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Showing 2 results for Nojavan

Atieh Sadat Danesh, Fatemeh Nojavan,
Volume 23, Issue 1 (April & May 2020)
Abstract

Background and Aim: From the viewpoint of Iranian Traditional Medicine (ITM), hemorrhoidal bleeding is not only an organic disease; it also indicates the quality and quantity of blood and temperaments in the body. According to this view, bleeding from different areas has several causes, two important causes of which are: a. vascular hyperemia and consequent blooding in bleeding-prone areas, and b. changes in blood quality that cause the arteries to open and bleed. This study, by reporting a case of hemorrhoidal bleeding, is an evidence of some therapeutic principles in ITM.
Case Report: Patient was a 39-year-old married woman with four children and warm-wet temperament complaining of heavy menstrual bleeding for one year. After three months of herbal drug administration, menstrual bleeding became normal. One month later, she had hemorrhoidal bleeding. Her bleeding was treated based on ITM method by removing the black bile (Soda) from the body, phlebotomy and leech therapy around the anus.
Ethical Considerations: This study has been approved by the Research Ethics Committee of Arak University of Medical Sciences with code: IR.MUQ.REC.1396.110.
Conclusion: Based on ITM, it seems that the cause of hemorrhoidal bleeding in this case is vascular hyperemia and poor blood quality following symptomatic treatment of heavy menstrual bleeding.

Majid Mehrad, Majid Nojavan, Sedigh Raissi, Mehrdad Javadi,
Volume 25, Issue 2 (June & July 2022)
Abstract

Background and Aim Most heart diseases show symptoms on ECG, but diagnosing heart disease with ECG requires the knowledge and experience of medical specialized. Because these specialists may not always be available, it is necessary to design tools to diagnose heart disease in these situations. In this paper, a two-stage approach based on artificial neural networks is designed to diagnose heart disease using ECG information.In this study, we aim to propose a two-stage approach using artificial neural network (ANN) to diagnose heart disease based ECG data.
Methods & Materials To design the proposed approach, first the ECG data of 861 patients referred to medical centers in Arak, Iran were collected. The data were examined based on the opinions of specialists. Then, 154 features from ECG were used as inputs to the proposed model. In the first stage, an ANN was used to detect the ECG status (usable and unusable). In the second stage, using the usable ECG data, an ANN was used to diagnose the presence or absence of heart disease. Finally, the performance of the two-stage approach was evaluated and its accuracy and precision in determining the ECG quality and heart disease diagnosis were determined.
Ethical Considerations This study was approved by the ethics committee of Arak University of Medical Sciences (Code: IR.ARAKMU.REC.1400.138). 
Results In the proposed approach, the ANN used for the determining the ECG status had a precision of 97.1% and an accuracy of 97.3%. The ANN used for the diagnosis of heart disease had a precision of 95.8% and an accuracy of 95.4%.
Conclusion Considering the high efficiency of the proposed approach in determining of ECG status and diagnosing heart disease, it is possible to use this approach to help the treatment staff.


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