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Hypertensive nephropathy prediction method and system based on incremental neural network model

A neural network model and technology for hypertensive nephropathy, applied in the medical field, can solve the problems of inability to predict hypertensive nephropathy, poor specificity, inability to judge the logical relationship between data and data, and variables, etc.

Inactive Publication Date: 2017-01-04
湖南老码信息科技有限责任公司
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Problems solved by technology

However, due to the complexity and unpredictability of the human body and diseases, the detection and signal expression of biological signals and information in the form of expression and change law (self-change and change after medical intervention), the acquired data and information There are very complex nonlinear relationships in analysis, decision-making and many other aspects
Therefore, the use of traditional data matching can only be blind data screening, unable to judge the logical relationship between data and variables, and the obtained value range deviation is large, resulting in very poor specificity of system prediction, so the current domestic health management The system cannot effectively predict the individual's hypertensive nephropathy
[0003] Previously, most of the predictions of hypertensive nephropathy used the BP neural network model, but when new detection data is generated, the neural network model must be trained again, and the calculation efficiency is extremely low
And when the scale of system users increases, the server will not be able to complete the training tasks in time

Method used

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  • Hypertensive nephropathy prediction method and system based on incremental neural network model
  • Hypertensive nephropathy prediction method and system based on incremental neural network model
  • Hypertensive nephropathy prediction method and system based on incremental neural network model

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Embodiment

[0055] Such as figure 1 As shown, a kind of hypertensive nephropathy prediction method based on incremental neural network model provided by the present invention comprises the following steps:

[0056] Step (1), obtaining the etiology and pathology data source of hypertensive nephropathy in the hospital and daily monitoring data of patients, thereby establishing a daily data database of hypertensive nephropathy;

[0057] Among them, the daily monitoring data is 13 items of data, and the 13 items of data are age, gender, heart rate, body fat, body temperature, drinking water volume and frequency, weight, sleep time and quality, walking distance (daily), systolic blood pressure, diastolic blood pressure Waiting for 13 items of data, the present invention establishes 13 dimension vectors with 13 items of data;

[0058] Step (2), training the neural network model in an off-line manner according to the hypertensive nephropathy daily data database established in step (1), to obtai...

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Abstract

The invention discloses a hypertensive nephropathy prediction method based on an incremental neural network model, comprising the following steps of: establishing a daily data database of hypertensive nephropathy; training a neural network model; collecting and transmitting daily life data to a server; extracting the current data from the daily data record table of a user to form the n-dimensional vector, and then normalizing and inputting the data into the neural network model of hypertensive nephropathy for predicting risk probability of hypertensive nephropathy. Whether the risk degree W of hypertensive nephropathy is greater than or equal to 3 is judged by the intelligent household hypertensive nephropathy nursing instrument; the user is reminded of having physical examination in hospital when receiving a warning alert, the examination results are transmitted back to the server through the intelligent household nephropathy nursing instrument, the server determines whether the examination results are correct or not. When the examination results are incorrect, the incremental algorithm is implemented and the neural network model is modified dynamically. The hypertensive nephropathy prediction method predicts accurately, and the neural network model is tailored to each user.

Description

technical field [0001] The invention belongs to the field of medical technology, in particular to a method and system for predicting hypertensive nephropathy based on an incremental neural network model. Background technique [0002] At present, all health management systems in China have set up the prediction and evaluation of hypertensive nephropathy, and the prediction method used is data matching. The principle is to input personal life data into the system, and the system matches the fixed data to obtain the probability of disease. However, due to the complexity and unpredictability of the human body and diseases, the detection and signal expression of biological signals and information in the form of expression and change rules (self-change and changes after medical intervention), the obtained data and information Analysis, decision-making and many other aspects have very complex nonlinear connections. Therefore, the use of traditional data matching can only be blind...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G06F19/00
CPCG16H50/20G16H50/70
Inventor 杨滨
Owner 湖南老码信息科技有限责任公司
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