医学
荟萃分析
疾病
重症监护医学
肾脏疾病
系统回顾
梅德林
内科学
人工智能
计算机科学
政治学
法学
作者
Sagar Dholariya,Siddhartha Dutta,Amit Sonagra,Mehul Kaliya,Ragini Singh,Deepak Parchwani,Anita Motiani
标识
DOI:10.1080/03007995.2024.2423737
摘要
OBJECTIVE: The purpose of this study was to conduct a systematic investigation of the potential of artificial intelligence (AI) models in the prediction, detection of diagnostic biomarkers, and progression of diabetic kidney disease (DKD). In addition, we compared the performance of non-logistic regression (LR) machine learning (ML) models to conventional LR prediction models. METHODS: PubMed) and Cochrane. Research that is inclusive of AI or ML models for the prediction, diagnosis, and progression of DKD was incorporated. The area under the Receiver Operating Characteristic Curve (AUROC) served as the principal outcome metric for assessing model performance. A meta-analysis was performed utilizing MedCalc statistical software to calculate pooled AUROC and assess the performance differences between LR and non-LR models. RESULTS: < 0.04). CONCLUSION: ML models showed solid DKD prediction effectiveness, with pooled AUROC values over 0.8, suggesting good performance. These data demonstrated that non-LR and LR models perform similarly in overall CKD management, but the RF model outperforms the LR model, particularly in predicting the occurrence of DKD. These findings highlight the promise of AI technologies for better DKD management. To improve model reliability, future study should include extended follow-up periods as well as external validation.
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