Penerapan Metode Regresi Logistik Untuk Memprediksi Peristiwa Biner Pasien Pasca Operasi Kanker Payudara


  • Sylvia Sujana Universitas Buana Perjuangan Karawang, Karawang, Indonesia
  • Ayu Ratna Juwita * Mail Universitas Buana Perjuangan Karawang, Karawang, Indonesia
  • Rahmat Rahmat Universitas Buana Perjuangan Karawang, Karawang, Indonesia
  • Sutan Faisal Universitas Buana Perjuangan Karawang, Karawang, Indonesia
  • (*) Corresponding Author
Keywords: Breast Cancer; Logistic Regression; Survival Prediction; Data Mining; Model Evaluation

Abstract

Breast cancer is the second leading cause of death in women worldwide. To overcome this growing problem, this study designed a model that can predict breast cancer by utilizing datasets and then processed using the Logistic Regression Prediction method. This method is appropriate for predicting the data used because of its ability to handle dependent variables that are categorical and provide outups in the form of probabilities. This study uses a dataset of 306 samples with 4 attributes. Data used Research steps include data collection, preprocessing, modeling with logistic regression and evaluating results using matrices such as confusion matrix, MAE, MSE, and R-Square. The results showed a prediction accuracy of 86%, with an MSE value of 0.137 and R-Square of 0.309. This study shows the effectiveness of logistic regression in predicting the survival of patients after breast cancer surgery. However, by applying different algorithms, this study can select the best set of significant attributes to increase the prediction accuracy value in postoperative breast cancer patients.

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Article History
Submitted: 2024-07-08
Published: 2024-07-26
Abstract View: 747 times
PDF Download: 682 times
How to Cite
Sujana, S., Juwita, A., Rahmat, R., & Faisal, S. (2024). Penerapan Metode Regresi Logistik Untuk Memprediksi Peristiwa Biner Pasien Pasca Operasi Kanker Payudara. Journal of Information System Research (JOSH), 5(4), 1095-1101. https://doi.org/10.47065/josh.v5i4.5521
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