Predicting the Progression of Chronic Kidney Disease: A Systematic Review of Artificial Intelligence and Machine Learning Approaches

被引:3
|
作者
Khalid, Fizza [1 ]
Alsadoun, Lara [2 ]
Khilji, Faria [3 ,4 ]
Mushtaq, Maham [5 ]
Eze-odurukwe, Anthony [6 ]
Mushtaq, Muhammad Muaz [5 ]
Ali, Husnain [5 ]
Farman, Rana Omer [5 ]
Ali, Syed Momin [5 ]
Fatima, Rida [7 ]
Bokhari, Syed Faqeer Hussain [8 ]
机构
[1] Sharif Med City Hosp, Nephrol, Lahore, Pakistan
[2] Chelsea & Westminster Hosp, Trauma & Orthoped, London, England
[3] Tehsil Headquarter Hosp, Internal Med, Shakargarh, Pakistan
[4] Quaid E Azam Med Coll, Internal Med, Bahawalpur, Pakistan
[5] King Edward Med Univ, Med & Surg, Lahore, Pakistan
[6] Salford Royal NHS Fdn Trust, Surg, Manchester, England
[7] Fatima Jinnah Med Univ, Med & Surg, Lahore, Pakistan
[8] King Edward Med Univ, Surg, Lahore, Pakistan
关键词
systematic review; prediction; disease progression; chronic kidney disease; machine learning; artificial;
D O I
10.7759/cureus.60145
中图分类号
R5 [内科学];
学科分类号
1002 ; 100201 ;
摘要
Chronic kidney disease (CKD) is a progressive condition characterized by gradual loss of kidney function, necessitating timely monitoring and interventions. This systematic review comprehensively evaluates the application of artificial intelligence (AI) and machine learning (ML) techniques for predicting CKD progression. A rigorous literature search identified 13 relevant studies employing diverse AI/ML algorithms, including logistic regression, support vector machines, random forests, neural networks, and deep learning approaches. These studies primarily aimed to predict CKD progression to end-stage renal disease (ESRD) or the need for renal replacement therapy, with some focusing on diabetic kidney disease progression, proteinuria, or estimated glomerular filtration rate (GFR) decline. The findings highlight the promising predictive performance of AI/ML models, with several achieving high accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve scores. Key factors contributing to enhanced prediction included incorporating longitudinal data, baseline characteristics, and specific biomarkers such as estimated GFR, proteinuria, serum albumin, and hemoglobin levels. Integration of these predictive models with electronic health records and clinical decision support systems offers opportunities for timely risk identification, early interventions, and personalized management strategies. While challenges related to data quality, bias, and ethical considerations exist, the reviewed studies underscore the potential of AI/ML techniques to facilitate early detection, risk stratification, and targeted interventions for CKD patients. Ongoing research, external validation, and careful implementation are crucial to leveraging these advanced analytical approaches in clinical practice, ultimately improving outcomes and reducing the burden of CKD.
引用
收藏
页数:8
相关论文
共 50 条
  • [1] Predicting chronic kidney disease progression with artificial intelligence
    Isaza-Ruget, Mario A.
    Yomayusa, Nancy
    Gonzalez, Camilo A.
    Alvarado, H. Catherine
    de Oro, V. Fabio A.
    Cely, Andres
    Murcia, Jossie
    Gonzalez-Velez, Abel
    Robayo, Adriana
    Colmenares-Mejia, Claudia C.
    Castillo, Andrea
    Conde, Maria I.
    BMC NEPHROLOGY, 2024, 25 (01)
  • [2] Revolutionizing Chronic Kidney Disease Management with Machine Learning and Artificial Intelligence
    Krisanapan, Pajaree
    Tangpanithandee, Supawit
    Thongprayoon, Charat
    Pattharanitima, Pattharawin
    Cheungpasitporn, Wisit
    JOURNAL OF CLINICAL MEDICINE, 2023, 12 (08)
  • [3] Interpretable machine learning for predicting chronic kidney disease progression risk
    Zheng, Jin-Xin
    Li, Xin
    Zhu, Jiang
    Guan, Shi-Yang
    Zhang, Shun-Xian
    Wang, Wei-Ming
    DIGITAL HEALTH, 2024, 10
  • [4] Artificial Intelligence to Predict Chronic Kidney Disease Progression to Kidney Failure: A Narrative Review
    Miller, Zane A.
    Dwyer, Karen
    NEPHROLOGY, 2025, 30 (01)
  • [5] Artificial intelligence in predicting chronic kidney disease prognosis. A systematic review and meta-analysis
    Pan, Qinyu
    Tong, Mengli
    RENAL FAILURE, 2024, 46 (02)
  • [6] Artificial Intelligence and Machine Learning Predicting Transarterial Chemoembolization Outcomes: A Systematic Review
    Cho, Elina En Li
    Law, Michelle
    Yu, Zhenning
    Yong, Jie Ning
    Tan, Claire Shiying
    Tan, En Ying
    Takahashi, Hirokazu
    Danpanichkul, Pojsakorn
    Nah, Benjamin
    Soon, Gwyneth Shook Ting
    Ng, Cheng Han
    Tan, Darren Jun Hao
    Seko, Yuya
    Nakamura, Toru
    Morishita, Asahiro
    Chirapongsathorn, Sakkarin
    Kumar, Rahul
    Kow, Alfred Wei Chieh
    Huang, Daniel Q.
    Lim, Mei Chin
    Law, Jia Hao
    DIGESTIVE DISEASES AND SCIENCES, 2025, 70 (02) : 533 - 542
  • [7] Systematic review of data-centric approaches in artificial intelligence and machine learning
    Singh P.
    Data Science and Management, 2023, 6 (03): : 144 - 157
  • [8] Machine learning algorithms' accuracy in predicting kidney disease progression: a systematic review and meta-analysis
    Lei, Nuo
    Zhang, Xianlong
    Wei, Mengting
    Lao, Beini
    Xu, Xueyi
    Zhang, Min
    Chen, Huifen
    Xu, Yanmin
    Xia, Bingqing
    Zhang, Dingjun
    Dong, Chendi
    Fu, Lizhe
    Tang, Fang
    Wu, Yifan
    BMC MEDICAL INFORMATICS AND DECISION MAKING, 2022, 22 (01) : 205
  • [9] Machine learning algorithms’ accuracy in predicting kidney disease progression: a systematic review and meta-analysis
    Nuo Lei
    Xianlong Zhang
    Mengting Wei
    Beini Lao
    Xueyi Xu
    Min Zhang
    Huifen Chen
    Yanmin Xu
    Bingqing Xia
    Dingjun Zhang
    Chendi Dong
    Lizhe Fu
    Fang Tang
    Yifan Wu
    BMC Medical Informatics and Decision Making, 22
  • [10] Artificial intelligence for predicting pulmonary embolism: A review of machine learning approaches and performance evaluation
    Puchades, Ramon
    Tung-Chen, Yale
    Salgueiro, Giorgina
    Lorenzo, Alicia
    Sancho, Teresa
    Capitan, Carmen Fernandez
    THROMBOSIS RESEARCH, 2024, 234 : 9 - 11