Prediction of the Mortality Risk in Peritoneal Dialysis Patients using Machine Learning Models: A Nation-wide Prospective Cohort in Korea.

Journal: Scientific reports
PMID:

Abstract

Herein, we aim to assess mortality risk prediction in peritoneal dialysis patients using machine-learning algorithms for proper prognosis prediction. A total of 1,730 peritoneal dialysis patients in the CRC for ESRD prospective cohort from 2008 to 2014 were enrolled in this study. Classification algorithms were used for prediction of N-year mortality including neural network. The survival hazard ratio was presented by machine-learning algorithms using survival statistics and was compared to conventional algorithms. A survival-tree algorithm presented the most accurate prediction model and outperformed a conventional method such as Cox regression (concordance index 0.769 vs 0.745). Among various survival decision-tree models, the modified Charlson Comorbidity index (mCCI) was selected as the best predictor of mortality. If peritoneal dialysis patients with high mCCI (>4) were aged ≥70.5 years old, the survival hazard ratio was predicted as 4.61 compared to the overall study population. Among the various algorithm using longitudinal data, the AUC value of logistic regression was augmented at 0.804. In addition, the deep neural network significantly improved performance to 0.841. We propose machine learning-based final model, mCCI and age were interrelated as notable risk factors for mortality in Korean peritoneal dialysis patients.

Authors

  • Junhyug Noh
    Department of Computer Science and Engineering, College of Engineering, Seoul National University, Seoul, Korea.
  • Kyung Don Yoo
    Department of Internal Medicine, Dongguk University College of Medicine, Gyeongju, Korea.
  • Wonho Bae
    College of Information and Computer Sciences, University of Massachusetts Amherst, Massachusetts, United States.
  • Jong Soo Lee
    Department of Mathematical Sciences, University of Massachusetts, Lowell, MA, USA.
  • Kangil Kim
    School of Electrical Engineering and Computer Science, Gwangju Institute of Science and Technology (GIST), Gwangju, South Korea.
  • Jang-Hee Cho
    Department of Internal Medicine, Kyungpook National University College of Medicine, Daegu, South Korea.
  • Hajeong Lee
    Department of Internal Medicine, Seoul National University Hospital, Seoul, Korea.
  • Dong Ki Kim
    Department of Internal Medicine, Seoul National University Hospital, Seoul, Korea.
  • Chun Soo Lim
    Department of Internal Medicine, SMG-SNU Boramae Medical Center, Seoul, Korea.
  • Shin-Wook Kang
    Department of Internal Medicine, College of Medicine, Institute of Kidney Disease Research, Yonsei University, Seoul, Republic of Korea.
  • Yong-Lim Kim
    Department of Internal Medicine, Kyungpook National University College of Medicine, Daegu, South Korea.
  • Yon Su Kim
    Department of Internal Medicine, Seoul National University Hospital, Seoul, Korea.
  • Gunhee Kim
    Department of Computer Science and Engineering, College of Engineering, Seoul National University, Seoul, Korea. gunhee.kim@gmail.com.
  • Jung Pyo Lee
    Department of Internal Medicine, SMG-SNU Boramae Medical Center, Seoul, Korea.