Gestation diabetes risk monitoring system based on dynamic physics and physical and chemical factors

A physical and chemical factor and risk monitoring technology, applied in the direction of electrical digital data processing, special data processing applications, instruments, etc., can solve the problems of not performing dynamic monitoring, not forming a comprehensive and objective evaluation system, and the overall evaluation of high-risk factors is not objective enough

Active Publication Date: 2014-09-24
BEIJING UNIV OF TECH
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Problems solved by technology

[0006] At present, there are many studies on the high risk factors of gestational diabetes mellitus, involving the clinical examination physiological indicators and clinical epidemiological factors of pregnant women, but only the analysis of a single factor or a few factors, which is one-sided and non-diversified research , all based on the growth rate of body mass index during the entire pregnancy, without dynamic monitoring; there are signif

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  • Gestation diabetes risk monitoring system based on dynamic physics and physical and chemical factors
  • Gestation diabetes risk monitoring system based on dynamic physics and physical and chemical factors
  • Gestation diabetes risk monitoring system based on dynamic physics and physical and chemical factors

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Embodiment Construction

[0124]The present invention mainly provides a gestational diabetes risk monitoring system based on dynamic physics and physical and chemical factors, which is characterized in that it is a device for dynamically monitoring the risk of gestational diabetes in pregnant women and can calculate the risk value in real time and prompt the risk status. The device is provided with: a computer 1, a dial switch array 2, a resistance array 3 and an LED alarm module 4 for the risk of gestational diabetes, such as figure 1 shown, where:

[0125] Computer 1, equipped with:

[0126] Information import module 11 of dynamic physical examination and physical and chemical factors of pregnant women,

[0127] Logic switch array module 12 of risk factors for gestational diabetes in pregnant women,

[0128] The logistic regression value calculation module for the risk of gestational diabetes in pregnant women13,

[0129] Define the following parameters:

[0130] The first trimester is expressed ...

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Abstract

The invention provides a gestation diabetes risk monitoring system based on dynamic physics and physical and chemical factors and belongs to the field of medical instruments in the department of obstetrics and gynecology. The gestation diabetes risk monitoring system is characterized by comprising a computer, a toggle switch array, a resistor array and a gestation diabetes pathogenesis risk LED alarming module; a pregnant women information input module of dynamic physics check and physical and chemical factors, a logic switch array module of pregnant women gestation diabetes pathogenesis risk factors and logic regression value computation module of pregnant women gestation diabetes pathogenesis risk are arranged in the computer; a voltage comparison module and an LED array are arranged in the gestation diabetes pathogenesis risk LED alarming module. According to the invention, the logic switch value is utilized to control the make-and-break state of the toggle switch; a risk factor value in the logic regression manner is utilized to control the resistance value of the resistor array, so as to indicate the relative risk degree; the resistance value of the resistor array is utilized to control a voltage comparator, so as to output electrical level and light the LED alarm. According to the invention, the risk degree of the dynamic gestation diabetes can be comprehensively evaluated from multivariate physical and chemical factors and the real-time alarm can be conducted.

Description

technical field [0001] The invention relates to the field of medical devices, in particular to a gestational diabetes monitoring system based on dynamic physical inspection and physical and chemical factors. Background technique [0002] Gestational diabetes mellitus (GDM) refers to varying degrees of abnormal glucose metabolism that occurs or is first discovered during pregnancy. High blood sugar in pregnant women will affect the health of perinatal children, fetal malformation, neonatal respiratory distress syndrome, neonatal hypoglycemia, neonatal erythrocytosis, hypertrophic cardiomyopathy and other complications. The onset of gestational diabetes is relatively hidden. Most patients have no symptoms and signs in the first and second trimesters of pregnancy, and their fasting blood sugar is mostly normal. It can only be discovered by measuring fasting blood sugar or glucose tolerance test when doing sugar screening tests or complications in the third trimester of pregnanc...

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Application Information

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IPC IPC(8): G06F19/00
Inventor 张松王薇薇杨琳王阳杨益民李旭雯杨星星顾冠雄
Owner BEIJING UNIV OF TECH
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