 2 signal, and the attributes extracted from Dual-Tree Complex Wavelet Decomposition of the pre-processed ECG signal and performing a feature selection using the received data with a predictive model; a machine learning system for classifying results of the feature selection process, said machine learning system generating a shock success prediction, which results in return of spontaneous circulation (ROSC), generating decompensation and re-arrest prediction, and recommending therapeutic alternatives and medications for, guiding therapy. 5. The system of claim 4 , further comprising means for inputting categorical data, comprising at least one of demographics, medical history and medication information, into the feature database of the machine learning system. 6. The system of claim 4 , further comprising means for performing attribute extraction from other continuous physiologic signals, wherein the continuous physiologic signals comprises at least one of tissue impedance, vascular waveform data from piezoelectric sensors or other devices capable of obtaining vascular waveform data, tissue oxygenation signals from near infrared spectroscopy and other tissue oxygenation devices, and wherein the extracted attributes from other continuous physiologic signals are input to the machine learning system.
Diagnosis combined with treatment in closed-loop systems or methods (A61B5/0036 takes precedence) · CPC title
using specific filters therefor, e.g. Kalman or adaptive filters (specific diagnostics methods using using bioelectric or biomagnetic signals A61B5/316) · CPC title
Measuring electrical impedance or conductance of a portion of the body · CPC title
involving training the classification device · CPC title
Monitoring; Protecting · CPC title
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