肾功能预测的比较分析:传统统计方法与深度学习技术。

IF 2.2 4区 医学 Q2 UROLOGY & NEPHROLOGY Clinical and Experimental Nephrology Pub Date : 2025-01-15 DOI:10.1007/s10157-024-02616-1
Mizuki Ohashi, Yuya Ishikawa, Satoshi Arai, Tomoharu Nagao, Kaori Kitaoka, Hajime Nagasu, Yuichiro Yano, Naoki Kashihara
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引用次数: 0

摘要

背景:慢性肾脏疾病(CKD)是一个重大的公共卫生挑战,其发病率持续上升。在临床实践中,加强肾功能预测有助于早期发现、预防和管理慢性肾病。我们的目的是研究深度学习技术,特别是那些适合处理缺失值的技术,与传统的统计方法相比,是否可以提高预测未来肾功能的准确性,使用日本慢性肾脏疾病数据库(J-CKD-DB),这是一个全国性的多中心CKD登记。方法:J-CKD-DB- ex是一项J-CKD-DB的前瞻性纵向研究,我们选择了相隔12至20个月至少有两次eGFR测量记录的个体(n = 22,929名CKD患者)。我们使用多元线性回归模型作为传统的统计方法,并使用前馈神经网络(FFNN)和门控循环单元(GRU)-D(衰减)模型作为深度学习技术。我们使用均方根误差(RMSE)比较了基于现有数据的每个模型对未来eGFR的预测精度。结果:多元回归分析RMSE值为7.5,FFNN模型RMSE值为7.9,GRU-D模型RMSE值为7.6 mL/min/1.73 m2。在根据CKD分期进行的亚组分析中,所有模型的高分期均观察到RMSE值较低。结论:我们的研究结果证明了基于J-CKD-DB-Ex现有数据集预测未来eGFR的准确性。与传统的统计方法相比,应用深度学习技术并没有提高准确性。
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Comparative analysis of kidney function prediction: traditional statistical methods vs. deep learning techniques.

Background: Chronic kidney disease (CKD) represents a significant public health challenge, with rates consistently on the rise. Enhancing kidney function prediction could contribute to the early detection, prevention, and management of CKD in clinical practice. We aimed to investigate whether deep learning techniques, especially those suitable for processing missing values, can improve the accuracy of predicting future renal function compared to traditional statistical method, using the Japan Chronic Kidney Disease Database (J-CKD-DB), a nationwide multicenter CKD registry.

Methods: From the J-CKD-DB-Ex, a prospective longitudinal study within the J-CKD-DB, we selected individuals who had at least two eGFR measurements recorded between 12 and 20 months apart (n = 22,929 CKD patients). We used the multiple linear regression model as a conventional statistical method, and the Feed Forward Neural Network (FFNN) and Gated Recurrent Unit (GRU)-D (decay) models as deep learning techniques. We compared the prediction accuracies of each model for future eGFR based on the existing data using the root mean square error (RMSE).

Results: The RMSE values were 7.5 for multiple regression analysis, 7.9 for FFNN model, and 7.6 mL/min/1.73 m2 for GRU-D model. In the subgroup analysis according to CKD stages, lower RMSE values were observed in higher stages for all models.

Conclusion: Our result demonstrate the predictive accuracy of future eGFR based on the existing dataset in the J-CKD-DB-Ex. The accuracy was not improved by applying deep learning techniques compared to conventional statistical methods.

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来源期刊
Clinical and Experimental Nephrology
Clinical and Experimental Nephrology UROLOGY & NEPHROLOGY-
CiteScore
4.10
自引率
4.30%
发文量
135
审稿时长
4-8 weeks
期刊介绍: Clinical and Experimental Nephrology is a peer-reviewed monthly journal, officially published by the Japanese Society of Nephrology (JSN) to provide an international forum for the discussion of research and issues relating to the study of nephrology. Out of respect for the founders of the JSN, the title of this journal uses the term “nephrology,” a word created and brought into use with the establishment of the JSN (Japanese Journal of Nephrology, Vol. 2, No. 1, 1960). The journal publishes articles on all aspects of nephrology, including basic, experimental, and clinical research, so as to share the latest research findings and ideas not only with members of the JSN, but with all researchers who wish to contribute to a better understanding of recent advances in nephrology. The journal is unique in that it introduces to an international readership original reports from Japan and also the clinical standards discussed and agreed by JSN.
期刊最新文献
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