TY - JOUR
T1 - Survival prediction in glioblastoma on post-contrast magnetic resonance imaging using filtration based first-order texture analysis
T2 - Comparison of multiple machine learning models
AU - Priya, Sarv
AU - Agarwal, Amit
AU - Ward, Caitlin
AU - Locke, Thomas
AU - Monga, Varun
AU - Bathla, Girish
N1 - Funding Information:
G.B. has research grant from Siemens Healthineers, Forchheim, Germany, as well as the American Cancer Society, unrelated to the current work. The other authors declare no conflict of interest.
Publisher Copyright:
© The Author(s) 2021.
PY - 2021/8
Y1 - 2021/8
N2 - Objective: Magnetic resonance texture analysis (MRTA) is a relatively new technique that can be a valuable addition to clinical and imaging parameters in predicting prognosis. In the present study, we investigated the efficacy of MRTA for glioblastoma survival using T1 contrast-enhanced (CE) images for texture analysis. Methods: We evaluated the diagnostic performance of multiple machine learning models based on first-order histogram statistical parameters derived from T1-weighted CE images in the survival stratification of glioblastoma multiforme (GBM). Retrospective evaluation of 85 patients with GBM was performed. Thirty-six first-order texture parameters at six spatial scale filters (SSF) were extracted on the T1 CE axial images for the whole tumor using commercially available research software. Several machine learning classification models (in four broad categories: linear, penalized linear, non-linear, and ensemble classifiers) were evaluated to assess the survival prediction performance using optimal features. Principal component analysis was used prior to fitting the linear classifiers in order to reduce the dimensionality of the feature inputs. Fivefold cross-validation was used to partition the data iteratively into training and testing sets. The area under the receiver operating characteristic curve (AUC) was used to assess the diagnostic performance. Results: The neural network model was the highest performing model with the highest observed AUC (0.811) and cross-validated AUC (0.71). The most important variable was the age at diagnosis, with mean and mean of positive pixels (MPP) for SSF = 0 being the second and third most important, followed by skewness for SSF = 0 and SSF = 4. Conclusions: First-order texture features, when combined with age at presentation, show good accuracy in predicting GBM survival.
AB - Objective: Magnetic resonance texture analysis (MRTA) is a relatively new technique that can be a valuable addition to clinical and imaging parameters in predicting prognosis. In the present study, we investigated the efficacy of MRTA for glioblastoma survival using T1 contrast-enhanced (CE) images for texture analysis. Methods: We evaluated the diagnostic performance of multiple machine learning models based on first-order histogram statistical parameters derived from T1-weighted CE images in the survival stratification of glioblastoma multiforme (GBM). Retrospective evaluation of 85 patients with GBM was performed. Thirty-six first-order texture parameters at six spatial scale filters (SSF) were extracted on the T1 CE axial images for the whole tumor using commercially available research software. Several machine learning classification models (in four broad categories: linear, penalized linear, non-linear, and ensemble classifiers) were evaluated to assess the survival prediction performance using optimal features. Principal component analysis was used prior to fitting the linear classifiers in order to reduce the dimensionality of the feature inputs. Fivefold cross-validation was used to partition the data iteratively into training and testing sets. The area under the receiver operating characteristic curve (AUC) was used to assess the diagnostic performance. Results: The neural network model was the highest performing model with the highest observed AUC (0.811) and cross-validated AUC (0.71). The most important variable was the age at diagnosis, with mean and mean of positive pixels (MPP) for SSF = 0 being the second and third most important, followed by skewness for SSF = 0 and SSF = 4. Conclusions: First-order texture features, when combined with age at presentation, show good accuracy in predicting GBM survival.
KW - Magnetic resonance texture analysis
KW - first-order texture
KW - glioblastoma survival
KW - glioblastomas
KW - histogram
KW - radiomics
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U2 - 10.1177/1971400921990766
DO - 10.1177/1971400921990766
M3 - Article
C2 - 33533273
AN - SCOPUS:85100465089
SN - 1971-4009
VL - 34
SP - 355
EP - 362
JO - Neuroradiology Journal
JF - Neuroradiology Journal
IS - 4
ER -