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基于 CT 的放射组学在肾脏肿瘤鉴别中的应用:一项系统综述。

CT-based radiomics for differentiating renal tumours: a systematic review.

机构信息

Townsville University Hospital, 100 Angus Smith Drive, Douglas, QLD, 4814, Australia.

Department of Medical Imaging Research Office, Royal Brisbane and Women's Hospital, Brisbane, QLD, Australia.

出版信息

Abdom Radiol (NY). 2021 May;46(5):2052-2063. doi: 10.1007/s00261-020-02832-9. Epub 2020 Nov 2.

Abstract

PURPOSE

Differentiating renal tumours into grades and tumour subtype from medical imaging is important for patient management; however, there is an element of subjectivity when performed qualitatively. Quantitative analysis such as radiomics may provide a more objective approach. The purpose of this article is to systematically review the literature on computed tomography (CT) radiomics for grading and differentiating renal tumour subtypes. An educational perspective will also be provided.

METHODS

The Preferred Reporting Items for Systematic Reviews and Meta-Analyses checklist was followed. PubMed, Scopus and Web of Science were searched for relevant articles. The quality of each study was assessed using the Radiomic Quality Score (RQS).

RESULTS

13 studies were found. The main outcomes were prediction of pathological grade and differentiating between renal tumour types, measured as area under the curve (AUC) for either the receiver operator curve or precision recall curve. Features extracted to predict pathological grade or tumour subtype included shape, intensity, texture and wavelet (a type of higher order feature). Four studies differentiated between low-grade and high-grade clear cell renal cell cancer (RCC) with good performance (AUC = 0.82-0.978). One other study differentiated low- and high-grade chromophobe with AUC = 0.84. Finally, eight studies used radiomics to differentiate between tumour types such as clear cell RCC, fat-poor angiomyolipoma, papillary RCC, chromophobe RCC and renal oncocytoma with high levels of performance (AUC 0.82-0.96).

CONCLUSION

Renal tumours can be pathologically classified using CT-based radiomics with good performance. The main radiomic feature used for tumour differentiation was texture. Fuhrman was the most common pathologic grading system used in the reviewed studies. Renal tumour grading studies should be extended beyond clear cell RCC and chromophobe RCC. Further research with larger prospective studies, performed in the clinical setting, across multiple institutions would help with clinical translation to the radiologist's workstation.

摘要

目的

从医学影像中对肾肿瘤进行分级和肿瘤亚型的区分对患者管理至关重要;然而,定性评估存在一定的主观性。定量分析(如放射组学)可能提供更客观的方法。本文的目的是系统地回顾关于 CT 放射组学在肾肿瘤分级和区分肿瘤亚型方面的文献。本文还将提供一个教育视角。

方法

本研究遵循系统评价和荟萃分析的首选报告项目清单。在 PubMed、Scopus 和 Web of Science 上搜索相关文章。使用放射组学质量评分(RQS)评估每项研究的质量。

结果

共发现 13 项研究。主要结局是预测病理分级和区分肾肿瘤类型,通过接收者操作曲线或精确召回曲线的曲线下面积(AUC)来衡量。用于预测病理分级或肿瘤亚型的提取特征包括形状、强度、纹理和小波(一种高阶特征)。四项研究对低级别和高级别透明细胞肾细胞癌(RCC)进行了区分,性能良好(AUC=0.82-0.978)。另一项研究对低级别和高级别嫌色细胞瘤进行了区分,AUC=0.84。最后,八项研究使用放射组学对透明细胞 RCC、乏脂肪血管平滑肌脂肪瘤、乳头状 RCC、嫌色细胞瘤和肾嗜酸细胞瘤等肿瘤类型进行区分,性能较高(AUC 0.82-0.96)。

结论

使用基于 CT 的放射组学可以对肾肿瘤进行病理分类,性能良好。用于肿瘤区分的主要放射组学特征是纹理。在回顾的研究中,Fuhrman 是最常用的病理分级系统。肾肿瘤分级研究应扩展到透明细胞 RCC 和嫌色细胞瘤之外。在多个机构的临床环境中进行更大规模的前瞻性研究和进一步研究将有助于将其向放射科医师工作站的临床转化。

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