Early prediction of chronic kidney disease based on ensemble of deep learning models and optimizers

Dina Saif, Amany M. Sarhan, Nada M. Elshennawy
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Abstract

Recent studies have proven that data analytics may assist in predicting events before they occur, which may impact the outcome of current situations. In the medical sector, it has been utilized for predicting the likelihood of getting a health condition such as chronic kidney disease (CKD). This paper aims at developing a CKD prediction framework, which forecasts CKD occurrence over a specific time using deep learning and deep ensemble learning approaches. While a great deal of research focuses on disease detection, few studies contribute to disease prediction before it may occur. However, the performance of previous work was not competitive. This paper tackles the under-explored area of early CKD prediction through a high-performing deep learning and ensemble framework. We bridge the gap between existing detection methods and preventive interventions by: developing and comparing deep learning models like CNN, LSTM, and LSTM-BLSTM for 6–12 month CKD prediction; addressing data imbalance, feature selection, and optimizer optimization; and building an ensemble model combining the best individual models (CNN-Adamax, LSTM-Adam, and LSTM-BLSTM-Adamax). Our framework achieves significantly higher accuracy (98% and 97% for 6 and 12 months) than previous work, paving the way for earlier diagnosis and improved patient outcomes.
基于深度学习模型和优化器集合的慢性肾病早期预测
最近的研究证明,数据分析有助于在事件发生前对其进行预测,这可能会对当前情况的结果产生影响。在医疗领域,数据分析已被用于预测患慢性肾病(CKD)等健康疾病的可能性。本文旨在开发一个 CKD 预测框架,利用深度学习和深度集合学习方法预测特定时间内 CKD 的发生率。虽然大量研究都集中在疾病检测方面,但很少有研究有助于在疾病发生前进行预测。然而,以往工作的性能并不具有竞争力。本文通过高性能的深度学习和集合框架,解决了早期 CKD 预测这一尚未充分开发的领域。我们弥合了现有检测方法与预防性干预之间的差距,具体做法是:开发并比较用于 6-12 个月 CKD 预测的深度学习模型,如 CNN、LSTM 和 LSTM-BLSTM;解决数据不平衡、特征选择和优化器优化问题;以及建立一个集合模型,将最好的单个模型(CNN-Adamax、LSTM-Adam 和 LSTM-BLSTM-Adamax)结合起来。与以前的工作相比,我们的框架实现了明显更高的准确率(6 个月和 12 个月的准确率分别为 98% 和 97%),为早期诊断和改善患者预后铺平了道路。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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