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

被引:49
作者
Bhandari, Abhishta [1 ]
Ibrahim, Muhammad [1 ]
Sharma, Chinmay [1 ]
Liong, Rebecca [2 ]
Gustafson, Sonja [2 ]
Prior, Marita [2 ]
机构
[1] Townsville Univ Hosp, 100 Angus Smith Dr, Douglas, Qld 4814, Australia
[2] Royal Brisbane & Womens Hosp, Dept Med Imaging Res Off, Brisbane, Qld, Australia
关键词
Computed tomography; Machine learning; Artificial intelligence; Renal tumours; Radiomics; Grade; CELL CARCINOMA; TEXTURE ANALYSIS; ANGIOMYOLIPOMA; PREDICTION; IMAGES; FAT; CLASSIFICATION; DIAGNOSIS; ACCURACY; FEATURES;
D O I
10.1007/s00261-020-02832-9
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
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.
引用
收藏
页码:2052 / 2063
页数:12
相关论文
共 40 条
  • [1] Badri AV, 2019, CAN J UROL, V26, P9916
  • [2] Clear Cell Renal Cell Carcinoma: Machine Learning-Based Quantitative Computed Tomography Texture Analysis for Prediction of Fuhrman Nuclear Grade
    Bektas, Ceyda Turan
    Kocak, Burak
    Yardimci, Aytul Hande
    Turkcanoglu, Mehmet Hamza
    Yucetas, Ugur
    Koca, Sevim Baykal
    Erdim, Cagri
    Kilickesmez, Ozgur
    [J]. EUROPEAN RADIOLOGY, 2019, 29 (03) : 1153 - 1163
  • [3] Decision Tree and Ensemble Learning Algorithms with Their Applications in Bioinformatics
    Che, Dongsheng
    Liu, Qi
    Rasheed, Khaled
    Tao, Xiuping
    [J]. SOFTWARE TOOLS AND ALGORITHMS FOR BIOLOGICAL SYSTEMS, 2011, 696 : 191 - 199
  • [4] Transparent Reporting of a multivariable prediction model for Individual Prognosis Or Diagnosis (TRIPOD) RESPONSE
    Collins, Gary S.
    Reitsma, Johannes B.
    Altman, Douglas G.
    Moons, Karel G. M.
    [J]. ANNALS OF INTERNAL MEDICINE, 2015, 162 (10) : 735 - 736
  • [5] Radiomic-Based Pathological Response Prediction from Primary Tumors and Lymph Nodes in NSCLC
    Coroller, Thibaud P.
    Agrawal, Vishesh
    Huynh, Elizabeth
    Narayan, Vivek
    Lee, Stephanie W.
    Mak, Raymond H.
    Aerts, Hugo J. W. L.
    [J]. JOURNAL OF THORACIC ONCOLOGY, 2017, 12 (03) : 467 - 476
  • [6] Differentiation of renal angiomyolipoma without visible fat from renal cell carcinoma by machine learning based on whole-tumor computed tomography texture features
    Cui, En-Ming
    Lin, Fan
    Li, Qing
    Li, Rong-Gang
    Chen, Xiang-Meng
    Liu, Zhuang-Sheng
    Long, Wan-Sheng
    [J]. ACTA RADIOLOGICA, 2019, 60 (11) : 1543 - 1552
  • [7] CT texture analysis in the differentiation of major renal cell carcinoma subtypes and correlation with Fuhrman grade
    Deng, Yu
    Soule, Erik
    Samuel, Aster
    Shah, Sakhi
    Cui, Enming
    Asare-Sawiri, Michael
    Sundaram, Chandru
    Lall, Chandana
    Sandrasegaran, Kumaresan
    [J]. EUROPEAN RADIOLOGY, 2019, 29 (12) : 6922 - 6929
  • [8] Prediction of Benign and Malignant Solid Renal Masses: Machine Learning-Based CT Texture Analysis
    Erdim, Cagri
    Yardimci, Aytul Hande
    Bektas, Ceyda Turan
    Kocak, Burak
    Koca, Sevim Baykal
    Demir, Hale
    Kilickesmez, Ozgur
    [J]. ACADEMIC RADIOLOGY, 2020, 27 (10) : 1422 - 1429
  • [9] Machine learning-based quantitative texture analysis of CT images of small renal masses: Differentiation of angiomyolipoma without visible fat from renal cell carcinoma
    Feng, Zhichao
    Rong, Pengfei
    Cao, Peng
    Zhou, Qingyu
    Zhu, Wenwei
    Yan, Zhimin
    Liu, Qianyun
    Wang, Wei
    [J]. EUROPEAN RADIOLOGY, 2018, 28 (04) : 1625 - 1633
  • [10] Prognostic Value and Reproducibility of Pretreatment CT Texture Features in Stage III Non-Small Cell Lung Cancer
    Fried, David V.
    Tucker, Susan L.
    Zhou, Shouhao
    Liao, Zhongxing
    Mawlawi, Osama
    Ibbott, Geoffrey
    Court, Laurence E.
    [J]. INTERNATIONAL JOURNAL OF RADIATION ONCOLOGY BIOLOGY PHYSICS, 2014, 90 (04): : 834 - 842