Intelligent medical diagnosis and misoprostol medical abortion nursing based on embedded system

Abstract Misoprostol tablets for miscarriage (abortion). It can be used to prevent heavy bleeding before and after delivery. The influence of drugs and increase their uterus contraction. Misoprostol should be available to those who can not get senior women post-abortion care services. Joint hospital care can be provided safely after pregnancy line care services, including outpatient care. Embedded Systems extends the real-time computer systems, and has a special function in the control of electromechanical systems. The proposed study used implantable linear parameters that used the dose threshold of misoprostol to change the implantable controller parameters. In this task, the value of the patient's health-related information from the sensor test is monitored. Depending on the patient's test details, the Misoprostol pills dosage has to be suggested. The gestational weeks compared with the patient last month period to fix the threshold value of dose. Finally, feedback should help with these comparisons obtained, then send cycle comparisons and database information after the controller like back. Built-in controller for updating an important factor of all information. Regarding the patient, it controls all the parameters of the board. Arduino is an open-source electronics prototyping platform. After reducing contraception abortion care, prevention of access to safe abortion services need Misoprostol pills unsafe abortions. The simulation results show that the implanted control method has much better accuracy misoprostol pills management potential.

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