BIOMARKERS

Molecular Biopsy of Human Tumors

- a resource for Precision Medicine *

151 related articles for article (PubMed ID: 36073216)

  • 1. [A discrimination model for differentiation of renal cell carcinoma from renal angiomyolipoma without visible fat: based on hierarchical fusion framework of multi-classifier].
    Mo T; Wu Y; Yang R; Zhen X
    Nan Fang Yi Ke Da Xue Xue Bao; 2022 Aug; 42(8):1174-1181. PubMed ID: 36073216
    [TBL] [Abstract][Full Text] [Related]  

  • 2. Radiomics of small renal masses on multiphasic CT: accuracy of machine learning-based classification models for the differentiation of renal cell carcinoma and angiomyolipoma without visible fat.
    Yang R; Wu J; Sun L; Lai S; Xu Y; Liu X; Ma Y; Zhen X
    Eur Radiol; 2020 Feb; 30(2):1254-1263. PubMed ID: 31468159
    [TBL] [Abstract][Full Text] [Related]  

  • 3. Machine learning-based quantitative texture analysis of CT images of small renal masses: Differentiation of angiomyolipoma without visible fat from renal cell carcinoma.
    Feng Z; Rong P; Cao P; Zhou Q; Zhu W; Yan Z; Liu Q; Wang W
    Eur Radiol; 2018 Apr; 28(4):1625-1633. PubMed ID: 29134348
    [TBL] [Abstract][Full Text] [Related]  

  • 4. MRI evaluation of small (<4cm) solid renal masses: multivariate modeling improves diagnostic accuracy for angiomyolipoma without visible fat compared to univariate analysis.
    Schieda N; Dilauro M; Moosavi B; Hodgdon T; Cron GO; McInnes MD; Flood TA
    Eur Radiol; 2016 Jul; 26(7):2242-51. PubMed ID: 26486936
    [TBL] [Abstract][Full Text] [Related]  

  • 5. Deep feature classification of angiomyolipoma without visible fat and renal cell carcinoma in abdominal contrast-enhanced CT images with texture image patches and hand-crafted feature concatenation.
    Lee H; Hong H; Kim J; Jung DC
    Med Phys; 2018 Apr; 45(4):1550-1561. PubMed ID: 29474742
    [TBL] [Abstract][Full Text] [Related]  

  • 6. Can Quantitative CT Texture Analysis be Used to Differentiate Fat-poor Renal Angiomyolipoma from Renal Cell Carcinoma on Unenhanced CT Images?
    Hodgdon T; McInnes MD; Schieda N; Flood TA; Lamb L; Thornhill RE
    Radiology; 2015 Sep; 276(3):787-96. PubMed ID: 25906183
    [TBL] [Abstract][Full Text] [Related]  

  • 7. Circularity Index on Contrast-Enhanced Computed Tomography Helps Distinguish Fat-Poor Angiomyolipoma from Renal Cell Carcinoma: Retrospective Analyses of Histologically Proven 257 Small Renal Tumors Less Than 4 cm.
    Kang HS; Park JJ
    Korean J Radiol; 2021 May; 22(5):735-741. PubMed ID: 33660463
    [TBL] [Abstract][Full Text] [Related]  

  • 8. A CT-based radiomics nomogram for differentiation of renal angiomyolipoma without visible fat from homogeneous clear cell renal cell carcinoma.
    Nie P; Yang G; Wang Z; Yan L; Miao W; Hao D; Wu J; Zhao Y; Gong A; Cui J; Jia Y; Niu H
    Eur Radiol; 2020 Feb; 30(2):1274-1284. PubMed ID: 31506816
    [TBL] [Abstract][Full Text] [Related]  

  • 9. Development and external validation of the multichannel deep learning model based on unenhanced CT for differentiating fat-poor angiomyolipoma from renal cell carcinoma: a two-center retrospective study.
    Yao H; Tian L; Liu X; Li S; Chen Y; Cao J; Zhang Z; Chen Z; Feng Z; Xu Q; Zhu J; Wang Y; Guo Y; Chen W; Li C; Li P; Wang H; Luo J
    J Cancer Res Clin Oncol; 2023 Nov; 149(17):15827-15838. PubMed ID: 37672075
    [TBL] [Abstract][Full Text] [Related]  

  • 10. Small (< 4 cm) Renal Masses: Differentiation of Angiomyolipoma Without Visible Fat From Renal Cell Carcinoma Using Unenhanced and Contrast-Enhanced CT.
    Takahashi N; Leng S; Kitajima K; Gomez-Cardona D; Thapa P; Carter RE; Leibovich BC; Sasiwimonphan K; Sasaguri K; Kawashima A
    AJR Am J Roentgenol; 2015 Dec; 205(6):1194-202. PubMed ID: 26587925
    [TBL] [Abstract][Full Text] [Related]  

  • 11. [Prediction of microvascular invasion in hepatocellular carcinoma based on multi-phase dynamic enhanced CT radiomics feature and multi-classifier hierarchical fusion model].
    Zhong W; Liang F; Yang R; Zhen X
    Nan Fang Yi Ke Da Xue Xue Bao; 2024 Feb; 44(2):260-269. PubMed ID: 38501411
    [TBL] [Abstract][Full Text] [Related]  

  • 12. Can whole-tumor radiomics-based CT analysis better differentiate fat-poor angiomyolipoma from clear cell renal cell caricinoma: compared with conventional CT analysis?
    Ma Y; Cao F; Xu X; Ma W
    Abdom Radiol (NY); 2020 Aug; 45(8):2500-2507. PubMed ID: 31980867
    [TBL] [Abstract][Full Text] [Related]  

  • 13. Fat poor angiomyolipoma differentiation from renal cell carcinoma at 320-slice dynamic volume CT perfusion.
    Chen C; Kang Q; Xu B; Shi Z; Guo H; Wei Q; Lu Y; Wu X
    Abdom Radiol (NY); 2018 May; 43(5):1223-1230. PubMed ID: 28828638
    [TBL] [Abstract][Full Text] [Related]  

  • 14. Angiomyolipoma (AML) without visible fat: Ultrasound, CT and MR imaging features with pathological correlation.
    Hakim SW; Schieda N; Hodgdon T; McInnes MD; Dilauro M; Flood TA
    Eur Radiol; 2016 Feb; 26(2):592-600. PubMed ID: 26032880
    [TBL] [Abstract][Full Text] [Related]  

  • 15. Quantitative computer-aided diagnostic algorithm for automated detection of peak lesion attenuation in differentiating clear cell from papillary and chromophobe renal cell carcinoma, oncocytoma, and fat-poor angiomyolipoma on multiphasic multidetector computed tomography.
    Coy H; Young JR; Douek ML; Brown MS; Sayre J; Raman SS
    Abdom Radiol (NY); 2017 Jul; 42(7):1919-1928. PubMed ID: 28280876
    [TBL] [Abstract][Full Text] [Related]  

  • 16. The value of quantitative CT texture analysis in differentiation of angiomyolipoma without visible fat from clear cell renal cell carcinoma on four-phase contrast-enhanced CT images.
    You MW; Kim N; Choi HJ
    Clin Radiol; 2019 Jul; 74(7):547-554. PubMed ID: 31010583
    [TBL] [Abstract][Full Text] [Related]  

  • 17. Differentiation of Clear Cell Renal Cell Carcinoma From Other Subtypes and Fat-Poor Angiomyolipoma by Use of Quantitative Enhancement Measurement During Three-Phase MDCT.
    Kim SH; Kim CS; Kim MJ; Cho JY; Cho SH
    AJR Am J Roentgenol; 2016 Jan; 206(1):W21-8. PubMed ID: 26700359
    [TBL] [Abstract][Full Text] [Related]  

  • 18. Alkaline phosphatase combines with CT factors for differentiating small (≤ 4 cm) fat-poor angiomyolipoma from renal cell carcinoma: a multiple quantitative tool.
    Peng T; Fan J; Xie B; Wang Q; Chen Y; Li Y; Wu K; Feng C; Li T; Chen H; Pu X; Liu J
    World J Urol; 2023 May; 41(5):1345-1351. PubMed ID: 37093317
    [TBL] [Abstract][Full Text] [Related]  

  • 19. Histogram analysis of small solid renal masses: differentiating minimal fat angiomyolipoma from renal cell carcinoma.
    Chaudhry HS; Davenport MS; Nieman CM; Ho LM; Neville AM
    AJR Am J Roentgenol; 2012 Feb; 198(2):377-83. PubMed ID: 22268181
    [TBL] [Abstract][Full Text] [Related]  

  • 20. Differentiation of fat-poor angiomyolipoma from clear cell renal cell carcinoma in contrast-enhanced MDCT images using quantitative feature classification.
    Lee HS; Hong H; Jung DC; Park S; Kim J
    Med Phys; 2017 Jul; 44(7):3604-3614. PubMed ID: 28376281
    [TBL] [Abstract][Full Text] [Related]  

    [Next]    [New Search]
    of 8.