930 related articles for article (PubMed ID: 30910431)
21. Radiomics Strategy for Molecular Subtype Stratification of Lower-Grade Glioma: Detecting IDH and TP53 Mutations Based on Multimodal MRI.
Zhang X; Tian Q; Wang L; Liu Y; Li B; Liang Z; Gao P; Zheng K; Zhao B; Lu H
J Magn Reson Imaging; 2018 Oct; 48(4):916-926. PubMed ID: 29394005
[TBL] [Abstract][Full Text] [Related]
22. Characterization of active and infiltrative tumorous subregions from normal tissue in brain gliomas using multiparametric MRI.
Fathi Kazerooni A; Nabil M; Zeinali Zadeh M; Firouznia K; Azmoudeh-Ardalan F; Frangi AF; Davatzikos C; Saligheh Rad H
J Magn Reson Imaging; 2018 Oct; 48(4):938-950. PubMed ID: 29412496
[TBL] [Abstract][Full Text] [Related]
23. MRI radiomics to differentiate between low grade glioma and glioblastoma peritumoral region.
Malik N; Geraghty B; Dasgupta A; Maralani PJ; Sandhu M; Detsky J; Tseng CL; Soliman H; Myrehaug S; Husain Z; Perry J; Lau A; Sahgal A; Czarnota GJ
J Neurooncol; 2021 Nov; 155(2):181-191. PubMed ID: 34694564
[TBL] [Abstract][Full Text] [Related]
24. Texture analysis- and support vector machine-assisted diffusional kurtosis imaging may allow in vivo gliomas grading and IDH-mutation status prediction: a preliminary study.
Bisdas S; Shen H; Thust S; Katsaros V; Stranjalis G; Boskos C; Brandner S; Zhang J
Sci Rep; 2018 Apr; 8(1):6108. PubMed ID: 29666413
[TBL] [Abstract][Full Text] [Related]
25. Noninvasive IDH1 mutation estimation based on a quantitative radiomics approach for grade II glioma.
Yu J; Shi Z; Lian Y; Li Z; Liu T; Gao Y; Wang Y; Chen L; Mao Y
Eur Radiol; 2017 Aug; 27(8):3509-3522. PubMed ID: 28004160
[TBL] [Abstract][Full Text] [Related]
26. Dynamic contrast-enhanced and dynamic susceptibility contrast perfusion MR imaging for glioma grading: Preliminary comparison of vessel compartment and permeability parameters using hotspot and histogram analysis.
Santarosa C; Castellano A; Conte GM; Cadioli M; Iadanza A; Terreni MR; Franzin A; Bello L; Caulo M; Falini A; Anzalone N
Eur J Radiol; 2016 Jun; 85(6):1147-56. PubMed ID: 27161065
[TBL] [Abstract][Full Text] [Related]
27. New similarity search based glioma grading.
Haegler K; Wiesmann M; Böhm C; Freiherr J; Schnell O; Brückmann H; Tonn JC; Linn J
Neuroradiology; 2012 Aug; 54(8):829-37. PubMed ID: 22160184
[TBL] [Abstract][Full Text] [Related]
28. Deriving quantitative information from multiparametric MRI via Radiomics: Evaluation of the robustness and predictive value of radiomic features in the discrimination of low-grade versus high-grade gliomas with machine learning.
Ubaldi L; Saponaro S; Giuliano A; Talamonti C; Retico A
Phys Med; 2023 Mar; 107():102538. PubMed ID: 36796177
[TBL] [Abstract][Full Text] [Related]
29. Radiomics MRI Phenotyping with Machine Learning to Predict the Grade of Lower-Grade Gliomas: A Study Focused on Nonenhancing Tumors.
Park YW; Choi YS; Ahn SS; Chang JH; Kim SH; Lee SK
Korean J Radiol; 2019 Sep; 20(9):1381-1389. PubMed ID: 31464116
[TBL] [Abstract][Full Text] [Related]
30. Diffusion tensor imaging radiomics in lower-grade glioma: improving subtyping of isocitrate dehydrogenase mutation status.
Park CJ; Choi YS; Park YW; Ahn SS; Kang SG; Chang JH; Kim SH; Lee SK
Neuroradiology; 2020 Mar; 62(3):319-326. PubMed ID: 31820065
[TBL] [Abstract][Full Text] [Related]
31. Machine learning-based quantitative texture analysis of conventional MRI combined with ADC maps for assessment of IDH1 mutation in high-grade gliomas.
Alis D; Bagcilar O; Senli YD; Yergin M; Isler C; Kocer N; Islak C; Kizilkilic O
Jpn J Radiol; 2020 Feb; 38(2):135-143. PubMed ID: 31741126
[TBL] [Abstract][Full Text] [Related]
32. Diagnostic accuracy of MRI texture analysis for grading gliomas.
Ditmer A; Zhang B; Shujaat T; Pavlina A; Luibrand N; Gaskill-Shipley M; Vagal A
J Neurooncol; 2018 Dec; 140(3):583-589. PubMed ID: 30145731
[TBL] [Abstract][Full Text] [Related]
33. Deep Convolutional Radiomic Features on Diffusion Tensor Images for Classification of Glioma Grades.
Zhang Z; Xiao J; Wu S; Lv F; Gong J; Jiang L; Yu R; Luo T
J Digit Imaging; 2020 Aug; 33(4):826-837. PubMed ID: 32040669
[TBL] [Abstract][Full Text] [Related]
34. Radiogenomics of lower-grade gliomas: machine learning-based MRI texture analysis for predicting 1p/19q codeletion status.
Kocak B; Durmaz ES; Ates E; Sel I; Turgut Gunes S; Kaya OK; Zeynalova A; Kilickesmez O
Eur Radiol; 2020 Feb; 30(2):877-886. PubMed ID: 31691122
[TBL] [Abstract][Full Text] [Related]
35. Hierarchical non-negative matrix factorization to characterize brain tumor heterogeneity using multi-parametric MRI.
Sauwen N; Sima DM; Van Cauter S; Veraart J; Leemans A; Maes F; Himmelreich U; Van Huffel S
NMR Biomed; 2015 Dec; 28(12):1599-624. PubMed ID: 26458729
[TBL] [Abstract][Full Text] [Related]
36. Assessment of tissue heterogeneity using diffusion tensor and diffusion kurtosis imaging for grading gliomas.
Raja R; Sinha N; Saini J; Mahadevan A; Rao KN; Swaminathan A
Neuroradiology; 2016 Dec; 58(12):1217-1231. PubMed ID: 27796448
[TBL] [Abstract][Full Text] [Related]
37. Amide proton transfer imaging to discriminate between low- and high-grade gliomas: added value to apparent diffusion coefficient and relative cerebral blood volume.
Choi YS; Ahn SS; Lee SK; Chang JH; Kang SG; Kim SH; Zhou J
Eur Radiol; 2017 Aug; 27(8):3181-3189. PubMed ID: 28116517
[TBL]