Hajikarimloo Bardia, Sabbagh Alvani Mohammadamin, Koohfar Amirhossein, Goudarzi Ehsan, Dehghan Mandana, Hojjat Seyed Hesam, Hashemi Rana, Tos Salem M, Akhlaghpasand Mohammadhosein, Habibi Mohammad Amin
Department of Neurological Surgery, University of Virginia, Charlottesville, Virginia, USA.
Student Research Committee Faculty of Medicine, Shahid Beheshti University of Medical Sciences, Tehran, Iran.
World Neurosurg. 2024 Nov;191:303-313.e1. doi: 10.1016/j.wneu.2024.09.015. Epub 2024 Sep 10.
Postoperative cerebrospinal fluid (CSF) leakage is the leading adverse event in transsphenoidal surgery. Intraoperative CSF (ioCSF) leakage is one of the most important predictive factors for postoperative CSF leakage. This systematic review and meta-analysis aimed to evaluate the effectiveness of artificial intelligence (AI) models in predicting ioCSF.
Literature records were retrieved on June 13, 2024, using the relevant key terms without filters in PubMed, Embase, Scopus, and Web of Science. Records were screened according to the eligibility criteria, and the data from the included studies were extracted. The quality assessment was performed using the Quality Assessment of Diagnostic Accuracy Studies-2 tool. The meta-analysis, sensitivity analysis, and meta-regression were conducted using R software.
Our results demonstrate that the AI models achieved a pooled sensitivity of 93.4% (95% confidence interval [CI]: 74.8%-98.6%) and specificity of 91.7% (95% CI: 75%-97.6%). The subgroup analysis revealed that the pooled sensitivities in machine learning and deep learning were 86.2% (95% CI: 83%-88.8%) and 99% (95% CI: 93%-99%), respectively (P < 0.01). The subgroup analysis demonstrated a pooled specificity of 92.1% (95% CI: 63.1%-98.7%) for machine learning and 90.6% (95% CI: 78.2%-96.3%) for deep learning models (P = 0.87). The diagnostic odds ratio meta-analysis revealed an odds ratio 114.6 (95% CI: 17.6-750.9). The summary receiver operating characteristic curve demonstrated that the overall area under the curve of the studies was 0.955, which is a considerable performance.
AI models have demonstrated promising performance for predicting the ioCSF leakage in pituitary surgery and can optimize the treatment strategy.
术后脑脊液漏是经蝶窦手术中主要的不良事件。术中脑脊液漏是术后脑脊液漏最重要的预测因素之一。本系统评价和荟萃分析旨在评估人工智能(AI)模型预测术中脑脊液漏的有效性。
于2024年6月13日在PubMed、Embase、Scopus和Web of Science中使用相关关键词检索文献记录,不设筛选条件。根据纳入标准筛选记录,并提取纳入研究的数据。使用诊断准确性研究质量评估-2工具进行质量评估。使用R软件进行荟萃分析、敏感性分析和元回归分析。
我们的结果表明,AI模型的合并敏感性为93.4%(95%置信区间[CI]:74.8%-98.6%),特异性为91.7%(95%CI:75%-97.6%)。亚组分析显示,机器学习和深度学习的合并敏感性分别为86.2%(95%CI:83%-88.8%)和99%(95%CI:93%-99%)(P<0.01)。亚组分析显示,机器学习模型的合并特异性为92.1%(95%CI:63.1%-98.7%),深度学习模型为90.6%(95%CI:78.2%-96.3%)(P=0.87)。诊断比值比荟萃分析显示比值比为114.6(95%CI:17.6-750.9)。汇总的受试者工作特征曲线显示,研究的曲线下总面积为0.955,表现相当可观。
AI模型在预测垂体手术中术中脑脊液漏方面表现出良好的性能,可优化治疗策略。