Differentiating Benign From Malignant Cystic Renal Masses: A Feasibility Study of Computed Tomography Texture-Based Machine Learning Algorithms

被引:17
作者
Miskin, Nityanand [1 ,3 ]
Qin, Lei [2 ]
Silverman, Stuart G. [1 ]
Shinagare, Atul B. [1 ,2 ]
机构
[1] Brigham & Womens Hosp, Dept Radiol, Boston, MA USA
[2] Harvard Med Sch, Dana Farber Canc Inst, Dept Imaging, Boston, MA USA
[3] Harvard Med Sch, Brigham & Womens Hosp, Dept Radiol, 75 Francis St, Boston, MA 02115 USA
关键词
cystic renal mass; radiomics; machine learning; BOSNIAK CLASSIFICATION; INTEROBSERVER AGREEMENT; VERSION; 2019; CT; ANGIOMYOLIPOMA; PREVALENCE; READERS; FAT;
D O I
10.1097/RCT.0000000000001433
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
ObjectiveThe Bosniak classification attempts to predict the likelihood of renal cell carcinoma (RCC) among cystic renal masses but is subject to interobserver variability and often requires multiphase imaging. Artificial intelligence may provide a more objective assessment. We applied computed tomography texture-based machine learning algorithms to differentiate benign from malignant cystic renal masses.MethodsThis is an institutional review board-approved, Health Insurance Portability and Accountability Act-compliant retrospective study of 147 patients (mean age, 62.4 years; range, 28-89 years; 94 men) with 144 cystic renal masses (93 benign, 51 RCC); 69 were pathology proven (51 RCC, 18 benign), and 75 were considered benign based on more than 4 years of stability at follow-up imaging. Using a single image from a contrast-enhanced abdominal computed tomography scan, mean, SD, mean value of positive pixels, entropy, skewness, and kurtosis radiomics features were extracted. Random forest, multivariate logistic regression, and support vector machine models were used to classify each mass as benign or malignant with 10-fold cross validation. Receiver operating characteristic curves assessed algorithm performance in the aggregated test data.ResultsFor the detection of malignancy, sensitivity, specificity, positive predictive value, negative predictive value, and area under the curve were 0.61, 0.87, 0.72, 0.80, and 0.79 for the random forest model; 0.59, 0.87, 0.71, 0.79, and 0.80 for the logistic regression model; and 0.55, 0.86, 0.68, 0.78, and 0.76 for the support vector machine model.ConclusionComputed tomography texture-based machine learning algorithms show promise in differentiating benign from malignant cystic renal masses. Once validated, these may serve as an adjunct to radiologists' assessments.
引用
收藏
页码:376 / 381
页数:6
相关论文
共 39 条
  • [1] MRI-based Bosniak Classification of Cystic Renal Masses, Version 2019: Interobserver Agreement, Impact of Readers' Experience, and Diagnostic Performance
    Bai, Xu
    Sun, Song-Mei
    Xu, Wei
    Kang, Huan-Huan
    Li, Lin
    Jin, Ye-Qiang
    Gong, Qing-Ge-Le
    Liang, Guo-Cheng
    Liu, Hong-Yan
    Liu, Lin-Lin
    Chen, Si-Lu
    Wang, Qing-Rong
    Wu, Peng
    Guo, Ai-Tao
    Huang, Qing-Bo
    Zhang, Xiao-Jing
    Ye, Hui-Yi
    Wang, Hai-Yi
    [J]. RADIOLOGY, 2020, 297 (03) : 597 - 605
  • [2] The prevalence of simple renal and hepatic cysts detected by spiral computed tomography
    Carrim, ZI
    Murchison, JT
    [J]. CLINICAL RADIOLOGY, 2003, 58 (08) : 626 - 629
  • [3] Malignancy risk stratification of cystic renal lesions based on a contrast-enhanced CT-based machine learning model and a clinical decision algorithm
    Dana, Jeremy
    Lefebvre, Thierry L.
    Savadjiev, Peter
    Bodard, Sylvain
    Gauvin, Simon
    Bhatnagar, Sahir Rai
    Forghani, Reza
    Helenon, Olivier
    Reinhold, Caroline
    [J]. EUROPEAN RADIOLOGY, 2022, 32 (06) : 4116 - 4127
  • [4] Assessment of Renal Cell Carcinoma by Texture Analysis in Clinical Practice: A Six-Site, Six-Platform Analysis of Reliability
    Doshi, Ankur M.
    Tong, Angela
    Davenport, Matthew S.
    Khalaf, Ahmed M.
    Mresh, Rafah
    Rusinek, Henry
    Schieda, Nicola
    Shinagare, Atul B.
    Smith, Andrew D.
    Thornhill, Rebecca
    Vikram, Raghunandan
    Chandarana, Hersh
    [J]. AMERICAN JOURNAL OF ROENTGENOLOGY, 2021, 217 (05) : 1132 - 1140
  • [5] 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
  • [6] 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
  • [7] Chronic kidney disease and the risks of death, cardiovascular events, and hospitalization
    Go, AS
    Chertow, GM
    Fan, DJ
    McCulloch, CE
    Hsu, CY
    [J]. NEW ENGLAND JOURNAL OF MEDICINE, 2004, 351 (13) : 1296 - 1305
  • [8] He H, 2013, IMBALANCED LEARNING: FOUNDATIONS, ALGORITHMS, AND APPLICATIONS, P1, DOI 10.1002/9781118646106
  • [9] Follow-up for Bosniak Category 2F Cystic Renal Lesions
    Hindman, Nicole M.
    Hecht, Elizabeth M.
    Bosniak, Morton A.
    [J]. RADIOLOGY, 2014, 272 (03) : 757 - 766
  • [10] Can Quantitative CT Texture Analysis be Used to Differentiate Fat-poor Renal Angiomyolipoma from Renal Cell Carcinoma on Unenhanced CT Images?
    Hodgdon, Taryn
    McInnes, Matthew D. F.
    Schieda, Nicola
    Flood, Trevor A.
    Lamb, Leslie
    Thornhill, Rebecca E.
    [J]. RADIOLOGY, 2015, 276 (03) : 787 - 796