4.7 Article

Identifying the Association of Time-Averaged Serum Albumin Levels with Clinical Factors among Patients on Hemodialysis Using Whale Optimization Algorithm

Journal

MATHEMATICS
Volume 10, Issue 7, Pages -

Publisher

MDPI
DOI: 10.3390/math10071030

Keywords

feature selection; hemodialysis; time-averaged serum albumin; whale optimization algorithm

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Funding

  1. Ministry of Science and Technology, R.O.C. [108-2221-E-992-031-MY3]

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This study employed a whale optimization algorithm-based feature selection model to interpret the complex association between time-averaged serum albumin (TSA) and clinical factors among hemodialysis patients. By conducting a multifactor analysis, an optimal multifactor TSA-associated model was constructed, which exhibited superior performance.
Time-averaged serum albumin (TSA) is commonly associated with clinical outcomes in hemodialysis (HD) patients and considered as a surrogate indicator of nutritional status. The whale optimization algorithm-based feature selection (WOFS) model could address the complex association between the clinical factors, and could further combine with regression models for application. The present study aimed to demonstrate an optimal multifactor TSA-associated model, in order to interpret the complex association between TSA and clinical factors among HD patients. A total of 829 HD patients who met the inclusion criteria were selected for analysis. Monthly serum albumin data tracked from January 2009 to December 2013 were converted into TSA categories based on a critical value of 3.5 g/dL. Multivariate logistic regression was used to analyze the association between TSA categories and multiple clinical factors using three types of feature selection models, namely the fully adjusted, stepwise, and WOFS models. Five features, albumin, age, creatinine, potassium, and HD adequacy index (Kt/V level), were selected from fifteen clinical factors by the WOFS model, which is the minimum number of selected features required in multivariate regression models for optimal multifactor model construction. The WOFS model yielded the lowest Akaike information criterion (AIC) value, which indicated that the WOFS model could achieve superior performance in the multifactor analysis of TSA for HD patients. In conclusion, the application of the optimal multifactor TSA-associated model could facilitate nutritional status monitoring in HD patients.

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