BibTex Citation Data :
@article{JMASIF31464, author = {Alfin Arifah and Suhartono Suhartono}, title = {Sistem Prediksi Kista Ovarium Menggunakan Jaringan Syaraf Tiruan Metode Learning Vector Quantization (LVQ)}, journal = {Jurnal Masyarakat Informatika}, volume = {7}, number = {2}, year = {2017}, keywords = {}, abstract = {Kista ovarium (kista indung telur) adalah kantung berisi cairan yang terletak di ovarium. Masyarakat sering menganggap remeh penyakit kista ovarium karena gejala awal yang timbul tidak terlalu dirasakan, sehingga saat diketahui kondisi kista sudah membesar dan mengganggu aktivitas sehari-hari. Kista ovarium tidak terlalu bahaya, namun jika diabaikan dan tidak mendapatkan penanganan yang tepat, maka kista ovarium dapat berkembang menjadi kanker ovarium. Menurut World Health Organization (WHO), kanker ovarium masuk ke dalam kanker berbahaya keempat yang paling sering ditemukan pada wanita di seluruh dunia setelah kanker payudara, kolorektal, dan korpus uteri. Dari fakta tersebut, salah satu penyebab kanker ovarium adalah berawal dari kista ovarium yang tidak disadari dan tidak mendapatkan penanganan awal yang tepat. Salah satu langkah untuk mencegah kasus kanker ovarium adalah dengan mencegahnya dari penyebab paling awal yaitu pendeteksian dini kista ovarium melalui gejala yang muncul. Penelitian ini bertujuan untuk membangun sebuah sistem prediksi kista ovarium menggunakan Jaringan Saraf Tiruan (JST) metode Learning Vector Quantization. Variabel yang digunakan sebagai data prediksi berupa gejala fisik yang dialami. Terdapat 7 variabel gejala yang digunakan dalam penelitian ini. Seluruh data penelitian diambil berdasarkan data rekam medis dari RSUP Kariadi Semarang sejumlah 90 data. Identifikasi data latih dan data uji menggunakan strategi K-Fold dengan K bernilai 10. Hasil penelitian menunjukkan bahwa arsitektur jaringan LVQ terbaik untuk prediksi diperoleh pada nilai learning rate 0.02, epsilon 0.01, dan maksimum epoch 1000. Kombinasi parameter terbaik dalam penelitian menghasilkan tingkat akurasi 72.22%, error 27.78%, sensitivitas 28.65% dan spesifisitas 86.11%.}, issn = {2777-0648}, pages = {26--31} doi = {10.14710/jmasif.7.2.31464}, url = {https://ejournal.undip.ac.id/index.php/jmasif/article/view/31464} }
Refworks Citation Data :
Article Metrics:
Last update:
Last update: 2024-11-18 00:15:53
The authors who submit the manuscript must understand that the article's copyright belongs to the author(s) if accepted for publication. However, the author(s) grant the journal right of first publication with the work simultaneously licensed under a Creative Commons Attribution-ShareAlike 4.0 International License. Authors should also understand that their article (and any additional files, including data sets, and analysis/computation data) will become publicly available once published under that license. See our copyright policy. By submitting the manuscript to Jmasif, the author(s) agree with this policy. No special document approval is required.
The author(s) guarantee that:
The author(s) retain all rights to the published work, such as (but not limited to) the following rights:
Suppose the article was prepared jointly by more than one author. Each author submitting the manuscript warrants that all co-authors have given their permission to agree to copyright and license notices (agreements) on their behalf and notify co-authors of the terms of this policy. Jmasif will not be held responsible for anything arising because of the writer's internal dispute. Jmasif will only communicate with correspondence authors.
Authors should also understand that their articles (and any additional files, including data sets and analysis/computation data) will become publicly available once published. The license of published articles (and additional data) will be governed by a Creative Commons Attribution-ShareAlike 4.0 International License. Jmasif allows users to copy, distribute, display and perform work under license. Users need to attribute the author(s) and Jmasif to distribute works in journals and other publication media. Unless otherwise stated, the author(s) is a public entity as soon as the article is published.