Abstract

Infectious disease is a very dangerous disease with a high mortality rate. Delays in handling the spread of an infectious disease can be minimized using an expert system. This study uses an expert system as a disease consulting service that is integrated with the health care system. Integration with the health care system is used for the knowledge acquisition process. The knowledge base on the expert system uses patient medical record data obtained through the health care system. The expert system can diagnose infectious diseases of sore throat (Pharyngitis), diphtheria, dengue fever, Typhoid fever, tuberculosis, and leprosy. The knowledge acquisition process produces 43 symptoms. These symptoms are used to diagnose new cases using Case-Based Reasoning (CBR) and Dempster-Shafer methods. In the CBR method, the similarity measurement process is determined by comparing the K-Nearest Neighbor, Minkowski Distance, and 3W-Jaccard similarity measurement methods. The expert system obtains accuracy values ​​for the CBR K-Nearest Neighbor, CBR Minkowski Distance, and CBR 3W-Jaccard methods at a threshold of 70%, respectively 65.71%, 80%, and 85.71%. The average length of retrieve time required for each similarity method is 0.083s, 0.107s, and 6.325s, respectively. While the diagnosis of disease with Dempster-Shafer gets an accuracy value of 88.57%.

Highlights

  • Nilai yang sebenarnya didapatkan dari data pengujianMasing-masing gejala Interval nilai akurasi berada pada range 0% - 100%, tersebut memiliki nilai tingkat kepercayaan (believe) maka semakin tinggi nilai akurasi menunjukkan yang telah ditentukan oleh pakar

  • Infectious disease is a very dangerous disease with a high mortality rate

  • This study uses an expert system as a disease consulting service that is integrated with the health care system

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Summary

Nilai yang sebenarnya didapatkan dari data pengujian

Masing-masing gejala Interval nilai akurasi berada pada range 0% - 100%, tersebut memiliki nilai tingkat kepercayaan (believe) maka semakin tinggi nilai akurasi menunjukkan yang telah ditentukan oleh pakar. Berdasarkan persamaan 6, simbol m(Y) merupakan nilai kepercayaan gejala penyakit (Y). Berdasarkan persamaan 7, nilai ketidakpercayaan gejala penyakit (Y) / plausibility didapatkan dari 1 - nilai kepercayaan gejala penyakit (Y). Gejala penyakit yang dipilih oleh pengguna dapat lebih dari 1, sehingga diperlukan perhitungan kombinasi dari. Perhitungan Berdasarkan tabel 1, seorang pengguna/pasien memiliki kombinasi dari beberapa gejala dikenal dengan 8 jenis gejala. Berikut ini merupakan hasil perhitungan yaitu tingkat kepercayaan dari suatu gejala. Sedangkan nilai similaritas lokal dan similaritas global yang θ merupakan frame of discernment (FOD) yaitu semesta pembicaraan dari sekumpulan jenis penyakit disebut diimplementasikan pada kasus lama dengan nomor rekam medis RM024

Similaritas Global
Diagnosis Penyakit
Sakit Tenggorokan
Suara serak
CBR dengan Minkowski Distance
Ucapan Terimakasih
Kinerja Algoritma Similaritas berbobot dalam Case Based
Mendiagnosis Penyakit Stroke Hemoragik dan Iskemik
Diagnosis Penyakit Kulit pada Manusia dengan Metode
Findings
Reasoning Diagnosis Kerusakan Mesin Pada Mobil
Full Text
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