Lai Derek Ka-Hei, Cheng Ethan Shiu-Wang, Mao Ye-Jiao, Zheng Yi, Yao Ke-Yu, Ni Ming, Zhang Ying-Qi, Wong Duo Wai-Chi, Cheung James Chung-Wai
Department of Biomedical Engineering, Faculty of Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
Department of Electronic and Information Engineering, Faculty of Engineering, The Hong Kong Polytechnic University, Hong Kong, China.
Cancers (Basel). 2023 Jul 25;15(15):3770. doi: 10.3390/cancers15153770.
The objective of this review was to summarize the applications of sonoelastography in testicular tumor identification and inquire about their test performances. Two authors independently searched English journal articles and full conference papers from CINAHL, Embase, IEEE Xplore, PubMed, Scopus, and Web of Science from inception and organized them into a PIRO (patient, index test, reference test, outcome) framework. Eleven studies ( = 11) were eligible for data synthesis, nine of which ( = 9) utilized strain elastography and two ( = 2) employed shear-wave elastography. Meta-analyses were performed on the distinction between neoplasm (tumor) and non-neoplasm (non-tumor) from four study arms and between malignancy and benignity from seven study arms. The pooled sensitivity of classifying malignancy and benignity was 86.0% (95%CI, 79.7% to 90.6%). There was substantial heterogeneity in the classification of neoplasm and non-neoplasm and in the specificity of classifying malignancy and benignity, which could not be addressed by the subgroup analysis of sonoelastography techniques. Heterogeneity might be associated with the high risk of bias and applicability concern, including a wide spectrum of testicular pathologies and verification bias in the reference tests. Key technical obstacles in the index test were manual compression in strain elastography, qualitative observation of non-standardized color codes, and locating the Regions of Interest (ROI), in addition to decisions in feature extractions. Future research may focus on multiparametric sonoelastography using deep learning models and ensemble learning. A decision model on the benefits-risks of surgical exploration (reference test) could also be developed to direct the test-and-treat strategy for testicular tumors.
本综述的目的是总结超声弹性成像在睾丸肿瘤识别中的应用,并探讨其检测性能。两位作者独立检索了自数据库建立以来CINAHL、Embase、IEEE Xplore、PubMed、Scopus和Web of Science中的英文期刊文章和完整会议论文,并将它们整理成PIRO(患者、索引测试、参考测试、结果)框架。11项研究(n = 11)符合数据合成的条件,其中9项(n = 9)采用应变弹性成像,2项(n = 2)采用剪切波弹性成像。对四个研究组的肿瘤(肿瘤)与非肿瘤(非肿瘤)区分以及七个研究组的恶性与良性区分进行了荟萃分析。分类恶性和良性的合并敏感性为86.0%(95%CI,79.7%至90.6%)。在肿瘤和非肿瘤的分类以及恶性和良性分类的特异性方面存在显著异质性,超声弹性成像技术的亚组分析无法解决这一问题。异质性可能与高偏倚风险和适用性问题有关,包括广泛的睾丸病理类型和参考测试中的验证偏倚。索引测试中的关键技术障碍包括应变弹性成像中的手动压缩、非标准化颜色编码的定性观察、感兴趣区域(ROI)的定位,以及特征提取中的决策。未来的研究可能集中在使用深度学习模型和集成学习的多参数超声弹性成像上。还可以开发一种关于手术探查(参考测试)利弊的决策模型,以指导睾丸肿瘤的检测和治疗策略。