Expert System Diagnosing Stroke Disease Using Android-Based Bayes Theorem Method


Sistem Pakar Mendiagnosa Pengyakit Stroke Menggunakan Metode Teorema Bayes Berbasis Android


  • (1) * Muhammad Arif Fa’i            Universitas Muhammadiyah Sidoarjo  
            Indonesia

  • (2)  Ade Eviyanti            Universitas Muhammadiyah Sidoarjo  
            Indonesia

    (*) Corresponding Author

Abstract

. In the current era there are still many people who are not routinely even reluctant to do sports and unwittingly such a lifestyle is stimulating bias for stroke. Moreover, coupled with the character of citizens who are reluctant to spend money and also take the time to go to the doctor to consult about his health. And also there are still many residents who underestimate some of the symptoms that can stimulate stroke. Stroke if left untreated and not immediately taken to an expert doctor can also have an impact on cell death in the brain so that it can cause paralysis of part of the limbs, if it has become severe can also result in death. Therefore, the authors of this study aimed to create an android-based application that can diagnose the potential of a person with stroke, which later from the diagnosis using this application is expected to help in taking further medical action if it has the potential of stroke. The test results using the blackbox method got the result that all the features and functions of the system run according to what has been designed. The author also conducted tests using the UAT method to get the results that the application has an attractive look, the diagnosis menu is very useful for users, the data of disease symptom information is informative, and also easy to use.

Downloads

Download data is not yet available.

References

Roger, V.L. et al., 2011. AHA Heart Disease and Stroke Statistics 2011 update: a report from the American Heart Association. Circulation 2011;123:e18-e209.)

Lumantobing. 1994. Stroke : Bencana Peredaran Darah di Otak. Jakarta : Fakultas Kedokteran Universitas Indonesia.

Caplan, Louis R. 1993. Stroke : A Clinical Approach 2 nd Edition. Massachussetts : Butterworth – Heinemann.

Siswanto. 2010. Kecerdasan Tiruan Edisi Kedua. Yogyakarta : Graha Ilmu.

Kusrini. 2006. Sistem Pakar Teori dan Aplikasi. Yogyakarta : CV Andi Offset.

Hamdani. (2010). Sistem Pakar Untuk Diagnosa Penyakit Mata Pada Manusia. Jurnal Informatika Mulawarman , 1.

Mulyadi. 2009. Diagnosis Kesulitan Belajar & Bimbingan Terhadap Kesulitan Belajar Khusus. Yogyakarta: Nuha Litera.

Mansjoer A., Suprohaita.,Wardhanis W. I.,Setiowulan W. 2000. Kapita Selekta Kedokteran. Media Aesculapius. FKUI. Jakarta.

Dewanto G., Suwono W.J., Riyanto B., Turana Y., 2009. Panduan Praktis Diagnosis & Tatalaksana Penyakit Saraf.Cetakan 1. Jakarta: EGC.

Geyer, James D. & Gomez, Camilo R. 2009. Stroke A Practical Approach. Philadelphia: Lippincott Williams & Wilkins, a Wolter Kluwer Business. Page: 15.

Picture in here are illustration from public domain image (License) or provided by the author, as part of their works
Published
2021-07-14
How to Cite
[1]
M. A. Fa’i and A. Eviyanti, “Expert System Diagnosing Stroke Disease Using Android-Based Bayes Theorem Method”, PELS, vol. 1, no. 2, Jul. 2021.

Most read articles by the same author(s)

<< < 1 2