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Machine Learning for Diagnosis of Systemic Lupus Erythematosus: A Systematic Review and Meta-Analysis

机译:机器学习诊断系统性红斑狼疮:系统评价和荟萃分析

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Background. Application of machine learning (ML) for identification of systemic lupus erythematosus (SLE) has been recently drawing increasing attention, while there is still lack of evidence-based support. Methods. Systematic review and meta-analysis are conducted to evaluate its diagnostic accuracy and application prospect. PubMed, Embase, Cochrane Library, and Web of Science libraries are searched, in combination with manual searching and literature retrospection, for studies regarding machine learning for identifying SLE and neuropsychiatric systemic lupus erythematosus (NPSLE). Quality Assessment of Diagnostic Accuracy Studies (QUADA-2) is applied to assess the quality of included studies. Diagnostic accuracy of the SLE model and NPSLE model is assessed using the bivariate fixed-effect model, and the data are pooled. Summary receiver operator characteristic curve (SROC) is plotted, and area under the curve (AUC) is calculated. Results. Eighteen (18) studies are included, in which ten (10) focused on SLE and eight (8) on NPSLE. The AUC of SLE identification is 0.95, the sensitivity is 0.90, the specificity is 0.89, the PLR is 8.4, the NLR is 0.12, and the DOR is 73. AUC of NPSLE identification is 0.89, the sensitivity is 0.83, the specificity is 0.83, the PLR is 5.0, the NLR is 0.20, and the DOR is 25. Conclusion. Machine learning presented remarkable performance in identification of SLE and NPSLE. Based on the convenience for inclusion factor collection and non-invasiveness of detection, machine learning is expected to be widely applied in clinical practice to assist medical decision making.
机译:背景。机器学习 (ML) 在系统性红斑狼疮 (SLE) 识别中的应用最近越来越受到关注,但仍然缺乏循证支持。方法。通过系统评价和Meta分析,评价其诊断准确性和应用前景。检索PubMed、Embase、Cochrane图书馆和Web of Science图书馆,结合人工检索和文献回顾,寻找有关机器学习识别SLE和神经精神系统性红斑狼疮(neuropsychiatric systemic lupus erythematosus, NPSLE)的研究。诊断准确性研究质量评估 (QUADA-2) 用于评估纳入研究的质量。使用双变量固定效应模型评估SLE模型和NPSLE模型的诊断准确性,并合并数据。绘制汇总受试者操作员特征曲线 (SROC),并计算曲线下面积 (AUC)。结果。共纳入18项研究,其中10项研究侧重于SLE,8项研究侧重于NPSLE。系统性红斑狼疮鉴别的AUC为0.95,敏感性为0.90,特异性为0.89,PLR为8.4,NLR为0.12,DOR为73。NPSLE鉴定的AUC为0.89,灵敏度为0.83,特异性为0.83,PLR为5.0,NLR为0.20,DOR为25。结论。机器学习在识别系统性红斑狼疮和NPSLE方面表现出显著的性能。基于包涵因子采集的便利性和检测的无创性,机器学习有望在临床实践中得到广泛应用,以辅助医疗决策。

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