Vacca Sebastiano, Scicolone Roberta, Pisu Francesco, Cau Riccardo, Yang Qi, Annoni Andrea, Pontone Gianluca, Costa Francesco, Paraskevas Kosmas I, Nicolaides Andrew, Suri Jasjit S, Saba Luca
School of Medicine and Surgery, University of Cagliari, 09042, Cagliari, Italy.
Elmezzi Graduate School of Molecular Medicine, Northwell, Manhasset, NY, USA.
J Ultrasound. 2025 Jun 9. doi: 10.1007/s40477-025-01002-1.
Stroke, a leading global cause of mortality and neurological disability, is often associated with atherosclerotic carotid artery disease. Distinguishing between symptomatic and asymptomatic carotid artery disease is crucial for appropriate treatment decisions. Radiomics, a quantitative image analysis technique, and machine learning (ML) have emerged as promising tools in Ultrasound (US) imaging, potentially providing a helpful tool in the screening of such lesions.
Pubmed, Web of Science and Scopus databases were searched for relevant studies published from January 2005 to May 2023. The Radiomics Quality Score (RQS) was used to assess methodological quality of studies included in the review. The Quality Assessment of Diagnostic Accuracy Studies (QUADAS-2) assessed the risk of bias. Sensitivity, specificity, and logarithmic diagnostic odds ratio (logDOR) meta-analyses have been conducted, alongside an influence analysis.
RQS assessed methodological quality, revealing an overall low score and consistent findings with other radiology domains. QUADAS-2 indicated an overall low risk, except for two studies with high bias. The meta-analysis demonstrated that radiomics-based ML models for predicting culprit plaques on US had a satisfactory performance, with a sensitivity of 0.84 and specificity of 0.82. The logDOR analysis confirmed the positive results, yielding a pooled logDOR of 3.54. The summary ROC curve provided an AUC of 0.887.
Radiomics combined with ML provide high sensitivity and low false positive rate for carotid plaque vulnerability assessment on US. However, current evidence is not definitive, given the low overall study quality and high inter-study heterogeneity. High quality, prospective studies are needed to confirm the potential of these promising techniques.
中风是全球主要的死亡和神经功能残疾原因,常与动脉粥样硬化性颈动脉疾病相关。区分有症状和无症状的颈动脉疾病对于做出恰当的治疗决策至关重要。放射组学是一种定量图像分析技术,机器学习(ML)已成为超声(US)成像中有前景的工具,可能为这类病变的筛查提供有用手段。
检索了PubMed、科学网和Scopus数据库中2005年1月至2023年5月发表的相关研究。使用放射组学质量评分(RQS)评估纳入综述的研究的方法学质量。诊断准确性研究的质量评估(QUADAS - 2)评估偏倚风险。进行了敏感性、特异性和对数诊断比值比(logDOR)的荟萃分析以及影响分析。
RQS评估了方法学质量,显示总体得分较低,且与其他放射学领域的结果一致。QUADAS - 2表明总体偏倚风险较低,但有两项研究存在高偏倚。荟萃分析表明,基于放射组学的ML模型用于预测超声检查中的罪犯斑块具有令人满意的性能,敏感性为0.84,特异性为0.82。logDOR分析证实了阳性结果,汇总logDOR为3.54。汇总ROC曲线的AUC为0.887。
放射组学与ML相结合,在超声检查中对颈动脉斑块易损性评估具有高敏感性和低假阳性率。然而,鉴于总体研究质量较低和研究间异质性较高,目前的证据并不确凿。需要高质量的前瞻性研究来证实这些有前景技术的潜力。