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基于影像数据的人工智能对肝细胞癌微血管侵犯术前预测的诊断准确性:一项系统评价和Meta分析

Diagnostic Accuracy of Artificial Intelligence Based on Imaging Data for Preoperative Prediction of Microvascular Invasion in Hepatocellular Carcinoma: A Systematic Review and Meta-Analysis.

作者信息

Zhang Jian, Huang Shenglan, Xu Yongkang, Wu Jianbing

机构信息

Department of Oncology, The Second Affiliated Hospital of Nanchang University, Nanchang, China.

Department of Digestive Oncology, Jiangxi Key Laboratory of Clinical and Translational Cancer Research, Nanchang, China.

出版信息

Front Oncol. 2022 Feb 24;12:763842. doi: 10.3389/fonc.2022.763842. eCollection 2022.

Abstract

BACKGROUND

The presence of microvascular invasion (MVI) is considered an independent prognostic factor associated with early recurrence and poor survival in hepatocellular carcinoma (HCC) patients after resection. Artificial intelligence (AI), mainly consisting of non-deep learning algorithms (NDLAs) and deep learning algorithms (DLAs), has been widely used for MVI prediction in medical imaging.

AIM

To assess the diagnostic accuracy of AI algorithms for non-invasive, preoperative prediction of MVI based on imaging data.

METHODS

Original studies reporting AI algorithms for non-invasive, preoperative prediction of MVI based on quantitative imaging data were identified in the databases PubMed, Embase, and Web of Science. The quality of the included studies was assessed using the Quality Assessment of Diagnostic Accuracy Studies 2 (QUADAS-2) scale. The pooled sensitivity, specificity, positive likelihood ratio (PLR), and negative likelihood ratio (NLR) were calculated using a random-effects model with 95% CIs. A summary receiver operating characteristic curve and the area under the curve (AUC) were generated to assess the diagnostic accuracy of the deep learning and non-deep learning models. In the non-deep learning group, we further performed meta-regression and subgroup analyses to identify the source of heterogeneity.

RESULTS

Data from 16 included studies with 4,759 cases were available for meta-analysis. Four studies on deep learning models, 12 studies on non-deep learning models, and two studies compared the efficiency of the two types. For predictive performance of deep learning models, the pooled sensitivity, specificity, PLR, NLR, and AUC values were 0.84 [0.75-0.90], 0.84 [0.77-0.89], 5.14 [3.53-7.48], 0.2 [0.12-0.31], and 0.90 [0.87-0.93]; and for non-deep learning models, they were 0.77 [0.71-0.82], 0.77 [0.73-0.80], 3.30 [2.83-3.84], 0.30 [0.24-0.38], and 0.82 [0.79-0.85], respectively. Subgroup analyses showed a significant difference between the single tumor subgroup and the multiple tumor subgroup in the pooled sensitivity, NLR, and AUC.

CONCLUSION

This meta-analysis demonstrates the high diagnostic accuracy of non-deep learning and deep learning methods for MVI status prediction and their promising potential for clinical decision-making. Deep learning models perform better than non-deep learning models in terms of the accuracy of MVI prediction, methodology, and cost-effectiveness.

SYSTEMATIC REVIEW REGISTRATION

https://www.crd.york.ac.uk/PROSPERO/display_record.php? RecordID=260891, ID:CRD42021260891.

摘要

背景

微血管侵犯(MVI)的存在被认为是肝细胞癌(HCC)患者切除术后早期复发和生存不良的独立预后因素。人工智能(AI)主要由非深度学习算法(NDLA)和深度学习算法(DLA)组成,已广泛用于医学影像中MVI的预测。

目的

评估基于影像数据的AI算法对MVI进行无创、术前预测的诊断准确性。

方法

在PubMed、Embase和Web of Science数据库中检索报告基于定量影像数据对MVI进行无创、术前预测的AI算法的原始研究。使用诊断准确性研究质量评估工具2(QUADAS-2)量表评估纳入研究的质量。采用随机效应模型计算合并敏感度、特异度、阳性似然比(PLR)和阴性似然比(NLR),并给出95%置信区间。生成汇总的受试者工作特征曲线及曲线下面积(AUC),以评估深度学习和非深度学习模型的诊断准确性。在非深度学习组中,我们进一步进行了Meta回归和亚组分析,以确定异质性来源。

结果

16项纳入研究的数据(共4759例)可用于Meta分析。4项关于深度学习模型的研究,12项关于非深度学习模型的研究,以及2项比较两种类型效率的研究。对于深度学习模型的预测性能,合并敏感度、特异度、PLR、NLR和AUC值分别为0.84[0.75 - 0.90]、0.84[0.77 - 0.89]、5.14[3.53 - 7.48]、0.2[0.12 - 0.31]和0.90[0.87 - 0.93];对于非深度学习模型,分别为0.77[0.71 - 0.82]、0.77[0.73 - 0.80]、3.30[2.83 -

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/539f/8907853/416c7ecf9e9e/fonc-12-763842-g001.jpg

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