Predicting Multiple Outcomes Associated with Frailty based on Imbalanced Multi-label Classification

被引:1
作者
Tarekegn, Adane Nega [1 ,4 ]
Michalak, Krzysztof [2 ]
Costa, Giuseppe [3 ]
Ricceri, Fulvio [3 ]
Giacobini, Mario [5 ]
机构
[1] Univ Bergen, Dept Informat Sci & Media Studies, Bergen, Norway
[2] Wroclaw Univ Econ & Business, Dept Informat Technol, Wroclaw, Poland
[3] Univ Turin, Dept Clin & Biol Sci, Turin, Italy
[4] Bahir Dar Univ, Bahir Dar Inst Technol, Fac Comp, Bahir Dar, Ethiopia
[5] Univ Turin, Dept Vet Sci, Data Anal & Modeling Unit, Turin, Italy
关键词
Frailty prediction; Hybrid resampling; Imbalanced data; Multi-label classification; Resampling algorithm; CLASSIFIERS; TESTS;
D O I
10.1007/s41666-024-00173-6
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Frailty syndrome is prevalent among the elderly, often linked to chronic diseases and resulting in various adverse health outcomes. Existing research has predominantly focused on predicting individual frailty-related outcomes. However, this paper takes a novel approach by framing frailty as a multi-label learning problem, aiming to predict multiple adverse outcomes simultaneously. In the context of multi-label classification, dealing with imbalanced label distribution poses inherent challenges to multi-label prediction. To address this issue, our study proposes a hybrid resampling approach tailored for handling imbalance problems in the multi-label scenario. The proposed resampling technique and prediction tasks were applied to a high-dimensional real-life medical dataset comprising individuals aged 65 years and above. Several multi-label algorithms were employed in the experiment, and their performance was evaluated using multi-label metrics. The results obtained through our proposed approach revealed that the best-performing prediction model achieved an average precision score of 83%. These findings underscore the effectiveness of our method in predicting multiple frailty outcomes from a complex and imbalanced multi-label dataset.
引用
收藏
页码:594 / 618
页数:25
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