General anesthesia invasive systolic pressure prediction method and system based on machine learning fusion

A technology of machine learning and prediction method, which is applied in the field of medical and surgical monitoring, can solve the problems of low prediction accuracy, achieve high prediction accuracy, reduce the risk of surgery, and improve the effect of prediction accuracy

Pending Publication Date: 2022-01-14
HEBEI UNIV OF TECH
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[0004] T.H.Wu et al. (T.H.Wu, G.K.Pang and E.W.Kwong, “Predicting Systolic Blood Pressure Using Machine Learning” in 7th International Conference on Information and Automation for Sustainability, Colombo, Sri Lanka, 2014, pp.1-6.) using machine learning techniques , to predict systolic blood pressure by modeling characteristic variabl

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  • General anesthesia invasive systolic pressure prediction method and system based on machine learning fusion
  • General anesthesia invasive systolic pressure prediction method and system based on machine learning fusion
  • General anesthesia invasive systolic pressure prediction method and system based on machine learning fusion

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[0032] The technical solutions of the present invention will be clearly and completely described below in conjunction with specific embodiments and drawings, but this does not limit the protection scope of the present application.

[0033] The present invention is an invasive systolic blood pressure prediction method based on machine learning fusion (method for short, see Figure 1-2 ), including the following steps:

[0034] Step S1, collect the patient's physical characteristic data and vital sign data, preprocess each data, divide the preprocessed data into training set, test set and verification set; slice the training set, test set and verification set respectively Sampling to obtain n training subsets, test subsets and verification subsets;

[0035] Step S1-1, the physical characteristic data include the patient's age, gender, height, weight, ASA grade and whether he has hypertension; the physical characteristic data and basic disease conditions should be entered into t...

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Abstract

The invention relates to a general anesthesia invasive systolic pressure prediction method and system based on machine learning fusion. The method comprises the following steps: S1, collecting the body feature data and vital sign data of a patient, carrying out the preprocessing of all data, and dividing the preprocessed data into a training set, a test set and a verification set; respectively performing slice sampling on the training set, the test set and the verification set to collect n training subsets, test subsets and verification subsets; s2, constructing a prediction model based on machine learning fusion, and predicting the general anesthesia invasive systolic pressure by using the prediction model; the prediction model comprises n primary learners and a secondary learner, and the output values of all the primary learners are used as the input of the secondary learner. The system comprises a database module, a data collection module, a prediction module and an interaction module. A prediction program is stored in the prediction module. According to the method, the defect of low prediction precision of a single algorithm is overcome, the input of the secondary learner is optimized, and the prediction precision is further improved.

Description

technical field [0001] The invention belongs to the technical field of medical surgical operation monitoring, and in particular relates to a method and system for predicting invasive systolic blood pressure under general anesthesia based on machine learning fusion. Background technique [0002] During general anesthesia surgery, invasive systolic blood pressure is an important basis for doctors to judge the patient's vital signs, which will directly affect the smooth progress of the operation. Accurately predicting changes in invasive systolic blood pressure during general anesthesia and making countermeasures in advance can effectively reduce the risk of surgery. risk. At present, life monitoring instruments are generally used to monitor invasive systolic blood pressure, blood oxygen, heart rate and other variables in real time during surgery. Doctors are required to artificially predict invasive systolic blood pressure based on clinical experience, and the results of artif...

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Application Information

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IPC IPC(8): G16H50/30G16H50/20G16H50/70G06N20/00
CPCG16H50/30G16H50/20G16H50/70G06N20/00
Inventor 陈紫祎张磊
Owner HEBEI UNIV OF TECH
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