Media Statistika (Dec 2015)

BAGGING CLASSIFICATION TREES UNTUK PREDIKSI RISIKO PREEKLAMPSIA (Studi Kasus : Ibu Hamil Kategori Penerima Jampersal di RSUD Dr. Moewardi Surakarta)

  • Moch. Abdul Mukid,
  • Triastuti Wuryandari,
  • Desy Ratnaningrum,
  • Restu Sri Rahayu

DOI
https://doi.org/10.14710/medstat.8.2.111-120
Journal volume & issue
Vol. 8, no. 2
pp. 111 – 120

Abstract

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Preeclampsia is a spesific pregnancy disease in which hypertency and proteinuria occurs after 20 weeks of pregnancy. Classification Trees is a statistical method that can be used to identify potency of expectant women suffering from preeclampsia. This research aim to predict the risk of preeclampsia based on some individual variables. They are parity, work status, history of hypertension of preeclampsia, body mass index, education and income. To improve the stability and accuracy of the prediction were used the Bootstrap Aggregating Classification Trees method. By the method, classification accuracy reach to 86%. Keywords : Pre-eclampsia, Bagging CART, Classification Accuracy