Predicting early mortality in hemodialysis patients: a deep learning approach using a nationwide prospective cohort in South Korea.

Journal: Scientific reports
PMID:

Abstract

Early mortality after hemodialysis (HD) initiation significantly impacts the longevity of HD patients. This study aimed to quantify the effect sizes of risk factors on mortality using various machine learning approaches. A cohort of 3284 HD patients from the CRC-ESRD (2008-2014) was analyzed. Mortality risk models were validated using logistic regression, ridge regression, lasso regression, and decision trees, as well as ensemble methods like bagging and random forest. To better handle missing data and time-series variables, a recurrent neural network (RNN) with an autoencoder was also developed. Additionally, survival models predicting hazard ratios were employed using survival analysis techniques. The analysis included 1750 prevalent and 1534 incident HD patients (mean age 58.4 ± 13.6 years, 59.3% male). Over a median follow-up of 66.2 months, the overall mortality rate was 19.3%. Random forest models achieved an AUC of 0.8321 for first-year mortality prediction, which was further improved by the RNN with autoencoder (AUC 0.8357). The survival bagging model had the highest hazard ratio predictability (C-index 0.7756). A shorter dialysis duration (< 14.9 months) and high modified Charlson comorbidity index scores (7-9) were associated with hazard ratios up to 7.76 (C-index 0.7693). Comorbidities were more influential than age in predicting early mortality. Monitoring dialysis adequacy (KT/V), RAAS inhibitor use, and urine output is crucial for assessing early prognosis.

Authors

  • Junhyug Noh
    Department of Computer Science and Engineering, College of Engineering, Seoul National University, Seoul, Korea.
  • Sun Young Park
    Department of Anesthesiology and Pain Medicine, Soonchunhyang University Seoul Hospital, Soonchunhyang University College of Medicine, Seoul, South Korea.
  • Wonho Bae
    College of Information and Computer Sciences, University of Massachusetts Amherst, Massachusetts, United States.
  • 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.
  • Jong Soo Lee
    Department of Mathematical Sciences, University of Massachusetts, Lowell, MA, USA.
  • 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.
  • Chun Soo Lim
    Department of Internal Medicine, SMG-SNU Boramae Medical Center, Seoul, Korea.
  • Jung Pyo Lee
    Department of Internal Medicine, SMG-SNU Boramae Medical Center, Seoul, Korea.
  • Kyung Don Yoo
    Department of Internal Medicine, Dongguk University College of Medicine, Gyeongju, Korea.